Analytics Tips Archives - Analytics Platform - Matomo https://matomo.org/blog/category/analytics-tips/ Tue, 07 Apr 2026 12:02:09 +0000 en-US hourly 1 https://matomo.org/wp-content/uploads/2018/11/cropped-DefaultIcon-32x32.png Analytics Tips Archives - Analytics Platform - Matomo https://matomo.org/blog/category/analytics-tips/ 32 32 From humans to AI agents: understanding the new web traffic https://matomo.org/blog/2026/03/humans-agents-understanding-ai-web-traffic/ Mon, 16 Mar 2026 09:13:52 +0000 https://matomo.org/?p=91354 With AI Assistants being an integral part of our private and professional life, many website owners and marketers wonder about how these systems affect traffic.

Often, their organic traffic is flat. But their content keeps showing up in ChatGPT answers. Something is clearly happening, but it’s not reflected in their analytics.

This is the new normal for a lot of teams. AI systems are interacting with websites in fundamentally different ways: some send real visitors, some read your content quietly in the background, and some never send anyone at all.

Understanding the difference is the first step to making sense of what you’re seeing:

  1. The different types of AI systems interacting with websites
  2. The difference between human visitors and automated traffic

Once you know this, tools like Matomo can help you measure what’s happening.

Understand the different types of AI on the web

When people talk about “AI traffic,” they often mix very different technologies together.
Not all AI systems behave the same way — and they affect your website in different ways.

Understanding these categories already removes much of the confusion around “AI traffic.”

Here are four types you’re likely to encounter.

AI chatbots: answer engines for users

These are tools like:

  • ChatGPT
  • Gemini
  • Perplexity
  • Claude
  • AI-powered search assistants

Users type questions and receive answers written by the AI.

Sometimes these answers include links to sources. When a user clicks one of those links, they visit your website.
In analytics, this appears as referral traffic.

AI chatbots can also influence traffic when they’re not sending visitors. This happens when the AI provides a full answer inside its interface, and users don’t see the need to click the source link. In some cases, AI chatbots don’t even add a source link to their output. Both cases result in what is known as zero-click behaviour. Your content may still be used as a source, but no visit happens. And while technology can’t track human visits that aren’t happening, there are solutions to track non-human visits, performed by AI crawlers, scrapers and agents.

AI crawlers: automated content readers

AI companies also operate automated programs that read websites. These are called crawlers.

They visit pages automatically to:

  • Discover content
  • Collect information
  • Update AI systems

These visits are not human. They’re automated requests made by software.

AI scrapers: targeted data collectors

Scrapers are similar to crawlers but more selective. Instead of reading entire websites, they extract specific pieces of content, such as:

  • Article text
  • Headlines
  • Product details
  • Structured data

This data may be used for training AI models or generating answers. Again, these visits are automated.

AI agents: autonomous digital assistants

A newer category is AI agents. Agents are designed to perform actions on behalf of users.
For example, an AI agent might:

  • Search multiple websites
  • Compare products
  • Fill out forms
  • Complete tasks online

You might ask yourself how AI agents differ from AI chatbots. The difference is that AI chatbots require user prompts for each step, while AI agents can act autonomously once given an initial instruction.

One important detail: AI systems can play multiple roles
The same AI ecosystem can behave in different ways.
For example: A chatbot may send human visitors when users click links. The same company may run crawlers that read your content automatically. Some systems may fetch pages in real time while generating answers.
The key difference for analytics is simple: Who initiated the visit — a human or an automated system?

Overview of AI types and what they do

AI typeWhat it doesHow it affects traffic
ChatbotsAnswer user questionsMay send human visitors or reduce visits
CrawlersAutomatically read websitesGenerate automated traffic
ScrapersExtract specific content
AgentsPerform tasks onlineMay resemble human sessions

How AI changes website traffic

Imagine you run a blog about marketing tools. Over time, you might notice several subtle changes:

  • Some informational blog posts receive fewer visits because AI tools answer basic questions directly.
  • Traffic patterns shift, with different landing pages receiving visits compared with previous months.

These different interactions can make traffic patterns look unusual at first glance. But once you understand the different actors, the effects become easier to interpret.

AI influences website traffic in three main ways:

AI sending real visitors

When users click links inside AI chatbots, they arrive on your website like any other visitor.
In Matomo, this traffic is visible in the Acquisition report, appearing as a dedicated referrer channel type. In a dedicated report, you can even see the metrics for multiple chatbots.

AI reducing clicks (zero-click behaviour)

Sometimes AI tools answer a question completely inside their interface. Users get the information they need without visiting the website. This means your content still influences the answer, but the visit never happens.

As a website owner or marketing team, over time you may notice fewer visits to informational content or changes regarding which landing pages are visited.

While analytics can’t measure visits that never occur, you can monitor visit trends over time, to get an understanding of the shifts that are happening. And keep in mind that zero-click behaviour doesn’t necessarily mean your content is less relevant. In many cases, it means the content is summarised or referenced by AI systems instead of generating direct visits.

To understand these shifts, it’s useful to monitor changes in landing pages, queries, and referral sources over time.

AI generating automated traffic

Crawlers, scrapers, and some agents generate non-human visits. With popular traffic analysis solutions, these visits often remain untracked and stay invisible. This is where Matomo comes into play. It offers visibility into AI traffic through different report angles.

How Matomo helps you stay oriented

When traffic patterns change, the goal is simple: separate signal from noise. To do this, start with the following quick check:

Quick check: how to spot AI-related traffic in Matomo

  1. Look for AI chatbot referrals: 
Go to AcquisitionReferrals and check whether AI platforms appear as traffic sources.
  2. Monitor landing page trends over time
: If AI tools answer questions directly, visits to informational pages may decline. Compare traffic patterns over time.
  3. Inspect automated AI traffic
: Use AI Assistant tracking to see visits and engagement metrics for AI chatbots and AI agents.
  4. Focus on long-term patterns
: AI-related changes usually appear gradually. Comparing months or quarters helps reveal meaningful trends.

If you want to explore these signals in more detail, the following sections explain how to investigate them in Matomo.

Keen about testing Matomo’s AI tracking capabilities yourself? Start your 21-day free trial and make the invisible visible!

For real visitors coming from AI: identify referral sources

Look at referral reports in Acquisition to see whether new sources, including AI platforms, are sending visitors.

You can analyse things like:

  • How this traffic channel performs, compared with other channels like Organic or Social.
  • How human traffic coming from AI chatbots changes over time and adds to goal conversions, and what happens in individual sessions coming from AI chatbots.
  • What the visitors do after they land on your website, coming from an AI chatbot (e.g., which transitions happened).

Learn more here: How to track and analyse traffic from AI Assistants (like ChatGPT) in Matomo reports

This helps answer questions like:

  • Is this traffic growing over time?
  • How are visitors from AI tools behaving?
  • Do they convert differently from traditional search visitors?

For automated traffic: inspect AI Assistant traffic

To gain visibility into non-human visits and to be able to act on it, you can use Matomo’s AI Assistant tracking. It offers a dedicated report for both AI Chatbots and AI Agents. And here’s what they do:

  • AI Chatbots: This report contains three different sub reports, which help you answer the following questions:
    • How many requests from AI chatbots does your website get? And how do the chatbots behave during these visits, e.g. what’s the number of unique visited URLs, orphaned pages, or the click-through-rate?
    • How do metrics like visits and pageviews develop over time?
    • Which AI chatbots are accessing your website, and which pages are they visiting each?
  • AI Agents: This report not only analyses AI traffic but also allows you to compare it to human visits. It offers two sub reports that provide insights regarding the following:
    • How many AI Agent visits are there, and how do the AI Agents behave? For example, how many actions are they performing, what’s their average visit duration and bounce rate, and more.
    • How do these metrics develop over time?

With both detailed reports, and the possibility to investigate behaviour over time, teams don’t need to waste time caring about daily fluctuations. Instead, Matomo allows to analyse longer-term patterns, helping teams compare months or quarters to see how traffic sources are shifting.

Making sense of the new traffic landscape

AI is not a single technology. It is an ecosystem of chatbots, crawlers, scrapers, and agents interacting with websites in different ways. Some bring visitors.
 Some reduce clicks.
 Some generate automated traffic.

In many cases, AI crawlers are discovering and analysing content that may later appear in AI-generated answers.

In that sense, AI systems can be seen as a new type of audience: not human readers, but systems that interpret and redistribute information across AI platforms.

That may sound complex, but the basics of analytics remain the same:

  • Know your traffic sources.
  • Separate humans from automation.
  • Monitor trends over time.
  • Make decisions based on your own data.

One advantage of privacy-first analytics platforms like Matomo is that they provide visibility into automated traffic.

Instead of hiding these signals behind aggressive filtering or opaque modelling, Matomo allows teams to observe how AI systems interact with their websites.

AI hasn’t made analytics more complicated. It has made the question more precise: are you looking at humans or machines? Once you can answer that, the rest of your analysis stays the same.

Matomo gives you the visibility to ask that question and answer it, whether it’s a chatbot sending referral traffic or a crawler reading your pages in silence.

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How AI is reshaping web analytics and how to measure real human traffic in 2026  https://matomo.org/blog/2026/02/how-ai-is-reshaping-web-analytics-and-how-to-measure-real-human-traffic-in-2026/ Tue, 17 Feb 2026 16:30:53 +0000 https://matomo.org/?p=90645 Web analytics used to feel simple. 

You installed a tracker, watched your traffic go up or down, checked conversions, and trusted that what you were seeing represented real people doing real things on your site. If sessions grew, you assumed you were winning. If they dropped, you assumed something was wrong. 

That mental model no longer works. 

As AI assistants increasingly replace traditional search and browsing, many marketers are reassessing their analytics stack. The challenge is no longer just collecting data, it is understanding whether your data reflects real human behaviour or AI traffic. This is where privacy-first web analytics is becoming strategically important. 

Today, a growing share of what appears in dashboards isn’t human at all. It’s AI assistants, automated agents, scrapers and LLM crawlers that “visit” pages without ever intending to behave like users. 

From a server perspective, all of this looks like traffic. 
From a marketer’s perspective, it often looks like chaos. 

We now have more data than ever, and less reliable signals than ever. 

How AI is changing web analytics 

When many of us started working in analytics, the story was simple: people came to a site, they clicked around, and their behaviour told us something meaningful about intent. 

That story has quietly changed. 

We are no longer only measuring people. We are measuring other kinds of actors on the web, including AI tools and automated systems that interact with pages in ways that mimic users but don’t actually represent them. 

If we don’t separate human from automated behaviour, we end up making decisions based on noise while thinking we’re acting on insight. 

You’ve probably already seen this in your own data: sudden spikes from odd referrers, pages that rack up visits without meaningful engagement, or traffic patterns that don’t match what sales, support, or real customers are telling you. 

A lot of this isn’t “classic spam bots.” It’s AI systems pre-fetching pages, querying sites for structured data, or scanning content on behalf of users who never actually land on your website themselves. 

If you treat all of that as equal to human visits, your growth story starts to blur. 

You might celebrate “activity” while your real audience is quietly shrinking. In that case, you’re not optimising for people, you’re optimising for ghosts. 

Why traditional web analytics fails with AI traffic 

Most mainstream analytics platforms were designed in a cookie-based era where a “visit” mostly meant a person with a browser. 

AI doesn’t play by those rules. 

It often comes without typical identifiers, doesn’t interact with consent banners, accesses pages in unusual ways, and moves through sites without anything resembling a normal journey. It doesn’t scroll like a person, it doesn’t follow neat funnels, and it doesn’t “convert” in ways marketers expect. 

As a result, tools built primarily around identifiers and linear user journeys can misclassify activity in both directions, sometimes counting machines as people, and sometimes filtering out real users who behave in unexpected ways. 

That’s why a new, very practical question has become central for many teams: 

“How much of our traffic is actually human?” 

Why human-first analytics matters in an AI world 

Something deeper is changing in how serious analysts think about data. 

The goal today is clean, trustworthy, human traffic

This is where privacy-first analytics platforms have gained unexpected relevance. Because they don’t depend heavily on third-party cookies or invasive tracking, they tend to focus more on real interactions, what people actually do on a site, rather than stitching together identity across the web. 

That approach turns out to be surprisingly well suited for the AI era. When your measurement is grounded in genuine behaviour rather than synthetic identifiers, it becomes easier to spot what looks like real engagement versus automated activity. 

In other words, tools built for privacy are increasingly becoming tools that help protect the meaning of your data. 

How Matomo separates AI traffic from human traffic 

A growing number of teams are now looking for analytics tools that can detect AI traffic rather than treating every visit the same. 

Rather than pretending AI activity doesn’t exist, Matomo allows you to identify and separate traffic coming from known AI assistants and tools as its own channel in reports. 

Matomo product screenshot showing the "AI Assistants" menu.

This isn’t just a cosmetic label. It changes how you interpret your data. 

Instead of staring at one blended traffic line and guessing what is real, you can compare what recognised AI tools do on your site, and what real humans actually do. 

You can see whether a spike came from people or from machines. You can tell whether a page is really engaging your audience or simply being read at scale by automated systems. 

For analysts, this moves the conversation from endless debate: “Is this real?” to evidence: “Here’s what humans did versus what AI did.” 

Many mainstream analytics platforms still blend human and automated visits together. They are powerful for reporting, but they don’t give teams a clear way to separate AI traffic from real users. By contrast, platforms that explicitly surface AI-assistant traffic, such as Matomo,  provide clearer, more trustworthy insights in an AI-heavy web. 

When human traffic is under pressure, that clarity becomes more important, not less. 

The bigger shift marketers need to grasp 

For years, many organisations treated raw traffic as a proxy for success. More sessions felt like more attention. More pageviews felt like more impact. 

AI has broken that assumption. 

In a world where a growing share of “traffic” can be machine activity, and where many users now get answers without clicking, visit volume is no longer a reliable indicator of human interest. 

If your KPIs are still built mainly around total sessions, you risk optimising for activity that doesn’t represent your audience at all. 

Privacy-first platforms like Matomo have long emphasised meaningful behavioural signals over surveillance-style tracking. That perspective now feels less like a compliance requirement and more like a strategic advantage. 

If what you care about is understanding people, not just counting hits, that approach aligns better with today’s reality. 

AI and web analytics: what marketing teams have to consider 

Should we optimise for AI discoverability? (Yes, but separately) 

It is not smart to ignore AI discoverability. 

In fact, optimising for AI is becoming a legitimate marketing strategy in its own right. Still, it sits alongside human optimisation, and doesn’t replace it. 

You now effectively have two audiences: 

  • Human users who click, browse, compare, and convert. 
  • AI systems which not only read, summarise, reference, and recommend, but increasingly act as agents that directly interact with websites, navigating pages, retrieving information, and completing tasks on behalf of the users.

 Each requires its own optimisation and measurement approach.

For AI discoverability, you care about whether your content is clearly structured, factually precise, and easy for systems to interpret, and whether your brand is represented accurately inside AI responses. 

That’s a valid objective, but it is not the same as human engagement. 

The real mistake many teams make is mixing everything into one headline KPI called “traffic.” 

A better model is: 

  • One set of metrics for human performance 
  • One set of metrics for AI visibility and presence 

This is exactly where tools like Matomo become useful: they help you see these two worlds separately instead of mashed together. 

If your analytics tool can’t do that, you may not have the full visibility needed in an AI-first web. 

Is AI increasing or decreasing website traffic? 

For many websites, AI is more likely to reduce real human traffic over time. 

As more people get answers inside assistants, fewer will feel the need to click through, especially for informational queries. Gartner predicts that search engine volume will drop by 25% by 2026 as users increasingly rely on AI chatbots and others virtual agents instead of visiting websites. 

At the same time, AI systems may still generate background activity on your site, which traditional analytics tools may still record as visits, making dashboards look busy even as your real audience shrinks. 

You can therefore end up with a misleading picture: 

  • Analytics showing “activity,” 
  • But your actual human reach quietly declining. 

That’s why the key metric of the coming years won’t be total sessions, it will be human sessions. 

And that is exactly what your analytics tool needs to make visible. 

What to consider when choosing a modern analytics tool? 

If AI is changing both how people use the web and how machines interact with websites, then the criteria for a good analytics tool must also change. 

You no longer just need a platform that counts visits. 

You need a platform that helps you understand who those visits really are. 

Modern analytics tools now provide:

  • Clear separation of human traffic from AI and automated activity. 
  • Focus on real behavioural signals, not just identifiers. 
  • No reliance on third-party cookies. 

Many mainstream tools are excellent at collecting data, but far less transparent about what that data actually represents. 

Platforms that explicitly surface AI-related traffic, like Matomo, give teams a clearer foundation for decision-making in an AI-heavy web. 

If your dashboards and your business reality no longer match, this distinction matters more than any fancy attribution model. 

The new reality for marketers and analysts 

As this settles in, the questions that actually matter are changing. 

The key question is now how much of your traffic represents real human behaviour: 

  • How much of our traffic is human? 
  • Are AI referrals ever leading to real conversions? 
  • Are we visible inside AI tools, even if fewer people click? 

Teams that can answer these questions clearly will make better decisions than teams chasing ever-higher session numbers. 

That is why privacy-first analytics are gaining credibility: they keep the focus on real people rather than artificial noise. 

Final take 

AI isn’t a distant disruption for web analytics, it’s already reshaping what our numbers mean. 

The organisations that will win in this environment won’t be those with the biggest dashboards or the highest visit counts. 

They will be the ones that can confidently say: 

“We know which of this traffic represents real humans, and we know how visible we are to AI as well.” 

In that sense, human traffic has become your most valuable metric,  while AI discoverability has become a new strategic layer alongside it. 

To gain confidence in you data, your analytics tool needs to help you clearly distinguish between human visitors and automated traffic. 

If you are rethinking your analytics stack in light of AI, it makes sense to prioritise tools that let you see human and AI traffic separately rather than blending everything together. 

Because at the end of the day, analytics should help you understand real people, not just count visits.

Start a free Matomo trial and see how much of your traffic is truly human. 

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What to look for in website analytics software (and why it matters) https://matomo.org/blog/2025/11/website-analytics-software/ Mon, 03 Nov 2025 23:42:00 +0000 https://matomo.org/?p=88465 Read More

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Choosing the right website analytics software isn’t just about tracking traffic. It’s about understanding your audience, protecting their privacy and making confident decisions with data you can trust. Choosing the wrong analytics platform can skew your entire marketing strategy.

The challenge?

Most tools either overwhelm you with complexity or fail to give you full control over the data you collect. Some sample your traffic. Others rely on third-party cookies. And many pass your users’ data through systems you don’t fully control.

This isn’t just a technical issue either. According to Econsultancy’s Future of Marketing 2025 report, 61% of marketers now see data privacy as a competitive advantage, not just a legal requirement. But most analytics tools haven’t kept up. They still lean on outdated tracking models that create more compliance risk than clarity.

It’s no surprise that teams are struggling to trust the numbers, never mind explaining them with confidence.

In this article, we’ll explain what website analytics software should do, which features actually matter, and how to choose a tool that fits your site’s unique needs.

What website analytics software actually does (and doesn’t do)

Website analytics software is a set of tools that measure how people interact with your site. Technically speaking, it collects event data through a tracking code and processes that data into dashboards or reports. In plain terms, it shows how visitors arrived, what they did and how often they came back.

There are two main types of analytics:

  • Web analytics: traffic sources, pageviews, sessions, bounce rate, conversion goals
  • Behavioural analytics: heatmaps, scroll depth, session recordings, rage clicks

Some analytics tools combine both (Matomo, Adobe Analytics) while others specialise (Hotjar focuses mainly on behavioural analytics). Regardless, most analytics tools report on similar metrics: 

  • Traffic channels
  • Bounce rate
  • Pages per session
  • Time on page
  • Conversion funnels
  • Ecommerce revenue
  • Event tracking 
  • Cohort analysis

Teams often connect this information with SEO tools, Google Search Console or Looker Studio to better understand site traffic and customer journeys.

It’s important to recognise the limits. 

Analytics shows what is happening, not why. It won’t fix slow website performance, weak copy or a flawed offer. The real value comes when teams act on the data through A/B testing, design changes or funnel analysis to improve conversion rates. For example, session replays may reveal that users abandon a checkout form after repeated rage clicks, signalling a design flaw that directly impacts ecommerce revenue.

Different teams use analytics differently. Marketing teams track campaign performance and ad spend, UX and design teams refine user experience and product teams monitor feature adoption through event tracking. Without that human follow-up, even the most advanced marketing analytics platform remains just a reporting tool.

Why hosting matters 

Where analytics data is hosted impacts compliance and control over data. Most tools are third-party hosted or cloud-based, while some platforms offer self-hosted or on-premise options for complete ownership. 

Self-hosted 

  • What it means: All data storage and processing activities occur on infrastructure you control.
  • Why it matters: Self-hosted options (e.g., Matomo On-Premise) can support stricter privacy and compliance needs, particularly for UK GDPR or organisations that require European-owned infrastructure.

Third-party

  • What it means: Third parties store and process analytics data on cloud-based or external servers like Google Cloud.
  • Why it matters: Third-party or cloud-based options (e.g., Google Analytics 4Mixpanel, and HubSpot’s Marketing Hub) can require additional controls and safeguards to meet data privacy standards.

What to look for in a website analytics tool 

Below are five features no team should compromise on when evaluating website analytics software, whether for traffic data, conversion funnels or user behaviour.

1. Data accuracy

Accuracy is the foundation of trustworthy analytics. Many platforms, including Google Analytics 4, rely on sampling once datasets grow large. Instead of analysing every interaction, they project results from a slice of site traffic. That shortcut can blur important details in event tracking, ecommerce revenue or conversion funnels.

side by side comparison matomo vs google analytics

Take funnels as an example. If you’re testing a checkout sequence, sampling can make it impossible to see whether users are dropping off during account creation or at the payment step. Matomo’s guide on funnel analysis highlights how precise step-by-step data reveals bottlenecks you can actually fix. With incomplete or estimated data, those insights are lost.

Matomo avoids this problem entirely by processing every visit, click and session recording without sampling. When you review traffic data or customer journeys, you see the whole picture.

2. User-level behavior tracking

High-quality analytics software goes beyond pageviews to show how individual users interact with your site. This includes event tracking for actions like button clicks or video plays, funnels that map multi-step journeys such as checkout flows and session recordings that replay real interactions

Together, these tools help teams see exactly where people drop off or get stuck. Matomo’s event tracking use cases illustrate how capturing these micro-interactions adds context that traffic data alone can’t provide. With clear behaviour insights, marketing, UX and product teams can make targeted fixes that directly improve conversion funnels.

3. Privacy and data ownership

Privacy laws like GDPR and CCPA mean analytics can’t just collect data freely. Most tools rely on third-party cookies, which require banners and often result in lost traffic data when visitors refuse consent. Matomo was designed as an ethical alternative, with cookieless tracking confirmed by France’s CNIL and full data ownership through on-premise or cloud hosting. 

In its FAQ on consent, Matomo explains how organisations can track responsibly while staying compliant. That balance of privacy protection and accurate data gives teams confidence to measure conversion rates without sacrificing user trust.

4. Custom dashboards and reporting 

Standard reports rarely fit every organisation’s goals. A strong analytics platform lets teams create dashboards tailored to the metrics that matter most, whether that’s conversion funnels for marketing, user retention for product or content analytics for editorial teams. 

Matomo dashboard showing real-time visits, traffic channels, visitor map and user engagement widgets.
Matomo dashboard with custom widgets

Matomo’s reporting tools allow you to mix and match widgets, schedule recurring reports and share results with stakeholders in clear formats. Instead of digging through one-size-fits-all charts, you see exactly the data that drives your decisions. Flexible reporting saves time, reduces confusion and ensures everyone from executives to designers is working from the same trusted numbers.

5. Integration options

Analytics software should fit into your existing systems rather than sit apart. A WordPress plugin allows site owners to track ecommerce revenue directly, while integrations with CRMs and tag managers connect user behaviour data to customer profiles and campaigns. 

Matomo’s integration library lists connections across CMSs, eCommerce platforms, advertising networks and cloud services. These ready-made options save teams from building custom tracking and reduce errors that come with manual imports. With integrations in place, you can follow the customer journey across tools and see how traffic sources and on-site actions link to actual outcomes.

Popular analytics tools

Choosing the right analytics tool often involves understanding its trade-offs. Below, we break down the strengths and limitations of the most widely used platforms so you can see how each one fits different business needs.

Google Analytics (GA4 and 360)

Google Analytics remains the default choice for many businesses. GA4, the free version, replaced Universal Analytics in 2023, while Analytics 360 offers premium features for large enterprises. Both track traffic sources, events and conversions, and they connect tightly with Google Ads and Search Console, making them appealing for marketing teams already invested in the Google ecosystem.

GA4 dashboard with traffic source chart, sessions trend and user engagement metrics.
GA4 acquisitions dashboard

Strengths: Free entry point, near-universal adoption, strong integration with Google Ads and a wide range of standard web metrics.

Limitations: Data sampling makes reports unreliable on high-traffic sites. The interface and reporting model differ significantly from the older Universal Analytics, leading to a steep learning curve. Privacy concerns are ongoing since GA depends on third-party cookies, which trigger consent banners in most regions. 

→ Check out our Matomo vs Google Analytics comparison for more details on these trade-offs.

Matomo

Matomo is an open-source analytics platform created as a privacy-first alternative to Google Analytics. It is trusted by +1 million websites, with case studies showing adoption by universities, government agencies and businesses that need reliable data without compromising compliance.

Matomo dashboard showing visit trends, traffic sources, visitor map and engagement metrics.Matomo dashboard overview with visits over time, channel types and visitor map

Strengths: Matomo delivers 100% accuracy with no data sampling, so every visit, event, and funnel step is counted. It supports GDPR and other privacy laws through first-party cookies, consent-friendly features, IP anonymisation and EU hosting options. 

No analytics tool is automatically compliant, but Matomo provides configuration guides to help organisations set retention periods, choose a lawful basis and manage transfers responsibly. 

Businesses can self-host for full control or use Matomo Cloud, knowing no third-party has access to their data. Behavioural tools like heatmaps and session recordings are included.

Limitations: On-premise requires technical setup, and some advanced features cost extra.

See Matomo in action.

Mixpanel

Mixpanel is a product analytics platform designed to help teams understand how users interact with apps and digital products. Unlike traditional web analytics tools, it emphasises event tracking, funnels and retention analysis to show where users drop off and how often they return.

Mixpanel dashboard showing funnel completion, user retention, mobile OS breakdown and country-specific engagement
 Mixpanel product metrics dashboard

Strengths: Mixpanel is strong at mapping customer journeys inside apps. Its funnel analysis highlights points of friction in multi-step flows, while cohort reports make it easier to study user retention over time. SaaS and mobile-first businesses often rely on these features to refine onboarding and track feature adoption.

Limitations: Mixpanel is not built for classic website analytics like bounce rate or traffic sources. Pricing scales with event volume, which can get expensive quickly. It also requires more setup, and non-technical teams may find the interface harder to use compared to simpler tools.

Hotjar

Hotjar is a behaviour analytics tool focused on visualising how users interact with your site. Instead of offering broad traffic metrics, it provides heatmaps, session replays and surveys that help teams see and understand user behaviour in real time.

Hotjar dashboard displaying session data, top clicked buttons, traffic sources and bounce rate metrics.
Hotjar site overview with top clicked buttons and traffic channels

Strengths: Hotjar is simple to install and start using, making it popular for teams that want quick insights without technical setup. Its heatmaps show where users click or scroll, while session replays reveal friction points like abandoned forms. It’s particularly useful for UX research, form optimisation and gathering direct feedback through on-page polls.

Limitations: Hotjar does not track traffic sources or provide deeper reporting on overall website performance. Its strength lies in visual insights, so it works best when paired with a full web analytics platform rather than used alone.

HubSpot

HubSpot’s Marketing Hub combines an analytics tool, CRM, email marketing, forms, landing pages and campaign automation into one platform. This makes it appealing to teams that want all their customer data in one place.

HubSpot dashboard showing traffic sources over time with filters for session data and custom views.
HubSpot traffic analytics custom view

Strengths: Because HubSpot centralises data, marketers can see how a contact moves from filling out a form to opening emails and eventually becoming a customer. Its reporting dashboards tie activity from different channels together, which helps teams measure the effectiveness of campaigns without exporting data into other systems.

Limitations: The trade-off is cost. Pricing increases quickly as contact lists and features expand, which can put it out of reach for smaller organisations. It also takes more time to set up than stand-alone analytics tools, and for teams that just want traffic and conversion tracking, it may be too complex.

Use cases: Match the tool to your job

The right choice depends on who’s using it and the job they need it to do.

Marketing teams → Track conversions from ads

Use case: Sales funnel and marketing attribution tools to see whether ad clicks lead to purchases or sign-ups

Best fit: Platforms like GA4 connect tightly with Google Ads, while Matomo offers funnel analysis to pinpoint where people drop out of multi-step journeys.

Product and UX teams → Audit forms and drop-offs

Use case: Understanding why people abandon checkout or sign-up flows, you’ll need behavioural analytics.

Best fit: Hotjar and FullStory provide heatmaps and replays, while Matomo includes session recordings that let you watch where users hesitate, rage-click or quit a form.

Legal and compliance teams → Stay compliant with privacy laws

Use case: Meeting compliance standards without forcing users through distracting consent popups.

Best fit: Matomo can be configured for consent-free tracking under certain jurisdictions, as outlined in its guide on consent exemptions. At the same time, its cookieless tracking FAQ explains that most EU countries still view cookieless methods as a tracking technology that requires consent. 

A final compliance takeaway: the tool helps, but your configuration and local rules play a big role.

By framing your needs as jobs to be done, such as ad attribution, privacy compliance or UX optimisation, you can more easily match tools best suited for your use case.

Matomo’s position in the analytics ecosystem

Most analytics platforms specialise or compromise. Google Analytics is free but samples data and depends on third-party cookies. Hotjar is great for visual behaviour insights but doesn’t cover broader site performance. Mixpanel excels at product analytics but lacks traditional website metrics. HubSpot combines CRM and marketing but comes with high costs and complexity.

Matomo takes a different position by combining breadth with user control:

  • Privacy and compliance: Unlike Google Analytics, which requires consent banners in most regions, you can configure Matomo to meet GDPR and CCPA requirements with features like IP anonymisation, cookieless tracking and first-party cookies. Its feature list even outlines options for organisations that need lawful, consent-friendly analytics.

  • Data accuracy and ownership: Where other tools use sampling or share data with third parties, Matomo processes every interaction and keeps all data under your control. That reliability matters when teams are analysing funnels or running A/B tests where small percentage changes drive big decisions.

  • Flexible deployment: Hotjar, Mixpanel and HubSpot only offer cloud services. Matomo gives you the choice: a managed cloud service or an on-premise version installed on your own infrastructure. Both options connect with behavioural tools like heatmaps and session recordings, and integrate with CMSs and eCommerce platforms.

With more than a million websites using Matomo and thousands of reviews praising its trustworthiness, it has become the leading ethical alternative in web analytics.

Start your free Matomo trial to see how it fits your organisation.

What to consider before choosing an analytics platform

Before committing to an analytics tool, it helps to step back and ask yourself a few questions:

  • What data do we actually need?
    • If you only want to know traffic sources and bounce rate, a lightweight tool may be enough. ‘
    • If you need funnels, event tracking and session recordings, look for a full platform like Matomo’s feature set.
  • Do we need to meet legal privacy standards?
    • Regulations like GDPR and CCPA set strict rules on cookies and consent. 
    • Matomo explains when consent banners are required and how cookieless tracking fits into European law.
  • Who will use the data and how?
    • Marketers, designers and product teams all need different views. 
    • Make sure dashboards and reporting are accessible to the people who’ll act on them.
  • How will this fit with our existing tools?
    • Check CMS, CRM and ad platform integrations to avoid manual work later.

Asking these questions helps keep the focus on the jobs to be done, rather than getting lost in a maze of feature checklists.

Accurate, secure data always beats more data

Website analytics shouldn’t be about chasing every possible metric. It should be about collecting the right data, using it responsibly and turning it into actions that improve your site and serve your users.

That starts with choosing software that gives you full visibility into what’s happening and the confidence that your reports are accurate, privacy-aware and aligned with your compliance obligations. Matomo supports GDPR and CCPA requirements through features like first-party cookies, IP anonymisation and cookieless tracking, but it still needs to be configured correctly for your organisation’s lawful basis and data retention policies.

Whether you’re optimising forms, improving page experience or reporting to stakeholders, you need tools that support clear decision-making rather than dashboards for their own sake.

Try Matomo for free and see how privacy-first analytics can put you back in control.

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What is data minimisation? Definition, benefits and best practices https://matomo.org/blog/2025/10/data-minimisation/ Thu, 09 Oct 2025 17:40:27 +0000 https://matomo.org/?p=87866 Read More

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Collecting and storing vast amounts of consumer data comes with financial, reputational and regulatory risks. Even a minor data breach can be incredibly costly.

In the United States, consumer credit reporting agency Equifax agreed to pay $425 million to consumers affected by a 2017 data breach. Amazon is facing a class action lawsuit for harvesting personal user data without consent. Meanwhile, in the EU, regulators are issuing multi-million dollar fines for violations under the GDPR’s data minimisation principles.

This article explores why data minimisation is vital for businesses, strategies and techniques for minimising data collection, and how Matomo can help. 

What is data minimisation?

Data minimisation is the practice of collecting only the data that is truly necessary and ensuring it is securely deleted once it’s no longer needed. It’s a core data privacy and data protection principle that also governs how companies collect and use data. 

This doesn’t mean organisations stop collecting data altogether. Companies still gather essential data, including, for example, first-party cookies that improve the customer experience. However, they are highly selective about the data they collect, avoid unnecessary data collection and delete data once it no longer serves a purpose. 

To fully appreciate this cultural shift toward the principle of minimisation, it helps to contrast it with its predecessor: the data maximisation mindset.

AspectData minimisationData maximisation
PhilosophyCollect only what’s needed for a clear purposeCollect everything “just in case”
RiskLow exposure and breach riskHigh risk of misuse and non-compliance
PrivacyRespects user privacyOverlooks privacy concerns
StorageDeletes data when no longer neededRetains data indefinitely
LegalAligns with modern privacy lawsOften conflicts with regulations

Data minimisation principles are a core part of the EU’s General Data Protection Regulation (GDPR), which states that any personal data collection must be “adequate, relevant and limited to what is necessary in relation to the purposes for which they are processed”. 

The concept also appears in other privacy laws and influential guidance or privacy frameworks, such as the Fair Information Practice Principles (FIPPs), applied by the US Department of Homeland Security and other federal agencies, including the Federal Trade Commission (FTC), when evaluating whether a company’s privacy practices are “unfair or deceptive.”

Implementing data minimisation principles helps companies protect their users’ privacy, prevent data misuse, and reduce the risks of data breaches and non-compliance. 

What data should businesses collect?

Data minimisation doesn’t mean businesses should avoid collecting data entirely. Companies should still collect customer data when implementing data minimisation practices. However, they should do so thoughtfully using the four principles of adequacy, relevance, limitedness and timeliness.

Four data minimisation principles

Let’s explore each principle in more detail:

  • Adequate: Not all data collection is bad. Businesses should collect enough data to meet their stated objectives and deliver services to customers.
  • Relevant: Only collect data pertinent to business objectives. If you later want to use the data for another purpose, make sure the new use is compatible with the original one or that you have a valid legal basis.
  • Limited: Businesses should strip data of identifiable information they don’t need. If companies only need a zip code, for example, they should delete the rest of a user’s address.
  • Timely: Review held data regularly and delete it when it no longer serves a purpose. Businesses should even delete backup data at the end of the retention period. 

Under Article 6.1 of the GDPR, businesses must establish a lawful basis for processing personal data. The six recognised bases are: 

  1. Consent
  2. Contractual obligations
  3. Legal obligations
  4. Vital interests
  5. Public interests 
  6. Legitimate interest

The legal bases for processing special categories of personal data are different, and they are set out in Article 9 of the GDPR.

The business case for data minimisation

Data minimisation offers significant benefits to businesses. It can lower the risk of leaks, reduce the costs if leaks occur, build trust with consumers and make data management easier. 

Businesses should minimise data to reduce risk, build trust, save costs, comply with laws

Here’s more information on each of these benefits.

Mitigate risk

Data minimisation reduces the risk of a cybersecurity incident by limiting the data available for bad actors to exploit. The less data a company holds, the smaller its attack surface. It also makes companies less tempting targets in the first place.

If the worst occurs, data minimisation makes the fallout less severe. In the event of a breach, strong data minimisation practices mean thieves can only steal a limited amount of data, preferably only anonymised and masked data. 

Regulatory fines should also be smaller because they correlate with the size and impact of a breach. Further, companies may only suffer minor reputational damage if they can prove thieves stole only a small amount of data. This is particularly important because almost half of U.S. businesses have suffered significant revenue loss due to a security breach. 

Build trust

Consumers care deeply about data privacy, with 70% of them taking steps to protect their identity. Data minimisation shows that you care, too. It’s an excellent way to deliver a more ethical and privacy-focused service and prove that you put customer privacy first.

This increases customer trust, reassures cautious users and helps retain existing customers who are becoming increasingly concerned with privacy. 

Reduce costs

Data storage is expensive. A recent survey found that UK companies spend £213,000 to store and manage data. Many respondents said they had to choose data management spending over employee welfare and training. 

Data minimisation reduces these operational costs by decreasing the amount of data companies need to store. A small data footprint means lower infrastructure investments and more efficient resource allocation. Data backups are also cheaper to run.

Ensure regulatory compliance 

Data minimisation is essential for businesses complying with most privacy laws, including the GDPR. It’s one of the seven principles for personal data and privacy protection laid out in Article 5 of the GDPR, which states: 

“Companies must collect only necessary and adequate data, aligned with the stated purpose. “

Companies operating beyond the EU may also need to practice data minimisation to comply with local data privacy laws, including the following:

  • California Privacy Rights Act (CPRA)
  • Colorado Privacy Act (CPA)
  • Florida Digital Bill of Rights (FDBR)
  • Utah Consumer Data Privacy Act (UCDPA)
  • Connecticut Data Privacy Act (CTDPA)
  • Virginia Consumer Data Protection Act (VCDPA)

Even outside of regulated regions, many companies proactively adopt these privacy principles to build trust, ensure scalability and stay ahead of their competitors.

Fines for non-compliance can be significant. Businesses that fail to comply with GDPR can face fines of up to €20 million or 4% of their total global annual turnover, whichever is higher. Meta received the largest GDPR-related fine so far, €1.2 billion, issued by the Irish Data Protection Commission in May 2023. 

Minimise noise

Collecting as much data as possible isn’t helpful. In addition to raising storage costs, this increases noise and makes it harder for analysts to use the data. 

As Timo Dechau explains in his recent webinar on running lean analytics in a privacy-first environment:

“Digital marketers, analysts, and business leaders now try to navigate vast amounts of information that create more confusion than insight, especially when the data is incomplete due to privacy regulations.”

Lean data means fewer variables to process. With Matomo’s Custom Reports, analysts can get the information they need more efficiently, speeding up decision-making and reducing time spent cleaning or interpreting irrelevant data.

Four data minimisation techniques 

Businesses can implement several techniques to anonymise data, reduce the amount they hold and shorten data retention times.

1. Understand what data to collect and set up data collection policies 

The first step is to understand what data is adequate, relevant, and limited to what is reasonably necessary for the purpose. This should be documented in a data collection policy.

The policy explains how your organisation handles personal data. It’s a framework marketers and other teams can reference when building landing pages, forms, and campaigns. It also clarifies for customers who are wary about how organisations use their data. 

Your policy should include:

  • Data collected
  • Collection methods
  • Processing activities
  • Purpose of collection
  • How data is used
  • Who has access
  • How it’s stored
  • How it’s shared

Don’t just write the policy, though. Spend time training employees on your policy and the importance of handling personal data with care. 

2. Pseudonymise or Anonymise data

Companies can protect personal data by removing identifiers. Anonymisation transforms data so that it can no longer be linked to an individual at all (and therefore falls outside GDPR). Pseudonymisation, on the other hand, replaces identifiers with artificial values but can still be re-identified if additional information is available — so it remains personal data under GDPR.

Common techniques include:

  • Data masking: replacing sensitive data with altered or fictional values so the original information is hidden, but the dataset remains usable
  • Data substitutions: replacing original characters with alternatives using pre-established rules.
  • Data shuffling: rearranging data in a dataset.
  • Tokenisation: replacing identifiable data with randomly generated tokens.
  • Pseudonymisation: replacing identifiable data with pseudonyms or fake data. 

For example, merchants rarely store full credit card numbers; they use tokenisation to mask sensitive details. 

3. Limit data access

While deidentified data allows companies to share data freely across their organisations, businesses should limit data access as much as possible. 

One of the best ways to do this is through role-based access control (RBAC). This security method restricts system access to authorised users based on their job role and seniority. In other words, only people who need the data for their jobs can access it. 

4. Create data retention policies 

A data retention policy defines how long companies keep data and how they delete it when it is no longer required. It also outlines data storage and access methods. 

Data retention policies are essential for companies to comply with data protection laws like GDPR. They also offer guidance and reassurance to employees. Deleting corporate data is a big decision, and employees will feel more inclined to follow through if a policy supports their actions.

How Matomo can minimise your data

The web and app analytics data you collect is a great place to start minimising data collection. While some of this data is essential for attributing sales and improving the customer experience, many businesses tend to collect far more than they need to, especially if they use Google Analytics

Matomo—the world’s leading privacy-friendly web analytics solution— includes a range of built-in features designed to help you minimise data collection while delivering incredible analytics. 

1. Automatically Mask or Anonymise data

Matomo lets marketers implement data masking or anonymisation techniques so the data they collect cannot be linked to individual users. 

IP address: The first method is to mask or anonymise a visitor’s IP address and geo-location information in your privacy configuration settings. By default, IP masking is enabled in Matomo. You can choose to mask varying amounts of the IP address. 

An optional setting allows you to select whether to use the full IP address to find the user’s location and immediately mask the IP before storing it or the hashed address for the geolocation lookup. 

Anonymise referrer information: To enhance privacy and comply with data protection laws, Matomo allows users to anonymise referrer information, which can sometimes contain personal data like user IDs. You can choose from several levels of anonymisation, including removing query parameters, keeping only the domain, or fully stripping the referrer URL while still identifying its source type.

No default UserID tracking: To protect your visitors’ or users’ privacy, Matomo does not track UserID by default. While Matomo automatically tracks various data, such as IP address, page views, and browser details, UserID tracking is optional and must be explicitly configured.

Anonymise previously tracked data: Matomo also lets you anonymise data you’ve already collected. In the Anonymise data section of your Privacy settings, configure a one-off data anonymisation process to run on data you have tracked in the past. You can anonymise:

  • Visitor IP
  • Location
  • User ID
  • Visit columns
  • Action columns

2. Let visitors opt out of tracking

The most effective way to minimise data is not to collect it in the first place.

In regulated jurisdictions, such as those governed by the EU ePrivacy Directive and the GDPR, prior consent is mandatory before tracking begins. Unless they are required to provide a service requested by the user, analytics cookies always require active opt-in consent.

Opt-out mechanisms are only appropriate in specific non-EU contexts or narrowly defined legitimate interest use cases where consent isn’t legally required

Matomo supports jurisdiction-specific tracking and opt-out forms (where consent is not required):

Matomo supports jurisdiction-specific tracking and opt-out forms (where consent is not required):

  • Consent-first tracking
    If you need to obtain user consent before tracking their data, you can integrate Matomo with your Consent Management Platform (CMP) to capture and respect user preferences in accordance with local laws.

  • Opt-out form (where consent is not required)
    In regions without mandatory consent, you can embed Matomo’s opt-out form to allow visitors to exclude themselves from tracking.
    • Paste the form’s HTML directly into your website’s code; or
    • Use Matomo for WordPress to automatically match your consent form’s design to your page.

This flexibility ensures that you can configure tracking to meet your legal obligations and your visitors’ privacy expectations.

The opt-out of tracking form on Matomo's website

Opt-out form in Matomo

Related FAQ

3. Shorten cookie lengths and delete old data

The cookies Matomo creates have a pre-specified expiry time. But Matomo lets you shorten cookie lengths to minimise data and free up database space. 

Matomo allows you to configure data retention for both raw data and reports. You can program Matomo to delete historical logs automatically. You can do this in the Anonymise Data section of the Privacy settings, configuring Matomo to disable the visits log or delete logs older than a set number of days. You can also set up purging to happen automatically every day, week or month. 

4. Use cookieless tracking

To minimise the analytics data you store about users, consider using cookieless tracking

Cookieless tracking is an alternative form of tracking in which Matomo uses the visitor config_id (a randomly seeded, privacy-enabled, time-limited hash of a limited set of the visitor’s settings and attributes) to track users. 

In some jurisdictions, cookieless tracking, if combined with collecting no personal data or unique identifiers, may remove tracking consent requirements. But in countries with stricter ePrivacy laws, cookieless tracking will still require prior consent.

5. Use consent-exempt configurations of Matomo

Some EU countries (France, Italy, the Netherlands, Spain, and most recently the UK) provide express consent exemptions for privacy-preserving aggregated analytics that minimise the range of data processed. Matomo is highly configurable and can be set up to comply with applicable consent-exempt conditions (see CNIL consent-exemption).

Protect your users’ privacy with Matomo

Data minimisation protects your businesses, reduces costs and helps you comply with data protection regulations. It’s non-negotiable if you care about using and storing data ethically

Rather than just another compliance requirement, many forward-thinking companies are treating ethical analytics and data minimisation as strategic brand differentiators. By putting privacy first, brands can build trust, grow customer loyalty and gain a competitive edge.

To take the first step on your data minimisation journey, consider switching to Matomo. With Matomo, you get: 

  • Complete control over your data
  • Built-in data minimisation methods
  • A straightforward, easy-to-use analytics interface
  • A built-in GDPR manager
  • Compliance support for other strict privacy regulations

See why more than one million websites trust Matomo to ethically track and improve website performance. Start your 21-day free trial today — no credit card required.

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Transform your user experience with one of the best customer journey analytics tools https://matomo.org/blog/2025/10/customer-journey-analytics-tools/ Thu, 02 Oct 2025 00:39:17 +0000 https://matomo.org/?p=87638 Read More

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Customer journey analytics track and analyse the behaviour of users from the moment they find your brand to the post-purchase experience. 

These tools collect and analyse quantitative and qualitative data, helping you to reduce friction and increase conversions through A/B testing and conversion rate optimisation. 

Finding a tool that can do all this while still protecting your users’ privacy can be tricky. But we’re here to help. 

In this article, you’ll learn what customer journey analytics is, how you can use these tools and what to look for when choosing your own. You’ll even find detailed reviews of the best customer journey analytics tools available today. 

What are customer journey analytics tools?

Customer journey analytics tools collect, analyse and visualise buyer interactions across multiple touchpoints and channels.

Through customer journey analysis, marketers can better understand where users come from, how they navigate websites, where they get stuck and what makes them convert.

A customer journey analysis is the steps you take to track and analyse customer behaviour

Unlike traditional analytics tools that focus on isolated metrics or channels, customer journey analytics tools provide a cohesive view of the entire experience. They help marketers create a rich customer journey map that reflects thousands of different user experiences.

To do this, tools use several data collection methods, including:

By integrating quantitative data — what customers do — with qualitative insights — why they do it — these tools help businesses understand customer behaviour on a much deeper level. 

Imagine a SaaS brand finds that its checkout page has a really high bounce rate. Using session recordings, they see that one of the buttons breaks on mobile devices, preventing people from making purchases. 

It’s an easy problem to fix, but they only discovered it because of their customer journey analytics tool’s session recording capabilities. 

Seven of the best customer journey analytics tools 

With so many analytics tools to choose from, it can be hard to know where to begin your search. 

We’ve made things easier by reviewing seven of the top tools on the market and highlighting their features, use cases, and pricing. 

1. Matomo

Matomo app analytics is a powerful, open-source platform that provides a range of behavioural analysis, segmentation and marketing attribution features while still putting data privacy first.

(Image Source)

Privacy is a huge concern for businesses these days. Unlike other tools, Matomo helps you comply with data privacy laws like GDPR and CCPA with ease. It’s completely open-source (so you can see how the platform collects data) and even offers a self-hosted option, so only you have access to your data. 

Privacy shouldn’t come at the expense of customer insights, though. Matomo offers marketers everything they could need from a customer journey analytics tool, including:

  • Session recordings, heatmaps and visitor logs that trace the entire customer journey, identify friction and help you improve the user experience
  • Customer segmentation tools to analyse how different groups interact with your site
  • Retroactive analysis and near-real-time monitoring of website interactions, giving you insights into how recent changes affect behaviour and conversions
  • A clean, user-friendly interface that even non-technical employees can start using immediately

Pricing starts from $26 per month for cloud hostingOn-premise hosting is free. 

2. Glassbox

Glassbox is a digital customer experience analytics platform that delivers powerful insights through its Augmented Journey Map™ feature.

A screenshot of Glassbox's customer journey analytics tool

Glassbox journey map
(Image Source)

Glassbox’s platform captures every user session across your digital channels without you having to tag events manually. This helps it create a comprehensive map of every customer journey, which marketers can use to:

  • Identify struggle points, conversion blockers and opportunities for optimisation across websites and mobile apps.
  • Understand the why behind user behaviour thanks to session replay capabilities and heatmaps.
  • Understand the potential lost revenue of friction and prioritise improvements accordingly.

Glassbox also offers AI-powered insights that automatically identify anomalies and potential optimisation opportunities. The platform’s real-time alerting capabilities help businesses respond quickly to emerging issues before they significantly impact conversion rates.

Pricing is available upon request. 

3. Fullstory

Fullstory is a digital experience analytics platform that helps businesses to understand, optimise and personalise their customers’ journeys across web and mobile applications. 

A screenshot of Fullstory's dashboard

Fullstory’s new user activation dashboard
(Image Source)

The tool has everything you’d expect from an analytics platform. It uses auto-capture technology to record every user interaction automatically, identifying friction points and conversion drop-offs.

Marketers can pair the journey maps the tool creates with funnels, conversion tracking and segmentation to see why specific users succeed or fail. 

Other key features include:

  • Sentiment signals to give marketers automatic alerts when users show signs of frustration. It lets them tackle friction before it leads to an abandoned cart. 
  • Session replays that bridge quantitative and qualitative analytics, letting teams watch real user sessions to understand the “why” behind the “what”.
  • AI-driven insights, real-time alerts and retroactive data analysis help teams quickly spot trends, identify pain points and validate improvements.

Pricing is available upon request. There is a limited free plan.

4. Hotjar

Hotjar is a behaviour analytics tool that helps businesses understand how users interact with their websites and products. It specialises in heatmaps and session recordings that provide qualitative insights into buyer behaviour.

a screenshot of Hotjar's heatmap tool

Hotjar heatmaps feature
(Image Source)

Hotjar’s intuitive visual analytics tools provide a clear view of exactly how visitors interact with websites. Heatmaps, for example, provide visual representations of how users interact with website pages, showing where they click, move and scroll. This visual approach means you don’t need to be an analytics expert to understand user behaviour and identify optimisation opportunities. 

Other features include:

  • Session recordings, which let you watch user sessions to see frustration events in person
  • User feedback tools, including on-site surveys and pop-ups that collect qualitative data about buyer motivations and intentions
  • User tests, which let marketers run optimisation experiments at scale from within the platform

Pricing starts from $49 per month. There’s a free forever plan that includes unlimited heatmaps.

5. Mixpanel

Mixpanel is a product and customer analytics platform that tracks and analyses user interactions across web and mobile apps. Its main strength lies in providing insights into how users engage with your product. 

A screenshot of Mixpanel's analytics dashboard

Mixpanel product metrics
(Image Source)

Event-based analytics let businesses understand exactly how people progress through their digital experience. Mixpanel provides a wealth of qualitative data in the form of product analytics. But you can support that with qualitative findings from session recordings, too. 

Other features include:

  • Cohort analysis enables you to observe how different user segments progress through each journey stage
  • Retention analysis helps you understand which features and experiences drive long-term engagement
  • Multi-touch attribution lets you measure the true result of your marketing activities and find channels with the most impact.
  • A/B testing for comparing and analysing the performance of different webpage variants

Mixpanel is free to use initially. Enterprise customers will need to request more information. 

6. Heap

Heap Analytics is a product analytics platform that automatically captures and analyses every user interaction on your website and app. It provides a complete view of the customer journey.

A screenshot of Heap's marketing KPIs dashboard

Heap marketing KPI dashboard
(Image Source)

Unlike traditional analytics platforms that require manual tagging, Heap automatically captures all user interactions, allowing businesses to analyse behaviour retroactively. 

This makes Heap particularly good for comparing and contrasting behaviour as your app and website develop. You can get a feel of which updates immediately improved the user experience and which took time to get used to. 

Other customer journey analytics features include:

  • Session replays let you go in and see precisely why a specific user didn’t convert. 
  • Effort analysis helps you find, quantify and remove friction from your funnel.
  • Rage click maps and alerts highlight when users grow frustrated and click repeatedly on your site. 
  • Segmentation analysis lets you compare the journeys of behaviour-driven user cohorts.

A limited free plan is available. Pricing is available on request. 

7. Appier AIRIS (formerly Woopra)

Appier AIRIS, formerly Woopra, is a marketing analytics platform that provides a holistic view of everyone who visits your site. Near-real-time analytics let you see who’s making a payment, browsing your product pages or opening your emails. 

A screenshot of Appier AIRIS' customer journey mapping tool

Appier AIRIS journey map
(Image Source)

Appier AIRIS helps you build detailed customer profiles and use them to personalise the user experiences. The platform’s integration with AIQUA’s personalisation platform means you can create highly personalised experiences. 

Other features include:

  • Optional journey reports to visualise the impact of touchpoints on customer success 
  • Multi-touch attribution to understand the impact your campaigns had on conversions
  • Cohort analysis to segment by date, geography, device, source, job title and more

Pricing starts from $49 per month. A limited free plan is available. 

What can you do with customer journey analytics?

Customer journey analytics tools are incredibly versatile. They can pinpoint what stops users from converting or track how they behave after they purchase. 

Eventually, marketers should use them to track the entire customer journey. But if you’re new to customer journey analytics, consider starting with one of the following use cases. 

Personalise the customer experience

Use customer journey analytics to understand what your customers need and want — then provide them with the perfect, personalised experience. 

Cohort analysis — a form of behavioural analytics where you analyse the behaviour of users who share similar traits — makes this possible. 

An analytics tool with cohort analysis functionality lets you group users by the actions they take (downloading a gated asset, making a purchase or leaving a page, etc.) or demographics (where they’re from, which device they use, etc.)

Different cohorts experience your product or service differently. So mapping and analysing cohort-specific journeys lets you optimise the experience for each group at every touchpoint.

Take smartphone users. Their browsing experience will be very different from that of desktop users. Understanding the specific differences will let you personalise your mobile site to improve the experience and increase conversions. 

Reduce churn

Churning is a fact of life for SaaS brands and other subscription businesses. While it isn’t possible to eliminate churn, you can take action to reduce it with customer journey analytics. 

By analysing the journeys of people who churned compared to those who remained loyal, businesses can identify specific points of friction or problems that result in an unsubscribe.

Once you know why customers churn, you can take a proactive approach to retaining the ones you have. 

Suppose the results show that decreased login frequency and increased support ticket submissions are predictors of churn, for instance. Customer success teams can then email users who haven’t logged in for several months to ask them what’s wrong.

Conversely, you can identify the actions that predict strong customer loyalty, such as completing onboarding experiences and utilising multiple features, and take steps to encourage existing customers to exhibit similar behaviour. 

Reducing churn by even a small percentage can significantly impact revenue and profitability, making it one of the most valuable applications of journey analytics.

Find and eliminate friction

Customer journey analytics excels at identifying friction points that prevent customers from completing desired actions. By analysing where customers struggle, hesitate or abandon actions, businesses can identify and prioritise improvements that have the most significant impact on conversion rates.

It will be much more critical (and profitable) to fix any friction customers experience during the checkout process compared to your homepage, for example. 

You’ll want to combine quantitative metrics (analytics KPIs like time on site and bounce rate) with qualitative insights captured through session recordings and heatmaps to paint a complete picture of user frustration. While web analytics reveal where problems occur, session recordings show exactly how customers experience these issues — and, most importantly, how to fix them. 

Attribute and increase conversions

Understanding which marketing channels and touchpoints contribute most effectively to conversions is essential for optimising marketing spend. Use the multi-touch attribution models in your customer journey analytics tools to understand how different interactions influence purchase decisions.

The type of multi-touch attribution available on Matomo

While traditional last-click attribution models give all credit to the final touchpoint, multi-touch attribution offers more sophisticated results that distribute credit across two or more interactions. They uncover the early-stage touchpoints that play a crucial role in initiating customer journeys that ultimately lead to conversion.

When you know every channel that contributes to a conversion, you can make better decisions and allocate your marketing budget more effectively. If SEO significantly outperforms social, for example, you can choose to spend your social budget on content marketing efforts.

What to look for in a customer journey analytics tool

The number of customer journey analytics tools extends far beyond our shortlist above. Narrow down your search by looking for a tool with all of the following features: 

Customer journey mapping

Customer journey mapping is essential for understanding complex customer paths. 

Matomo lets you connect different customer journey paths to clear goals — like purchases, signups, or downloads. This allows teams to:

  • Monitor how users progress toward key outcomes
  • Segment journeys by goal completion
  • Compare paths across personas

By segmenting journeys based on whether users completed a goal or conversion, it’s easier to see what’s working well and repeat those patterns.

Choose tools that provide visual representations of every customer journey and let you break down journeys by behavioural or demographic cohorts

Pay particular attention to tools that generate journey maps based on actual behaviour data rather than hypothetical journeys. Google Analytics, for example, is notorious for using data sampling, whereas Matomo gives you 100% accurate data.

Behavioural analysis

Behavioural analysis tools help businesses understand what customers do and why they do it. Choose a platform that combines quantitative and qualitative tools, like: 

  • Session recordings
  • Heatmaps
  • User feedback collection

For more detailed analysis, Matomo Form Analytics goes deeper into how users interact with forms, breaking down: 

  • Where they hesitate
  • What they skip
  • When they drop off 

The more qualitative and quantitative feedback you can gather, the better. 

Marketing attribution

Attribution modelling helps marketers understand which channels contribute most significantly to conversions.

Finding a tool that offers multiple attribution models is key. Matomo, for example, provides the following models:

  • First interaction
  • Last interaction
  • Linear
  • Position-based
  • Time decay


As a result, you can shift marketing budgets to channels with the most significant impact and track changes over time. 

Segmentation

Segmentation tools let you break users up into cohorts that share characteristics.

Segmentation should extend beyond simple demographic or acquisition-based groups to include behavioural and engagement-based segments. This more sophisticated approach helps businesses understand the relationship between customer behaviours and journey outcomes.

In Matomo, for example, you can segment visitors by the date they convert, the first time they visited your site and several behavioural metrics, like their browser or device. 

Custom reporting

Customisable reports ensure insights reach the right stakeholders in the most helpful format. Choose a tool that lets you create tailored reports highlighting the metrics most relevant to specific teams or business objectives.

While Matomo’s standard reports are great for most use cases, we know every business has unique needs. That’s why you can choose from over 200 dimensions and metrics to build the specific reports your stakeholders require. 

Data privacy

Data privacy matters when you’re collecting customer journey data. 

GDPR and CCPA compliance features help businesses meet their legal obligations while collecting valuable journey insights. The best tools include features for protecting PII, managing consent and handling data subject requests.

Bonus points if the tool gives you complete control over customer data, preferably storing it on your own servers rather than third-party cloud services

You can configure Matomo to follow even the strictest privacy laws, such as GDPR, HIPAA, CCPA, LGPD and PECR. 

Your users will never feel like they’re being tracked, either. The platform has an opt-out mechanism, the ability to anonymise IP addresses and can be configured to avoid processing any personal data

Optimise your customer journeys with Matomo

Customer journey analytics tools are essential for marketers who want to understand and improve the customer experience. 

With Matomo, you can:

Whether you’re optimising a signup form or scaling a campaign, you have what you need to take action.

Start your 21-day free trial today to explore the platform’s full customer journey analytics features — no credit card required. 

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Top ecommerce analytics tools for decoding buyer behaviour https://matomo.org/blog/2025/09/ecommerce-analytics-tools/ Thu, 18 Sep 2025 04:41:32 +0000 https://matomo.org/?p=87313 Read More

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Choosing between ecommerce analytics tools isn’t just a matter of capturing as much data as possible — although accurate data capture is undoubtedly essential. 

You must also consider how a tool analyses data and helps you turn insights into action. There’s the customer-facing aspect, too. Shoppers shouldn’t be bombarded with cookie requests because you’ve chosen a tool that isn’t privacy-focused.

Finding the right analytics platform can be more complicated than some store owners first think. 

Don’t worry, though. We’ve got you covered. This article reviews five of the top ecommerce analytics tools and explains key factors to consider when choosing a platform.

What are ecommerce analytics tools?

Ecommerce analytics tools are software platforms that capture, measure and analyse data at every stage of the customer experience.

The right data analytics tool can help store owners and marketers to understand how shoppers behave on their site, which marketing channels are most profitable, and why customers abandon their carts

Most tools boast a wide range of features to achieve those goals, including:

Ultimately, a good analytics tool will reduce friction in the customer journey, boost conversion rates and personalise shopping experiences. 

Top five ecommerce analytics tools

Below, you’ll find a roundup of the five top ecommerce analytics tools based on their features, pricing and suitability for different types of stores.

Ecommerce tools at a glance:
Matomo → Privacy-first, open-source, self-hosted
• GA4 → Free, predictive, web/app blend
• Adobe Analytics → Enterprise-grade, customisable
• Mixpanel → Product analytics, real-time, user-friendly
• Hotjar → UX insights, visual, no-code

Whether you’re looking for a free option, a comprehensive tool or a platform that respects your users’ privacy, you’ll find a suitable solution.

1. Matomo 

Best for: Teams needing GDPR‑friendly analytics, full data ownership or deep customisation.

Matomo is an open-source ecommerce analytics platform offering a comprehensive, privacy-first solution.

A screenshot of the Matomo dashboard

Matomo’s ecommerce analytics solution goes beyond simple web tracking to give you all the customer data and tools you need. Track every metric using heatmaps and session recordings to understand how shoppers use your site. Then take action with built-in A/B testing tools. 

The platform’s open-source and privacy-focused nature makes it a solid choice for store owners who care about protecting their customers’ privacy.

Standout features

  • Heatmaps and session recordings to visualise usability issues and frustration points
  • A/B testing tools to optimise product pages or checkout flows
  • Event tracking and goal funnels for conversion rate optimisation
  • Custom reports and dashboards to turn data into insights
  • No data sampling 
  • Ethical and privacy‑first
  • No cookie banners required in many cases (if configured correctly)

Pricing: Free self‑hosted core version, or $29/month for cloud-based option.

2. Google Analytics 4

Best for: Teams needing free, AI‑powered ecommerce insights across web and app.

Google Analytics 4 is the most popular web analytics platform on the planet, with a broad range of features to support ecommerce stores. 

A screenshot of GA4

(Image Source)

Google Analytics excels at showing customer engagement and website traffic metrics. Clear dashboards and reports make it easy to determine who landed on your site, what they did, where they came from, and how they converted. 

It’s a solid choice for first-time store owners looking for a free solution integrated with Google’s other products. However, be careful of the lack of data privacy and data quality. Google samples data when generating results, meaning your metrics may not be 100% accurate. 

Standout features

  • Purchasing tracking, including transaction IDs, revenue, shipping costs and taxes
  • Product performance analysis to see which products are popular and how they are performing
  • Conversion analysis to find drop-off points and areas for optimisation 
  • Dashboards that make it easy to track basic ecommerce data
  • Native integration with Google Ads, Search Console, BigQuery, and Data Studio
  • Free to use 

Pricing: Free. (Enterprises that want more advanced features can use Google Analytics 360, where pricing is available on request.)

3. Adobe Analytics

Best for: Teams that value predictive analytics and customisation over simplicity and affordability.

Adobe Analytics is an enterprise-level platform that combines web, product, and predictive analytics to deliver real-time insights across channels. 

 A screenshot of Adobe Analytics

(Image Source)

For in-depth ecommerce metrics tracking combined with predictive analytics and advanced customer segmentation, Adobe Analytics is a solid choice.

It gives a comprehensive view of real-time customer behaviour thanks to customer journey analysis tools, marketing attribution and ecommerce performance tracking.

It could be a sensible choice if you already use Adobe Experience Cloud or other products in the Adobe ecosystem. However, this platform may be too complicated and cost-prohibitive for everyone else. 

Standout features

  • AI-powered prediction analysis identifying likely buyers, churn signals and customer lifetime value
  • Attribution analysis across channels and multi-touch funnel analysis
  • Detailed customer journey analytics and real-time data
  • Predictive analytics come standard 
  • Native integration with Adobe Commerce for a holistic view of customer interactions
  • Advanced cohort analysis lets retailers create detailed, targeted audiences

Pricing: Available on request

4. Mixpanel

Best for: Product teams needing real-time behavioural insights, funnels, and predictions.

Mixpanel is a product analytics platform focused on user engagement, event tracking and cohort analysis. It has a dedicated ecommerce analytics solution for store owners looking to find conversion bottlenecks and drive more sales.

A screenshot of Mixpanel

(Image Source)

Mixpanel is an intuitive ecommerce analytics platform that allows store owners to track user behaviour. It comes with a range of behavioural analysis tools, such as session recording and cohort analysis, to help identify and solve cart abandonment issues. 


While Mixpanel offers a free plan, it’s limited in scope. Enterprise plans start at $20,000 per year.

Standout features

  • Event-based tracking with granular control over how user behaviour is recorded
  • Funnel and cohort analysis to measure retention, repeat buyers and conversion paths
  • Visual dashboards and real-time behavioural insights
  • Multi-touch attribution to measure marketing effectiveness
  • Streamlined interface and intuitive dashboards make data analysis accessible
  • Built to handle high data volumes and process billions of events monthly
  • Seamless integration with other software platforms

Pricing: Free to use, capped at one million monthly events.

5. Hotjar

Best for: UX teams needing fast heatmaps and session playback.

Hotjar is a behaviour analytics tool that allows store owners to track shoppers’ interactions with their sites and experiment with ways to increase conversion rates. 

 A screenshot of Hotjar

(Image Source)

Hotjar’s visualisation tools are one of the best to learn how shoppers browse your site. The platform has more types of heatmaps than almost any other provider, including:

  • Click maps
  • Heat maps
  • Scroll maps
  • Rage click maps

It’s an excellent tool for store owners who want to visualise how customers click, scroll, and interact. However, it doesn’t collect ecommerce data to the same degree as other platforms. 

Standout features

  • Heatmaps and session recordings to understand user behaviour
  • Conversion funnels that track where users drop off during checkout
  • Feedback polls and surveys to track shopper satisfaction
  • User-friendly interface and intuitive design
  • Highlights feature lets teams share key user insights
  • Native integrations with Shopify and other ecommerce platforms

Pricing: starts from $39 per month. A limited free plan is available

What to look for in an ecommerce analytics tool

Whether you use our shortlist above or create your own, you’ll want to ensure your tool has all the necessary features. 

Here are the most important ones.

Core ecommerce metrics tracking

First, your analytics tool needs a dedicated ecommerce solution that tracks key shopping metrics. The following are particularly important:

  • Orders
  • Total revenue
  • Taxes
  • Shipping costs
  • Average order value (AOV) 
  • Abandoned carts

You can track all these and more in Matomo. 

Check out our guide to the 7 Ecommerce Metrics to Track and Improve to learn more. 

Custom reports

Every ecommerce store is different, so choose a flexible analytics platform that lets you create custom reports

In Matomo, you can choose from over 200 dimensions and metrics, as well as different visualisations like bar, pie, and line graphs.

A screenshot of Matomo's custom report functionality

You can even automate your reporting by integrating Matomo’s Custom Reports feature with the Email Reports feature. 

Customer segmentation 

Even though you’ll want to collect information on every visitor, it can be helpful to learn more about audience groups. 

Customer segmentation lets you analyse shoppers based on demographics, behaviour and other factors to create more targeted campaigns and encourage repeat purchases. 

In Matomo, for example, you can create segments based on:

  • Demographics
  • Visit patterns
  • Buyer behaviour
  • Marketing campaigns
  • Technology customers use
  • Average order value
  • Lifetime value


By using these segments to zero in on particular audiences, you can offer more value to your customers and gain a competitive advantage in the marketplace.

Conversion rate optimisation capabilities

Conversion rate optimisation is the key to higher revenues, better return on ad spend and long-term customer retention. 

But you don’t need to spend time and money on a dedicated tool. Choose an ecommerce analytics tool with built-in conversion rate optimisation capabilities to keep everything under one roof. 

With Matomo, for example, you can:

  • Use heatmaps to see how users engage with your site
  • Replay website sessions to learn why users don’t convert
  • Run A/B tests to experiment with different headlines, images, calls to action or page layouts

Matomo also measures the impact of your experiments on key ecommerce metrics and lets you implement changes based on statistically significant differences, not guesswork. 

Marketing attribution

Marketing attribution assesses the impact each channel has on conversions and revenue. It helps you understand which channels drive the best shoppers.

Matomo makes it easy to understand which channels drive the most conversions and how much each is worth.

 A screenshot of Matomo's marketing attribution functionality

Marketing attribution in Matomo

To measure the impact of each channel across the customer journey, you can choose from several attribution models (last interaction, first interaction, position-based, etc.).

Without marketing attribution, you risk wasting time, money and effort on channels that don’t benefit your business.

Ecommerce platform integration

Make it as easy as possible to start by choosing an analytics tool with native integrations with ecommerce platforms like Shopify and Magento.

A screenshot of Matomo's integrations

Magento, for example, integrates with every major platform and numerous smaller tools, including PrestaShop, OpenCart, and Zen Cart. 

Server-side tracking

Most ecommerce analytics platforms collect ecommerce data using JavaScript-based tracking. While this is largely effective, it can’t collect every interaction. That’s because ad blockers and other tools can block JS tracking. 

The only way to guarantee you collect data on every shopping action is through server-side tracking

Server-side tracking means that when a user interacts with your website, your backend server captures the event data and sends it to Matomo’s tracking API endpoint. This bypasses the browser and improves data accuracy, reliability, and privacy compliance. You control what data is collected, stored, and processed.

Data privacy and security

Some ecommerce analytics platforms — like Google — use the data they collect about your customers to power additional services like Google Ads and sell to other companies.

Matomo, on the other hand, was designed with privacy in mind. You can configure it to follow strict privacy laws like GDPR and CCPA. Using Matomo also means all of your valuable data is owned by you and you alone.

Privacy-first ecommerce with Matomo

An ecommerce analytics tool helps you understand customer behaviour, make smarter marketing decisions and drive growth.

With Matomo, you can do all that while prioritising your users’ privacy. Trusted by over one million websites, Matomo’s open-source software is the ethical analytics solution every store owner needs.

Start your 21-day free trial — no credit card required.

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6 Adobe Analytics alternatives for privacy-conscious companies https://matomo.org/blog/2025/09/adobe-analytics-alternatives/ Fri, 05 Sep 2025 23:47:19 +0000 https://matomo.org/?p=87037 Read More

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Adobe Analytics is a widely used data analysis platform — but it’s expensive, complex, and, for very large datasets, reliant on data sampling.

Fortunately, there are a number of more affordable, accurate and user-centric analytics solutions that address these concerns. 

This guide explores six top Adobe Analytics alternatives, compares their key features and capabilities and explains how to find the best fit for your analytics needs.

What is Adobe Analytics? 

Adobe Analytics is a popular digital analytics platform. It’s known for its enterprise-grade capabilities, which are aimed at larger organisations with complex data needs. 

It offers detailed insights into website traffic, customer behaviour and conversion performance. It can segment audiences, track activity and compare key metrics like page views, traffic sources and customer journeys.

Its AI-powered tools, like anomaly detection and predictive analysis, help spot trends and optimise marketing strategies. 

Despite its sophisticated capabilities, it does come with challenges. 

What’s the problem with Adobe Analytics? Why switch?

One of many common struggles among ‌Adobe Analytics users is the platform’s setup. 

The UI is complex and overwhelming for non-technical users, and the platform has a steep learning curve.

Adobe Analytics also has some problematic features. Manual tagging, for instance, is extremely time-consuming. Updating and keeping track of tags “by hand” like this makes it hard to scale along with your business.

The manual tagging feature is also error-prone and requires technical expertise to tag appropriate actions and extract valid insights. 

Even if you tag everything correctly, these insights are limited to a certain number of pre-set interaction types, which may not reflect the full spectrum of customer behaviour.

Users also complain about latency issues with Adobe Analytics. Delays in reporting make it hard to get instant insights, leading to slower decision-making.

Pricing is another issue. The higher tiers can get quite expensive. And there’s no free option beyond a product demo, so there’s no real way to try it before committing. 

6 Adobe Analytics alternatives and who they work best for

Clearly, Adobe Analytics isn’t for everyone. Let’s explore some of the top alternatives for website analytics.

1. Matomo – Best for privacy-focused companies that need all-in-one analytics

For organisations that must comply with stringent regulations like GDPR or CCPA, privacy features are critical factors in a web analytics solution.

Matomo offers an ethical, privacy-first approach to analytics. It gives businesses deeper control over customer data to ensure its accuracy, security and integrity.

One of Matomo’s key benefits that sets it apart from other analytics solutions is its capability for users to self-host data. This offers unparalleled security and compliance. 

It’s also one of the few platforms that combines traditional web analytics with behavioural analytics. Users can access features like heatmaps, A/B testing and session recordings, all under one roof.

Matomo can track everything from technical site performance to customer experiences and show the results on custom dashboards or automatic email reports.

Plus, with cookieless tracking and no data sampling, organisations know they’re getting 100% accurate insights without sacrificing user privacy.

Matomo privacy-focused web analytics dashboard

Matomo dashboard with visits log, visits over time, visitor map, combined keywords and traffic sources
(Image Source)

Key Features

  • Advanced multi-channel reporting for websites, mobile apps and ecommerce
  • Heatmaps and session recordings
  • A/B testing platform
  • Multi-channel conversion attribution
  • User flow to visualise customer journeys
  • IP anonymisation
  • Cookie-free tracking
  • Search engine keyword performance reports
  • Customisable dashboards and reports
  • Integration with over 100 platforms, including Google Ads, WordPress and Magento

Matomo was designed with the strictest data privacy and compliance requirements in mind: no third-party access and no data sold to advertisers. Instead, users can anonymise IP addresses and configure “DoNotTrack” settings.

All data is accurate. There’s no AI filling in gaps or skewed samples, just 100% factual data that drives better decision-making.

Strengths

  • Fully GDPR compliant with advanced privacy features
  • Full data ownership with no third-party interference
  • Comprehensive analytics tools that don’t rely on data sampling
  • Cookieless tracking for more accurate, compliant insights
  • Self-hosting and cloud options available
  • Supports 100 currencies and multiple time zones
  • Strong integration with other tools via API

Common community critiques

  • Short learning curve for beginners
  • Some premium features come at an extra cost

Pricing

  • Matomo On-Premise is free.
  • Matomo Cloud starts at just under $22 a month if paid annually. 

Matomo vs. Adobe Analytics – The verdict 

Adobe Analytics offers a diverse set of enterprise-level tools. But it comes at a much higher cost and doesn’t have the same emphasis on privacy. It’s also missing some of the key advanced features that Matomo offers, such as search engine keyword reports, cookie-less analytics and full GDPR compliance. 

Matomo, on the other hand, stands out for privacy-focused companies. Not only is it a budget-friendly solution, but it also provides 100% data ownership. 

In contrast, Adobe’s platform relies on data sampling and third-party tracking. If privacy and customisability are top priorities for your company, choose Matomo over Adobe Analytics.

Ready to learn more? Try Matomo for free now.

2. Google Analytics – Best for budget-conscious businesses that track with cookies

Google Analytics is a household name in web analytics. It’s a free tool that allows businesses to track website traffic and user behaviour.

It provides basic insights into digital performance without the high pricing plans of more advanced tools, making it great for small companies and startups with limited budgets. 

It’s a natural choice for marketers using Google Ads who want to measure ad performance. 

GA isn’t the most accurate tool as it relies on data sampling, meaning the results don’t consider 100% of website visitors.

Unfortunately, Google Analytics also lacks advanced privacy controls and relies on cookies for tracking.

However, if you prioritise price over privacy, Google Analytics delivers strong foundational analytics.

Google Analytics reporting dashboard

GA reporting dashboard with active visitors, traffic type, average visit duration and bounce rates
(Image Source)

Key Features

  • Visits by traffic type (organic, social and direct)
  • User behaviour tracking (clicks, scrolls and time on page)
  • Demographic and interest data
  • Conversion and ecommerce tracking

Strengths

  • Easy to track behaviour across multiple devices
  • Integrates easily with Google Ads for ad tracking

Common community critiques

  • Limited privacy controls
  • Data sampling

Pricing: 

  • Google Analytics is free to use. 
  •  Advanced features are available through Google Analytics 360 for an additional cost.

Google Analytics vs. Adobe Analytics – The verdict
Google Analytics offers good value for budget-conscious businesses. However, it falls short when it comes to enterprise-level depth and privacy. While easy to set up, it lacks the custom dashboards Adobe offers.

3. Mixpanel – Best for product-led companies identifying audiences

Mixpanel is a product analytics platform. It’s designed to show companies how users interact with their products.

It ‌excels at uncovering high-value audiences by tracking customer actions and analysing user journeys. Its strong behavioural analytics and segmentation tools help businesses see how to make products more engaging for specific groups.

However, the free plan limits historical data retention. This restricts long-term trend analysis. 

Mixpanel boasts an intuitive interface for basic tasks, which is ideal for less experienced teams. However, you’ll need technical expertise to use advanced features like SQL queries and custom events. 

Its reliance on third-party storage also raises privacy concerns.

While Mixpanel is great for tailoring product experiences to target audiences, it’s not ideal for teams that prioritise data ethics or lack technical expertise.

Mixpanel analytics dashboard

Mixpanel product metrics dashboard with channels by plan, channel stickiness, annual spend, new user accounts and more
(Image Source)

Key features

  • Custom event tracking for specific user actions
  • Detailed reporting for immediate insights
  • User behaviour funnels to track conversion steps

Strengths:

  • Self-serve support interface for non-technical users
  • Advanced segmentation for detailed audience analysis

Common community critiques

  • Restricted historical data retention in free tiers
  • Limited performance metric tracking

Pricing: 

  • The free plan includes basic analytics for up to 1M monthly events
  • Beyond that, pricing scales with usage — 1.5M events is ~$140/month (or $100 with annual billing), 3M events is ~$378/month ($270 with annual billing). For exact estimates, use their Growth plan price calculator.

Mixpanel vs. Adobe Analytics – The verdict
Mixpanel excels in product analytics but doesn’t provide the same depth of web analytics as Adobe Analytics.

Adobe also offers better custom reports and audience segmentation to help with marketing and traffic analysis. 

4. Amplitude Analytics – Best for growth-stage companies focused on product customer journeys

Similar to Mixpanel, Amplitude Analytics is also a product analytics platform. It focuses on optimising customer journeys for digital products.

It excels in user segmentation. You can create detailed cohorts to track drop-offs throughout your funnels. Its A/B testing feature lets product teams compare conversion strategies and identify effective solutions.

However, its session-based tracking is restrictive. It analyses discrete visits but doesn’t track multiple visits or visitor origins, making it challenging to draw long-term insights.

Amplitude is ideal for growth-stage companies seeking deep insights into user interactions, but it is not suitable for businesses that need comprehensive, long-term customer journey tracking.

Amplitude Analytics Dashboard

Amplitude Analytics dashboard snapshot showing average revenue per user for a specific product
(Image Source)

Key features:

  • User path tracking
  • Custom event tracking for product usage
  • Behavioural cohort analysis for targeted insights
  • A/B testing to optimise product experiences

Strengths:

  • Detailed segmentation of user behaviour
  • Strong focus on product metrics

Common community critiques

  • Limited support for traditional web analytics
  • Session-based tracking isn’t very comprehensive

Pricing: A free starter plan is available. Paid plans are custom-built and pay-as-you-go. 

Amplitude vs. Adobe Analytics – The verdict
Amplitude ‌helps companies understand customer journeys around product usage, concentrating on detailed behavioural analysis. Web analytics are product-focused rather than sales-focused.

For more traditional web analytics, Adobe Analytics provides traffic source tracking, conversion optimisation and insightful reporting.

5. Heap – Best for lean startups that want code-free analytics

Heap is a code-free analytics platform. It’s for tracking and enhancing user behaviour across digital experiences. It offers behavioural analytics and session replays to pinpoint friction points in the user journey.

Its standout feature is automatic event tracking, which helps you capture user interactions without manual setup. This makes it particularly appealing for lean teams and those without technical expertise. 

Unfortunately, Heap has limited customisation options, restricting advanced users with complex analytics requirements. 

It also lacks GDPR compliance support. This is an issue for privacy-conscious organisations.

Heap is excellent for startups that want user-friendly analytics with automated tracking, but it won’t fit businesses that need extensive customisation or strict privacy compliance.

Heap reporting dashboard

Heap marketing KPI dashboard
(Image Source)

Key features:

  • Automatic event tracking 
  • Session replays
  • Customisable dashboards for quick insights
  • Behavioural analytics for deep user understanding

Strengths:

  • Simple setup 
  • Supports cross-device user journeys
  • Codeless event tracking

Common community critiques:

  • Limited customisation for advanced users
  • Events can pile up quickly without dedicated monitoring 

Pricing: It’s free for up to 10k sessions. Paid plans have custom pricing.

Heap vs. Adobe Analytics – The verdict
Thanks to its code-free setup, Heap is far easier to implement than Adobe Analytics, even without technical expertise. 

That said, Adobe offers more advanced features to monitor site traffic and marketing performance. 

6. Open Web Analytics – Best for developers seeking analytics customisation

Open Web Analytics (OWA) is a free, open-source analytics platform for developers who need customisable tracking solutions.

It’s highly flexible, offering users full control over their data. Features like heatmaps, clickstream tracking and API support are some of its main strengths.

But OWA is not for inexperienced teams. It requires extensive technical expertise to set up and maintain, and it relies on community support. If you need timely assistance, you might struggle.

OWA doesn’t rely on third-party storage, which is good for privacy-focused teams. However, it’s best for technically skilled teams, not those needing out-of-the-box solutions.

Open web analytics developer dashboard

OWA developer dashboard with site metrics, top content, actions and traffic sources
(Image Source)

Key features:

  • Customisable web analytics with Javascript and PHP APIs
  • Heatmaps and clickstream tracking
  • Integration with WordPress and MediaWiki
  • Conversion goal and funnel tracking

Strengths:

  • Full data control 
  • Custom tracking 

Common community critiques:

  • Limited support
  • Requires significant setup and deep technical knowledge

Pricing: Free 

OWA vs. Adobe Analytics – The verdict
Firstly, OWA is free, while Adobe Analytics comes with a steep price tag.

However, Adobe Analytics gives users an enterprise-grade packaged solution with AI-driven insights. Customising OWA is hands-on and meant for developers. 

What to look for when picking a web analytics tool

Here are the key factors to consider when picking an Adobe Analytics alternative.

1. Comprehensive features

Look for analytics tools that offer detailed analysis through heat maps, session recordings and interactive dashboards.

All-in-one solutions like Matomo provide in-depth feedback, analysis and reporting on user behaviour patterns. Teams only need one tool to understand user experiences and optimise web performance.

2. Privacy and compliance

Tools that handle sensitive customer behavioural data need to prioritise privacy and compliance.

That means full compliance with privacy features like IP anonymisation, cookie-less tracking and total data ownership. This ensures data is secure, private and compliant.

3. 100% data accuracy

Many tools claim to provide accurate data while using data sampling to speed up data processing and analysis.

These samples aren’t always representative of the entire dataset. So, conclusions can be skewed or inaccurate.

Matomo doesn’t use data sampling, meaning 100% data accuracy and more reliable insights.

Choose analytics that don’t compromise data privacy

Choosing the right analytics software can preserve user privacy and build customer trust. 

Remember, not all tools offer the same protection and control over data. 

Choose Matomo for 100% data ownership, full privacy and completely accurate analytics. Keep your data in your hands. Try Matomo for free now. 

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Turn insights into action with the best marketing analytics tools https://matomo.org/blog/2025/08/marketing-analytics-tools/ Wed, 20 Aug 2025 23:34:25 +0000 https://matomo.org/?p=86707 Read More

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Behind every great marketing team is a marketing analytics platform that collects performance data and identifies ways to improve. 

But with hundreds of tools to choose from in a market valued at over $5.6 billion, how can you find the best platform that offers cross-channel tracking and advanced analysis while staying on the right side of privacy laws?

We’re here to help. 

In this article, let’s review seven of the top marketing analytics tools, highlighting their standout features, pricing, and common community critiques. You’ll learn why choosing the right tool is crucial and what factors to consider when making a decision. 

What are marketing analytics tools?

Marketing analytics tools capture and analyse data from various marketing channels, such as your website, social media profiles, and paid ad campaigns. 

Marketers use these platforms to find ways to optimise campaigns and drive more conversions. Marketing attribution tools, for example, measure marketing effectiveness and help marketers understand which channels drive the most conversions. As a result, they can optimise budgets, allocating more money to the most effective channels. 

A screenshot of Matomo's attribution modelling

Multi-Channel conversion attribution in Matomo
(Image Source)

Marketers can also reduce friction from the customer journey. Behavioural analytics tools like heatmaps and session recordings help marketing teams understand what’s stopping users from converting and run experiments to increase conversion rates. 

Marketers can use an all-in-one analytics tool or a platform-specific alternative. Some analytics only track your social media efforts, for example. Others, like Matomo, let you track web visitorspaid ad performance, SEO data and attribute conversions from multiple campaigns. 

The features and capabilities of marketing analytics tools can also vary by industry. For example, financial marketing analytics platforms will prioritise compliance and data security, while e-commerce teams focus on user behaviour analysis. Advanced tools now leverage machine learning to predict trends and automate insights, making them indispensable for data-driven decision-making.

7 of the best marketing analytics tools

With numerous marketing analytics platforms to choose from, it can be challenging to determine the best one for your business. 

We’ve done the hard work, though. Below you’ll find reviews of seven of the leading tools, why they’re great and what customers say about them.

1. Matomo

Matomo Analytics is a leading ethical open-source marketing analytics platform that powers over a million websites in more than 190+ countries.

A screenshot of Matomo's marketing analytics dashboard

Main dashboard in Matomo
(Image Source)

Why Matomo: Matomo empowers organisations to get the insights they need without compromising user privacy. Businesses can significantly reduce the amount of personal identifiable information they collect and comply with privacy laws like GDPR and CCPA. At the same time, they can use visitor logs to track the entire customer journey, assess the value of marketing channels using multi-touch attribution and analyse visitor behaviour using heatmaps and session recordings.

Standout features include multi-touch attribution, visitor logs, goal tracking, custom reports, e-commerce tools, form analytics, tag manager, Google Analytics Importer, heatmaps and session recordings. 

Integrations: Matomo integrates with more than 100 content management systems, e-commerce platforms and frameworks, including WordPress, Cloudflare, Magento, Google Ads, Drupal, WooCommerce and Wix.

Strengths:

  • 100% accurate, unsampled data
  • Privacy-focused marketing analytics
  • Complete data ownership 
  • Open-source software 
  • Self-hosting and cloud-based options
  • A built-in GDPR Manager

Common community critiques:

  • Non-technical users can experience a learning curve with some of the platform’s more advanced features
  • Premium features are proprietary

Pricing: Matomo On-Premise is free to use. Matomo Cloud costs $23 per month and comes with a 21-day free trial (no credit card required).

2. Heap by Contentsquare

Heap by Contentsquare is a digital insights platform that gives businesses a near-real-time understanding of their users’ digital journeys.

A screenshot of Heap's marketing analytics platform

Demo dashboard in Heap
(Image Source)

Why Heap: Heap helps businesses paint a complete picture of their customers. It automatically records every user interaction (clicks, page views, form submissions and more) without manual event tagging to give marketers access to every metric and allow for retroactive analysis. 

Standout features include data science tools that identify customer friction, journey analysis, session replays, heatmaps, pre-built dashboards and customer cohort analysis.

Strengths:

  • Automatic event tracking eliminates the need for manual tagging, saving time and reducing implementation errors.
  • Setting up Heap is easy with a single code snippet. You don’t need advanced technical skills.
  • Real-time reporting and live data feeds help marketers quickly spot opportunities and issues. 

Common community critiques:

  • The volume of data capture can create more noise than signal, which clouds analysis
  • Users can find the platform’s interface unintuitive
  • Businesses can accidentally collect personally identifiable information (PII) if they don’t configure the platform correctly

Pricing: Heap has a limited free plan for up to 10,000 monthly sessions. Pricing for Growth, Pro and Premier plans is available upon request. 

3. Mixpanel

Mixpanel is a product and marketing analytics platform that helps SaaS and mobile marketers track user retention and engagement. 

A screenshot of Mixpanel's marketing analytics platform

Product metrics dashboard in Mixpanel
(Image Source)

Why Mixpanel: Unlike traditional analytics tools that focus on pageviews and sessions, Mixpanel uses event-based analytics to track, analyse, and optimise user actions. It also has AI-powered predictive analytics that help marketers identify trends and proactively address churn. 

Standout features include predictive analytics, funnel analysis, GA4 migration, A/B testing and real-time reports

Strengths:

  • Intuitive dashboards and reports make Mixpanel accessible for non-technical users
  • Extensive integrations ensure seamless data flow across your tech stack
  • Advanced cohort analysis and customer segmentation support targeting and personalisation efforts

Common community critiques:

  • The wide range of features means there’s a steep learning curve for new users
  • Pricing rises quickly for enterprise users
  • Event tracking can be difficult to set up

Pricing: Mixpanel has a free forever plan with limited features. Premium plans give you one million monthly events free and then charge $.00028 per event after that.

4. Funnel

Funnel is a low-code marketing data platform that automates the collection and transformation of marketing data from hundreds of sources. 

A screenshot of Funnel's marketing analytics platform

Performance marketing dashboard in Funnel
(Image source)

Why Funnel: Funnel is the ideal choice for marketers operating across dozens of different channels. It helps you gain a holistic view of marketing performance by pulling in data from over 500 sources, cleansing and visualising it.

Standout features include a vast number of integration partners, automated data collection and transformation, two-year data storage and custom integrations.

Strengths:

  • Low-code setup makes Funnel accessible to anyone
  • Highly responsive customer support
  • Custom metrics for personalised reporting

Common community critiques:

  • The visualisation features are fairly basic. Marketers often need to use other tools like Tableau.
  • The platform has a steep learning curve
  • Delays can occur when processing data from third-party sources

Pricing: Available upon request

5. HubSpot

HubSpot is a comprehensive analytics platform that helps marketers improve every stage of the buyer’s journey. Detailed insights and robust automation capabilities let marketers manage campaigns, track leads and optimise customer experiences. 

A screenshot of HubSpot's marketing analytics platform

Marketing dashboard in HubSpot
(Image Source)

Why HubSpot: HubSpot’s all-in-one platform is ideal for marketing and sales teams that want to paint a complete picture of their combined efforts. Analytics features let marketers track visitors and campaign performance, while automation tools nurture prospects and turn visitors into MQLs.

Standout features include an easy-to-use dashboard, marketing automation, A/B testing and pre-made reports. 

Strengths:

  • A very intuitive dashboard makes it easy for users of all abilities to navigate
  • Powerful automation features help marketers save time
  • There’s strong customer support and a large community of certified partners

Common community critiques:

  • Pricing is expensive and increases quickly 
  • Engagement tracking is less granular than dedicated behavioural analytics tools
  • The wide range of features can lead to analysis paralysis

Pricing: Marketing Hub Professional starts at $800 per month. Marketing Hub Enterprise starts from $3,600 per month.

6. Whatagraph

Whatagraph is a marketing analytics and automated reporting platform that helps agencies and in-house teams turn complex, multi-channel marketing data into visually easy-to-understand reports.

A screenshot of Whatagraph's marketing analytics platform

Web analytics report in Whatagraph
(Image Source)

Why Whatagraph: Whatagraph is a great choice for companies that prioritise data visualisation. It lets users combine data from over 50 sources into customisable dashboards and reports. There are plenty of ready-made templates as well as a drag-and-drop interface in case you want to create your own.

Standout features include direct integration with 50+ data sources, data blending across different channels, digital ad spend tracking and automated report creation.

Strengths:

  • A very intuitive and user-friendly interface that lets anyone start building reports immediately
  • Visually appealing reports make it easy to share insights with stakeholders
  • Highly responsive support team

Common community critiques:

  • No freemium pricing
  • It can take users time to get to grips with Whatagraph’s wide range of features
  • It lacks native integrations for some platforms

Pricing: Available on request

7. Google Analytics

Google Analytics offers two analytics platforms: GA4 and GA360. GA4 is Google’s free analytics solution you’re probably familiar with. GA360 is the premium, enterprise-level version of GA4. It’s built for large organisations with complex analytics needs and high data volumes.

A screenshot of Google's marketing analytics platform

Home page in GA4
(Image Source)

Why Google: GA4 is a well-known and widely used analytics platform. It’s free, familiar to most people and has plenty of online resources to help if you get stuck. However, it doesn’t protect user privacy, uses data sampling and lacks advanced features like behavioural analytics. 

GA360 users can configure the platform to be more privacy-friendly, but there are still better (and cheaper) privacy-friendly alternatives.

Standout features include event-based tracking, cross-platform tracking, audience segmentation and real-time reporting.

Strengths:

  • GA4 is free to use
  • There’s no shortage of online guides
  • Cross-platform tracking helps you get a better view of your visitors 

Common community critiques:

  • Not privacy focused or GDPR-compliant
  • Data sampling muddles insights
  • Both GA4 and GA360 look and are very different from Universal Analytics

Pricing: GA4 is free to use. GA360 pricing is available on request

What are the benefits of marketing analytics tools

Research by Supermetrics reveals that marketing teams are using 230% more data than they did in 2020. 

Analytics tools are the primary means of generating marketing data, but they have other uses as well. Here are four reasons every department needs a comprehensive analytics platform:

  • Track marketing efforts. Marketing analytics offers a unified view of all your campaigns across channels — from paid ads and social media to email and organic search. By consolidating data from multiple sources, these platforms help marketers monitor campaign performance in real time and prove campaign effectiveness to stakeholders. 
  • Improve customer understanding. Analytics platforms that have built-in behavioural tracking capabilities like heatmaps and session recordings help marketers generate qualitative and quantitative data that reveals how users interact with your site, what content resonates and where friction points occur.
  • Optimise web and marketing experiences. Marketing is a game of continuous improvement. Analytics platforms help marketing teams attribute conversions to specific campaigns, refine user journeys with A/B testing and improve the overall experience. 
  • Drive more conversions. Ultimately, the goal of marketing analytics is to increase conversions, whether that means sales, sign-ups or other events. Performance insights help marketers fine-tune their strategies, target high-value segments, and craft campaigns that move prospects down the funnel more efficiently. In a world where marketing budgets are falling by 15% year-on-year, it’s important to squeeze every drop of ROI from your campaigns. 

Top features to look for in a marketing analytics tool

With so many platforms to choose from, picking the right analytics tool can be a challenge. 

Make it easier for yourself by looking for a tool that offers features to enhance your insights while ensuring your business remains compliant with data privacy regulations. 

Advanced analytics features

Don’t settle for a simple web analytics tool or try to juggle different analytics platforms for each channel. Instead, choose a single tool that provides a range of advanced analytics features, including the following:

By doing so, you’ll get everything you need from a single platform. This will keep costs down and make managing marketing data much easier.

Data visualisation

A great marketing analytics tool will offer customizable dashboards and reports that marketers can use to make sense of complex data. Look for:

  • Drag-and-drop interfaces
  • Pre-built templates
  • Detailed visitor profiles

Data visualisation not only aids decision-making but also helps communicate results clearly to non-technical team members and executives.

Near-real-time reporting

Many platforms will claim to offer real-time reporting. But that’s rarely possible. Instead, choose tools with near-real-time reporting that help marketers measure the impact of campaigns as quickly as possible. 

Matomo, for example, offers a Visits in Real-time Report that lets you see the flow of visitors on your site and shows how many people visited in the last 30 minutes and 24 hours. 

A screenshot of Matomo's real-time visitor report

Visits Overview in Matomo

The report refreshes every 5 seconds to display new visits and tracks a range of visitor attributes, including country, operating system, referrer, time spent on site and whether they are a new or returning visitor. 

Data security and privacy

Data privacy should be a top priority for modern marketers. Employing ethical analytics and data practices will mean you don’t have to annoy users with cookie banners. But it also improves trust and minimises legal risk.

Choose analytics tools that are transparent about data collection, offer robust privacy controls, and comply with regulations like GDPR and CCPA. Features such as anonymised tracking, customisable consent banners and secure data storage help protect both your business and your customers.

Matomo has all of these features and more, protecting your visitors’ privacy in a dozen different ways. 

100% data ownership and no sampling

A lot of analytics platforms don’t let you own or properly use your data. Data sampling — where tools only analyse a portion of your data — is a particular problem in Google Analytics. It clouds insights, meaning marketers make decisions based on guesses, not facts. 

Who owns your data matters, too. When you use a platform like Google Analytics, you give permission for Google to use your customers’ data for advertising purposes. 

Instead of trading your customers’ data for free analytics, use a platform that gives you 100% ownership of your data. Matomo does this in a couple of ways:

  • Matomo On-Premise offers 100% data ownership, as it’s hosted on your own servers. You choose where to store it, and we cannot access it. 
  • Matomo Analytics for WordPress provides a self-hosted WordPress-specific option that offers the benefits of On-Premise without the technical setup.
  • Matomo Cloud subscriptions are governed by our Terms, which state that you own all rights, titles and interests in your users’ data. In other words, we can’t sell it to third parties or claim ownership. 

While Matomo products may change, our commitment to privacy never will. You’ll always be able to self-host Matomo for free. 

Matomo Heap Mixpanel Funnel HubSpot Whatagraph Google Analytics
Privacy/GDPR-friendly ✔️
Open-source ✔️
Self-hosting option ✔️
Multi-touch attribution ✔️
Heatmaps & session recordings ✔️✔️⚠️¹
Goal tracking ✔️✔️✔️✔️
Custom reports ✔️✔️✔️✔️✔️✔️✔️
E-commerce tracking ✔️✔️✔️✔️
Tag manager ✔️✔️✔️
GA importer ✔️
Real-time reporting ✔️✔️✔️✔️⚠️²✔️
Predictive analytics ✔️
A/B testing ✔️✔️
Marketing automation ✔️
Visualisation / dashboards ✔️✔️✔️⚠️³✔️✔️✔️
Automated reporting ✔️
Free plan available ✔️✔️✔️✔️

Trust Matomo for comprehensive marketing analytics

The right analytics platform empowers marketers to track campaigns across channels, gain deep insights into customer behaviour, optimise user experiences and ultimately drive more conversions. 

If you care about collecting data while respecting your users’ privacy, a tool like Matomo is the way to go. Try Matomo free for 21 days. No credit card required.

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7 Mixpanel alternatives to consider for better web and product analytics https://matomo.org/blog/2025/08/mixpanel-alternatives/ Fri, 01 Aug 2025 00:56:17 +0000 https://matomo.org/?p=86175 Read More

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Mixpanel is a web and mobile analytics platform that brings together product and marketing data so teams can see the impact of their actions and understand the customer journey. 

It’s a well-rounded tool with features that help product teams understand how customers navigate their website or app. It’s also straightforward to set up, GDPR compliant, and easy for non-technical folks to use, thanks to an intuitive UI and drag-and-drop reports. 

However, Mixpanel is just one of many product and web analytics platforms. Some are cheaper, others are more secure, and a few have more advanced or specialist features.

This article will explore the leading Mixpanel alternatives for product teams and marketers. We’ll cover their key features, what users love about them, and why they may (or may not) be the right pick for you. 

Mixpanel: an overview

Let’s start by giving Mixpanel its dues. The platform does a great job of arming product teams with an arsenal of tools to track the impact of their updates, find ways to boost engagement and track which features users love. 

Marketing teams use the platform to track customers through the sales funnel, attribute marketing campaigns and find ways to optimise spend. 

There’s plenty to like about Mixpanel, including: 

  • Easy setup and maintenance: Mixpanel’s onboarding flow allows you to build a tracking plan and choose the specific events to measure. When Mixpanel collects data, you’ll see an introductory “starter board.” 
  • Generous free plan: Mixpanel doesn’t limit freemium users like some platforms. Collect data on 20 million monthly events, use pre-built templates and access its Slack community. There are also no limits on collaborators or integrations.
  • Extensive privacy configurations: Mixpanel provides strong consent management configurations. Clients can let their users opt out of tracking, disable geolocation and anonymise their data. It also automatically deletes user data after five years and offers an EU Data Residency Program that can help customers meet GDPR regulations. 
  • Comprehensive features: Mixpanel gives marketers and product teams the tools and features they need to understand the customer, improve the product and increase conversions. 
  • Easy-to-use UI: The platform prioritises self-service data, meaning users don’t need to be technically minded to use Mixpanel. Drag-and-drop dashboards democratise access to data and let anyone on your team find answers to their questions.

You wouldn’t be reading this page if Mixpanel offered everything, though. No platform is perfect, and there are several reasons people may want to look for a Mixpanel alternative:

  • No self-hosted option: You’ll never have complete control over your data with Mixpanel due to the lack of a self-hosted option. Data will always live on Mixpanel’s servers, meaning compliance with data regulations like GDPR isn’t a given.
  • Lack of customisation: Mixpanel doesn’t offer much flexibility when it comes to visualising data. While the platform’s in-built reports are accessible to everyone, you’ll need a developer to build custom reports. 
  • Not open source: Mixpanel’s proprietary software doesn’t provide the transparency, security and community that comes with using open-source software like Matomo. Proprietary software isn’t inherently wrong, but it could mean your analytics solution isn’t future-proof. 
  • Steep learning curve: The learning curve can be steep unless you’re a developer. While setting up the software is straightforward, Mixpanel’s reliance on manual tracking means teams must spend a lot of time creating and structuring events to collect the data they need.

If any of those struck a chord, see if one of the following seven Mixpanel alternatives might better fulfil your needs. 

The top 7 Mixpanel alternatives

Now, let’s look at the alternatives.

We’ll explain exactly how each platform differs from Mixpanel, its standout features, strengths, common community critiques, and when it may be (or may not be) the right choice. 

1. Matomo

Matomo is a privacy-focused, open-source web and mobile analytics platform. As a proponent of an ethical web, Matomo prioritises data ownership and privacy protection. 

It’s a great Mixpanel alternative for those who care about data privacy. You own 100% of your data and will always comply with data regulations like GDPR when using the platform. 

A screenshot of the Matomo dashboard

Main dashboard with visits log, visits over time, visitor map, combined keywords, and traffic sources
(Image Source)

Matomo isn’t short on features, either. Product teams and marketers can evaluate the entire user journey, capture detailed visitor profiles, combine web, mobile and app reports, and use custom reporting to generate the specific insides they need.

Key features:

  • Complete app and web analytics: Matomo tracks performance metrics and KPIs across web, app and mobile. Understand which pages users visit, how long they stay and how they move between devices.
  • Marketing attribution: Built-in marketing attribution capabilities make it easy for marketers to pinpoint their most profitable campaigns and channels. 
  • User behaviour tracking: Generate in-depth user behaviour data thanks to heatmaps, form analytics and session recordings.

Strengths

  • On-premise and cloud versions: Use Matomo for free on your servers or subscribe to Matomo Cloud for hosting and additional support. Either way, you remain in control of your data.
  • Exceptional customer support: On-premise and Matomo Cloud users get free access to the forum. Cloud customers get dedicated support, which is available at an additional cost for on-premise customers. 
  • Consent-free tracking: Matomo doesn’t ruin the user’s experience with cookie banners
  • Open-source software: Matomo’s software is free to use, modify, and distribute. Users get a more secure, reliable and transparent solution thanks to the community of developers and contributors working on the project. Matomo will never become proprietary software, so there’s no risk of vendor lock-in. You will always have access to the source code, raw data and APIs. 

Common community critiques:

  • On-premise setup: The on-premise version requires some technical knowledge and a server.
  • App tracking features: Some features, like heatmaps, available on web analytics aren’t available in-app analytics. Features may also differ between Android SDK and iOS SDK.

Price

Matomo has three plans:

  • Free: on-premise analytics is free to use
  • Cloud: Hosted business plans start at €22 per month
  • Enterprise: custom-priced, cloud-hosted enterprise plan tailored to meet a business’s specific requirements.

There’s a free 21-day trial for Matomo Cloud and a 30-day plugin trial for Matomo On-Premise.

2. Adobe Analytics

Adobe Analytics is an enterprise analytics platform part of the Adobe Experience Cloud. This makes it a great Mixpanel alternative for those already using other Adobe products. But, getting the most from the platform is challenging without the rest of the Adobe ecosystem. 

A screenshot of the Adobe Analytics dashboard

Adobe Analytics Analysis Workspace training tutorial
(Image Source)

Adobe Analytics offers many marketing tools, but product teams may find their offer lacking. Small or inexperienced teams may also need help using this feature-heavy platform. 

Key features:

  • Detailed web and marketing analytics: Adobe lets marketers draw in data from almost any source to get a comprehensive view of the customer journey. 
  • Marketing attribution: There’s a great deal of flexibility when crediting conversions. There are unlimited attribution models, too, including both paid and organic media channels.
  • Live Stream: This feature lets brands access raw data in near real time (with a 30- to 90-second delay) to assess the impact of marketing campaigns as soon as they launch. 

Strengths:

  • Enterprise focus: Adobe Analytics’s wide range of advanced features makes It attractive to large companies with one or more high-traffic websites or apps. 
  • Integrations: Adobe Analytics integrates neatly with other Adobe products like Campaign and Experience Cloud). Access marketing, analytics and content management tools in one place. 
  • Customisation: The platform makes it easy for users to tailor reports and dashboards to their specific needs.

Common community critiques:

  • Few product analytics features: While marketers will likely love Adobe, product teams may find it lacking. For example, the heatmap tool isn’t well developed. You’ll need to use Adobe Target to run A/B tests.
  • Complexity: The sheer number of advanced features can make Adobe Analytics a confusing experience for inexperienced or non-technically minded users. While a wealth of support documentation is available, it will take longer to generate value. 
  • Price: Adobe Analytics costs several thousand dollars monthly, making it suitable only for enterprise clients.

Price

Adobe offers three tiers: Select, Prime and Ultimate. Pricing is only available on request.

3. Amplitude

Amplitude is a product analytics and event-tracking platform. It is arguably the most like-for-like platform on this list, and there is a lot of overlap between Amploitduce’s and Mixpanel’s capabilities. 

A screenshot of Amplitude's conversion funnel chart

The Ask Amplitude™ feature helps build and analyse conversion funnel charts.
(Image Source)

The platform is an excellent choice for marketers who want to create a unified view of the customer by tracking them across different devices. This is possible with several other analytics platforms on this list (Matomo included), but Mixpanel doesn’t centralise data from web and app users in a signal report. 

Amplitude also has advanced features Mixpanel doesn’t have, like feature management and AI, as well as better customisation. 

Key features:

  • Product analytics: Amplitude comes packed with features product teams will use regularly, including customer journey analysis, session replays and heatmaps. 
  • AI: Amplitude AI can clean up data, generate insights and detect anomalies.
  • Feature management: Amplitude provides near-real-time feedback on feature usage and adoption rates so that product teams can analyse the impact of their work. Developers can also use the platform to manage progressive rollouts. 

Strengths:

  • Self-serve reporting: The platform’s self-serve nature means employees of all levels and abilities can get the insights they need. That includes data teams that want to run detailed and complex analyses. 
  • Integrated web experimentation. Product teams or marketers don’t need a third-party tool to run A/B tests because Amplitude has a comprehensive feature that lets users set up tests, collect data and create reports. 
  • Extensive customer support: Amplitude records webinars, holds out-of-office sessions and runs a Slack community to help customers extract as much value as possible.

Common community critiques:

  • Off-site tracking: While Amplitude has many features for tracking customer interaction across your product, it lacks ways to track customers once they are off-site. This is not great for marketing attribution, for example, or growing search traffic. 
  • Too complex: The sheer number of things Amplitude tracks can overwhelm inexperienced users who must spend time learning how to use the platform. 
  • Few templates: Few stock templates make getting started with Amplitude even harder. Users have to create reports from scratch rather than customise a stock graph. 

Price

  • Starter: Free to track up to 50,000 users per month. 
  • Plus: $49 per month to track up to 300,000 users.
  • Growth: Custom pricing for no tracking limits
  • Enterprise: Custom pricing for dedicated account managers and predictive analytics

4. Google Analytics

Google Analytics is the most popular web analytics platform. It’s completely free to use and easy to install. Although there’s no customer support, the thousands of online how-to videos and articles go some way to making up for it. 

A screenshot of the Google Analytics dashboard

GA dashboard showing acquisition, conversion and behaviour data across all channels 
(Image Source)

Most people are familiar with Google’s web analytics data, which makes it a great Mixpanel alternative for marketers. However, product teams may struggle to get the qualitative data they need.

Key features:

  • User and conversion tracking: People don’t just use Google Analytics because it’s free. The platform boasts a competitive user engagement and conversion tracking offering, which lets businesses of any size understand how consumers navigate their sites and make purchases. 
  • Audience segmentation: Segment audiences based on time and event parameters.
  • Google Ads integration: Track users from the moment they interact with one of your ads. 

Strengths:

  • It’s free: Web and product analytics platforms can cost hundreds of dollars monthly and put a sizable dent in a small business marketing budget. Google provides the basic tools most marketers need for free.
  • Cross-platform tracking: GA4 lets teams track mobile and web analytics in one place, which wasn’t possible in Universal Analytics.
  • A wealth of third-party support: There’s no shortage of Google Analytics tutorials on YouTube to help you set up and use the platform. 

Common community critiques:

  • Data privacy concerns: There are concerns about Google’s lack of compliance with regulations like GDPR. The workaround is asking people for permission to collect their data, but that requires a consent pop-up that can disrupt the user experience. 
  • No CRO features: Google Analytics lacks the conversion optimisation features of other tools in this list, including Matomo. It can’t record sessions, track user interactions via a heatmap or run A/B tests. 
  • AI data sampling: Google generates insights using AI-powered data sampling rather than analysing your actual data, which may make your data inaccurate. 

Price

Google Analytics is free to use. Google also offers a premium version, GA 360, which starts at $50,000 per year. 

5. Heap

Heap is a digital insights and product analytics platform. It gives product managers and marketers the quantitative and qualitative data they need to improve conversion rates, improve product features, and reduce churn. 

A screenshot of the Heap dashboard

Heap marketing KPI dashboard
(Image Source)

The platform offers everything you’d expect from a product analytics perspective, including session replays, heatmaps and user journey analysis. It even has an AI tool that can answer your questions. 

Key features:

  • Auto-capture: Unlike other analytics tools (Mixpanel and Google Analytics, for instance), you don’t need to manually code events. Heap’s auto-capture feature automatically collects every user interaction, allowing for retroactive analysis. 
  • Segmentation: Create distinct customer cohorts based on behaviour. Integrate other platforms like Marketo to use that information to personalise marketing campaigns. 
  • AI CoPilot: Heap has a generative AI tool, CoPilot, that answers questions like “How many people visited the About page last week?” It can also handle follow-up questions and suggest what to search next. 

Strengths:

  • Integrations: Heap’s integrations allow teams to centralise data from dozens of third-party applications. Popular integrations include Shopify and Salesforce. Heap can also connect to your data warehouse. 
  • Near real-time tracking: Heap has a live data feed that lets teams track user behaviour in near real-time (there’s a 15-second delay).
  • Collaboration: Heap facilitates cross-department collaboration via shared spaces and shared reports. You can also share session replays across teams.

Common community critiques:

  • Struggles at scale: Heap’s auto-capture functionality can be more of a pain than a perk when working at scale. Sites with a million or more weekly visitors may need to limit data capture.
  • Data overload: Heap tracks so much data it can be hard to find the specific events you want to measure.
  • Poor-quality graphics: Heap’s visualisations are basic and may not appeal to non-technically minded users.

Price

Heap offers four plans with pricing available on request.

  • Free
  • Growth
  • Pro
  • Premier

6. Hotjar

Hotjar is a product experience insight tool that analyses why users behave as they do. The platform collects behavioural data using heatmaps, surveys and session recordings. 

It’s a suitable alternative for product teams and marketers who care about collecting qualitative rather than quantitative data. 

A screenshot of Hotjar's heatmap report

New heatmap feature in hotjar
(Image Source)

It’s not your typical analytics platform, however. Hotjar doesn’t track site visits or conversions, so teams use it alongside a web analytics platform like Google Analytics or Matomo.

Key features:

  • Surveys: Product teams can place surveys on specific pages to capture quantitative and qualitative data. 
  • Heatmaps: Hotjar provides several heatmaps — click, scroll and interaction — that show how users behave when browsing your site. 
  • Session recordings: Support quantitative analytics data with videos of genuine user behaviour. It’s like watching someone browsing your site over their shoulder. 

Strengths:

  • User-friendly interface: The tool is easy to navigate and accessible to all employees. Anyone can start using it quickly. 
  • Funnel analysis: Use Hotjar’s range of tools to analyse your entire funnel, identifying friction points and opportunities to improve the customer experience. 
  • Cross-platform tracking: Hotjar compares user behaviour across desktop, mobile and app. 

Common community critiques:

  • Limited web analytics: While Hotjar is great for understanding customer behaviour, it doesn’t collect standard web analytics data. 
  • Data retention: Hotjar only retains data for one month to a year on some plans.
  • Impacts page speed: The tool’s code impacts your site’s performance, leading to slower load times. 

Price

  • Free: Up to five thousand monthly sessions, including screen recordings and heatmaps
  • Growth: $49 per month for 7,000 to 10,000 monthly sessions
  • Pro: Custom pricing for up to 500 million monthly sessions
  • Enterprise: Custom pricing for up to 6 billion monthly sessions. 

7. Kissmetrics

Kissmetrics is a web and mobile analytics platform that aims to help teams generate more revenue and acquire more users through product-led growth. 

As such, the platform offers more to marketers than product teams — particularly online store owners and SaaS businesses. 

A screenshot of a lead funnel on Kissmetrics

Kissmetrics funnel report 
(Image Source)

Kissmetrics provides a suite of behavioural analytics tools that analyse how customers move through your funnel, where they drop off and why. That’s great for marketers, but product teams will struggle to understand how customers actually use their product once they’ve converted.

Key features:

  • User journey mapping: Follow individual customer journeys to learn how each customer finds and engages with your brand. 
  • Funnel analysis: Funnel reports help marketers track cart abandonments and other drop-offs along the customer journey. 
  • A/B testing: Kissmetrics’s A/B testing tool measures how customers respond to different page layouts

Strengths:

  • Detailed revenue metrics: Kissmetrics makes measuring customer lifetime value, churn rate, and other revenue-focused KPIs easy. 
  • Stellar onboarding experience: Kissmetrics gives new users a detailed walkthrough and tutorial, which helps non-technical users get up to speed. 
  • Integrations: Integrate data from dozens of platforms and tools, such as Facebook, Instagram, Shopify, and Woocommerce, so all your data is in one place. 

Common community critiques:

  • Predominantly web-based: Kissmetrics focuses on web-based traffic over app- or cross-platform tracking. It may be fine for some teams, but product managers or marketers who track users across apps and smartphones may want to look elsewhere. 
  • Slow to load large data sources: The platform can be slow to load, react to, and analyse large volumes of data, which could be an issue for enterprise clients. 
  • Price: Kissmetrics is significantly more expensive than Mixpanel. There is no freemium tier, meaning you’ll need to pay at least $199 monthly. 

Price

  • Silver: $199 per month for up to 2 million monthly events
  • Gold: $499 per month for up to five million monthly events
  • Platinum: Custom pricing

Switch from Mixpanel to Matomo

When it comes to extracting deep insights from user data while balancing compliance and privacy protection, Mixpanel delivers mixed results. If you want a more straightforward alternative, more websites chose Matomo over Mixpanel for their analytics because of its:

  • Accurate web analytics collected in an ethical, GDPR-compliant manner
  • Behavioural analytics (like heatmaps and session recordings) to understand how users engage with your site
  • Rolled-up cross-platform reporting for mobile and apps
  • Flexibility and customisation with 250+ settings, plentiful plugins and integrations, APIs, raw data access
  • Open-source code to create plugins to fit your specific business needs
  • 100% data ownership with Matomo On-Premise and Matomo Cloud

Over one million websites in 190+ countries use Matomo’s powerful web analytics platform. Join them today by starting a free 21-day trial — no credit card required.

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Unlocking the power of web analytics dashboards https://matomo.org/blog/2025/07/web-analytics-dashboard/ Tue, 22 Jul 2025 23:27:20 +0000 https://matomo.org/?p=85813 Read More

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In the web analytics world, we have no shortage of data — clicks, views, scrolls, bounce rates — yet still struggle to extract valuable, actionable insights. There are facts and figures about any action anybody takes (or doesn’t take) when they visit your website, place an order or abandon their shopping cart. But all that data is often without context.

That’s where dashboards come in: More than visual summaries, the right dashboards give context, reduce noise, and help us focus on what matters most — whether it’s boosting conversions, optimising campaigns, or monitoring data quality and compliance efforts.

In this article, we’ll focus on:

  • The importance of data quality in web analytics dashboards
  • Different types of dashboards to use depending on your goals 
  • How to work with built-in dashboards in Matomo
  • How to customise them for your organisation’s needs

Whether you’re building your first dashboard or refining a mature analytics strategy, this guide will help you get more out of your data.

What is a web analytics dashboard?

web analytics dashboard is an interactive interface that displays key website metrics and data visualisations in an easy-to-grasp format. It presents key data clearly and highlights potential problems, helping users quickly spot trends, patterns, and areas for improvement.

Dashboards present data in charts, graphs and tables that are easier to understand and act upon. Users can usually drill down on individual elements for more detail, import other relevant data or adjust the time scale to get daily, weekly, monthly or seasonal views.

Types of web analytics dashboards

Web analytics dashboards may vary in the type of information they present and the website KPIs (key performance indicators) they track. However, sometimes the information can be the same or similar, but the context is what changes.

Overview dashboard

This offers a comprehensive overview of key metrics and KPIs. For example, it might show:

  • Traffic metrics, such as the total number of sessions, visits to the website, distinct users, total pages viewed and/or the average number of pages viewed per visit.
  • Engagement metrics, like average session duration, the bounce rate and/ or the exit rate by specific pages.
  • Audience metrics, including new vs. returning visitors, or visitor demographics such as age, gender or location. It might also show details of the specific device types used to access the website: desktop, mobile, or tablet.

An overview dashboard might also include snapshots of some of the examples below.

Acquisition dashboard

This reveals how users arrive at a website. Although an overview dashboard can provide a snapshot of these metrics, a focused acquisition dashboard can break down website traffic even further. 

They can reveal the percentages of traffic coming from organic search engines, social platforms, or users typing the URL directly. They can also show referrals from other websites and visitors clicking through from paid advertising sources. 

An acquisition dashboard can also help measure campaign performance and reveal which marketing efforts are working and where to focus efforts for better results.

Behavioural dashboard

This dashboard shows how users interact with a website, including which pages get the most traffic and how long visitors stay before they leave. It also reveals which pages get the least traffic, highlighting where SEO optimisation or greater use of internal links may be needed.

Behavioural dashboards can show a range of metrics, such as user engagement, navigation, page flow analysis, scroll depth, click patterns, form completion rates, event tracking, etc. 

This behavioural data lets companies identify engaging vs. underperforming content, fix usability issues and optimise pages for better conversions. It may even show the data in heat maps, click maps or user path diagrams.

Goals and ecommerce dashboard

Dashboards of this type are mostly used by e-commerce websites. They’re useful because they track things like sales goal completions and revenue targets, as well as conversions, revenue, and user actions that deliver business results. 

Dashboard with Visits Overview, Event Categories, Goals Overview and Ecommerce Overview widgets.

The typical metrics seen here are:

  • Goal tracking (aka conversions) in terms of completed user actions (form submissions, sign-ups, downloads, etc.) will provide funnel analysis and conversion rates. It’ll also give details about which traffic sources offer the most conversions.
  • Revenue tracking is provided via a combination of metrics. These include sales and revenue figures, average order value, top-selling items, revenue per product, and refund rates. It can also reveal how promotions, discounts and coupons affect total sales.
  • Shopping behaviour analysis tracks how users move from browsing to cart abandonment or purchase.

These metrics help marketing teams measure campaign ROI. They also help identify high-value products and audiences and provide pointers for website refinement. For example, checkout flow optimisation might reduce abandonment.

Technical performance dashboard

This monitors a website’s technical health and performance metrics. It focuses on how a website’s infrastructure and backend health affect user experiences. It’ll track a lot of things, including:

  • Page load time
  • Server response time
  • DNS lookup time
  • Error rates
  • Mobile optimisation scores
  • Browser usage
  • Operating system distribution
  • Network performance
  • API response times
  • Core web vitals
  • Mobile usability issues

This information helps organisations quickly fix issues that hurt SEO and conversions. It also helps to reduce errors that frustrate users, like checkout failures. Critically, it also helps to improve reliability and avoid downtime that can cost revenue.

Geographic dashboard

When an organisation wants to analyse user behaviour based on geographic location, this is the one to use. It reveals where website visitors are physically located and how their location influences their behaviour. Here’s what it tracks:

  • City, country/region 
  • Granular hotspots
  • Language preferences
  • Conversion rates by location
  • Bounce rates/engagement by location
  • Device type: Mobile vs. tablet vs desktop
  • Campaign performance by location
  • Paid ads effectiveness by location
  • Social media referrals by location
  • Load times by location

Geographic dashboards allow companies to target marketing efforts at high-value regions. They also inform content localisation in terms of language, currency, or offers. And they help identify and address regional issues such as speed, payment methods, or cultural relevance.

Custom segments dashboard

This kind of dashboard allows specific subsets of an audience to be analysed based on specific criteria. For example, these subsets might include:

  • VIP customers
  • Mobile users
  • New vs. returning visitors
  • Logged-in users
  • Campaign responders
  • Product category enthusiasts. 

What this dashboard reveals depends very much on what questions the user is trying to answer. It can provide actionable insight into why specific subsets of visitors or customers drop off at certain points. It allows specific metrics (bounce rate, conversions, etc.) to be compared across segments. 

It can also track the performance of marketing campaigns across different audience segments, allowing marketing efforts to be tailored to serve high-potential segments. Its custom reports can also assist in problem-solving and testing hypotheses.

Campaigns dashboard with four KPI widgets

Content performance dashboard

This is useful for understanding how a website’s content engages users and drives business goals. Here’s what it tracks and why it matters:

  • Top-performing content
    • Most viewed pages
    • Highest time-on-page content
    • Most shared/linked content
  • Engagement metrics
    • Scroll depth (how far users read)
    • Video plays/podcast listens
    • PDF/downloads of gated content
  • Which content pieces lead to
    • Newsletter sign-ups
    • Demo requests
    • Product purchases
  • SEO health
    • Organic traffic per page
    • Keyword rankings for specific content
    • Pages with high exit rates
  • Content journey analysis
    • Entry pages that start user sessions
    • Common click paths through a site
    • Pages that often appear before conversions

All this data helps improve website effectiveness. It lets organisations double down on what works, identify and replicate top-performing content and fix underperforming content. It can also identify content gaps, author performance and seasonal trends. The data then informs content strategy and optimisation efforts.

The importance of data quality

The fundamental reason we look at data is to make decisions that are informed by facts. So, it stands to reason that the quality of the underlying data is critical because it governs the quality of the information in the dashboard.

And the data source for web analytics dashboards is often Google Analytics 4 (GA4), since it’s free and frequently installed by default on new websites. But this can be a problem because the free version of Google Analytics is limited and resorts to data sampling beyond a certain point. Let’s dig into that.

Google Analytics 4 (GA4)

It’s the default option for most organisations because it’s free, but GA4 has notable limitations that affect data accuracy and functionality. The big one is data sampling, which kicks in for large datasets (500,000+ events). This can skew reporting because the analysis is of subsets rather than complete data. 

In addition, user privacy tools like ad blockers, tracking opt-outs, and disabled JavaScript can cause underreporting by 10-30%. GA4 also restricts data retention to 2-14 months and offers limited filtering and reduced control over data collection thresholds. Cross-domain tracking requires manual setup and lacks seamless integration. 

One solution is to upgrade to Google Analytics 360 GA360, but it’s expensive. Pricing starts at ~$12,500/month (annual contract) plus $150,000 minimum yearly spend. The costs also scale with data volume, typically requiring $150,000−500,000 annually.

Microscope hovering over small portion of the population

Matomo’s built-in dashboards

Matomo is a better solution for organisations needing unsampled data, longer data retention, and advanced attribution. It also provides functionality for enterprises to export their data and import it into Google BigQuery if that’s what they already use for analysis.

Matomo Analytics takes a different approach to data quality. By focusing on privacy and data ownership, we ensure that businesses have full control over all of their data. Matomo also includes a range of built-in dashboards designed to meet the needs of different users. 

The default options provide a starting point for tracking key metrics and gaining insight into their performance. They’re accessible by simply navigating to the reports section and selecting the relevant dashboard. These dashboards draw on raw data to provide more detailed and accurate analysis than is possible with GA4. And at a fraction of the price of GA360. 

You can get Matomo completely free of charge as a self-hosted solution or via Matomo Cloud for a mere $29/month — vs. GA360’s $150k+/year. It also has other benefits:

  • 100% data ownership and no data sampling
  • Privacy compliance by design:
    • GDPR/CCPA-ready
    • No ad-blocker distortion
    • Cookieless tracking options
  • No data limits or retention caps
  • Advanced features without restriction:
    • Cross-domain tracking
    • Custom dimensions/metrics
    • Heatmaps/session recordings

Customisation options

Although Matomo’s default dashboards are powerful, the real value lies in the customisation options. These extensive and easy-to-use options empower users to tailor custom dashboards to their precise needs.

Unlike GA4’s rigid layouts, Matomo offers drag-and-drop widgets to create, rearrange or resize reports effortlessly. You can:

  • Add 50+ pre-built widgets (e.g., traffic trends, conversion funnels, goal tracking) or create custom SQL/PHP widgets for unique metrics.
  • Segment data dynamically with filters (by country, device, campaign) and compare date ranges side-by-side.
  • Create white-label dashboards for client reporting, with custom logos, colours and CSS overrides.
  • Schedule automated PDF/email reports with personalised insights.
  • Build role-based dashboards (e.g., marketing vs. executive views) and restrict access to sensitive data.

For developers, Matomo’s open API enables deep integrations (CRM, ERP, etc.) and custom visualisations via JavaScript. Self-hosted users can even modify the core user interface.

Matomo: A fully adaptable analytics hub

Web analytics dashboards can be powerful tools for visualising data, generating actionable insights and making better business decisions. But that’s only true as long as the underlying data is unrestricted and the analytics platform delivers high-quality data for analysis. 

Matomo’s commitment to data quality and privacy sets it apart as a reliable source of accurate data to inform accurate and detailed insights. And the range of reporting options will meet just about any business need, often without any customisation.

To see Matomo in action, watch this two-minute video. Then, when you’re ready to build your own, download Matomo On-Premise for free or start your 21-day free trial of Matomo Cloud — no credit card required.

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