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First-party data explained : Benefits, use cases and best practices
25 juillet, par JoeThird-party cookies are being phased out, and marketers who still depend on them for user insights need to find alternatives.
Google delayed the complete deprecation of third-party cookies until early 2025, but many other browsers, such as Mozilla, Brave, and Safari, have already put a stop to them. Plus, looking at the number of data leak incidents, like the one where Twitter leaked 200 million user emails, collecting and using first-party data is a great alternative.
In this post, we explore the ins and outs of first-party data and examine how to collect it. We’ll also look at various use cases and best practices to implement first-party data collection.
What is first-party data ?
First-party data is information organisations collect directly from customers through their owned channels.
Organisations can capture data without intermediaries when people interact with their website, mobile app, social media accounts or other customer-facing systems.
For example, businesses can track visitor behaviour, such as bounce rates and time spent browsing particular pages. This activity is considered first-party data when it occurs on the brand’s digital property.
Some examples include :
- Demographics : Age, gender, location, income level
- Contact information : Email addresses, phone numbers
- Behavioural insights : Topics of interest, content engagement, browsing history
- Transactional data : Purchase history, shopping preferences
A defining characteristic is that this information comes straight from the source, with the customer’s willingness and consent. This direct collection method is why first-party data is widely regarded as more reliable and accurate than second or third-party data. With browsers like Chrome fully phasing out third-party cookies by the end of 2025, the urgency for adopting more first-party data strategies is accelerating across industries.
How to collect first-party data
Organisations can collect first-party data in various ways.
Website pixels
In this method, organisations place small pieces of code that track visitor actions like page views, clicks and conversions. When visitors land on the page, the pixel activates and collects data about their behaviour without interrupting the user experience.
Website analytics tools
With major browsers like Safari and Firefox already blocking third-party cookies (and Chrome is phasing them out soon, there’s even more pressure on organisations to adopt first-party data strategies.
Website analytics tools like Matomo help organisations collect first-party data with features like visitor tracking and acquisition analysis to analyse the best channels to attract more users.
Multi-attribution modelling that helps businesses understand how different touchpoints (social media channels or landing pages) persuade visitors to take a desired action (like making a purchase).
Other activities include :
- Cohort analysis
- Heatmaps and session recordings
- SEO keyword tracking
- A/B testing
- Paid ads performance tracking
Heatmap feature in Matomo
Account creation on websites
When visitors register on websites, they provide information like names, email addresses and often demographic details or preferences.
Newsletters and subscriptions
With email subscriptions and membership programs, businesses can collect explicit data (preferences selected during signup) and implicit data (engagement metrics like open rates and click patterns).
Gated content
Whitepapers, webinars or exclusive articles often ask for contact information when users want access. This approach targets specific audience segments interested in particular topics.
Customer Relationship Management (CRM) systems
CRM platforms collect information from various touchpoints and centralise it to create unified customer profiles. These profiles include detailed user information, like interaction history, purchase records, service inquiries and communication preferences.
Mobile app activity
Mobile in-app behaviours can assist businesses in gathering data such as :
- Precise location information (indicating where customers interact with the app)
- Which features they use most often
- How long they stay on different screens
- Navigation patterns
This mobile-specific data helps organisations understand how their customers behave on smaller screens and while on the move, insights that website data alone cannot provide.
Point of Sale (PoS) systems
Modern checkout systems don’t just process payments. PepsiCo proved this by growing its first-party data stores by more than 50% through integrated PoS systems.
Today’s PoS technology captures detailed information about each transaction :
- Item(s) sold
- Price (discounts, taxes, tip)
- Payment type (card, cash, digital wallet)
- Time and date
- Loyalty/rewards number
- Store/location
Plus, when connected with loyalty programs where customers identify themselves (by scanning a card or entering a phone number), these systems link purchase information to individuals.
This creates valuable historical records showing how customer preferences evolve and offering insight into :
- Which products are frequently purchased together
- The time of the day, week, month, or year when items sell best
- Which promotions or special offers are most effective
Server-side tracking
Most websites track user behaviour through code that runs in the visitor’s web browser (client-side tracking).
Server-side tracking takes a different approach by collecting data directly on the company’s own servers.
Because the tracking happens on company servers rather than browsers, ad-blocking software doesn’t block it.
Organisations gain more consistent data collection and greater control over their customer information. This privacy-friendly approach lets companies get the data they need without relying on third-party tracking scripts.
Now that we understand how organisations can gather first-party data, let us explore its use cases.
Use cases of first-party data
Businesses can use first-party data in many ways, from creating customer profiles to personalising user experiences.
Developing comprehensive customer profiles
First-party data can help create detailed customer profiles.
Here are some examples :
- Demographic profiles : Age, gender, location, job role and other personal characteristics.
- Behavioural profiles : Website activity, purchase history and engagement with marketing campaigns that focus on how users interact with businesses and their offerings.
- Psychographic profiles : Customer’s interests, values and lifestyle preferences.
- Transactional profiles : Purchase patterns, including the types of products they buy, how often they purchase and their total spending.
The benefit of developing these profiles is that businesses can then create specific campaigns for each profile, instead of running random campaigns.
For example, a subscription service business may have a behavioural profile of ‘inactive users’. To reignite interest, they can offer discounts or limited-time freebies to these users.
Crafting relevant content
First-party data shows what types of content customers engage with most.
If customers love watching videos, businesses can create more video content. If a blog gets more readership for its tech articles, it can focus on tech-related content to adjust to readers’ preferences.
Uncovering new marketing opportunities
First-party data lets businesses analyse customer interactions in a way that can reveal untapped markets.
For example, if a company sees that many website visitors are from a particular region, it might consider launching campaigns in that area to boost sales.
Personalising experiences
89% of decision-makers believe personalisation is key to business success in the next three years.
First-party data helps organisations to tailor experiences based on individual preferences.
For example, an e-commerce site can recommend products based on previous purchases or browsing history. Shoppers with abandoned carts can get reminders.
It’s also helpful to see how customers respond to different types of communication. Certain groups may prefer emails, and some may prefer text messages. Similarly, some users spend more time on quizzes and interactive content like wizards or calculators.
By analysing this, businesses can adjust their strategies so that users get a personal experience when they visit a website.
Optimising operations
The use cases of first-party data don’t just apply to the marketing domain. They’re also valuable for operations. When businesses analyse customer order patterns, they can spot the best locations for fulfilment centres that reduce shipping time and costs.
For example, an online retailer might discover that most customers are concentrated in urban areas and decide to open fulfilment centres closer to those locations.
Or, in the public sector, transport companies can use first-party data to optimise routes and fine-tune fare simulation tools. By analysing rider queries, travel preferences and interaction data, they can :
- Prioritise high-demand routes during peak hours
- Adjust fare structures to reflect common trip or rider patterns
- Make personalised travel suggestions based on individual user history.
Benefits of first-party data
First-party data offers two significant benefits : accuracy and compliance. It comes directly from the customers and can be considered more accurate and reliable. But that’s not it.
First-party data aligns with many data privacy regulations, like the GDPR and CCPA. That’s because first-party data collection requires explicit consent, which means the data remains confidential. This builds compliance, and customers develop more trust in the business.
Best practices to collect and manage first-party data
Though first-party data comes with many benefits, how should organisations collect and manage it ? What are the best practices ? Let’s take a look.
Define clear goals
Though defining clear goals seems like overused advice, it’s one of the most important. If a business doesn’t know why it’s collecting first-party data, all the information gathering becomes purposeless.
Businesses can think of different goals to achieve from first-party data collection : improving customer relationships, enhancing personalisation or increasing ROI.
Once these goals are concrete, they can guide data collection strategies and help understand whether they’re working.
Establish a privacy policy
A privacy policy is a document that explains why a business is collecting a user’s data and what it will do with it. By being open and honest, this policy builds trust with customers, so customers feel safe sharing their information.
For example, an e-commerce privacy policy may read like :
“At (Business name), your privacy is important to us. We collect your information when you create an account or buy something. This information includes your name, email and purchase history. We use this data to give you a better shopping experience and suggest products that you’ll find useful. We follow all data privacy laws like GDPR to keep your personal information safe.”
For organisations that use Matomo, we suggest updating the privacy policy to explain how Matomo is used and what data it collects. Here’s a privacy policy template for Matomo users that can be easily copied and pasted.
For a GDPR compatible privacy policy, read How to complete your privacy policy with Matomo analytics under GDPR.
Simplify consent processes
Businesses should obtain explicit user consent before collecting their data, as shown in the image below.
To do this, integrate user-friendly consent management platforms that let customers easily access, view, opt out of, or delete their information.
To ensure consent practices align with GDPR standards, follow these key steps :
GDPR-compliant consent checklist ✅ State the purpose clearly Describe data usage in plain terms. ✅ Use granular opt-ins Separate consents by purpose. ✅ Avoid pre-ticked boxes Active choices only. ✅ Enable easy opt-out Simple and accessible withdrawal. ✅ Log consent Timestamp and record every opt-in. ✅ Review periodically Audit for accuracy and relevance. Comply with platform-specific restrictions
In addition to general consent practices, businesses must comply with platform-specific restrictions. This includes obtaining explicit permissions for :
- Location services : Users must consent to sharing their location data.
- Contact lists : Businesses need permission to access and use contact information.
- Camera and microphone Use : Users must consent to using the camera and microphone
- Advertising IDs : On platforms like iOS, businesses must obtain consent to use advertising IDs.
For example, Zoom asks the user if it can access the camera and the microphone by default.
Utilise multiple data collection channels
Instead of relying on just one source to collect first-party data, it is better to use multiple channels. Gather first-party data from diverse sources such as websites, mobile apps, CRM systems, email campaigns, and in-store interactions (for richer datasets). This way, businesses get a more complete picture of their customers.
Implementing a strong data governance framework with proper tooling, taxonomy, and maintenance practices is also vital for better data usability.
Use privacy-focused analytics tools
Focus on not just collecting data but also doing it in a way that’s secure and ethical.
Use tools like Matomo to track user interactions and gather meaningful analytics. For example, Matomo heatmaps can give you a visual insight into where users click and scroll, all while following all the data privacy laws.
What is second-party data ?
Second-party data is information that one company collects from its customers and shares with another company. It’s like “second-hand” first-party data because it’s collected directly from customers but used by a different business.
Companies purchase second-party data from trusted partners instead of getting it directly from the customer. For example, hotel chains can use customer insights from online travel agencies, like popular destinations and average stay lengths, to refine their pricing strategies and offer more relevant perks.
When using second-party data, it’s essential to :
- Be transparent : Share with customers that their data is being shared with partners.
- Conduct regular audits : Ensure the data is accurate and handled properly to maintain strong privacy standards. If their data standards don’t seem that great, consider looking elsewhere.
What is third-party data ?
Third-party data is collected from various sources, such as public records, social media or other online platforms. It’s then aggregated and sold to businesses. Organisations get third-party data from data brokers, aggregators and data exchanges or marketplaces.
Some examples of third-party data include life events from user social media profiles, like graduation or facts about different organisations, like the number of employees and revenue.
For example, a data broker might collect information about people’s interests from social media and sell it to a company that wants to target ads based on those interests.
Third-party data often raises privacy concerns due to its collection methods. One major issue is the lack of transparency in how this data is obtained.
Consumers often don’t know that their information is being collected and sold by third-party brokers, leading to feelings of mistrust and violation of privacy. This is why data privacy guidelines have evolved.
What is zero-party data ?
Zero-party data is the information that customers intentionally share with a business. Some examples include surveys, product ratings and reviews, social media polls and giveaways.
Organisations collect first-party data by observing user behaviours, but zero-party data is the information that customers voluntarily provide.
Zero-party data can provide helpful insights, but self-reported information isn’t always accurate. People don’t always do what they say.
For example, customers in a survey may share that they consider quality above all else when purchasing. Still, looking at their actual behaviour, businesses can see that they make a purchase only when there’s a clearance or a sale.
First-party data can give a broader view of customer behaviours over time, which zero-party data may not always be able to capture.
Therefore, while zero-party data offers insights into what customers say they want, first-party data helps understand how they behave in real-world scenarios. Balancing both data types can lead to a deeper understanding of customer needs.
Getting valuable customer insights without compromising privacy
Matomo is a powerful tool for organisations that want to collect first-party data. We’re a full-featured web analytics tool that offers features that allow businesses to track user interactions without compromising the user’s personal information. Below, we share how.
Data ownership
Matomo allows organisations to own their analytics data, whether on-premise or in their chosen cloud. This means we don’t share your data with anyone else. This aligns with GDPR’s requirement for data sovereignty and minimises third-party risks.
Pseudonymisation of user IDs
Matomo allows organisations to pseudonymise user IDs, replacing them with a salted hash function.
Since the user IDs have different names, no one can trace them back to a specific person.
IP address anonymisation
Data anonymisation refers to removing personally identifiable information (PII) from datasets so individuals can’t be readily identified.
Matomo automatically anonymises visitor IP addresses, which helps respect user privacy. For example, if the visitor’s IP address is 199.513.1001.123, Matomo can mask it to 199.0.0.0.
It can also anonymise geo-location information, such as country, region and city, ensuring this data doesn’t directly identify users.
Consent management
Matomo offers an opt-out option that organisations can add to their website, privacy policy or legal page.
Matomo tracks everyone by default, but visitors can opt out by clicking the opt-out checkbox.
Our DoNotTrack technology helps businesses respect user choices to opt out of tracking from specific websites, such as social media or advertising platforms. They can simply select the “Support Do Not Track preference.”
These help create consent workflows and support audit trails for regulators.
Data storage and deletion
Keeping visitor data only as long as necessary is a good practice by default.
To adhere to this principle, organisations can configure Matomo to automatically delete old raw data and old aggregated report data.
Here’s a quick case study summarising how Matomo features can help organisations collect first-party data. CRO:NYX found that Google Analytics struggled to capture accurate data from their campaigns, especially when running ads on the Brave browser, which blocks third-party cookies.
They then switched to Matomo, which uses first-party cookies by default. This approach allowed them to capture accurate data from Brave users without putting user privacy at stake.
The value of Matomo in first-party data strategies
First-party data gives businesses a reliable way to connect with audiences and to improve marketing strategies.
Matomo’s ethical web analytics lets organisations collect and analyse this data while prioritising user privacy.
With over 1 million websites using Matomo, it’s a trusted choice for organisations of all sizes. As a cloud-hosted service and a fully self-hosted solution, Matomo supports organisations with strong data sovereignty needs, allowing them to maintain full control over their analytics infrastructure.
Ready to collect first-party data while securing user information ? Start your free 21-day trial, no credit card required.
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Choosing the best self-hosted open-source analytics platform
16 juillet, par JoeGoogle Analytics (GA) is the most widely used analytics platform, with 50.3% of the top 1 million active websites using it today. You’re probably using it right now.
But despite being a free tool, Google Analytics is proprietary software, which means you’re handing over your browsing data, metadata and search history to a third party.
Do you trust them ? We sure don’t.
This lack of control can lead to potential privacy risks and compliance issues. These issues have so far resulted in fines under the EU’s General Data Protection Regulation (GDPR) of an average of €2.5 million each, for a total of almost €6.6 billion since 2018.
Open-source analytics platforms offer a solution. They’re a safer and more transparent alternative that lets you retain full control over how you collect and store your customers’ data. But what are these tools ? Where do you find them ? And, most importantly, how do you choose the best one for your needs ?
This guide explores the benefits and features of open-source analytics platforms and compares popular options, including Matomo, a leading self-hosted, open-source Google Analytics alternative.
What is an open-source analytics platform ?
An analytics platform is software that collects, processes and analyses data to gain insights, identify trends, and make informed decisions. It helps users understand past performance, monitor current activities and predict future outcomes.
An open-source analytics platform is a type of analytics suite in which anyone can view, modify and distribute the underlying source code.
In contrast to proprietary analytics platforms, where a single entity owns and controls the code, open-source analytics platforms adhere to the principles of free and open-source software (FOSS). This allows everyone to use, study, share, and customise the software to meet their needs, fostering collaboration and transparency.
Open-source analytics and the Free Software Foundation
The concept of FOSS is rooted in the idea of software freedom. According to the Free Software Foundation (FSF), this idea is defined by four fundamental freedoms granted to the user the freedom to :
- Use or run the program as they wish, for any purpose.
- Study how the program works and change it as they wish.
- Redistribute copies to help others.
- Improve the code and distribute copies of their improved versions to others.
Open access to the source code is a precondition for guaranteeing these freedoms.
The importance of FOSS licensing
The FSF has been instrumental in the free software movement, which serves as the foundation for open-source analytics platforms. Among other things, it created the GNU General Public Licence (GPL), which guarantees that all software distributions include the source code and are distributed under the same licence.
However, other licences, including several copyleft and permissive licences, have been developed to address certain legal issues and loopholes in the GPL. Analytics platforms distributed under any of these licences are considered open-source since they are FSF-compliant.
Benefits and drawbacks of open-source analytics platforms
Open-source analytics platforms offer a compelling alternative to their proprietary counterparts, but they also have a few challenges.
Benefits of open-source analytics
- Full data ownership : Many open-source solutions let you host the analytics platform yourself. This gives you complete control over your customers’ data, ensuring privacy and security.
- Customisable solution : With access to the source code, you can tailor the platform to your specific needs.
- Full transparency : You can inspect the code to see exactly how data is collected, processed and stored, helping you ensure compliance with privacy regulations.
- Community-driven development : Open-source projects benefit from the contributions of a global community of developers. This leads to faster innovation, quicker bug fixes and, in some cases, a wider range of features.
- No predefined limits : Self-hosted open-source analytics platforms don’t impose arbitrary limits on data storage or processing. You’re only limited by your own server resources.
Cons of open-source analytics
- Technical expertise required : Setting up and maintaining a self-hosted open-source platform often requires technical knowledge.
- No live/dedicated support team : While many projects have active communities, dedicated support might be limited compared to commercial offerings.
- Integration challenges : Integrating with other tools in your stack might require custom development, especially if pre-built integrations aren’t available.
- Feature gaps : Depending on the specific platform, there might be gaps in functionality compared to mature proprietary solutions.
Why open-source is better than proprietary analytics
Proprietary analytics platforms, like Google Analytics, have long been the go-to choice for many businesses. However, growing concerns around data privacy, vendor lock-in and limited customisation are driving a shift towards open-source alternatives.
No vendor lock-in
Proprietary platforms lock you into their ecosystem, controlling terms, pricing and future development. Migrating data can be costly, and you’re dependent on the vendor for updates.
Open-source platforms allow users to switch providers, modify software and contribute to development. Contributors can also create dedicated migration tools to import data from GA and other proprietary platforms.
Data privacy concerns
Proprietary analytics platforms can heighten the risk of data privacy violations and subsequent fines under regulations like the GDPR and the California Consumer Privacy Act (CCPA). This is because their opaque ‘black box’ design often obscures how they collect, process and use data.
Businesses often have limited visibility and even less control over a vendor’s data handling. They don’t know whether these vendors are using it for their own benefit or sharing it more widely, which can lead to privacy breaches and other data protection violations.
These fines can reach into the millions and even billions. For example, Zoom was fined $85 million in 2021 for CCPA violations, while the largest fine in history has been the €1.2 billion fine imposed on Meta by the Irish Data Protection Act (DPA) under the EU GDPR.
Customisation
Proprietary platforms often offer a one-size-fits-all approach. While they might have some customisation options, you’re ultimately limited by what the vendor provides. Open-source platforms, on the other hand, offer unparalleled flexibility.
Unlimited data processing
Proprietary analytics platforms often restrict the amount of data you can collect and process, especially on free plans. Going over these limits usually requires upgrading to a paid plan, which can be a problem for high-traffic websites or businesses with large datasets.
Self-hosted tools only limit data processing based on your server resources, allowing you to collect and analyse as much data as you need at no extra cost.
No black box effect
Since proprietary tools are closed-source, they often lack transparency in their data processing methods. It’s difficult to understand and validate how their algorithms work or how they calculate specific metrics. This “black box” effect can lead to trust issues and make it challenging to validate your data’s accuracy.
11 Key features to look for in an open-source analytics platform
Choosing the right open-source analytics platform is crucial for unlocking actionable insights from your customers’ data. Here are 11 key features to consider :
#1. Extensive support documentation and resource libraries
Even with technical expertise, you might encounter challenges or have questions about the platform. A strong support system is essential. Look for platforms with comprehensive documentation, active community forums and the option for professional support for mission-critical deployments.
#2. Live analytics
Having access to live data and reports is crucial for making timely and informed decisions. A live analytics feature allows you to :
- Monitor website traffic as it happens.
- Optimise campaign performance tracking.
- Identify and respond to issues like traffic spikes, drops or errors quickly, allowing for rapid troubleshooting.
For example, Matomo updates tracking data every 10 seconds, which is more than enough to give you a live view of your website performance.
#3. Personal data tracking
Understanding user behaviour is at the heart of effective analytics. Look for a platform that allows you to track personal data while respecting privacy. This might include features like :
- Creating detailed profiles of individual users and tracking their interactions across multiple sessions.
- Track user-specific attributes like demographics, interests or purchase history.
- Track user ID across different devices and platforms to understand user experience.
#4. Conversion tracking
Ultimately, you want to measure how effective your website is in achieving your business goals. Conversion tracking allows you to :
- Define and track key performance indicators (KPIs) like purchases, sign-ups or downloads.
- Identify bottlenecks in the user journey that prevent conversions.
- Measure the ROI of your marketing campaigns.
#5. Session recordings
Session recordings give your development team a qualitative understanding of user behaviour by letting you watch replays of individual user sessions. This can help you :
- Identify usability issues.
- Understand how users navigate your site and interact with different elements.
- Uncover bugs or errors.
#6. A/B testing
Experimentation is key to optimising your website and improving conversion rates. Look for an integrated A/B testing feature that allows you to :
- Test different variations of your website in terms of headlines, images, calls to action or page layouts.
- Measure the impact on key metrics.
- Implement changes based on statistically significant differences in user behaviour patterns, rather than guesswork.
#7. Custom reporting and dashboards
Every business has unique reporting needs. Look for a flexible platform that allows you to :
- Build custom reports that focus on the metrics that matter most to you.
- Create personalised dashboards that provide a quick overview of those KPIs.
- Automate report generation to save your team valuable time.
#8. No data sampling
Data sampling can save time and processing power, but it can also lead to inaccurate insights if the sample isn’t representative of the entire dataset. The solution is to avoid data sampling entirely.
Processing 100% of your customers’ data ensures that your reports are accurate and unbiased, providing a true picture of customer behaviour.
#9. Google Analytics migration tools
If you’re migrating from Google Analytics, a data export/import tool can save you time and effort. Some open-source analytics projects offer dedicated data importers to transfer historical data from GA into the new platform, preserving valuable insights. These tools help maintain data continuity and simplify the transition, reducing the manual effort involved in setting up a new analytics platform.
#10 A broad customer base
The breadth and diversity of an analytics platform’s customer base can be a strong indicator of its trustworthiness and capabilities. Consider the following :
- Verticals served
- The size of the companies that use it
- Whether it’s trusted in highly-regulated industries
If a platform is trusted by a large entity with stringent security and privacy requirements, such as governments or military branches, it speaks volumes about its security and data protection capabilities.
#11 Self-hosting
Self-hosting offers unparalleled control over your customers’ data and infrastructure.
Unlike cloud-based solutions, where your customers’ data resides on third-party servers, self-hosting means you manage your own servers and databases. This approach ensures that your customers’ data remains within your own infrastructure, enhancing privacy and security.
There are other features, like analytics for mobile apps, but these 11 will help shortlist your options to find the ideal tool.
Choosing your self-hosted open-source analytics platform : A step-by-step guide
The right self-hosted open-source analytics platform can significantly impact your data strategy. Follow these steps to make the best choice :
Step #1. Define your needs and objectives
Begin by clearly outlining what you want to achieve with your analytics platform :
- Identify relevant KPIs.
- Determine what type of reports to generate, their frequency and distribution.
- Consider your privacy and compliance needs, like GDPR and CCPA.
Step #2. Define your budget
While self-hosted open-source platforms are usually free to use, there are still costs associated with self-hosting, including :
- Server hardware and infrastructure.
- Ongoing maintenance, updates and potential support fees.
- Development resources if you plan to customise the platform.
Step #3. Consider scalability and performance
Scaling your analytics can be an issue with self-hosted platforms since it means scaling your server infrastructure as well. Before choosing a platform, you must think about :
- Current traffic volume and projected growth.
- Your current capacity to handle traffic.
- The platform’s scalability options.
Step #4. Research and evaluate potential solutions
Shortlist a few different open-source analytics platforms that align with your requirements. In addition to the features outlined above, also consider factors like :
- Ease of use.
- Community and support.
- Comprehensive documentation.
- The platform’s security track record.
Step #5. Sign up for a free trial and conduct thorough testing
Many platforms offer free trials or demos. Take advantage of these opportunities to test the platform’s features, evaluate the user interface and more.
You can embed multiple independent tracking codes on your website, which means you can test multiple analytics platforms simultaneously. Doing so helps you compare and validate results based on the same data, making comparisons more objective and reliable.
Step #6. Plan for implementation and ongoing management
After choosing a platform, follow the documentation to install and configure the software. Plan how you’ll migrate existing data if you’re switching from another platform.
Ensure your team is trained on the platform, and establish a plan for updates, security patches and backups. Then, you’ll be ready to migrate to the new platform while minimising downtime.
Top self-hosted open-source analytics tools
Let’s examine three prominent self-hosted open-source analytics tools.
Matomo
Main Features Analytics updated every 10 seconds, custom reports, dashboards, user segmentation, goal tracking, e-commerce tracking, funnels, heatmaps, session recordings, A/B testing, SEO tools and more advanced features. Best for Businesses of all sizes and from all verticals. Advanced users Licencing GPLv3 (core platform).Various commercial licences for plugins. Pricing Self-hosted : Free (excluding paid plugins).Cloud version : Starts at $21.67/mo for 50K website hits when paid annually. Matomo Analytics dashboard
Matomo is a powerful web analytics platform that prioritises data privacy and user control. It offers a comprehensive suite of features, including live analytics updated every 10 seconds, custom reporting, e-commerce tracking and more. You can choose between a full-featured open-source, self-hosted platform free of charge or a cloud-based, fully managed paid analytics service.
Matomo also offers 100% data ownership and has a user base of over 1 million websites, including heavyweights like NASA, the European Commission, ahrefs and the United Nations.
Plausible Analytics
Main Features Basic website analytics (page views, visitors, referrers, etc.), custom events, goal tracking and some campaign tracking features. Best for Website owners, bloggers and small businesses.Non-technical users. Licencing AGPLv3. Pricing Self-hosted : FreeCloud version : Starts at $7.50/mo for 10K website hits when paid annually. Plausible Analytics
(Image source)Plausible Analytics is a lightweight, privacy-focused analytics tool designed to be simple and easy to use. It provides essential website traffic data without complex configurations or intrusive tracking.
Fathom Lite & Fathom Analytics
Main features Basic website analytics (page views, visitors, referrers, etc.), custom events and goal tracking. Best for Website owners and small businesses.Non-technical users. Licencing Fathom Lite : MIT Licence (self-hosted).Fathom Analytics : Proprietary. Pricing Fathom Lite : Free but currently unsupported.Cloud version : Starts at $12.50/month for up to 50 sites when paid annually. Fathom Analytics
(Image source)Fathom started as an open-source platform in 2018. But after the founders released V1.0.1, they switched to a closed-source, paid, proprietary model called Fathom Analytics. Since then, it has always been closed-source.
However, the open-source version, Fathom Lite, is still available. It has very limited functionality, uses cookies and is currently unsupported by the company. No new features are under development and uptime isn’t guaranteed.
Matomo vs. Plausible vs. Fathom
Matomo, Plausible, and Fathom are all open-source, privacy-focused alternatives to Google Analytics. They offer features like no data sampling, data ownership, and EU-based cloud hosting.
Here’s a head-to-head comparison of the three :
Matomo Plausible Fathom Focus Comprehensive, feature-rich, customizable Simple, lightweight, beginner-friendly Simple, lightweight, privacy-focused Target User Businesses, marketers and analysts seeking depth Beginners, bloggers, and small businesses Website owners and users prioritising simplicity Open Source Fully open-source Fully open-source Limited open-source version Advanced analytics Extensive Very limited Very limited Integrations 100+ Limited Fewer than 15 Customisation High Low Low Data management Granular control, raw data access, complex queries Simplified, no raw data access Simplified, no raw data access GDPR features Compliant by design, plus GDPR Manager Guides only Compliant by design Pricing Generally higher Generally lower Intermediate Learning curve Steeper Gentle Gentle The open-core dilemma
Open-source platforms are beneficial and trustworthy, leading some companies to falsely market themselves as such.
Some were once open-source but later became commercial, criticised as “bait-and-switch.” Others offer a limited open-source “core” with proprietary features, called the “open core” model. While this dual licensing can be ethical and sustainable, some abuse it by offering a low-value open-source version and hiding valuable features behind a paywall.
However, other companies have embraced the dual-licensing model in a more ethical way, providing a valuable solution with a wide range of tools under the open-source license and only leaving premium, non-essential add-ons as paid features.
Matomo is a prime example of this practice, championing the principles of open-source analytics while developing a sustainable business model for its users’ benefit.
Choose Matomo as your open-source data analytics tool
Open-source analytics platforms offer compelling advantages over proprietary solutions like Google Analytics. They provide greater transparency, data ownership and customisation. Choosing an open-source analytics platform over a proprietary one gives you more control over your customers’ data and supports compliance with user privacy regulations.
With its comprehensive features, powerful tools, commitment to privacy and active community, Matomo stands out as a leading choice. Make the switch to Matomo for ethical, user-focused analytics.
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Why Matomo is the top Google Analytics alternative
17 juin, par JoeYou probably made the switch to Google Analytics 4 (GA4) when Google stopped collecting Universal Analytics (UA) data in July 2023. Up to that point, UA had long been the default analytics platform, despite its many limitations.
This was mostly because everyone loved its free nature and simple setup. A Google account was all you needed — even a free legacy G-Suite account worked perfectly. Looking at the analytics for just about any website was easy.
That all changed with GA4, which addressed many of UA’s shortcomings by introducing a completely new way to model website data. Unfortunately, this also meant you couldn’t transfer historical data from UA into GA4, leading to more criticism.
Then there’s the added cost. GA4 is still free, but its limited functionality encourages you to upgrade to the enterprise version, Google Analytics 360 (GA360). Sure, you get lots of great functionality, less data sampling, and longer data retention periods, but it comes at a hefty price — $50,000 per year, to be exact.
There are other options, though, and Matomo Analytics is one of the best. It’s an open-source, privacy-centric platform that offers advanced features of GA360 and more.
In this article, we’ll compare GA4, GA360, and Matomo and give you what you need to make an informed decision.
Google Analytics 4 in a nutshell
Google Analytics 4 is a great tool to use to start learning about web analytics. But soon enough, you’ll likely find that GA4 doesn’t quite cover all of your needs.
For example, it can’t provide a detailed view of user experiences, and Google doesn’t offer dedicated support or onboarding. There are other shortcomings, too.
Data sampling
Google only processes a selected sample of website activity rather than every individual data point. Rather than looking at the whole picture, it sets a threshold and selects a [hopefully] representative sample for analysis.
This inevitably creates gaps in data. Google attempts to fill them in using AI and machine learning, inferring the rest from data patterns. Since the results rely on assumptions and estimates, they aren’t always precise.
In practical terms, this means that the accuracy of GA4 analysis will likely decline as website traffic increases.
Data collection limits
GA4’s 25 million monthly events limit seems like a lot, but they add up quickly.
All user interactions are recorded as events, including :
- Session start : User visits the site.
- Page view : User loads a page (tracked automatically).
- First visit : User accesses the site for the first time.
- User engagement : User stays on a page for a set time period.
- Scroll : User scrolls past 90% of the page (enhanced measurement).
- Click : User clicks on any element (links, buttons, etc.).
- Video start/complete : User starts or completes a video (enhanced measurement).
- File download : User downloads a file (enhanced measurement).
For context, consider a website averaging 50 events per session per user. If every user logs on every third day, on average, you’ll need 10,000 individual visitors a month to reach that 25 million. But that’s not the problem.
The problem is that collection limits in GA4 affect your ability to capture, secure, and analyse customer data effectively.
Customisation
GA4 users also face configuration limits that restrict their customisation options. For example :
- Audience limits : Since only 100 audiences are allowed, it’s necessary to combine or optimise segments rather than track too many small groups.
- Retention limits : Data retention is limited to only 14 months, so external storage solutions may be necessary in situations where historical data needs to be preserved.
- Conversion events : GA4 will only track up to 30 conversion events, so it’s best to focus on high-value interactions (e.g., purchases and lead form submissions).
- Event-scoped dimensions : Since e-commerce operations are limited to 50 event-scoped dimensions, they need to carefully consider custom dimensions and key metrics. This makes it important to be selective about which product details to track (color, size, discount code, etc.).
Data privacy
GA4 isn’t GDPR-compliant out of the box. In fact, Google Analytics 4 is banned in seven EU countries because they believe the way it collects and transfers data violates GDPR.
Data privacy regulations may or may not be a big concern, depending on where your customers are. However, if some are in the UK or any of the 30 countries that make up the European Economic Area (EEA), you must comply with the General Data Protection Regulation (GDPR).
It tells your customers that you don’t respect their data if you don’t. It can also get very expensive.
Limited attribution models
Attribution models track how different marketing touchpoints lead to a conversion (such as a purchase, sign-up, or lead generation). They help businesses understand which marketing channels and strategies are most effective in driving results.
GA4 supports only two of the six standard attribution models previously supported in Universal Analytics. Organisations wanting data-driven or last-click attribution models will find them in Google Analytics. But they’ll need to look elsewhere if they’re going to use any of these models :
- First click attribution
- Linear attribution
- Time decay attribution
- Position-based attribution (u-shaped)
GA360 isn’t a solution either
Fundamentally, GA360 is the same product as GA4, without the above limits and restrictions. For companies that pay $50,000 (or more) each year, the only changes involve how much data is collected, how long it stays and data sampling thresholds.
Above all, the GDPR-compliance issue remains. That can be a real problem for organisations with operations that collect personal data in the EEA or the UK.
And the problem could soon be much bigger than just those 31 countries. Many countries currently implementing data privacy laws are modelling their efforts on GDPR, which may rule out both GA4 and GA360.
What makes Matomo the top alternative ?
No data limits
One way to overcome all these challenges is to switch to Matomo Analytics.
There’s no data sampling and no data collection limits whatsoever with on-premise implementation. Matomo also supports all six attribution models, is open source and fully customisable and complies with GDPR out of the box.
Imagine trying to change your business strategy or marketing campaigns if you’re not confident that your data is reliable and accurate.
It’s no secret that data sampling can negatively affect the accuracy of the data, and inaccurate data can lead to poor decision-making.
With Matomo, there are no limits. We don’t restrict the size of containers within the Tag Manager nor the number of containers or tags within each container. You have more control over your customers’ data.
And you get to make your decisions based on all that data. That’s important because data quality is critical for high-impact decisions.
Open source
Open-source software allows anyone to inspect, audit, and improve the source code for security and efficiency. That means no hidden data collection, faster bug fixes, and no vendor lock-in. As a bonus, these things make complying with data privacy laws and regulations easier.
Matomo can also be modified in any way, which provides unlimited customisation possibilities. There’s also a very active developer community around Matomo, so you don’t have to make changes yourself — you can hire someone who has the technical knowledge and expertise. They can :
- Modify tracking scripts for advanced analytics
- Create custom attribution models, tracking methods and dashboards
- Integrate Matomo with any system (CRM, eCommerce, CMS, etc.)
Data ownership
Matomo’s open-source nature also means full data ownership. No third parties can access the data, and there’s no risk of Google using that data for ads or AI training. Furthermore, Matomo follows privacy-first tracking principles, meaning that there’s :
- No third-party data sharing
- Full user consent control
- Support for cookie-less tracking
- IP Anonymisation, by default
- Do Not Track (DNT) support
All of that underlines the fact that Matomo collects, stores, and tracks data 100% ethically.
On-premise and cloud-based options
You can use the Matomo On-Premise web analytics solution if local data privacy laws require that you store data locally. Here’s a helpful tip : many of them do. However, this might not be necessary.
Due to GDPR, several countries recognise the EEA as an acceptable storage location for their citizens’ data. That means servers hosted in any of those 30 countries are already compliant in terms of data location.
Alternatively, you could embrace modernity and choose Matomo Cloud — our servers are also in Europe. While GA4 and GA360 are cloud-based, Google’s servers are in the US, and that’s a big problem for GDPR.
Comprehensive analytics
If you need a sophisticated web analytics platform that offers full control of your data and you have privacy concerns, Matomo is a solid choice.
It has built-in behavioural analytics features like Heatmaps, Scroll Depth and Session Recording. These tools allow you to collect and analyse data without relying on cookies or resorting to data sampling.
Those standout features can’t be found in GA4 or GA360. Google also doesn’t offer an on-premise solution.
The one area where Matomo can’t compete with Google Analytics is in its tight integration with the Google ecosystem : Google Ads, Gemini and Firebase.
Key things to consider before switching to Matomo
There are pros and cons to switching from GA4 (or even GA360) to Matomo. That’s because no software is perfect. There are always tradeoffs somewhere. With Matomo, there are a few things to consider before switching :
- Learning curve. Matomo is a full-featured analytics platform with many advanced features (session replay, custom event tracking, etc.). That can overwhelm new users and take time to understand well enough to maximise the benefits.
- Technical resources. Choosing a Matomo On-Premise solution requires technical resources, such as a server and skills.
- Third-party integration. Matomo provides pre-built integration tools for about a hundred platforms. However, it’s open source, so technical resources are required. On the plus side, it does make it possible to add to the list of APIs and connectors.
Head-to-head : GA4 vs GA360 vs Matomo
It’s always helpful to look at how different products stack up in terms of features and capabilities :
GA4 GA360 Matomo Data ownership ✔ Event-based data ✔ ✔ ✔ Session-based data ✔ Unsampled data ✔ Real-time data ✔ ✔ ✔ Heatmaps ✔ Session recordings ✔ A/B testing ✔ Open source ✔ On-premise hosting ✔ Data privacy Subject to Google’s data policies Subject to Google’s data policies GDPR, CCPA compliant ; full control over data storage Custom dimensions Yes (limited in free version) Yes (higher limits) Yes (unlimited in self-hosted) Attribution models Last click, data-driven Last click, data-driven, advanced Google Ads integration Last click, first click, linear, time decay, position-based, custom Data retention Up to 14 months (free) Up to 50 months Unlimited (self-hosted) Integrations Google Ads, Search Console, BigQuery (limited in free version) Advanced integrations (Google Ads, BigQuery, Salesforce, etc.) 100+ integrations (Google Ads, WordPress, Shopify, etc.) BigQuery export Free (limited to 1M events/day) Free (unlimited) Paid add-on (via plugin) Custom reports Limited customisation Advanced customisation Fully customisable Scalability Suitable for small to medium businesses Designed for large enterprises Scalable without limits (self-hosted or cloud) Ease of use Simple, requires onboarding Steeper learning curve Flexible, setup-intensive. Pricing Free Premium (starts at $50,000/year) Free open-source (self-hosted) ; Cloud starts at $29/month So, is Matomo the right solution for you ?
That’d be a ‘yes’ if you want a Google Analytics alternative that ticks all these boxes :
- Complies natively with privacy laws and regulations
- Offers real-time data and custom event tracking
- Enables a deeper understanding of user behaviour
- Allows you to fine-tune user experiences
- Provides full control over your customers’ data
- Offers conversion funnels, session recordings and heatmaps
- Has session replay to trace user interactions
- Includes plenty of readily actionable insights
Find out why millions of websites trust Matomo
Matomo is an easy-to-use, all-in-one web analytics tool with advanced behavioural analytics functionality.
It’ll also help you future-proof your business because it supports compliance with global privacy laws in 162 countries. With an ethical alternative like Matomo, you don’t need to risk your business or customers’ private data.
It’s not just about avoiding fines. It’s also about building trust with your customers. That’s why you need a privacy-focused, ethical solution like Matomo.
See for yourself : download Matomo On-Premise today, or start your 21-day free trial of Matomo Cloud (no credit card required).