What is Plausible?
Plausible is a tool in the General Analytics category of a tech stack.
Plausible is an open source tool with 809 GitHub stars and 46 GitHub forks. Here’s a link to Plausible's open source repository on GitHub
Who uses Plausible?
Why developers like Plausible?
Here’s a list of reasons why companies and developers use Plausible
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- Check website traffic and site analytics in 1 minute
- Lightweight script which keeps your site speed fast
- Doesn’t track nor collect any personal data
- No cookie banners or GDPR/CCPA consent needed
- Define key goals and track conversions
- Get weekly or monthly reports directly into your inbox
- Open your web analytics to everyone
- Share the stats privately with your clients
Plausible Alternatives & Comparisons
What are some alternatives to Plausible?
See all alternatives
Google Analytics lets you measure your advertising ROI as well as track your Flash, video, and social networking sites and applications.
It is a web analytics platform designed to give you the conclusive insights with our complete range of features. You can also evaluate the full user-experience of your visitor’s behaviour with its Conversion Optimization features, including Heatmaps, Sessions Recordings, Funnels, Goals, Form Analytics and A/B Testing.
Piwik is a full featured PHP MySQL software program that you download and install on your own webserver. Piwik aims to be a Free software alternative to Google Analytics, and is already used on more than 1,000,000 websites. Privacy is built-in!
Clicky Web Analytics gives bloggers and smaller web sites a more personal understanding of their visitors. Clicky has various features that helps stand it apart from the competition specifically Spy and RSS feeds that allow web site owners to get live information about their visitors.
Databricks Unified Analytics Platform, from the original creators of Apache Spark™, unifies data science and engineering across the Machine Learning lifecycle from data preparation to experimentation and deployment of ML applications.