Time-Sampling

What is time-sampling?

Time-sampling is a statistical technique that analyzes data by selecting a representative subset from the total dataset collected over a specific period. This approach helps reduce the volume of data you need to process while keeping the results accurate.

By focusing on a smaller, yet representative sample, you can perform analyses more efficiently. This method maintains a balance between accuracy and resource usage. It’s especially useful when dealing with large datasets, where processing the entire dataset would be impractical.

How does time-sampling work?

Understanding the process

  • Choose a random subset of data at specific intervals.

  • Analyze this subset to infer conclusions about the entire dataset.

  • Use advanced methods like inverse sampling to extrapolate results.

Benefits of time-sampling

Examples of time-sampling in practice

Example 1: Website Analytics

  • Time-sampling studies 10% of user activities.

  • Extrapolate findings to the entire user base.

  • Understand user engagement without processing all data. For more information on user engagement and metrics, refer to the documentation, and explore behavioral targeting for more targeted insights.

Example 2: Traffic Monitoring

Join the #1 experimentation community

Connect with like-minded product leaders, data scientists, and engineers to share the latest in product experimentation.

Try Statsig Today

Get started for free. Add your whole team!

Why the best build with us

OpenAI OpenAI
Brex Brex
Notion Notion
SoundCloud SoundCloud
Ancestry Ancestry
At OpenAI, we want to iterate as fast as possible. Statsig enables us to grow, scale, and learn efficiently. Integrating experimentation with product analytics and feature flagging has been crucial for quickly understanding and addressing our users' top priorities.
OpenAI
Dave Cummings
Engineering Manager, ChatGPT
Brex's mission is to help businesses move fast. Statsig is now helping our engineers move fast. It has been a game changer to automate the manual lift typical to running experiments and has helped product teams ship the right features to their users quickly.
Brex
Karandeep Anand
President
At Notion, we're continuously learning what our users value and want every team to run experiments to learn more. It’s also critical to maintain speed as a habit. Statsig's experimentation platform enables both this speed and learning for us.
Notion
Mengying Li
Data Science Manager
We evaluated Optimizely, LaunchDarkly, Split, and Eppo, but ultimately selected Statsig due to its comprehensive end-to-end integration. We wanted a complete solution rather than a partial one, including everything from the stats engine to data ingestion.
SoundCloud
Don Browning
SVP, Data & Platform Engineering
We only had so many analysts. Statsig provided the necessary tools to remove the bottleneck. I know that we are able to impact our key business metrics in a positive way with Statsig. We are definitely heading in the right direction with Statsig.
Ancestry
Partha Sarathi
Director of Engineering
We use cookies to ensure you get the best experience on our website.
Privacy Policy