Changelog · Sep 15, 2025

Track AI assistant activity patterns with detailed GitHub Copilot and Cursor insights

Rolling out tools like GitHub Copilot and Cursor is just the first step in incorporating AI into your engineering work. If you want to see real productivity gains, people need to build new habits and learn to use these tools effectively. That requires visibility into how your teams are actually using them.

Now you can see detailed activity patterns for GitHub Copilot and Cursor across your organization. Track engagement levels, understand where AI suggestions are gaining traction, and identify teams that might need extra support. You can also evaluate different AI tools to make informed decisions about which ones deliver the most value.

What you can see

Daily engagement charts show how many of your active users are accepting code suggestions. This helps you understand whether people are just trying out the tools or actively relying on them in their work.

Activity volume charts display the number of suggestions and acceptance rates over time, giving you insight into how much your teams are using AI assistance.

GitHub Copilot insights include breakdowns by editor and programming language, so you can spot patterns in how different tools and codebases benefit from AI suggestions.

Cursor insights show activity across different modes (agent, chat, and ⌘K/Ctrl+K), helping you understand which features resonate most with your teams.

Getting started

Check that GitHub Copilot and Cursor are connected in settings → integrations → AI assistants, then navigate to insights → AI assistants to explore activity patterns for each tool.


Subscribe to our newsletter

Get the latest product updates and #goodreads delivered to your inbox once a month.

More changelog updates
· Mar 13, 2026

Support for all Claude Code setups

We’re extending our Claude Code support. Now, Swarmia is compatible with every way you can run Claude Code: Claude Console : API-based billing Team or Enterprise plan:  Seat-based billing…
Read more
· Feb 17, 2026

Import time-off periods via API to improve data accuracy

Accurate full-time equivalent (FTE) data is essential for investment balance insights and software capitalization. Now you can import time-off data through our API, giving you another way to…
Read more