Desktop Canary v2.1.48-canary.37
🐤 Canary Build — v2.1.48-canary.37 Automated canary build from canary branch. Commit Information Based on changes since v2.1.48-canary.36 Commit count: 1 e9d43cb43f ♻️ refactor(bot): migrate Bot service to Agent Runtime Hooks framework ( #13546 ) (Arvin Xu) ⚠️ Important Notes This is an automated canary build and is NOT intended for production use. Canary builds are triggered by build / fix / style commits on the canary branch. May contain unstable or incomplete changes . Use at your own risk. It is strongly recommended to back up your data before using a canary build. 📦 Installation Download the appropriate installer for your platform from the assets below. Platform File macOS (Apple Silicon) .dmg (arm64) macOS (Intel) .dmg (x64) Windows .exe Linux .AppImage / .deb
🐤 Canary Build — v2.1.48-canary.37
Automated canary build from canary branch.
Commit Information
-
Based on changes since v2.1.48-canary.36
-
Commit count: 1
-
e9d43cb43f ♻️ refactor(bot): migrate Bot service to Agent Runtime Hooks framework (#13546) (Arvin Xu)
⚠️ Important Notes
-
This is an automated canary build and is NOT intended for production use.
-
Canary builds are triggered by build/fix/style commits on the canary branch.
-
May contain unstable or incomplete changes. Use at your own risk.
-
It is strongly recommended to back up your data before using a canary build.
📦 Installation
Download the appropriate installer for your platform from the assets below.
Platform File
macOS (Apple Silicon)
.dmg (arm64)
macOS (Intel)
.dmg (x64)
Windows
.exe
Linux
.AppImage / .deb
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