Python A2a

COMMUNITY

Python A2A is a powerful, easy-to-use library for implementing Google's [Agent-to-Agent (A2A) protocol](https://google.github.io/A2A/). It enables seamless communication between AI agents, creating interoperable agent ecosystems that can collaborate to solve complex problems.

Downloads 0
Stars 990
Version 1.0.0
Quality 69/100 · Promising

Install with one command

$ npx skills add themanojdesai/python-a2a

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  • You want a GitHub-backed skill with 990 stars.
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Check before install

  • Pushed 9mo ago
  • License: MIT
  • Review the repository README and examples.

Quality profile

Promising candidate for agent workflows

Useful candidate, but compare it with alternatives before adopting.

69
GitHub stars
990
Freshness
9mo ago
Install ready
Yes
License
MIT

Workflow fit

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Stack fit

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Overview

Python A2A is a powerful, easy-to-use library for implementing Google's [Agent-to-Agent (A2A) protocol](https://google.github.io/A2A/). It enables seamless communication between AI agents, creating interoperable agent ecosystems that can collaborate to solve complex problems.

Imported by the skill-only GitHub discovery pipeline because it matches agent skill, automation, RAG, or developer-tool signals. Protocol-server projects are excluded from automated imports.

Platform Compatibility

pythonFULL
githubFULL

Technical Details

Version
1.0.0
License
MIT
Last Updated
5/23/2026
Published
5/23/2026

Frameworks & Tools

PythonGitHub

Author

T

themanojdesai

@themanojdesai

Platform Fit

Health Signals

GitHub stars
990
Quality score
44/100
Last GitHub push
Sep 6, 2025
Framework hints
2

Community Signal

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Trust & Safety

  • Open source (public GitHub repo)
  • AI static analysis passed
  • License: MIT