A2amesh
@oaslananka
About A2amesh
AI-native TypeScript runtime and tools for A2A agent orchestration, MCP integration, registry, protocol, and CLI.
Basic information
Config
No standard config provided
This server doesn't expose a parseable MCP config block in its README. See the repository for install instructions.
RepositoryTools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is A2amesh?
AI-native TypeScript runtime and tools for A2A agent orchestration, MCP integration, registry, protocol, and CLI.
How to use A2amesh?
Follow the repository README to install the server and add its MCP configuration to your client.
Key features of A2amesh
- A2A server runtime and client SDK for Agent Cards, JSON-RPC messages, tasks, artifacts, and status transitions
- Registry components for local discovery and health polling
- MCP bridge, WebSocket transport, gRPC transport, and testing helper packages for repository-verified workflows
- Public HTTP server mode must use authentication unless it is bound to loopback
- A2A server and registry HTTP routes apply a per-client request limit by default
Use cases of A2amesh
- Connect an MCP-compatible client to this repository's service.
- Review the README-backed setup before enabling it in production.
FAQ from A2amesh
Where is the source code for A2amesh?
The source code is linked from the repository URL on this page.
Does A2amesh include a standard MCP config?
If the README contains a parseable MCP configuration block, it is shown in the Config tab.
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