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speakeasy-api/gram

Securely scale AI usage across your organization. Control plane for building, securing and monitoring your agents, mcp and skills.

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What it does

Gram is a platform that lets teams connect AI assistants and chat tools to data sources and services from both their own products and third-party providers, creating a shared context layer so AI can take actions and retrieve information on your behalf. Think of it as a universal translator that helps your AI tools understand and interact with the rest of your software ecosystem.

Why it matters

As AI agents become core to product strategies, the biggest bottleneck is giving them access to the right data and actions across a fragmented tool landscape — Gram addresses this directly by standardizing those connections, which could significantly reduce the time and cost to ship AI-powered features. With 28 contributors and growing momentum around the Model Context Protocol standard, this project is positioning itself at a critical infrastructure layer in the emerging AI product stack.

26Active

On the radar — signal detected

Stars
251
Forks
31
Contributors
30
Language
TypeScript

Score updated Apr 10, 2026

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