Understanding Async Transport Layers for MCP
By
bharatgel
Fresh out the oven, still warm. Top of the tray.
Summary
The article discusses async transport layers for MCP, focusing on the challenges of providing context to LLMs in applications and the need for efficient processing methods like batch processing APIs, webhooks, or queues.
Key quotes
· 2 pulledMCP is an open protocol that standardizes how applications provide context to LLMs.
In these cases with the current transport layers, the MCP server would have to expose a light-weight polling wrapper in the MCP layer to allow waiting and po
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