Smart Memory MCP

Created By
shipdocsa year ago
An intelligent MCP server for optimizing VS Code Memory Bank usage
Overview

What is Smart Memory MCP?

Smart Memory MCP (Model Context Protocol) is an intelligent server designed to optimize memory bank usage in Visual Studio Code through tokenization, providing accurate token counting and context relevance scoring.

How to use Smart Memory MCP?

To use Smart Memory MCP, set up the server and client by following the provided commands, and integrate the VS Code extension for seamless operation.

Key features of Smart Memory MCP?

  • Accurate Token Counting using industry-standard tokenizers
  • Persistent Storage in a SQLite database for reliability
  • Context Relevance scoring for optimized memory usage
  • Memory Optimization to stay within token budgets
  • Seamless integration with VS Code through an extension

Use cases of Smart Memory MCP?

  1. Optimizing memory usage in large projects within VS Code.
  2. Enhancing performance by managing memory efficiently.
  3. Providing developers with insights into memory usage patterns.

FAQ from Smart Memory MCP?

  • Is Smart Memory MCP compatible with all versions of VS Code?

Yes! Smart Memory MCP is designed to work with the latest versions of VS Code.

  • How does Smart Memory MCP optimize memory usage?

It uses tokenization and context relevance scoring to manage memory effectively.

  • Is there any cost associated with using Smart Memory MCP?

No, Smart Memory MCP is open-source and free to use under the MIT license.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
shipdocs
Star
0
Language
Makefile
License
MIT license

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