I craft unique cereal names, stories, and ridiculously cute Cereal Baby images.

简单 - 内存 - 延伸-MCP-Server
MCP服务器以扩展代理的上下文。在编码大功能或氛围编码时有用,需要存储/回忆进度,关键时刻或更改或任何值得记住的东西。只需要求代理商存储回忆并随时随地回忆即可。
1
Github Watches
1
Github Forks
5
Github Stars
Simple Memory Extension MCP Server
An MCP server to extend the context window / memory of agents. Useful when coding big features or vibe coding and need to store/recall progress, key moments or changes or anything worth remembering. Simply ask the agent to store memories and recall whenever you need or ask the agent to fully manage its memory (through cursor rules for example) however it sees fit.
Usage
Starting the Server
npm install
npm start
Available Tools
Context Item Management
-
store_context_item
- Store a value with key in namespace -
retrieve_context_item_by_key
- Get value by key -
delete_context_item
- Delete key-value pair
Namespace Management
-
create_namespace
- Create new namespace -
delete_namespace
- Delete namespace and all contents -
list_namespaces
- List all namespaces -
list_context_item_keys
- List keys in a namespace
Semantic Search
-
retrieve_context_items_by_semantic_search
- Find items by meaning
Semantic Search Implementation
- Query converted to vector using E5 model
- Text automatically split into chunks for better matching
- Cosine similarity calculated between query and stored chunks
- Results filtered by threshold and sorted by similarity
- Top matches returned with full item values
Development
# Dev server
npm run dev
# Format code
npm run format
.env
# Path to SQLite database file
DB_PATH=./data/context.db
PORT=3000
# Use HTTP SSE or Stdio
USE_HTTP_SSE=true
# Logging Configuration: debug, info, warn, error
LOG_LEVEL=info
Semantic Search
This project includes semantic search capabilities using the E5 embedding model from Hugging Face. This allows you to find context items based on their meaning rather than just exact key matches.
Setup
The semantic search feature requires Python dependencies, but these should be automatically installed when you run: npm run start
Embedding Model
We use the intfloat/multilingual-e5-large-instruct
Notes
Developed mostly while vibe coding, so don't expect much :D. But it works, and I found it helpful so w/e. Feel free to contribute or suggest improvements.
相关推荐
Evaluator for marketplace product descriptions, checks for relevancy and keyword stuffing.
Confidential guide on numerology and astrology, based of GG33 Public information
Take an adjectivised noun, and create images making it progressively more adjective!
Reviews

user_HcRIOlv4
Simple-Memory-Extension-MCP-Server by gmacev is a fantastic tool for enhancing memory management in MCP applications. It's intuitive and easy to integrate, making it an essential addition for developers looking to optimize their server performance. Highly recommend checking it out at https://github.com/gmacev/Simple-Memory-Extension-MCP-Server!