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2️⃣ Graphiti MCP server Agents forget everything after each task. Graphiti MCP server lets Agents build and query temporally-aware knowledge graphs, which act as an Agent's memory! Check this👇

37,902 просмотров • 1 год назад •via X (Twitter)

Комментарии: 9

Фото профиля Avi Chawla
Avi Chawla1 год назад

I have tested 100+ MCP servers in the last 2 months! Here are 6 must-use MCP servers for all developers (open-source):

Фото профиля Avi Chawla
Avi Chawla1 год назад

1️⃣ Bright Data MCP server This MCP server provides 30+ tools to access, search, crawl, and interact with the web without getting blocked. Unlike typical scrapers, it dynamically picks the most effective tool based on the target site's structure. Check this 👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

3️⃣ GitIngest MCP server An MCP server to chat with any GitHub repo. It provides two tools: - git_directory_structure → to read the directory structure. - git_read_important_files → to read files. Check this👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

4️⃣ Terminal MCP server This MCP server gives Claude full terminal control. Tools include: - read/write/search/move files - execute a command - create/list directory, etc. Check this👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

5️⃣ Code executor MCP This MCP server allows Agents to execute Python code within a specified Conda environment. The Agent also gets full access to libraries in the Conda environment. Check this👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

6️⃣ MindsDB MCP server Connect and unify data across various platforms and databases, and query them from any MCP client (Cursor, Calude Desktop, etc.) Check this 👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

Links: - Bright Data: - Graphiti: - GitIngest: - Terminal: - Python code: - MindsDB: Summarized below 👇

Фото профиля Avi Chawla
Avi Chawla1 год назад

That's a wrap! If you found it insightful, reshare it with your network. Find me → @_avichawla Every day, I share tutorials and insights on DS, ML, LLMs, and RAGs.

Фото профиля Alexander Mia
Alexander Mia1 год назад

INTRODUCING: Agentic Security - LLM Security Scanner! 🔍 🔑 Features: Scans for prompt injections, jailbreaking & more. Provides detailed reports & options to customize attack rules. 🔗access the GitHub Link ↓

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Andrew Ng

141,941 просмотров • 1 год назад