š§ Archive Agent
@shredEngineer
About š§ Archive Agent
Find your files with natural language and ask questions.
Basic information
Config
No standard config provided
This server doesn't expose a parseable MCP config block in its README. See the repository for install instructions.
RepositoryTools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Archive Agent?
Archive Agent is an intelligent file indexer that brings RAG (Retrieval Augmented Generation) to your command line. It indexes local documents (PDFs, images, Markdown, plaintext, and more) using automatic OCR, semantic chunking, and a local Qdrant vector database, then lets you search or query those files with natural language. It integrates with AI tools via a built-in MCP server ā it is not a chatbot.
How to use Archive Agent?
First, install Docker and Python ā„3.10, then run git clone, cd Archive-Agent, chmod +x install.sh, ./install.sh. The script sets up a Python environment, installs dependencies, and deploys a Qdrant Docker container. After installation, configure an AI provider (OpenAI, OpenRouter, Ollama, or LM Studio) and run archive-agent to use the CLI (track, commit, search, query, GUI) or start the MCP server (archive-agent mcp).
Key features of Archive Agent
- Semantic naturalālanguage search & query (RAG) on local files
- Automatic OCR for images and PDFs (experimental)
- Local indexing with selfāhosted Qdrant vector database
- Supports OpenAI, OpenRouter (400+ models), Ollama, and LM Studio
- Builtāin MCP server for workflow integration
- Fully resumable parallel processing with AI cache & retry logic
- Smart semantic chunking with context headers and reranking
Use cases of Archive Agent
- Search a personal document archive using naturalālanguage questions
- Query technical manuals, PDFs, or scanned images without manual browsing
- Integrate document Q&A into an AI assistant or IDE via MCP
- Index and search offline documents using local LLMs (Ollama/LM Studio)
- Automate OCR and entity extraction from scanned images on a schedule
FAQ from Archive Agent
Is Archive Agent a chatbot?
No. Archive Agent is a file indexer and RAG engine that provides answers through a CLI, GUI, or MCP interface ā it does not offer a conversational chatbot interface.
Which AI providers are supported?
OpenAI (or any OpenAIācompatible API), OpenRouter (access to 400+ models), Ollama, and LM Studio. Local providers (Ollama/LM Studio) offer best privacy; remote APIs often give higher performance.
Can I change the AI provider after creating a profile?
No. The embeddings generated by one provider are incompatible with another. To switch providers, you must create a new profile.
Does Archive Agent require an internet connection?
Not for core indexing and querying if you use a local LLM (Ollama/LM Studio) and the local Qdrant database. However, installation and initial setup (e.g., downloading models) typically require internet.
What file types are processed?
Archive Agent natively ingests PDFs, images (with automatic OCR), Markdown, plaintext, and several other formats. Files are selected for tracking using patternābased inclusion/exclusion rules.
More AI & Agents MCP servers
Just Prompt - A lightweight MCP server for LLM providers
dislerjust-prompt is an MCP server that provides a unified interface to top LLM providers (OpenAI, Anthropic, Google Gemini, Groq, DeepSeek, and Ollama)
Perplexity MCP Server
DaInfernalCoderA Model Context Protocol (MCP) server for research and documentation assistance using Perplexity AI. Won 1st @ Cline Hackathon
Perplexity Ask MCP Server
ppl-aiThe official MCP server implementation for the Perplexity API Platform
MCP-LLM Bridge
patruffBridge between Ollama and MCP servers, enabling local LLMs to use Model Context Protocol tools
Solon Ai
opensolonJava AI application development framework (supports LLM-tool,skill; RAG; MCP; Agent-ReAct,Team-Agent). Compatible with java8 ~ java25. It can also be embedded in SpringBoot, jFinal, Vert.x, Quarkus, and other frameworks.
Comments