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Rakam Systems - Modular AI framework with agents, vectorstore, and LLM gateway

Project description

Rakam Systems

Rakam Systems is a platform designed to industrialize the construction, deployment, and operation of enterprise-grade AI systems with a focus on quality, scalability, and production-readiness.

Overview

Rakam Systems was born from an internal need at Rakam AI. For every new AI project, teams faced recurring technical challenges: collecting test data, evaluating quality, orchestrating components, configuring cloud infrastructure, and ensuring regulatory compliance. Rather than rebuilding these elements each time, Rakam decided to standardize and automate the entire AI production pipeline.

Why Rakam Systems

  • State-of-the-Art Technology: FastAPI, Pydantic AI, FAISS, pgvector, Sentence Transformers, OpenAI, Mistral AI
  • Production-First: Type safety, structured data exchange, scalable architecture, Docker templates
  • Open Source: Transparent design, community-driven, standard tooling

Core Components

Rakam Systems provides modular, independently installable packages:

Package Description
rakam-systems-core Foundational interfaces and utilities required by all other packages
rakam-systems-agent AI agent implementations with multi-LLM support and tool integration
rakam-systems-vectorstore Vector storage and document processing for semantic search and RAG
rakam-systems-tools Evaluation tools, cloud storage utilities, and monitoring
rakam-systems-cli Command-line interface for running evaluations and tracking quality

Installation

Install all packages

pip install rakam-systems

Install specific packages

# Core only (required by all other packages)
pip install rakam-systems-core

# Agent package
pip install rakam-systems-agent[all]

# Vectorstore package
pip install rakam-systems-vectorstore[all]

# Tools package (evaluation, S3 utilities)
pip install rakam-systems-tools

# CLI
pip install rakam-systems-cli

# Agent + Vectorstore (for RAG applications)
pip install rakam-systems-agent[all] rakam-systems-vectorstore[all]

Requirements

  • Python 3.10 or higher

Use Cases

With Rakam Systems, you can build:

  • Retrieval-Augmented Generation (RAG) Systems: Combine vector retrieval with LLM prompt generation
  • Agent Systems: Create modular agents that perform specific tasks using LLMs
  • Chained Gen AI Systems: Chain multiple AI tasks for complex workflows
  • Search Engines: Semantic search over documents using fine-tuned embeddings
  • Any Custom AI System: Use components to create any AI solution tailored to your needs

Documentation

Full documentation is available in the docs/ directory:

Contributing

We welcome contributions! To contribute:

  1. Fork the repository and clone it locally.
  2. Create a feature branch: git checkout -b feature-branch
  3. Install the package(s) you are working on:
    cd <package-dir>
    uv sync --all-extras --dev
    
  4. Make your changes and run tests: uv run pytest -v
  5. Commit with a meaningful message and submit a pull request.

For more details, see Contributing.

License

This project is licensed under the Apache-2.0 license.

Support

For any issues, questions, or suggestions, please contact mohammed@rakam.ai or open an issue on GitHub.

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