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Python client library for developers to integrate Cleanlab Codex into RAG systems

Project description

Cleanlab Codex - Closing the AI Knowledge Gap

Build Status PyPI - Version PyPI - Python Version Docs

Codex enables you to seamlessly leverage knowledge from Subject Matter Experts (SMEs) to improve your RAG/Agentic applications.

The cleanlab-codex library provides a simple interface to integrate Codex's capabilities into your RAG application. See immediate impact with just a few lines of code!

Demo

Install the package:

pip install cleanlab-codex

Integrating Codex into your RAG application is as simple as:

from cleanlab_codex import Project
project = Project.from_access_key(...)

# Your existing RAG code:
context = rag_retrieve_context(user_query)
prompt = rag_form_prompt(user_query, retrieved_context)
response = rag_generate_response(prompt)

# Detect bad responses and remediate with Cleanlab
results = project.validate(query=query, context=context, response=response,
    messages=[..., prompt])

final_response = (
    results["expert_answer"] # Codex's answer
    if results["expert_answer"] is not None
    else response # Your RAG system's initial response
)

Why Codex?

  • Detect Knowledge Gaps and Hallucinations: Codex identifies knowledge gaps and incorrect/untrustworthy responses in your AI application, to help you know which questions require expert input.
  • Save SME time: Codex ensures that SMEs see the most critical knowledge gaps first.
  • Easy Integration: Integrate Codex into any RAG/Agentic application with just a few lines of code.
  • Immediate Impact: SME answers instantly improve your AI, without any additional Engineering/technical work.

Documentation

Comprehensive documentation along with tutorials and examples can be found here.

License

cleanlab-codex is distributed under the terms of the MIT license.

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