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Integration: fastRAG

A research framework designed to facilitate the building of retrieval augmented generative pipelines.

Authors
Intel Labs

fastRAG is a research framework designed to facilitate the building of retrieval augmented generative pipelines. Its main goal is to make retrieval augmented generation as efficient as possible through the use of state-of-the-art and efficient retrieval and generative models. The framework includes a variety of sparse and dense retrieval models, as well as different extractive and generative information processing models. fastRAG aims to provide researchers and developers with a comprehensive tool-set for exploring and advancing the field of retrieval augmented generation.

It includes custom nodes such as:

  • Image Generators
  • Knoweldge Graph Creator
  • Document Shapers
  • Reader with FiD implementation
  • Efficient document vector store (PLAID)
  • Benchmarking scripts

Installation

Preliminary requirements:

  • Python 3.8+
  • PyTorch

In a new virtual environment, run:

pip install .

There are various dependencies, based on usage:

# Additional engines/components
pip install .[faiss-cpu]           # CPU-based Faiss
pip install .[faiss-gpu]           # GPU-based Faiss
pip install .[qdrant]              # Qdrant support
pip install libs/colbert           # ColBERT/PLAID indexing engine
pip install .[image-generation]    # Stable diffusion library
pip install .[knowledge_graph]     # spacy and KG libraries

# REST API + UI
pip install .[ui]

# Benchmarking
pip install .[benchmark]

# Dev tools
pip install .[dev]