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🚀 RAG with txtai

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This project is a Retrieval Augmented Generation (RAG) Streamlit application backed by txtai.

Retrieval Augmented Generation (RAG) helps generate factually correct content by limiting the context in which a LLM can generate answers. This is typically done with a search query that hydrates a prompt with a relevant context.

This application supports two categories of RAG.

  • Vector RAG: Context supplied via a vector search query
  • Graph RAG: Context supplied via a graph path traversal query

Quickstart

The two primary ways to run this application are as a Docker container and with a Python virtual environment. Running through Docker is recommended, at least to get an idea of the application's capabilities.

Docker

neuml/rag is available on Docker Hub:

This can be run with the default settings as follows.

docker run -d --gpus=all -it -p 8501:8501 neuml/rag

Python virtual environment

The application can also be directly installed and run. It's recommended that this be run within a Python virtual environment.

pip install -r requirements.txt

Start the application.

streamlit run rag.py

Demo

The short video clip above gives a brief overview on this RAG system. It shows a basic vector RAG query. It also shows a Graph RAG query with uploaded data. The following sections cover more on these concepts.

RAG

Vector

Traditional RAG or vector RAG runs a vector search to find the top N most relevant matches to a user's input. Those matches are passed to an LLM and the answer is returned.

The query Who created Linux? runs a vector search for the best matching documents in the Embeddings index. Those matches are then placed into a LLM prompt. The LLM prompt is executed and the answer is returned.

Graph RAG

Graph

Graph RAG is a new method that uses knowledge or semantic graphs to generate a context. Instead of a vector search, graph path queries are run. Graph RAG in the context of this application supports the following methods to generate context.

  • Graph query with the gq: prefix. This is a form of graph query expansion. It starts with a vector search to find the top n results. Those results are then expanded using a graph network stored alongside the vector database.

    • gq: Tell me about Linux
  • Graph path query. This query takes a list of concepts and finds the nodes that match closest to those concepts. A graph path traversal then runs to build a context of nodes related to those concepts. The result of this traversal is passed to the LLM as the context.

    • linux -> macos -> microsoft windows
  • Combination of both. This first runs a graph path query then runs a graph query only within the context of that path traversal.

    • linux -> macos -> microsoft windows gq: Tell me about Linux

Every Graph RAG query response will also show a corresponding graph to help understand how the query works. Each node in the graph is a section (paragraph). The node nodes are generated with a LLM prompt that applies a topic label at upload time.

Adding data to the index

Regardless of whether the RAG application was a new Embeddings index or an existing one, additional data can be added.

Data can be added as follows.

Method
# file path or URL Upload File
# custom notes and text as a string here! Upload Text

When a query begins with a # the URL or file is read by the RAG application and loaded into the index. This method also supports loading text directly into the index. For example # txtai is an all-in-one embeddings database would create a new entry in the Embeddings database.

Configuration parameters

The RAG application has a number of environment variables that can be set to control how the application behaves.

Variable Description Default Value
TITLE Main title of the application 🚀 RAG with txtai
EXAMPLES List of queries separated by ; Who created Linux?
gq: Tell me about Linux
linux -> macos -> microsoft windows
linux -> macos -> microsoft windows gq: Tell me about Linux
LLM Path to LLM x86-64: Llama-3.1-8B-Instruct-AWQ-INT4
arm64 : Llama-3.1-8B-Instruct-GGUF
EMBEDDINGS Embeddings database path neuml/txtai-wikipedia-slim
MAXLENGTH Maximum generation length 2048 for topics, 4096 for RAG
CONTEXT RAG context size 10
DATA Optional directory to index data from None
PERSIST Optional directory to save index updates to None
TOPICSBATCH Optional batch size for LLM topic queries None

Note: AWQ models are only supported on x86-64 machines

In the application, these settings can be shown by typing :settings.

See the following examples for setting this configuration with the Docker container. When running within a Python virtual environment, simply set these as environment variables.

Llama 3.1 8B

docker run -d --gpus=all -it -p 8501:8501 -e LLM=hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4 neuml/rag

Llama 3.1 8B via Ollama

docker run -d --gpus=all -it -p 8501:8501 --add-host=host.docker.internal:host-gateway \
-e LLM=ollama/llama3.1:8b-instruct-q4_K_M -e OLLAMA_API_BASE=http://host.docker.internal:11434 \
neuml/rag

GPT-4o

docker run -d --gpus=all -it -p 8501:8501 -e LLM=gpt-4o -e OPENAI_API_KEY=your-api-key neuml/rag

Run with another embeddings index

docker run -d --gpus=all -it -p 8501:8501 -e EMBEDDINGS=neuml/arxiv neuml/rag

Build an embeddings index with a local directory of files

docker run -d --gpus=all -it -p 8501:8501 -e DATA=/data/path -v local/path:/data/path neuml/rag

Persist embeddings and cache models

docker run -d --gpus=all -it -p 8501:8501 -e DATA=/data/path -e EMBEDDINGS=/data/embeddings \
-e PERSIST=/data/embeddings -e HF_HOME=/data/modelcache -v localdata:/data neuml/rag

See the documentation for the LLM pipeline and Embeddings for more information.

Further Reading