Local RAG pipeline for fixing LLM hallucinations using high-precision documentation indexing.
Project description
A local RAG pipeline for reducing hallucinations in LLMs by indexing technical documentation and research papers. Built for personal use on local hardware, shared here in case others find it useful. Web UI is built with Streamlit, with high level of configurability for the pipeline.
What It Does
Indexes technical documentation and research papers into vector databases, then uses retrieval-augmented generation to ground LLM responses in source material. Uses hierarchical node parsing with auto-merging retrieval and cross-encoder reranking to balance accuracy and context window constraints.
Quick Start
Install the tool via PyPI. But before you do, I advise you prep the environment because of large volume of dependencies (use Python 3.11+):
python -m venv venv
source venv/bin/activate # or .\venv\Scripts\activate(.ps1) on Windows CMD/PowerShell
Or via conda:
conda create -n tensor-truth python=3.11
conda activate tensor-truth
If using CUDA, make sure to first install the appropriate PyTorch version from pytorch.org. I used torch 2.9 and CUDA 12.8 in environments with CUDA.
If not, just install tensor-truth via pip, which includes CPU-only PyTorch.
pip install tensor-truth
Make sure ollama is installed and set up. Start the server:
ollama serve
Run the app:
tensor-truth
On first launch, pre-built indexes will auto-download from Google Drive (takes a few minutes). Also a small qwen2.5:0.5b will be pulled automatically for assigning automatic titles to chats.
Index Downloads
Pre-built indexes download automatically on startup. Note that Google Drive has rate limits, so if it refuses to download, try manually from indexes.tar.
Extract to ./indexes in the project root.
For details on the contents of this archive, see config/api.json and config/papers.json. These are my curated lists of useful libraries and research papers. Feel free to fork and set up your own indexes. See below instructions on how to build the indexes.
Requirements
Tested on:
- MacBook M1 Max (32GB unified memory)
- Desktop with RTX 3090 Ti (24GB VRAM)
Minimum recommended: 16GB RAM, Python 3.11+. GPU optional but significantly faster.
Recommended Models
Any Ollama model works, but these are tested:
General Purpose:
ollama pull deepseek-r1:8b # Balanced
ollama pull deepseek-r1:14b # High quality
ollama pull deepseek-r1:32b # Best quality (24GB+)
Code/Technical Docs:
ollama pull deepseek-coder-v2:16b
ollama pull deepseek-coder-v2
DeepSeek-R1 models include chain-of-thought reasoning. Coder-V2 variants are optimized for technical content and work particularly well with programming documentation.
Building Your Own Indexes
Pre-built indexes cover common libraries, but you can create custom knowledge bases:
Scrape Documentation:
tensor-truth-docs --list # Show available libraries
tensor-truth-docs pytorch # Scrape PyTorch docs
Fetch Research Papers:
tensor-truth-papers --config ./config/papers.json --category your_category --ids 2301.12345
tensor-truth-papers --rebuild your_category
Build Vector Index:
tensor-truth-build --modules module_name
Configuration
This system is configured for personal research workflows with these assumptions:
- ChromaDB for vector storage (persistent, single-process)
- HuggingFace sentence-transformers for embeddings
- BGE cross-encoder models for reranking
- Ollama for local LLM inference
- All processing runs locally
If you need different chunking strategies or retrieval parameters, you'll need to modify the source files. The current setup is tuned for technical documentation and research papers.
License
MIT License - see LICENSE for details.
Built for personal use but released publicly. Provided as-is with no warranty.
Disclaimer & Content Ownership
1. Software License:
The source code of tensor-truth is licensed under the MIT License. This covers the logic, UI, and retrieval pipelines created for this project.
2. Third-Party Content: This tool is designed to fetch and index publicly available technical documentation, research papers (via ArXiv), and educational textbooks.
- I do not own the rights to the indexed content. All PDF files, textbooks, and research papers fetched by this tool remain the intellectual property of their respective authors and publishers.
- Source Links: The configuration files (
config/papers.json, etc.) point exclusively to official sources, author-hosted pages, or open-access repositories (like ArXiv). - Usage: This tool is intended for personal, non-commercial research and educational use.
3. Takedown Request: If you are an author or copyright holder of any material referenced in the default configurations or included in the pre-built indexes and wish for it to be removed, please open an issue or contact me at ljubobratovic.relja@gmail.com, and the specific references/data will be removed immediately.
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