/localGPT

Chat with your documents on your local device using GPT models. No data leaves your device and 100% private.

Primary LanguagePythonApache License 2.0Apache-2.0

localGPT

This project was inspired by the original privateGPT. Most of the description here is inspired by the original privateGPT.

For detailed overview of the project, Watch this Youtube Video.

In this model, I have replaced the GPT4ALL model with Vicuna-7B model and we are using the InstructorEmbeddings instead of LlamaEmbeddings as used in the original privateGPT. Both Embeddings as well as LLM will run on GPU instead of CPU. It also has CPU support if you do not have a GPU (see below for instruction).

Ask questions to your documents without an internet connection, using the power of LLMs. 100% private, no data leaves your execution environment at any point. You can ingest documents and ask questions without an internet connection!

Built with LangChain and Vicuna-7B and InstructorEmbeddings

Environment Setup

In order to set your environment up to run the code here, first install all requirements:

pip install -r requirements.txt

Test dataset

This repo uses a Constitution of USA as an example.

Instructions for ingesting your own dataset

Put any and all of your .txt, .pdf, or .csv files into the SOURCE_DOCUMENTS directory in the load_documents() function, replace the docs_path with the absolute path of your source_documents directory.

The current default file types are .txt, .pdf, .csv, and .xlsx, if you want to use any other file type, you will need to convert it to one of the default file types.

Run the following command to ingest all the data.

python ingest.py

It will create an index containing the local vectorstore. Will take time, depending on the size of your documents. You can ingest as many documents as you want, and all will be accumulated in the local embeddings database. If you want to start from an empty database, delete the index.

Note: When you run this for the first time, it will download take time as it has to download the embedding model. In the subseqeunt runs, no data will leave your local enviroment and can be run without internet connection.

Ask questions to your documents, locally!

In order to ask a question, run a command like:

python run_localGPT.py

And wait for the script to require your input.

> Enter a query:

Hit enter. Wait while the LLM model consumes the prompt and prepares the answer. Once done, it will print the answer and the 4 sources it used as context from your documents; you can then ask another question without re-running the script, just wait for the prompt again.

Note: When you run this for the first time, it will need internet connection to download the vicuna-7B model. After that you can turn off your internet connection, and the script inference would still work. No data gets out of your local environment.

Type exit to finish the script.

Run it on CPU

By default, localGPT will use your GPU to run both the ingest.py and run_localGPT.py scripts. But if you do not have a GPU and want to run this on CPU, now you can do that (Warning: Its going to be slow!). You will need to use --device_type cpuflag with both scripts.

For Ingestion run the following:

python ingest.py --device_type cpu

In order to ask a question, run a command like:

python run_localGPT.py --device_type cpu

How does it work?

Selecting the right local models and the power of LangChain you can run the entire pipeline locally, without any data leaving your environment, and with reasonable performance.

  • ingest.py uses LangChain tools to parse the document and create embeddings locally using InstructorEmbeddings. It then stores the result in a local vector database using Chroma vector store.
  • run_localGPT.py uses a local LLM (Vicuna-7B in this case) to understand questions and create answers. The context for the answers is extracted from the local vector store using a similarity search to locate the right piece of context from the docs.
  • You can replace this local LLM with any other LLM from the HuggingFace. Make sure whatever LLM you select is in the HF format.

System Requirements

Python Version

To use this software, you must have Python 3.10 or later installed. Earlier versions of Python will not compile.

C++ Compiler

If you encounter an error while building a wheel during the pip install process, you may need to install a C++ compiler on your computer.

For Windows 10/11

To install a C++ compiler on Windows 10/11, follow these steps:

  1. Install Visual Studio 2022.
  2. Make sure the following components are selected:
    • Universal Windows Platform development
    • C++ CMake tools for Windows
  3. Download the MinGW installer from the MinGW website.
  4. Run the installer and select the "gcc" component.

NVIDIA Driver's Issues:

Follow this page to install NVIDIA Drivers.

M1/M2 Macbook users:

1- Follow this page to build up PyTorch with Metal Performance Shaders (MPS) support. PyTorch uses the new MPS backend for GPU training acceleration. It is good practice to verify mps support using a simple Python script as mentioned in the provided link.

2- By following the page, here is an example of you may initiate in your terminal

xcode-select --install
conda install pytorch torchvision torchaudio -c pytorch-nightly
pip install chardet
pip install cchardet
pip uninstall charset_normalizer
pip install charset_normalizer
pip install pdfminer.six
pip install xformers

3- Create a new verifymps.py in the same directory (localGPT) where you have all files and environment.

import torch
if torch.backends.mps.is_available():
    mps_device = torch.device("mps")
    x = torch.ones(1, device=mps_device)
    print (x)
else:
    print ("MPS device not found.")

4- Find instructor.py and open it in VS Code to edit.

The instructor.py is probably embeded similar to this:

file_path = "/System/Volumes/Data/Users/USERNAME/anaconda3/envs/LocalGPT/lib/python3.10/site-packages/InstructorEmbedding/instructor.py"

You can open the instructor.py and then edit it using this code:

Open the file in VSCode

subprocess.run(["open", "-a", "Visual Studio Code", file_path])

Once you open instructor.py with VS Code, replace the code snippet that has device_type with the following codes:

     if device is None:
        device = self._target_device

    # Replace the line: self.to(device)

    if device in ['cpu', 'CPU']:
        device = torch.device('cpu')

    elif device in ['mps', 'MPS']:
        device = torch.device('mps')
    
    else:
        device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')

    self.to(device)

Disclaimer

This is a test project to validate the feasibility of a fully local solution for question answering using LLMs and Vector embeddings. It is not production ready, and it is not meant to be used in production. Vicuna-7B is based on the Llama model so that has the original Llama license.