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Project description
Search your codebase semantically or chat with it from cli. Keep the vector database superfast up to date to the latest code changes.
100% local support without any dataleaks.
Built with langchain, treesitter, sentence-transformers, instructor-embedding,
faiss, lama.cpp, Ollama, Streamlit.
✨ Features
- 🔎 Semantic code search
- 💬 GPT-like chat with your codebase
- ⚙️ Synchronize vector store and latest code changes with ease
- 💻 100% local embeddings and llms
- sentence-transformers, instructor-embeddings, llama.cpp, Ollama
- 🌐 OpenAI, Azure OpenAI and Anthropic
- 🌳 Treesitter integration
[!NOTE]
There will be better results if the code is well documented. You might consider doc-comments-ai for code documentation generation.
🚀 Usage
Start semantic search:
codeqai search
Start chat dialog:
codeqai chat
Synchronize vector store with current git checkout:
codeqai sync
Start Streamlit app:
codeqai app
[!NOTE] At first usage, the repository will be indexed with the configured embeddings model which might take a while.
📋 Requirements
- Python >=3.9,<3.12
📦 Installation
Install in an isolated environment with pipx
:
pipx install codeqai
⚠ Make sure pipx is using Python >=3.9,<3.12.
To specify the Python version explicitly with pipx, activate the desired Python version (e.g. with pyenv shell 3.X.X
) and intall with:
pipx install codeqai --python $(which python)
If you are still facing issues using pipx you can also install directly from source through PyPI with:
pip install codeqai
However, it is recommended to use pipx to benefit from isolated environments for the dependencies.
Visit the Troubleshooting section for solutions of known issues during installation.
[!NOTE]
Some packages are not installed by default. At first usage it is asked to installfaiss-cpu
orfaiss-gpu
. Faiss-gpu is recommended if the hardware supports CUDA 7.5+. If local embeddings and llms are used it will be further asked to install sentence-transformers, instructor or llama.cpp.
🔧 Configuration
At first usage or by running
codeqai configure
the configuration process is initiated, where the embeddings and llms can be chosen.
[!IMPORTANT]
If you want to change the embeddings model in the configuration later, delete the cached files in~/.cache/codeqai
. Afterwards the vector store files are created again with the recent configured embeddings model. This is neccessary since the similarity search does not work if the models differ.
🌐 Remote models
If remote models are used, the following environment variables are required.
If the required environment variables are already set, they will be used, otherwise you will be prompted to enter them which are then stored in ~/.config/codeqai/.env
.
OpenAI
export OPENAI_API_KEY = "your OpenAI api key"
Azure OpenAI
export OPENAI_API_TYPE = "azure"
export AZURE_OPENAI_ENDPOINT = "https://<your-endpoint>.openai.azure.com/"
export OPENAI_API_KEY = "your Azure OpenAI api key"
export OPENAI_API_VERSION = "2023-05-15"
Anthropic
export ANTHROPIC_API_KEY="your Anthropic api key"
[!NOTE]
To change the environment variables later, update the~/.config/codeqai/.env
manually.
📚 Supported Languages
- Python
- Typescript
- Javascript
- Java
- Rust
- Kotlin
- Go
- C++
- C
- C#
- Ruby
💡 How it works
The entire git repo is parsed with treesitter to extract all methods with documentations and saved to a local FAISS vector database with either sentence-transformers, instructor-embeddings or OpenAI's text-embedding-ada-002.
The vector database is saved to a file on your system and will be loaded later again after further usage.
Afterwards it is possible to do semantic search on the codebase based on the embeddings model.
To chat with the codebase locally llama.cpp or Ollama is used by specifying the desired model.
For synchronization of recent changes in the repository, the git commit hashes of each file along with the vector Ids are saved to a cache.
When synchronizing the vector database with the latest git state, the cached commit hashes are compared to the current git hash of each file in the repository.
If the git commit hashes differ, the related vectors are deleted from the database and inserted again after recreating the vector embeddings.
Using llama.cpp the specified model needs to be available on the system in advance.
Using Ollama the Ollama container with the desired model needs to be running locally in advance on port 11434.
Also OpenAI or Azure-OpenAI can be used for remote chat models.
?FAQ
Where do I get models for llama.cpp?
Install the huggingface-cli
and download your desired model from the model hub.
For example
huggingface-cli download TheBloke/CodeLlama-13B-Python-GGUF codellama-13b-python.Q5_K_M.gguf
will download the codellama-13b-python.Q5_K_M
model. After the download has finished the absolute path of the model .gguf
file is printed to the console.
[!IMPORTANT]
llama.cpp
compatible models must be in the.gguf
format.
🛟 Troubleshooting
-
During installation with
pipx
pip failed to build package: tiktoken Some possibly relevant errors from pip install: error: subprocess-exited-with-error error: can't find Rust compiler
Make sure the rust compiler is installed on your system from here.
-
During installation of
faiss
× Building wheel for faiss-cpu (pyproject.toml) did not run successfully. │ exit code: 1 ╰─> [12 lines of output] running bdist_wheel ... note: This error originates from a subprocess, and is likely not a problem with pip. ERROR: Failed building wheel for faiss-cpu Failed to build faiss-cpu ERROR: Could not build wheels for faiss-cpu, which is required to install pyproject.toml-based projects
Make sure to have codeqai installed with Python <3.12. There is no faiss wheel available yet for Python 3.12.
🌟 Contributing
If you are missing a feature or facing a bug don't hesitate to open an issue or raise a PR. Any kind of contribution is highly appreciated!
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