Spaces:
Sleeping
A newer version of the Gradio SDK is available:
5.9.1
Llama2 Code Interpreter
π€ CodeLlama 7B Finetuned Model (HF)
This project allows LLM to generate code, execute it, receive feedback, debug, and answer questions based on the whole process. It is designed to be intuitive and versatile, capable of dealing with multiple languages and frameworks.
The purpose and direction of the project
Quick Start
Run the Gradio App:
python3 chatbot.py --path Seungyoun/codellama-7b-instruct-pad
News
- π₯π₯π₯[2023/08/27] We're thrilled to announce that our π€ Llama2 Code Interpreter-7B (Finetuned from CodeLlama-7B-Instruct) model achieved a remarkable 70.12pass@1 on the HumanEval Benchmarks.
HumanEval
Model | Score(pass@1) |
---|---|
Codellama instruct 7b | 34.8% |
Codellama instruct 7b - finetuning | 70.12% |
GSM8K
Model | Score |
---|---|
Code Llama 7B | 13% |
Code Llama 13B | 20.8% |
Codellama instruct 7b - finetuning | 28% |
π Key Features
- π Code Generation and Execution: Llama2 is capable of generating code, which it then automatically identifies and executes within its generated code blocks.
- Monitors and retains Python variables that were used in previously executed code blocks.
- π At the moment, my focus is on "Data development for GPT-4 code interpretation" and "Enhancing the model using this data". For more details, check out the feat/finetuning branch in our repository.
- π CodeLlama Support CodeLlama2
Examples
Llama2 in Action
In the GIF, Llama2 is seen in action. A user types in the request: Plot Nvidia 90 days chart.
Llama2, an advanced code interpreter fine-tuned on a select dataset, swiftly queries Yahoo Finance
. Moments later, it fetches the latest Nvidia stock prices from the past 90 days. Using Matplotlib
, Llama2 then generates a clear and detailed stock price chart for Nvidia, showcasing its performance over the given period.
Installation
Clone the Repository (if you haven't already):
git clone https://github.com/SeungyounShin/Llama2-Code-Interpreter.git cd Llama2-Code-Interpreter
Install the required dependencies:
pip install -r requirements.txt
Run App with GPT4 finetunned Llama Model
To start interacting with Llama2 via the Gradio UI using codellama-7b-instruct-pad
, follow the steps below:
- Run the Gradio App:
python3 chatbot.py --path Seungyoun/codellama-7b-instruct-pad
For those who want to use other models:
General Instructions to Run App
To start interacting with Llama2 via the Gradio UI using other models:
- Run the Command:
python3 chatbot.py --model_path <your-model-path>
Replace <your-model-path>
with the path to the model file you wish to use. A recommended model for chat interactions is meta-llama/Llama-2-13b-chat
.
Contributions
Contributions, issues, and feature requests are welcome! Feel free to check issues page.
License
Distributed under the MIT License. See LICENSE
for more information.
Contact
Seungyoun, Shin - 2022021568@korea.ac.kr
Acknowledgement
Here are some relevant and related projects that have contributed to the development of this work:
- llama2 : GitHub Repository
- yet-another-gpt-tutorial : GitHub Repository
These projects have been instrumental in providing valuable insights and resources, and their contributions are highly appreciated.