- This repository contains the presentation slides, scripts, and documentation from a training session held on September 7, 2023.
- The session was aimed at the Information Development Department of ChainSea and strategic partners at Anhui Yitongtianxia.
- The material is designed for a two-hour training session focused on the LLaMA-2 model training and a demonstration of fine-tuning the LLaMA-2 7B model using the corporate data from Anhui Yitongtianxia.
LLaMA-2 Model Training and Fine-tuning Demonstration with LLaMA-2 7B Model
September 7, 2023 (Thursday) Afternoon
Colleagues from ChainSea Information Development Department and technical peers from Anhui Yitongtianxia.
To provide a practical overview and hands-on experience with large language models, specifically focusing on the LLaMA-2 model's training and fine-tuning processes. Participants will learn about the underlying techniques, best practices, and detailed steps to tailor the LLaMA-2 7B model to specific organizational needs using Anhui Yitongtianxia corporate information datasets.
-
Deployment
:- Scripts and configuration files for deploying the LLaMA-2 model in Linux environments.
- Instructions for setting up the model serving infrastructure, including containerization with Docker.
-
Training
:- Step-by-step tutorials on how to initiate LLaMA-2 model training, including parameter adjustments and monitoring.
- General example datasets and training scripts that can be adapted to any corporate data.
-
PPT & PDF
:- Presentation slides from the training session in both PowerPoint and PDF formats.
- Additional reading materials and references for further study on LLaMA-2 model training and fine-tuning.
Before beginning with the training, please ensure you have the following:
- Basic understanding of machine learning and natural language processing concepts.
- Familiarity with Python programming and scripting.
- Access to a computing environment capable of handling large language models, preferably with GPU support.
If you have any questions or would like to form a study group to solve problems together, please send an email to justin.hsu.1019@gmail.com.