Qwen-7B-Chat-Cantonese (通义千问·粤语)
Intro
Qwen-7B-Chat-Cantonese is a fine-tuned version based on Qwen-7B-Chat, trained on a substantial amount of Cantonese language data.
Qwen-7B-Chat-Cantonese係基於Qwen-7B-Chat嘅微調版本,基於大量粵語數據進行訓練。
Usage
Requirements
- python 3.8 and above
- pytorch 1.12 and above, 2.0 and above are recommended
- CUDA 11.4 and above are recommended (this is for GPU users, flash-attention users, etc.)
Dependency
To run Qwen-7B-Chat-Cantonese, please make sure you meet the above requirements, and then execute the following pip commands to install the dependent libraries.
pip install transformers==4.32.0 accelerate tiktoken einops scipy transformers_stream_generator==0.0.4 peft deepspeed
In addition, it is recommended to install the flash-attention
library (we support flash attention 2 now.) for higher efficiency and lower memory usage.
git clone https://github.com/Dao-AILab/flash-attention
cd flash-attention && pip install .
Quickstart
Pls turn to QwenLM/Qwen - Quickstart
Training Parameters
Parameter | Description | Value |
---|---|---|
Learning Rate | AdamW optimizer learning rate | 7e-5 |
Weight Decay | Regularization strength | 0.8 |
Gamma | Learning rate decay factor | 1.0 |
Batch Size | Number of samples per batch | 1000 |
Precision | Floating point precision | fp16 |
Learning Policy | Learning rate adjustment policy | cosine |
Warmup Steps | Initial steps without learning rate adjustment | 0 |
Total Steps | Total training steps | 1024 |
Gradient Accumulation Steps | Number of steps to accumulate gradients before updating | 8 |
Demo
Special Note
This is my first fine-tuning LLM project. Pls forgive me if there's anything wrong.
If you have any questions or suggestions, feel free to contact me.
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Qwen/Qwen-7B-Chat