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魔搭Llama3 8b中文Agent智能体模型

本模型使用Llama3-8b-instruct基模型进行训练,适配中文通用场景,且支持ReACT格式的Agent调用。

模型使用

推理

# 安装依赖
pip install ms-swift -U
# 推理
swift infer --model_type llama3-8b-instruct --model_id_or_path swift/Llama3-Chinese-8B-Instruct-Agent-v1
# 部署
swift deploy --model_type llama3-8b-instruct --model_id_or_path swift/Llama3-Chinese-8B-Instruct-Agent-v1

本模型可以联合ModelScopeAgent框架使用,请参考:

https://github.com/modelscope/swift/blob/main/docs/source/LLM/Agent%E5%BE%AE%E8%B0%83%E6%9C%80%E4%BD%B3%E5%AE%9E%E8%B7%B5.md#%E6%90%AD%E9%85%8Dmodelscope-agent%E4%BD%BF%E7%94%A8

模型训练信息

为了适配中文及Agent场景,我们针对语料进行了一定混合配比,训练Llama3使用的语料如下:

- COIG-CQIA:https://modelscope.cn/datasets/AI-ModelScope/COIG-CQIA/summary 该数据集包含了中国传统知识、豆瓣、弱智吧、知乎等中文互联网信息

- 魔搭通用Agent训练数据集: https://modelscope.cn/datasets/AI-ModelScope/ms-agent-for-agentfabric/summary

- alpaca-en: https://modelscope.cn/datasets/AI-ModelScope/alpaca-gpt4-data-en/summary

- ms-bench魔搭通用中文问答数据集: https://modelscope.cn/datasets/iic/ms_bench/summary

超参数
lr 5e-5
epoch 2
lora_rank 8
lora_alpha 32
lora_target_modules ALL
batch_size 2
gradient_accumulation_steps 16

模型训练命令

NPROC_PER_NODE=8 \
swift sft \
  --model_type llama3-8b-instruct \
  --dataset ms-agent-for-agentfabric-default alpaca-en ms-bench ms-agent-for-agentfabric-addition coig-cqia-ruozhiba coig-cqia-zhihu coig-cqia-exam coig-cqia-chinese-traditional coig-cqia-logi-qa coig-cqia-segmentfault coig-cqia-wiki \
  --batch_size 2 \
  --max_length 2048 \
  --use_loss_scale true \
  --gradient_accumulation_steps 16 \
  --learning_rate 5e-5 \
  --use_flash_attn true \
  --eval_steps 500 \
  --save_steps 500 \
  --train_dataset_sample -1 \
  --dataset_test_ratio 0.1 \
  --val_dataset_sample 10000 \
  --num_train_epochs 2 \
  --check_dataset_strategy none \
  --gradient_checkpointing true \
  --weight_decay 0.01 \
  --warmup_ratio 0.03 \
  --save_total_limit 2 \
  --logging_steps 10 \
  --sft_type lora \
  --lora_target_modules ALL \
  --lora_rank 8 \
  --lora_alpha 32

模型评测信息

评测模型 ARC CEVAL GSM8K
Llama3-8b-instruct 0.7645 0.5089 0.7475
Llama3-Chinese-8B-Instruct-Agent-v1 0.7577 0.4903 0.652

GSM8K英文数学能力下降了8个点左右,经过消融实验我们发现去除alpaca-en语料会导致GSM8K下降至少十个点以上。

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