Instructions to use xtuner/internlm-7b-qlora-msagent-react with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- PEFT
How to use xtuner/internlm-7b-qlora-msagent-react with PEFT:
from peft import PeftModel from transformers import AutoModelForCausalLM base_model = AutoModelForCausalLM.from_pretrained("internlm/internlm-7b") model = PeftModel.from_pretrained(base_model, "xtuner/internlm-7b-qlora-msagent-react") - Notebooks
- Google Colab
- Kaggle
| # Copyright (c) OpenMMLab. All rights reserved. | |
| import torch | |
| from bitsandbytes.optim import PagedAdamW32bit | |
| from mmengine.dataset import DefaultSampler | |
| from mmengine.hooks import (CheckpointHook, DistSamplerSeedHook, IterTimerHook, | |
| LoggerHook, ParamSchedulerHook) | |
| from mmengine.optim import AmpOptimWrapper, CosineAnnealingLR | |
| from modelscope.msdatasets import MsDataset | |
| from peft import LoraConfig | |
| from transformers import (AutoModelForCausalLM, AutoTokenizer, | |
| BitsAndBytesConfig) | |
| from xtuner.dataset import process_ms_dataset | |
| from xtuner.dataset.collate_fns import default_collate_fn | |
| from xtuner.dataset.map_fns import (msagent_react_map_fn, | |
| template_map_fn_factory) | |
| from xtuner.engine import DatasetInfoHook, EvaluateChatHook | |
| from xtuner.model import SupervisedFinetune | |
| from xtuner.utils import PROMPT_TEMPLATE | |
| ####################################################################### | |
| # PART 1 Settings # | |
| ####################################################################### | |
| # Model | |
| pretrained_model_name_or_path = 'internlm/internlm-7b' | |
| # Data | |
| data_path = 'damo/MSAgent-Bench' | |
| prompt_template = PROMPT_TEMPLATE.default | |
| max_length = 2048 | |
| pack_to_max_length = False | |
| # Scheduler & Optimizer | |
| batch_size = 8 # per_device | |
| accumulative_counts = 1 | |
| dataloader_num_workers = 2 | |
| max_epochs = 3 | |
| optim_type = PagedAdamW32bit | |
| lr = 2e-4 | |
| betas = (0.9, 0.999) | |
| weight_decay = 0 | |
| max_norm = 1 # grad clip | |
| # Evaluate the generation performance during the training | |
| evaluation_freq = 500 | |
| SYSTEM = ( | |
| '你是一个可以调用外部工具的助手,可以使用的工具包括:\n' | |
| "{{\'GoogleSearch\': \'一个可以从谷歌搜索结果的API。\\n" | |
| '当你需要对于一个特定问题找到简短明了的回答时,可以使用它。\\n' | |
| "输入应该是一个搜索查询。\\n\\n\'," | |
| "\'PythonInterpreter\': \"用来执行Python代码。代码必须是一个函数,\\n" | |
| "函数名必须得是 \'solution\',代码对应你的思考过程。代码实例格式如下:\\n" | |
| '```python\\n# import 依赖包\\nimport xxx\\ndef solution():' | |
| '\\n # 初始化一些变量\\n variable_names_with_real_meaning = xxx' | |
| '\\n # 步骤一\\n mid_variable = func(variable_names_with_real_meaning)' | |
| '\\n # 步骤 x\\n mid_variable = func(mid_variable)\\n # 最后结果' | |
| '\\n final_answer = func(mid_variable)\\n return final_answer' | |
| "\\n```\\n\"}}\n" | |
| '如果使用工具请遵循以下格式回复:\n```\n' | |
| 'Thought:思考你当前步骤需要解决什么问题,是否需要使用工具\n' | |
| "Action:工具名称,你的工具必须从 [[\'GoogleSearch\', \'PythonInterpreter\']] 选择" | |
| '\nAction Input:工具输入参数\n```\n工具返回按照以下格式回复:\n' | |
| '```\nResponse:调用工具后的结果\n```' | |
| '\n如果你已经知道了答案,或者你不需要工具,请遵循以下格式回复\n```' | |
| '\nThought:给出最终答案的思考过程\nFinal Answer:最终答案\n```\n开始!\n') | |
| evaluation_inputs = ['上海明天天气怎么样?'] | |
| ####################################################################### | |
| # PART 2 Model & Tokenizer # | |
| ####################################################################### | |
| tokenizer = dict( | |
| type=AutoTokenizer.from_pretrained, | |
| pretrained_model_name_or_path=pretrained_model_name_or_path, | |
| trust_remote_code=True, | |
| padding_side='right') | |
| model = dict( | |
| type=SupervisedFinetune, | |
| llm=dict( | |
| type=AutoModelForCausalLM.from_pretrained, | |
| pretrained_model_name_or_path=pretrained_model_name_or_path, | |
| trust_remote_code=True, | |
| torch_dtype=torch.float16, | |
| quantization_config=dict( | |
| type=BitsAndBytesConfig, | |
| load_in_4bit=True, | |
| load_in_8bit=False, | |
| llm_int8_threshold=6.0, | |
| llm_int8_has_fp16_weight=False, | |
| bnb_4bit_compute_dtype=torch.float16, | |
| bnb_4bit_use_double_quant=True, | |
| bnb_4bit_quant_type='nf4')), | |
| lora=dict( | |
| type=LoraConfig, | |
| r=64, | |
| lora_alpha=16, | |
| lora_dropout=0.1, | |
| bias='none', | |
| task_type='CAUSAL_LM')) | |
| ####################################################################### | |
| # PART 3 Dataset & Dataloader # | |
| ####################################################################### | |
| train_dataset = dict( | |
| type=process_ms_dataset, | |
| dataset=dict(type=MsDataset.load, dataset_name=data_path), | |
| tokenizer=tokenizer, | |
| max_length=max_length, | |
| dataset_map_fn=msagent_react_map_fn, | |
| template_map_fn=dict( | |
| type=template_map_fn_factory, template=prompt_template), | |
| remove_unused_columns=True, | |
| shuffle_before_pack=True, | |
| pack_to_max_length=pack_to_max_length) | |
| train_dataloader = dict( | |
| batch_size=batch_size, | |
| num_workers=dataloader_num_workers, | |
| dataset=train_dataset, | |
| sampler=dict(type=DefaultSampler, shuffle=True), | |
| collate_fn=dict(type=default_collate_fn)) | |
| ####################################################################### | |
| # PART 4 Scheduler & Optimizer # | |
| ####################################################################### | |
| # optimizer | |
| optim_wrapper = dict( | |
| type=AmpOptimWrapper, | |
| optimizer=dict( | |
| type=optim_type, lr=lr, betas=betas, weight_decay=weight_decay), | |
| clip_grad=dict(max_norm=max_norm, error_if_nonfinite=False), | |
| accumulative_counts=accumulative_counts, | |
| loss_scale='dynamic', | |
| dtype='float16') | |
| # learning policy | |
| # More information: https://github.com/open-mmlab/mmengine/blob/main/docs/en/tutorials/param_scheduler.md # noqa: E501 | |
| param_scheduler = dict( | |
| type=CosineAnnealingLR, | |
| eta_min=lr * 0.1, | |
| by_epoch=True, | |
| T_max=max_epochs, | |
| convert_to_iter_based=True) | |
| # train, val, test setting | |
| train_cfg = dict(by_epoch=True, max_epochs=max_epochs, val_interval=1) | |
| ####################################################################### | |
| # PART 5 Runtime # | |
| ####################################################################### | |
| # Log the dialogue periodically during the training process, optional | |
| custom_hooks = [ | |
| dict(type=DatasetInfoHook, tokenizer=tokenizer), | |
| dict( | |
| type=EvaluateChatHook, | |
| tokenizer=tokenizer, | |
| every_n_iters=evaluation_freq, | |
| evaluation_inputs=evaluation_inputs, | |
| system=SYSTEM, | |
| prompt_template=prompt_template) | |
| ] | |
| # configure default hooks | |
| default_hooks = dict( | |
| # record the time of every iteration. | |
| timer=dict(type=IterTimerHook), | |
| # print log every 100 iterations. | |
| logger=dict(type=LoggerHook, interval=10), | |
| # enable the parameter scheduler. | |
| param_scheduler=dict(type=ParamSchedulerHook), | |
| # save checkpoint per epoch. | |
| checkpoint=dict(type=CheckpointHook, interval=1), | |
| # set sampler seed in distributed evrionment. | |
| sampler_seed=dict(type=DistSamplerSeedHook), | |
| ) | |
| # configure environment | |
| env_cfg = dict( | |
| # whether to enable cudnn benchmark | |
| cudnn_benchmark=False, | |
| # set multi process parameters | |
| mp_cfg=dict(mp_start_method='fork', opencv_num_threads=0), | |
| # set distributed parameters | |
| dist_cfg=dict(backend='nccl'), | |
| ) | |
| # set visualizer | |
| visualizer = None | |
| # set log level | |
| log_level = 'INFO' | |
| # load from which checkpoint | |
| load_from = None | |
| # whether to resume training from the loaded checkpoint | |
| resume = False | |
| # Defaults to use random seed and disable `deterministic` | |
| randomness = dict(seed=None, deterministic=False) | |