自我认知数据集和处理代码
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datasets/processed/process_self_cognition.py
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datasets/processed/process_self_cognition.py
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import json
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# 打开JSON文件并读取其内容
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# file_name = 'multi_turn_dataset_1.json'
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# file_name = 'multi_turn_dataset_2.json'
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# file_name = 'data_pro.json'
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file_name = 'self_cognition_EmoLLM.json'
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with open(f'../datasets/{file_name}', 'rt', encoding='utf-8') as file:
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data = json.load(file)
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n = 0
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datas = []
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for i in data:
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dict_ = dict()
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# dict_['conversation'] = i
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# print(dict_)
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try:
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dict_['conversation']= [i]
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dict_['conversation'][0]['input'] = i['instruction']
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dict_['conversation'][0]['output'] = i['output']
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dict_['conversation'][0]['system'] = "你是心理健康助手EmoLLM, 由EmoLLM团队打造, 是一个研究过无数具有心理健康问题的病人与心理健康医生对话的心理专家, 在心理方面拥有广博的知识储备和丰富的研究咨询经验。你旨在通过专业心理咨询, 协助来访者完成心理诊断。请充分利用专业心理学知识与咨询技术, 一步步帮助来访者解决心理问题。"
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# dict_['conversation']['system']
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dict_['conversation'][0].pop('instruction')
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# dict_['conversation'] = [dict_['conversation']]
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datas.append(dict_)
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except:
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print(n,i) # 4 empty lines in data.json 425 483 742 1120
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n+=1
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with open(f'./processed_{file_name}', 'wt', encoding='utf-8') as file:
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json.dump(datas, file, ensure_ascii=False, indent=4)
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print(datas[0])
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print(datas[1])
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xtuner_config/llama3_8b_512_qlora_alpaca_e3.py
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xtuner_config/llama3_8b_512_qlora_alpaca_e3.py
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# Copyright (c) OpenMMLab. All rights reserved.
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import torch
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from datasets import load_dataset
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from mmengine.dataset import DefaultSampler
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from mmengine.hooks import (CheckpointHook, DistSamplerSeedHook, IterTimerHook,
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LoggerHook, ParamSchedulerHook)
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from mmengine.optim import AmpOptimWrapper, CosineAnnealingLR, LinearLR
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from peft import LoraConfig
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from torch.optim import AdamW
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from transformers import (AutoModelForCausalLM, AutoTokenizer,
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BitsAndBytesConfig)
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from xtuner.dataset import process_hf_dataset
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from xtuner.dataset.collate_fns import default_collate_fn
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from xtuner.dataset.map_fns import alpaca_map_fn, template_map_fn_factory
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from xtuner.engine.hooks import (DatasetInfoHook, EvaluateChatHook,
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VarlenAttnArgsToMessageHubHook)
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from xtuner.engine.runner import TrainLoop
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from xtuner.model import SupervisedFinetune
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from xtuner.parallel.sequence import SequenceParallelSampler
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from xtuner.utils import PROMPT_TEMPLATE, SYSTEM_TEMPLATE
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#######################################################################
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# PART 1 Settings #
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#######################################################################
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# Model
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pretrained_model_name_or_path = 'meta-llama/Meta-Llama-3-8B-Instruct'
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use_varlen_attn = False
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# Data
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alpaca_en_path = 'tatsu-lab/alpaca'
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prompt_template = PROMPT_TEMPLATE.llama3_chat
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max_length = 512
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pack_to_max_length = True
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# parallel
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sequence_parallel_size = 1
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# Scheduler & Optimizer
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batch_size = 1 # per_device
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accumulative_counts = 16
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accumulative_counts *= sequence_parallel_size
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dataloader_num_workers = 0
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max_epochs = 3
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optim_type = AdamW
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lr = 2e-4
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betas = (0.9, 0.999)
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weight_decay = 0
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max_norm = 1 # grad clip
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warmup_ratio = 0.03
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# Save
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save_steps = 500
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save_total_limit = 2 # Maximum checkpoints to keep (-1 means unlimited)
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# Evaluate the generation performance during the training
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evaluation_freq = 500
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SYSTEM = SYSTEM_TEMPLATE.alpaca
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evaluation_inputs = [
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'请给我介绍五个上海的景点', 'Please tell me five scenic spots in Shanghai'
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]
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#######################################################################
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# PART 2 Model & Tokenizer #
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#######################################################################
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tokenizer = dict(
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type=AutoTokenizer.from_pretrained,
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pretrained_model_name_or_path=pretrained_model_name_or_path,
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trust_remote_code=True,
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padding_side='right')
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model = dict(
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type=SupervisedFinetune,
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use_varlen_attn=use_varlen_attn,
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llm=dict(
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type=AutoModelForCausalLM.from_pretrained,
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pretrained_model_name_or_path=pretrained_model_name_or_path,
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trust_remote_code=True,
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torch_dtype=torch.float16,
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quantization_config=dict(
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type=BitsAndBytesConfig,
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load_in_4bit=True,
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load_in_8bit=False,
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llm_int8_threshold=6.0,
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llm_int8_has_fp16_weight=False,
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bnb_4bit_compute_dtype=torch.float16,
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bnb_4bit_use_double_quant=True,
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bnb_4bit_quant_type='nf4')),
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lora=dict(
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type=LoraConfig,
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r=16,
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lora_alpha=16,
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lora_dropout=0.1,
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bias='none',
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task_type='CAUSAL_LM'))
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#######################################################################
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# PART 3 Dataset & Dataloader #
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#######################################################################
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alpaca_en = dict(
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type=process_hf_dataset,
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dataset=dict(type=load_dataset, path=alpaca_en_path),
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tokenizer=tokenizer,
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max_length=max_length,
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dataset_map_fn=alpaca_map_fn,
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template_map_fn=dict(
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type=template_map_fn_factory, template=prompt_template),
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remove_unused_columns=True,
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shuffle_before_pack=True,
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pack_to_max_length=pack_to_max_length,
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use_varlen_attn=use_varlen_attn)
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sampler = SequenceParallelSampler \
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if sequence_parallel_size > 1 else DefaultSampler
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train_dataloader = dict(
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batch_size=batch_size,
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num_workers=dataloader_num_workers,
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dataset=alpaca_en,
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sampler=dict(type=sampler, shuffle=True),
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collate_fn=dict(type=default_collate_fn, use_varlen_attn=use_varlen_attn))
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#######################################################################
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# PART 4 Scheduler & Optimizer #
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#######################################################################
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# optimizer
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optim_wrapper = dict(
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type=AmpOptimWrapper,
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optimizer=dict(
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type=optim_type, lr=lr, betas=betas, weight_decay=weight_decay),
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clip_grad=dict(max_norm=max_norm, error_if_nonfinite=False),
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accumulative_counts=accumulative_counts,
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loss_scale='dynamic',
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dtype='float16')
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# learning policy
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# More information: https://github.com/open-mmlab/mmengine/blob/main/docs/en/tutorials/param_scheduler.md # noqa: E501
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param_scheduler = [
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dict(
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type=LinearLR,
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start_factor=1e-5,
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by_epoch=True,
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begin=0,
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end=warmup_ratio * max_epochs,
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convert_to_iter_based=True),
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dict(
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type=CosineAnnealingLR,
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eta_min=0.0,
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by_epoch=True,
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begin=warmup_ratio * max_epochs,
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end=max_epochs,
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convert_to_iter_based=True)
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]
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# train, val, test setting
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train_cfg = dict(type=TrainLoop, max_epochs=max_epochs)
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#######################################################################
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# PART 5 Runtime #
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#######################################################################
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# Log the dialogue periodically during the training process, optional
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custom_hooks = [
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dict(type=DatasetInfoHook, tokenizer=tokenizer),
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dict(
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type=EvaluateChatHook,
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tokenizer=tokenizer,
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every_n_iters=evaluation_freq,
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evaluation_inputs=evaluation_inputs,
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system=SYSTEM,
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prompt_template=prompt_template)
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]
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if use_varlen_attn:
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custom_hooks += [dict(type=VarlenAttnArgsToMessageHubHook)]
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# configure default hooks
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default_hooks = dict(
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# record the time of every iteration.
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timer=dict(type=IterTimerHook),
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# print log every 10 iterations.
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logger=dict(type=LoggerHook, log_metric_by_epoch=False, interval=10),
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# enable the parameter scheduler.
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param_scheduler=dict(type=ParamSchedulerHook),
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# save checkpoint per `save_steps`.
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checkpoint=dict(
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type=CheckpointHook,
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by_epoch=False,
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interval=save_steps,
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max_keep_ckpts=save_total_limit),
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# set sampler seed in distributed evrionment.
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sampler_seed=dict(type=DistSamplerSeedHook),
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)
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# configure environment
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env_cfg = dict(
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# whether to enable cudnn benchmark
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cudnn_benchmark=False,
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# set multi process parameters
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mp_cfg=dict(mp_start_method='fork', opencv_num_threads=0),
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# set distributed parameters
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dist_cfg=dict(backend='nccl'),
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)
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# set visualizer
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visualizer = None
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# set log level
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log_level = 'INFO'
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# load from which checkpoint
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load_from = None
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# whether to resume training from the loaded checkpoint
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resume = False
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# Defaults to use random seed and disable `deterministic`
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randomness = dict(seed=None, deterministic=False)
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# set log processor
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log_processor = dict(by_epoch=False)
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xtuner_config/llama3_8b_8k_qlora_alpaca_e3.py
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xtuner_config/llama3_8b_8k_qlora_alpaca_e3.py
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# Copyright (c) OpenMMLab. All rights reserved.
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import torch
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from datasets import load_dataset
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from mmengine.dataset import DefaultSampler
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from mmengine.hooks import (CheckpointHook, DistSamplerSeedHook, IterTimerHook,
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LoggerHook, ParamSchedulerHook)
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from mmengine.optim import AmpOptimWrapper, CosineAnnealingLR, LinearLR
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from peft import LoraConfig
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from torch.optim import AdamW
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from transformers import (AutoModelForCausalLM, AutoTokenizer,
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BitsAndBytesConfig)
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from xtuner.dataset import process_hf_dataset
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from xtuner.dataset.collate_fns import default_collate_fn
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from xtuner.dataset.map_fns import alpaca_map_fn, template_map_fn_factory
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from xtuner.engine.hooks import (DatasetInfoHook, EvaluateChatHook,
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VarlenAttnArgsToMessageHubHook)
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from xtuner.engine.runner import TrainLoop
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from xtuner.model import SupervisedFinetune
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from xtuner.parallel.sequence import SequenceParallelSampler
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from xtuner.utils import PROMPT_TEMPLATE, SYSTEM_TEMPLATE
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#######################################################################
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# PART 1 Settings #
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#######################################################################
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# Model
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pretrained_model_name_or_path = 'meta-llama/Meta-Llama-3-8B-Instruct'
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use_varlen_attn = False
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# Data
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alpaca_en_path = 'tatsu-lab/alpaca'
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prompt_template = PROMPT_TEMPLATE.llama3_chat
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max_length = 8192
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pack_to_max_length = True
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# parallel
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sequence_parallel_size = 1
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# Scheduler & Optimizer
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batch_size = 1 # per_device
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accumulative_counts = 16
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accumulative_counts *= sequence_parallel_size
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dataloader_num_workers = 0
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max_epochs = 3
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optim_type = AdamW
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lr = 2e-4
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betas = (0.9, 0.999)
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weight_decay = 0
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max_norm = 1 # grad clip
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warmup_ratio = 0.03
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# Save
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save_steps = 500
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save_total_limit = 2 # Maximum checkpoints to keep (-1 means unlimited)
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# Evaluate the generation performance during the training
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evaluation_freq = 500
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SYSTEM = SYSTEM_TEMPLATE.alpaca
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evaluation_inputs = [
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'请给我介绍五个上海的景点', 'Please tell me five scenic spots in Shanghai'
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]
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#######################################################################
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# PART 2 Model & Tokenizer #
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#######################################################################
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tokenizer = dict(
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type=AutoTokenizer.from_pretrained,
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pretrained_model_name_or_path=pretrained_model_name_or_path,
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trust_remote_code=True,
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padding_side='right')
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model = dict(
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type=SupervisedFinetune,
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use_varlen_attn=use_varlen_attn,
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llm=dict(
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type=AutoModelForCausalLM.from_pretrained,
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pretrained_model_name_or_path=pretrained_model_name_or_path,
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trust_remote_code=True,
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torch_dtype=torch.float16,
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quantization_config=dict(
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type=BitsAndBytesConfig,
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load_in_4bit=True,
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load_in_8bit=False,
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llm_int8_threshold=6.0,
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llm_int8_has_fp16_weight=False,
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bnb_4bit_compute_dtype=torch.float16,
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bnb_4bit_use_double_quant=True,
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bnb_4bit_quant_type='nf4')),
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lora=dict(
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type=LoraConfig,
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r=16,
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lora_alpha=16,
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lora_dropout=0.1,
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bias='none',
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task_type='CAUSAL_LM'))
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#######################################################################
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# PART 3 Dataset & Dataloader #
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#######################################################################
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alpaca_en = dict(
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type=process_hf_dataset,
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dataset=dict(type=load_dataset, path=alpaca_en_path),
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tokenizer=tokenizer,
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max_length=max_length,
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dataset_map_fn=alpaca_map_fn,
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template_map_fn=dict(
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type=template_map_fn_factory, template=prompt_template),
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remove_unused_columns=True,
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shuffle_before_pack=True,
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pack_to_max_length=pack_to_max_length,
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use_varlen_attn=use_varlen_attn)
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sampler = SequenceParallelSampler \
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if sequence_parallel_size > 1 else DefaultSampler
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train_dataloader = dict(
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batch_size=batch_size,
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num_workers=dataloader_num_workers,
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dataset=alpaca_en,
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sampler=dict(type=sampler, shuffle=True),
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collate_fn=dict(type=default_collate_fn, use_varlen_attn=use_varlen_attn))
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#######################################################################
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# PART 4 Scheduler & Optimizer #
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#######################################################################
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# optimizer
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optim_wrapper = dict(
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type=AmpOptimWrapper,
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optimizer=dict(
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type=optim_type, lr=lr, betas=betas, weight_decay=weight_decay),
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clip_grad=dict(max_norm=max_norm, error_if_nonfinite=False),
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accumulative_counts=accumulative_counts,
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loss_scale='dynamic',
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dtype='float16')
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# learning policy
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# More information: https://github.com/open-mmlab/mmengine/blob/main/docs/en/tutorials/param_scheduler.md # noqa: E501
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param_scheduler = [
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dict(
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type=LinearLR,
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start_factor=1e-5,
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by_epoch=True,
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begin=0,
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end=warmup_ratio * max_epochs,
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convert_to_iter_based=True),
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dict(
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type=CosineAnnealingLR,
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eta_min=0.0,
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by_epoch=True,
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begin=warmup_ratio * max_epochs,
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end=max_epochs,
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convert_to_iter_based=True)
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]
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# train, val, test setting
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train_cfg = dict(type=TrainLoop, max_epochs=max_epochs)
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#######################################################################
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# PART 5 Runtime #
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#######################################################################
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# Log the dialogue periodically during the training process, optional
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custom_hooks = [
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dict(type=DatasetInfoHook, tokenizer=tokenizer),
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dict(
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type=EvaluateChatHook,
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tokenizer=tokenizer,
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every_n_iters=evaluation_freq,
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evaluation_inputs=evaluation_inputs,
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system=SYSTEM,
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prompt_template=prompt_template)
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]
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if use_varlen_attn:
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custom_hooks += [dict(type=VarlenAttnArgsToMessageHubHook)]
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# configure default hooks
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default_hooks = dict(
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# record the time of every iteration.
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timer=dict(type=IterTimerHook),
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# print log every 10 iterations.
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logger=dict(type=LoggerHook, log_metric_by_epoch=False, interval=10),
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# enable the parameter scheduler.
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param_scheduler=dict(type=ParamSchedulerHook),
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# save checkpoint per `save_steps`.
|
||||
checkpoint=dict(
|
||||
type=CheckpointHook,
|
||||
by_epoch=False,
|
||||
interval=save_steps,
|
||||
max_keep_ckpts=save_total_limit),
|
||||
# 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)
|
||||
|
||||
# set log processor
|
||||
log_processor = dict(by_epoch=False)
|
Loading…
Reference in New Issue
Block a user