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config_utils.py
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config_utils.py
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# Copyright (c) Meta Platforms, Inc. and affiliates.
# This software may be used and distributed according to the terms of the Llama 2 Community License Agreement.
import inspect
from dataclasses import asdict
import torch.distributed as dist
from torch.utils.data import DistributedSampler
from peft import (
LoraConfig,
AdaptionPromptConfig,
PrefixTuningConfig,
)
from transformers import default_data_collator
from transformers.data import DataCollatorForSeq2Seq
from llama_recipes.configs import datasets, lora_config, llama_adapter_config, prefix_config, train_config
from llama_recipes.data.sampler import LengthBasedBatchSampler, DistributedLengthBasedBatchSampler
from llama_recipes.utils.dataset_utils import DATASET_PREPROC
def update_config(config, **kwargs):
if isinstance(config, (tuple, list)):
for c in config:
update_config(c, **kwargs)
else:
for k, v in kwargs.items():
if hasattr(config, k):
setattr(config, k, v)
elif "." in k:
# allow --some_config.some_param=True
config_name, param_name = k.split(".")
if type(config).__name__ == config_name:
if hasattr(config, param_name):
setattr(config, param_name, v)
else:
# In case of specialized config we can warm user
print(f"Warning: {config_name} does not accept parameter: {k}")
elif isinstance(config, train_config):
print(f"Warning: unknown parameter {k}")
def generate_peft_config(train_config, kwargs):
configs = (lora_config, llama_adapter_config, prefix_config)
peft_configs = (LoraConfig, AdaptionPromptConfig, PrefixTuningConfig)
names = tuple(c.__name__.rstrip("_config") for c in configs)
assert train_config.peft_method in names, f"Peft config not found: {train_config.peft_method}"
config = configs[names.index(train_config.peft_method)]()
update_config(config, **kwargs)
params = asdict(config)
peft_config = peft_configs[names.index(train_config.peft_method)](**params)
return peft_config
def generate_dataset_config(train_config, kwargs):
names = tuple(DATASET_PREPROC.keys())
assert train_config.dataset in names, f"Unknown dataset: {train_config.dataset}"
dataset_config = {k:v for k, v in inspect.getmembers(datasets)}[train_config.dataset]()
update_config(dataset_config, **kwargs)
return dataset_config
def get_dataloader_kwargs(train_config, dataset, tokenizer, mode):
kwargs = {}
batch_size = train_config.batch_size_training if mode=="train" else train_config.val_batch_size
if train_config.batching_strategy == "padding":
if train_config.enable_fsdp:
kwargs["batch_sampler"] = DistributedLengthBasedBatchSampler(
dataset,
batch_size=batch_size,
rank=dist.get_rank(),
num_replicas=dist.get_world_size(),
shuffle=mode=="train",
)
else:
kwargs["batch_sampler"] = LengthBasedBatchSampler(dataset, batch_size, drop_last=True, shuffle=mode=="train")
kwargs["collate_fn"] = DataCollatorForSeq2Seq(tokenizer)
elif train_config.batching_strategy == "packing":
if train_config.enable_fsdp:
kwargs["sampler"] = DistributedSampler(
dataset,
rank=dist.get_rank(),
num_replicas=dist.get_world_size(),
shuffle=mode=="train",
)
kwargs["batch_size"] = batch_size
kwargs["drop_last"] = True
kwargs["collate_fn"] = default_data_collator
else:
raise ValueError(f"Unknown batching strategy: {train_config.batching_strategy}")
return kwargs