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lora_finetune_distributed.py
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lora_finetune_distributed.py
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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the BSD-style license found in the
# LICENSE file in the root directory of this source tree.
import contextlib
import sys
import time
from functools import partial
from typing import Any, Dict, Optional, Tuple, Union
from warnings import warn
import torch
from omegaconf import DictConfig, ListConfig
from torch import nn
from torch.distributed import destroy_process_group, init_process_group
from torch.optim import Optimizer
from torch.utils.data import DataLoader, DistributedSampler
from torchtune import config, modules, training, utils
from torchtune.config._utils import _get_component_from_path
from torchtune.data import padded_collate_packed
from torchtune.datasets import ConcatDataset
from torchtune.modules.peft import (
DoRALinear,
get_adapter_params,
get_lora_module_names,
get_merged_lora_ckpt,
load_dora_magnitudes,
LoRALinear,
set_trainable_params,
validate_missing_and_unexpected_for_lora,
)
from torchtune.recipe_interfaces import FTRecipeInterface
from torchtune.training import (
DummyProfiler,
NoOpManager,
OffloadActivations,
PROFILER_KEY,
)
from tqdm import tqdm
log = utils.get_logger("DEBUG")
class LoRAFinetuneRecipeDistributed(FTRecipeInterface):
"""
Distributed LoRA finetuning recipe for dense transformer-based LLMs such as Llama2. This recipe supports
distributed training and can be run on a single node (1 to 8 GPUs).
Features:
- FSDP. Supported using PyTorch's FSDP APIs. CPU offload of parameters, gradients, and optimizer states
is supported via ``fsdp_cpu_offload``. Resharding of parameters after the forward pass is
done by default (corresponding to FULL_SHARD sharding strategy), but can be disabled by setting the config
``fsdp_reshard_after_forward`` to False (this corresponds to SHARD_GRAD_OP sharding strategy).
DDP is currently not supported. Training on CPU is not supported.
- Activation Checkpointing. This can be controlled using the ``enable_activation_checkpointing``
flag. Activation checkpointing helps reduce the memory footprint since we no longer keep
activations in memory and instead recompute them during the backward pass. This is especially
helpful for larger batch sizes when you're memory constrained. But these savings in memory
come at the cost of training performance. In most cases training can slow-down quite a bit as
a result of this activation recomputation.
- Activation Offloading. This can be controlled using the ``enable_activation_offloading``
flag. Activation offloading is a technique similar to activations checkpointing that helps
reduce the memory footprint to prevent OOMs on CUDA and enable bigger batches. Where activations
checkpointing drops the activation in the forward to recompute it later in the backward,
activations offloading will drop the activation in the forward to the CPU and bring it
back during the backward pass. As always, there is a tradeoff--these savings in memory can
come at the cost of training performance and CPU resources. To recover some runtime cost,
we've added an option to enable offloading on a different stream to permit overlapping with
the computation. This option is currently only available on PyTorch nightly 2.5.0.dev20240907
or later and will be enabled by default if an acceptable torch version is found. Activation
offloading can be used in conjunction with activation checkpointing.
- Precision. Full fp32 and bf16 training are supported. Precision is controlled using the ``dtype``
flag. When ``dtype=bf16``, all activations, gradients and optimizer states are in bfloat16. In
most cases this should halve the memory footprint of full precision (fp32) training, without
loss in model quality (will depend on the model, training data and other settings). For
GPUs which do not support bfloat16, we fall back to fp32. Mixed precision training and fp16
precision are currently not supported.
- Gradient Accumulation. You can simulate larger batch sizes by accumulating gradients. This is
controlled using the ``gradient_accumulation_steps`` flag.
Total Batch Size = batch_size * number of GPUs * gradient accumulation steps.
For example: with batch_size=1, nproc_per_node=2 and gradient_accumulation_steps=32 we get a
total batch size of 64.
Gradient accumulation is especially useful when you are memory constrained. In this case,
accumulating gradients might give you better training speed than enabling activation
checkpointing.
- Checkpointing. Model weights are checkpointed both at the end of each epoch and at the end of
training. Currently we checkpoint both the adapter weights (trainable params only) and the
complete merged weights (adapter weights added back to the base model). For more details
please take a look at our LoRA tutorial
(https://pytorch.org/torchtune/main/tutorials/lora_finetune.html).
Optimizer State and recipe state (seed, total_epochs, number of epochs run etc) are
only saved at the end of a given epoch and used in case of resuming training. Resuming
training is controlled by the ``resume_from_checkpoint`` flag. Mid-epoch checkpointing is
currently not supported.
For more details on the checkpointer, please take a look at
our checkpointer deepdive (https://pytorch.org/torchtune/main/tutorials/checkpointer.html).
- Logging. Terminal, Disk, WandB and TensorBoard are all supported.
- Gradient Clipping. Gradient clipping is supported using the ``clip_grad_norm`` flag. By default,
``clip_grad_norm`` is set to ``None``. If you only want to log the grad norm, you can set
``clip_grad_norm='inf'``.
For a full list of example configs for this recipe, run ``tune ls`` on the command line. Each config
has example commands for how to kick-off training.
Args:
cfg (DictConfig): OmegaConf object parsed from yaml file
Raises:
ValueError: If ``dtype`` is set to fp16.
ValueError: If world_size is 1
RuntimeError: If ``dtype`` is set to bf16 and the hardware does not support bf16.
RuntimeError: If ``left_pad_sequence`` is set as the data collator.
RuntimeError: If ``enable_activation_offloading`` is True and device is not CUDA.
"""
def __init__(self, cfg: DictConfig) -> None:
self._device = utils.get_device(device=cfg.device)
self._dtype = training.get_dtype(cfg.dtype, device=self._device)
if self._dtype == torch.float16:
raise ValueError(
"full fp16 training is not supported with this recipe. Please use bf16 or fp32 instead."
)
_, rank = training.get_world_size_and_rank()
# _is_rank_zero is used primarily for logging. In the future, the logger
# should directly take care of this
self._is_rank_zero = rank == 0
# logging attributes
self._output_dir = cfg.output_dir
self._log_every_n_steps = cfg.get("log_every_n_steps", 1)
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False)
# training attributes
self._enable_activation_checkpointing = cfg.enable_activation_checkpointing
self._enable_activation_offloading = cfg.get(
"enable_activation_offloading", False
)
if self._enable_activation_offloading and self._device.type != "cuda":
raise RuntimeError(
"enable_activation_offloading should only be enabled for training on CUDA"
)
# These attributes constitute the recipe state and are updated by ``load_checkpoint``
# when ``resume_from_checkpoint`` is ``True``
self.seed = training.set_seed(seed=cfg.seed)
self.epochs_run = 0
self.total_epochs = cfg.epochs
self.max_steps_per_epoch = cfg.max_steps_per_epoch
self.global_step = 0
self._clip_grad_norm = cfg.get("clip_grad_norm", None)
self._save_adapter_weights_only = cfg.get("save_adapter_weights_only", False)
self._resume_from_checkpoint = cfg.resume_from_checkpoint
self._gradient_accumulation_steps = cfg.gradient_accumulation_steps
def load_checkpoint(self, cfg_checkpointer: DictConfig) -> Dict[str, Any]:
"""
Extract the checkpoint state from file and validate. This includes the
base model weights. If resume_from_checkpoint is True, this also includes
the adapter weights and recipe state
"""
self._checkpointer = config.instantiate(
cfg_checkpointer,
resume_from_checkpoint=self._resume_from_checkpoint,
)
checkpoint_dict = self._checkpointer.load_checkpoint()
# When resuming from checkpoint for LoRA, the recipe expects the adapter weights
# and recipe state to be present. The keys should match up with what ``save_checkpoint``
# used to create these intermediate checkpoints
if self._resume_from_checkpoint:
if training.ADAPTER_KEY not in checkpoint_dict:
raise ValueError(
"Adapter weights not found. Please ensure a valid adapter checkpoint is provided."
)
# _update_recipe_state will throw an exception if the recipe state is not corrctly loaded
# no need to check here
self._update_recipe_state(checkpoint_dict)
return checkpoint_dict
def _update_recipe_state(self, ckpt_dict: Dict[str, Any]) -> None:
"""
Updates the recipe state from checkpoint.
"""
try:
self.epochs_run = ckpt_dict[training.EPOCHS_KEY]
# on mismatch, warn the user and prevent the override
if self.seed != ckpt_dict[training.SEED_KEY]:
warn(
message=(
"Config value for seed does not match the checkpoint value, "
f"using the checkpoint value: {ckpt_dict[training.SEED_KEY]}"
)
)
self.seed = ckpt_dict[training.SEED_KEY]
if self.max_steps_per_epoch != ckpt_dict[training.MAX_STEPS_KEY]:
warn(
message=(
"Config value for max_steps_per_epoch does not match the checkpoint value, "
f"using the checkpoint value: {ckpt_dict[training.MAX_STEPS_KEY]}"
)
)
self.max_steps_per_epoch = ckpt_dict[training.MAX_STEPS_KEY]
# on mismatch, warn the user but allow the override
if self.total_epochs != ckpt_dict[training.TOTAL_EPOCHS_KEY]:
warn(
message=(
"Config value for total_epochs does not match the checkpoint value, "
f"using the config value: {self.total_epochs}"
)
)
except KeyError as e:
raise KeyError(
"Checkpoint does not contain the required keys needed for updating recipe state. "
"Are you sure you passed in the right recipe checkpoint?"
) from e
def setup(self, cfg: DictConfig) -> None:
"""
Setup the recipe state. This includes recipe state (if resume_from_checkpoint is True),
model, tokenizer, loss, optimizer, learning rate scheduler, sampler, and dataloader.
"""
if self._is_rank_zero:
self._metric_logger = config.instantiate(cfg.metric_logger)
# log config with parameter override
self._metric_logger.log_config(cfg)
checkpoint_dict = self.load_checkpoint(cfg_checkpointer=cfg.checkpointer)
self._compile = cfg.get("compile", False)
self._model = self._setup_model(
cfg_model=cfg.model,
enable_activation_checkpointing=cfg.enable_activation_checkpointing,
enable_activation_offloading=self._enable_activation_offloading,
fsdp_cpu_offload=cfg.get("fsdp_cpu_offload", False),
reshard_after_forward=cfg.get("fsdp_reshard_after_forward", True),
base_model_state_dict=checkpoint_dict[training.MODEL_KEY],
lora_weights_state_dict=(
checkpoint_dict[training.ADAPTER_KEY]
if self._resume_from_checkpoint
else None
),
)
self._tokenizer = config.instantiate(cfg.tokenizer)
self._optimizer = self._setup_optimizer(
cfg_optimizer=cfg.optimizer,
opt_state_dict=(
checkpoint_dict[training.OPT_KEY]
if self._resume_from_checkpoint
else None
),
)
# initialize loss
self._loss_fn = config.instantiate(cfg.loss)
if self._compile:
training.compile_loss(self._loss_fn, verbose=self._is_rank_zero)
if self._loss_fn.__class__.__name__ == "CEWithChunkedOutputLoss":
# set num_output_chunks for model
self._model.set_num_output_chunks(self._loss_fn.num_output_chunks)
if self._is_rank_zero:
log.info("Loss is initialized.")
# sampler and dataloader depend on the tokenizer and loss_fn and should be
# setup after all of these are setup
collate_name = cfg.get("collate_fn", "torchtune.data.padded_collate_sft")
self._sampler, self._dataloader = self._setup_data(
cfg_dataset=cfg.dataset,
shuffle=cfg.shuffle,
batch_size=cfg.batch_size,
collate_fn=collate_name,
)
# Finally update the recipe state which can only be correctly set after all of the
# other components have been initialized and updated.
# Number of training steps in each epoch depends on the number of batches produced
# by the dataloader and the max_steps_per_epoch param set by the user and is used
# for logging and tracking training state. This should be computed after the dataloader
# has been setup
self._steps_per_epoch = (
len(self._dataloader) // self._gradient_accumulation_steps
)
if (
self.max_steps_per_epoch is not None
and self.max_steps_per_epoch < self._steps_per_epoch
):
self._steps_per_epoch = self.max_steps_per_epoch
self.global_step = self.epochs_run * self._steps_per_epoch
# Learning rate scheduler can only be set up after number of steps
# has been computed
self._lr_scheduler = self._setup_lr_scheduler(
cfg_lr_scheduler=cfg.lr_scheduler,
num_training_steps=self.total_epochs * self._steps_per_epoch,
last_epoch=self.global_step - 1,
)
# Set up profiler, returns DummyProfiler (nullcontext object with no-op `step` method)
# if cfg is missing profiler key or if `cfg.profiler.enabled = False`
self._profiler = self._setup_profiler(cfg.get(PROFILER_KEY, None))
# Used to ignore labels for loss computation
self.ignore_labels_cache = torch.full(
(cfg.batch_size, 1), self._loss_fn.ignore_index, device=self._device
)
def _setup_profiler(
self, cfg_profiler: Optional[DictConfig] = None
) -> Union[torch.profiler.profile, DummyProfiler]:
"""
Parses the `profiler` section of top-level `cfg` and sets up profiler
Args:
cfg_profiler (Optional[DictConfig]): ``profiler`` section of the top-level ``cfg`` (the main config passed to
`recipe.main`). Default None.
Returns:
profiler: Union[torch.profiler.profile, DummyProfiler] - DummyProfiler is a nullcontext with no-op methods
for `start`, `stop`, and `step` that can be used in place of `torch.profiler.profile` if profiler is not enabled such
that the instrumented training loop does not need to be changed profiling is disabled.
The profiler config can be provided in configs under the `profiler` key with the following layout:
.. code-block:: yaml
profiler:
enabled: bool
#Output directory of trace artifacts
output_dir: str
#`torch.profiler.ProfilerActivity` types to trace
cpu: bool
cuda: bool
#Trace options
profile_memory: bool
with_stack: bool
record_shapes: bool
with_flops: bool
# `torch.profiler.schedule` options:
# wait_steps -> wait, warmup_steps -> warmup, active_steps -> active, num_cycles -> repeat
wait_steps: int
warmup_steps: int
active_steps: int
num_cycles: int
"""
# Missing profiler section in config, assume disabled
if cfg_profiler is None:
cfg_profiler = DictConfig({"enabled": False})
# Check that component is included and set correctly
if cfg_profiler.get("_component_", None) is None:
cfg_profiler["_component_"] = "torchtune.training.setup_torch_profiler"
else:
assert (
cfg_profiler.get("_component_")
== "torchtune.training.setup_torch_profiler"
), "Only torch profiler supported currently: component must be `torchtune.training.setup_torch_profiler`"
profiler, profiler_cfg = config.instantiate(cfg_profiler)
if self._is_rank_zero:
log.info(f" Profiler config after instantiation: {profiler_cfg}")
self.profiler_profile_memory = profiler_cfg.get("profile_memory", False)
if profiler_cfg["enabled"]:
self.profiler_wait_steps = profiler_cfg["wait_steps"]
self.profiler_warmup_steps = profiler_cfg["warmup_steps"]
self.profiler_active_steps = profiler_cfg["active_steps"]
return profiler
def _setup_model(
self,
cfg_model: DictConfig,
enable_activation_checkpointing: bool,
enable_activation_offloading: bool,
fsdp_cpu_offload: bool,
reshard_after_forward: bool,
base_model_state_dict: Dict[str, Any],
lora_weights_state_dict: Optional[Dict[str, Any]] = None,
) -> nn.Module:
"""
Model initialization has some important considerations:
a. To minimize GPU peak memory, we initialize the model on meta device with
the right dtype
b. All ranks calls ``load_state_dict`` without peaking CPU RAMs since
full state dicts are loaded with ``torch.load(mmap=True)``
c. We register (pre-)forward hooks with ``fully_shard`` instead of wrapping `nn.Module`
"""
self._lora_rank = cfg_model.lora_rank
self._lora_alpha = cfg_model.lora_alpha
self._lora_attn_modules = list(cfg_model.lora_attn_modules)
self._apply_lora_to_mlp = cfg_model.apply_lora_to_mlp
self._apply_lora_to_output = getattr(cfg_model, "apply_lora_to_output", False)
if self._is_rank_zero:
log.info(
"FSDP is enabled. Instantiating model and loading checkpoint on Rank 0 ..."
)
init_start = time.perf_counter()
with training.set_default_dtype(self._dtype), torch.device("meta"):
model = config.instantiate(cfg_model)
self.adapter_params = get_adapter_params(model)
set_trainable_params(model, self.adapter_params)
if self._compile:
training.compile_model(model, verbose=self._is_rank_zero)
if enable_activation_checkpointing:
training.set_activation_checkpointing(
model, auto_wrap_policy={modules.TransformerSelfAttentionLayer}
)
# For FSDP sharding, we can condition on either the module or its name
# Shard conditions should be callables taking name (relative to model root)
# and the module itself and returning a bool on whether to shard the given module
# Shard transformer decoder layers (or AC-wrapped versions)
# Alternatively we could condition on the module type (TransformerDecoder or CheckpointWrapper)
# But directly using the name is more concise
def _is_layer_name(name: str, module: nn.Module) -> bool:
"""
Return True for layers.i and False for all other module names
Covers sharding for both AC-wrapped and non-AC-wrapped modules in one shot
"""
name_list = name.split(".")
return (
len(name_list) == 2
and name_list[0] == "layers"
and str.isdigit(name_list[1])
)
training.shard_model(
model=model,
shard_conditions=[_is_layer_name],
cpu_offload=fsdp_cpu_offload,
reshard_after_forward=reshard_after_forward,
)
if lora_weights_state_dict:
lora_missing, lora_unexpected = training.load_from_full_model_state_dict(
model,
lora_weights_state_dict,
self._device,
self._is_rank_zero,
cpu_offload=fsdp_cpu_offload,
)
else:
lora_missing, lora_unexpected = None, None
# Initialize LoRA params and RoPE buffers
with training.set_default_dtype(self._dtype), self._device:
lora_device = "cpu" if fsdp_cpu_offload else self._device
for m in model.modules():
if (
isinstance(m, LoRALinear) or isinstance(m, DoRALinear)
) and not lora_weights_state_dict:
# lora may not be covered in state dict
# if finetune for the 1st time
m.lora_a.to_empty(device=lora_device)
m.lora_b.to_empty(device=lora_device)
m.initialize_parameters()
# RoPE is not covered in state dict
if hasattr(m, "rope_init"):
m.rope_init()
base_missing, base_unexpected = training.load_from_full_model_state_dict(
model,
base_model_state_dict,
self._device,
self._is_rank_zero,
cpu_offload=fsdp_cpu_offload,
)
is_dora = False
for m in model.modules():
if hasattr(m, "initialize_dora_magnitude"):
is_dora = True
m.initialize_dora_magnitude()
if is_dora:
load_dora_magnitudes(model)
validate_missing_and_unexpected_for_lora(
lora_attn_modules=self._lora_attn_modules,
apply_lora_to_mlp=self._apply_lora_to_mlp,
apply_lora_to_output=self._apply_lora_to_output,
base_missing=base_missing,
base_unexpected=base_unexpected,
lora_missing=lora_missing,
lora_unexpected=lora_unexpected,
)
# Ensure no params and buffers are on meta device
training.validate_no_params_on_meta_device(model)
self.activations_handling_ctx = contextlib.nullcontext()
if enable_activation_offloading:
self.activations_handling_ctx = OffloadActivations()
# Below is our hack to disable offloading the last output Linear in every
# step, as the cost for offloading the activation and then soon after bringing
# it back is expensive. Moreover, due to heuristics in our streaming API,
# we actually use more memory if we offload it as it interferes with chunkedCE.
if hasattr(model, "output") and isinstance(model.output, nn.Module):
noop_ctx = NoOpManager()
model.output.register_forward_pre_hook(
lambda *args: noop_ctx.__enter__()
)
model.output.register_forward_hook(
lambda *args: noop_ctx.__exit__(), always_call=True
)
if self._is_rank_zero:
log.info(
f"Instantiating model and loading checkpoint took {time.perf_counter() - init_start:.2f} secs"
)
memory_stats = training.get_memory_stats(device=self._device)
training.log_memory_stats(memory_stats)
# synchronize before training begins
torch.distributed.barrier()
return model
def _setup_optimizer(
self, cfg_optimizer: DictConfig, opt_state_dict: Optional[Dict[str, Any]] = None
) -> Optimizer:
optimizer = config.instantiate(cfg_optimizer, self._model.parameters())
if opt_state_dict:
training.load_from_full_optimizer_state_dict(
optimizer,
opt_state_dict,
self._device,
)
if self._is_rank_zero:
log.info("Optimizer is initialized.")
return optimizer
def _setup_lr_scheduler(
self,
cfg_lr_scheduler: DictConfig,
num_training_steps: int,
last_epoch: int,
) -> Optimizer:
lr_scheduler = config.instantiate(
cfg_lr_scheduler,
self._optimizer,
num_training_steps=num_training_steps,
last_epoch=last_epoch,
)
if self._is_rank_zero:
log.info("Learning rate scheduler is initialized.")
return lr_scheduler
def _setup_data(
self,
cfg_dataset: DictConfig,
shuffle: bool,
batch_size: int,
collate_fn: str,
) -> Tuple[DistributedSampler, DataLoader]:
"""
All data related setup happens here. Currently this recipe only supports the
DistributedSamplers with Map-style Datasets which fit into memory. Other samplers,
iterable datasets and streaming datasets are not supported.
"""
world_size, rank = training.get_world_size_and_rank()
if isinstance(cfg_dataset, ListConfig):
datasets = [
config.instantiate(single_cfg_dataset, self._tokenizer)
for single_cfg_dataset in cfg_dataset
]
ds = ConcatDataset(datasets=datasets)
packed = False
else:
ds = config.instantiate(cfg_dataset, self._tokenizer)
packed = cfg_dataset.get("packed", False)
# Instantiate collate_fn
if "left_pad_sequence" in collate_fn:
raise RuntimeError("left_pad_sequence collator is only for inference.")
collate_fn = _get_component_from_path(collate_fn)
sampler = DistributedSampler(
ds, num_replicas=world_size, rank=rank, shuffle=shuffle, seed=0
)
dataloader = DataLoader(
dataset=ds,
batch_size=batch_size,
sampler=sampler,
# dropping last avoids shape issues with compile + flex attention
drop_last=cfg_dataset.get("drop_last", True),
collate_fn=partial(
collate_fn,
padding_idx=self._tokenizer.pad_id,
ignore_idx=self._loss_fn.ignore_index,
)
if not packed
else padded_collate_packed,
)
if self._is_rank_zero:
log.info("Dataset and Sampler are initialized.")
return sampler, dataloader
def save_checkpoint(
self,
epoch: int,
) -> None:
"""
Checkpoint the state of the recipe. The constructed checkpoint state dict
contains the following information:
- Merged weights with key MODEL_KEY
- Adapter weights with key ADAPTER_KEY
- Relevant recipe state if training is not complete
- If the `self._save_adapter_weights_only` option is True, the checkpointer will save only the adapter weights
Checkpointer will save the merged weights, adapter weights and recipe state in
different checkpoint files. To correctly resume from training, the adapter weights
and recipe state must be provided along with the base model weights.
"""
# final dict passed onto the checkpointer
checkpoint_dict = {}
intermediate_checkpoint = epoch + 1 < self.total_epochs
# To prevent GPU memory from spiking during checkpoint save,
# we consolidate the full model and optim state dicts on CPU for rank 0
cpu_state_dict = training.get_full_model_state_dict(
self._model,
self._is_rank_zero,
device=self._device,
trainable_only=self._save_adapter_weights_only,
)
if intermediate_checkpoint:
opt_state_dict = training.get_full_optimizer_state_dict(
self._optimizer,
self._is_rank_zero,
device=self._device,
)
else:
opt_state_dict = None
# Now that we have the model and opt state dict, create the actual checkpoint dict
# to be sent to the checkpointer and ultimately written to file
if self._is_rank_zero:
# Filter out the adapter keys and weights from the model state dict. These will
# be saved separately
adapter_key_filter = lambda x: x in self.adapter_params
adapter_state_dict = {
k: v for k, v in cpu_state_dict.items() if adapter_key_filter(k)
}
checkpoint_dict.update({training.ADAPTER_KEY: adapter_state_dict})
# merge the adapter weights and base weights to create the model checkpoint
if not self._save_adapter_weights_only:
merged_state_dict = get_merged_lora_ckpt(
cpu_state_dict,
rank=self._lora_rank,
alpha=self._lora_alpha,
)
checkpoint_dict.update({training.MODEL_KEY: merged_state_dict})
# if training is in-progress, checkpoint the optimizer state and recipe state
# as well.
if intermediate_checkpoint:
checkpoint_dict.update(
{
training.OPT_KEY: opt_state_dict,
training.SEED_KEY: self.seed,
training.EPOCHS_KEY: self.epochs_run,
training.TOTAL_EPOCHS_KEY: self.total_epochs,
training.MAX_STEPS_KEY: self.max_steps_per_epoch,
}
)
adapter_config = {
"r": self._lora_rank,
"lora_alpha": self._lora_alpha,
"target_modules": get_lora_module_names(
self._lora_attn_modules,
self._apply_lora_to_mlp,
self._apply_lora_to_output,
),
"peft_type": "LORA",
}
checkpoint_dict.update({training.ADAPTER_CONFIG: adapter_config})
print("saving checkpoint")
self._checkpointer.save_checkpoint(
checkpoint_dict,
epoch=epoch,
intermediate_checkpoint=intermediate_checkpoint,
adapter_only=self._save_adapter_weights_only,
)
def train(self) -> None:
"""
The core training loop.
"""
# clean up before training begins
training.cleanup_before_training()
_, rank = training.get_world_size_and_rank()
# zero out the gradients before starting training
self._optimizer.zero_grad()
# Initialize tokens count and running loss (for grad accumulation)
t0 = time.perf_counter()
running_loss = 0
num_tokens = 0
self._profiler.start()
# self.epochs_run should be non-zero when we're resuming from a checkpoint
for curr_epoch in range(self.epochs_run, self.total_epochs):
# Update the sampler to ensure data is correctly shuffled across epochs
# in case shuffle is True
self._sampler.set_epoch(curr_epoch)
pbar = tqdm(total=self._steps_per_epoch, disable=not (rank == 0))
for idx, batch in enumerate(self._dataloader):
if (
self.max_steps_per_epoch is not None
and (idx // self._gradient_accumulation_steps)
== self.max_steps_per_epoch
):
break
# Start tracking CUDA memory for active steps for just the first epoch
if (
self._is_rank_zero
and curr_epoch == 0
and self.profiler_profile_memory
and idx == self.profiler_wait_steps + self.profiler_warmup_steps
):
torch.cuda.memory._record_memory_history()
utils.batch_to_device(batch, self._device)
num_tokens += batch["tokens"].numel()
# Shape [b, s], needed for the loss not the model
labels = batch.pop("labels")
with self.activations_handling_ctx:
logits = self._model(**batch)
# Shift labels to compute loss
# equivalent to doing labels[..., 1:] and logits[..., :-1, :]
# But this way we dont need to slice the logits. We just add an ignore index to labels.
labels = torch.hstack(
(labels[..., 1:], self.ignore_labels_cache[: labels.shape[0]])
)
if not isinstance(logits, list):
labels = labels.reshape(-1)
logits = logits.reshape(-1, logits.size(-1))
# Compute loss
loss = self._loss_fn(logits, labels)
# free logits otherwise it peaks backward memory
del logits
loss = loss / self._gradient_accumulation_steps
running_loss += loss
loss.backward()
# Step with optimizer
if (idx + 1) % self._gradient_accumulation_steps == 0:
if self._clip_grad_norm is not None:
grad_norm = torch.nn.utils.clip_grad_norm_(
self._model.parameters(),
max_norm=float(self._clip_grad_norm),
)
self._optimizer.step()
self._optimizer.zero_grad(set_to_none=True)
self._lr_scheduler.step()
# Update the number of steps when the weights are updated
self.global_step += 1
loss_to_log = running_loss.item()
pbar.update(1)
pbar.set_description(
f"{curr_epoch + 1}|{self.global_step}|Loss: {loss_to_log}"
)
# Log per-step metrics
if (
self.global_step % self._log_every_n_steps == 0
and self._is_rank_zero
):
time_per_step = time.perf_counter() - t0
log_dict = {
"loss": loss_to_log,
"lr": self._optimizer.param_groups[0]["lr"],
"tokens_per_second_per_gpu": num_tokens / time_per_step,
}
if self._log_peak_memory_stats:
log_dict.update(
training.get_memory_stats(device=self._device)
)
if self._clip_grad_norm is not None:
log_dict.update({"grad_norm": grad_norm})
self._metric_logger.log_dict(
log_dict,
step=self.global_step,
)
# Reset running stats for the next step
running_loss = 0
num_tokens = 0
t0 = time.perf_counter()
# Stop tracking CUDA memory now that active steps are complete
if (
self._is_rank_zero
and curr_epoch == 0
and self.profiler_profile_memory
and idx
== self.profiler_wait_steps
+ self.profiler_warmup_steps
+ self.profiler_active_steps
):
torch.cuda.memory._record_memory_history(enabled=None)
# Step profiler
# Note that this is called within gradient accumulation block, hence
# will include multiple forward / backward passes if gradient accumulation > 1
self._profiler.step()
self.epochs_run += 1
self.save_checkpoint(epoch=curr_epoch)
self._profiler.stop()
def cleanup(self) -> None:
if self._is_rank_zero:
self._metric_logger.close()
destroy_process_group()
@config.parse
def recipe_main(cfg: DictConfig) -> None:
"""
Entry point for the recipe.
Configurable parameters are read in the following order:
- Parameters specified in config (see available configs through ``tune ls``)
- Overwritten by arguments from the command-line
"""
if not training.is_distributed():
raise RuntimeError(
"Distributed finetune recipe should be run via a distributed launcher."
"If using tune CLI, please specify --nnodes 1 and --nproc_per_node [num_gpus]"
)
if cfg.get("fsdp_cpu_offload", False):
# Utilize all available CPU cores for intra-op parallelism. This provides ~2x
# speed up when benchmarking fused AdamW on CPU
training.set_torch_num_threads()
init_process_group(backend="gloo" if cfg.device == "cpu" else "nccl")
config.log_config(recipe_name="LoRAFinetuneRecipeDistributed", cfg=cfg)
recipe = LoRAFinetuneRecipeDistributed(cfg=cfg)
recipe.setup(cfg=cfg)
recipe.train()
recipe.cleanup()
if __name__ == "__main__":
sys.exit(recipe_main())