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Adding FSDP Memory Tracking and Estimation
ghstack-source-id: c8ed20fc585957bd164dd963307616a53991615d Pull Request resolved: #425
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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. | ||
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import contextlib | ||
import gc | ||
import os | ||
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import torch | ||
import torch.nn.functional as F | ||
from torch._guards import active_fake_mode | ||
from torch._subclasses.fake_tensor import FakeTensorMode | ||
from torch.distributed import destroy_process_group | ||
from torch.distributed._tools.fsdp2_mem_tracker import FSDPMemTracker | ||
from torch.distributed.tensor.parallel import loss_parallel | ||
from torch.testing._internal.distributed.fake_pg import FakeStore | ||
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from torchtitan.config_manager import JobConfig | ||
from torchtitan.datasets import create_tokenizer | ||
from torchtitan.float8_linear import build_fp8_linear | ||
from torchtitan.logging_utils import init_logger, logger | ||
from torchtitan.lr_scheduling import get_lr_schedulers | ||
from torchtitan.models import model_name_to_cls, model_name_to_tokenizer, models_config | ||
from torchtitan.parallelisms import models_parallelize_fns, ParallelDims | ||
from train import build_optimizers | ||
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def estimate_memory(job_config: JobConfig): | ||
init_logger() | ||
logger.info("Estimating memory usage...") | ||
gc.disable() | ||
gc.collect(1) | ||
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# Get the world size | ||
world_size = int(os.environ["WORLD_SIZE"]) | ||
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# if tp > or pp > 1, we exit | ||
if ( | ||
job_config.training.tensor_parallel_degree > 1 | ||
or job_config.experimental.pipeline_parallel_degree > 1 | ||
): | ||
logger.info( | ||
"Tensor parallelism and pipeline parallelism are not supported yet." | ||
) | ||
return | ||
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# fake tensor doesn't work with fused rmsnorm | ||
if ( | ||
job_config.model.norm_type == "fused_rmsnorm" | ||
and job_config.estimate.mode == "fake" | ||
): | ||
logger.info( | ||
"Fused RMSNorm is not supported yet under fake estimation mode. " | ||
"Switching to rmsnorm." | ||
) | ||
job_config.model.norm_type = "rmsnorm" | ||
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parallel_dims = ParallelDims( | ||
dp=job_config.training.data_parallel_degree, | ||
tp=job_config.training.tensor_parallel_degree, | ||
pp=job_config.experimental.pipeline_parallel_degree, | ||
world_size=world_size, | ||
enable_loss_parallel=job_config.training.enable_loss_parallel, | ||
) | ||
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device = torch.device(f"cuda:{int(os.environ['LOCAL_RANK'])}") | ||
torch.cuda.set_device(device) | ||
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# init fake pg | ||
store = FakeStore() | ||
torch.distributed.init_process_group( | ||
"fake", rank=int(os.environ["LOCAL_RANK"]), world_size=world_size, store=store | ||
) | ||
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# build meshes | ||
world_mesh = parallel_dims.build_mesh(device_type="cuda") | ||
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if not parallel_dims.dp_enabled: | ||
logger.info("Data parallelism is not enabled. Skipping memory estimation.") | ||
return | ||
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model_name = job_config.model.name | ||
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# build tokenizer | ||
tokenizer_type = model_name_to_tokenizer[model_name] | ||
tokenizer = create_tokenizer(tokenizer_type, job_config.model.tokenizer_path) | ||
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# loss_parallel enables dispatching to efficient loss operators | ||
loss_parallel_ctx = ( | ||
loss_parallel if parallel_dims.loss_parallel_enabled else contextlib.nullcontext | ||
) | ||
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# loss fn can be shared by pipeline-parallel or non-pp execution | ||
def loss_fn(pred, labels): | ||
return F.cross_entropy(pred.flatten(0, 1), labels.flatten(0, 1)) | ||
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# build model (using meta init) | ||
model_cls = model_name_to_cls[model_name] | ||
model_config = models_config[model_name][job_config.model.flavor] | ||
# set the model configs from training inputs: | ||
# 1. norm type to decide which norm layer to use | ||
# 2. vocab size from tokenizer | ||
# 3. max_seq_len base on inputs | ||
model_config.norm_type = job_config.model.norm_type | ||
model_config.vocab_size = tokenizer.n_words | ||
model_config.max_seq_len = job_config.training.seq_len | ||
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with FakeTensorMode() if job_config.estimate.mode == "fake" else contextlib.nullcontext(): | ||
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logger.info( | ||
f"Building {model_name} {job_config.model.flavor} with {model_config}" | ||
) | ||
with torch.device("meta"): | ||
whole_model = model_cls.from_model_args(model_config) | ||
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# apply fp8 linear module swap | ||
if job_config.training.fp8_linear: | ||
build_fp8_linear(whole_model, job_config) | ||
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# apply PT-D DP/TP parallelisms and activation checkpointing | ||
model_parts = [whole_model] | ||
model_parts = [ | ||
models_parallelize_fns[model_name](m, world_mesh, parallel_dims, job_config) | ||
for m in model_parts | ||
] | ||
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init_device = "cuda" | ||
for model in model_parts: | ||
model.to_empty(device=init_device) | ||
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if not active_fake_mode(): | ||
whole_model.init_weights() | ||
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# build optimizer after applying parallelisms to the model | ||
optimizers = build_optimizers(model_parts, job_config) | ||
lr_schedulers = get_lr_schedulers(optimizers.optimizers, job_config) | ||
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for model in model_parts: | ||
model.train() | ||
logger.info(f"Vocab size: {model_config.vocab_size}") | ||
# Create a dummy batch instead of loading from a dataset | ||
batch = ( | ||
torch.randint( | ||
0, | ||
model_config.vocab_size, | ||
(job_config.training.batch_size, model_config.max_seq_len), | ||
device="cuda", | ||
), | ||
torch.randint( | ||
0, | ||
model_config.vocab_size, | ||
(job_config.training.batch_size, model_config.max_seq_len), | ||
device="cuda", | ||
), | ||
) | ||
fsdp_memtracker = FSDPMemTracker(mod=whole_model, optm=optimizers.optimizers[0]) | ||
fsdp_memtracker.track_inputs(batch) | ||
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with fsdp_memtracker: | ||
for iter_idx in range(2): | ||
input_ids, labels = batch | ||
# train step | ||
with loss_parallel_ctx(): | ||
pred = whole_model(input_ids) | ||
loss = loss_fn(pred, labels) | ||
del pred | ||
loss.backward() | ||
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# clip gradients | ||
for model in model_parts: | ||
torch.nn.utils.clip_grad_norm_( | ||
model.parameters(), job_config.training.max_norm, foreach=True | ||
) | ||
# optimizer step | ||
optimizers.step() | ||
lr_schedulers.step() | ||
optimizers.zero_grad() | ||
print(f"Peak Memory at iter: {iter_idx}") | ||
fsdp_memtracker.display_snapshot("peak", units="MiB", tabulate=True) | ||
if iter_idx == 0: | ||
fsdp_memtracker.reset_mod_stats() # iter 0 does not have optimizer state | ||
gc.collect(1) | ||
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fsdp_memtracker.display_modulewise_snapshots( | ||
depth=3, units="MiB", tabulate=True | ||
) | ||
mem_stats = torch.cuda.memory_stats() | ||
peak_active = mem_stats["active_bytes.all.peak"] | ||
peak_reserved = mem_stats["reserved_bytes.all.peak"] | ||
num_retries = mem_stats["num_alloc_retries"] | ||
dev = torch.device(torch.cuda.current_device()) | ||
tracker_peak = fsdp_memtracker.get_tracker_snapshot("peak")[dev]["Total"] | ||
gib = 1024**3 | ||
print( | ||
f"peak active: {peak_active / gib} GiB | peak reserved:" | ||
f" {peak_reserved / gib} GiB | num_retries: {num_retries}" | ||
) | ||
print(f"Tracker Max: {tracker_peak / gib} GiB") | ||
if job_config.estimate.mode == "real": | ||
print(f"Tracker Accuracy: {tracker_peak/peak_active}") | ||
gc.enable() | ||
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if __name__ == "__main__": | ||
config = JobConfig() | ||
config.parse_args() | ||
try: | ||
estimate_memory(config) | ||
finally: | ||
destroy_process_group() |
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