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test_fsdp_memory.py
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test_fsdp_memory.py
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# Copyright (c) Facebook, Inc. and its affiliates. All rights reserved.
#
# This source code is licensed under the BSD license found in the
# LICENSE file in the root directory of this source tree.
# pylint: disable=missing-module-docstring
# pylint: disable=missing-class-docstring
# pylint: disable=missing-function-docstring
""" Test FSDP with GPU memory usage. """
import contextlib
import pytest
import torch
import torch.multiprocessing as mp
import torch.nn as nn
from torch.nn.parallel import DistributedDataParallel
import torch.optim as optim
from fairscale.fair_dev.testing.testing import dist_init, dump_all_tensors, skip_if_single_gpu, teardown, temp_files_ctx
from fairscale.internal import torch_version
from fairscale.internal.parallel import get_process_group_cached
from fairscale.nn import checkpoint_wrapper
from fairscale.nn.data_parallel import FullyShardedDataParallel as FSDP
from fairscale.nn.data_parallel import auto_wrap_bn
def to_fsdp(module, fsdp_config):
return FSDP(module, process_group=get_process_group_cached(), **fsdp_config)
def get_cur_mem(rank, result, prefix):
"""Collect memory allocated values in a result dict in MB"""
result[prefix] = round(torch.cuda.memory_allocated() / 1024 / 1024)
class Model(nn.Module):
def __init__(self, hidden_dim):
super().__init__()
# TODO (Min): for both fast and memory efficient conv kernels, we should be using
# AMP/fp16 + channel_last input format. Otherwise, cudnn internally does conversion
# to channel_last when it is fp16 weights. Leave this knowledge here and perhaps
# future test can cover it.
self.stem = nn.Sequential(nn.Conv2d(3, 64, kernel_size=3), nn.BatchNorm2d(64), nn.ReLU(inplace=True))
self.blocks = nn.Sequential(
nn.Conv2d(64, hidden_dim, kernel_size=5, padding=2),
nn.BatchNorm2d(hidden_dim),
nn.ReLU(inplace=True),
nn.Conv2d(hidden_dim, hidden_dim, kernel_size=5, padding=2),
nn.BatchNorm2d(hidden_dim),
nn.ReLU(inplace=True),
nn.Conv2d(hidden_dim, hidden_dim, kernel_size=5, padding=2),
nn.BatchNorm2d(hidden_dim),
nn.ReLU(inplace=True),
nn.AdaptiveAvgPool2d(output_size=(1, 1)),
nn.Flatten(),
)
self.head = nn.Linear(hidden_dim, 10)
def forward(self, x):
return self.head(self.blocks(self.stem(x)))
def create_model(with_fsdp, with_checkpoint, model_hidden_dim, fsdp_config):
model = Model(model_hidden_dim)
if with_fsdp:
model.stem = auto_wrap_bn(model.stem, single_rank_pg=False)
model.blocks = auto_wrap_bn(model.blocks, single_rank_pg=False)
if with_checkpoint:
model.blocks = checkpoint_wrapper(model.blocks)
model.stem = to_fsdp(model.stem, fsdp_config)
model.blocks = to_fsdp(model.blocks, fsdp_config)
model.head = to_fsdp(model.head, fsdp_config)
else:
if with_checkpoint:
model.blocks = checkpoint_wrapper(model.blocks)
return model
def _distributed_worker(
gpu_id, world_size, with_fsdp, with_checkpoint, filename, filename_rpc, expected, model_hidden_dim, fsdp_config
):
torch.cuda.set_device(gpu_id)
rank = gpu_id
result = dist_init(rank, world_size, filename, filename_rpc)
assert result, "Dist init failed"
torch.manual_seed(0)
torch.backends.cudnn.deterministic = True
# Note that FSDP auto-cast the input in AMP mode. So we don't need to call half() here.
batch = torch.randn(size=(2, 3, 224, 224)).cuda()
model = create_model(with_fsdp, with_checkpoint, model_hidden_dim, fsdp_config)
model = model.cuda()
if with_fsdp:
model = to_fsdp(model, fsdp_config)
else:
model = DistributedDataParallel(model, device_ids=[gpu_id], bucket_cap_mb=500)
# We enable momentum so that after the first iteration, the optimizer state is added
# to the total memory used.
criterion = nn.MSELoss()
optimizer = optim.SGD(model.parameters(), lr=1e-4, momentum=0.9)
# Set AMP context if needed.
context = contextlib.suppress()
if "mixed_precision" in fsdp_config and fsdp_config["mixed_precision"]:
context = torch.cuda.amp.autocast(enabled=True)
# We have observed that sometimes after 3rd iteration, 4th one can fail (not on this
# test but on much bigger scale tests). We run 4 iterations here just in case it happens.
iterations = 4
results = {} # results of memory stats
for iteration in range(iterations):
get_cur_mem(gpu_id, results, f"iter {iteration}: start")
with context:
out = model(batch)
get_cur_mem(gpu_id, results, f"iter {iteration}: after fwd")
out = sum(o.sum() for o in out[0])
fake_loss = criterion(out, torch.tensor(0.0).cuda())
get_cur_mem(gpu_id, results, f"iter {iteration}: after loss")
fake_loss.backward()
get_cur_mem(gpu_id, results, f"iter {iteration}: after bwd")
optimizer.step()
get_cur_mem(gpu_id, results, f"iter {iteration}: after step")
# It is important to use `set_to_none` below, not optimizer.zero_grad() to reclaim memory.
if torch_version() >= (1, 7, 0):
model.zero_grad(set_to_none=True)
else:
for p in model.parameters():
p.grad = None
get_cur_mem(gpu_id, results, f"iter {iteration}: done")
dump_all_tensors(gpu_id)
print(results)
def cmp(results, expected):
ret = ""
assert results.keys() == expected.keys(), f"{list(results.keys())} vs. {list(expected.keys())}"
for k, v in results.items():
exp = expected[k]
if abs(exp - v) > 1: # allow 1MB rounding differences
ret += f"{k}: got {v}, expected {exp}\n"
return ret
output = cmp(results, expected)
assert not output, output
teardown()
@skip_if_single_gpu
@pytest.mark.timeout(120)
@pytest.mark.parametrize("ckpt", ["no_ckpt", "ckpt"])
@pytest.mark.parametrize("fsdp", ["ddp", "fsdp", "fsdp_amp_default", "fsdp_amp_compute_dtype32"])
@pytest.mark.skipif(
torch_version() >= (1, 14, 0),
reason="Tests broke in Pytorch pre-release version 1.14",
)
def test_fsdp_memory(fsdp, ckpt):
expected = {
("ddp", "no_ckpt"): {
"iter 0: start": 9,
"iter 0: after fwd": 346,
"iter 0: after loss": 346,
"iter 0: after bwd": 14,
"iter 0: after step": 17,
"iter 0: done": 13,
"iter 1: start": 13,
"iter 1: after fwd": 350,
"iter 1: after loss": 350,
"iter 1: after bwd": 17,
"iter 1: after step": 17,
"iter 1: done": 13,
"iter 2: start": 13,
"iter 2: after fwd": 350,
"iter 2: after loss": 350,
"iter 2: after bwd": 17,
"iter 2: after step": 17,
"iter 2: done": 13,
"iter 3: start": 13,
"iter 3: after fwd": 350,
"iter 3: after loss": 350,
"iter 3: after bwd": 17,
"iter 3: after step": 17,
"iter 3: done": 13,
},
("fsdp", "no_ckpt"): {
"iter 0: start": 3,
"iter 0: after fwd": 340,
"iter 0: after loss": 340,
"iter 0: after bwd": 16,
"iter 0: after step": 18,
"iter 0: done": 5,
"iter 1: start": 5,
"iter 1: after fwd": 342,
"iter 1: after loss": 342,
"iter 1: after bwd": 18,
"iter 1: after step": 18,
"iter 1: done": 5,
"iter 2: start": 5,
"iter 2: after fwd": 342,
"iter 2: after loss": 342,
"iter 2: after bwd": 18,
"iter 2: after step": 18,
"iter 2: done": 5,
"iter 3: start": 5,
"iter 3: after fwd": 342,
"iter 3: after loss": 342,
"iter 3: after bwd": 18,
"iter 3: after step": 18,
"iter 3: done": 5,
},
("fsdp_amp_default", "no_ckpt"): {
"iter 0: start": 28,
"iter 0: after fwd": 630,
"iter 0: after loss": 630,
"iter 0: after bwd": 67,
"iter 0: after step": 93,
"iter 0: done": 54,
"iter 1: start": 54,
"iter 1: after fwd": 657,
"iter 1: after loss": 657,
"iter 1: after bwd": 93,
"iter 1: after step": 93,
"iter 1: done": 54,
"iter 2: start": 54,
"iter 2: after fwd": 657,
"iter 2: after loss": 657,
"iter 2: after bwd": 93,
"iter 2: after step": 93,
"iter 2: done": 54,
"iter 3: start": 54,
"iter 3: after fwd": 657,
"iter 3: after loss": 657,
"iter 3: after bwd": 93,
"iter 3: after step": 93,
"iter 3: done": 54,
},
("fsdp_amp_compute_dtype32", "no_ckpt"): {
"iter 0: start": 28,
"iter 0: after fwd": 657,
"iter 0: after loss": 657,
"iter 0: after bwd": 67,
"iter 0: after step": 93,
"iter 0: done": 54,
"iter 1: start": 54,
"iter 1: after fwd": 684,
"iter 1: after loss": 684,
"iter 1: after bwd": 93,
"iter 1: after step": 93,
"iter 1: done": 54,
"iter 2: start": 54,
"iter 2: after fwd": 684,
"iter 2: after loss": 684,
"iter 2: after bwd": 93,
"iter 2: after step": 93,
"iter 2: done": 54,
"iter 3: start": 54,
"iter 3: after fwd": 684,
"iter 3: after loss": 684,
"iter 3: after bwd": 93,
"iter 3: after step": 93,
"iter 3: done": 54,
},
("ddp", "ckpt"): {
"iter 0: start": 9,
"iter 0: after fwd": 57,
"iter 0: after loss": 57,
"iter 0: after bwd": 14,
"iter 0: after step": 17,
"iter 0: done": 13,
"iter 1: start": 13,
"iter 1: after fwd": 61,
"iter 1: after loss": 61,
"iter 1: after bwd": 17,
"iter 1: after step": 17,
"iter 1: done": 13,
"iter 2: start": 13,
"iter 2: after fwd": 61,
"iter 2: after loss": 61,
"iter 2: after bwd": 17,
"iter 2: after step": 17,
"iter 2: done": 13,
"iter 3: start": 13,
"iter 3: after fwd": 61,
"iter 3: after loss": 61,
"iter 3: after bwd": 17,
"iter 3: after step": 17,
"iter 3: done": 13,
},
("fsdp", "ckpt"): {
"iter 0: start": 3,
"iter 0: after fwd": 51,
"iter 0: after loss": 51,
"iter 0: after bwd": 16,
"iter 0: after step": 18,
"iter 0: done": 5,
"iter 1: start": 5,
"iter 1: after fwd": 53,
"iter 1: after loss": 53,
"iter 1: after bwd": 18,
"iter 1: after step": 18,
"iter 1: done": 5,
"iter 2: start": 5,
"iter 2: after fwd": 53,
"iter 2: after loss": 53,
"iter 2: after bwd": 18,
"iter 2: after step": 18,
"iter 2: done": 5,
"iter 3: start": 5,
"iter 3: after fwd": 53,
"iter 3: after loss": 53,
"iter 3: after bwd": 18,
"iter 3: after step": 18,
"iter 3: done": 5,
},
("fsdp_amp_default", "ckpt"): {
"iter 0: start": 28,
"iter 0: after fwd": 52,
"iter 0: after loss": 52,
"iter 0: after bwd": 67,
"iter 0: after step": 93,
"iter 0: done": 54,
"iter 1: start": 54,
"iter 1: after fwd": 79,
"iter 1: after loss": 79,
"iter 1: after bwd": 93,
"iter 1: after step": 93,
"iter 1: done": 54,
"iter 2: start": 54,
"iter 2: after fwd": 79,
"iter 2: after loss": 79,
"iter 2: after bwd": 93,
"iter 2: after step": 93,
"iter 2: done": 54,
"iter 3: start": 54,
"iter 3: after fwd": 79,
"iter 3: after loss": 79,
"iter 3: after bwd": 93,
"iter 3: after step": 93,
"iter 3: done": 54,
},
("fsdp_amp_compute_dtype32", "ckpt"): {
"iter 0: start": 28,
"iter 0: after fwd": 52,
"iter 0: after loss": 52,
"iter 0: after bwd": 67,
"iter 0: after step": 93,
"iter 0: done": 54,
"iter 1: start": 54,
"iter 1: after fwd": 79,
"iter 1: after loss": 79,
"iter 1: after bwd": 93,
"iter 1: after step": 93,
"iter 1: done": 54,
"iter 2: start": 54,
"iter 2: after fwd": 79,
"iter 2: after loss": 79,
"iter 2: after bwd": 93,
"iter 2: after step": 93,
"iter 2: done": 54,
"iter 3: start": 54,
"iter 3: after fwd": 79,
"iter 3: after loss": 79,
"iter 3: after bwd": 93,
"iter 3: after step": 93,
"iter 3: done": 54,
},
}[(fsdp, ckpt)]
# Compute the FSDP config.
fsdp_config = {}
# Set mixed precision.
if "amp" in fsdp:
fsdp_config["mixed_precision"] = True
# When compute_dtype is FP32, make sure we use clear_autocast_cache.
# Setting fp32_reduce_scatter and verbose for more code coverage.
if "compute_dtype32" in fsdp:
fsdp_config["compute_dtype"] = torch.float32
fsdp_config["fp32_reduce_scatter"] = True
fsdp_config["clear_autocast_cache"] = True
fsdp_config["verbose"] = True
# Using bigger hidden dimension for AMP to increase the model size
# so that bug in handling params will show up but we don't do that
# in the base case to keep the test fast.
# - hidden_dim 128: model size ~4MB
# - hidden_dim 512: model size ~55MB
# - hidden_dim 1024: model size ~200MB (seems to be too big for CI tests though)
model_hidden_dim = 128
if "amp" in fsdp:
model_hidden_dim = 512
# Get the fsdp and checkpoint flags.
with_fsdp = "fsdp" in fsdp
with_ckpt = ckpt == "ckpt"
world_size = 2
with temp_files_ctx(num=2) as temp_files:
mp.spawn(
_distributed_worker,
(world_size, with_fsdp, with_ckpt, temp_files[0], temp_files[1], expected, model_hidden_dim, fsdp_config),
nprocs=world_size,
)