175 lines
6.1 KiB
Python
175 lines
6.1 KiB
Python
# Copyright The PyTorch Lightning team.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import gc
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import os
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import time
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import numpy as np
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import pytest
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import torch
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from tqdm import tqdm
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from pytorch_lightning import LightningModule, seed_everything, Trainer
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from tests.helpers.advanced_models import ParityModuleCIFAR, ParityModuleMNIST, ParityModuleRNN
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_EXTEND_BENCHMARKS = os.getenv("PL_RUNNING_BENCHMARKS", "0") == "1"
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_SHORT_BENCHMARKS = not _EXTEND_BENCHMARKS
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_MARK_SHORT_BM = pytest.mark.skipif(_SHORT_BENCHMARKS, reason="Only run during Benchmarking")
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def assert_parity_relative(pl_values, pt_values, norm_by: float = 1, max_diff: float = 0.1):
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# assert speeds
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diffs = np.asarray(pl_values) - np.mean(pt_values)
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# norm by vanilla time
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diffs = diffs / norm_by
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# relative to mean reference value
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diffs = diffs / np.mean(pt_values)
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assert np.mean(diffs) < max_diff, f"Lightning diff {diffs} was worse than vanilla PT (threshold {max_diff})"
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def assert_parity_absolute(pl_values, pt_values, norm_by: float = 1, max_diff: float = 0.55):
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# assert speeds
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diffs = np.asarray(pl_values) - np.mean(pt_values)
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# norm by event count
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diffs = diffs / norm_by
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assert np.mean(diffs) < max_diff, f"Lightning {diffs} was worse than vanilla PT (threshold {max_diff})"
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# ParityModuleMNIST runs with num_workers=1
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@pytest.mark.parametrize(
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"cls_model,max_diff_speed,max_diff_memory,num_epochs,num_runs",
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[
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(ParityModuleRNN, 0.05, 0.001, 4, 3),
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(ParityModuleMNIST, 0.3, 0.001, 4, 3), # todo: lower this thr
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pytest.param(ParityModuleCIFAR, 4.0, 0.0002, 2, 2, marks=_MARK_SHORT_BM),
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],
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)
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@pytest.mark.skipif(not torch.cuda.is_available(), reason="test requires GPU machine")
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def test_pytorch_parity(
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tmpdir, cls_model: LightningModule, max_diff_speed: float, max_diff_memory: float, num_epochs: int, num_runs: int
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):
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"""
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Verify that the same pytorch and lightning models achieve the same results
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"""
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lightning = measure_loops(cls_model, kind="PT Lightning", num_epochs=num_epochs, num_runs=num_runs)
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vanilla = measure_loops(cls_model, kind="Vanilla PT", num_epochs=num_epochs, num_runs=num_runs)
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# make sure the losses match exactly to 5 decimal places
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print(f"Losses are for... \n vanilla: {vanilla['losses']} \n lightning: {lightning['losses']}")
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for pl_out, pt_out in zip(lightning["losses"], vanilla["losses"]):
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np.testing.assert_almost_equal(pl_out, pt_out, 5)
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# drop the first run for initialize dataset (download & filter)
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assert_parity_absolute(
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lightning["durations"][1:], vanilla["durations"][1:], norm_by=num_epochs, max_diff=max_diff_speed
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)
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assert_parity_relative(lightning["memory"], vanilla["memory"], max_diff=max_diff_memory)
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def _hook_memory():
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if torch.cuda.is_available():
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torch.cuda.synchronize()
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used_memory = torch.cuda.max_memory_allocated()
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else:
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used_memory = np.nan
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return used_memory
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def measure_loops(cls_model, kind, num_runs=10, num_epochs=10):
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"""
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Returns an array with the last loss from each epoch for each run
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"""
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hist_losses = []
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hist_durations = []
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hist_memory = []
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device_type = "cuda" if torch.cuda.is_available() else "cpu"
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torch.backends.cudnn.deterministic = True
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for i in tqdm(range(num_runs), desc=f"{kind} with {cls_model.__name__}"):
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gc.collect()
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if device_type == "cuda":
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torch.cuda.empty_cache()
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torch.cuda.reset_max_memory_cached()
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torch.cuda.reset_max_memory_allocated()
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torch.cuda.reset_accumulated_memory_stats()
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torch.cuda.reset_peak_memory_stats()
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time.sleep(1)
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time_start = time.perf_counter()
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_loop = lightning_loop if kind == "PT Lightning" else vanilla_loop
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final_loss, used_memory = _loop(cls_model, idx=i, device_type=device_type, num_epochs=num_epochs)
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time_end = time.perf_counter()
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hist_losses.append(final_loss)
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hist_durations.append(time_end - time_start)
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hist_memory.append(used_memory)
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return {"losses": hist_losses, "durations": hist_durations, "memory": hist_memory}
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def vanilla_loop(cls_model, idx, device_type: str = "cuda", num_epochs=10):
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device = torch.device(device_type)
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# set seed
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seed_everything(idx)
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# init model parts
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model = cls_model()
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dl = model.train_dataloader()
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optimizer = model.configure_optimizers()
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# model to GPU
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model = model.to(device)
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epoch_losses = []
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# as the first run is skipped, no need to run it long
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for epoch in range(num_epochs if idx > 0 else 1):
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# run through full training set
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for j, batch in enumerate(dl):
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batch = [x.to(device) for x in batch]
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loss_dict = model.training_step(batch, j)
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loss = loss_dict["loss"]
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loss.backward()
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optimizer.step()
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optimizer.zero_grad()
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# track last epoch loss
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epoch_losses.append(loss.item())
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return epoch_losses[-1], _hook_memory()
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def lightning_loop(cls_model, idx, device_type: str = "cuda", num_epochs=10):
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seed_everything(idx)
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model = cls_model()
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# init model parts
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trainer = Trainer(
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# as the first run is skipped, no need to run it long
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max_epochs=num_epochs if idx > 0 else 1,
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progress_bar_refresh_rate=0,
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weights_summary=None,
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gpus=1 if device_type == "cuda" else 0,
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checkpoint_callback=False,
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deterministic=True,
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logger=False,
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replace_sampler_ddp=False,
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)
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trainer.fit(model)
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return trainer.fit_loop.running_loss.last().item(), _hook_memory()
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