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Fixes https://github.com/pytorch/pytorch/issues/89473 See the issue https://github.com/pytorch/pytorch/issues/89473 Pull Request resolved: https://github.com/pytorch/pytorch/pull/95649 Approved by: https://github.com/atalman, https://github.com/malfet
287 lines
12 KiB
Python
287 lines
12 KiB
Python
# Owner(s): ["oncall: distributed"]
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import copy
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import os
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import sys
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import tempfile
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import test_c10d_spawn
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import torch
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import torch.distributed as c10d
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import torch.nn as nn
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from test_c10d_spawn import _torch_dist_nn_available, TestDistributedNNFunctions
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from torch.testing._internal.common_cuda import TEST_CUDA, TEST_MULTIGPU
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from torch.testing._internal.common_distributed import requires_gloo, \
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create_device, skip_if_lt_x_gpu
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from torch.testing._internal.common_utils import TestCase, run_tests, skip_but_pass_in_sandcastle_if, TEST_WITH_DEV_DBG_ASAN
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# Fails on Python-3.9, see https://github.com/pytorch/pytorch/issues/51619
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if sys.version_info < (3, 9):
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class ProcessGroupShareTensorTest(test_c10d_spawn.AbstractProcessGroupShareTensorTest, TestCase):
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@classmethod
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def opts(cls, threads=2):
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opts = c10d.ProcessGroupGloo._Options()
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opts._timeout = 5.0
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opts._devices = [create_device(interface='lo')]
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opts._threads = threads
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return opts
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@classmethod
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def _init_pg_gloo(cls, rank, filename, world_size):
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store = c10d.FileStore(filename, world_size)
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backend = c10d.ProcessGroupGloo(
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store, rank, world_size, ProcessGroupShareTensorTest.opts())
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# set process group backends manually
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c10d.init_process_group(backend="gloo", store=store, rank=rank, world_size=world_size)
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pg = c10d.distributed_c10d._get_default_group()
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pg._register_backend(torch.device("cpu"), c10d.ProcessGroup.BackendType.GLOO, backend)
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pg._register_backend(torch.device("cuda"), c10d.ProcessGroup.BackendType.GLOO, backend)
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return pg
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@skip_but_pass_in_sandcastle_if(not TEST_MULTIGPU, "At least 2 CUDA GPUS needed")
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def test_shared_broadcast_gloo(self):
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self._test_multiprocess(
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ProcessGroupShareTensorTest._test_broadcast_process,
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[torch.ones(2, 2).to(i) * i for i in range(self.world_size)],
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ProcessGroupShareTensorTest._init_pg_gloo,
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1)
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@skip_but_pass_in_sandcastle_if(not TEST_MULTIGPU, "At least 2 CUDA GPUS needed")
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def test_shared_allreduce_gloo(self):
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self._test_multiprocess(
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ProcessGroupShareTensorTest._test_allreduce_process,
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[torch.ones(2, 2).to(i) for i in range(self.world_size)],
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ProcessGroupShareTensorTest._init_pg_gloo,
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1)
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@skip_but_pass_in_sandcastle_if(not TEST_MULTIGPU, "At least 2 CUDA GPUS needed")
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def test_shared_allgather_gloo(self):
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self._test_multiprocess(
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ProcessGroupShareTensorTest._test_allgather_process,
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[torch.ones(2, 2).to(i) * i for i in range(self.world_size)],
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ProcessGroupShareTensorTest._init_pg_gloo,
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self.world_size)
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@classmethod
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def _test_allgather_chunk_process(
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cls, rank, filename, shared_tensor, world_size, init_pg, c2p, p2c):
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pg = init_pg(rank, filename, world_size)
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chunks = torch.chunk(shared_tensor, world_size, dim=0)
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x = chunks[rank]
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ys = [torch.zeros_like(x) for _ in range(world_size)]
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pg.allgather(ys, x).wait()
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c2p.put((rank, chunks[0].to("cpu"), ys[0].to("cpu")))
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c2p.put((rank, chunks[1].to("cpu"), ys[1].to("cpu")))
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p2c.get()
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@skip_but_pass_in_sandcastle_if(not TEST_MULTIGPU, "At least 2 CUDA GPUS needed")
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def test_shared_allgather_chunk_gloo(self):
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self._test_multiprocess(
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ProcessGroupShareTensorTest._test_allgather_chunk_process,
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torch.tensor(range(4)).reshape(2, 2),
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ProcessGroupShareTensorTest._init_pg_gloo,
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self.world_size)
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class DistributedDataParallelSingleProcessTest(TestCase):
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def setUp(self):
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self.rank = 0
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self.world_size = 1
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self.file = tempfile.NamedTemporaryFile(delete=False) # noqa: P201
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def tearDown(self):
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try:
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os.remove(self.file.name)
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except OSError:
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pass
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def _test_base(self, net, inp, check_allclose=True):
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store = c10d.FileStore(self.file.name, self.world_size)
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c10d.init_process_group(backend="gloo", store=store, rank=self.rank, world_size=self.world_size)
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process_group = c10d.distributed_c10d._get_default_group()
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if inp[0].is_cuda:
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device_ids = [torch.cuda.current_device()]
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else:
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device_ids = None
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ddp = nn.parallel.DistributedDataParallel(
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copy.deepcopy(net),
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device_ids=device_ids,
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process_group=process_group
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)
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net_opt = torch.optim.Adam(net.parameters(), lr=0.001)
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ddp_opt = torch.optim.Adam(ddp.parameters(), lr=0.001)
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for i, j in zip(ddp.parameters(), net.parameters()):
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self.assertTrue(i.allclose(j))
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for _ in range(10):
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net_out = net(*inp)
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ddp_out = ddp(*inp)
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net_out.sum().backward()
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ddp_out.sum().backward()
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net_opt.step()
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ddp_opt.step()
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if check_allclose:
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for i, j in zip(ddp.parameters(), net.parameters()):
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self.assertTrue(i.allclose(j))
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@requires_gloo()
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def test_cpu(self):
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self._test_base(nn.Linear(2, 2), [torch.randn(30, 2)])
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@requires_gloo()
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@skip_but_pass_in_sandcastle_if(not TEST_CUDA, "At least 1 CUDA GPUS needed")
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def test_cuda(self):
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self._test_base(nn.Linear(2, 2).to(0), [torch.randn(30, 2).to(0)])
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@requires_gloo()
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@skip_but_pass_in_sandcastle_if(not TEST_CUDA, "At least 1 CUDA GPUS needed")
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def test_rnn(self):
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# This test is inspired by the bug reported in
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# https://github.com/pytorch/pytorch/issues/36268
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BATCH_SIZE = 12 # Divisible by 2, 3, 4
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INPUT_DIM = 256
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OUTPUT_DIM = 256
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HIDDEN_DIM = 256
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N_LAYERS = 3
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SEQ_LEN = 100
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class Net(nn.Module):
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def __init__(self, input_dim, hidden_dim, output_dim, hidden_layers):
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super().__init__()
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self.input_dim = input_dim
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self.hidden_dim = hidden_dim
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self.output_dim = output_dim
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self.hidden_layers = hidden_layers
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self.lstm = nn.LSTM(input_dim, hidden_dim, hidden_layers, batch_first=True)
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self.h2o = nn.Linear(hidden_dim, output_dim)
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def forward(self, x, y):
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self.lstm.flatten_parameters()
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h_t, _ = self.lstm(x)
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output = self.h2o(h_t)
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loss = nn.functional.mse_loss(output, y)
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return loss
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net = Net(INPUT_DIM, HIDDEN_DIM, OUTPUT_DIM, N_LAYERS).to(0)
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inp = [
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torch.randn((BATCH_SIZE, SEQ_LEN, INPUT_DIM)).to(0),
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torch.rand((BATCH_SIZE, SEQ_LEN, OUTPUT_DIM)).to(0)
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]
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# Not checking result allclose as the parameter inconsistency exist
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# prior to this change. See #37079
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self._test_base(net, inp, check_allclose=False)
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# Skip dev-asan as torch + multiprocessing spawn have known issues
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if not TEST_WITH_DEV_DBG_ASAN:
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class TestDistributedNNFunctionsGloo(TestDistributedNNFunctions):
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# Test Common Ops First.
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_broadcast(self):
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self._test_broadcast("gloo")
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_reduce(self):
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self._test_reduce("gloo")
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_allreduce(self):
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self._test_allreduce("gloo")
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_all_gather(self):
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self._test_all_gather("gloo")
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_all_to_all(self):
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self._test_all_to_all("gloo")
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_all_to_all_single(self):
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self._test_all_to_all_single("gloo")
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# Test Ops only supported in GLOO.
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_gather(self):
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store = c10d.FileStore(self.file_name, self.world_size)
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# This is required because these functions calls directly to the .dist and needs
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# the world to be initialized
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c10d.init_process_group(store=store, rank=self.rank, world_size=self.world_size, backend='gloo')
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device = torch.device(f"cuda:{self.rank}")
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x = torch.ones(5, 5, device=device) + self.rank
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x.requires_grad = True
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tensors = torch.distributed.nn.gather(x, 1)
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if self.rank == 1:
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for i, t in enumerate(tensors):
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self.assertEqual(t, torch.ones(5, 5, device=device) + i)
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elif self.rank == 0:
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for i, t in enumerate(tensors):
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zeros = torch.zeros(5, 5, device=device)
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self.assertEqual(t, zeros)
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y = torch.sum(torch.stack(tensors), axis=0)
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z = y.sin().sum()
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z.backward()
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# Test gradient
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x_s = 3 * torch.ones(5, 5, device=device)
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self.assertEqual(x.grad, x_s.cos())
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@requires_gloo()
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@skip_if_lt_x_gpu(2)
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@skip_but_pass_in_sandcastle_if(not _torch_dist_nn_available, "torch.distributed.nn is not available")
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def test_scatter(self):
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store = c10d.FileStore(self.file_name, self.world_size)
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# This is required because these functions calls directly to the .dist and needs
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# the world to be initialized
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c10d.init_process_group(store=store, rank=self.rank, world_size=self.world_size, backend='gloo')
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device = torch.device(f"cuda:{self.rank}")
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x0 = torch.ones(5, 5, device=device)
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x1 = torch.ones(5, 5, device=device) + 1
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x0.requires_grad = True
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x1.requires_grad = True
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y = torch.distributed.nn.scatter([x0, x1], 1)
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if self.rank == 1:
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self.assertEqual(y, 1 + torch.ones(5, 5, device=device))
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elif self.rank == 0:
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self.assertEqual(y, torch.ones(5, 5, device=device))
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z = y.sin().sum()
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z.backward()
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# Test gradient
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if self.rank == 1:
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x0_s = torch.ones(5, 5, device=device).cos()
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x1_s = (2 * torch.ones(5, 5, device=device)).cos()
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self.assertEqual(x0.grad, x0_s)
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self.assertEqual(x1.grad, x1_s)
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if self.rank == 0:
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self.assertEqual(x0.grad, torch.zeros(5, 5, device=device))
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if __name__ == '__main__':
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run_tests()
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