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test_nn.py
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test_nn.py
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import math
import sys
import random
import string
import unittest
import itertools
import contextlib
import warnings
import pickle
from copy import deepcopy
from itertools import repeat, product
from functools import wraps, reduce
from operator import mul
from collections import OrderedDict
import threading
import torch
from torch._six import inf, nan
import torch.backends.cudnn as cudnn
import torch.nn as nn
import torch.nn.functional as F
import torch.nn.parallel as dp
import torch.nn.init as init
import torch.nn.utils.rnn as rnn_utils
from torch.nn.utils import clip_grad_norm_, clip_grad_value_
from torch.nn.utils import parameters_to_vector, vector_to_parameters
from torch.autograd import Variable, gradcheck
from torch.autograd.gradcheck import gradgradcheck
from torch.nn import Parameter
from torch.nn.parallel._functions import Broadcast
from common_utils import freeze_rng_state, run_tests, TestCase, skipIfNoLapack, skipIfRocm, \
TEST_NUMPY, TEST_SCIPY, download_file, PY3, PY34, to_gpu, \
get_function_arglist, load_tests
from common_cuda import TEST_CUDA, TEST_MULTIGPU, TEST_CUDNN, TEST_CUDNN_VERSION
from common_nn import NNTestCase, ModuleTest, CriterionTest, TestBase, \
module_tests, criterion_tests, loss_reference_fns, get_reduction, \
get_weight, smoothl1loss_reference, kldivloss_reference, \
ctcloss_reference, new_module_tests
from torch.nn import MultiheadAttention
from hypothesis import given
import hypothesis_utils as hu
# load_tests from common_utils is used to automatically filter tests for
# sharding on sandcastle. This line silences flake warnings
load_tests = load_tests
if TEST_SCIPY:
from scipy import stats
import scipy.ndimage
if TEST_NUMPY:
import numpy as np
ALL_TENSORTYPES = [torch.float,
torch.double,
torch.half]
NO_HALF_TENSORTYPES = [torch.float,
torch.double]
DOUBLE_TENSORTYPES = [torch.double]
dtype2prec = {torch.float: 1e-5,
torch.double: 1e-5,
torch.half: 1e-2}
# WARNING: If you add a new top-level test case to this file, you MUST
# update test/run_test.py to list it, otherwise it will NOT be run in
# CI.
# Used to run the same test with different tensor types
def repeat_test_for_types(dtypes):
def repeat_helper(f):
@wraps(f)
def call_helper(self, *args):
for dtype in dtypes:
if PY34:
with TestCase.subTest(self, dtype=dtype):
f(self, *args, dtype=dtype)
else:
f(self, *args, dtype=dtype)
return call_helper
return repeat_helper
class PackedSequenceTest(TestCase):
_type_by_name = {
'torch.DoubleTensor': (torch.DoubleTensor, 'double'),
'torch.FloatTensor': (torch.FloatTensor, 'float'),
# We leave out `'torch.HalfTensor': (torch.HalfTensor, 'half'),`
# because of an error in `pad_packed_sequence`
# > AttributeError: 'torch.HalfTensor' object has no attribute 'fill_'
'torch.LongTensor': (torch.LongTensor, 'long'),
'torch.IntTensor': (torch.IntTensor, 'int'),
'torch.ShortTensor': (torch.ShortTensor, 'short'),
'torch.CharTensor': (torch.CharTensor, 'char'),
'torch.ByteTensor': (torch.ByteTensor, 'byte'),
}
def __init__(self, *args, **kwargs):
super(PackedSequenceTest, self).__init__(*args, **kwargs)
self.batch_size = 5
self.max_length = 6
def _ordered_sequence(self, tensor_type):
"""Create ordered list of random sequences"""
seqs = [tensor_type(random.randint(1, self.max_length))
for _ in range(self.batch_size)]
seqs = [s.random_(-128, 128) for s in seqs]
ordered = sorted(seqs, key=len, reverse=True)
return ordered
def _padded_sequence(self, tensor_type):
"""Create Tensor of random padded sequences"""
ordered = self._ordered_sequence(tensor_type)
lengths = list(map(len, ordered))
padded_tensor = rnn_utils.pad_sequence(ordered)
return padded_tensor, lengths
def test_type_casts(self):
"""Test type casting of `PackedSequence` against type casting of tensor"""
for _, (input_type, _) in self._type_by_name.items():
for expected_type_str, (_, cast_str) in self._type_by_name.items():
for enforce_sorted in [True, False]:
padded, lengths = self._padded_sequence(input_type)
packed = rnn_utils.pack_padded_sequence(
padded, lengths, enforce_sorted=enforce_sorted)
# Apply cast to `PackedSequence` instance and unpack
masked = getattr(packed, cast_str)()
unpacked, lengths_out = rnn_utils.pad_packed_sequence(masked)
self.assertEqual(unpacked.type(), expected_type_str)
@unittest.skipIf(not TEST_CUDA, "CUDA unavailable")
def test_cuda_mask(self):
for enforce_sorted in [True, False]:
tensor_type = torch.FloatTensor
cuda_type_str = 'torch.cuda.FloatTensor'
padded, lengths = self._padded_sequence(tensor_type)
packed = rnn_utils.pack_padded_sequence(
padded, lengths, enforce_sorted=enforce_sorted)
self.assertFalse(packed.is_cuda)
packed = packed.cuda()
self.assertTrue(packed.is_cuda)
unpacked, _ = rnn_utils.pad_packed_sequence(packed)
self.assertEqual(unpacked.type(), cuda_type_str)
def test_wrong_order(self):
a = torch.ones(25, 300)
b = torch.ones(22, 300)
b_a = rnn_utils.pad_sequence([b, a])
self.assertRaises(
RuntimeError,
lambda: rnn_utils.pack_padded_sequence(b_a, [22, 25], enforce_sorted=True))
def test_total_length(self):
padded, lengths = self._padded_sequence(torch.FloatTensor)
max_length = max(lengths)
packed = rnn_utils.pack_padded_sequence(padded, lengths)
# test ValueError if total_length < max_length
for total_length in (-1, 0, max_length - 1):
for batch_first in (True, False):
def err_fn():
rnn_utils.pad_packed_sequence(packed, batch_first=batch_first,
total_length=total_length)
self.assertRaisesRegex(ValueError,
r'Expected total_length to be at least the '
r'length of the longest sequence in input',
err_fn)
# test that pad_packed_sequence returns results of correct length
for batch_first in (True, False):
no_extra_pad, _ = rnn_utils.pad_packed_sequence(packed, batch_first=batch_first)
for total_length_delta in (0, 1, 8):
total_length = max_length + total_length_delta
unpacked, lengths_out = rnn_utils.pad_packed_sequence(packed, batch_first=batch_first,
total_length=total_length)
self.assertEqual(lengths, lengths_out)
self.assertEqual(unpacked.size(1 if batch_first else 0), total_length)
if total_length_delta == 0:
ref_output = no_extra_pad
elif batch_first:
extra_pad = no_extra_pad.new_zeros(self.batch_size, total_length_delta)
ref_output = torch.cat([no_extra_pad, extra_pad], 1)
else:
extra_pad = no_extra_pad.new_zeros(total_length_delta, self.batch_size)
ref_output = torch.cat([no_extra_pad, extra_pad], 0)
self.assertEqual(unpacked, ref_output)
def test_to(self):
for enforce_sorted in (True, False):
padded, lengths = self._padded_sequence(torch.IntTensor)
a = rnn_utils.pack_padded_sequence(
padded, lengths, enforce_sorted=enforce_sorted).cpu()
self.assertIs(a, a.to('cpu'))
self.assertIs(a, a.to('cpu', dtype=torch.int32))
self.assertEqual(a.long(), a.to(torch.int64))
if torch.cuda.is_available():
for cuda in ['cuda', 'cuda:0' if torch.cuda.device_count() == 1 else 'cuda:1']:
b = a.cuda(device=cuda)
self.assertIs(b, b.to(cuda))
self.assertEqual(a, b.to('cpu'))
self.assertEqual(b, a.to(cuda))
self.assertEqual(a, b.to('cpu', dtype=torch.int32))
self.assertIs(b, b.to(dtype=torch.int32))
self.assertEqual(b.long(), b.to(dtype=torch.int64))
def default_tensor_type(type):
type_str = torch.typename(type)
def decorator(fn):
@wraps(fn)
def wrapper(*args, **kwargs):
old_type = torch.Tensor().type()
torch.set_default_tensor_type(type_str)
try:
return fn(*args, **kwargs)
finally:
torch.set_default_tensor_type(old_type)
return wrapper
return decorator
def _assertGradAndGradgradChecks(test_case, apply_fn, inputs):
# call assert function rather than returning a bool since it's nicer
# if we get whether this failed on the gradcheck or the gradgradcheck.
test_case.assertTrue(gradcheck(apply_fn, inputs))
test_case.assertTrue(gradgradcheck(apply_fn, inputs))
class InputVariableMixin(object):
def _get_input(self):
input = TestBase._get_input(self, False)
def map_variables(i):
if isinstance(i, torch.Tensor):
if i.is_floating_point():
i.requires_grad = True
return i
else:
return type(i)(map_variables(elem) for elem in i)
return map_variables(input)
class NewModuleTest(InputVariableMixin, ModuleTest):
def __init__(self, *args, **kwargs):
super(NewModuleTest, self).__init__(*args, **kwargs)
self.cudnn = kwargs.get('cudnn', False)
self.check_inplace = kwargs.get('check_inplace', False)
self.check_gradgrad = kwargs.get('check_gradgrad', True)
self.skip_double = kwargs.get('skip_double', False)
def _do_test(self, test_case, module, input):
test_case.check_jacobian(module, input, self.jacobian_input)
if self.check_gradgrad:
# could probably unify check_jacobian above with this.
params = tuple(x for x in module.parameters())
_assertGradAndGradgradChecks(test_case,
lambda x, *args, **kw: test_case._forward(module, x), (input,) + params)
# check if module can be printed
module.__repr__()
if self.check_inplace:
# check if the inplace variant of the module gives the same result
# as the out-of-place
module_ip = self.constructor(*self.constructor_args, inplace=True)
input_version = input._version
with freeze_rng_state():
output = module(input)
test_case.assertEqual(input._version, input_version)
input_ip = deepcopy(input)
input_ip_clone = input_ip.clone()
with freeze_rng_state():
output_ip = module_ip(input_ip_clone)
test_case.assertNotEqual(input_ip_clone._version, input_version)
test_case.assertEqual(output, output_ip)
grad = output.data.clone().normal_()
input.grad.data.zero_()
output.backward(grad)
output_ip.backward(grad)
test_case.assertEqual(input.grad, input_ip.grad)
if isinstance(input, torch.LongTensor) and TEST_CUDA:
# check that cuda() moves module parameters to correct GPU device,
# and that float() casts parameters correctly
input = input.cuda()
module.float().cuda()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 0)
if torch.cuda.device_count() > 1:
input = input.cuda(1)
module.cuda(1)
with torch.cuda.device(1):
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 1)
else:
# check that float()/double() casters work correctly
# to float
if not isinstance(input, torch.LongTensor):
input = input.float()
module.float()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.FloatTensor)
# and back to double
if not isinstance(input, torch.LongTensor):
input = input.double()
module.double()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.DoubleTensor)
if TEST_CUDA and self.should_test_cuda:
# check that cuda() moves module parameters to correct GPU device,
# and that float() casts parameters correctly
# to GPU0
input = input.float().cuda()
module.float().cuda()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 0)
# to CPU
input = input.cpu()
module.cpu()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.FloatTensor)
# back to GPU0
input = input.cuda()
module.cuda()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 0)
# test that forwards of module runs correctly without cuDNN
if self.cudnn:
with torch.backends.cudnn.flags(enabled=False):
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 0)
if torch.cuda.device_count() >= 2:
# test cross-GPU transfer works
# to GPU1
input = input.cuda(1)
module.cuda(1)
with torch.cuda.device(1):
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.FloatTensor)
test_case.assertEqual(p.get_device(), 1)
if not self.skip_double:
# test double()
input = input.double().cuda()
module.double().cuda()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.DoubleTensor)
test_case.assertEqual(p.get_device(), 0)
# test half()
input = input.half().cuda()
module.half().cuda()
module(input)
for p in module.parameters():
test_case.assertIsInstance(p, torch.cuda.HalfTensor)
test_case.assertEqual(p.get_device(), 0)
def _get_target(self):
return self._get_arg('target', False)
@property
def constructor_args(self):
return self._get_arg('constructor_args', False)
class NewCriterionTest(InputVariableMixin, CriterionTest):
# TODO: check that criterions don't ignore grad_output
def __init__(self, *args, **kwargs):
super(NewCriterionTest, self).__init__(*args, **kwargs)
self.check_gradgrad = kwargs.get('check_gradgrad', True)
self.check_half = kwargs.get('check_half', True)
self.convert_target = kwargs.get('convert_target', True)
def _do_extra_tests(self, test_case, module, input, target):
if not self.check_gradgrad:
return
test_case.assertFalse(target.requires_grad)
params = tuple(x for x in module.parameters())
if not isinstance(input, tuple):
inputs = (input,) + params
def apply_fn(input, *params):
return module(input, target)
else:
inputs = input + params
def apply_fn(input1, input2, *params):
return module(input1, input2, target)
# TODO: we don't pass `target` as part of inputs because we don't
# currently compute the gradient w.r.t. target for loss functions.
gradcheck(apply_fn, inputs)
gradgradcheck(apply_fn, inputs)
def test_cuda(self, test_case, dtype=None, extra_args=None):
def convert_dtype(obj, dtype, requires_grad=False):
if isinstance(obj, torch.Tensor):
return obj.detach().to(dtype=dtype).requires_grad_(requires_grad)
elif isinstance(obj, torch.Tensor):
return obj.to(dtype)
elif isinstance(obj, tuple):
return tuple(convert_dtype(o, dtype, requires_grad) for o in obj)
else:
return obj
if not TEST_CUDA or not self.should_test_cuda:
raise unittest.SkipTest('Excluded from CUDA tests')
try:
cpu_input = self._get_input()
cpu_target = self._get_target()
cpu_module = self.constructor(*self.constructor_args)
gpu_module = self.constructor(*self.constructor_args)
# Convert input, target and module parameters to dtype
if dtype is not None:
cpu_input = convert_dtype(cpu_input, dtype, True)
# NLLLoss requires target to be LongTensor
if not isinstance(cpu_target, torch.LongTensor) and self.convert_target:
cpu_target = convert_dtype(cpu_target, dtype)
cpu_module.type(dtype)
gpu_module.type(dtype)
# GPU setup
gpu_input = to_gpu(cpu_input)
gpu_target = to_gpu(cpu_target)
gpu_module.cuda()
# torch.HalfTensor doesn't support most operations, converting back to default
if dtype == torch.half:
cpu_input = self._get_input()
cpu_target = self._get_target()
# Loss modules with weights require consistent input/module weight types
cpu_module = self.constructor(*self.constructor_args)
cpu_output = test_case._forward_criterion(cpu_module, cpu_input, cpu_target, extra_args=extra_args)
gpu_output = test_case._forward_criterion(gpu_module, gpu_input, gpu_target, extra_args=extra_args)
# dtype can be None, so set precision in this way instead of a precision map
test_case.assertEqual(cpu_output, gpu_output, 1e-1 if dtype == torch.half else 4e-4)
cpu_gradInput = test_case._backward_criterion(cpu_module, cpu_input, cpu_target, extra_args=extra_args)
gpu_gradInput = test_case._backward_criterion(gpu_module, gpu_input, gpu_target, extra_args=extra_args)
test_case.assertEqual(cpu_gradInput, gpu_gradInput, 1e-1 if dtype == torch.half else 4e-4)
except NotImplementedError:
pass
def _get_target(self):
return self._get_arg('target', False)
@property
def constructor_args(self):
return self._get_arg('constructor_args', False)
@property
def extra_args(self):
return self._get_arg('extra_args', False)
class TestAvgPool(TestCase):
def _sum_pool2d(self, x, kernel_size):
windows = torch.nn.functional.unfold(x, kernel_size=kernel_size, stride=kernel_size)
return torch.sum(windows, dim=1)
def _sum_pool3d(self, x, kernel_size):
# Because unfold does not support 3D sliding window we will split tensor to multiple tensors and calculate sum
h = kernel_size[0]
splited_x = [t.sum(0) for t in x.split(h) if t.size(0) == h]
# sum_pool2d assumes tensor in (1, 1, n, m) view, so unsqueeze two times
splited_x = [self._sum_pool2d(t.unsqueeze(0).unsqueeze(0), kernel_size[1:]) for t in splited_x]
joined_x = torch.cat(splited_x)
return joined_x.view(1, joined_x.numel())
def _avg_pool2d(self, x, kernel_size):
size = reduce((lambda x, y: x * y), kernel_size)
return self._sum_pool2d(x, kernel_size) / size
def _avg_pool3d(self, x, kernel_size):
size = reduce((lambda x, y: x * y), kernel_size)
return self._sum_pool3d(x, kernel_size) / size
def test_doubletensor_avg_pool2d(self):
n, m = 5, 8
input = torch.rand(1, 1, n, m)
for i in range(1, n + 1):
for j in range(1, m + 1):
actual = torch.nn.functional.avg_pool2d(input[0], (i, j))
actual = actual.view(1, actual.numel())
expected = self._avg_pool2d(input, (i, j))
self.assertTrue(torch.allclose(actual, expected, rtol=0, atol=1e-5))
def test_avg_pool2d_with_zero_divisor(self):
self.assertRaisesRegex(RuntimeError, "divisor must be not zero",
lambda: torch.nn.functional.avg_pool2d(torch.zeros(3, 3, 3), (2, 2), divisor_override=0))
def test_doubletensor_avg_pool2d_with_divisor(self):
n, m = 3, 3
input = torch.rand(1, 1, n, m)
for i in range(1, n + 1):
for j in range(1, m + 1):
for divisor in [1, 7, i * j]:
actual = torch.nn.functional.avg_pool2d(input[0], (i, j), divisor_override=divisor)
actual = actual.view(1, actual.numel())
expected = self._sum_pool2d(input, (i, j)) / divisor
self.assertTrue(torch.allclose(actual, expected, rtol=0, atol=1e-5))
def test_doubletensor_avg_pool3d(self):
h, w, d = 5, 6, 7
input = torch.rand(h, w, d)
for i in range(1, h + 1):
for j in range(1, w + 1):
for k in range(1, d + 1):
actual = torch.nn.functional.avg_pool3d(input.unsqueeze(0), (i, j, k))
actual = actual.view(1, actual.numel())
expected = self._avg_pool3d(input, (i, j, k))
self.assertTrue(torch.allclose(actual, expected, rtol=0, atol=1e-5))
def test_doubletensor_avg_pool3d_with_divisor(self):
h, w, d = 6, 5, 7
input = torch.rand(h, w, d)
for i in range(1, h + 1):
for j in range(1, w + 1):
for k in range(1, d + 1):
for divisor in [1, 7, i * j]:
actual = torch.nn.functional.avg_pool3d(input.unsqueeze(0), (i, j, k), divisor_override=divisor)
actual = actual.view(1, actual.numel())
expected = self._sum_pool3d(input, (i, j, k)) / divisor
self.assertTrue(torch.allclose(actual, expected, rtol=0, atol=1e-5))
def test_avg_pool3d_with_zero_divisor(self):
self.assertRaisesRegex(RuntimeError, "divisor must be not zero",
lambda: torch.nn.functional.avg_pool3d(torch.zeros(3, 3, 3, 3), (2, 2, 2), divisor_override=0))
class TestNN(NNTestCase):
_do_cuda_memory_leak_check = True
_do_cuda_non_default_stream = False
def _forward(self, module, input):
with freeze_rng_state():
return module(input)
def _backward(self, module, input, output, grad_output, create_graph=False):
output.backward(grad_output, retain_graph=True, create_graph=create_graph)
if input.grad is None:
return None
return input.grad.data
def _forward_criterion(self, criterion, input, target, extra_args=None):
if extra_args is None:
extra_args = tuple()
if isinstance(input, tuple):
args = input + (target,) + extra_args
output = criterion(*args)
else:
output = criterion(input, target, *extra_args)
return output
def _backward_criterion(self, criterion, input, target, gradOutput=None, extra_args=None):
if extra_args is None:
extra_args = tuple()
input_tuple = input if isinstance(input, tuple) else (input,)
for i in input_tuple:
if i.grad is not None:
i.grad.data.zero_()
args = input_tuple + (target,) + extra_args
if gradOutput is None:
gradOutput = torch.ones(())
criterion(*args).backward(gradOutput.type_as(input_tuple[0]))
if isinstance(input, tuple):
return tuple(map(lambda i: i.grad.data, input))
else:
return input.grad.data
def _zero_grad_parameters(self, module):
for p in module.parameters():
if p.grad is not None:
with torch.no_grad():
p.grad.zero_()
p.grad.detach_()
def _get_parameters(self, module):
params = []
d_params = []
for p in module.parameters():
params.append(p)
d_params.append(p.grad)
return params, d_params
def _create_basic_net(self):
class Layer(nn.Module):
def __init__(self):
super(Layer, self).__init__()
self.layer_dummy_param = Parameter(torch.Tensor(3, 5))
self.register_buffer('layer_dummy_buf', torch.zeros(1, 3, 3, 7))
class Net(nn.Module):
def __init__(self):
super(Net, self).__init__()
self.l1 = Layer()
self.dummy_param = Parameter(torch.Tensor(3, 5))
self.register_buffer('dummy_buf', torch.zeros(7, 3, 3, 1))
l = Layer()
n = Net()
s = nn.Sequential(n, n)
return l, n, s
def test_requires_grad_(self):
m = self._create_basic_net()[-1]
assert len(list(m.buffers())) > 0, 'invalid test'
assert all(not b.requires_grad for b in m.buffers()) > 0, 'invalid test'
assert len(list(m.parameters())) > 0, 'invalid test'
assert all(p.requires_grad for p in m.parameters()) > 0, 'invalid test'
for requires_grad in (False, True):
self.assertIs(m.requires_grad_(requires_grad), m)
for p in m.parameters():
self.assertEqual(p.requires_grad, requires_grad)
for b in m.buffers():
self.assertFalse(b.requires_grad)
def test_module_backcompat(self):
from torch.serialization import SourceChangeWarning
path = download_file('https://download.pytorch.org/test_data/linear.pt')
with warnings.catch_warnings():
warnings.simplefilter('ignore', SourceChangeWarning)
m = torch.load(path)
input = torch.randn(2, 3, dtype=torch.float)
self.assertEqual(m(input).size(), (2, 5))
def test_conv_backcompat(self):
from torch.serialization import SourceChangeWarning
# This file was generated by running on PyTorch 1.0.1 on Python 2:
#
# import torch
# from torch import nn
# m = nn.Conv2d(1, 1, 1)
# torch.save(m, 'legacy_conv2d.pt')
#
# NB: This Pickle also contains some Unicode data!
path = download_file('https://download.pytorch.org/test_data/legacy_conv2d.pt')
with warnings.catch_warnings():
warnings.simplefilter('ignore', SourceChangeWarning)
if sys.version_info[0] == 2:
m = torch.load(path)
else:
m = torch.load(path, encoding='utf-8')
input = torch.randn((1, 1, 1, 1), dtype=torch.float)
self.assertEqual(m(input).size(), (1, 1, 1, 1))
def test_share_memory(self):
class Net(nn.Module):
def __init__(self):
super(Net, self).__init__()
self.p = nn.Parameter(torch.eye(5))
self.par = nn.ParameterList()
self.par.append(nn.Parameter(torch.randn(10)))
def forward(self, inp):
# NB: dead code
return inp.clone()
net = Net()
for p in net.parameters():
self.assertFalse(p.storage().is_shared())
for b in net.buffers():
self.assertFalse(b.storage().is_shared())
net.share_memory()
for p in net.parameters():
self.assertTrue(p.storage().is_shared())
for b in net.buffers():
self.assertTrue(b.storage().is_shared())
def test_hooks(self):
module = nn.Sigmoid()
input = torch.ones(5, 5, requires_grad=True)
counter = {
'forwards': 0,
'backwards': 0
}
def fw_hook(inc, h_module, input, output):
self.assertIsInstance(input, tuple)
self.assertTrue(isinstance(output, torch.Tensor))
self.assertTrue(h_module is module)
self.assertEqual(input[0].data, torch.ones(5, 5))
self.assertEqual(output.data, torch.Tensor(5, 5).fill_(1 / (1 + 1 / math.e)))
counter['forwards'] += inc
def bw_hook(inc, h_module, grad_input, grad_output):
self.assertIsInstance(grad_input, tuple)
self.assertIsInstance(grad_output, tuple)
self.assertTrue(h_module is module)
self.assertEqual(grad_output[0].data, torch.ones(5, 5) * 2)
counter['backwards'] += inc
test_fwd = module.register_forward_hook(lambda *args: fw_hook(1, *args))
module(input)
module(input)
self.assertEqual(counter['forwards'], 2)
self.assertEqual(counter['backwards'], 0)
test_bwd = module.register_backward_hook(
lambda *args: bw_hook(1, *args))
output = module(input)
self.assertEqual(counter['forwards'], 3)
self.assertEqual(counter['backwards'], 0)
output.backward(torch.ones(5, 5) * 2, retain_graph=True)
self.assertEqual(counter['forwards'], 3)
self.assertEqual(counter['backwards'], 1)
output.backward(torch.ones(5, 5) * 2, retain_graph=True)
self.assertEqual(counter['forwards'], 3)
self.assertEqual(counter['backwards'], 2)
test2_fwd = module.register_forward_hook(lambda *args: fw_hook(2, *args))
output = module(input)
self.assertEqual(counter['forwards'], 6)
self.assertEqual(counter['backwards'], 2)
test2_bwd = module.register_backward_hook(lambda *args: bw_hook(2, *args))
module(input).backward(torch.ones(5, 5) * 2)
self.assertEqual(counter['forwards'], 9)
self.assertEqual(counter['backwards'], 5)
test2_bwd.remove()
module(input).backward(torch.ones(5, 5) * 2)
self.assertEqual(counter['forwards'], 12)
self.assertEqual(counter['backwards'], 6)
test2_fwd.remove()
module(input).backward(torch.ones(5, 5) * 2)
self.assertEqual(counter['forwards'], 13)
self.assertEqual(counter['backwards'], 7)
test_fwd.remove()
test_bwd.remove()
def test_hook_cpp(self):
counter = [0]
bn = nn.BatchNorm1d(5)
def hook(module, grad_inputs, grad_outputs):
counter[0] += 1
self.assertEqual(len(grad_inputs), 3)
self.assertEqual(len(grad_outputs), 1)
self.assertEqual(module, bn)
bn.register_backward_hook(hook)
output = bn(torch.randn(5, 5, requires_grad=True))
output.sum().backward()
def test_hook_fail(self):
module = nn.Sigmoid()
input = torch.randn(5, 5, requires_grad=True)
def bw_fail1(self, grad_input, grad_output):
return grad_input[:-1]
def bw_fail2(self, grad_input, grad_output):
return grad_input + (torch.randn(2, 2),)
with module.register_backward_hook(bw_fail1):
with self.assertRaises(RuntimeError) as err:
module(input).sum().backward()
self.assertIn("bw_fail", err.exception.args[0])
self.assertIn("got 0, but expected 1", err.exception.args[0])
with module.register_backward_hook(bw_fail2):
with self.assertRaises(RuntimeError) as err:
module(input).sum().backward()
self.assertIn("bw_fail2", err.exception.args[0])
self.assertIn("got 2, but expected 1", err.exception.args[0])
def test_hook_writeable(self):
module = nn.Linear(5, 5)
input = torch.randn(5, 5, requires_grad=True)
def bw_hook(module, grad_input, grad_output):
for grad in grad_input:
self.assertTrue(isinstance(grad, torch.Tensor))
for grad in grad_output:
self.assertTrue(isinstance(grad, torch.Tensor))
return tuple(gi * 2 for gi in grad_input)
module.register_backward_hook(bw_hook)
module(input).backward(torch.ones(5, 5))
expected_grad = torch.ones(5, 5).mm(module.weight.data) * 2
self.assertEqual(input.grad.data, expected_grad)
def test_hook_mutations(self):
module = nn.Linear(5, 5)
input = torch.randn(5, 5, requires_grad=True)
def forward_pre_hook(m, input):
return torch.nn.functional.relu(input[0])
def forward_hook(m, input, output):
return -output
module.register_forward_pre_hook(forward_pre_hook)
module.register_forward_hook(forward_hook)
output = module(input)
expected_res = -torch.nn.functional.linear(torch.nn.functional.relu(input), module.weight, module.bias)
self.assertEqual(output, expected_res)
output.backward(torch.ones(5, 5) * 2, retain_graph=True)
mask = (input > 0).double()
expected_grad = -torch.ones(5, 5).mm(module.weight.data) * 2 * mask
self.assertEqual(input.grad, expected_grad)
def test_to(self):
m = nn.Linear(3, 5)
self.assertIs(m, m.to('cpu'))
self.assertIs(m, m.to('cpu', dtype=torch.float32))
self.assertEqual(m.double(), m.to(torch.float64))
self.assertRaises(RuntimeError, lambda: m.to('cpu', copy=True))
if torch.cuda.is_available():
for cuda in ['cuda', 'cuda:0' if torch.cuda.device_count() == 1 else 'cuda:1']:
m2 = m.cuda(device=cuda)
self.assertIs(m2, m2.to(cuda))
self.assertEqual(m, m2.to('cpu'))
self.assertEqual(m2, m.to(cuda))
self.assertIs(m2, m2.to(dtype=torch.float32))
self.assertEqual(m2.double(), m2.to(dtype=torch.float64))
def test_zero_grad(self):
i = torch.randn(2, 5, requires_grad=True)
module = nn.Linear(5, 5)
for p in module.parameters():
p.requires_grad = False
module.zero_grad()
module.weight.requires_grad = True
module.zero_grad()
self.assertIsNone(module.weight.grad) # uninitialized grad
module(i).sum().backward()
self.assertIsNotNone(module.weight.grad)
self.assertGreater(module.weight.grad.data.abs().sum(), 0)
module.zero_grad()
self.assertEqual(module.weight.grad.data, module.weight.data.clone().zero_())
module.bias.requires_grad = True
module.zero_grad()
self.assertIsNotNone(module.weight.grad)
self.assertIsNone(module.bias.grad)
module(i).sum().backward()
self.assertIsNotNone(module.weight.grad)
self.assertIsNotNone(module.bias.grad)
self.assertGreater(module.weight.grad.data.abs().sum(), 0)
self.assertGreater(module.bias.grad.data.abs().sum(), 0)
module.zero_grad()
self.assertEqual(module.weight.grad.data, module.weight.data.clone().zero_())
self.assertEqual(module.bias.grad.data, module.bias.data.clone().zero_())
def test_no_grad(self):
module = nn.Conv2d(2, 5, kernel_size=3, padding=1)
input = torch.randn(1, 2, 10, 10)
x = input
y = input.clone()
output = module(x)
self.assertTrue(output.requires_grad)
output.backward(torch.ones(1, 5, 10, 10))
with torch.no_grad():
output2 = module(y)
self.assertFalse(output2.requires_grad)
self.assertRaises(RuntimeError, lambda: output2.backward(torch.ones(1, 5, 10, 10)))
def test_invalid_conv1d(self):
module = nn.Conv1d(in_channels=3, out_channels=33, kernel_size=10, stride=1, bias=True)
input = torch.randn(1, 3, 4)
with self.assertRaisesRegex(RuntimeError,
r'Calculated padded input size per channel: \(4\). ' +
r'Kernel size: \(10\). Kernel size can\'t be greater than actual input size'):
module(input)
# Negative stride check
module = nn.Conv1d(in_channels=3, out_channels=6, kernel_size=3, stride=-1, bias=True)
input = torch.randn(1, 3, 4)
with self.assertRaisesRegex(RuntimeError, 'negative stride is not supported'):
module(input)
def test_invalid_conv2d(self):
module = torch.nn.Conv2d(1, 1, kernel_size=3, dilation=2, stride=2)
input = torch.empty(1, 1, 4, 4)
self.assertRaises(RuntimeError, lambda: module(input))
module = nn.Conv2d(in_channels=3, out_channels=33, kernel_size=10, stride=1, bias=True)
input = torch.randn(1, 3, 1, 1)
with self.assertRaisesRegex(RuntimeError,
r'Calculated padded input size per channel: \(1 x 1\). ' +
r'Kernel size: \(10 x 10\). Kernel size can\'t be greater than actual input size'):
module(input)
# Negative stride check
module = nn.Conv2d(in_channels=3, out_channels=6, kernel_size=4, stride=-1, bias=True)
input = torch.randn(1, 3, 4, 4)
with self.assertRaisesRegex(RuntimeError, 'negative stride is not supported'):
module(input)
def test_invalid_conv3d(self):
module = torch.nn.Conv3d(1, 1, kernel_size=3, dilation=2, stride=2)
input = torch.empty(1, 1, 4, 4, 4)
self.assertRaises(RuntimeError, lambda: module(input))
# Negative stride check
module = torch.nn.Conv3d(1, 1, kernel_size=3, stride=-2)
input = torch.empty(1, 1, 4, 4, 4)
with self.assertRaisesRegex(RuntimeError, 'negative stride is not supported'):
module(input)
def _test_dropout(self, cls, cuda, input):
p = 0.2
device = torch.device("cuda") if cuda else torch.device("cpu")
input = input.to(device).fill_(1 - p)
module = cls(p)
input_var = input.clone().requires_grad_()
output = module(input_var)
self.assertLess(abs(output.data.mean() - (1 - p)), 0.05)
output.backward(input)
self.assertLess(abs(input_var.grad.data.mean() - (1 - p)), 0.05)
module = cls(p, True)
input_var = input.clone().requires_grad_()
output = module(input_var + 0)
self.assertLess(abs(output.data.mean() - (1 - p)), 0.05)
output.backward(input)
self.assertLess(abs(input_var.grad.data.mean() - (1 - p)), 0.05)
# check eval mode doesn't change anything
for inplace in [True, False]:
module = cls(p, inplace).eval()
self.assertEqual(input, module(input))
# Check that these don't raise errors
module.__repr__()
str(module)
def _test_alpha_dropout(self, cls, input):
mean = input.mean()
std = input.std()
for p in [0.2, 0.5, 0.8]:
module = cls(p)
input_var = input.detach().clone().requires_grad_()