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import argparse
import torch
import torch.nn as nn
from .factory import pytorch_lstm_creator, varlen_pytorch_lstm_creator
from .runner import get_nn_runners
def barf():
import pdb
pdb.set_trace()
def assertEqual(tensor, expected, threshold=0.001):
if isinstance(tensor, list) or isinstance(tensor, tuple):
for t, e in zip(tensor, expected):
assertEqual(t, e)
else:
if (tensor - expected).abs().max() > threshold:
barf()
def filter_requires_grad(tensors):
return [t for t in tensors if t.requires_grad]
def test_rnns(experim_creator, control_creator, check_grad=True, verbose=False,
seqLength=100, numLayers=1, inputSize=512, hiddenSize=512,
miniBatch=64, device='cuda', seed=17):
creator_args = dict(seqLength=seqLength, numLayers=numLayers,
inputSize=inputSize, hiddenSize=hiddenSize,
miniBatch=miniBatch, device=device, seed=seed)
print("Setting up...")
control = control_creator(**creator_args)
experim = experim_creator(**creator_args)
# Precondition
assertEqual(experim.inputs, control.inputs)
assertEqual(experim.params, control.params)
print("Checking outputs...")
control_outputs = control.forward(*control.inputs)
experim_outputs = experim.forward(*experim.inputs)
assertEqual(experim_outputs, control_outputs)
print("Checking grads...")
assert control.backward_setup is not None
assert experim.backward_setup is not None
assert control.backward is not None
assert experim.backward is not None
control_backward_inputs = control.backward_setup(control_outputs, seed)
experim_backward_inputs = experim.backward_setup(experim_outputs, seed)
control.backward(*control_backward_inputs)
experim.backward(*experim_backward_inputs)
control_grads = [p.grad for p in control.params]
experim_grads = [p.grad for p in experim.params]
assertEqual(experim_grads, control_grads)
if verbose:
print(experim.forward.graph_for(*experim.inputs))
print('')
def test_vl_py(**test_args):
# XXX: This compares vl_py with vl_lstm.
# It's done this way because those two don't give the same outputs so
# the result isn't an apples-to-apples comparison right now.
control_creator = varlen_pytorch_lstm_creator
name, experim_creator, context = get_nn_runners('vl_py')[0]
with context():
print('testing {}...'.format(name))
creator_keys = [
'seqLength', 'numLayers', 'inputSize',
'hiddenSize', 'miniBatch', 'device', 'seed'
]
creator_args = {key: test_args[key] for key in creator_keys}
print("Setting up...")
control = control_creator(**creator_args)
experim = experim_creator(**creator_args)
# Precondition
assertEqual(experim.inputs, control.inputs[:2])
assertEqual(experim.params, control.params)
print("Checking outputs...")
control_out, control_hiddens = control.forward(*control.inputs)
control_hx, control_cx = control_hiddens
experim_out, experim_hiddens = experim.forward(*experim.inputs)
experim_hx, experim_cx = experim_hiddens
experim_padded = nn.utils.rnn.pad_sequence(experim_out).squeeze(-2)
assertEqual(experim_padded, control_out)
assertEqual(torch.cat(experim_hx, dim=1), control_hx)
assertEqual(torch.cat(experim_cx, dim=1), control_cx)
print("Checking grads...")
assert control.backward_setup is not None
assert experim.backward_setup is not None
assert control.backward is not None
assert experim.backward is not None
control_backward_inputs = control.backward_setup(
(control_out, control_hiddens), test_args['seed'])
experim_backward_inputs = experim.backward_setup(
(experim_out, experim_hiddens), test_args['seed'])
control.backward(*control_backward_inputs)
experim.backward(*experim_backward_inputs)
control_grads = [p.grad for p in control.params]
experim_grads = [p.grad for p in experim.params]
assertEqual(experim_grads, control_grads)
if test_args['verbose']:
print(experim.forward.graph_for(*experim.inputs))
print('')
if __name__ == '__main__':
parser = argparse.ArgumentParser(description='Test lstm correctness')
parser.add_argument('--seqLength', default='100', type=int)
parser.add_argument('--numLayers', default='1', type=int)
parser.add_argument('--inputSize', default='512', type=int)
parser.add_argument('--hiddenSize', default='512', type=int)
parser.add_argument('--miniBatch', default='64', type=int)
parser.add_argument('--device', default='cuda', type=str)
parser.add_argument('--check_grad', default='True', type=bool)
parser.add_argument('--variable_lstms', action='store_true')
parser.add_argument('--seed', default='17', type=int)
parser.add_argument('--verbose', action='store_true')
parser.add_argument('--rnns', nargs='*',
help='What to run. jit_premul, jit, etc')
args = parser.parse_args()
if args.rnns is None:
args.rnns = ['jit_premul', 'jit']
print(args)
if 'cuda' in args.device:
assert torch.cuda.is_available()
rnn_runners = get_nn_runners(*args.rnns)
should_test_varlen_lstms = args.variable_lstms
test_args = vars(args)
del test_args['rnns']
del test_args['variable_lstms']
if should_test_varlen_lstms:
test_vl_py(**test_args)
for name, creator, context in rnn_runners:
with context():
print('testing {}...'.format(name))
test_rnns(creator, pytorch_lstm_creator, **test_args)
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