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rnn_cell_test_util.py
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from caffe2.python import workspace, scope
from caffe2.python.model_helper import ModelHelper
import numpy as np
def sigmoid(x):
return 1.0 / (1.0 + np.exp(-x))
def tanh(x):
return 2.0 * sigmoid(2.0 * x) - 1
def _prepare_rnn(
t, n, dim_in, create_rnn, outputs_with_grads,
forget_bias, memory_optim=False,
forward_only=False, drop_states=False, T=None,
two_d_initial_states=None, dim_out=None,
num_states=2,
**kwargs
):
if dim_out is None:
dim_out = [dim_in]
print("Dims: ", t, n, dim_in, dim_out)
model = ModelHelper(name='external')
if two_d_initial_states is None:
two_d_initial_states = np.random.randint(2)
def generate_input_state(n, d):
if two_d_initial_states:
return np.random.randn(n, d).astype(np.float32)
else:
return np.random.randn(1, n, d).astype(np.float32)
states = []
for layer_id, d in enumerate(dim_out):
for i in range(num_states):
state_name = "state_{}/layer_{}".format(i, layer_id)
states.append(model.net.AddExternalInput(state_name))
workspace.FeedBlob(
states[-1], generate_input_state(n, d).astype(np.float32))
# Due to convoluted RNN scoping logic we make sure that things
# work from a namescope
with scope.NameScope("test_name_scope"):
input_blob, seq_lengths = model.net.AddScopedExternalInputs(
'input_blob', 'seq_lengths')
outputs = create_rnn(
model, input_blob, seq_lengths, states,
dim_in=dim_in, dim_out=dim_out, scope="external/recurrent",
outputs_with_grads=outputs_with_grads,
memory_optimization=memory_optim,
forget_bias=forget_bias,
forward_only=forward_only,
drop_states=drop_states,
static_rnn_unroll_size=T,
**kwargs
)
workspace.RunNetOnce(model.param_init_net)
workspace.FeedBlob(
seq_lengths,
np.random.randint(1, t + 1, size=(n,)).astype(np.int32)
)
return outputs, model.net, states + [input_blob]