def __call__(self, *inputvals):
assert len(inputvals) == len(self.nondata_inputs) + len(self.data_inputs)
nondata_vals = inputvals[0:len(self.nondata_inputs)]
data_vals = inputvals[len(self.nondata_inputs):]
feed_dict = dict(zip(self.nondata_inputs, nondata_vals))
n = data_vals[0].shape[0]
for v in data_vals[1:]:
assert v.shape[0] == n
for i_start in range(0, n, self.batch_size):
slice_vals = [v[i_start:min(i_start+self.batch_size, n)] for v in data_vals]
for (var,val) in zip(self.data_inputs, slice_vals):
feed_dict[var]=val
results = tf.get_default_session().run(self.outputs, feed_dict=feed_dict)
if i_start==0:
sum_results = results
else:
for i in range(len(results)):
sum_results[i] = sum_results[i] + results[i]
for i in range(len(results)):
sum_results[i] = sum_results[i] / n
return sum_results
# ================================================================
# Modules
# ================================================================
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