提交 f20ea386 authored 作者: Frederic Bastien's avatar Frederic Bastien

Remove useless graph of clone. Scan inputs and outputs aren't modified inplace,…

Remove useless graph of clone. Scan inputs and outputs aren't modified inplace, so multiple scan can share them.
上级 bab9388f
......@@ -1983,10 +1983,8 @@ class Scan(PureOp):
if self.truncate_gradient != -1:
grad_steps = tensor.minimum(grad_steps, self.truncate_gradient)
rval = scan_utils.reconstruct_graph(self.inputs,
self.outputs)
self_inputs = rval[0]
self_outputs = rval[1]
self_inputs = self.inputs
self_outputs = self.outputs
# differentiable inputs
diff_inputs = (self.inner_seqs(self_inputs) +
self.inner_mitmot(self_inputs) +
......@@ -2645,13 +2643,13 @@ class Scan(PureOp):
return gradients
def R_op(self, inputs, eval_points):
# Step 0. Don't work on the orignal tensor variables
rval = scan_utils.reconstruct_graph(self.inputs,
self.outputs, '_rop')
self_inputs = rval[0]
rop_of_inputs = rval[0][:self.n_seqs + self.n_outs] + \
rval[0][self.n_seqs + self.n_outs + self.n_shared_outs:]
self_outputs = rval[1]
# Step 0. Prepare some shortcut variable
self_inputs = self.inputs
rop_of_inputs = (self_inputs[:self.n_seqs + self.n_outs] +
self_inputs[self.n_seqs + self.n_outs +
self.n_shared_outs:])
self_outputs = self.outputs
# Step 1. Compute the R_op of the inner function
inner_eval_points = [scan_utils.safe_new(x, '_evalpoint')
for x in rop_of_inputs]
......
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