未验证 提交 c2ad3815 编写于 作者: Y Yu Yang 提交者: GitHub

Merge pull request #11560 from JiayiFeng/doc_non_layer_api

Doc of non layer api
...@@ -36,6 +36,25 @@ def _is_number_or_matrix_(var): ...@@ -36,6 +36,25 @@ def _is_number_or_matrix_(var):
class WeightedAverage(object): class WeightedAverage(object):
"""
Calculate weighted average.
The average calculating is accomplished via Python totally.
They do not change Paddle's Program, nor do anything to
modify NN model's configuration. They are completely
wrappers of Python functions.
Examples:
.. code-block:: python
avg = fluid.average.WeightedAverage()
avg.add(value=2.0, weight=1)
avg.add(value=4.0, weight=2)
avg.eval()
# The result is 3.333333333.
# For (2.0 * 1 + 4.0 * 2) / (1 + 2) = 3.333333333
"""
def __init__(self): def __init__(self):
warnings.warn( warnings.warn(
"The %s is deprecated, please use fluid.metrics.Accuracy instead." % "The %s is deprecated, please use fluid.metrics.Accuracy instead." %
......
...@@ -147,7 +147,7 @@ def _addup_repetitive_outputs_(op_descs): ...@@ -147,7 +147,7 @@ def _addup_repetitive_outputs_(op_descs):
else: else:
if len(renamed_vars[var_name]) == 1: if len(renamed_vars[var_name]) == 1:
new_name = var_name + "@RENAME@" + \ new_name = var_name + "@RENAME@" + \
str(var_rename_count[var_name]) str(var_rename_count[var_name])
var_rename_count[var_name] += 1 var_rename_count[var_name] += 1
# rename original var_name # rename original var_name
renamed_vars[var_name][0] = new_name renamed_vars[var_name][0] = new_name
...@@ -155,7 +155,7 @@ def _addup_repetitive_outputs_(op_descs): ...@@ -155,7 +155,7 @@ def _addup_repetitive_outputs_(op_descs):
_rename_arg_(pending_sum_ops, var_name, new_name) _rename_arg_(pending_sum_ops, var_name, new_name)
new_name = var_name + "@RENAME@" + \ new_name = var_name + "@RENAME@" + \
str(var_rename_count[var_name]) str(var_rename_count[var_name])
var_rename_count[var_name] += 1 var_rename_count[var_name] += 1
op_desc.rename_output(var_name, new_name) op_desc.rename_output(var_name, new_name)
renamed_vars[var_name].append(new_name) renamed_vars[var_name].append(new_name)
...@@ -435,18 +435,65 @@ def _get_stop_gradients_(program): ...@@ -435,18 +435,65 @@ def _get_stop_gradients_(program):
def append_backward(loss, parameter_list=None, no_grad_set=None, def append_backward(loss, parameter_list=None, no_grad_set=None,
callbacks=None): callbacks=None):
""" """
Append backward part to main_program Append backward part to main_program.
Args: A complete neural network training is made up of forward and backward
loss(Variable): The variable generated by cost function. propagation. However, when we configure a network, we only need to
parameter_list(list[string]): Parameters that need to be updated by specify its forwrd part. The backward part is generated automatically
optimizer. If None, it means all parameters need to be updated. according to the forward part by this function.
no_grad_set(set): Variables that have no gradients in Block 0.
All variables with `step_gradient=True` from all blocks will be
automatically added.
Return: In most cases, users do not need to invoke this function manually. It
(list[(Variable,Variable)]): list of (parameter, gradient) pair. will be automatically invoked by the optimizer's `minimize` function.
Args:
loss(Variable): The loss variable of the network.
parameter_list(list[string]|None): Names of parameters that need
to be updated by optimizers.
If it is None, all parameters
will be updated.
Default: None
no_grad_set(set|None): Variables in the Block 0 whose gradients
should be ignored. All variables with
`step_gradient=True` from all blocks will
be automatically added into this set.
Default: None
callbacks(list[callable object]|None): The callbacks are used for
doing some custom jobs during
backward part building. All
callable objects in it will
be invoked once each time a
new gradient operator is added
into the program. The callable
object must has two input
parameters: 'block' and 'context'.
The 'block' is the block which
the new gradient operator will
be added to. The 'context' is a
map, whose keys are gradient
variable names and values are
corresponding original variables.
In addition to this, the 'context'
has another special key-value pair:
the key is string '__current_op_desc__'
and the value is the op_desc of the
gradient operator who has just
triggered the callable object.
Returns:
list[(Variable,Variable)]: Pairs of parameter and its
corresponding gradients. The key is the parameter and the
value is gradient variable.
Raises:
AssertionError: If `loss` is not an instance of Variable.
Examples:
.. code-block:: python
# network configuration code
# ...
avg_loss = fluid.layers.mean(loss)
param_grad_list = fluid.backward.append_backward(loss=avg_loss)
""" """
assert isinstance(loss, framework.Variable) assert isinstance(loss, framework.Variable)
......
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