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Paddle/python/paddle/v2/fluid/evaluator.py

191 lines
6.0 KiB

import numpy as np
from paddle.v2.fluid.framework import Program, g_main_program, unique_name, Variable
import paddle.v2.fluid.core as core
def _clone_var_in_block_(block, var):
assert isinstance(var, Variable)
return block.create_var(
name=var.name,
shape=var.shape,
dtype=var.dtype,
type=var.type,
lod_level=var.lod_level,
persistable=True)
class Evaluator(object):
"""
Evalutor Base class.
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create metric states
add mini-batch evaluator caculate operator
add increment operator to accumulate the metric states
"""
def __init__(self, name, **kwargs):
"""
init the global states
"""
self._states = {}
if kwargs.has_key("main_program"):
self._main_program = kwargs.get("main_program")
else:
self._main_program = g_main_program
def states(self):
return self._states
def _update_ops(self, *args, **kwargs):
"""
append update ops to the global states
"""
raise NotImplementedError()
def reset(self, executor, reset_program=None):
"""
Clear metric states at the begin of each pass/user specified batch
"""
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if reset_program == None:
reset_program = Program()
else:
reset_program = program
block = reset_program.global_block()
for k, var in self._states.iteritems():
g_var = _clone_var_in_block_(block, var)
zeros = block.create_var(dtype="float32", persistable=True)
block.append_op(
type="fill_constant",
outputs={"Out": [zeros]},
attrs={
"shape": g_var.shape,
"value": .0,
"dtype": 5,
})
block.append_op(
type="scale", inputs={"X": zeros}, outputs={"Out": g_var})
executor.run(reset_program, fetch_list=self._states.values())
def eval(self, executor, eval_program=None):
"""
Merge the mini-batch statistics to form the evaluation result for multiple mini-batches.
"""
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raise NotImplementedError()
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class Accuracy(Evaluator):
"""
Accuracy need two state variable Total, Correct
"""
def __init__(self, *args, **kwargs):
super(Accuracy, self).__init__("accuracy", **kwargs)
block = self._main_program.global_block()
g_total = block.create_var(
name=unique_name("Total"),
persistable=True,
dtype="int64",
shape=[1])
g_correct = block.create_var(
name=unique_name("Correct"),
persistable=True,
dtype="int64",
shape=[1])
self._states["Total"] = g_total
self._states["Correct"] = g_correct
def _update_ops(self, input, label, k=1, **kwargs):
block = self._main_program.global_block()
topk_out = block.create_var(dtype=input.dtype)
topk_indices = block.create_var(dtype="int64")
block.append_op(
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type="top_k",
inputs={"X": [input]},
outputs={"Out": [topk_out],
"Indices": [topk_indices]},
attrs={"k": k})
acc_out = block.create_var(dtype=kwargs.get("out_dtype", "float32"))
correct = block.create_var(dtype="int64", persistable=True)
total = block.create_var(dtype="int64", persistable=True)
block.append_op(
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type="accuracy",
inputs={
"Out": [topk_out],
"Indices": [topk_indices],
"Label": [label]
},
outputs={
"Accuracy": [acc_out],
"Correct": [correct],
"Total": [total],
})
block.append_op(
type="cast",
inputs={"X": [self._states["Total"]]},
outputs={"Out": [self._states["Total"]]},
attrs={
"in_dtype": 5, # float32
"out_dtype": 2, # int32
})
block.append_op(
type="cast",
inputs={"X": [self._states["Correct"]]},
outputs={"Out": [self._states["Correct"]]},
attrs={
"in_dtype": 5,
"out_dtype": 2,
})
block.append_op(
type="elementwise_add",
inputs={"X": [self._states["Total"]],
"Y": [total]},
outputs={"Out": [self._states["Total"]]})
block.append_op(
type="elementwise_add",
inputs={"X": [self._states["Correct"]],
"Y": [correct]},
outputs={"Out": [self._states["Correct"]]})
return acc_out
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def eval(self, executor, eval_program=None):
if eval_program != None:
eval_program = eval_program
else:
eval_program = Program()
block = eval_program.global_block()
eval_out = block.create_var(dtype=self._states["Total"].dtype)
e_total = _clone_var_in_block_(block, self._states["Total"])
e_correct = _clone_var_in_block_(block, self._states["Correct"])
block.append_op(
type="cast",
inputs={"X": [e_total]},
outputs={"Out": [e_total]},
attrs={
"in_dtype": 2, # int32
"out_dtype": 5, # float32
})
block.append_op(
type="cast",
inputs={"X": [e_correct]},
outputs={"Out": [e_correct]},
attrs={
"in_dtype": 2,
"out_dtype": 5,
})
block.append_op(
type="elementwise_div",
inputs={"X": e_correct,
"Y": e_total},
outputs={"Out": eval_out})
out = executor.run(eval_program, fetch_list=[eval_out])
return np.array(out[0])
def accuracy(*args, **kwargs):
cls = Accuracy(*args, **kwargs)
out = cls._update_ops(*args, **kwargs)
return cls, out