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Paddle/python/paddle/v2/optimizer.py

59 lines
2.1 KiB

import py_paddle.swig_paddle as swig_api
import paddle.trainer_config_helpers.optimizers as v1_optimizers
import paddle.trainer_config_helpers.config_parser_utils as config_parser_utils
import paddle.v2
__all__ = ['Adam', 'Adamax']
class Optimizer(object):
def __init__(self, **kwargs):
if 'batch_size' in kwargs:
del kwargs['batch_size'] # not important for python library.
def __impl__():
v1_optimizers.settings(batch_size=1, **kwargs)
self.__opt_conf_proto__ = config_parser_utils.parse_optimizer_config(
__impl__)
self.__opt_conf__ = swig_api.OptimizationConfig.createFromProto(
self.__opt_conf_proto__)
def enable_types(self):
"""
get enable_types for each optimizer.
enable_types = [value, gradient, momentum, etc]
For each optimizer(SGD, Adam), GradientMachine should enable different
buffers.
"""
tmp = swig_api.ParameterOptimizer.create(self.__opt_conf__)
assert isinstance(tmp, swig_api.ParameterOptimizer)
return tmp.getParameterTypes()
def create_local_updater(self):
return swig_api.ParameterUpdater.createLocalUpdater(self.__opt_conf__)
def create_remote_updater(self, pass_num):
return swig_api.ParameterUpdater.createRemoteUpdater(self.__opt_conf__,
pass_num)
class Adam(Optimizer):
def __init__(self, beta1=0.9, beta2=0.999, epsilon=1e-8, **kwargs):
learning_method = v1_optimizers.AdamOptimizer(
beta1=beta1, beta2=beta2, epsilon=epsilon)
super(Adam, self).__init__(learning_method=learning_method, **kwargs)
class Adamax(Optimizer):
def __init__(self, beta1=0.9, beta2=0.999, **kwargs):
learning_method = v1_optimizers.AdamaxOptimizer(
beta1=beta1, beta2=beta2)
super(Adamax, self).__init__(learning_method=learning_method, **kwargs)
if __name__ == '__main__':
swig_api.initPaddle('--use_gpu=false')
opt = paddle.v2.optimizer.Adam()
print opt.enable_types()