SGDOptimizer

class paddle.fluid.optimizer.SGDOptimizer(learning_rate, parameter_list=None, regularization=None, name=None)[源代码]

该接口实现随机梯度下降算法的优化器

\[\begin{split}\\param\_out=param-learning\_rate*grad\\\end{split}\]
参数:
  • learning_rate (float|Variable) - 用于更新参数的学习率。可以是浮点值,也可以是具有一个浮点值作为数据元素的变量。
  • parameter_list (list, 可选) - 指定优化器需要优化的参数。在动态图模式下必须提供该参数;在静态图模式下默认值为None,这时所有的参数都将被优化。
  • regularization - 一个正则化器,例如 fluid.regularizer.L2DecayRegularizer
  • name (str, 可选) - 可选的名称前缀,一般无需设置,默认值为None。

代码示例

import paddle
import paddle.fluid as fluid
import numpy as np

place = fluid.CPUPlace()
main = fluid.Program()
with fluid.program_guard(main):
    x = fluid.layers.data(name='x', shape=[13], dtype='float32')
    y = fluid.layers.data(name='y', shape=[1], dtype='float32')
    y_predict = fluid.layers.fc(input=x, size=1, act=None)
    cost = fluid.layers.square_error_cost(input=y_predict, label=y)
    avg_cost = fluid.layers.mean(cost)

    sgd_optimizer = fluid.optimizer.SGD(learning_rate=0.001)
    sgd_optimizer.minimize(avg_cost)

    fetch_list = [avg_cost]
    train_reader = paddle.batch(
        paddle.dataset.uci_housing.train(), batch_size=1)
    feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())
    for data in train_reader():
        exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)
minimize(loss, startup_program=None, parameter_list=None, no_grad_set=None, grad_clip=None)

为网络添加反向计算过程,并根据反向计算所得的梯度,更新parameter_list中的Parameters,最小化网络损失值loss。

参数:
  • loss (Variable) – 需要最小化的损失值变量
  • startup_program (Program, 可选) – 用于初始化parameter_list中参数的 Program , 默认值为None,此时将使用 default_startup_program
  • parameter_list (list, 可选) – 待更新的Parameter或者Parameter.name组成的列表, 默认值为None,此时将更新所有的Parameter
  • no_grad_set (set, 可选) – 不需要更新的Parameter或者Parameter.name组成的集合,默认值为None
  • grad_clip (GradClipBase, 可选) – 梯度裁剪的策略,静态图模式不需要使用本参数,当前本参数只支持在dygraph模式下的梯度裁剪,未来本参数可能会调整,默认值为None

返回: (optimize_ops, params_grads),数据类型为(list, list),其中optimize_ops是minimize接口为网络添加的OP列表,params_grads是一个由(param, grad)变量对组成的列表,param是Parameter,grad是该Parameter对应的梯度值

返回类型: tuple

代码示例

import paddle
import paddle.fluid as fluid
import numpy as np

place = fluid.CPUPlace()
main = fluid.Program()
with fluid.program_guard(main):
    x = fluid.layers.data(name='x', shape=[13], dtype='float32')
    y = fluid.layers.data(name='y', shape=[1], dtype='float32')
    y_predict = fluid.layers.fc(input=x, size=1, act=None)
    cost = fluid.layers.square_error_cost(input=y_predict, label=y)
    avg_cost = fluid.layers.mean(cost)

    sgd_optimizer = fluid.optimizer.SGD(learning_rate=0.001)
    sgd_optimizer.minimize(avg_cost)

    fetch_list = [avg_cost]
    train_reader = paddle.batch(
        paddle.dataset.uci_housing.train(), batch_size=1)
    feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())
    for data in train_reader():
        exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)
clear_gradients()

注意:

1. 该API只在 Dygraph 模式下生效

清除需要优化的参数的梯度。

代码示例

import paddle.fluid as fluid
import numpy as np

with fluid.dygraph.guard():
    value = np.arange(26).reshape(2, 13).astype("float32")
    a = fluid.dygraph.to_variable(value)
    linear = fluid.Linear(13, 5, dtype="float32")
    optimizer = fluid.optimizer.SGDOptimizer(learning_rate=0.01,
                                  parameter_list=linear.parameters())
    out = linear(a)
    out.backward()
    optimizer.minimize(out)
    optimizer.clear_gradients()
current_step_lr()

注意:

1. 该API只在 Dygraph 模式下生效

获取当前步骤的学习率。当不使用LearningRateDecay时,每次调用的返回值都相同,否则返回当前步骤的学习率。

返回:当前步骤的学习率。

返回类型:float

代码示例

import paddle.fluid as fluid
import numpy as np

# example1: LearningRateDecay is not used, return value is all the same
with fluid.dygraph.guard():
    emb = fluid.dygraph.Embedding([10, 10])
    adam = fluid.optimizer.Adam(0.001, parameter_list = emb.parameters())
    lr = adam.current_step_lr()
    print(lr) # 0.001

# example2: PiecewiseDecay is used, return the step learning rate
with fluid.dygraph.guard():
    inp = np.random.uniform(-0.1, 0.1, [10, 10]).astype("float32")
    linear = fluid.dygraph.nn.Linear(10, 10)
    inp = fluid.dygraph.to_variable(inp)
    out = linear(inp)
    loss = fluid.layers.reduce_mean(out)

    bd = [2, 4, 6, 8]
    value = [0.2, 0.4, 0.6, 0.8, 1.0]
    adam = fluid.optimizer.Adam(fluid.dygraph.PiecewiseDecay(bd, value, 0),
                       parameter_list=linear.parameters())

    # first step: learning rate is 0.2
    np.allclose(adam.current_step_lr(), 0.2, rtol=1e-06, atol=0.0) # True

    # learning rate for different steps
    ret = [0.2, 0.2, 0.4, 0.4, 0.6, 0.6, 0.8, 0.8, 1.0, 1.0, 1.0, 1.0]
    for i in range(12):
        adam.minimize(loss)
        lr = adam.current_step_lr()
        np.allclose(lr, ret[i], rtol=1e-06, atol=0.0) # True