# 初始化器(Initializer) ## Python API 普遍使用的参数初始化方法(tensor对象)。 示例用法: ```python from singa import tensor from singa import initializer x = tensor.Tensor((3, 5)) initializer.uniform(x, 3, 5) # use both fan_in and fan_out initializer.uniform(x, 3, 0) # use only fan_in ``` --- #### singa.initializer.uniform(t, fan_in=0, fan_out=0) 按照指定均匀分布对输入tensor初始化。 **参数:** - **fan_in (int)** – 对于卷积层权重tensor,fan_in = nb_channel * kh * kw;对于全连接层,fan_in = input_feature_length - **fan_out (int)** – 对于卷积层权重tensor,fan_out = nb_filter * kh * kw;对于全连接层,fan_out = output_feature_length **参考文献** [Bengio and Glorot 2010]: Understanding the difficulty of training deep feedforward neuralnetworks. --- #### singa.initializer.gaussian(t, fan_in=0, fan_out=0) 按照指定高斯分布对输入tensor初始化。 **参数:** - **fan_in (int)** – 对于卷积层权重tensor,fan_in = nb_channel * kh * kw;对于全连接层,fan_in = input_feature_length - **fan_out (int)** – 对于卷积层权重tensor,fan_out = nb_filter * kh * kw;对于全连接层,fan_out = output_feature_length **参考文献** Kaiming He, Xiangyu Zhang, Shaoqing Ren, Jian Sun: Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification ---