sampleなどはCentOS7で実施 ($ python3 xxxx.py)

layers   #!/usr/bin/env python3   # layers.py   import numpy as np   from functions import *   from util import im2col, col2im class Sigmoid:    def __init__(self):    self.out = None    def forward(self, x):    out = sigmoid(x)    self.out = out    return out    def backward(self, dout):    dx = dout * (1.0 - self.out) * self.out    return dx class Relu:    def __init__(self):    self.mask = None    # True/FalseからなるNumPy配列    def forward(self, x):    self.mask = (x <= 0) # 全角あり    out = x.copy()    out[self.mask] = 0    return out    def backward(self, dout):    dout[self.mask] = 0    dx = dout    return dx class Affine:    def __init__(self, W, b):    self.W =W    self.b = b    self.x = None    self.original_x_shape = None    # 重み・バイアスパラメータの微分    self.dW = None    self.db = None    def forward(self, x):    # テンソル対応    self.original_x_shape = x.shape    x = x.reshape(x.shape[0], -1)    self.x = x    out = np.dot(self.x, self.W) + self.b    return out    def backward(self, dout):    dx = np.dot(dout, self.W.T)    self.dW = np.dot(self.x.T, dout)    self.db = np.sum(dout, axis=0)    dx = dx.reshape(*self.original_x_shape)    # 入力データの形状に戻す(テンソル対応)    return dx class SoftmaxWithLoss:    def __init__(self):    self.loss = None    # 損失    self.y = None    # softmaxの出力    self.t = None    # 教師データ    def forward(self, x, t):    self.t = t    self.y = softmax(x)    self.loss = cross_entropy_error(self.y, self.t)    return self.loss    def backward(self, dout=1):    batch_size = self.t.shape[0]    if self.t.size == self.y.size:    # 教師データがone-hot-vectorの場合    dx = (self.y - self.t) / batch_size    else:    dx = self.y.copy()    dx[np.arange(batch_size), self.t] -= 1    dx = dx / batch_size    return dx class Dropout:    def __init__(self, dropout_ratio=0.5):    self.dropout_ratio = dropout_ratio    self.mask = None    def forward(self, x, train_flg=True):    if train_flg:    self.mask = np.random.rand(*x.shape) > self.dropout_ratio    return x * self.mask    else:    return x * (1.0 - self.dropout_ratio)    def backward(self, dout):    return dout * self.mask class BatchNormalization:    def __init__(self, gamma, beta, momentum=0.9, running_mean=None, running_var=None):    self.gamma = gamma    self.beta = beta    self.momentum = momentum    self.input_shape = None # Conv層の場合は4次元、全結合層の場合は2次元    # テスト時に使用する平均と分散    self.running_mean = running_mean    self.running_var = running_var    # backward時に使用する中間データ    self.batch_size = None    self.xc = None    self.std = None    self.dgamma = None    self.dbeta = None    def forward(self, x, train_flg=True):    self.input_shape = x.shape    if x.ndim != 2:    N, C, H, W = x.shape    x = x.reshape(N, -1)    out = self.__forward(x, train_flg)    return out.reshape(*self.input_shape)    def __forward(self, x, train_flg):    if self.running_mean is None:    N, D = x.shape    self.running_mean = np.zeros(D)    self.running_var = np.zeros(D)    if train_flg:    mu = x.mean(axis=0)    xc = x - mu    var = np.mean(xc**2, axis=0)    std = np.sqrt(var + 10e-7)    xn = xc / std    self.batch_size = x.shape[0]    self.xc = xc    self.xn = xn    self.std = std    self.running_mean = self.momentum * self.running_mean + (1-self.momentum) * mu    self.running_var = self.momentum * self.running_var + (1-self.momentum) * var    else:    xc = x - self.running_mean    xn = xc / ((np.sqrt(self.running_var + 10e-7)))    out = self.gamma * xn + self.beta    return out    def backward(self, dout):    if dout.ndim != 2:    N, C, H, W = dout.shape    dout = dout.reshape(N, -1)    dx = self.__backward(dout)    dx = dx.reshape(*self.input_shape)    return dx    def __backward(self, dout):    dbeta = dout.sum(axis=0)    dgamma = np.sum(self.xn * dout, axis=0)    dxn = self.gamma * dout    dxc = dxn / self.std    dstd = -np.sum((dxn * self.xc) / (self.std * self.std), axis=0)    dvar = 0.5 * dstd / self.std    dxc += (2.0 / self.batch_size) * self.xc * dvar    dmu = np.sum(dxc, axis=0)    dx = dxc - dmu / self.batch_size    self.dgamma = dgamma    self.dbeta = dbeta    return dx   class Convolution:    def __init__(self, W, b, stride=1, pad=0):    self.W = W    # 引数、フィルター(重み)、4次元形状(FN,C,FH,FW)    self.b = b    # 引数、バイアス    self.stride = stride    # 引数、ストライド    self.pad = pad    # 引数、パディング    # 中間データ(backward時に使用)    self.x = None    self.col = None    self.col_W = None    # 重み・バイアスパラメータの勾配    self.dW = None    self.db = None    def forward(self, x):    FN, C, FH, FW = self.W.shape    N, C, H, W = x.shape    out_h = 1 + int((H + 2*self.pad - FH) / self.stride)    out_w = 1 + int((W + 2*self.pad - FW) / self.stride)    col = im2col(x, FH, FW, self.stride, self.pad)    # 入力データを展開    col_W = self.W.reshape(FN, -1).T    # フィルター(重み)を2次元配列に展開    # reshape(FN, -1):多次元の要素配列を整形    # 形状(10,3,5,5)が、reshape(10, -1)で、形状(10,75)に整形    out = np.dot(col, col_W) + self.b    out = out.reshape(N, out_h, out_w, -1).transpose(0, 3, 1, 2)    # transpose:多次元配列の軸の順番を入れ替える。(0,1,2,3)順を、(0,3,1,2)に入れ替える。    self.x = x    self.col = col    self.col_W = col_W    return out    def backward(self, dout):    FN, C, FH, FW = self.W.shape    dout = dout.transpose(0,2,3,1).reshape(-1, FN)    self.db = np.sum(dout, axis=0)    self.dW = np.dot(self.col.T, dout)    self.dW = self.dW.transpose(1, 0).reshape(FN, C, FH, FW)    dcol = np.dot(dout, self.col_W.T)    dx = col2im(dcol, self.x.shape, FH, FW, self.stride, self.pad)    return dx   class Pooling:    def __init__(self, pool_h, pool_w, stride=1, pad=0):    self.pool_h = pool_h    self.pool_w = pool_w    self.stride = stride    self.pad = pad    self.x = None    self.arg_max = None    def forward(self, x):    N, C, H, W = x.shape    out_h = int(1 + (H - self.pool_h) / self.stride)    out_w = int(1 + (W - self.pool_w) / self.stride)    # 展開    col = im2col(x, self.pool_h, self.pool_w, self.stride, self.pad)    col = col.reshape(-1, self.pool_h*self.pool_w)    arg_max = np.argmax(col, axis=1)    # 最大値    out = np.max(col, axis=1)    # 整形    out = out.reshape(N, out_h, out_w, C).transpose(0, 3, 1, 2)    self.x = x    self.arg_max = arg_max    return out    def backward(self, dout):    dout = dout.transpose(0, 2, 3, 1)    pool_size = self.pool_h * self.pool_w    dmax = np.zeros((dout.size, pool_size))    dmax[np.arange(self.arg_max.size), self.arg_max.flatten()] = dout.flatten()    dmax = dmax.reshape(dout.shape + (pool_size,))    dcol = dmax.reshape(dmax.shape[0] * dmax.shape[1] * dmax.shape[2], -1)    dx = col2im(dcol, self.x.shape, self.pool_h, self.pool_w, self.stride, self.pad)    return dx   class MulLayer: # 乗算レイヤ    def __init__(self):    self.x = None    self.y = None       def forward(self, x, y):    self.x = x    # backward()用に保持する。    self.y = y    out = x * y    return out    def backward(self, dout):    # 上流から伝わってきた微分(dout)    dx = dout * self.y    # x と y がひっくり返る。    dy = dout * self.x    return dx, dy  class MulLayer: # 加算レイヤ    def __init__(self):    pass    # 命令「何もしない」    def forward(self, x, y):    out = x + y    return out    def backward(self, dout):    dx = dout * 1    # 上流から伝わってきた微分(dout)をそのまま下流に流す。    dy = dout * 1    return dx, dy