# *****START OF YOUR CODE (DO NOT DELETE/MODIFY THIS LINE)***** pass # *****END OF YOUR CODE (DO NOT DELETE/MODIFY THIS LINE)***** from .layers import * from .fast_layers import * def affine_relu_forward(x, w, b): """ Convenience layer that perorms an affine transform followed by a ReLU Inputs: - x: Input to the affine layer - w, b: Weights for the affine layer Returns a tuple of: - out: Output from the ReLU - cache: Object to give to the backward pass """ a, fc_cache = affine_forward(x, w, b) out, relu_cache = relu_forward(a) cache = (fc_cache, relu_cache) return out, cache def affine_relu_backward(dout, cache): """ Backward pass for the affine-relu convenience layer """ fc_cache, relu_cache = cache da = relu_backward(dout, relu_cache) dx, dw, db = affine_backward(da, fc_cache) return dx, dw, db def conv_relu_forward(x, w, b, conv_param): """ A convenience layer that performs a convolution followed by a ReLU. Inputs: - x: Input to the convolutional layer - w, b, conv_param: Weights and parameters for the convolutional layer Returns a tuple of: - out: Output from the ReLU - cache: Object to give to the backward pass """ a, conv_cache = conv_forward_fast(x, w, b, conv_param) out, relu_cache = relu_forward(a) cache = (conv_cache, relu_cache) return out, cache def conv_relu_backward(dout, cache): """ Backward pass for the conv-relu convenience layer. """ conv_cache, relu_cache = cache da = relu_backward(dout, relu_cache) dx, dw, db = conv_backward_fast(da, conv_cache) return dx, dw, db def conv_bn_relu_forward(x, w, b, gamma, beta, conv_param, bn_param): a, conv_cache = conv_forward_fast(x, w, b, conv_param) an, bn_cache = spatial_batchnorm_forward(a, gamma, beta, bn_param) out, relu_cache = relu_forward(an) cache = (conv_cache, bn_cache, relu_cache) return out, cache def conv_bn_relu_backward(dout, cache): conv_cache, bn_cache, relu_cache = cache dan = relu_backward(dout, relu_cache) da, dgamma, dbeta = spatial_batchnorm_backward(dan, bn_cache) dx, dw, db = conv_backward_fast(da, conv_cache) return dx, dw, db, dgamma, dbeta def conv_relu_pool_forward(x, w, b, conv_param, pool_param): """ Convenience layer that performs a convolution, a ReLU, and a pool. Inputs: - x: Input to the convolutional layer - w, b, conv_param: Weights and parameters for the convolutional layer - pool_param: Parameters for the pooling layer Returns a tuple of: - out: Output from the pooling layer - cache: Object to give to the backward pass """ a, conv_cache = conv_forward_fast(x, w, b, conv_param) s, relu_cache = relu_forward(a) out, pool_cache = max_pool_forward_fast(s, pool_param) cache = (conv_cache, relu_cache, pool_cache) return out, cache def conv_relu_pool_backward(dout, cache): """ Backward pass for the conv-relu-pool convenience layer """ conv_cache, relu_cache, pool_cache = cache ds = max_pool_backward_fast(dout, pool_cache) da = relu_backward(ds, relu_cache) dx, dw, db = conv_backward_fast(da, conv_cache) return dx, dw, db