require 'nn' net = nn.Sequential() net:add(nn.SpatialConvolution(3, 6, 5, 5)) -- 1 input image channel, 6 output channels, 5x5 convolution kernel net:add(nn.ReLU()) -- non-linearity net:add(nn.SpatialMaxPooling(2,2,2,2)) -- A max-pooling operation that looks at 2x2 windows and finds the max. net:add(nn.SpatialConvolution(6, 16, 5, 5)) net:add(nn.ReLU()) -- non-linearity net:add(nn.SpatialMaxPooling(2,2,2,2)) net:add(nn.View(16*5*5)) -- reshapes from a 3D tensor of 16x5x5 into 1D tensor of 16*5*5 net:add(nn.Linear(16*5*5, 120)) -- fully connected layer (matrix multiplication between input and weights) net:add(nn.ReLU()) -- non-linearity net:add(nn.Linear(120, 84)) net:add(nn.ReLU()) -- non-linearity net:add(nn.Linear(84, 10)) -- 10 is the number of outputs of the network (in this case, 10 digits) net:add(nn.LogSoftMax())