I have trained a network using MXnet, but am not sure how I can save and load the parameters for later use. First I define and train the network:

    dataIn = mx.sym.var('data')
    fc1 = mx.symbol.FullyConnected(data=dataIn, num_hidden=100)
    act1 = mx.sym.Activation(data=fc1, act_type="relu")
    fc2 = mx.symbol.FullyConnected(data=act1, num_hidden=50)
    act2 = mx.sym.Activation(data=fc2, act_type="relu")
    fc3 = mx.symbol.FullyConnected(data=act2, num_hidden=25)
    act3 = mx.sym.Activation(data=fc3, act_type="relu")
    fc4 = mx.symbol.FullyConnected(data=act3, num_hidden=10)
    act4 = mx.sym.Activation(data=fc4, act_type="relu")
    fc5 = mx.symbol.FullyConnected(data=act4, num_hidden=2)
    lenet = mx.sym.SoftmaxOutput(data=fc5, name='softmax',normalization = 'batch')

# create iterator around training and validation data
train_iter = mx.io.NDArrayIter(data=data[:ntrain], label = phen[:ntrain],batch_size=batch_size, shuffle=True)
val_iter = mx.io.NDArrayIter(data=data[ntrain:], label=phen[ntrain:], batch_size=batch_size)

# create a trainable module on GPU 0
lenet_model = mx.mod.Module(symbol=lenet, context=mx.gpu())
# train with the same
                batch_end_callback = mx.callback.Speedometer(batch_size, 10),

This model performs well on the test set, so I want to keep it. Next, I save the network layout and the parameterization:


All the documentation I can find on loading the network seem to have implemented the save function within the training routine, to save the network parameters at the end of each epoch. I haven't set these checkpoints during the training process Other methods use the mx.model.FeedForward class, which doesn't seem appropriate. Still other methods load the network from a .json file, which I don't have as a result of my save functions. How can I save/load a network after it's already finished training?

1 Answer 1


You just have to do this instead to save:

lenet_model.save_checkpoint('lenet', num_epoch, save_optimizer_states=True)

This would create 3 files if the states flag is set to True else 2 files:

.params (weights), .json (symbol), .states

And this to load:

lenet_model = mx.mod.Module.load(prefix,epoch)
lenet_model.bind(for_training=False, data_shapes=[('data', (1,3,224,224))])

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