Esempio n. 1
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def onHostTest():
    from PuzzleLib.Containers import Sequential
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten, Linear

    from PuzzleLib.Cost.CrossEntropy import CrossEntropy

    data = np.random.randn(50000, 3, 28, 28).astype(np.float32)
    dataTarget = np.random.randint(low=0, high=10,
                                   size=(50000, )).astype(np.int32)

    seq = Sequential()
    seq.append(Conv2D(3, 16, 9))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Conv2D(16, 32, 5))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Flatten())
    seq.append(Linear(3 * 3 * 32, 10))

    entr = CrossEntropy()

    val = Validator(seq, entr)
    val.validateFromHost(data, dataTarget)
    print("Validation error on big data: %s" % val.error)
Esempio n. 2
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def buildNet():
    from PuzzleLib.Containers import Sequential
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten, Linear

    seq = Sequential()
    seq.append(Conv2D(3, 32, 5, pad=2, wscale=0.0001, initscheme="gaussian"))
    seq.append(MaxPool2D(3, 2))
    seq.append(Activation(relu))

    seq.append(Conv2D(32, 32, 5, pad=2, wscale=0.01, initscheme="gaussian"))
    seq.append(MaxPool2D(3, 2))
    seq.append(Activation(relu))

    seq.append(Conv2D(32, 64, 5, pad=2, wscale=0.01, initscheme="gaussian"))
    seq.append(MaxPool2D(3, 2))
    seq.append(Activation(relu))

    seq.append(Flatten())
    seq.append(
        Linear(seq.dataShapeFrom((1, 3, 32, 32))[1],
               64,
               wscale=0.1,
               initscheme="gaussian"))
    seq.append(Activation(relu))

    seq.append(Linear(64, 10, wscale=0.1, initscheme="gaussian"))
    return seq
Esempio n. 3
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def onDeviceTest():
    from PuzzleLib.Containers import Sequential
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten, Linear

    from PuzzleLib.Cost.CrossEntropy import CrossEntropy
    from PuzzleLib.Optimizers.NesterovSGD import NesterovSGD

    data = gpuarray.to_gpu(
        np.random.randn(10000, 3, 28, 28).astype(np.float32))
    dataTarget = gpuarray.to_gpu(
        np.random.randint(low=0, high=10, size=(10000, )).astype(np.int32))

    seq = Sequential()
    seq.append(Conv2D(3, 16, 9))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Conv2D(16, 32, 5))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Flatten())
    seq.append(Linear(3 * 3 * 32, 10))

    entr = CrossEntropy()

    opt = NesterovSGD()
    opt.setupOn(seq)

    def onBatchFinish(train):
        print("Finished batch #%d, error=%s" %
              (train.currBatch, train.cost.getError()))

    trainer = Trainer(seq, entr, opt, onBatchFinish=onBatchFinish)
    trainer.train(data, dataTarget)
Esempio n. 4
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def buildNet():
    from PuzzleLib.Containers import Sequential
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten, Linear

    seq = Sequential(name="lenet-5-like")
    seq.append(Conv2D(1, 16, 3))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Conv2D(16, 32, 4))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Flatten())
    seq.append(Linear(32 * 5 * 5, 1024))
    seq.append(Activation(relu))

    seq.append(Linear(1024, 10))
    return seq
Esempio n. 5
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def onDeviceTest():
    from PuzzleLib.Containers import Sequential
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten, Linear

    data = gpuarray.to_gpu(
        np.random.randn(10000, 3, 28, 28).astype(np.float32))

    seq = Sequential()
    seq.append(Conv2D(3, 16, 9))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Conv2D(16, 32, 5))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Flatten())
    seq.append(Linear(3 * 3 * 32, 10))

    calc = Calculator(seq)
    calc.onBatchFinish = lambda calculator: print("Finished batch #%d" %
                                                  calculator.currBatch)
    calc.calc(data)
Esempio n. 6
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def complexNetTest():
    from PuzzleLib.Modules import Conv2D, MaxPool2D, Activation, relu, Flatten

    data = gpuarray.to_gpu(
        np.random.randn(128, 3, 150, 150).astype(np.float32))

    seq = Sequential()

    seq.append(Conv2D(3, 16, 11))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Conv2D(16, 16, 5))
    seq.append(MaxPool2D())
    seq.append(Activation(relu))

    seq.append(Flatten())

    seq(data)

    grad = gpuarray.to_gpu(np.random.randn(*seq.data.shape).astype(np.float32))
    seq.backward(grad)
    seq.updateParams(1e-4)