Пример #1
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def test_rbm_pseudo_likelihood():
    new_rbm = rbm.RBM()

    samples = torch.ones(1, 128)

    pl = new_rbm.pseudo_likelihood(samples)

    assert pl.detach().numpy() < 0
Пример #2
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def test_rbm_energy():
    new_rbm = rbm.RBM()

    samples = torch.ones(1, 128)

    energy = new_rbm.energy(samples)

    assert energy.detach().numpy() < 0
Пример #3
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def test_rbm_forward():
    new_rbm = rbm.RBM()

    v = torch.ones(1, 128)

    probs = new_rbm.forward(v)

    assert probs.size(1) == 128
Пример #4
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def test_rbm_b_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.b = 1
    except:
        new_rbm.b = torch.nn.Parameter(torch.zeros(128))

    assert new_rbm.b.size(0) == 128
Пример #5
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def test_rbm_optimizer_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.optimizer = 'OPT'
    except:
        new_rbm.optimizer = torch.optim.SGD(new_rbm.parameters(), lr=0.1)

    assert type(new_rbm.optimizer).__name__ == 'SGD'
Пример #6
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def test_rbm_visible_sampling():
    new_rbm = rbm.RBM()

    h = torch.ones(1, 128)

    probs, states = new_rbm.visible_sampling(h)

    assert probs.size(1) == 128
    assert states.size(1) == 128
Пример #7
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def test_rbm_hidden_sampling():
    new_rbm = rbm.RBM()

    v = torch.ones(1, 128)

    probs, states = new_rbm.hidden_sampling(v)

    assert probs.size(1) == 128
    assert states.size(1) == 128
Пример #8
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def test_rbm_W_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.W = 1
    except:
        new_rbm.W = torch.nn.Parameter(torch.randn(128, 128) * 0.01)

    assert new_rbm.W.size(0) == 128
    assert new_rbm.W.size(1) == 128
Пример #9
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def test_rbm_T_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.T = "a"
    except:
        new_rbm.T = 0.1

    assert new_rbm.T == 0.1

    try:
        new_rbm.T = -1
    except:
        new_rbm.T = 0.1

    assert new_rbm.T == 0.1
Пример #10
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def test_rbm_decay_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.decay = "a"
    except:
        new_rbm.decay = 0.1

    assert new_rbm.decay == 0.1

    try:
        new_rbm.decay = -1
    except:
        new_rbm.decay = 0.1

    assert new_rbm.decay == 0.1
Пример #11
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def test_rbm_lr_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.lr = "a"
    except:
        new_rbm.lr = 0.1

    assert new_rbm.lr == 0.1

    try:
        new_rbm.lr = -1
    except:
        new_rbm.lr = 0.1

    assert new_rbm.lr == 0.1
Пример #12
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def test_rbm_steps_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.steps = "a"
    except:
        new_rbm.steps = 1

    assert new_rbm.steps == 1

    try:
        new_rbm.steps = 0
    except:
        new_rbm.steps = 1

    assert new_rbm.steps == 1
Пример #13
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def test_rbm_n_visible_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.n_visible = "a"
    except:
        new_rbm.n_visible = 1

    assert new_rbm.n_visible == 1

    try:
        new_rbm.n_visible = 0
    except:
        new_rbm.n_visible = 1

    assert new_rbm.n_visible == 1
Пример #14
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def test_rbm_n_hidden_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.n_hidden = "a"
    except:
        new_rbm.n_hidden = 1

    assert new_rbm.n_hidden == 1

    try:
        new_rbm.n_hidden = 0
    except:
        new_rbm.n_hidden = 1

    assert new_rbm.n_hidden == 1
Пример #15
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def test_rbm_momentum_setter():
    new_rbm = rbm.RBM()

    try:
        new_rbm.momentum = "a"
    except:
        new_rbm.momentum = 0.1

    assert new_rbm.momentum == 0.1

    try:
        new_rbm.momentum = -1
    except:
        new_rbm.momentum = 0.1

    assert new_rbm.momentum == 0.1
Пример #16
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def test_rbm_reconstruct():
    test = torchvision.datasets.KMNIST(
        root='./data',
        train=False,
        download=True,
        transform=torchvision.transforms.ToTensor())

    new_rbm = rbm.RBM(n_visible=784,
                      n_hidden=128,
                      steps=1,
                      learning_rate=0.1,
                      momentum=0,
                      decay=0,
                      temperature=1,
                      use_gpu=False)

    e, v = new_rbm.reconstruct(test)

    assert e >= 0
    assert v.size(1) == 784
Пример #17
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def test_rbm_fit():
    train = torchvision.datasets.KMNIST(
        root='./data',
        train=True,
        download=True,
        transform=torchvision.transforms.ToTensor())

    new_rbm = rbm.RBM(n_visible=784,
                      n_hidden=128,
                      steps=1,
                      learning_rate=0.1,
                      momentum=0,
                      decay=0,
                      temperature=1,
                      use_gpu=False)

    e, pl = new_rbm.fit(train, batch_size=128, epochs=1)

    assert e >= 0
    assert pl <= 0
Пример #18
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def test_rbm_n_visible():
    new_rbm = rbm.RBM()

    assert new_rbm.n_visible == 128
Пример #19
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def test_rbm_steps():
    new_rbm = rbm.RBM()

    assert new_rbm.steps == 1
Пример #20
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def test_rbm_n_hidden():
    new_rbm = rbm.RBM()

    assert new_rbm.n_hidden == 128
Пример #21
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def test_rbm_a():
    new_rbm = rbm.RBM()

    assert new_rbm.a.size(0) == 128
Пример #22
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def test_rbm_T():
    new_rbm = rbm.RBM()

    assert new_rbm.T == 1
Пример #23
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def test_rbm_decay():
    new_rbm = rbm.RBM()

    assert new_rbm.decay == 0
Пример #24
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def test_rbm_optimizer_setter():
    new_rbm = rbm.RBM()

    new_rbm.optimizer = torch.optim.SGD(new_rbm.parameters(), lr=0.1)

    assert type(new_rbm.optimizer).__name__ == "SGD"
Пример #25
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def test_rbm_optimizer():
    new_rbm = rbm.RBM()

    assert type(new_rbm.optimizer).__name__ == "SGD"
Пример #26
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def test_rbm_b():
    new_rbm = rbm.RBM()

    assert new_rbm.b.size(0) == 128
Пример #27
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def test_rbm_lr():
    new_rbm = rbm.RBM()

    assert new_rbm.lr == 0.1
Пример #28
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def test_rbm_momentum():
    new_rbm = rbm.RBM()

    assert new_rbm.momentum == 0
Пример #29
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def test_rbm_W():
    new_rbm = rbm.RBM()

    assert new_rbm.W.size(0) == 128
    assert new_rbm.W.size(1) == 128