コード例 #1
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def cnn_regressor(data_shape, filter_length, stride=1):
    """Get simple 1 Layer 1D-CNN for time-series regression.

    :arg data_shape: The shape of the input data in the shape format of
     (timesteps, features)
    :type data_shape: tuple
    :arg filter_length: The length of the 1D CNN filter which to CC over data
    :type filter_length: int
    :arg stride: The steps between filters (default = 1)
    :type stride: int
    :return: neural network graph
    :rtype: networkx.MultiDigGraph
    """
    graph = nx.MultiDiGraph()
    data_shape = data_shape
    filter_shape = (filter_length, data_shape[1])
    stride = [stride, data_shape[1]]
    # creating window expression so we know how many nodes we need
    windows = CC().windex(data_shape, filter_shape, stride)

    # INPUTS
    graph.add_node("x", group=0, node=Rotate())
    graph.add_node("y", group=0, node=Rotate())

    # 1D CNN/ CC
    graph.add_node("1D-CC",
                   group=1,
                   node=CC(weights=filter_shape, stride=stride, bias=0))
    graph.add_edge("x", "1D-CC")
    graph.add_node("CC-dequeue", group=6, node=Dequeue())
    graph.add_edge("1D-CC", "CC-dequeue")
    graph.add_node("CC-enqueue", group=6, node=Enqueue(length=len(windows)))
    for i in range(len(windows)):
        graph.add_node("CC-sop-{}".format(i), group=1, node=Sum())
        graph.add_edge("CC-dequeue", "CC-sop-{}".format(i))
        graph.add_edge("CC-sop-{}".format(i), "CC-enqueue")
    graph.add_node("CNN-acti", group=1, node=RELU())
    graph.add_edge("CC-enqueue", "CNN-acti")

    # DENSE
    graph.add_node("Dense", group=2, node=ANN(weights=(len(windows), )))
    graph.add_edge("CNN-acti", "Dense", weight=ANN().cost)
    graph.add_node("Dense-acti", group=2, node=RELU())
    graph.add_edge("Dense", "Dense-acti")
    graph.add_node("Decrypt", group=5, node=Decrypt())
    graph.add_edge("Dense-acti", "Decrypt")
    graph.add_node("Selector", group=6, node=Selector(backward=[1, 0]))
    graph.add_edge("Decrypt", "Selector")

    # LOSS
    graph.add_node("MSE", group=3, node=MSE())
    graph.add_edge("Selector", "MSE", weight=MSE().cost)
    graph.add_edge("y", "MSE", weight=MSE().cost)

    # OUTPUT
    graph.add_node("y_hat", group=4, node=IO())
    graph.add_edge("Selector", "y_hat", weight=IO().cost)

    return graph
コード例 #2
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 def test_flatten(self):
     """Check that flattening occurs as expected."""
     node = Rotate(flatten=True)
     x = np.ones((28, 28))
     flattened = node.forward(x)
     np.testing.assert_array_almost_equal(flattened,
                                          x.flatten(),
                                          decimal=4,
                                          verbose=True)
コード例 #3
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 def test_forward_plain_sum(self):
     """Check rotation sums desired axis."""
     x = self.data
     node = Rotate(sum_axis=1)
     plaintext = node.forward(x)
     self.assertIsInstance(plaintext, np.ndarray)
     np.testing.assert_array_almost_equal(plaintext,
                                          x,
                                          decimal=4,
                                          verbose=True)
コード例 #4
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 def test_forward_plain(self):
     """Check lack of encryption without params."""
     x = self.data
     node = Rotate()
     plaintext = node.forward(x)
     self.assertIsInstance(plaintext, np.ndarray)
     np.testing.assert_array_almost_equal(plaintext,
                                          x,
                                          decimal=4,
                                          verbose=True)
コード例 #5
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 def test_backward(self):
     """Check gradients are mapped."""
     node = Rotate()
     grad = np.array([1, 2, 3])
     local_grad = node.backward(grad)
     # gradient input should be the same as gradient output as mapped
     np.testing.assert_array_almost_equal(local_grad,
                                          grad,
                                          decimal=1,
                                          verbose=True)
コード例 #6
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 def test_forward_decrypt(self):
     """Decrypt forward pass without re-encryption."""
     x = self.data
     cypher = ReArray(x, self.reseal_args)
     node = Rotate()
     plaintext = node.forward(cypher)
     self.assertIsInstance(plaintext, np.ndarray)
     np.testing.assert_array_almost_equal(plaintext,
                                          x,
                                          decimal=4,
                                          verbose=True)
コード例 #7
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 def test_forward_with_encryptor(self):
     """Check cyphertext is generated from encryptor properly."""
     plaintext = self.data
     encryptor = ReArray(np.array([1]), **self.reseal_args)
     node = Rotate(encryptor=encryptor)
     cyphertext = node.forward(plaintext)
     self.assertIsInstance(cyphertext, ReArray)
     x = np.array(cyphertext)
     np.testing.assert_array_almost_equal(x,
                                          plaintext,
                                          decimal=4,
                                          verbose=True)
コード例 #8
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 def test_forward(self):
     """Check encryption is successfull with given params."""
     x = self.data
     node = Rotate(provider=ReArray, **self.reseal_args)
     cyphertext = node.forward(x)
     # check parameters are exactly as provided
     # check cyphertext is expected type
     self.assertIsInstance(cyphertext, ReArray)
     # decyrpt again manually
     plaintext = np.array(cyphertext)
     np.testing.assert_array_almost_equal(plaintext,
                                          x,
                                          decimal=4,
                                          verbose=True)
コード例 #9
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 def test_forward_rotation(self):
     """Check that encryption parameters have been changed, on axis."""
     x = self.data
     encryptor = ReArray(
         np.array([1]),
         {
             "scheme": 2,  # seal.scheme_type.CKK,
             "poly_modulus_degree": 8192 * 2,  # 438
             # "coefficient_modulus": [60, 40, 40, 60],
             "coefficient_modulus": [45, 30, 30, 30, 30, 45
                                     ],  # coefficient mod length of 6
             "scale": pow(2.0, 30),
             "cache": True,
         })
     node = Rotate(encryptor=encryptor)
     cyphertext_in = ReArray(x, **self.reseal_args)
     cyphertext_out = node.forward(cyphertext_in)
     self.assertIsInstance(cyphertext_out, ReArray)
     out_cm = cyphertext_out.cyphertext[0].coefficient_modulus
     in_cm = cyphertext_in.cyphertext[0].coefficient_modulus
     self.assertNotEqual(in_cm, out_cm)
コード例 #10
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def milky(**kwargs):
    """Get prefabricated milk graph."""
    g = cnn_regressor(**kwargs)
    # sideloading our additional contextual nodes
    g.add_node("Context", node=Rotate())
    g.add_node("Context-enqueue", group=6, node=Enqueue())
    g.add_edge("Context", "Context-enqueue")
    # removing existing edge which we want to interject
    g.remove_edge("CNN-acti", "Dense")
    # sewing back together the graph
    g.add_edge("Context-enqueue", "Dense")
    g.add_edge("CNN-acti", "Context-enqueue")
    return g
コード例 #11
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 def test_forward_encrypt_axis(self):
     x = self.data
     axis = 1
     encryptor = ReArray(
         np.array([1]),
         {
             "scheme": 2,  # seal.scheme_type.CKK,
             "poly_modulus_degree": 8192 * 2,  # 438
             # "coefficient_modulus": [60, 40, 40, 60],
             "coefficient_modulus": [45, 30, 30, 30, 30, 45
                                     ],  # coefficient mod length of 6
             "scale": pow(2.0, 30),
             "cache": True,
         })
     node = Rotate(encryptor=encryptor, axis=1)
     cyphertext_in = ReArray(x, **self.reseal_args)
     cyphertext_lst_out = node.forward(cyphertext_in)
     self.assertIsInstance(cyphertext_lst_out, list)
     self.assertIsInstance(cyphertext_lst_out[0], ReArray)
     np.testing.assert_array_almost_equal(cyphertext_lst_out,
                                          cyphertext_in,
                                          decimal=4,
                                          verbose=True)
コード例 #12
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def basic():
    """Get a super basic graph for purposes of testing components.

    .. note::

        This is not a useful graph outside of unit-tests and validation,
        as it does not represent any form of useful network for solving any
        particular problem.
    """
    graph = nx.MultiDiGraph()
    graph.add_node("x_0", group=0, node=Rotate())
    graph.add_node("x_1", group=0, node=Rotate())

    graph.add_node("c_0", group=1, node=ANN(weights=(1, )))
    graph.add_edge("x_0", "c_0")

    graph.add_node("c_1", group=1, node=ANN(weights=(2, )))
    graph.add_edge("c_0", "c_1")
    graph.add_edge("x_1", "c_1")

    graph.add_node("r_0", group=2, node=Rotate())
    graph.add_edge("c_1", "r_0")

    graph.add_node("y_0", group=0, node=Rotate())
    graph.add_node("c_2", group=1, node=ANN(weights=(2, )))
    graph.add_edge("r_0", "c_2")
    graph.add_edge("y_0", "c_2")

    graph.add_node("d_0", group=3, node=Decrypt())
    graph.add_edge("c_2", "d_0")

    graph.add_node("c_3", group=1, node=ANN(weights=(2, )))
    graph.add_edge("c_2", "c_3")

    graph.add_node("d_1", group=3, node=Decrypt())
    graph.add_edge("c_3", "d_1")
    return graph
コード例 #13
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def cnn_classifier(k):
    """Get simple 1 Layer CNN, with K number of densenets -> softmax -> CCE."""
    graph = nx.MultiDiGraph()
    classes = np.arange(k)

    # add nodes to graph with names (for easy human referencing),
    # and objects for what those nodes are
    graph.add_node("x", group=0, node=Rotate())

    data_shape = (28, 28)
    cnn_weights_shape = (6, 6)
    stride = [4, 4]
    windows = CC().windex(data_shape, cnn_weights_shape, stride)

    # CONSTRUCT CNN
    # with intermediary decrypted sum to save on some complexity later
    graph.add_node("CC-products",
                   group=1,
                   node=CC(weights=cnn_weights_shape, stride=stride, bias=0))
    graph.add_edge("x", "CC-products")
    graph.add_node("CC-dequeue", group=6, node=Dequeue(length=len(windows)))
    graph.add_edge("CC-products", "CC-dequeue")
    graph.add_node("CC-enqueue", group=6, node=Enqueue(length=len(windows)))
    for i in range(len(windows)):
        graph.add_node("Rotate-{}".format(i),
                       group=5,
                       node=Rotate(axis=1, flatten=True))
        graph.add_edge("CC-dequeue", "Rotate-{}".format(i))
        graph.add_node("CC-sop-{}".format(i), group=1, node=Sum())
        graph.add_edge("Rotate-{}".format(i),
                       "CC-sop-{}".format(i),
                       weight=Sum().cost)
        graph.add_edge("CC-sop-{}".format(i), "CC-enqueue")
    graph.add_node("CNN-RELU", group=1, node=RELU(q=10))
    graph.add_edge("CC-enqueue", "CNN-RELU")
    graph.add_node("CNN-distribute", group=6, node=Distributor())
    graph.add_edge("CNN-RELU", "CNN-distribute")
    # graph.add_edge("CNN-enqueue", "CNN-activation", weight=RELU().cost)

    # CONSTRUCT DENSE FOR EACH CLASS
    # we want to get the network to regress some prediction one for each class
    graph.add_node("Dense-enqueue", group=6, node=Enqueue(length=k))
    for i in classes:
        graph.add_node("Dense-{}".format(i),
                       group=2,
                       node=ANN(weights=(len(windows), )))
        graph.add_edge("CNN-distribute", "Dense-{}".format(i))
        graph.add_node("Dense-RELU-{}".format(i), group=2, node=RELU(q=10))
        graph.add_edge("Dense-{}".format(i), "Dense-RELU-{}".format(i))
        graph.add_edge("Dense-RELU-{}".format(i), "Dense-enqueue")
    graph.add_node("Decrypt", group=5, node=Decrypt())
    graph.add_edge("Dense-enqueue", "Decrypt")

    # CONSTRUCT SELECTOR TO SELECT COMPUTATIONAL CIRCUITS
    # we need to be able to select different computational circuits depending
    # on the receptor so we can say infer, or train, and so we can also
    # selectiveley backpropagate through only one circuit and ignore the other
    graph.add_node("Selector", group=6, node=Selector(backward=[1, 0]))
    graph.add_edge("Decrypt", "Selector")

    # CONSTRUCT CLASSIFIER
    # we want to turn the dense outputs into classification probabilities
    # using softmax and how wrong / right we are using Categorical
    # Cross-Entropy(CCE) as our loss function
    graph.add_node("Softmax", group=3, node=Softmax())
    graph.add_edge("Selector", "Softmax")
    # graph.add_edge("Dense-enqueue", "Softmax", weight=Softmax().cost)
    graph.add_node("Loss-CCE", group=3, node=CCE())
    graph.add_edge("Softmax", "Loss-CCE", weight=3)
    graph.add_node("One-hot-encoder",
                   group=0,
                   node=OneHotEncode(length=len(classes)))
    graph.add_edge("One-hot-encoder", "Loss-CCE", weight=0)
    graph.add_node("y", group=0, node=IO())
    graph.add_edge("y", "One-hot-encoder", weight=OneHotEncode().cost)

    graph.add_node("Argmax", group=4, node=Argmax())
    graph.add_edge("Selector", "Argmax")
    # graph.add_edge("Dense-enqueue", "Argmax", weight=Argmax().cost)
    graph.add_node("One-hot-decoder", group=4, node=OneHotDecode())
    graph.add_edge("Argmax", "One-hot-decoder", weight=OneHotDecode().cost)
    graph.add_node("y_hat", group=4, node=IO())
    graph.add_edge("One-hot-decoder", "y_hat", weight=0)
    return graph