Example #1
0
    def from_weights(cls, layers, weights, biases):
        """
        Создание агента по параметрам его нейронной сети. Разбираться не обязательно.
        """
        agent = SimpleCarAgent()
        agent._rays = weights[0].shape[1] - 4
        nn = Network(layers, output_function=lambda x: x, output_derivative=lambda x: 1)

        if len(weights) != len(nn.weights):
            raise AssertionError("You provided %d weight matrices instead of %d" % (len(weights), len(nn.weights)))
        for i, (w, right_w) in enumerate(zip(weights, nn.weights)):
            if w.shape != right_w.shape:
                raise AssertionError("weights[%d].shape = %s instead of %s" % (i, w.shape, right_w.shape))
        nn.weights = weights

        if len(biases) != len(nn.biases):
            raise AssertionError("You provided %d bias vectors instead of %d" % (len(weights), len(nn.weights)))
        for i, (b, right_b) in enumerate(zip(biases, nn.biases)):
            if b.shape != right_b.shape:
                raise AssertionError("biases[%d].shape = %s instead of %s" % (i, b.shape, right_b.shape))
        nn.biases = biases

        agent.neural_net = nn

        return agent
Example #2
0
    def from_weights(cls, layers, weights, biases):
        """
        Создание агента по параметрам его нейронной сети. Разбираться не обязательно.
        """
        agent = SimpleCarAgent()
        agent._rays = weights[0].shape[1] - 4
        nn = Network(layers,
                     output_function=lambda x: x,
                     output_derivative=lambda x: 1)

        if len(weights) != len(nn.weights):
            raise AssertionError(
                "You provided %d weight matrices instead of %d" %
                (len(weights), len(nn.weights)))
        for i, (w, right_w) in enumerate(zip(weights, nn.weights)):
            if w.shape != right_w.shape:
                raise AssertionError("weights[%d].shape = %s instead of %s" %
                                     (i, w.shape, right_w.shape))
        nn.weights = weights

        if len(biases) != len(nn.biases):
            raise AssertionError("You provided %d bias vectors instead of %d" %
                                 (len(weights), len(nn.weights)))
        for i, (b, right_b) in enumerate(zip(biases, nn.biases)):
            if b.shape != right_b.shape:
                raise AssertionError("biases[%d].shape = %s instead of %s" %
                                     (i, b.shape, right_b.shape))
        nn.biases = biases

        agent.neural_net = nn

        return agent
Example #3
0
    def from_weights(cls, layers: List[int], weights, biases):
        """
        Creates agent by neural network params.
        """
        agent = SimpleCarAgent()
        agent._rays = weights[0].shape[1] - NUM_DEFAULT_INPUT_NEURONS
        nn = Network(layers,
                     output_function=lambda x: x,
                     output_derivative=lambda x: 1)

        if len(weights) != len(nn.weights):
            raise AssertionError(
                "You provided %d weight matrices instead of %d" %
                (len(weights), len(nn.weights)))
        for i, (w, right_w) in enumerate(zip(weights, nn.weights)):
            if w.shape != right_w.shape:
                raise AssertionError("weights[%d].shape = %s instead of %s" %
                                     (i, w.shape, right_w.shape))
        nn.weights = weights

        if len(biases) != len(nn.biases):
            raise AssertionError("You provided %d bias vectors instead of %d" %
                                 (len(weights), len(nn.weights)))
        for i, (b, right_b) in enumerate(zip(biases, nn.biases)):
            if b.shape != right_b.shape:
                raise AssertionError("biases[%d].shape = %s instead of %s" %
                                     (i, b.shape, right_b.shape))
        nn.biases = biases

        agent.neural_net = nn

        return agent