示例#1
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def evaluate_4TTN(params, training_data, ancilla, total, rounding):
    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = initial_encode(training_data[i, :L], ancilla)
        """Stage 1: Unitaries on all of the qubits, ancilla or not"""
        for j in range(total):
            psi = np.matmul(ry(params[j], j, total), psi)
            """Stage 2: CNOT plus unitary for N-1 times (cascading)"""
        j = 0
        psi = np.matmul(cnot(j, j + 1, total), psi)
        psi = np.matmul(ry(params[total], j + 1, total), psi)
        j = 3
        psi = np.matmul(cnot(j, j - 1, total), psi)
        psi = np.matmul(ry(params[total + 1], j - 1, total), psi)
        j = 1
        psi = np.matmul(cnot(j, j + 1, total), psi)
        psi = np.matmul(ry(params[total + 2], j + 1, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_n(psi, total, 2))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)
    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#2
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def evaluate_MPS_a(params, training_data, ancilla, total, rounding):
    """ UNITARIES ON ALL FOLLOWED BY CASCADE OF CNOT(a,b) and unitary on b """

    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = np.real(initial_encode2(training_data[i, :L], ancilla))
        psi = np.reshape(psi, (2**total, 1))

        for j in range(total - ancilla - 1):
            psi = np.matmul(
                three_Q(params[6 * j], params[6 * j + 1], params[6 * j + 2],
                        params[6 * j + 3], params[6 * j + 4],
                        params[6 * j + 5], j, total), psi)

        psi = np.matmul(
            ry(params[6 * (total - ancilla - 1)], total - 1, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_last(psi, total))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#3
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def evaluate_MPS(params, training_data, ancilla, total, rounding):
    """ UNITARIES ON ALL FOLLOWED BY CASCADE OF CNOT(a,b) and unitary on b """

    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = np.real(initial_encode2(training_data[i, :L], ancilla))
        psi = np.reshape(psi, (2**total, 1))
        """Stage 1: Unitaries on all of the qubits, ancilla or not"""
        for j in range(total):
            psi = np.matmul(ry(params[j], j, total), psi)
            """Stage 2: CNOT plus unitary for N-1 times (cascading)"""
        for j in range(total - 1):
            psi = np.matmul(cnot(j, j + 1, total), psi)
            psi = np.matmul(ry(params[total + j], j + 1, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_last(psi, total))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#4
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def evaluate_MPS_double(params, training_data, ancilla, total, rounding):
    """ LIKE MPS BUT DOUBLE THE CNOTS IN EACH CASCADE"""
    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = np.real(initial_encode2(training_data[i, :L], ancilla))
        psi = np.reshape(psi, (2**total, 1))

        for j in range(total - 1):
            psi = np.matmul(
                two_Q(params[4 * j], params[4 * j + 1], j, 'down', total), psi)
            psi = np.matmul(
                two_Q(params[4 * j + 2], params[4 * j + 3], j, 'down', total),
                psi)
        psi = np.matmul(ry(params[4 * total - 4], total - 1, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_last(psi, total))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#5
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def evaluate_MPS_yz(params, training_data, ancilla, total, rounding):
    """ AS MPS BUT INITIAL UNITARIES ARE ALL RZ,RY,RZ FORM """
    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    lst = list(range(total - 1))
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = np.real(initial_encode2(training_data[i, :L], ancilla))
        psi = np.reshape(psi, (2**total, 1))
        """Stage 1: Unitaries on all of the qubits, ancilla or not"""
        for j in range(total):
            psi = np.matmul(rz(params[j], j, total), psi)
        for j in range(total):
            psi = np.matmul(ry(params[j + total], j, total), psi)
        for j in range(total):
            psi = np.matmul(rz(params[j + (total * 2)], j, total), psi)
            """Stage 2: CNOT plus unitary for N-1 times (cascading)"""
        for j in range(total - 1):
            psi = np.matmul(cnot(j, j + 1, total), psi)
            psi = np.matmul(ry(params[total * 3 + j], j + 1, total), psi)
        """Stage 3: Trace and Measure"""
        dm = np.kron(np.transpose(np.conjugate(psi)), psi)
        dm = np.reshape(dm, (2**total, 2**total))
        dm = partial_trace(dm, lst)
        # print(dm)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(dm)
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
def PEPS_3(params, training_data, ancilla, total, rounding):
    """Requires 27 parameters. """

    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """Stage 1: The top left five block"""
        """Encoding 4-3-2-1 + ancilla"""
        psi = np.real(initial_encode(training_data[i, :L], 0))
        psi = np.reshape(psi, (2**L, 1))

        psi = np.matmul(two_Q_2(params[0], params[1], 0, 1, total), psi)
        psi = np.matmul(two_Q_2(params[2], params[3], 2, 1, total), psi)
        psi = np.matmul(two_Q_2(params[4], params[5], 1, 4, total), psi)
        psi = np.matmul(two_Q_2(params[6], params[7], 0, 3, total), psi)
        psi = np.matmul(two_Q_2(params[8], params[9], 6, 3, total), psi)
        psi = np.matmul(two_Q_2(params[10], params[11], 3, 4, total), psi)
        psi = np.matmul(two_Q_2(params[12], params[13], 6, 7, total), psi)
        psi = np.matmul(two_Q_2(params[14], params[15], 8, 7, total), psi)
        psi = np.matmul(two_Q_2(params[16], params[17], 7, 4, total), psi)
        psi = np.matmul(two_Q_2(params[18], params[19], 2, 5, total), psi)
        psi = np.matmul(two_Q_2(params[20], params[21], 8, 5, total), psi)
        psi = np.matmul(two_Q_2(params[22], params[23], 5, 2, total), psi)

        psi = np.matmul(ry(params[24], 4, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_n(psi, total, 4))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#7
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def evaluate_MPS_xyz(params, training_data, ancilla, total, rounding):
    """ LIKE MPS BUT EACH SINGLE UNITARY IS A DIFFERENT TYPE"""
    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """FOR EACH DATA POINT"""
        """Lets Encode the data elements first"""

        psi = np.real(initial_encode2(training_data[i, :L], ancilla))
        psi = np.reshape(psi, (2**total, 1))

        for j in range(total - 1):
            psi = np.matmul(ry(params[3 * j], j, total), psi)
            psi = np.matmul(ry(params[3 * j + 1], j + 1, total), psi)
            psi = np.matmul(cnot(j, j + 1, total), psi)
            psi = np.matmul(rz(params[3 * j + 2], j + 1, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_last(psi, total))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost
示例#8
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def PEPS9(params, training_data, ancilla, rounding):
    """Requires 27 parameters. """

    answers = np.zeros(training_data.shape[0])
    L = training_data.shape[1] - 1
    for i in range(training_data.shape[0]):
        """Stage 1: The top left five block"""
        """Encoding 4-3-2-1 + ancilla"""
        psi = np.real(initial_encode(np.flipud(training_data[i, :4]), 0))
        psi = np.kron(psi, np.array([1, 0]))
        psi = np.reshape(psi, (2**5, 1))
        total = 5

        for j in range(3):
            psi = np.matmul(
                two_Q(params[2 * j], params[(2 * j) + 1], 3 - j, 'down',
                      total), psi)

        psi = np.matmul(swap(0, 1, total), psi)

        for j in range(2):
            psi = np.matmul(
                two_Q(params[2 * j + 6], params[2 * j + 7], 1 + j, 'down',
                      total), psi)
        """NB: Adding the bottom five qubits now"""
        psi = np.kron(psi, initial_encode(training_data[i, 4:9], 0))

        total = 10
        psi = np.reshape(psi, (2**total, 1))
        """Qubits 1 and 5 (on sheet) require a swap and swap back"""
        psi = np.matmul(swap(3, 4, total), psi)

        psi = np.matmul(two_Q(params[10], params[11], 4, 'down', total), psi)

        psi = np.matmul(swap(3, 4, total), psi)

        psi = np.matmul(two_Q(params[12], params[13], 5, 'up', total), psi)

        psi = np.matmul(swap(4, 5, total), psi)
        psi = np.matmul(swap(5, 6, total), psi)
        psi = np.matmul(swap(4, 5, total), psi)

        psi = np.matmul(two_Q(params[14], params[15], 5, 'up', total), psi)

        psi = np.matmul(swap(5, 6, total), psi)

        psi = np.matmul(two_Q(params[16], params[17], 6, 'down', total), psi)

        psi = np.matmul(swap(2, 3, total), psi)
        psi = np.matmul(swap(3, 4, total), psi)
        psi = np.matmul(swap(4, 5, total), psi)
        psi = np.matmul(swap(5, 6, total), psi)

        psi = np.matmul(two_Q(params[18], params[19], 6, 'down', total), psi)

        psi = np.matmul(two_Q(params[20], params[21], 7, 'down', total), psi)

        psi = np.matmul(swap(1, 2, total), psi)
        psi = np.matmul(swap(2, 3, total), psi)
        psi = np.matmul(swap(3, 4, total), psi)
        psi = np.matmul(swap(4, 5, total), psi)
        psi = np.matmul(swap(5, 6, total), psi)
        psi = np.matmul(swap(6, 7, total), psi)

        psi = np.matmul(two_Q(params[22], params[23], 7, 'down', total), psi)

        psi = np.matmul(two_Q(params[24], params[25], 8, 'down', total), psi)

        psi = np.matmul(ry(params[26], 9, total), psi)
        """Stage 3: Trace and Measure"""
        zero_prob = prob_zero(keep_last(psi, total))
        """Stage 4: Calculate Cost"""
        answers[i] = eval_cost(zero_prob, training_data[i, L], rounding)

    total_cost = np.sum(answers) / training_data.shape[0]
    return total_cost