コード例 #1
0
def pwc(model: Model, gen: Generator, instr: Instruction) -> Dict:
    """
    Solve the equation of motion (Lindblad or Schrรถdinger) for a given control
    signal and Hamiltonians.

    Parameters
    ----------
    signal: dict
        Waveform of the control signal per drive line.
    gate: str
        Identifier for one of the gates.

    Returns
    -------
    unitary
        Matrix representation of the gate.
    """
    signal = gen.generate_signals(instr)
    # Why do I get 0.0 if I print gen.resolution here?! FR
    ts = []
    if model.controllability:
        h0, hctrls = model.get_Hamiltonians()
        signals = []
        hks = []
        for key in signal:
            signals.append(signal[key]["values"])
            ts = signal[key]["ts"]
            hks.append(hctrls[key])
        signals = tf.cast(signals, tf.complex128)
        hks = tf.cast(hks, tf.complex128)
    else:
        h0 = model.get_Hamiltonian(signal)
        ts_list = [sig["ts"][1:] for sig in signal.values()]
        ts = tf.constant(tf.math.reduce_mean(ts_list, axis=0))
        hks = None
        signals = None
        if not np.all(
            tf.math.reduce_variance(ts_list, axis=0) < 1e-5 * (ts[1] - ts[0])
        ):
            raise Exception("C3Error:Something with the times happend.")
        if not np.all(
            tf.math.reduce_variance(ts[1:] - ts[:-1]) < 1e-5 * (ts[1] - ts[0])
        ):
            raise Exception("C3Error:Something with the times happend.")

    dt = tf.constant(ts[1].numpy() - ts[0].numpy(), dtype=tf.complex128)

    batch_size = tf.constant(len(h0), tf.int32)

    dUs = tf_batch_propagate(h0, hks, signals, dt, batch_size=batch_size)

    U = tf_matmul_left(tf.cast(dUs, tf.complex128))

    if model.max_excitations:
        U = model.blowup_excitations(tf_matmul_left(tf.cast(dUs, tf.complex128)))
        dUs = tf.vectorized_map(model.blowup_excitations, dUs)

    return {"U": U, "dUs": dUs, "ts": ts}
コード例 #2
0
def _get_hs_of_t_ts_controlled(
    model: Model, gen: Generator, instr: Instruction, prop_res=1
) -> Dict:
    """
    Return a Dict containing:

    - a list of

      H(t) = H_0 + sum_k c_k H_k.

    - time slices ts

    - timestep dt

    Parameters
    ----------
    prop_res : tf.float
        resolution required by the propagation method
    h0 : tf.tensor
        Drift Hamiltonian.
    hks : list of tf.tensor
        List of control Hamiltonians.
    cflds_t : array of tf.float
        Vector of control field values at time t.
    ts : float
        Length of one time slice.
    """
    Hs = []
    ts = []
    gen.resolution = prop_res * gen.resolution
    signal = gen.generate_signals(instr)
    h0, hctrls = model.get_Hamiltonians()
    signals = []
    hks = []
    for key in signal:
        signals.append(signal[key]["values"])
        ts = signal[key]["ts"]
        hks.append(hctrls[key])
    cflds = tf.cast(signals, tf.complex128)
    hks = tf.cast(hks, tf.complex128)
    for ii in range(cflds[0].shape[0]):
        cf_t = []
        for fields in cflds:
            cf_t.append(tf.cast(fields[ii], tf.complex128))
        Hs.append(sum_h0_hks(h0, hks, cf_t))

    dt = tf.constant(ts[1 * prop_res].numpy() - ts[0].numpy(), dtype=tf.complex128)
    return {"Hs": Hs, "ts": ts[::prop_res], "dt": dt}
コード例 #3
0
confusion_row2 = Quantity(value=val2, min_val=min, max_val=max, unit="")
conf_matrix = ConfusionMatrix(Q1=confusion_row1, Q2=confusion_row2)

init_temp = 50e-3
init_ground = InitialiseGround(init_temp=Quantity(
    value=init_temp, min_val=-0.001, max_val=0.22, unit="K"))

model = Model(
    [S],  # Individual, self-contained components
    [drive],  # Interactions between components
    [conf_matrix, init_ground],  # SPAM processing
)

model.set_dressed(False)

hdrift, hks = model.get_Hamiltonians()


@pytest.mark.unit
def test_SNAIL_eigenfrequencies_1() -> None:
    "Eigenfrequency of SNAIL"
    assert (hdrift[1, 1] - hdrift[0, 0] == freq_S * 2 * np.pi
            )  # for the 0.2dev version, comment out the 2 pi


# TODO: Check full hamiltonian


@pytest.mark.unit
def test_three_wave_mixer_properties() -> None:
    "Test if the values of the three wave mixer element are assigned correctly"