Beispiel #1
0
    def __init__(self, func, times, *, n_states, n_theta, t0=0):
        if not callable(func):
            raise ValueError("Argument func must be callable.")
        if n_states < 1:
            raise ValueError("Argument n_states must be at least 1.")
        if n_theta <= 0:
            raise ValueError("Argument n_theta must be positive.")

        # Public
        self.func = func
        self.t0 = t0
        self.times = tuple(times)
        self.n_times = len(times)
        self.n_states = n_states
        self.n_theta = n_theta
        self.n_p = n_states + n_theta

        # Private
        self._augmented_times = np.insert(times, 0, t0).astype(floatX)
        self._augmented_func = utils.augment_system(func, self.n_states,
                                                    self.n_theta)
        self._sens_ic = utils.make_sens_ic(self.n_states, self.n_theta, floatX)

        # Cache symbolic sensitivities by the hash of inputs
        self._apply_nodes = {}
        self._output_sensitivities = {}
Beispiel #2
0
def test_gradients():
    """Tests the computation of the sensitivities from the Aesara computation graph"""

    # ODE system for which to compute gradients
    def ode_func(y, t, p):
        return np.exp(-t) - p[0] * y[0]

    # Computation of graidients with Aesara
    augmented_ode_func = augment_system(ode_func, 1, 1 + 1)

    # This is the new system, ODE + Sensitivities, which will be integrated
    def augmented_system(Y, t, p):
        dydt, ddt_dydp = augmented_ode_func(Y[:1], t, p, Y[1:])
        derivatives = np.concatenate([dydt, ddt_dydp])
        return derivatives

    # Create real sensitivities
    y0 = 0.0
    t = np.arange(0, 12, 0.25).reshape(-1, 1)
    a = 0.472
    p = np.array([y0, a])

    # Derivatives of the analytic solution with respect to y0 and alpha
    # Treat y0 like a parameter and solve analytically.  Then differentiate.
    # I used CAS to get these derivatives
    y0_sensitivity = np.exp(-a * t)
    a_sensitivity = (-(np.exp(t * (a - 1)) - 1 + (a - 1) *
                       (y0 * a - y0 - 1) * t) * np.exp(-a * t) / (a - 1)**2)

    sensitivity = np.c_[y0_sensitivity, a_sensitivity]

    integrated_solutions = odeint(func=augmented_system,
                                  y0=[y0, 1, 0],
                                  t=t.ravel(),
                                  args=(p, ))
    simulated_sensitivity = integrated_solutions[:, 1:]

    np.testing.assert_allclose(sensitivity, simulated_sensitivity, rtol=1e-5)