params, labels = obs_params(reduced_model=True)
print(params)
print(labels)

# Set up themodel
dap = DAPcython(-75, params)
U = dap.simulate(dt, t, I)

# generate data format for SNPE / OBSERVABLE
x_o = {'data': U.reshape(-1),
       'time': t,
       'dt': dt,
       'I': I}

# Setup Priors
prior_min, prior_max, labels = load_prior_ranges(n_params)
prior_unif = Uniform(lower=prior_min, upper=prior_max)

# Summary Statistics
S = syn_obs_stats(x_o['I'], params=params, dt=x_o['dt'], t_on=t_on, t_off=t_off,
                  n_summary=n_summary, summary_stats=1, data=x_o)


M = DAPSimulator(x_o['I'], x_o['dt'], -75)
s = DAPSummaryStatsStepMoments(t_on, t_off, n_summary=n_summary)
G = Default(model=M, prior=prior_unif, summary=s)  # Generator

# Runing the simulation
inf_snpe = SNPE(generator=G, n_components=n_components, n_hiddens=n_hiddens, obs=S,
                # reg_lambda=reg_lambda, pilot_samples=0, prior_norm=True)
                reg_lambda=reg_lambda, pilot_samples=0)
示例#2
0
    # x_ramp = {'data': vr,
    'time': tr,
    'dt': dtr,
    'I': Ir
}

x_step = {
    'data': vs.reshape(-1),
    # x_step = {'data': vs,
    'time': ts,
    'dt': dts,
    'I': Is
}

# Setup Priors
prior_min, prior_max, labels = load_prior_ranges(2)
prior_unif = Uniform(lower=prior_min, upper=prior_max)

# define model
dap1 = DAPSimulatorMultiProtocol(I_all, dt_all, -75)

# run model
stats = dap1.gen_single(params, I_all[0], tr, dtr)
data_list = dap1.gen(params_list)

# calcualte summary statistics
sum_stats_step = DAPSummaryStatsStepMoments(t_ons, t_offs, n_summary=17)
sum_stats_mom = DAPSummaryStatsMoments(t_onr, t_offr, n_summary=17)
sum_stats = [sum_stats_step, sum_stats_mom]

s_step = sum_stats_step.calc([x_step])