I am learning PyMC3 for Bayesian modeling. You can create a model and sample with:
import pandas as pd import pymc3 as pm # obs is a DataFrame with a single column, containing # the observed values for variable height obs = pd.DataFrame(...) # we create a pymc3 model with pm.Model() as m: mu = pm.Normal('mu', mu=178, sd=20) sigma = pm.Uniform('sigma', lower=0, upper=50) height = pm.Normal('height', mu=mu, sd=sigma, observed=obs) trace = pm.sample(1000, tune=1000) pm.traceplot(trace)
When I check the
trace (in this case 1000 samples from the posterior probability), I notice that 2 chains are created:
>>> trace.nchains 2
I read the tutorial on PyMC3 and looked through the API but it is unclear to me what a chain represents (in this case I asked for 1000 samples from the posterior but I got 2 chains, each one with 1000 samples from the posterior).
Are the chains different runs of the sampler with the same parameters or do they have some other meaning/purpose?