# Pyro: samples of a Bernoulli random variable have more than one element

I'm new to Pyro and trying to get my first stochastic process model working. I adapted the code from here to suit my example problem which is simply two Gaussians with a discrete probability of the sample coming from one or the other.

``````import torch
import pyro
import pyro.distributions as dist
from pyro.infer.mcmc import HMC, MCMC

# Actual data sample
observations = torch.tensor(
[0.00528813, -0.00589001, -1.20608593, 0.00190794,
0.89052784,  0.66690464,  0.57295968, 0.02605967]
)

# Define the process
def model(observations):

a_prior = dist.Beta(2, 2)
a = pyro.sample("a", a_prior)
c = pyro.sample('c', dist.Bernoulli(a))
if c.item() == 1.0:
my_dist = dist.Normal(0.785, 1.0)
else:
my_dist = dist.Normal(0.0, 0.01)

for i, observation in enumerate(observations):
measurement = pyro.sample(f'obs_{i}', my_dist, obs=observation)

# Clear parameters
pyro.clear_param_store()

# Define the MCMC kernel function
my_kernel = HMC(model)

# Define the MCMC algorithm
my_mcmc = MCMC(my_kernel,
num_samples=5000,
warmup_steps=50)

# Run the algorithm, passing the observations
my_mcmc.run(observations)
``````

The exception raised is:

``````<ipython-input-2-a668622a0fb9> in model(observations)
11     a = pyro.sample("a", a_prior)
12     c = pyro.sample('c', dist.Bernoulli(a))
---> 13     if c.item() == 1.0:
14         my_dist = dist.Normal(0.785, 1.0)
15     else:

ValueError: only one element tensors can be converted to Python scalars
Trace Shapes:
Param Sites:
Sample Sites:
a dist   |
value   |
c dist   |
value 2 |
``````

I had a look at `c` using the debugger and for some reason it has two elements the second time model() is called:

`tensor([0., 1.])`

What is causing this? I wanted it to be a simple scalar having the values 0 or 1.

As a further test, the condition statement works fine when taking samples in the normal way:

``````# Conditional switch test
a_prior = dist.Beta(2, 2)
a = pyro.sample("a", a_prior)
for i in range(5):
c = pyro.sample('c', dist.Bernoulli(a))
if c.item() == 1.0:
print(1, end=' ')
else:
print(0, end=' ')

# 0 0 1 0 0
``````