In this article, we discuss how to draw Binary Random Numbers (0 or 1) from a Bernoulli Distribution in PyTorch.
torch.bernoulli() method
torch.bernoulli() method is used to draw binary random numbers (0 or 1) from a Bernoulli distribution. This method accepts a tensor as a parameter, and this input tensor is the probability of drawing 1. The values of the input tensor should be in the range of 0 to 1. This method returns a tensor that only has values 0 or 1 and the size of this tensor is the same as the input tensor. Let’s have a look at the syntax of the given method:
Syntax: torch.bernoulli(input)
Parameters:
- input (Tensor): the input tensor containing the probabilities of drawing 1.
Returns: it will returns a tensor that only has values 0 or 1 and the size of this tensor is the same as the input tensor.
Example 1
In this example, we draw Binary Random Numbers (0 or 1) from a Bernoulli Distribution using a 1-D tensor.
Python3
# Import required library import torch # create a tensor containing the # probability of drawing 1. tens = torch.tensor([ 0.1498 , 0.9845 , 0.4578 , 0.3495 , 0.2442 ]) print ( " Input tensor: " , tens) # Draw random numbers (0,1) random_num = torch.bernoulli(tens) # display result print ( " Output tensor " , random_num) |
Output:
Example 2
In this example, we estimate the gradient of a function for a 2-D tensor.
Python3
# Import required library import torch # create a tensor containing the # probability of drawing 1. tens = torch.tensor([[ 0.2432 , 0.7579 , 0.6325 ], [ 0.3464 , 0.2442 , 0.3847 ], [ 0.4528 , 0.9876 , 0.8499 ], ]) print ( "\n Input tensor: \n" , tens) # Draw random numbers (0,1) random_num = torch.bernoulli(tens) # display result print ( "\n Output tensor \n" , random_num) |
Output: