# What does the .numpy() function do?

I tried searching for the documentation online but I can't find anything that gives me an answer. What does `.numpy()` function do? The example code given is:

``````y_true = []
for X_batch, y_batch in mnist_test:
y_true.append(y_batch.numpy().tolist())
``````

Both in Pytorch and Tensorflow, the `.numpy()` method is pretty much straightforward. It converts a `tensor` object into an `numpy.ndarray` object. This implicitly means that the converted tensor will be now processed on the CPU.

• > `This implicitly means that the converted tensor will be now processed on the CPU.` Here's a relevant docstring supporting this statement Dec 15, 2021 at 0:49

Ever getting a problem understanding some PyTorch function you may ask `help()`.

``````import torch
t = torch.tensor([1,2,3])
help(t.numpy)
``````

Out:

``````Help on built-in function numpy:

numpy(...) method of torch.Tensor instance
numpy() -> numpy.ndarray

Returns :attr:`self` tensor as a NumPy :class:`ndarray`. This tensor and the
returned :class:`ndarray` share the same underlying storage. Changes to
:attr:`self` tensor will be reflected in the :class:`ndarray` and vice versa.
``````

This numpy() function is the converter form torch.Tensor to numpy array.

If we look at this code below, we see a simple example where the `.numpy()` convert Tensors to numpy arrays automatically.

``````import numpy as np

ndarray = np.ones([3, 3])

print("TensorFlow operations convert numpy arrays to Tensors automatically")
tensor = tf.multiply(ndarray, 42)
print(tensor)

print("And NumPy operations convert Tensors to numpy arrays automatically")