You can define a function based on the subplots command (note the *s* at the end, different from the `subplot`

command pointed by urinieto) of `matplotlib.pyplot`

.

Below is an example of such a function, based on yours, allowing to plot multiples axes in a figure. You can define the number of rows and columns you want in the figure layout.

```
def plot_figures(figures, nrows = 1, ncols=1):
"""Plot a dictionary of figures.
Parameters
----------
figures : <title, figure> dictionary
ncols : number of columns of subplots wanted in the display
nrows : number of rows of subplots wanted in the figure
"""
fig, axeslist = plt.subplots(ncols=ncols, nrows=nrows)
for ind,title in zip(range(len(figures)), figures):
axeslist.ravel()[ind].imshow(figures[title], cmap=plt.gray())
axeslist.ravel()[ind].set_title(title)
axeslist.ravel()[ind].set_axis_off()
plt.tight_layout() # optional
```

Basically, the function create a number of axis in the figures, according to the number of rows (`nrows`

) and columns (`ncols`

) you want, and then iterate over the list of axis to plot your images and add the title for each of them.

Note that if you only have one image in your dictionary, your previous syntax `plot_figures(figures)`

will work since `nrows`

and `ncols`

are set to `1`

by default.

An example of what you can obtain:

```
import matplotlib.pyplot as plt
import numpy as np
# generation of a dictionary of (title, images)
number_of_im = 6
figures = {'im'+str(i): np.random.randn(100, 100) for i in range(number_of_im)}
# plot of the images in a figure, with 2 rows and 3 columns
plot_figures(figures, 2, 3)
```