Every Figure instance has Axes defined on it. As the other answers mentioned, `plt.gca()`

returns the **current** Axes instance. To get other Axes instances defined on a Figure, you can check the list of Axes in the Figure through the `axes`

property of the Figure.

```
import matplotlib.pyplot as plt
plt.plot(range(3))
plt.gcf().axes # [<Axes: >]
fig, axs = plt.subplots(1, 3)
fig.axes # [<Axes: >, <Axes: >, <Axes: >]
```

This returns a list, so you can just index it for the specific Axes you want.

This is especially useful if you create a plot using a library that doesn't obviously return an Axes instance. As long as said library uses matplotlib in the background, every plot has a Figure instance, through which any Axes in it can be accessed.

For example, if you plot seasonal decomposition using `statsmodels`

, the returned object is a matplotlib Figure object. To change something on any of the subplots, you can use the `axes`

property. For example, the following code makes the markersize smaller on the residual plot in the decomposition.

```
import pandas as pd
from statsmodels.tsa.seasonal import seasonal_decompose
# plot seasonal decomposition
data = pd.Series(range(100), index=pd.date_range('2020', periods=100, freq='D'))
fig = seasonal_decompose(data).plot()
fig.axes # get Axes list
# [<Axes: >, <Axes: ylabel='Trend'>, <Axes: ylabel='Seasonal'>, <Axes: ylabel='Resid'>]
ax = fig.axes[3] # last subplot
ax.lines[0].set_markersize(3) # make marker size smaller on the last subplot
```