I'm trying to create a plotting function that takes as input the number of required plots and plots them using pylab.subplots and the sharex=True option. If the number of required plots is odd, then I would like to remove the last panel and force the tick labels on the panel right above it. I can't find a way of doing that and using the sharex=True option at the same time. The number of subplots can be quite large (>20).

Here's sample code. In this example I want to force xtick labels when i=3.

import numpy as np
import matplotlib.pylab as plt

def main():
    n = 5
    nx = 100
    x = np.arange(nx)
    if n % 2 == 0:
        f, axs = plt.subplots(n/2, 2, sharex=True)
        f, axs = plt.subplots(n/2+1, 2, sharex=True)
    for i in range(n):
        y = np.random.rand(nx)
        if i % 2 == 0:
            axs[i/2, 0].plot(x, y, '-', label='plot '+str(i+1))
            axs[i/2, 0].legend()
            axs[i/2, 1].plot(x, y, '-', label='plot '+str(i+1))
            axs[i/2, 1].legend()
    if n % 2 != 0:
        f.delaxes(axs[i/2, 1])

if __name__ == "__main__":

To put it simply you make your subplots call for an even number (in this case 6 plots):

f, ax = plt.subplots(3, 2, figsize=(12, 15))

Then you delete the one you don't need:

f.delaxes(ax[2,1]) #The indexing is zero-based here

This question and response are looking at this in an automated fashion but i thought it worthwhile to post the basic use case here.


If you replace last if in your main function with this:

if n % 2 != 0:
    for l in axs[i/2-1,1].get_xaxis().get_majorticklabels():
    f.delaxes(axs[i/2, 1])


It should do the trick:


  • Using delaxes seems inefficient when dealing with a large number of axes objects (subplots). I ended up doing this with add_subplot instead. But I'm not sure how to acquire the sharex or sharey that's available with subplots. Apr 17 '18 at 4:31

I generate an arbitrary number of subplots all the time (sometimes the data leads to 3 subplots, sometimes 13, etc). I wrote a little utility function to stop having to think about it.

The two functions I define are the follows. You can change the stylistic choices to match your preferences.

import math
import numpy as np
from matplotlib import pyplot as plt

def choose_subplot_dimensions(k):
    if k < 4:
        return k, 1
    elif k < 11:
        return math.ceil(k/2), 2
        # I've chosen to have a maximum of 3 columns
        return math.ceil(k/3), 3

def generate_subplots(k, row_wise=False):
    nrow, ncol = choose_subplot_dimensions(k)
    # Choose your share X and share Y parameters as you wish:
    figure, axes = plt.subplots(nrow, ncol,

    # Check if it's an array. If there's only one plot, it's just an Axes obj
    if not isinstance(axes, np.ndarray):
        return figure, [axes]
        # Choose the traversal you'd like: 'F' is col-wise, 'C' is row-wise
        axes = axes.flatten(order=('C' if row_wise else 'F'))

        # Delete any unused axes from the figure, so that they don't show
        # blank x- and y-axis lines
        for idx, ax in enumerate(axes[k:]):

            # Turn ticks on for the last ax in each column, wherever it lands
            idx_to_turn_on_ticks = idx + k - ncol if row_wise else idx + k - 1
            for tk in axes[idx_to_turn_on_ticks].get_xticklabels():

        axes = axes[:k]
        return figure, axes

And here's example usage with 13 subplots:

x_variable = list(range(-5, 6))
parameters = list(range(0, 13))

figure, axes = generate_subplots(len(parameters), row_wise=True)
for parameter, ax in zip(parameters, axes):
    ax.plot(x_variable, [x**parameter for x in x_variable])


Which produces the following:

enter image description here

Or, switching to column-wise traversal order (generate_subplots(..., row_wise=False)) generates:

enter image description here


For Python 3, you can delete as below :

# I have 5 plots that i want to show in 2 rows. So I do 3 columns. That way i have 6 plots.
f, axes = plt.subplots(2, 3, figsize=(20, 10))

sns.countplot(sales_data['Gender'], order = sales_data['Gender'].value_counts().index, palette = "Set1", ax = axes[0,0])
sns.countplot(sales_data['Age'], order = sales_data['Age'].value_counts().index, palette = "Set1", ax = axes[0,1])
sns.countplot(sales_data['Occupation'], order = sales_data['Occupation'].value_counts().index, palette = "Set1", ax = axes[0,2])
sns.countplot(sales_data['City_Category'], order = sales_data['City_Category'].value_counts().index, palette = "Set1", ax = axes[1,0])
sns.countplot(sales_data['Marital_Status'], order = sales_data['Marital_Status'].value_counts().index, palette = "Set1", ax = axes[1, 1])

# This line will delete the last empty plot
f.delaxes(ax= axes[1,2]) 

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