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I have a dataframe with 250.000 rows but 140 columns and I'm trying to construct a pair plot. of the variables. I know the number of subplots is huge, as well as the time it takes to do the plots. (I'm waiting for more than an hour on an i5 with 3,4 GHZ and 32 GB RAM).

Remebering that scikit learn allows to construct random forests in parallel, I was checking if this was possible also with seaborn. However, I didn't find anything. The source code seems to call the matplotlib plot function for every single image.

Couldn't this be parallelised? If yes, what is a good way to start from here?

1
  • do you know if it helps with rasterized=True as an argument to the scatterplots? Also, I'd map only one of the triangular halves - this is not the time to waste on duplicated work?
    – creanion
    May 30, 2022 at 18:17

3 Answers 3

36

Rather than parallelizing, you could downsample your DataFrame to say, 1000 rows to get a quick peek, if the speed bottleneck is indeed occurring there. 1000 points is enough to get a general idea of what's going on, usually.

i.e. sns.pairplot(df.sample(1000)).

4

Save your pairplot to image and then show this image instead of rendering it all in your browser.

from IPython.display import Image
import seaborn as sns
import matplotlib.pyplot as plt 

sns_plot = sns.pairplot(df, size=2.0)
sns_plot.savefig("pairplot.png")

plt.clf() # Clean parirplot figure from sns 
Image(filename='pairplot.png') # Show pairplot as image
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  • 2
    This ist also an important idea. But creating the Image was the bigger bottleneck at that Time I believe. Feb 2, 2020 at 21:21
  • You can also go via a buffer rather than a file if required
    – jtlz2
    Aug 5, 2022 at 7:35
  • Also size is now deprecated - rather use height.
    – jtlz2
    Aug 5, 2022 at 7:38
2

For me, I had a situation where the histograms were taking a very long time due to the variance in the data. I only had 1200 rows and 4 columns, but it took half an hour before I gave up. I think it was so spread out and unordered that the histogram was constantly updating. One workaround might be to play with the bin parameter, but my solution was to use a KDE for the diagonal instead. With the KDE, it takes only a few seconds.

sns.pairplot(df, diag_kind='kde')
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  • Why only use kde on the diagonal?
    – jtlz2
    Aug 5, 2022 at 7:54
  • @jtlz2 As I say in the answer, I don't know entirely why the histogram is slow. I give some speculation. To directly answer your question, because it is way way faster
    – Marcel
    Aug 8, 2022 at 1:46
  • Sorry I meant why not on the off-diagonal too?
    – jtlz2
    Aug 8, 2022 at 6:21
  • 1
    The off-diagonal should be scatter plots comparing two variables. Apparently, this can be done quickly unlike histograms. You can make these 2d KDE plots with a different setting if you want.
    – Marcel
    Aug 8, 2022 at 17:03

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