3

Let's say we have pandas dataframe pd and a dask dataframe dd. When I want to plot pandas one with matplotlib I can easily do it:

fig, ax = plt.subplots()
ax.bar(pd["series1"], pd["series2"])
fig.savefig(path)

However, when I am trying to do the same with dask dataframe I am getting Type Errors such as:

TypeError: Cannot interpret 'string[python]' as a data type

string[python] is just an example, whatever is your dd["series1"] datatype will be inputed here.

So my question is: What is the proper way to use matplotlib with dask, and is this even a good idea to combine the two libraries?

2 Answers 2

7

SultanOrazbayev's is still spot on, here is an answer elaborating on the datashader option (which hvplot call under the hood).

Don't use Matplotlib, use hvPlot!

If you wish to plot the data while it's still large, I recommend using hvPlot, as it can natively handle dask dataframes. It also automatically provides interactivity.

Example

import numpy as np
import dask
import hvplot.dask

# Create Dask DataFrame with normally distributed data
df = dask.datasets.timeseries()
df['x'] = df['x'].map_partitions(lambda x: np.random.randn(len(x)))
df['y'] = df['y'].map_partitions(lambda x: np.random.randn(len(x)))

# Plot
df.hvplot.scatter(x='x', y='y', rasterize=True)

5

One motivation to use dask instead of pandas is the size of the data. As such, swapping pandas DataFrame with dask DataFrame might not be feasible. Imagine a scatter plot, this might work well with 10K points, but if the dask dataframe is a billion rows, a plain matplotlib scatter is probably a bad idea (datashader is a more appropriate tool).

Some graphical representations are less sensitive to the size of the data, e.g. normalized bar chart should work well, as long as the number of categories does not scale with the data. In this case the easiest solution is to use dask to compute the statistics of interest before plotting them using pandas.

To summarise: I would consider the nature of the chart, figure out the best tool/representation, and if it's something that can/should be done with matplotlib, then I would run computations on dask DataFrame to get the reduced result as a pandas dataframe and proceed with the matplotlib

2
  • 1
    My size of the data doesn't let me use pandas, at leats on my computer (11+gb of gzip csv files). So after I extract the data with dask I should convert it to pandas and then try to plot it? I think that my plots are appropriate for the size of the data.
    – MDDawid1
    Commented Jul 16, 2022 at 9:08
  • 1
    Yes, if by 'convert it to pandas' you mean some procedure to reduce the dataset, e.g. let's say you have 10 categories X and 1 billion rows of some variable Y. Then I would run something like stats = df.groupby('X').agg({'Y': 'mean'}).compute(), and then stats will be a pandas dataframe that can be used as usual with matplotlib. The specific aggregation procedure will depend on questions of interest. Commented Jul 16, 2022 at 12:23

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