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I have a large CSV which I read into Dask and perform a group-by like so

import dask.dataframe as dd
aa = dd.read_csv("large.csv")

# takes 20 seconds
aa.var0.value_counts().compute()

And it takes 20 seconds.

However, if I store the data as parquet then the same operation only takes 7 seconds.

aa.to_parquet("large.parquet")
aa = dd.read_parquet("large.parquet")

# takes 7 seconds
aa.var0.value_counts().compute()

Are there anything extra I can do to speed this up further? The general problem is this: I have a dataset that sits on a hard drive (the data format is not restricted, but I only have one machine, so no clusters), how to maximise the performance a simple group-by operation where the data starts on disk (i.e. not already loaded into RAM)?

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I believe this is not particular to dask, but rather due to the way CSV and parquet are formatted.

See Is querying against a Spark DataFrame based on CSV faster than one based on Parquet?

| improve this answer | |
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You can further speed it up by loading only one column

aa = dd.read_parquet("large.parquet", columns = ["var0"])

# takes 7 seconds
aa.var0.value_counts().compute()

There may be more that can be done e.g. ensure that Dask is using more workers.

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