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The Dask documentation states that Dask's set_index is much more expensive than Pandas' (http://docs.dask.org/en/latest/dataframe-api.html#dask.dataframe.DataFrame.set_index)

With that in mind, which of the following should be a best practice (the 'time' column is filled with datetime objects).

set_index in Dask:

        df['time_index'] = df['time']
        df = dd.from_pandas(df, npartitions=100)
        df = df.set_index('time_index', sorted=True)

set_index in Pandas

        df['time_index'] = df['time']
        df = df.set_index('time_index')
        df = dd.from_pandas(df, npartitions=100)

I welcome any recommendations to improve my example code as well.

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  • Do you mind to provide a mcve? – rpanai Jun 5 '19 at 16:43
  • In particular if you are able to tell us which one is your error it will be easier to help you. – rpanai Jun 5 '19 at 17:21
  • Thanks, @rpanai. I removed the question about the error. I'm more focused on what is the best practice here. If I encounter the error again, I'll post that separately. – dan Jun 5 '19 at 18:02
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I'm wondering why you need a to duplicate the time column to time_index anyway here is an example

Create df

import numpy as np
import pandas as pd
import dask.dataframe as dd


N =  int(1e7)
times = pd.date_range(start="2019-01-01", periods=N, freq="1s")
df = pd.DataFrame({"time":times,
                   "value":np.random.randn(N)})

df.to_csv("df.csv", index=False)
df.to_parquet("df.parq")

Set index in pandas

%%time
df = pd.read_csv("df.csv", parse_dates=['time'])
df = df.set_index("time")
df = dd.from_pandas(df, npartitions=100)

a = df.divisions

CPU times: user 10.7 s, sys: 503 ms, total: 11.2 s
Wall time: 9.81 s

Set index in dask

time
df = pd.read_csv("df.csv", parse_dates=['time'])
df = dd.from_pandas(df, npartitions=100)
df = df.set_index("time", sorted=True)
b = df.divisions

CPU times: user 11.3 s, sys: 534 ms, total: 11.8 s
Wall time: 10.4 s

The divisions is the same

print(a==b)

True

Read with dask

Here we can use infer_division and use time as index as long as we are reading from parquet.

%%time
df = dd.read_parquet("df.parq", index="time", infer_divisions=True)
df = df.repartition(npartitions=100)
c = df.divisions

CPU times: user 9.54 ms, sys: 22 µs, total: 9.56 ms
Wall time: 8.9 ms

In this case the division is not the same

print(c==a)

False

But it shouldn't be a big deal

print(c[:2])

(Timestamp('2019-01-01 00:00:00'),
Timestamp('2019-01-02 03:46:39.990000128'))

Conclusions

I'd suggest you to read directly with dask from parquet. Your file is going to be smaller and you don't have to specify the datatypes

!ls -lh df.*

-rw-rw-r-- 1 username username 378M Jun  5 14:59 df.csv
-rw-rw-r-- 1 username username 164M Jun  5 14:59 df.parq
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  • Thank you for all of this. Amazing speed gains on the read_parquet and I wasn't aware of the infer_divisions option. RE: copying the time into a time_index column - please correct me if I'm wrong, but it seemed that when you set a column as an index, you lose that column as a standalone column. I want to maintain the time column for other reasons. – dan Jun 6 '19 at 12:47
  • @dan you can still access to the column as it's not going anywhere. The only difference is that you need to call it as df.index instead of df["time"] as example if you want to create a new columns with weekday you can just do df["weekday"] = df.index.dt.weekday – rpanai Jun 6 '19 at 13:26
  • 1
    Thank you again. Just upvoted now (my reputation was too low to upvote until this morning). Yes, the .index requirement is what I was worried about. I would have to rewrite some older analytics code to account for that. Easier for me to create a duplicate time column for now, even if I take a performance hit (which appears rather small in the scheme of things). – dan Jun 6 '19 at 13:46

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