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If apply funtion to calculate logaritm at single column of large dataset using Dask, How can I do that?

df_train.apply(lambda x: np.log1p(x), axis=1 , meta={'column_name':'float32'}).compute()

The dataset is very large (125 Millions of rows), How can I do that?

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  • How about df_train.float32.map(np.log1p)?
    – cs95
    Commented Mar 9, 2018 at 17:25

1 Answer 1

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You have a few options:

Use dask.array functions

Just like how your pandas dataframe can use numpy functions

import numpy as np
result = np.log1p(df.x)

Dask dataframes can use dask array functions

import dask.array as da
result = da.log1p(df.x)

Map Partitions

But maybe no such dask.array function exists for your particular function. You can always use map_partitions, to apply any function that you would normally do on pandas dataframes across all of the pandas dataframes that make up your dask dataframe

Pandas

result = f(df.x)

Dask DataFrame

result = df.x.map_partitions(f)

Map

You can always use the map or apply(axis=0) methods, but just like in Pandas these are usually very bad for performance.

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  • Thanks, So to make the calculations it's just: result = df_train.unit_sales.map_partitions(np.log1p).compute() ?
    – ambigus9
    Commented Mar 9, 2018 at 17:56
  • Yes, or da.log1p(df_train.unit_sales), as in the first example above
    – MRocklin
    Commented Mar 9, 2018 at 18:04
  • When I run with .compute() my pc is freezing again, It is because I trying to calculate for the entire dataset of 125 Millions of rows?
    – ambigus9
    Commented Mar 9, 2018 at 18:17
  • 1
    That comment doesn't seem related to this question. I recommend that you ask on the other question you recently asked, which seems more related. You might also consider editing your original question to include more details like "how do I check to see if it's safe to call compute" rather than engaging in a conversation in the comments.
    – MRocklin
    Commented Mar 9, 2018 at 18:50

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