15

I tried to initialize new columns with random values in pandas. I did this way

df['business_vertical'] = np.random.choice(['Retail', 'SME', 'Cor'], df.shape[0])

How do I do it in pyspark?

2
  • you want to populate "business_vertical" with a value either from "Retail", "SME", or "Cor" following a Uniform distribution ?
    – Steven
    Nov 28, 2018 at 13:14
  • yes i want to populate randomly these values Nov 28, 2018 at 13:20

4 Answers 4

33

Just generate a list of values and then extract them randomly :

from pyspark.sql import functions as F

df.withColumn(
  "business_vertical",
  F.array(
    F.lit("Retail"),
    F.lit("SME"),
    F.lit("Cor"),
  ).getItem(
    (F.rand()*3).cast("int")
  )
)
8
  • what is the meaning of F? i got error while trying ur code Nov 28, 2018 at 13:35
  • still i got unexpected EOF while parsing error and couldn't figure out Nov 28, 2018 at 13:47
  • "cannot resolve 'Retail' given input columns: this error occured Nov 28, 2018 at 13:57
  • Smart solution!! Any idea how to do this when instead of ['Retail', 'SME', 'Cor'] a small list, I have a much bigger list? how to create an PySpark array column from this list without typing them out one by one?
    – Victor Z
    Sep 5, 2019 at 18:28
  • @ZilongZ you put your list in a dataframe, assign a row number, then do a join on a random value.
    – Steven
    Jan 20, 2020 at 8:40
1

Here's how you can solve this with the array_choice function in quinn:

import quinn

df = spark.createDataFrame([('a',), ('b',), ('c',)], ['letter'])
cols = list(map(lambda c: F.lit(c), ['Retail', 'SME', 'Cor']))
df.withColumn('business_vertical', quinn.array_choice(F.array(cols))).show()
+------+-----------------+
|letter|business_vertical|
+------+-----------------+
|     a|              SME|
|     b|           Retail|
|     c|              SME|
+------+-----------------+

array_choice is generic and can easily be used to select a random value from an existing ArrayType column. Suppose you have the following DataFrame.

+------------+
|     letters|
+------------+
|   [a, b, c]|
|[a, b, c, d]|
|         [x]|
|          []|
+------------+

Here's how you can grab a random letter.

actual_df = df.withColumn(
    "random_letter",
    quinn.array_choice(F.col("letters"))
)
actual_df.show()
+------------+-------------+
|     letters|random_letter|
+------------+-------------+
|   [a, b, c]|            a|
|[a, b, c, d]|            d|
|         [x]|            x|
|          []|         null|
+------------+-------------+

Here's the array_choice function definition:

def array_choice(col):
    index = (F.rand()*F.size(col)).cast("int")
    return col[index]

This post explains fetching random values from PySpark arrays in more detail.

0

For random number:

import random
randomnum= random.randint(1000,9999)

or numpy.random.choice

import org.apache.spark.sql.functions.lit
val newdf = df.withColumn("newcol",lit("your-random"))

or: pandas.Series.combine_first

s1 = pd.Series([1, np.nan])
s2 = pd.Series([3, 4])
s1.combine_first(s2)
1
  • He does not want to initialize with random numbers. he wants to initialize business_vertical column with values from a list like ['Retail', 'SME', 'Cor'].
    – Ali AzG
    Nov 28, 2018 at 12:09
-1

You can use pyspark.sql.functions.rand()

df.withColumn('rand_col', F.rand()).show()  
2
  • Wrong answer. he wants to initialize business_vertical column with values from ['Retail', 'SME', 'Cor'] randomly!
    – Ali AzG
    Nov 28, 2018 at 11:44
  • yes i wants to initialize business_vertical column with values from ['Retail', 'SME', 'Cor'] randomly! Nov 28, 2018 at 13:34

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