8

I have a dataset with missing values , I would like to get the number of missing values for each columns. Following is what I did , I got the number of non missing values. How can I use it to get the number of missing values?

df.describe().filter($"summary" === "count").show
+-------+---+---+---+
|summary|  x|  y|  z|
+-------+---+---+---+
|  count|  1|  2|  3|
+-------+---+---+---+

Any help please to get a dataframe in which we'll find columns and number of missing values for each one.

Many thanks

27

You could count the missing values by summing the boolean output of the isNull() method, after converting it to type integer:

In Scala:

import org.apache.spark.sql.functions.{sum, col}
df.select(df.columns.map(c => sum(col(c).isNull.cast("int")).alias(c)): _*).show

In Python:

from pyspark.sql.functions import col,sum
df.select(*(sum(col(c).isNull().cast("int")).alias(c) for c in df.columns)).show()

Alternatively, you could also use the output of df.describe().filter($"summary" === "count"), and subtract the number in each cell by the number of rows in the data:

In Scala:

import org.apache.spark.sql.functions.lit,

val rows = df.count()
val summary = df.describe().filter($"summary" === "count")
summary.select(df.columns.map(c =>(lit(rows) - col(c)).alias(c)): _*).show

In Python:

from pyspark.sql.functions import lit

rows = df.count()
summary = df.describe().filter(col("summary") == "count")
summary.select(*((lit(rows)-col(c)).alias(c) for c in df.columns)).show()
| improve this answer | |
  • thanks for your help .it worked.But is there an alternative waythat takes less time.because it took to much time for large data – Maher HTB Jun 8 '17 at 8:11
  • 2
    @mtoto The describe() function computes all other operations, hence can take more time, use: df.summary("count") to limit computations only for counting. No need to use: df.describe().filter(col("summary") == "count") – Shirish Kadam Sep 17 '18 at 19:00
  • That's very useful thanks, how would I add multiple metrics to the output? i.e. a row for isNull and a row for value=X for each Column – irishguy Apr 27 at 15:55
1
from pyspark.sql.functions import isnull, when, count, col
nacounts = df.select([count(when(isnull(c), c)).alias(c) for c in df.columns]).toPandas()
nacounts
| improve this answer | |
  • it would be a more complete answer if you can provide some explanation of what the code is doing and also if you can format the code properly, please see stackoverflow.com/editing-help for details on how to format the code. – tsega Mar 17 at 6:57

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