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I'm trying to make multiple operations in one line of code in pySpark, and not sure if that's possible for my case.

My intention is not having to save the output as a new dataframe.

My current code is rather simple:

encodeUDF = udf(encode_time, StringType())
new_log_df.cache().withColumn('timePeriod', encodeUDF(col('START_TIME')))
  .groupBy('timePeriod')
  .agg(
    mean('DOWNSTREAM_SIZE').alias("Mean"),
    stddev('DOWNSTREAM_SIZE').alias("Stddev")
  )
  .show(20, False)

And my intention is to add count() after using groupBy, to get, well, the count of records matching each value of timePeriod column, printed\shown as output.

When trying to use groupBy(..).count().agg(..) I get exceptions.

Is there any way to achieve both count() and agg().show() prints, without splitting code to two lines of commands, e.g. :

new_log_df.withColumn(..).groupBy(..).count()
new_log_df.withColumn(..).groupBy(..).agg(..).show()

Or better yet, for getting a merged output to agg.show() output - An extra column which states the counted number of records matching the row's value. e.g.:

timePeriod | Mean | Stddev | Num Of Records
    X      | 10   |   20   |    315
0

1 Answer 1

111

count() can be used inside agg() as groupBy expression is same.

With Python

import pyspark.sql.functions as func

new_log_df.cache().withColumn("timePeriod", encodeUDF(new_log_df["START_TIME"])) 
  .groupBy("timePeriod")
  .agg(
     func.mean("DOWNSTREAM_SIZE").alias("Mean"), 
     func.stddev("DOWNSTREAM_SIZE").alias("Stddev"),
     func.count(func.lit(1)).alias("Num Of Records")
   )
  .show(20, False)

pySpark SQL functions doc

With Scala

import org.apache.spark.sql.functions._ //for count()

new_log_df.cache().withColumn("timePeriod", encodeUDF(col("START_TIME"))) 
  .groupBy("timePeriod")
  .agg(
     mean("DOWNSTREAM_SIZE").alias("Mean"), 
     stddev("DOWNSTREAM_SIZE").alias("Stddev"),
     count(lit(1)).alias("Num Of Records")
   )
  .show(20, false)

count(1) will count the records by first column which is equal to count("timePeriod")

With Java

import static org.apache.spark.sql.functions.*;

new_log_df.cache().withColumn("timePeriod", encodeUDF(col("START_TIME"))) 
  .groupBy("timePeriod")
  .agg(
     mean("DOWNSTREAM_SIZE").alias("Mean"), 
     stddev("DOWNSTREAM_SIZE").alias("Stddev"),
     count(lit(1)).alias("Num Of Records")
   )
  .show(20, false)
6
  • is there any way in dataframe to count all the records by partition wise and aggregate it to final count , if so how ?
    – BdEngineer
    Jan 7, 2019 at 11:16
  • you mean, something similar to reduceBy ?
    – mrsrinivas
    Jan 7, 2019 at 12:40
  • 2
    A minor syntax comment: I am a big fan of the dict syntax in Python, e.g. .agg({"X: "sum", "Y": "sum", "Z": "sum", "blah": "count"}), this works really nice with .withColumn("blah", lit(1)) - there might be a better way, but I have not found it (yet!).
    – m-dz
    Jan 7, 2019 at 15:36
  • Your code works beautifully! Is there a way to use alias and rename the columns? Because right now the result comes out in columns names like sum(X), sum(Z), ...
    – RFAI
    Jun 2 at 1:26
  • 1
    @RFAI: lit(1) means the first column in the result which is timePeriod .
    – mrsrinivas
    Jun 4 at 11:35

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