11

I have a Spark dataframe with the following data (I use spark-csv to load the data in):

key,value
1,10
2,12
3,0
1,20

is there anything similar to spark RDD reduceByKey which can return a Spark DataFrame as: (basically, summing up for the same key values)

key,value
1,30
2,12
3,0

(I can transform the data to RDD and do a reduceByKey operation, but is there a more Spark DataFrame API way to do this?)

3 Answers 3

22

If you don't care about column names you can use groupBy followed by sum:

df.groupBy($"key").sum("value")

otherwise it is better to replace sum with agg:

df.groupBy($"key").agg(sum($"value").alias("value"))

Finally you can use raw SQL:

df.registerTempTable("df")
sqlContext.sql("SELECT key, SUM(value) AS value FROM df GROUP BY key")

See also DataFrame / Dataset groupBy behaviour/optimization

4
  • 5
    In the RDD API, I use reduceByKey since groupByKey collects all values for a key into memory - if a key is associated to many values, a worker could run out of memory. Does groupBy have that limitation too? Aug 4, 2016 at 4:02
  • 1
    @jeffreyveon stackoverflow.com/q/32902982/1560062 but a) there is more than one mechanism of actual groupBy in Spark b) if aggregate like operations it is still possible to get OOMs for different reasons.
    – zero323
    Aug 4, 2016 at 7:47
  • Could you comment further on "If you don't care about column names..." What happens to the column names in this case, exactly? Oct 3, 2016 at 14:55
  • 1
    @justanotherbrain The cloumn name would be something in the lines of _c1, _c2 etc., instead of "value" - the case when you use "alias". Nov 16, 2017 at 7:20
2

I think user goks missed out on some part in the code. Its not a tested code.

.map should have been used to convert the rdd to a pairRDD using .map(lambda x: (x,1)).reduceByKey. ....

reduceByKey is not available on a single value rdd or regular rdd but pairRDD.

Thx

0

How about this? I agree this still converts to rdd then to dataframe.

df.select('key','value').map(lambda x: x).reduceByKey(lambda a,b: a+b).toDF(['key','value'])
1
  • why is .map(lambda x: x) necessary? Nov 29, 2018 at 15:00

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.