7

Are window functions(e.g. first, last, lag, lead) supported by pyspark?

For example, how can I group by one column and order by another one, then select the first row for each group (which is just like window function doing) by SparkSQL or data frame?

I find pyspark.sql.functions class contains aggregation function first and last, but they can not be used for groupBy class.

2
  • I don't think they are directly supported, but you can implement them yourself; groupByKey gets you an array (well, an iterable) of all the 'rows'(objects) in a group
    – okaram
    Apr 2, 2015 at 14:38
  • Nexr has window functions implemented as Hive UDFs (user defined functions) that should work in Spark SQL. You need to build Spark with Hive, change some configurations, and register the UDFs.
    – dnlbrky
    Apr 20, 2015 at 20:34

2 Answers 2

7

All of the above functions can be used along Window functions. A sample would look somewhat like this.

from pyspark.sql.window import Window
from pyspark.sql.functions import lag, lead, first, last

df.withColumn('value', lag('col1name').over(
    Window.partitionBy('colname2').orderBy('colname3')
    )
)

The function is used on the partition only when you use the partitionBy clause. If you just want to lag / lead over the entire data, use a simple orderBy and don't use the patitionBy clause. However, that wouldn't be very efficient.

In case you want the lag / lead to perform in a reverse fashion, you can also use the following format:

from pyspark.sql.window import Window
from pyspark.sql.functions import lag, lead, first, last, desc

df.withColumn('value', lag('col1name').over(
    Window.partitionBy('colname2').orderBy(desc('colname3'))
    )
)

Although strictly speaking, you wouldn't need the desc for lag / lead type functions. They are primarily used in conjunction with rank / percent_rank / row_number type functions.

3

Since spark 1.4 you can use window functions. In pyspark this would look something like this:

from pyspark.sql.functions import rank
from pyspark.sql import Window
data = sqlContext.read.parquet("/some/data/set")
data_with_rank = data.withColumn("rank", rank().over(Window.partitionBy("col1").orderBy(data["col2"].desc())))
data_with_rank.filter(data_with_rank["rank"] == 1).show()
1
  • 1
    Note that if you want to use the df.sql capability with window operations you need to be using a HiveContext, not a SqlContext Jan 5, 2016 at 12:11

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