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I have a use case where I'd need to drop duplicate rows of a dataframe (in this case duplicate means they have the same 'id' field) while keeping the row with the highest 'timestamp' (unix timestamp) field.

I found the drop_duplicate method (I'm using pyspark), but one don't have control on which item will be kept.

Anyone can help ? Thx in advance

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2 Answers 2

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A manual map and reduce might be needed to provide the functionality you want.

def selectRowByTimeStamp(x,y):
    if x.timestamp > y.timestamp:
        return x
    return y

dataMap = data.map(lambda x: (x.id, x))
uniqueData = dataMap.reduceByKey(selectRowByTimeStamp) 

Here we are grouping all of the data based on id. Then, when we are reducing the groupings, we do so by keeping the record with the highest timestamp. When the code is done reducing, only 1 record will be left for each id.

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  • What is the purpose of dataMap?
    – zero323
    Apr 14, 2016 at 16:55
  • 1
    Actually it should be data.map(lambda x: (x.id, x)) (or keyBy). Lets just fix it.
    – zero323
    Apr 14, 2016 at 17:20
  • Absolutely correct, nice catch
    – David
    Apr 14, 2016 at 17:22
  • Thx David, I ended up using the solution you proposed, though David Griffin's one worked equally well. Apr 15, 2016 at 12:49
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You can do something like this:

val df = Seq(
  (1,12345678,"this is a test"),
  (1,23456789, "another test"),
  (2,2345678,"2nd test"),
  (2,1234567, "2nd another test")
).toDF("id","timestamp","data")

+---+---------+----------------+
| id|timestamp|            data|
+---+---------+----------------+
|  1| 12345678|  this is a test|
|  1| 23456789|    another test|
|  2|  2345678|        2nd test|
|  2|  1234567|2nd another test|
+---+---------+----------------+

df.join(
  df.groupBy($"id").agg(max($"timestamp") as "r_timestamp").withColumnRenamed("id", "r_id"),
  $"id" === $"r_id" && $"timestamp" === $"r_timestamp"
).drop("r_id").drop("r_timestamp").show
+---+---------+------------+
| id|timestamp|        data|
+---+---------+------------+
|  1| 23456789|another test|
|  2|  2345678|    2nd test|
+---+---------+------------+

If you expect there could be a repeated timestamp for an id (see comments below), you could do this:

df.dropDuplicates(Seq("id", "timestamp")).join(
  df.groupBy($"id").agg(max($"timestamp") as "r_timestamp").withColumnRenamed("id", "r_id"),
  $"id" === $"r_id" && $"timestamp" === $"r_timestamp"
).drop("r_id").drop("r_timestamp").show
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  • 1
    It is close but doesn't guarantee a single row per id.
    – zero323
    Apr 14, 2016 at 16:58
  • Hmm, you mean if the timestamp is the same? Apr 14, 2016 at 17:03
  • Yes, exactly. It should be possible to simply take an arbitrary one here I guess.
    – zero323
    Apr 14, 2016 at 17:05
  • That's one of those things where if you know your data it might not be an issue. And like you said, you could always do: df.groupBy($"id", $"timestamp").agg(last($"data")) before you do the rest of it. Apr 14, 2016 at 17:09
  • It is. drop_duplicate could be more universal than last. You can handle complete row without mixing values.
    – zero323
    Apr 14, 2016 at 17:12

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