1

Let's say I have the following Spark frame:

+-------------------+--------+
|timestamp          |UserName|
+-------------------+--------+
|2021-08-11 04:05:06|A       |
|2021-08-11 04:15:06|B       |
|2021-08-11 09:15:26|A       |
|2021-08-11 11:04:06|B       |
|2021-08-11 14:55:16|A       |
|2021-08-13 04:12:11|B       |
+-------------------+--------+

I want to build time-series data for desired time resolution based on events counts for each user.

  • Note1: obliviously after groupbying on UserName & counting based on desired time frame\resolution, time frames need to be kept with spark frame. (maybe use of Event-time Aggregation and Watermarking in Apache Spark’s Structured Streaming )
  • Note2: needs to fill the missing gap for a specific time frame and replace 0 if there are no events.
  • Note3: I'm not interested in using UDF or hacking it via toPandas().

So let's say for 24hrs (daily) time frame expected results should be like below after groupBy:

+------------------------------------------+-------------+-------------+
|window_frame_24_Hours                     | username A  | username B  |
+------------------------------------------+-------------+-------------+
|{2021-08-11 00:00:00, 2021-08-11 23:59:59}|3            |2            |
|{2021-08-12 00:00:00, 2021-08-12 23:59:59}|0            |0            |
|{2021-08-13 00:00:00, 2021-08-13 23:59:59}|0            |1            |
+------------------------------------------+-------------+-------------+

Edit1: in case of 12hrs time frame\resolution:

+------------------------------------------+-------------+-------------+
|window_frame_12_Hours                     | username A  | username B  |
+------------------------------------------+-------------+-------------+
|{2021-08-11 00:00:00, 2021-08-11 11:59:59}|2            |2            |
|{2021-08-11 12:00:00, 2021-08-11 23:59:59}|1            |0            |
|{2021-08-12 00:00:00, 2021-08-12 11:59:59}|0            |0            |
|{2021-08-12 12:00:00, 2021-08-12 23:59:59}|0            |0            |
|{2021-08-13 00:00:00, 2021-08-13 11:59:59}|0            |1            |
|{2021-08-13 12:00:00, 2021-08-13 23:59:59}|0            |0            |
+------------------------------------------+-------------+-------------+

1 Answer 1

1

Group by time window '1 day' + UserName to count then group by window frame and pivot user names:

from pyspark.sql import functions as F

result = df.groupBy(
    F.window("timestamp", "1 day").alias("window_frame_24_Hours"),
    "UserName"
).count().groupBy("window_frame_24_Hours").pivot("UserName").agg(
   F.first("count")
).na.fill(0)

result.show(truncate=False)

#+------------------------------------------+---+---+
#|window_frame_24_Hours                     |A  |B  |
#+------------------------------------------+---+---+
#|{2021-08-13 00:00:00, 2021-08-14 00:00:00}|0  |1  |
#|{2021-08-11 00:00:00, 2021-08-12 00:00:00}|3  |2  |
#+------------------------------------------+---+---+

If you need the missing dates, you'll have to generate all dates using sequence on min and max timestamp then join with original dataframe:

intervals_df = df.withColumn(
    "timestamp",
    F.date_trunc("day", "timestamp")
).selectExpr(
    "sequence(min(timestamp), max(timestamp + interval 1 day), interval 1 day) as dates"
).select(
    F.explode(
        F.expr("transform(dates, (x, i) -> IF(i!=0, struct(date_trunc('dd', dates[i-1]) as start, dates[i] as end), null))")
    ).alias("frame")
).filter("frame is not null").crossJoin(
    df.select("UserName").distinct()
)

result = intervals_df.alias("a").join(
    df.alias("b"),
    F.col("timestamp").between(F.col("frame.start"), F.col("frame.end"))
    & (F.col("a.UserName") == F.col("b.UserName")),
    "left"
).groupBy(
    F.col("frame").alias("window_frame_24_Hours")
).pivot("a.UserName").agg(
    F.count("b.UserName")
)

result.show(truncate=False)

#+------------------------------------------+----------+----------+
#|window_frame_24_Hours                     |username_A|username_B|
#+------------------------------------------+----------+----------+
#|{2021-08-13 00:00:00, 2021-08-14 00:00:00}|0         |1         |
#|{2021-08-11 00:00:00, 2021-08-12 00:00:00}|3         |2         |
#|{2021-08-12 00:00:00, 2021-08-13 00:00:00}|0         |0         |
#+------------------------------------------+----------+----------+
7
  • Alright, but based on Note2 How about the missing time frame 2021-08-12 which need to be filed by 0 for users? (maybe crossJoin( ) & join("left") like this Is it possible to come up with an idea to escalate this for other desired time resolutions like 12hrs, 8 hrs like this?
    – Mario
    Jan 31, 2022 at 13:06
  • Thanks for the update; however, I'm not sure window ("1 day") would be the best practice since, as Note1 mentioned, the aim is to reach any desired timeframe\resolution when we aggregate the time events like using F.hour & cast() on hours to make it for. I want to have a solution not to limit the event aggregation for just 24hrs but for other time frames. Is it possible?
    – Mario
    Jan 31, 2022 at 13:30
  • Another problem is in the real scenario I have lots of UserNames not just "A" & "B" and I need to use general form of F.sum(F.when(F.col("b.UserName") == "A", 1).otherwise(0)).alias("username_A") like .agg().na.fill(0) Please let me know what is the best approach.
    – Mario
    Jan 31, 2022 at 13:42
  • 1
    @Mario then use pivot. see update Jan 31, 2022 at 13:48
  • What if the timeframe was not 24hrs/daily once done by Event-time Aggregation then what is the best approach for reaching the correct time-series spark frame in your updated solution so that we can process event count of every user within the related timeframe ? Is it not better to cast on the hour? I don't know what would be its consequence on filling the missing interval times process.
    – Mario
    Jan 31, 2022 at 18:23

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