1

I have a file with event_time field, each record is generated every 30 minutes and indicates how many seconds the event lasted. Example:

Event_time | event_duration_seconds
09:00      | 800
09:30      | 1800
10:00      | 2700
12:00      | 1000
13:00      | 1000

I need to transform consecutive events into only one with its duration time. Output file should look like this:

Event_time_start | event_time_end | event_duration_seconds
09:00            | 11:00          | 5300
12:00            | 12:30          | 1000
13:00            | 13:30          | 1000

Is there a method in Scala Spark to compare a dataframe record with the next One?

I tried with a foreach loop but is not a good option since it is a huge volume of data to process

0

Not a trivial problem, but here's a solution with steps as follows:

  1. Create a UDF to compute the next closest 30-minute event end-time event_ts_end using the java.time API
  2. Use Window function lag for event time from previous row
  3. Use when/otherwise to generate column event_ts_start with a null value if the event time difference from the previous row is 30 minutes
  4. Use Window function last(event_ts_start, ignoreNulls=true) to backfill nulls with the last event_ts_start value
  5. Group data by event_ts_start to aggregate event_duration and event_ts_end

First, let's assemble a sample dataset:

import org.apache.spark.sql.functions._
import org.apache.spark.sql.expressions.Window
import spark.implicits._

val df = Seq(
  (101, "2019-04-01 09:00", 800),
  (101, "2019-04-01 09:30", 1800),
  (101, "2019-04-01 10:00", 2700),
  (101, "2019-04-01 12:00", 1000),
  (101, "2019-04-01 13:00", 1000),
  (220, "2019-04-02 10:00", 1500),
  (220, "2019-04-02 10:30", 2400)
).toDF("event_id", "event_time", "event_duration")

Note that the sample dataset has been slightly generalized to include more than a single event and make event time include date info to cover cases of an event crossing a given date.

Step 1:

import java.sql.Timestamp

def get_next_closest(seconds: Int) = udf{ (ts: Timestamp, duration: Int) =>
  import java.time.LocalDateTime
  import java.time.format.DateTimeFormatter

  val iter = Iterator.iterate(ts.toLocalDateTime)(_.plusSeconds(seconds)).
    dropWhile(_.isBefore(ts.toLocalDateTime.plusSeconds(duration)))

  iter.next.format(DateTimeFormatter.ofPattern("yyyy-MM-dd HH:mm:ss"))
}

Steps 2 - 5:

val winSpec = Window.partitionBy("event_id").orderBy("event_time")

val seconds = 30 * 60

df.
  withColumn("event_ts", to_timestamp($"event_time", "yyyy-MM-dd HH:mm")).
  withColumn("event_ts_end", get_next_closest(seconds)($"event_ts", $"event_duration")).
  withColumn("prev_event_ts", lag($"event_ts", 1).over(winSpec)).
  withColumn("event_ts_start",  when($"prev_event_ts".isNull ||
    unix_timestamp($"event_ts") - unix_timestamp($"prev_event_ts") =!= seconds, $"event_ts"
  )).
  withColumn("event_ts_start", last($"event_ts_start", ignoreNulls=true).over(winSpec)).
  groupBy($"event_id", $"event_ts_start").agg(
    sum($"event_duration").as("event_duration"), max($"event_ts_end").as("event_ts_end")
  ).show
// +--------+-------------------+--------------+-------------------+
// |event_id|     event_ts_start|event_duration|       event_ts_end|
// +--------+-------------------+--------------+-------------------+
// |     101|2019-04-01 09:00:00|          5300|2019-04-01 11:00:00|
// |     101|2019-04-01 12:00:00|          1000|2019-04-01 12:30:00|
// |     101|2019-04-01 13:00:00|          1000|2019-04-01 13:30:00|
// |     220|2019-04-02 10:00:00|          3900|2019-04-02 11:30:00|
// +--------+-------------------+--------------+-------------------+
  • Thank you for your help, I'm trying this silution but having some issues ,I guess it is because our scala version is 1.6 – mabe Apr 17 at 15:05
  • @mabe, to_timestamp is not available prior to Spark 2.2. You can replace to_timestamp($"event_time", "yyyy-MM-dd HH:mm") with from_unixtime(unix_timestamp($"event_time", "yyyy-MM-dd HH:mm")). – Leo C Apr 17 at 16:35

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