6

I've a spark data frame with columns - "date" of type timestamp and "quantity" of type long. For each date, I've some value for quantity. The dates are sorted in increasing order. But there are some dates which are missing. For eg - Current df -

Date        |    Quantity
10-09-2016  |    1
11-09-2016  |    2
14-09-2016  |    0
16-09-2016  |    1
17-09-2016  |    0
20-09-2016  |    2

As you can see, the df has some missing dates like 12-09-2016, 13-09-2016 etc. I want to put 0 in the quantity field for those missing dates such that resultant df should look like -

Date        |    Quantity
10-09-2016  |    1
11-09-2016  |    2
12-09-2016  |    0
13-09-2016  |    0
14-09-2016  |    0
15-09-2016  |    0
16-09-2016  |    1
17-09-2016  |    0
18-09-2016  |    0
19-09-2016  |    0
20-09-2016  |    2

Any help/suggestion regarding this will be appreciated. Thanks in advance. Note that I am coding in scala.

3 Answers 3

12

I have written this answer in a bit verbose way for easy understanding of the code. It can be optimized.

Needed imports

import java.time.format.DateTimeFormatter
import java.time.{LocalDate, LocalDateTime}
import org.apache.spark.sql.expressions.Window
import org.apache.spark.sql.functions._
import org.apache.spark.sql.types.{LongType, TimestampType}

UDFs for String to Valid date format

 val date_transform = udf((date: String) => {
    val dtFormatter = DateTimeFormatter.ofPattern("d-M-y")
    val dt = LocalDate.parse(date, dtFormatter)
    "%4d-%2d-%2d".format(dt.getYear, dt.getMonthValue, dt.getDayOfMonth)
      .replaceAll(" ", "0")
  })

Below UDF code taken from Iterate over dates range

  def fill_dates = udf((start: String, excludedDiff: Int) => {
    val dtFormatter = DateTimeFormatter.ofPattern("yyyy-MM-dd HH:mm:ss")
    val fromDt = LocalDateTime.parse(start, dtFormatter)
    (1 to (excludedDiff - 1)).map(day => {
      val dt = fromDt.plusDays(day)
      "%4d-%2d-%2d".format(dt.getYear, dt.getMonthValue, dt.getDayOfMonth)
        .replaceAll(" ", "0")
    })
  })

Setting up sample dataframe (df)

val df = Seq(
      ("10-09-2016", 1),
      ("11-09-2016", 2),
      ("14-09-2016", 0),
      ("16-09-2016", 1),
      ("17-09-2016", 0),
      ("20-09-2016", 2)).toDF("date", "quantity")
      .withColumn("date", date_transform($"date").cast(TimestampType))
      .withColumn("quantity", $"quantity".cast(LongType))

df.printSchema()
root
 |-- date: timestamp (nullable = true)
 |-- quantity: long (nullable = false)


df.show()    
+-------------------+--------+
|               date|quantity|
+-------------------+--------+
|2016-09-10 00:00:00|       1|
|2016-09-11 00:00:00|       2|
|2016-09-14 00:00:00|       0|
|2016-09-16 00:00:00|       1|
|2016-09-17 00:00:00|       0|
|2016-09-20 00:00:00|       2|
+-------------------+--------+

Create a temporary dataframe(tempDf) to union with df:

val w = Window.orderBy($"date")
val tempDf = df.withColumn("diff", datediff(lead($"date", 1).over(w), $"date"))
  .filter($"diff" > 1) // Pick date diff more than one day to generate our date
  .withColumn("next_dates", fill_dates($"date", $"diff"))
  .withColumn("quantity", lit("0"))
  .withColumn("date", explode($"next_dates"))
  .withColumn("date", $"date".cast(TimestampType))

tempDf.show(false)
+-------------------+--------+----+------------------------+
|date               |quantity|diff|next_dates              |
+-------------------+--------+----+------------------------+
|2016-09-12 00:00:00|0       |3   |[2016-09-12, 2016-09-13]|
|2016-09-13 00:00:00|0       |3   |[2016-09-12, 2016-09-13]|
|2016-09-15 00:00:00|0       |2   |[2016-09-15]            |
|2016-09-18 00:00:00|0       |3   |[2016-09-18, 2016-09-19]|
|2016-09-19 00:00:00|0       |3   |[2016-09-18, 2016-09-19]|
+-------------------+--------+----+------------------------+

Now union two dataframes

val result = df.union(tempDf.select("date", "quantity"))
  .orderBy("date")

result.show()
+-------------------+--------+
|               date|quantity|
+-------------------+--------+
|2016-09-10 00:00:00|       1|
|2016-09-11 00:00:00|       2|
|2016-09-12 00:00:00|       0|
|2016-09-13 00:00:00|       0|
|2016-09-14 00:00:00|       0|
|2016-09-15 00:00:00|       0|
|2016-09-16 00:00:00|       1|
|2016-09-17 00:00:00|       0|
|2016-09-18 00:00:00|       0|
|2016-09-19 00:00:00|       0|
|2016-09-20 00:00:00|       2|
+-------------------+--------+
1
  • 1
    Hi! Can you please post this answer in pyspark?
    – pissall
    May 7, 2018 at 12:18
12

Based on the @mrsrinivas excellent answer, here is the PySpark version.

Needed imports

from typing import List
import datetime
from pyspark.sql import DataFrame, Window
from pyspark.sql.functions import col, lit, udf, datediff, lead, explode
from pyspark.sql.types import DateType, ArrayType

UDF to create the range of next dates

def _get_next_dates(start_date: datetime.date, diff: int) -> List[datetime.date]:
    return [start_date + datetime.timedelta(days=days) for days in range(1, diff)]

Function the create the DateFrame filling the dates (support "grouping" columns):

def _get_fill_dates_df(df: DataFrame, date_column: str, group_columns: List[str], fill_column: str) -> DataFrame:
    get_next_dates_udf = udf(_get_next_dates, ArrayType(DateType()))

    window = Window.orderBy(*group_columns, date_column)

    return df.withColumn("_diff", datediff(lead(date_column, 1).over(window), date_column)) \
        .filter(col("_diff") > 1).withColumn("_next_dates", get_next_dates_udf(date_column, "_diff")) \
        .withColumn(fill_column, lit("0")).withColumn(date_column, explode("_next_dates")) \
        .drop("_diff", "_next_dates")

The usage of the function:

fill_df = _get_fill_dates_df(df, "Date", [], "Quantity")
df = df.union(fill_df)

It assumes that the date column is already in date type.

0

Here is a slight modification, to use this function with months and enter measure columns (columns that should be set to zero) instead of group columns:

from typing import List
import datetime
from dateutil import relativedelta
import math
import pyspark.sql.functions as f
from pyspark.sql import DataFrame, Window
from pyspark.sql.types import DateType, ArrayType

def fill_time_gaps_date_diff_based(df: pyspark.sql.dataframe.DataFrame, measure_columns: list, date_column: str):
    
    group_columns = [col for col in df.columns if col not in [date_column]+measure_columns]
    
    # save measure sums for qc
    qc = df.agg({col: 'sum' for col in measure_columns}).collect()

    # convert month to date
    convert_int_to_date = f.udf(lambda mth: datetime.datetime(year=math.floor(mth/100), month=mth%100, day=1), DateType())
    df = df.withColumn(date_column, convert_int_to_date(date_column))

    # sort values
    df = df.orderBy(group_columns)

    # get_fill_dates_df (instead of months_between also use date_diff for days)
    window = Window.orderBy(*group_columns, date_column)

    # calculate diff column
    fill_df = df.withColumn(
        "_diff", 
        f.months_between(f.lead(date_column, 1).over(window), date_column).cast(IntegerType())
    ).filter(
        f.col("_diff") > 1
    )

    # generate next dates
    def _get_next_dates(start_date: datetime.date, diff: int) -> List[datetime.date]:
        return [
            start_date + relativedelta.relativedelta(months=months)
            for months in range(1, diff)
        ]

    get_next_dates_udf = f.udf(_get_next_dates, ArrayType(DateType()))

    fill_df = fill_df.withColumn(
        "_next_dates",
        get_next_dates_udf(date_column, "_diff")
    )

    # set measure columns to 0
    for col in measure_columns:
        fill_df = fill_df.withColumn(col, f.lit(0))

    # explode next_dates column
    fill_df = fill_df.withColumn(date_column, f.explode('_next_dates'))

    # drop unneccessary columns
    fill_df = fill_df.drop(
        "_diff",
        "_next_dates"
    )
    
    # union df with fill_df
    df = df.union(fill_df)
    
    # qc: should be removed for productive runs
    if qc != df.agg({col: 'sum' for col in measure_columns}).collect():
        raise ValueError('Sums before and after run do not fit.')
    
    return df

Please note, that I assume that the month is given as Integer in the form YYYYMM. This could easily be adjusted by modifying the "convert month to date" part.

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