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My goal is to get a column who's the "value of reference" for a distinct couple (product/store/day).

to be more precise if for the product 15 in store 1 at 2018-10-10 i want a column that return the quantity sold for the product 15 in store 1 at 2017-10-10 BUT that value may be missing, so i would like to impute at this new column if the previous year is non-existant the mean of his qty sold between 2017-10-10 - 7 days and 2017-10-10 + 7 days and keep going with that method (until -1month + 1month).

#-- > new columns as ...
data = [Row(store= 1, product = 1, date = "2017-01-01", quantity = 5, previous_year_qty = None),
    Row(store=1 , product =1, date = "2016-12-29", quantity = 8, previous_year_qty = None),
    Row(store=1, product =1, date = "2017-01-03", quantity = 12, previous_year_qty = None),
    Row(store=1, product =1, date = "2018-01-01", quantity = 10, previous_year_qty = 5)
   ]

df = sqlContext.createDataFrame(data)

+----------+-----------------+-------+--------+-----+                           
|      date|previous_year_qty|product|quantity|store|
+----------+-----------------+-------+--------+-----+
|2017-01-01|             null|      1|       5|    1|
|2016-12-29|             null|      1|       8|    1|
|2017-01-03|             null|      1|      12|    1|
|2018-01-01|                5|      1|      10|    1|
+----------+-----------------+-------+--------+-----+

"""
--> if previous year is None so : 

previous year qty for the last row should be (8 + 12)/2 = 10
"""

I tried to do that :

w7 = (Window.partitionBy(["id_sku", "id_store", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-7, 7))
w15  = (Window.partitionBy(["id_sku", "id_store", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-15, 15))
w30 = (Window.partitionBy(["id_sku", "id_store", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-30, 30))
wlarge = (Window.partitionBy(["id_sku", "id_store", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-60, 60))
wsos7 = (Window.partitionBy(["id_sku", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-7, 7))
wsos15 = (Window.partitionBy(["id_sku", "REF_DAY"]).orderBy(F.col("REF_DAY").cast(IntegerType())).rangeBetween(-15, 15))

#if qty ref is still > 50% null 
self_ticket_join = (ticket
    .withColumn("REF_DAY", F.date_sub("dt_ticket", 365))
    .withColumn("prev_qty_7",  F.avg("f_qty_recalc").over(w7))
    .withColumn("prev_qty_15",  F.avg("f_qty_recalc").over(w15))
    .withColumn("prev_qty_30",  F.avg("f_qty_recalc").over(w30))
    .withColumn("prev_qty_large",  F.avg("f_qty_recalc").over(wlarge))
    .withColumn("prev_qty_sos7",  F.avg("f_qty_recalc").over(wsos7))
    .withColumn("prev_qty_sos15",  F.avg("f_qty_recalc").over(wsos15))
    .withColumn("prev_prc_7",  F.avg("prc_sku").over(w7))
    .withColumn("prev_prc_15",  F.avg("prc_sku").over(w15))
    .withColumn("prev_prc_30",  F.avg("prc_sku").over(w30))
    .withColumn("prev_prc_large",  F.avg("prc_sku").over(wlarge))
    .withColumn("prev_prc_sos7",  F.avg("prc_sku").over(wsos7))
    .withColumn("prev_prc_sos15",  F.avg("prc_sku").over(wsos15))
    .select(
        F.col('id_sku').alias("prev_id_sku"),
        F.col('id_store').alias("prev_id_store"), 
        F.col('REF_DAY').alias("REF_DAY"), 
        F.col("f_qty_recalc").alias("prev_year_qty"), 
        F.col("prc_sku").alias("prev_year_price"), 
        F.col("prev_qty_7").alias("prev_qty_7"),
        F.col("prev_qty_30").alias("prev_qty_30"),
        F.col("prev_qty_15").alias("prev_qty_15"),
        F.col("prev_qty_sos7").alias("prev_qty_sos7"),
        F.col("prev_qty_sos15").alias("prev_qty_sos15"), 
        F.col("prev_prc_7").alias("prev_prc_7"),
        F.col("prev_prc_15").alias("prev_prc_15"),
        F.col("prev_prc_30").alias("prev_prc_30"),
        F.col("prev_prc_sos7").alias("prev_prc_sos7"), 
        F.col("prev_prc_sos15").alias("prev_prc_sos15"),
        F.col("prev_qty_large").alias("prev_qty_large"),
        F.col("prev_prc_large").alias("prev_prc_large"))
    ).cache()

First i calcul a reference day who's date - 365 then i calcul some moving average with a windows around that reference. Then i'll do a self join on the same dataframe on the following join's keys :

  • (id_store = id_store) (store id)
  • (id_sku = id_sku) (product id)
  • (ref_day = dt_ticet) (date-365 = date)

    ticket= (ticket
    .join(self_ticket_join
        , ([self_ticket_join.prev_id_store == ticket.id_store,
          self_ticket_join.prev_id_sku ==  ticket.id_sku, 
          self_ticket_join.REF_DAY ==  ticket.dt_ticket]), how = "left")
    .withColumn("qty_ref", F.coalesce(F.col("prev_year_qty"), F.col("prev_qty_7"), F.col("prev_qty_15"), F.col("prev_qty_30"), F.col("prev_qty_large"),
        F.col("prev_qty_sos7"), F.col("prev_qty_sos15")))
    .withColumn("price_ref", F.coalesce(F.col("prev_year_price"), F.col("prev_prc_7"), F.col("prev_prc_15"), F.col("prev_prc_large"),
        F.col("prev_prc_30"), F.col("prev_prc_sos7"), F.col("prev_prc_sos15")))
    .drop("prev_prc_7", "prev_prc_15", "prev_prc_30", "prev_prc_sos7", "prev_prc_sos15", 
     "prev_qty_7", "prev_qty_15", "prev_qty_30", "prev_qty_sos7", "prev_qty_sos15")
    ).cache()
    

The problem I encountered with trying to do that through a self join on the same dataframe that if the reference day doesnt exist for my distinct couple product/store then my previous year will be None but every windows function calculated will be None too.

So i looking for a method to calculate that 'reference column' without loose windows information even if the reference day does'nt exist

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