问题
Here is my exact requirement. I have to add a new column named ("DAYS_TO_NEXT_PD_ENCOUNTER"). As the name indicates, the values in the new column should have a difference of RANK that has claim_typ as 'PD' and the current row. For one ID, it can occur in-between any of the 'RV's and 'RJ's. For the rows that are present after the first occurence of claim_typ as 'PD', the difference should be null as shown below:
The API 'last' works if the clm_typ 'PD' occurs as the last element. It will not be the case always. For one ID, it can occur in-between any of the 'RV's and 'RJ's.
+----------+--------+---------+----+-------------------------+
| ID | WEEK_ID|CLAIM_TYP|RANK|DAYS_TO_NEXT_PD_ENCOUNTER|
+----------+--------+---------+----+-------------------------+
| 30641314|20180209| RV| 1| 5|
| 30641314|20180209| RJ| 2| 4|
| 30641314|20180216| RJ| 3| 3|
| 30641314|20180216| RJ| 4| 2|
| 30641314|20180216| RJ| 5| 1|
| 30641314|20180216| PD| 6| 0|
| 48115882|20180209| RV| 1| 3|
| 48115882|20180209| RV| 2| 2|
| 48115882|20180209| RV| 3| 1|
| 48115882|20180209| PD| 4| 0|
| 48115882|20180216| RJ| 5| null|
| 48115882|20180302| RJ| 6| null|
+----------+--------+---------+----+-------------------------+
回答1:
Shown here is a PySpark solution.
You can use conditional aggregation with max(when...))
to get the necessary difference of ranks with the first 'PD' row. After getting the difference, use a when...
to null
out rows with negative ranks as they all occur after the first 'PD' row.
# necessary imports
w1 = Window.partitionBy(df.id).orderBy(df.svc_dt)
df = df.withColumn('rnum',row_number().over(w1))
w2 = Window.partitionBy(df.id)
res = df.withColumn('diff_pd_rank',max(when(df.clm_typ == 'PD',df.rnum)).over(w2) - rnum)
res = res.withColumn('days_to_next_pd_encounter',when(res.diff_pd_rank >= 0,res.diff_pd_rank))
res.show()
来源:https://stackoverflow.com/questions/56241454/how-to-find-the-difference-between-1st-row-and-nth-row-of-a-dataframe-based-on-a