I have a job which runs every 5 hours and looks for complete data between postgres and redshift. Need to make a job which runs incrementally. The design I have been thinking is to get data in a gap of five hours and then put it in a table cause we want to show the consumers up to what time the data quality checks have been done.
For example: job 1 starts at 12.00am gmt
the data quality persistence table would have
the next job will take the end time of the previous job as starttime and look for data starttime+5hours and put all the records in the table. One of the requirement is if source and destination doesnt match then we have to see the last time they matched and get all the data from that time and then again do the count.
the design I have is:
started_time,end_time,src_count,dest_count,doescountmatch runtime:t1 t1 - 5,t1,1000,1000,true runtime:t2(t1+5) t1,t2,1000,1000,true (Get all the data between t2 and t1) runtime:t3(t2+5) t2,t3,1000,50,false (Get all the data between t3 and t2)
Now if the job fails at t3 , for the next run at t4 I need to find when was the last run which was successful i.e t2 in this case. To find that I will use:
select max(end_time) from table where doescountmatch = true
Not sure how scalable it would be if its running everyday.
Any pointers how to run incremental jobs while having visibility as to when was the last time that job was successful