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I have huge dataset (over 30GB) and now I need to create relationship betwee two tables, one gas over 40milion rows and is increasing rapidly each month, the other is daily and has almost bilion rows.
The issue is, I need to create relationship based on date and customer key. (One is monthly, other is daily, so first I have to make daily date as start of month and then concatenate two columns and create relationship). However, it became huge number, and is quite expensive for dax. ( I tried to convert date to value and substract years of it, to make date number shorter, now it is 3 digits but soon will be 4). Like this: 01/01/2022 = 100 , 01/02/2022 = 131 etc..
But even like this I believe it is not optimal, is there better solution for this?
Solved! Go to Solution.
@GeorgeVepkhvadz , Integer join works best for date you can integer in YYYYMMDD format
Year([Date])*10000 + Month([Date]) *100 + Day([Date])
@GeorgeVepkhvadz , Integer join works best for date you can integer in YYYYMMDD format
Year([Date])*10000 + Month([Date]) *100 + Day([Date])
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