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20:59
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Q: spark repartition to one output file per customer

Georg HeilerAssume I have a dataframe like: client_id,report_date,date,value_1,value_2 1,2019-01-01,2019-01-01,1,2 1,2019-01-01,2019-01-02,3,4 1,2019-01-01,2019-01-03,5,6 2,2019-01-01,2019-01-01,1,2 2,2019-01-01,2019-01-02,3,4 2,2019-01-01,2019-01-03,5,6 My desired output structure would be a CSV or JSON ...

So, what is the question? Customer_id is large but then you state is small...
The data per customer is mall but there are many customers. I want to end up with one single file per customer. My initial strategy was to use spark partitions. However they would only work if repartition 1 is executed. But this will not work as there are too many customers. So is there a different option?
But in your example that is what I see. What if there are 2 dates for the same customer?
That is correct. But differentiate report_date and date. Partitioning os happending per customer_id and 'report_date' i.e. there should be a file per customer_id and report_date.
But that's what I see happening, I just tried it and got that as you state. So, what to think? On a small sample.
How much input are you using?
You do say 1 single file per customer - which is a little confusing.
20:59
On a large cluster not single node installation I get multiple files except using repartition 1
Prior to aggregation about 1TB
OK, but I do not really get that as repartition is for DF prior to write via df.write.
You need to be clear: 1 file per customer or 1 file per customer and reporting date.
Second case is the desired one
I ran various tests up to 60M rows of simulated input and I noted I always got your second case. May be the volume I have tried is not enough. But I can see no issue.
100M rows, no issue, so leaving it.
So no issue with repartition 1?
No, but there is a limit to partition size for Spark. 2GB. Is that what vthe question is about? repartition 1 seems a bad strategy if you have a lot of data.
20:59
Exactly. So is there a way to stil get the desired result without repartition 1?
Now we are talking. Well you need to increase number of partitions to avoid 2GB issue. You can use an algorithm to set the repartition(num-partitions, .... That is a different aspect to write partitionby.

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