Hey afshin,

Your point 1 is innumerably faster than the latter.

It further shoots up the speed if you know how to properly use distKey and
sortKey on the tables being loaded.

Thanks,
Aakash.
https://www.linkedin.com/in/aakash-basu-5278b363


On 24-Apr-2017 10:37 PM, "Afshin, Bardia" <bardia.afs...@capitalone.com>
wrote:

I wanted to reach out to the community to get a understanding of what
everyones experience is in regardst to maximizing performance as in
decreasing load time on loading multiple large datasets to RedShift.



Two approaches:

1.       Spark writes file to S3, RedShift COPY INTO from S3 bucket.

2.       Spark directly writes results to RedShfit via JDBC



JDBC is known for poor performance, and RedShift (wihtout any provided
examples) claims you can speed up loading from s3 buckets via different
queues set up in your RedShift Workload Management.



What’s the communities experience with desiging processes which large
datasets are needed to be pushed into RedShfit and doing it in minimal time
taken to load the data to RedShift?

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