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I am new to SSIS, and am trying to use its Parallelism Feature to import data from a database.

My job is to do this: Import a multi terabyte database into a set of flat files as quickly as possible.

I was thinking of this:

I have a Microsoft Server 2008 HPC Cluster (of 3 nodes) at my disposal. I was thinking of writing a HPC SOA job so that all the three compute nodes can make independent connections to the SQL Server and import a portion of the data in parallel. Ofcourse this would have nothing to do with SSIS and be an independent utility.

Then I came across SSIS, and its parallel import features. MY SSIS Server is not very high end - only a 4GB Machine. I am somehow inclined to use SSIS because that's the ideal Microsoft way of doing data import - and I won't have to rewrite a lot of stuff and possibly use existing transformations etc.

What is the best way to use Custom Tasks (or available ones) and do this import in parallel?

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Gitmo, I may misunderstand your question but will give it a shot. You need to move data from a SQL Server instance to multiple files, correct? You want to leverage the parallelised data movement functionality provided by SSIS. That means multiple simultaneously running Data Flow Tasks (DFTs). For each target file you can have only one DFT because of problems with concurrent writes.

To get multiple simultaneously running Data Flow Tasks where your source is a SQL Server database and your target is a set of files, you can possibly try the following ways (please note there are upper limits on the parallelization you can get out of SSIS based upon many factors including your CPU Core count, whether you are running in BIDS/Visual Studio or not, and various settings in your packages, your server(s), your SQL Server instance, and many other considerations):

  1. The Multiple Simultaneous DFT Solution: A single SSIS Package with one Connection Manager pointed to the source SQL Server database and many Connection Managers each pointed to a separate target file, plus one DFT for each target file. The DFTs are all disconnected from one another (no precedence constraints or green/red/blue lines/arrows). If there are pre or post ETL steps that need to run a great way to parallelize these DFTs is to drop them all in a Sequence Container that is connected to the earlier and later tasks through precedence constraints/arrows. These disconnected DFTs in their own Sequence Container will try to all run simultaneously.
  2. The Multiple Simultaneous DTEXEC Solution: Multiple SSIS packages each with their own target file-specific DFT. You manually run separate DTEXEC processes either through separate CMD windows or through the GUI. #3 below is a variation on this solution and possibly a better one.
  3. The Parent Master Package Running Multiple Children Packages Solution: Wrap the per target file packages developed in #2 above in a single Parent Master package. In the Parent package have multiple simultaneously running Execute Package Tasks. Again these Execute Package Tasks would be disconnected from other tasks. A good way to do this is to drop the multiple Execute Package Tasks in their own Sequence Container. As before if the Execute Package Tasks are disconnected (no precedence constraints/arrows) they will all try to run simultaneously.

Take a look at this excellent article from the Microsoft SQLCAT Team for some more ideas/insight: Top 10 SQL Server Integration Services Best Practices

There are likely variations on these same ideas and possibly other solutions available both inside and outside of SSIS. Good luck!

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Hi Stephen, Thanks for your answer. This parallelism would always be restricted by the hardware of the SSIS Server, right? I have an Microsoft HPC Cluster at my disposal. If I can write some kind of a distributed application which will get the compute nodes in the cluster to create independent SQL Connection and import a partition of the data, wouldn't it be faster? Any ideas? Can I somehow use Custom Tasks to get the compute nodes in the cluster to do this? These are some ideas floating in my mind, I wanted somebody to validate. Thanks for your answer! – Gitmo May 20 '11 at 6:27
okay, let me add to this. Can I somehow do a remote SSIS package invocation? If somehow we can create ssis package programmatically, i can spawn them on multilple nodes and import data parallely. Any ideas? – Gitmo May 23 '11 at 8:29

please look this post ..... using multi threading out side ssis and acheiveing parallelism Multithreaded serial execution

with out modifying much of package

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