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Problem statement : How to parallelize inserts in SQL Server (2008)

I am performing massive numeric computation for scientific research in C# multithreaded workers that basically do one thing : Test thousands of possible configurations (matrix combinations) through a time period (in days) and store the results into an SQL Server Database.

If i store the results one by one into DB (~300.000 lines per computing session * 100's of sessions), one after the other, I end up waiting for hours for the storing process to end.

The database design is very simple :

  • Combination Sets
    CS_ID1, Value A1, Value B1, Value C1
    CS_ID2, Value A2, Value B2, Value C2

  • Results per Day
    CS_ID1, Day1,Result 1
    CS_ID1, Day2,Result 2
    CS_ID1, Day3,Result 3

    CS_ID2, Day1, Result N
    CS_ID2, Day2, Result N+1
    CS_ID2, Day3, Result N+2

Each "Combination Set" is tested against sample days and its per-day results are processed in a single C# thread, where a LINQ/SQL query is generated and sent to DB just before the end of the thread. Except combination set IDs sequences, there is NO logical relation between Results. This is very important : This is why I thought of parallelizing the insert stuff as it basically amounts to a bulk dump of result blocks

Another detail that could be important is that it is possible to determine beforehand how much rows will be inserted into the Database (per block and in total). This probably could help organize table spaces, split them through pages, pre-fix id ranges in order to store blocks simultaneously, or something like that (No, i'm not "high" or something :-) )

I welcome any kind of suggestions in order to make this insert time as short as possible.

Please take into account that I am a C# developer, with very basic SQL Server knowledge and not very familiar with deep technical DBA concepts (I saw that Locking tweaks are VERY numerous, that there are multithreaded and asynchronous capabilities, too, but I have to admit I am lost alone in the forest :-) )

I Have 12 CPU Cores available, and 24Go RAM

EDIT: Tiebreaker
I welcome any clever suggestion on monitoring time for the whole process : From C# threads inception/end to detailed SQl server insert reports (What happens when, how, and where).
I tried logging whith NLog but it drastically biases the processing time so I am looking for some smart workarounds that are pretty seamless with minimum impact. Same for the SQL server part : I know there are a couple of Logs and monitoring SP's available. I did not figure out yet which ones suit my situation.

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One colleague suggested to serialize results on binary/text files and dump them all into DB using Bulk Insert from flat files... Not sure about that being a sound solution. –  Mehdi LAMRANI Nov 16 '10 at 18:01
I am by no means a DBA, but I would wonder a couple of things here: 1) is it your CPU that is limiting it, or disk? 2) does the locking mechanism of the DB actually allow parallel inserts? If it's disk-limited, and the DBMS doesn't lock out multiple processes, you could try splitting the data to be inserted across multiple disks and forking processes to insert them. –  syrion Nov 16 '10 at 18:03
Is it enough to split the queries through separate connections ? How does SQL Server react to that, "physically" ? Are inserts really written simultaneously in the DB, at various row positions ? –  Mehdi LAMRANI Nov 16 '10 at 18:09
@syrion : As of now, I still have no idea of whether the CPU or HD is limiting the process. I am just wondering about what the best thing to handle this, in general. As far as my knowledge goes, even if the DB authorizes multiple processes, I don't know if it is possible for two (or more) processes to write on the same table simultaneously, would that table be splitted across different HDs or not. –  Mehdi LAMRANI Nov 16 '10 at 18:19

7 Answers 7

up vote 3 down vote accepted

If you are using a separate transaction for each insert, that would definitely affect performance, as the DB server would have to atomically perform each insert. I have never used SQL server, but most SQL variants have a way to bunch more than one inserts in a single transaction, usually with something like


...<various SQL statements>...


For the SQL server syntax see:



In my experience bundling inserts like this definitely helps with server performance and, to some extent, resource and network usage.


Most (all?) decent DB servers use some sort of per-row locking, rather than per-table locks. You should be able to have multiple concurrent transactions, each with multiple inserts, with no problem - that's what DB servers are designed for. You could certainly have each worker thread perform its own transactions, thus parallelizing the inserts from different threads.

Since you are apparently using a single computer for the computations and the DB, extensively parallelizing DB transactions would not affect performace too much and it might even make it worse, since you don't really have any network latencies to reduce the impact of. As long as all CPU cores are busy, which would probably imply a number of workers >= 12, you should be looking at other optimisations.

If your threads generate their output in one go after processing (e.g. if you compute a large matrix and then dump in to the database) I doubt you would gain anything by storing the result into a file and then having the DB read it back into a table.

If, on the other hand, your threads do their output piece-by-piece you might benefit by storing parts of their output in memory, then inserting those parts in the DB, performing more than one transactions per round. Raising the number of worker threads in that case might allow you to have better CPU utilisation while the DB is storing the data, if the CPU is underutilised.

Storing the worker output in a file should IMHO be avoided since it effectively triples the load on the disk subsystem. The only reason you might want to do that is if you really don't have the memory for intermediate storing of the results.

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No I definitely do not perform one transaction per insert (that would end up with 300.000+ transactions :-) ). My question is more about parallelizing blocks of insert statements, rather than sending them block by block to Database. –  Mehdi LAMRANI Nov 16 '10 at 18:30
Sending them in blocks may definitively improve performance as you are not making one round trip to SQL Server for each insert. –  Gerardo Grignoli Nov 16 '10 at 19:06
Thank you for your helpful Edit. My threads do indeed their output piece-by-piece. I'll have a close look at it. –  Mehdi LAMRANI Nov 17 '10 at 10:48

300k inserts is a matter of seconds, at worst minutes, not hours. You must be doing it wrong. The ETL SSIS world record back in 2008 was at 2.36 TB/hour, 300k records is nothing.

The basic rules of thumb are:

  • batch commit. this is the most important thing. Don't INSERT a row, then INSERT a row, then INSERT a row at nauseam, each insert int its own transaction. Your program has to wait for the log (LDF) to flush after each statement int his case, and will be slow. Very slow. Instead start a transaction, then insert a batch of rows, then commit the transaction:


  using (TransactionScope scope = new TransactionScope(
     Required, new TransactionOptions() {IsolationLevel = ReadCommitted))
    for (batchsize)
      ExecuteNonQuery ("Insert ...")
    scope.Complete ();
} while (!finished);

The first option alone will get you above 3000 inserts per second (~2 minutes for 300k). Second option should get you into tens of thousands per second range. If you need more, there are more advanced tricks:

  • use heaps instead of b-trees (no clustered index)
  • disable secondary indexes
  • affinitize clients to soft NUMA nodes and push into locked tables per client conenction, then switch them all in using partition switching at the end. This is for Really high end, millions of rows per second.

I suggest you start with the basics of the basics: batch commits.

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Thank you for your insight Remus, that was VERY helpful. I did not make myself clear about volumetry : It is 300K+ records per computation, but I have hundreds to few thousands of computations every day. Moreover, our DB is about to grow really huge (can't exactly tell the size for now, but probably a few TBs). One important detail is that I am using a LINQ ORM Framework(AgileFX), but I guess I have to switch back to a handmade solution if I want to have hands-on the transaction procedures... –  Mehdi LAMRANI Nov 17 '10 at 10:23
I have added a "Tiebreaker" at the end of my post. You may be of some help on that one too, concerning monitoring the DB –  Mehdi LAMRANI Nov 17 '10 at 10:38
To monitor the C# code, add performance counters to your app: rusanu.com/2009/04/11/…. To monitor the DB try to follow a procedure like Waits and Queues: msdn.microsoft.com/en-us/library/cc966413.aspx –  Remus Rusanu Nov 17 '10 at 17:47
Great. I'll take a deep look at this. Many ThanX ! –  Mehdi LAMRANI Nov 17 '10 at 19:25

The BULK INSERT might help here.

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Here's an article on doing bulk insert using C#: http://blogs.msdn.com/b/nikhilsi/archive/2008/06/11/bulk-insert-into-sql-from-c-app.aspx

Additional thoughts on bulk insert with C# are in a Stack Overflow question: What’s the best way to bulk database inserts from c#

Hope this helps.

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Thank you, this sounds interesting indeed. Still am curious about how does this technically differ from regular transactions and why is it faster, so i'm going to dig that a bit. The delicate part is that I am using a LINQ-based ORM (AgileFX) and I do not know if it feasible "as is". –  Mehdi LAMRANI Nov 16 '10 at 18:48
Okay. I haven't played with LINQ much (yet) so I'm not sure if it's compatible. Hopefully it is. –  Jon Nov 16 '10 at 19:03
Difference between normal and bulk inserts is the method used to update B-Tree. Normal inserts follow classic "top down/split" approach, bulk inserts build the tree from the leafs. –  Pavel Urbančík Nov 17 '10 at 15:12

You can try using a Parallel For to do the inserts...

... but I would try BULK INSERT or Batch commit first...

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This is an interesting problem. First, how are you using the values in the database? Do they participate in subsequent calculations or is database just "dump" to store the results for later processing? Also is you application/process running 24 hours a day?
Why am I asking - if you could split the "store results" and "process results" operations, you could achieve higher throughput by "blobbing" the data from one session and storing them as one blob. Later, in off-peek time, you could walk and process and "expand" these blobs into tables for example using job or another process. In theory, if this would be OK, you could store these "staging" blobs in binary files, not directly in database, to achieve probably maximum possible write speed (limited only by the file system, OS and underlying disc hardware).

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Well the simple thing about this is that there are no concurrent read write access (well not yet, at least). I just dump all the result data right in the DB for later processing/Data Mining. No 24H running process: Computations go just as researchers decide it during the day (and sometimes let servers do scheduled jobs by night). –  Mehdi LAMRANI Nov 17 '10 at 19:40
If I get it your idea right, it comes down to postponing the storing process to temporarily relieve the load from the processors/Database. Did not think of that, could be an interesting alternative, for a particualr use case where the Research Analyst woudl be ok to wait until the day after to get the results, and perform the "unblobbing" by night. –  Mehdi LAMRANI Nov 17 '10 at 19:40

Maybe this might help you

I have a step by step guide on how to execute parallel stored procedures in SQL here.

You might be able to combine bulk insert with this one.

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