I'm running performance tests against ATS and its behaving a bit weird when using multiple virtual machines against the same table / storage account.

The entire pipeline is non blocking (await/async) and using TPL for concurrent and parallel execution.

First of all its very strange that with this setup i'm only getting about 1200 insertions. This is running on a L VM box, that is 4 cores + 800mbps.

I'm inserting 100.000 rows with unique PK and unique RK, that should leverage the ultimate distribution.

Even more deterministic behavior is the following.

When I run 1 VM i get about 1200 insertions per second. When I run 3 VM i get about 730 on each insertions per second.

Its quite humors to read the blog post where they are specifying their targets. https://azure.microsoft.com/en-gb/blog/windows-azures-flat-network-storage-and-2012-scalability-targets/

Single Table Partition– a table partition are all of the entities in a table with the same partition key value, and usually tables have many partitions. The throughput target for a single table partition is:

Up to 2,000 entities per second

Note, this is for a single partition, and not a single table. Therefore, a table with good partitioning, can process up to the 20,000 entities/second, which is the overall account target described above.

What shall I do to be able to utilize the 20k per second, and how would it be possible to execute more than 1,2k per VM?



I've now also tried using 3 storage accounts for each individual node and is still getting the performance / throttling behavior. Which i can't find a logical reason for.


Update 2:

I've optimized the code further and now i'm possible to execute about 1550.


Update 3:

I've now also tried in US West. The performance is worse there. About 33% lower.


Update 4:

I tried executing the code from a XL machine. Which is 8 cores instead of 4 and the double amount of memory and bandwidth and got a 2% increase in performance so clearly this problem is not on my side..

  • What is the question? – Simon Munro Jan 21 '13 at 17:00
  • Good one @SimonMunro, adding :) – ptomasroos Jan 21 '13 at 20:41
  • 1
    Unlikely to be the answer, but... Have you just recently created the storage account you are using or have you had it a while? There was something about this higher performance target only working on storage accounts created after a certain date. – Frans Jan 21 '13 at 21:37
  • Yes it was newly created @Frans – ptomasroos Jan 22 '13 at 7:36
  • 1
    How peculiar. Have starred the question - I am intrigued now :) – Frans Jan 22 '13 at 7:57

A few comments:

  1. You mention that you are using unique PK/RK to get ultimate distribution, but you have to keep in mind that the PK balancing is not immediate. When you first create a table, the entire table will be served by 1 partition server. So if you are doing inserts across several different PKs, they will still be going to one partition server and be bottlenecked by the scalability target for a single partition. The partition master will only start splitting your partitions among multiple partition servers after it has identified hot partition servers. In your <2 minute test you will not see the benefit of multiple partiton servers or PKs. The throughput in the article is targeted towards a well distributed PK scheme with frequently accessed data, causing the data to be divided amongst multiple partition servers.

  2. The size of your VM is not the issue as you are not blocked on CPU, Memory, or Bandwidth. You can achieve full storage performance from a small VM size.

  3. Check out http://research.microsoft.com/en-us/downloads/5c8189b9-53aa-4d6a-a086-013d927e15a7/default.aspx. I just now did a quick test using that tool from a WebRole VM in the same datacenter as my storage account and I acheived, from a single instance of the tool on a single VM, ~2800 items per second upload and ~7300 items per second download. This is using 1024 byte entities, 10 threads, and 100 batch size. I don't know how efficient this tool is or if it disables Nagles Algorithm as I was unable to get great results (I got ~1000/second) using a batch size of 1, but at least with the 100 batch size it shows that you can achieve high items/second. This was done in US West.

  4. Are you using Storage client library 1.7 (Microsoft.Azure.StorageClient.dll) or 2.0 (Microsoft.Azure.Storage.dll)? The 2.0 library has some performance improvements and should yield better results.

  • Hey! Do you got any example from this quote, how to achive this? "The size of your VM is not the issue as you are not blocked on CPU, Memory, or Bandwidth. You can achieve full storage performance from a small VM size." – ptomasroos Feb 18 '13 at 17:48
  • I know this is a bit of a necro comment coming two years later... but your first point about PK balancing not being immediate is extremely interesting. I spent 4 hours last night optimising a bulk table insert routine... I was tearing down and re-creating the storage table every run on a relatively small run of 100k entities, ~30 rows per PK, maxing out at 5000 entities per second. Will be very interested to see if this changes later when I consider the partitioning delay. – Vok Nov 6 '15 at 8:57

Are the compute instances and storage account in the same affinity group? Affinity groups ensure that network proximity between the services is optimal and should result in lower latency at the network level.

You can find affinity group configuration under the network tab.

  • The virtual machines are in preview and doesn't seem to allow setting or initializing with a affinity group. I'm gonna try to setup a worker role and rdp to it and then run the tests without the affinity group and look at the result – ptomasroos Jan 24 '13 at 13:39
  • Yes, you can.. the name is just different, they call it virtual network there. But should be the same thing. – Yves Goeleven Jan 24 '13 at 14:16
  • Ah allright, right now i'm setting up a worker role anyway and running tests against a storage account within the same affinity group. – ptomasroos Jan 24 '13 at 14:24
  • Tried it now, same machine size. And with affinity group. Performance is worse. 1100 instead of 1500. I've ran the tests 3 times. – ptomasroos Jan 24 '13 at 15:53

I suspect this may have to do with TCP Nagle. See this MSDN article and this blog post.

In essence, TCP Nagle is a protocol-level optimization that batches up small requests. Since you are sending lots of small requests this is likely to negatively affect your performance.

You can disable TCP Nagle by executing this code when starting your application

ServicePointManager.UseNagleAlgorithm = false;
  • Already done. And i've tried with both approaches and yes using NaggleAltorithm is slower. Thanks – ptomasroos Jan 25 '13 at 7:37

I would tend to believe that the maximum throughput is for an optimized load. For example, I bet you that you can achieve higher performance using Batch requests than individual requests you are doing now. And of course, if you use GUIDs for your PK, you can't Batch in your current test.

So what if you changed your test to batch insert entities in groups of 100 (maximum per batch), still using GUIDs, but for which 100 entities would have the same PK?

  • Sure, I'm gonna give it a try even though its appropriate for our use-case. – ptomasroos Jan 28 '13 at 7:59

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.