... as does nearly every public cloud provider. I agree with most of the article, but you can't fault Intel for benchmarking the hardware that cloud providers are actually offering.
I'm not sure what exactly NVIDIA is doing with their Tesla product line but whatever it is, it's really restricting the availability of recent GPU hardware. Even Azure's GPU instances released this month are using the Kepler architecture from 2012. It's fully two generations out of date now, and that's sad.
I mean Intel is comparing their publicly unavailable product against NVIDIA's publicly available product. Now NVIDIA is replying with the benchmarks on their (as of yet) publicly unavailable product.
yet we should keep in mind that Intel makes its own chips, while Nvidia clear has an availability problem[1] which it cannot fix on its own. Therefore to the extent that Intel controls its own destiny better, we may find that to be a major factor in adoption rates for large installations.
Not even wrong. I have two PCs with 4 Titan X (Maxwell) GPUs and a third PC with 4 Titan X (Pascal) GPUs. Both of these systems are available today (I built them myself, total BOM about $7K), and both will destroy 4 Xeon Phi servers at Deep Learning.
In comparison, a single Knights Landing Xeon Phi will be ~$7K. I know where I put my money. Caveat Emptor.
But Xeon Phi and I go way back here. They've been trying to beat my AMBER GPU code since 2013 or so. Many man years later I believe that a Knight's Corner is now ~35% faster than 2 Xeon CPUs with 1M atoms or more (source: http://adsabs.harvard.edu/abs/2016CoPhC.201...95N)
Meanwhile, the CUDA code has continued to scale with the GPU roadmap and a Titan XP is arguably 9-10x faster than 2 Xeon CPUs. No data is supplied at the low-end for Xeon Phi and I think we can safely assume it's because performance there sucks. (source: http://ambermd.org/gpus/benchmarks.htm)
Xeon Phi? IMO avoid avoid avoid until they start winning head to head 3rd party benchmarking fights like Soumith Chintala's fantastic convnet benchmark data: https://github.com/soumith/convnet-benchmarks
Yes to all of this. I'm really surprised they didn't compare costs in this blog post. Ignore the DGX-1 row of their table; the really damning comparison is between the 2nd and 4th rows of the table.
With a single 4x GPU server costing around $7k in total (row 4), you get nearly double the performance you get from spending $28k on four Xeon Phi servers (row 2).
And that's assuming you've spent the time and disk replicating your data on all four of those Xeon Phi servers, or went to a likely relatively large amount of engineering effort to ensure that network IO doesn't bottleneck training.
Omnipath also sucks compared to Infiniband. How are they making so many inroads into HPC with these offerings? I mean, aside from their dominant-for-good-reason CPUs.
Please share the data, particularly for the built-in interfaces on ~70 cores which are supposed to be available this year (given the blanket statement). Omni-path seems to be worrying Mellanox, judging by a recent visit.
So, a specific MD code may or may not work well with KNL -- we don't have data. KNL looks quite attractive for other chemistry, given all the vector units, large amount of fast memory, and ability to run realistically-sized examples without the network, or potentially the network-on-chip. We'll see how it pans out.
I prefer to look at it the other way, why don't you point out an existing and important chemistry application where KNL bested its contemporary GPUs, say the best of Knight's Corner versus the best of Kepler (K40 or K80). I'm also open to Knight's Landing versus GP100 (vaporware versus no longer vaporware but hard to get)
I'm genuinely interested here because I can't find this anywhere. I don't think it exists personally.
KNL is not Knights Corner, and I have limited information on either. I'm interested in data and, more to the point, insight -- not just single benchmark numbers or specific programs, especially if they've had a lot of GPU effort and no tuning for KNL. I don't expect KNL to be particularly good for applications that aren't highly vectorizable, though the memory system may help.
If I manage to access the KNL here, I'll probably run cp2k and gromacs, though single node performance is of limited interest, and ELPA doesn't currently have AVX512-specific support.
Even so, right now, little would please me more technologically than a competitive Xeon Phi offering, but while KNL is better than KNC, my inside info says it sucks too (it would have been a lot more interesting, just like Altera's Stratix 10, if it had shipped before GP100 and GP102).
Right now, I have more confidence in AMD GPUs right now than I have in Xeon Phi. This 3rd party benchmark is particularly interesting (and it doesn't look like anyone at NVIDIA is paying any attention to it):
Sure, NVIDIA is still in the lead, but not with the ~10x margins they used to have over AMD.
Finally, I figuratively feel like punching the next person who makes the BS scaling argument over raw performance. GPUs scale too if they're coded correctly. And cloud datacenters are the worst place for that given their craptastic ~10 Gb/s interconnect subject to arbitrary network weather effects.
Or butchering Seymour Cray: Your life depends on winning a race, would you bet your life on a 1,350 HP Venom GT or on 20 179 HP Scion FRSs? I mean collectively that's almost 3600 HP, right? Except it's even worse because for GPUs vs CPUs, it's like they priced the Scion FRS like a Venom GT and vice versa.
I wish you luck finding Xeon Phi winning anything but synthetic tests against yesterday's news:
True, however the cloud vendors do not have Intel latest greatest hardware either, so than comparing latest Intel Phi to some older Nvidia GPU does not make sense.
Ok, its officially the new new thing when corporate communications types are sniping at each other :-)
Once we start seeing press releases of products that are not available yet being shown to kill the existing competition we'll know that the hype train has officially gone super-product-sonic (that is a hype wave travelling faster than the product releases can support it).
Xeon Phi is in 23 of the Top500 supercomputer list, so it's not like they're not shipping. The next version, Knight's Landing, should be launching soon, and hopefully will have better availability.
Kepler was the default GPGPU product for many tasks until GP100 released - and GP100 still has not hit general availability yet.
Essentially, anything that needed dynamic parallelism (launching kernels from within kernels, i.e. tasks where you don't know where the difficult/interesting needles are within a haystack), advanced/concurrent scheduling capabilities, or FP64 is going to be much, much better off with Kepler until users can get their hands on GP100 cards. Maxwell is good at neither of those things - it's actually only good at specifically deep learning/neural nets. Which is not every task within the GPGPU space.
Why don't they provide a link to their testing methodology? They need to back up their claims (on both sides) with the actual configuration, all versions, and sample datasets for people to independently verify.
A docker container that runs their performance suite would be ideal.
Except that Docker containers play terribly with virtualization solutions. Still, some sort of configuration/infrastructure-as-code would go a long way.
If you would like to measure Docker overhead it would perfect. Unfortunately not all the world is using Docker for everything so running performance tests using the least amount of complexity is usually better for these tests.
@imaleppert Agree getting the details on the testing would be helpful. I think NV was more pointing out that Intel were putting their latest against NV's oldest. It'd be like testing a RX480 against a GTX660. What's the use of that?
@modeless the new Azure instances have M60's or you can purchase a 1080 or new TitanX which are both available (although stock has been tight).
Yeah but Azure is also introducing new K80 instances (based on four-year-old Kepler) becuase the M60 is worse in memory capacity and memory bandwidth, and not much better in FLOPS. NVIDIA is just not putting their best hardware out there for cloud providers to use.
Sure I can buy a Titan X for myself (already have), but I can't rent a hundred, or even one, on EC2 or Azure or GCE. And I can't get a P100 yet at all. I don't want to hear NVIDIA claiming unfair benchmarking and citing P100 numbers until P100s are actually available either to buy (and ship immediately) or in the cloud.
I do not usually believe in any vendor provided performance benchmark unless I fabricated it myself. On a more serious note, benchmarking is pretty hard and people usually discount things that seem minor until you found it the bottleneck, like the interconnect in this case for example. Another problem with synthetic benchmarks is that you can always optimize for your exact use case and it usually yields to pretty good improvements, comparable to buying faster equipment. The ultimate quiestion which is more cost efficient, buying faster CPU/GPU or hiring a performance expert.
They do not mention the version of Caffe used to test the Intel systems, Intel claims its numbers based on an optimized branch of Caffe and not the public (BVLC) version
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[ 2.0 ms ] story [ 83.1 ms ] threadCorporate smacktalk...
... as does nearly every public cloud provider. I agree with most of the article, but you can't fault Intel for benchmarking the hardware that cloud providers are actually offering.
I'm not sure what exactly NVIDIA is doing with their Tesla product line but whatever it is, it's really restricting the availability of recent GPU hardware. Even Azure's GPU instances released this month are using the Kepler architecture from 2012. It's fully two generations out of date now, and that's sad.
I think this blog post is fair game.
[1] http://semiaccurate.com/2016/08/01/nvidia-finally-shows-off-...
The benchmark Intel presented here is as disingenuous as their infamous white paper from 2010: http://pcl.intel-research.net/publications/isca319-lee.pdf
In comparison, a single Knights Landing Xeon Phi will be ~$7K. I know where I put my money. Caveat Emptor.
But Xeon Phi and I go way back here. They've been trying to beat my AMBER GPU code since 2013 or so. Many man years later I believe that a Knight's Corner is now ~35% faster than 2 Xeon CPUs with 1M atoms or more (source: http://adsabs.harvard.edu/abs/2016CoPhC.201...95N)
Meanwhile, the CUDA code has continued to scale with the GPU roadmap and a Titan XP is arguably 9-10x faster than 2 Xeon CPUs. No data is supplied at the low-end for Xeon Phi and I think we can safely assume it's because performance there sucks. (source: http://ambermd.org/gpus/benchmarks.htm)
Xeon Phi? IMO avoid avoid avoid until they start winning head to head 3rd party benchmarking fights like Soumith Chintala's fantastic convnet benchmark data: https://github.com/soumith/convnet-benchmarks
With a single 4x GPU server costing around $7k in total (row 4), you get nearly double the performance you get from spending $28k on four Xeon Phi servers (row 2).
And that's assuming you've spent the time and disk replicating your data on all four of those Xeon Phi servers, or went to a likely relatively large amount of engineering effort to ensure that network IO doesn't bottleneck training.
I'm genuinely interested here because I can't find this anywhere. I don't think it exists personally.
If I manage to access the KNL here, I'll probably run cp2k and gromacs, though single node performance is of limited interest, and ELPA doesn't currently have AVX512-specific support.
http://www.prace-ri.eu/IMG/pdf/wp120.pdf
Even so, right now, little would please me more technologically than a competitive Xeon Phi offering, but while KNL is better than KNC, my inside info says it sucks too (it would have been a lot more interesting, just like Altera's Stratix 10, if it had shipped before GP100 and GP102).
Right now, I have more confidence in AMD GPUs right now than I have in Xeon Phi. This 3rd party benchmark is particularly interesting (and it doesn't look like anyone at NVIDIA is paying any attention to it):
https://techaltar.com/amd-rx-480-gpu-review/2/
Sure, NVIDIA is still in the lead, but not with the ~10x margins they used to have over AMD.
Finally, I figuratively feel like punching the next person who makes the BS scaling argument over raw performance. GPUs scale too if they're coded correctly. And cloud datacenters are the worst place for that given their craptastic ~10 Gb/s interconnect subject to arbitrary network weather effects.
Or butchering Seymour Cray: Your life depends on winning a race, would you bet your life on a 1,350 HP Venom GT or on 20 179 HP Scion FRSs? I mean collectively that's almost 3600 HP, right? Except it's even worse because for GPUs vs CPUs, it's like they priced the Scion FRS like a Venom GT and vice versa.
I wish you luck finding Xeon Phi winning anything but synthetic tests against yesterday's news:
https://www.xcelerit.com/computing-benchmarks/libor/intel-xe...
Once we start seeing press releases of products that are not available yet being shown to kill the existing competition we'll know that the hype train has officially gone super-product-sonic (that is a hype wave travelling faster than the product releases can support it).
Essentially, anything that needed dynamic parallelism (launching kernels from within kernels, i.e. tasks where you don't know where the difficult/interesting needles are within a haystack), advanced/concurrent scheduling capabilities, or FP64 is going to be much, much better off with Kepler until users can get their hands on GP100 cards. Maxwell is good at neither of those things - it's actually only good at specifically deep learning/neural nets. Which is not every task within the GPGPU space.
A docker container that runs their performance suite would be ideal.
https://github.com/NVIDIA/nvidia-docker
@modeless the new Azure instances have M60's or you can purchase a 1080 or new TitanX which are both available (although stock has been tight).
https://azure.microsoft.com/en-us/blog/azure-n-series-previe...
Sure I can buy a Titan X for myself (already have), but I can't rent a hundred, or even one, on EC2 or Azure or GCE. And I can't get a P100 yet at all. I don't want to hear NVIDIA claiming unfair benchmarking and citing P100 numbers until P100s are actually available either to buy (and ship immediately) or in the cloud.