Imagination Announces B-Series GPU IP: Scaling up with Multi-GPU
by Andrei Frumusanu on October 13, 2020 4:00 AM EST- Posted in
- GPUs
- Imagination Technologies
- SoCs
- IP
It’s almost been a year since Imagination had announced its brand-new A-series GPU IP, a release which at the time the company called its most important in 15 years. The new architecture indeed marked some significant updates to the company’s GPU IP, promising major uplifts in performance and promises of great competitiveness. Since then, other than a slew of internal scandals, we’ve heard very little from the company – until today’s announcement of the new next-generation of IP: the B-Series.
The new Imagination B-Series is an evolution of last year’s A-Series GPU IP release, further iterating through microarchitectural improvements, but most importantly, scaling the architecture up to higher performance levels through a brand-new multi-GPU system, as well as the introduction of a new functional safety class of IP in the form of the BXS series.
The Market Demands Performance: Imagination Delivers it through Multi-GPU
It’s been no secret that the current GPU IP market has been extremely tough on IP providers such as Imagination. Being the only other established IP provider alongside Arm, the company had been seeing an ever-shrinking list of customers due to several factors – one being Arm’s extreme business competitiveness in offering both CPU and GPU IP to customers, and the fact that there’s simply less customers which require licensed GPU IP.
Amongst the current SoC vendors, Qualcomm and their in-house Adreno GPU IP is in a dominant market position, and in recent years had been putting extreme pressure on other vendors – many of these who fall back to Arm’s Mali GPU IP by default. MediaTek had historically been the one SoC vendor who had been using Imagination’s GPUs more often in their designs, however all of the recent Helio of Dimensity products again use Mali GPUs, with seemingly little hope for a SoC win using IMG’s GPU IP.
With Apple using their architectural license from Imagination to design custom GPUs, Samsung betting on AMD’s new aspirations as a GPU IP provider, and HiSilicon both designing their own in-house GPU as well as having an extremely uncertain future, there’s very little left in terms of mobile SoC vendors which might require licensed GPU IP.
What is left are markets outside of mobile, and it’s here that Imagination is trying to refocus: High-performance computing, as well as lucrative niche markets such as automotive which require functional safety features.
Scaling an IP up from mobile to what we would consider high-performance GPUs is a hard task, as this directly impacts many of the architectural balance choices that need to be made when designing a GPU IP that’s actually fit for low-power market such as mobile. Traditionally, this had been always a trade-off between absolute performance, performance scalability and power efficiency – with high performance GPUs simply being not that efficient, while low-power mobile GPUs were unable to scale up in performance.
Imagination’s new B-Series IP solves this conundrum by introducing a new take on an old way of scaling performance: multi-GPU.
Rather than growing and scaling a single GPU up in performance, you simply use multiple GPUs. Now, probably the first thing that will come to user’s minds are parallels to multi-GPU technologies from the desktop space such as SLI or Crossfire, technologies that in recent years have seen dwindling support due to their incompatibility with modern APIs and game engines.
Imagination’s approach to multi-GPU is completely different to past attempts, and the main difference lies in the way workloads are handled by the GPU. Imagination with the B-Series moves away from a “push” workload model – where the GPU driver pushes work to the GPU to render, to a “pull” model, where the GPU decides to pull workloads to process. This is a fundamental paradigm shift in how the GPU is fed work and allows for what Imagination calls a “decentralised design”.
Amongst a group of GPUs, one acts as a “primary” GPU with a controlling firmware processor that divides a workload, say a render frame, into different work tiles that can then the other “slave” GPUs can pull from in order to work on. A tile here is actually the proper sense of the word, as the GPU’s tile-based rendering aspect is central to the mechanism – this isn’t your classical alternate frame rendering (AFR) or split frame rendering (SFR) mechanism. Also, just how a single-GPU tile-based renderer can have varying tile sizes for a given frame, this can also happen in the B-Series’ multi-GPU workload distribution, with varying tile sizes of a single frame being distributed unevenly amongst the GPU group.
The most importantly, this new multi-GPU system that Imagination introduces is completely transparent to the higher-level APIs as well as software workloads, which means that a system running a multi-GPU configuration just sees one single large GPU from a software perspective. This is a big contrast to current discrete multi-GPU implementations, and why Imagination’s multi-GPU technology is a lot more interesting.
From an implementation standpoint, it allows Imagination and their customers a ton of new flexibility in terms of configuration options. From Imagination’s perspective, instead of having to design one large and fat GPU implementation, which might require more work due to timing closure and other microarchitectural scaling concerns, they can just design a more efficient GPU – and allow customers to simply put down multiple of these in an SoC. Imagination claims that this allows for higher-frequency GPUs, and the company projects implementations around 1.5GHz for high-end use-cases such as for cloud computing usages.
For customers, it’s also a great win in terms of flexibility: Instead of having to wait on Imagination to deliver a GPU implementation that matches their exact performance target, it would be possible for a customer to just take one “sweet-spot” building block implementation and scale the configuration themselves all on their own during the design of their SoC, allowing higher flexibility as well as a smaller turn-around time. Particularly if a customer would be designing multiple SoCs for multiple performance targets, they could achieve this easily with just one hardware design from Imagination.
We’ll get into the details of the scaling in the next page, but currently the B-Series multi-GPU support scales up to 4 GPUs. The other interesting aspect of laying down multiple GPUs on an SoC, in contrast to one larger GPU, is that they do not have to be adjacent or even near each other. As they’re independent design blocks, one could do weird stuff such as putting a GPU in each corner of an SoC design.
The only requirements for the SoC vendor are to have the GPUs connected to the SoC’s standard AXI interconnect to memory – something that’s a requirement anyhow. Vendor might have to scale this up for larger MC (Multi-Core) configurations, but they can make their own choices in terms of design requirements. The other requirement to make this multi-GPU setup work is just a minor connection between the GPUs themselves: this are just a few wires that act as interrupt lines between the cores so that they can synchronise themselves – there’s no actual data traffic happening between the GPUs.
Because of this, this is a design that’s particularly fit for today’s upcoming multi-chiplet silicon designs. Whereas current monolithic GPU designs have trouble being broken up into chiplets in the same way CPUs can be, Imagination’s decentralised multi-GPU approach would have no issues in being implemented across multiple chiplets, and still appear as a single GPU to software.
Getting back to the initial point, Imagination is using this new multi-GPU approach to target higher performance designs that previously weren’t available to the company. They note that their more efficient mobile-derived GPU IP through multi-GPU scaling can compete with other current offerings from Nvidia and AMD (Imagination promotes their biggest configuration as reaching up to 6TFLOPs) in PCIe form-factor designs, whilst delivering 70% better compute density – a metric the company defines as TFLOPs/mm². Whilst that metric is relatively meaningless in terms of performance due to the fact that the upper cap on performance is still very much limited by the architecture and the MC4 top scaling limit on the current multi-GPU implementation of the B-Series, it allows for licensees to make for smaller chips that in turn can be extremely cost-effective.
The B-Series covers a slew of actual GPU IP, with the company continuing a segmentation into different performance tiers – the BXT series being the flagship GPU designs, BXM series a more balanced middle-ground GPU IP, and the BXE series being the company’s smallest and most area efficient Vulkan compatible GPU IP. Let’s go over the various GPU implementations in more detail…
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Yojimbo - Tuesday, October 13, 2020 - link
I didn't know Xi JinPing was an engineer...EthiaW - Wednesday, October 14, 2020 - link
Those chinese have only managed to outcast the former corporate leaders recently. The shift from engeneer culture will take time, if not reverted by the UK government.Yojimbo - Wednesday, October 14, 2020 - link
They had the stubbornness to not be bought by Apple in order to be bought by the Chinese government. And through what will or method is the UK government going to change the culture of the company?Yojimbo - Tuesday, October 13, 2020 - link
Hey, you're right. He studied chemical engineering. I knew that, but forgot.melgross - Tuesday, October 13, 2020 - link
With Apple being 60% of their sales, and 80% of their profits, they demanded $1 billion from Apple, which refused that ridiculous price.The company is likely worth no more than $100 million, if that, considering their sales are now just about $20 million a year.
colinisation - Tuesday, October 13, 2020 - link
Well if not Apple why not ARM, I know ARM tried to buy them at some point in the past.But once Apple left their valuation would have taken a pretty substantial hit and ARM's GPU IP is successful but I don't think it is the most Area/Power efficient so it looked to me to be something they would have explored both would have been in the same country, maybe it would have spurred ARM into providing a more viable alternative to Qualcomm in the smartphone GPU space.
CiccioB - Tuesday, October 13, 2020 - link
"Whereas current monolithic GPU designs have trouble being broken up into chiplets in the same way CPUs can be, Imagination’s decentralised multi-GPU approach would have no issues in being implemented across multiple chiplets, and still appear as a single GPU to software."There's not problem in splitting today desktop monolithic GPUs into chiplets.
What is done here is to create small chiplets that have all the needed pieces as a monolithic one. The main one is the memory controller.
Splitting a GPU over chiplets all having their own MC is technically simple but makes a mess when trying to use them due to the NUMA configuration. Being connected with a slow bus makes data sharing between chiplets almost impossible and so needs the programmer/driver to split the needed data over the single chiplet memory space and not make algorithms that share data between them.
The real problem with MCM configuration is data sharing = bandwidth.
You have to allow for data to flow from one core to another independently of its physical location on which chiplet it is. That's the only way you can obtain really efficient MCM GPUs.
And that requires high power+wide buses and complex data management with most probably very big caches (= silicon and power again) to mask memory latency and natural bandwidth restriction as it is impossible to have buses as fast as actual ones that connect 1TB/s to a GPU for each chiplet.
As you can see to make their GPUs work in parallel in HCP market Nvidia made a very fast point-to-point connection and created very fast switches to connect them together.
hehatemeXX - Tuesday, October 13, 2020 - link
That's why Infinity Cache is big. The bandwidth limitation is removed.Yojimbo - Tuesday, October 13, 2020 - link
Anything Infinity is big, except compared to a bigger Infinity.CiccioB - Tuesday, October 13, 2020 - link
It is removed just for the size of the cache.If you need more than that amount of data you'll still be limited to bandwidth limitation.
With the big cache latency now added.
If it were so easy to reduce the bandwidth limitations anyone would just add a big enough cache... the fact is that there's no a big enough cache for the immense quantity of data GPUs work with, unless you want all your VRAM as a cache (but then you won't be connected with such a limited bus).