Yesterday Arm released the new Cortex-A78, Cortex-X1 CPUs and the new Mali-G78 GPU. Alongside the new “key” IPs from the company, we also saw the reveal of the newest Ethos-N78 NPU, announcing Arm’s new second-generation design.

Over the last few years we’ve seen a literal explosion of machine learning accelerators in the industry, with a literal wild west of different IP solutions out there. On the mobile front particularly there’s been a huge amount of different custom solutions developed in-house by SoC vendors, this includes designs such as from Qualcomm, HiSilicon, MediaTek and Samsung LSI. For vendors who do not have the design ability to deploy their own IP, there’s the possibility of licensing something from an IP vendor such as Arm.

Arm’s “Ethos” machine learning IP is aimed at client-side inferencing workloads, originally described as “Project Trillium” and the first implementation seeing life in the form of the Ethos-N77. It’s been a year since the release of the first generation, and Arm has been working hard on the next iteration of the architecture. Today, we’re covering the “Scylla” architecture that’s being used in the new Ethos-N78.

From a very high-level view, what the N78 promises is a quite large boost both in performance and efficiency. The new design scales up much higher than the biggest N77 configuration, now being able to offer 2x the peak performance at up to 10TOPs of raw computational throughput.

Arm has revamped the design of the NPU for better power efficiency, enabled through various new compression techniques as well as an improvement in external memory bandwidth per inference of up to 40%.

Strong points of the N78 are the IP’s ability to scale performance across different configuration options. The IP is available at 4 different performance points, or better said at four different distinct engine configurations, from the smallest config at 1TOPs, to 2, 5 and finally a maximum of 10TOPs. This corresponds to MAC configurations of 512, 1024, 2048 and 4096 units for the totality of the design.

The interesting aspect of scaling bigger is that the area efficiency of the IP actually scales better the bigger the implementation, due to probably the fact that the unique fixed shared function blocks area percentage shrinks with the more computation engines the design has.

Architecturally, the biggest improvements of the new N78 were in the way it handles data around in the engines, enabling new compression methods for data that not only goes outside the NPU (DRAM bandwidth improvement), but also data movement within the NPU itself, improving efficiency for both performance and power.

The new compression and data handling can significantly reduce the bandwidth of the system with an average 40% reduction across workloads – which is an extremely impressive figure to showcase between IP generations.

Generational performance uplifts, thanks to the higher performance density and power efficiency are on average 25%, which along with the doubled peak performance configuration means that it has the potential to represent a large boost in end devices.

It’s quite hard to analyse NPUs on how they perform in the competitive landscape – particularly here in Arm’s case given that we haven’t yet seen the first generation NPU designs in silicon. One interesting remark that Arm has made, is that in this space, software matters more than anything else, and a bad software stack can possibly ruin what otherwise would be a good hardware design. Arm mentioned they’ve seen vendors adopt their own Ethos IP and dropping competitor designs because of this – Arm says they invest a very large amount of resources into software in order to facilitate customers to actually properly make use of their hardware designs.

Arm’s new Ethos-N78 has already been licensed out to customers and they’re taping in their designs with it, with likely the first products seeing the light of day in 2021 at the earliest.

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  • Sivar - Wednesday, May 27, 2020 - link

    Not really a literal explosion or a literal Wild West. Reply
  • Deicidium369 - Wednesday, May 27, 2020 - link

    And it all started on a computer in the UK called the Acorn. Reply
  • DifferentFrom - Thursday, June 4, 2020 - link

    "we’ve seen a literal explosion of machine learning accelerators in the industry, with a literal wild west" What exploded and why are people shooting at each other? Reply
  • BoyBawang - Monday, June 15, 2020 - link

    So how does this ARM N78 NPU relate to the tensor Accelerator inside Snapdragons Hexagon? Is there a redundancy in functionality? Reply

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