AI

Microsoft looks to free itself from GPU shackles by designing custom AI chips

Comment

a photo of Microsoft's campus in Germany
Image Credits: Fink Avenue (opens in a new window) / Getty Images

Most companies developing AI models, particularly generative AI models like ChatGPT, GPT-4 Turbo and Stable Diffusion, rely heavily on GPUs. GPUs’ ability to perform many computations in parallel make them well-suited to training — and running — today’s most capable AI.

But there simply aren’t enough GPUs to go around.

Nvidia’s best-performing AI cards are reportedly sold out until 2024. The CEO of chipmaker TSMC was less optimistic recently, suggesting that the shortage of AI GPUs from Nvidia — as well as chips from Nvidia’s rivals — could extend into 2025.

So Microsoft’s going its own way.

Today at its 2023 Ignite conference, Microsoft unveiled two custom-designed, in-house and data center-bound AI chips: the Azure Maia 100 AI Accelerator and the Azure Cobalt 100 CPU. Maia 100 can be used to train and run AI models, while Cobalt 100 is designed to run general purpose workloads.

Image Credits: Microsoft

“Microsoft is building the infrastructure to support AI innovation, and we are reimagining every aspect of our data centers to meet the needs of our customers,” Scott Guthrie, Microsoft cloud and AI group EVP, was quoted as saying in a press release provided to TechCrunch earlier this week. “At the scale we operate, it’s important for us to optimize and integrate every layer of the infrastructure stack to maximize performance, diversify our supply chain and give customers infrastructure choice.”

Both Maia 100 and Cobalt 100 will start to roll out early next year to Azure data centers, Microsoft says — initially powering Microsoft AI services like Copilot, Microsoft’s family of generative AI products, and Azure OpenAI Service, the company’s fully managed offering for OpenAI models. It might be early days, but Microsoft assures that the chips aren’t one-offs. Second-generation Maia and Cobalt hardware is already in the works.

Built from the ground up

That Microsoft created custom AI chips doesn’t come as a surprise, exactly. The wheels were set in motion some time ago — and publicized.

In April, The Information reported that Microsoft had been working on AI chips in secret since 2019 as part of a project code-named Athena. And further back, in 2020, Bloomberg revealed that Microsoft had designed a range of chips based on the ARM architecture for data centers and other devices, including consumer hardware (think the Surface Pro).

But the announcement at Ignite gives the most thorough look yet at Microsoft’s semiconductor efforts.

First up is Maia 100.

Microsoft says that Maia 100 — a 5-nanometer chip containing 105 billion transistors — was engineered “specifically for the Azure hardware stack” and to “achieve the absolute maximum utilization of the hardware.” The company promises that Maia 100 will “power some of the largest internal AI [and generative AI] workloads running on Microsoft Azure,” inclusive of workloads for Bing, Microsoft 365 and Azure OpenAI Service (but not public cloud customers — yet).

Maia 100
Image Credits: Microsoft

That’s a lot of jargon, though. What’s it all mean? Well, to be quite honest, it’s not totally obvious to this reporter — at least not from the details Microsoft’s provided in its press materials. In fact, it’s not even clear what sort of chip Maia 100 is; Microsoft’s chosen to keep the architecture under wraps, at least for the time being.

In another disappointing development, Microsoft didn’t submit Maia 100 to public benchmarking test suites like MLCommons, so there’s no comparing the chip’s performance to that of other AI training chips out there, such as Google’s TPU, Amazon’s Tranium and Meta’s MTIA. Now that the cat’s out of the bag, here’s hoping that’ll change in short order.

One interesting factoid that Microsoft was willing to disclose is that its close AI partner and investment target, OpenAI, provided feedback on Maia 100’s design.

It’s an evolution of the two companies’ compute infrastructure tie-ups.

In 2020, OpenAI worked with Microsoft to co-design an Azure-hosted “AI supercomputer” — a cluster containing over 285,000 processor cores and 10,000 graphics cards. Subsequently, OpenAI and Microsoft built multiple supercomputing systems powered by Azure — which OpenAI exclusively uses for its research, API and products — to train OpenAI’s models.

“Since first partnering with Microsoft, we’ve collaborated to co-design Azure’s AI infrastructure at every layer for our models and unprecedented training needs,” Altman said in a canned statement. “We were excited when Microsoft first shared their designs for the Maia chip, and we’ve worked together to refine and test it with our models. Azure’s end-to-end AI architecture, now optimized down to the silicon with Maia, paves the way for training more capable models and making those models cheaper for our customers.”

I asked Microsoft for clarification, and a spokesperson had this to say: “As OpenAI’s exclusive cloud provider, we work closely together to ensure our infrastructure meets their requirements today and in the future. They have provided valuable testing and feedback on Maia, and we will continue to consult their roadmap in the development of our Microsoft first-party AI silicon generations.”

We also know that Maia 100’s physical package is larger than a typical GPU’s.

Microsoft says that it had to build from scratch the data center server racks that house Maia 100 chips, with the goal of accommodating both the chips and the necessary power and networking cables. Maia 100 also required a unique liquid-based cooling solution since the chips consume a higher-than-average amount of power and Microsoft’s data centers weren’t designed for large liquid chillers.

Image Credits: Microsoft

“Cold liquid flows from [a ‘sidekick’] to cold plates that are attached to the surface of Maia 100 chips,” explains a Microsoft-authored post. “Each plate has channels through which liquid is circulated to absorb and transport heat. That flows to the sidekick, which removes heat from the liquid and sends it back to the rack to absorb more heat, and so on.”

As with Maia 100, Microsoft kept most of Cobalt 100’s technical details vague in its Ignite unveiling, save that Cobalt 100’s an energy-efficient, 128-core chip built on an Arm Neoverse CSS architecture and “optimized to deliver greater efficiency and performance in cloud native offerings.”

Cobalt 100
Image Credits: Microsoft

Arm-based AI inference chips were something of a trend — a trend that Microsoft’s now perpetuating. Amazon’s latest data center chip for inference, Graviton3E (which complements Inferentia, the company’s other inference chip), is built on an Arm architecture. Google is reportedly preparing custom Arm server chips of its own, meanwhile.

“The architecture and implementation is designed with power efficiency in mind,” Wes McCullough, CVP of hardware product development, said of Cobalt in a statement. “We’re making the most efficient use of the transistors on the silicon. Multiply those efficiency gains in servers across all our datacenters, it adds up to a pretty big number.”

A Microsoft spokesperson said that Cobalt 100 will power new virtual machines for customers in the coming year.

But why?

So Microsoft’s made AI chips. But why? What’s the motivation?

Well, there’s the company line — “optimizing every layer of [the Azure] technology stack,” one of the Microsoft blog posts published today reads. But the subtext is, Microsoft’s vying to remain competitive — and cost-conscious — in the relentless race for AI dominance.

The scarcity and indispensability of GPUs has left companies in the AI space large and small, including Microsoft, beholden to chip vendors. In May, Nvidia reached a market value of more than $1 trillion on AI chip and related revenue ($13.5 billion in its most recent fiscal quarter), becoming only the sixth tech company in history to do so. Even with a fraction of the install base, Nvidia’s chief rival, AMD, expects its GPU data center revenue alone to eclipse $2 billion in 2024.

Microsoft is no doubt dissatisfied with this arrangement. OpenAI certainly is — and it’s OpenAI’s tech that drives many of Microsoft’s flagship AI products, apps and services today.

In a private meeting with developers this summer, Altman admitted that GPU shortages and costs were hindering OpenAI’s progress; the company just this week was forced to pause sign-ups for ChatGPT due to capacity issues. Underlining the point, Altman said in an interview this week with the Financial Times that he “hoped” Microsoft, which has invested over $10 billion in OpenAI over the past four years, would increase its investment to help pay for “huge” imminent model training costs.

Microsoft itself warned shareholders earlier this year of potential Azure AI service disruptions if it can’t get enough chips for its data centers. The company’s been forced to take drastic measures in the interim, like incentivizing Azure customers with unused GPU reservations to give up those reservations in exchange for refunds and pledging upwards of billions of dollars to third-party cloud GPU providers like CoreWeave.

Should OpenAI design its own AI chips as rumored, it could put the two parties at odds. But Microsoft likely sees the potential cost savings arising from in-house hardware — and competitiveness in the cloud market — as worth the risk of preempting its ally.

One of Microsoft’s premiere AI products, the code-generating GitHub Copilot, has reportedly been costing the company up to $80 per user per month partially due to model inferencing costs. If the situation doesn’t turn around, investment firm UBS sees Microsoft struggling to generate AI revenue streams next year.

Of course, hardware is hard, and there’s no guarantee that Microsoft will succeed in launching AI chips where others failed.

Meta’s early custom AI chip efforts were beset with problems, leading the company to scrap some of its experimental hardware. Elsewhere, Google hasn’t been able to keep pace with demand for its TPUs, Wired reports — and ran into design issues with its newest generation of the chip.

Microsoft’s giving it the old college try, though. And it’s oozing with confidence.

“Microsoft innovation is going further down in the stack with this silicon work to ensure the future of our customers’ workloads on Azure, prioritizing performance, power efficiency and cost,” Pat Stemen, a partner program manager on Microsoft’s Azure hardware systems and infrastructure team, said in a blog post today. “We chose this innovation intentionally so that our customers are going to get the best experience they can have with Azure today and in the future …We’re trying to provide the best set of options for [customers], whether it’s for performance or cost or any other dimension they care about.”

More TechCrunch

In its three-year history, EthonAI has amassed some fairly high-profile customers including Siemens and chocolate-maker Lindt.

AI manufacturing startup funding is on a tear as Switzerland’s EthonAI raises $16.5M

Don’t miss out: TechCrunch Disrupt early-bird pricing ends in 48 hours! The countdown is on! With only 48 hours left, the early-bird pricing for TechCrunch Disrupt 2024 will end on…

Ticktock! 48 hours left to nab your early-bird tickets for Disrupt 2024

Biotech startup Valar Labs has built a tool that accurately predicts certain treatment outcomes, potentially saving precious time for patients.

Valar Labs debuts AI-powered cancer care prediction tool and secures $22M

Archer Aviation is partnering with ride-hailing and parking company Kakao Mobility to bring electric air taxi flights to South Korea starting in 2026, if the company can get its aircraft…

Archer, Kakao Mobility partner to bring electric air taxis to South Korea in 2026

Space startup Basalt Technologies started in a shed behind a Los Angeles dentist’s office, but things have escalated quickly: soon it will try to “hack” a derelict satellite and install…

Basalt plans to “hack” a defunct satellite to install its space-specific OS

As a teen model, Katrin Kaurov became financially independent at a young age. Aleksandra Medina, whom she met at NYU Abu Dhabi, also learned to manage money early on. The…

Former teen model co-created app Frich to help Gen Z be more realistic about finances

Can an AI help you tell your story? That’s the idea behind a startup called Autobiographer, which leverages AI technology to engage users in meaningful conversations about the events in…

Autobiographer’s app uses AI to help you tell your life story

AI-powered summaries of webpages are a feature that you will find in many AI-centric tools these days. The next step for some of these tools is to prepare detailed and…

Perplexity AI’s new feature will turn your searches into shareable pages

ChatGPT, OpenAI’s text-generating AI chatbot, has taken the world by storm. What started as a tool to hyper-charge productivity through writing essays and code with short text prompts has evolved…

ChatGPT: Everything you need to know about the AI-powered chatbot

A surge of battery recycling startups have emerged in Europe in a bid to tap into the next big opportunity in the EV market: battery waste.  Among them is Cylib,…

Cylib wants to own EV battery recycling in Europe

Amazon has received approval from the U.S. Federal Aviation Administration (FAA) to fly its delivery drones longer distances, the company announced on Thursday. Amazon says it can now expand its…

Amazon gets FAA approval to expand US drone deliveries

With Plannin, creators can tell their audience about their latest trip, which hotels they liked and post photos of their travels.

Former Priceline execs debut Plannin, a booking platform that uses travel influencers to help plan trips

Amazon is rolling out its AI voice search feature to Alexa, which lets it answer open-ended questions about content.

Amazon is rolling out AI voice search to Fire TV devices

Redpanda has already integrated Benthos into its own service and has made it the core technology of its new Redpanda Connect service.

Redpanda acquires Benthos to expand its end-to-end streaming data platform

It’s a lofty goal to take on legacy payments infrastructure, however, Forward’s model has an advantage by shifting the economics back to SaaS companies.

Fintech startup Forward grabs $16M to take on Stripe, lead future of integrated payments

Fertility remains a pressing concern around the world — birthrates are down in many countries, and infertility rates (that is, the ability to conceive at all) are up. And given…

Rhea reaps $10M more led by Thiel

Microsoft, Meta, Intel, AMD and others have formed a new group to design next-gen interconnects for AI accelerator hardware.

Tech giants form an industry group to help develop next-gen AI chip components

With JioFinance, the Indian tycoon Mukesh Ambani is making his boldest consumer-facing move yet into financial services.

Ambani’s Reliance fires opening salvo in fintech battle, launches JioFinance app

Salespeople live and die by commissions. It’s no surprise, then, that Salesforce paid a premium to buy a platform that simplifies managing commissions.

Filing shows Salesforce paid $419M to buy Spiff in February

YoLa Fresh works with over a thousand retailers across Morocco and records up to $1 million in gross merchandise volume.

YoLa Fresh, a GrubMarket for Morocco, digs up $7M to connect farmers with food sellers

Instagram is expanding the scope of its “Limits” tool specifically for teenagers that would let them restrict unwanted interactions with people.

Instagram now lets teens limit interactions to their ‘Close Friends’ group to combat harassment

Agritech company Iyris helps growers across eleven countries globally increase crop yields, reduce input costs, and extend growing seasons.

Iyris makes fresh produce easier to grow in difficult climates, raises $16M

Exactly.ai says it uses generative AI to help artists retain legal ownership of their art while being able to reproduce their designs faster and at scale.

Exactly.ai secures $4M to help artists use AI to scale up their output

FintechOS competes with other companies such as Ncino, Meridian Link, Abrigo and Backbase.

Romanian startup FintechOS raises $60M to help old banks fight back against neobanks

After two years of preparation and four delays over the past several months due to technical glitches, Indian space startup Agnikul has successfully launched its first sub-orbital test vehicle, powered…

India’s Agnikul launches 3D-printed rocket in sub-orbital test after initial delays

Struggling EV startup Fisker has laid off hundreds of employees in a bid to stay alive, as it continues to search for funding, a buyout or prepare for bankruptcy. Workers…

Fisker cuts hundreds of workers in bid to keep EV startup alive

Chinese EV manufacturers face a new challenge in their pursuit of U.S. customers: a new House bill that would limit or ban the introduction of their connected vehicles. The bill,…

Chinese EV makers, and their connected vehicles, targeted by new House bill

With the release of iOS 18 later this year, Apple may again borrow ideas third-party apps. This time it’s Arc that could be among those affected.

Is Apple planning to ‘sherlock’ Arc?

TechCrunch Disrupt 2024 will be in San Francisco on October 28–30, and we’re already excited! This is the startup world’s main event, and it’s where you’ll find the knowledge, tools…

Meet Visa, Mercury, Artisan, Golub Capital and more at TC Disrupt 2024

Featured Article

The women in AI making a difference

As a part of a multi-part series, TechCrunch is highlighting women innovators — from academics to policymakers —in the field of AI.

20 hours ago
The women in AI making a difference