VOOZH about

URL: https://thenewstack.io/nvidias-superchips-for-ai-radical-but-a-work-in-progress/

⇱ Nvidia’s Superchips for AI: ‘Radical,’ but a Work in Progress - The New Stack


TNS
SUBSCRIBE
Join our community of software engineering leaders and aspirational developers. Always stay in-the-know by getting the most important news and exclusive content delivered fresh to your inbox to learn more about at-scale software development.
REQUIRED
It seems that you've previously unsubscribed from our newsletter in the past. Click the button below to open the re-subscribe form in a new tab. When you're done, simply close that tab and continue with this form to complete your subscription.
The New Stack does not sell your information or share it with unaffiliated third parties. By continuing, you agree to our Terms of Use and Privacy Policy.
Welcome and thank you for joining The New Stack community!
Please answer a few simple questions to help us deliver the news and resources you are interested in.
REQUIRED
REQUIRED
REQUIRED
REQUIRED
REQUIRED
Great to meet you!
Tell us a bit about your job so we can cover the topics you find most relevant.
REQUIRED
REQUIRED
REQUIRED
REQUIRED
REQUIRED
Welcome!

We’re so glad you’re here. You can expect all the best TNS content to arrive Monday through Friday to keep you on top of the news and at the top of your game.

What’s next?

Check your inbox for a confirmation email where you can adjust your preferences and even join additional groups.

Follow TNS on your favorite social media networks.

Become a TNS follower on LinkedIn.

Check out the latest featured and trending stories while you wait for your first TNS newsletter.

PREV
1 of 2
NEXT
VOXPOP
As a JavaScript developer, what non-React tools do you use most often?
Angular
0%
Astro
0%
Svelte
0%
Vue.js
0%
Other
0%
I only use React
0%
I don't use JavaScript
0%
Thanks for your opinion! Subscribe below to get the final results, published exclusively in our TNS Update newsletter:
NEW! Try Stackie AI
From clobbered drafts to real-time sync
Apr 14th 2026 10:00am, by David Moore
TypeScript 6.0 RC arrives as a bridge to a faster future
Mar 14th 2026 9:00am, by Darryl K. Taft
Mastra empowers web devs to build AI agents in TypeScript
Jan 28th 2026 11:00am, by Loraine Lawson
2024-03-14 08:13:11
Nvidia’s Superchips for AI: ‘Radical,’ but a Work in Progress
podcast,video,
AI / Hardware / Large Language Models

Nvidia’s Superchips for AI: ‘Radical,’ but a Work in Progress

The GH200 Grace Hopper superchip offers staggering bandwidth and speed. But on this episode of Makers, guests say hardware built for AI still needs debugging.
Mar 14th, 2024 8:13am by Heather Joslyn
👁 Featued image for: Nvidia’s Superchips for AI: ‘Radical,’ but a Work in Progress

Nvidia, the third most highly valued public company in the world, with a market cap of more than $2 trillion, is shaking up the hardware industry, with its GH200 Grace Hopper Superchip and platform, purpose-built for AI workloads.

But the dust hasn’t fully settled yet from all that shaking, according to this episode of The New Stack Makers.

Make no mistake, said Adrian Cockcroft, co-host on this episode with Alex Williams, founder and publisher of TNS: what Nvidia has come up with is innovative.

“It kind of flips the architecture,” Cockcroft said, who led the creation of the Netflix cloud on AWS. “Before, you’d have a whole bunch of CPUs, you’d network them together. And you’d stick GPUs on as an attached IO processor, on the GPU, over a PCI bus or something.”

The GH200, however, flips that. “Now the GPU is the thing that needs to do most of the communication. So we’re putting that as the center. And we’re gonna connect all the GPUs together. And the CPUs are sort of dangling off at the side, if you need to talk to something else.”

The result, he said, includes a 900 gigabyte-per-second interface on every GPU, which connects directly to all the other GPUs. The result: a near-elimination of networking overhead. “It’s not lots of machines talking to each other,” Cockcroft said. “It’s one huge system.”

However, according to Makers guest Sunil Mallya, more work needs to be done to make the GH200 Superchips and platform easier for organizations to adopt.

Mallya, formerly head of Amazon Comprehend, the tech company’s natural language processing (NLP) service, is now CTO and co-founder of Flip.AI. In talking to his contacts in the field, he’s not seeing many organizations switch to the new chips.

“The interface is that just not there to make a clean switch between the chips,” said Mallya. “On the training side, I have barely heard anyone actually switching. I’m sure that developers are shuffling and pulling their hair out and trying to get this working. But it’s not been a smooth journey.”

The Dawn of the ‘Petaliths’

Still, Mallya, Williams and Cockcroft were bullish on the future of chips built for AI. Cockcroft acknowledged the potential of the GH200 Superchip.

“It’s a fairly radical change,” he said. “When it works, it’s potentially going to be far, far better. You’ve got just got much more bandwidth, all the networking overhead goes away. But the software has to catch up with the hardware, and the hardware has to work reliably.”

Nvidia remains out in front in the race to create what Cockcroft calls “petaliths”: petabyte-scale monoliths,

The industry as a whole, he said,  is moving to something called Compute Express LInk (CXL), “which was going to give everybody a similar kind of ability to build very large coherent memory systems.”

However, he added, “CXL is still in the standards phase, it’s probably a year or two behind where Nvidia are, and they’re still trying to debug the standard. So this is, I think, the next generation of compute architecture, we’re going to have extremely large single systems.”

An LLM for Observability Data

This episode of Makers also included a discussion and a demo of Mallya’s Flip.AI, a DevOps large language model (LLM) that aims to interpret observability data and point to solutions for incidents.

“What typically happens is, Flip will hook into your observability system,” Mallya said. “We take read-only access into say, a Splunk, Data Dog, Dynatrace, CloudWatch, etc. And every time there’s an alert, that comes in two CloudWatch, or a Pager Duty, or Jira ticket, we trigger the Fiip analysis to debug what went wrong.”

As Flip.AI trains its model, it’s been “sort of cloud agnostic,” he said.

He elaborated, “We train over 100 billion tokens of data, various training phases that we use to train our models, but we didn’t want a certain model architecture or a certain framework or even be held hostage to any of these because it’s such a fast-moving fast-paced area.”

Check out the full Makers episode for a deeper dive into the latest innovations in chips built for AI workloads, and more about the challenges of training LLMs such as Flip.AI.

TRENDING STORIES
Heather Joslyn is the former editor-in-chief of The New Stack. She previously worked as editor-in-chief of Container Solutions, a Cloud Native consulting company, and as an editor/reporter at The Chronicle of Philanthropy and the Baltimore City Paper.
Read more from Heather Joslyn
SHARE THIS STORY
TRENDING STORIES
Amazon Web Services and PagerDuty are sponsors of The New Stack.
TNS owner Insight Partners is an investor in: Flip.
SHARE THIS STORY
TRENDING STORIES
TNS DAILY NEWSLETTER Receive a free roundup of the most recent TNS articles in your inbox each day.
The New Stack does not sell your information or share it with unaffiliated third parties. By continuing, you agree to our Terms of Use and Privacy Policy.