Tech World

Nvidia rivals focus on building a different kind of chip to power AI products

SANTA CLARA, Calif. (AP) — Building the current crop of artificial intelligence chatbots has relied on specialized computer chips pioneered by Nvidia, which cornered the market and made itself the poster child of the AI boom.

But the same qualities that make those graphics processor chips, or GPUs, so effective at creating powerful AI systems from scratch make them less efficient at putting AI products to work.

That’s opened up the AI chip industry to rivals who think they can compete with Nvidia in selling so-called AI inference chips that are more attuned to the day-to-day running of AI tools and designed to reduce some of the huge computing costs of generative AI.

“These companies are seeing opportunity for that kind of specialized hardware,” said Jacob Feldgoise, an analyst at Georgetown University’s Center for Security and Emerging Technology. “The broader the adoption of these models, the more compute will be needed for inference and the more demand there will be for inference chips.”

What is AI inference?

It takes a lot of computing power to make an AI chatbot. It starts with a process called training or pretraining — the “P” in ChatGPT — that involves AI systems “learning” from the patterns of huge troves of data. GPUs are good at doing that work because they can run many calculations at a time on a network of devices in communication with each other.

However, once trained, a generative AI tool still needs chips to do the work — such as when you ask a chatbot to compose a document or generate an image. That’s where inferencing comes in. A trained AI model must take in new information and make inferences from what it already knows to produce a response.

GPUs can do that work, too. But it can be a bit like taking a sledgehammer to crack a nut.

“With training, you’re doing a lot heavier, a lot more work. With inferencing, that’s a lighter weight,” said Forrester analyst Alvin Nguyen.

That’s led startups like Cerebras, Groq and d-Matrix as well as Nvidia’s traditional chipmaking rivals — such as AMD and Intel — to pitch more inference-friendly chips as Nvidia focuses on meeting the huge demand from bigger tech companies for its higher-end hardware.

Inside an AI inference chip lab

D-Matrix, which is launching its first product this week, was founded in 2019 — a bit late to the AI chip game, as CEO Sid Sheth explained during a recent interview at the company’s headquarters in Santa Clara, California, the same Silicon Valley city that’s also home to AMD, Intel and Nvidia.

“There were already 100-plus companies. So when we went out there, the first reaction we got was ‘you’re too late,’” he said. The pandemic’s arrival six months later didn’t help as the tech industry pivoted to a focus on software to serve remote work.


Source link

Related Articles

Back to top button

Adblock Detected