Luis Ceze is many issues: He’s the CEO and co-founder of OctoAI, an Lazowska Endowed Professor at College of Washington, a co-founder of the Apache TVM undertaking, and in addition a 2024 BigDATA Wire Particular person to Watch.
We lately caught up with Ceze to ask him just a few questions on his many endeavors. Here’s what he mentioned:
BigDATA Wire: You modified the title of your organization from OctoML to OctoAI in January. Are you able to elaborate on the change?
Luis Ceze: We modified our title from OctoML to OctoAI to higher mirror the enlargement and evolution of our product suite, which extra broadly addresses the rising market wants within the generative AI area.
Within the final yr, we considerably expanded our platform for builders to construct manufacturing purposes with generative AI fashions. This implies firms can run any mannequin of their alternative— whether or not off-the-shelf, customized or open-source— and deploy them on-prem inside their very own environments or within the cloud.
Our newest providing is OctoStack, a turn-key manufacturing platform that delivers highly-optimized inference, mannequin customization and asset administration at scale for big enterprises. This provides firms complete AI autonomy when constructing and operating Generative AI purposes straight inside their very own environments.
We have already got dozens of high-growth generative AI prospects—like Apate.ai, Otherside AI, Latitude Video games, and Capitol AI utilizing the platform to seamlessly transport this extremely dependable, customizable, environment friendly infrastructure straight into their very own atmosphere. These firms at the moment are firmly in charge of how and the place they work with fashions and profit from our maintenance-free serving stack.
BDW: You’re a co-founder of the Apache TVM undertaking, which permits machine studying fashions to be optimized and compiled to totally different {hardware}. However GPUs are all the fashion. Ought to we be extra open to operating ML fashions on different {hardware}?
Ceze: We’ve skilled extra AI innovation the final 18 months than ever earlier than. From someday to the following, AI has shifted from the lab to a viable enterprise driver. It’s clear that for AI to scale, we’d like to have the ability to run it on a broad vary of {hardware} from data-centers to edge and cellular gadgets.
However we’re at a juncture that’s paying homage to the cloud days. Again then firms wished the liberty to host knowledge throughout multiple cloud, or a mixture of cloud and on-premise.
As we speak firms additionally need accessibility and selection when constructing with AI. They need the selection to run any mannequin, be it customized, proprietary or open supply. They need the liberty to run mentioned fashions on any cloud or native endpoint, with out handcuffs.
This was our mission with Apache TVM early on, and this has carried on via my work at OctoAI. OctoAI SaaS and OctoStack are designed with the precept of {hardware} independence and portability to totally different buyer environments.
BDW: GenAI goes from a interval of experimentation in 2023 to deployment in 2024. What are the keys to creating LLMs extra impactful for companies?
Ceze: We strongly consider that 2024 is the yr that generative AI makes it out of growth and into manufacturing. However to deliver this to fruition, firms are going to must give attention to just a few key issues.
The primary is controlling value so the unit economics of LLMs work in your favor. Mannequin coaching is a predictable expense, however inference (calling a mannequin operating in manufacturing) can get very costly, particularly if utilization surges past what you’ve deliberate for.
Second is choosing the correct mannequin on your use case. It’s getting tougher due to the sheer variety of LLMs to select from (there are 80,000 and counting) and mannequin fatigue is starting to set in. Discovering one that’s highly effective sufficient to ship the standard you want and runs effectively as to be cost-effective – that’s the steadiness you need to strike.
Third, strategies like fine-tuning are extremely necessary to assist customise these LLMs for distinctive performance. One pattern we observe is that LLMs themselves are more and more commodified, and the true worth comes from customization to fulfill a selected, high-value use case.
BDW: Exterior of the skilled sphere, what are you able to share about your self that your colleagues is perhaps shocked to study – any distinctive hobbies or tales?
Ceze: Meals for me is greater than vitamin :). I like to study meals; I like to cook dinner it; I like to eat it.
I like to know meals “cross-stack”, from cultural elements all the way down to chemistry. After which consuming / consuming ;).
One other enjoyable bit: a few of my analysis was in DNA knowledge storage, and my work lately traveled to the moon!
You possibly can learn extra concerning the 2024 BigDATA Wire Individuals to Watch right here.