Technology Ray, the machine learning technology behind OpenAI, goes up...

Ray, the machine learning technology behind OpenAI, goes up to Ray 2.0

-

Couldn’t attend Transform 2022? Check out all the top sessions in our on-demand library now! Look here.


Over the past two years, one of the most common ways for organizations to scale and run increasingly larger and more complex artificial intelligence (AI) workloads has been the open-source Ray frameworkused by companies from OpenAI to Shopify and Instagram.

Ray enables machine learning (ML) models to scale across hardware resources and can also be used to support MLops workflows in various ML tools. Ray 1.0 came out in September 2020 and has had a series of iterations over the past two years.

Today, the next major milestone was released, with the general availability of Ray 2.0 at the Ray Summit in San Francisco. Ray 2.0 extends the technology with the new Ray AI Runtime (AIR) which is intended to work as a runtime layer for running ML services. Ray 2.0 also includes capabilities designed to simplify building and managing AI workloads.

In addition to the new edition, AnyscaleRay’s principal commercial financier, announced a new business platform for running Ray. Anyscale also announced a new $99 million funding round co-led by existing investors Addition and Intel Capital with participation from Foundation Capital.

Event

MetaBeat 2022

MetaBeat will bring together thought leaders to offer advice on how metaverse technology will change the way all industries communicate and do business October 4 in San Francisco, CA.

Register here

“Ray started as a small project at UC Berkeley and it has grown much further than we initially imagined,” said Robert Nishihara, Anyscale’s co-founder and CEO, during his keynote address at the Ray Summit.

OpenAI’s GPT-3 was trained on Ray

It’s hard to underestimate Ray’s fundamental importance and reach in today’s AI space.

Nishihara went through a laundry list of big names in the IT industry that Ray use during his keynote. One of the companies he mentioned is ecommerce platform vendor Shopify, which Ray uses to scale its ML platform that uses TensorFlow and PyTorch. Grocery Instacart is another Ray user taking advantage of the technology to train thousands of ML models. Nishihara noted that Amazon is also a Ray user for multiple types of workloads.

Ray is also a fundamental element for OpenAI, which is one of the leading AI innovators, and is the group behind the GPT-3 Large Language Model and DALL-E image generation technology.

“We use Ray to train our biggest models,” said Greg Brockman, CTO and co-founder of OpenAI, at the Ray Summit. “So it’s been really helpful for us to just scale up to a pretty unprecedented scale.”

Brockman noted that he sees Ray as a developer-friendly tool, and the fact that it’s a third-party tool that OpenAI doesn’t have to maintain is helpful too.

“If something goes wrong, we can complain on GitHub and ask an engineer to work on it so it reduces some of the burden of building and maintaining infrastructure,” Brockman said.

More machine learning goodness is built into Ray 2.0

Before Ray 2.0, Nishihara’s primary goal was to make it easier for more users to take advantage of the technology, while also providing performance optimizations that benefit users large and small.

Nishihara noted that a common pain point in AI is that organizations can be tied to a certain framework for a certain workload, but over time realize that they want to use other frameworks as well. For example, an organization might start out using only TensorFlow, but realize they also want to use PyTorch and HuggingFace in the same ML workload. With the Ray AI Runtime (AIR) in Ray 2.0, it is now easier for users to unify ML workloads across multiple tools.

Model Deployment is another common pain point that Ray 2.0 aims to help solve, with the Ray Serve Deployment Chart capability.

“It’s one thing to deploy a handful of machine learning models. It’s quite another to deploy hundreds of machine learning models, especially when those models can be interdependent and have different dependencies,” Nishihara said. “As part of Ray 2.0, we are announcing Ray Serve implementation charts, which address this issue and provide a simple Python interface for scalable model building.”

Looking ahead, Nishihara’s goal with Ray is to enable wider use of AI by making it easier to develop and manage ML workloads.

“We want to get to the point where any developer or organization can succeed with AI and derive value from AI,” Nishihara said.

The mission of VentureBeat is a digital city square for tech decision makers to gain knowledge about transformative business technology and transactions. Learn more about membership.

Shreya Christinahttp://ukbusinessupdates.com
Shreya has been with ukbusinessupdates.com for 3 years, writing copy for client websites, blog posts, EDMs and other mediums to engage readers and encourage action. By collaborating with clients, our SEO manager and the wider ukbusinessupdates.com team, Shreya seeks to understand an audience before creating memorable, persuasive copy.

Latest news

1xbet App ᐉ Скачать 1xbet Mobile 1xbet Apk Android & Ios ᐉ My 1xbet Co

1xbet App ᐉ Скачать 1xbet Mobile 1xbet Apk Android & Ios ᐉ My 1xbet Com1xbet Официальное Приложение Скачать и...

Вулкан Вегас официальному Сайт: Автоматы в Деньги В Vulkan Vega

Вулкан Вегас официальному Сайт: Автоматы в Деньги В Vulkan VegasЛучшие Сайты Онлайн-слотов В 2024 году Игры На Игровые Автоматы...

Comment jouer au RDR2 Poker Un guide pour gagner au RDR2 Poker

Fort heureusement, vous pouvez sauvegarder entre chaque parties gagnées et quitter la table en cours de partie dans modifier...

comment ouvrir un casino 653756

Elle garantit que le casino opère selon des normes établies pour protéger les joueurs, garantir des jeux équitables et...

Royal Ace Casino Review Updated for April 2024

Nous sommes un annuaire indépendant et un réviseur de casinos en ligne, un forum sur les casinos et un...

Red Dead Redemption 2, comment tricher au poker

Lorsque vous jouez contre des joueurs expérimentés, cela les empêche d'apprendre votre style et de prédire vos décisions. Une...

Must read

You might also likeRELATED
Recommended to you