How can MLOps improve your business outcomes?

Just a few years ago, the idea of integrating AI/ML into a business workflow was the stuff of fanciful startups and Silicon Valley dreams. But as the practice has begun to solidify as a legitimate business tool for large enterprises, AI/ML has become more than just a great way to spend compute resources. It's a path to surfacing better customer experiences, creating better outcomes and even to saving lives.

All of these benefits don't just arrive on the scene because an administrator installed some software, however. AI/ML at scale, and the the speed of business, is one of those technology spaces that has now merited its own term: MLOps. 

While the fundamentals of MLOps are squarely rooted in DevOps, the actual implementation of these algorithms and the usage of them day to day falls onto the same teams that are tasked with implementing the digital transformation: the developers.

Enabling those developers requires robust systems of data management, ingestion, and processing, similar to classic business ETL work, but at significantly larger and faster scales. Additionally, the specific use case for each AI/ML application is unique and must be tailored to meet the individual needs. While the systems enabling MLOps can be reused for multiple projects, the actual AI/ML projects themselves can range from matching buyers to goods, to predicting medical conditions ahead of time.

Today, unlocking the business power of AI/ML is no longer an item on the future roadmap. It is a differentiator that can make the difference here and now. Just ask any of our customers> here's a whole swath of case studies and information about how businesses are using Red Hat products to operationalize AI/ML.


Red Hat MLOps Success Stories



Additional Resources


关于作者

Red Hatter since 2018, technology historian and founder of The Museum of Art and Digital Entertainment. Two decades of journalism mixed with technology expertise, storytelling and oodles of computing experience from inception to ewaste recycling. I have taught or had my work used in classes at USF, SFSU, AAU, UC Law Hastings and Harvard Law. 

I have worked with the EFF, Stanford, MIT, and Archive.org to brief the US Copyright Office and change US copyright law. We won multiple exemptions to the DMCA, accepted and implemented by the Librarian of Congress. My writings have appeared in Wired, Bloomberg, Make Magazine, SD Times, The Austin American Statesman, The Atlanta Journal Constitution and many other outlets.

I have been written about by the Wall Street Journal, The Washington Post, Wired and The Atlantic. I have been called "The Gertrude Stein of Video Games," an honor I accept, as I live less than a mile from her childhood home in Oakland, CA. I was project lead on the first successful institutional preservation and rebooting of the first massively multiplayer game, Habitat, for the C64, from 1986: https://neohabitat.org . I've consulted and collaborated with the NY MOMA, the Oakland Museum of California, Cisco, Semtech, Twilio, Game Developers Conference, NGNX, the Anti-Defamation League, the Library of Congress and the Oakland Public Library System on projects, contracts, and exhibitions.

 
UI_Icon-Red_Hat-Close-A-Black-RGB

按频道浏览

automation icon

自动化

有关技术、团队和环境 IT 自动化的最新信息

AI icon

人工智能

平台更新使客户可以在任何地方运行人工智能工作负载

open hybrid cloud icon

开放混合云

了解我们如何利用混合云构建更灵活的未来

security icon

安全防护

有关我们如何跨环境和技术减少风险的最新信息

edge icon

边缘计算

简化边缘运维的平台更新

Infrastructure icon

基础架构

全球领先企业 Linux 平台的最新动态

application development icon

应用领域

我们针对最严峻的应用挑战的解决方案

Virtualization icon

虚拟化

适用于您的本地或跨云工作负载的企业虚拟化的未来