Scaling innovation in manufacturing with AI – MIT Technology Review

Sponsored
AI integration modernizes factory operations and enables manufacturers to achieve greater business results.
In partnership withMicrosoft and NVIDIA
Manufacturing is getting a major system upgrade. As AI amplifies existing technologies—like digital twins, the cloud, edge computing, and the industrial internet of things (IIoT)—it is enabling factory operations teams to shift from reactive, isolated problem-solving to proactive, systemwide optimization.
Digital twins—physically accurate virtual representations of a piece of equipment, a production line, a process, or even an entire factory—allow workers to test, optimize, and contextualize complex, real-world environments. Manufacturers are using digital twins to simulate factory environments with pinpoint detail.
“AI-powered digital twins mark a major evolution in the future of manufacturing, enabling real-time visualization of the entire production line, not just individual machines,” says Indranil Sircar, global chief technology officer for the manufacturing and mobility industry at Microsoft. “This is allowing manufacturers to move beyond isolated monitoring toward much wider insights.”
A digital twin of a bottling line, for example, can integrate one-dimensional shop-floor telemetry, two-dimensional enterprise data, and three-dimensional immersive modeling into a single operational view of the entire production line to improve efficiency and reduce costly downtime. Many high-speed industries face downtime rates as high as 40%, estimates Jon Sobel, co-founder and chief executive officer of Sight Machine, an industrial AI company that partners with Microsoft and NVIDIA to transform complex data into actionable insights. By tracking micro-stops and quality metrics via digital twins, companies can target improvements and adjustments with greater precision, saving millions in once-lost productivity without disrupting ongoing operations.
AI offers the next opportunity. Sircar estimates that up to 50% of manufacturers are currently deploying AI in production. This is up from 35% of manufacturers surveyed in a 2024 MIT Technology Review Insights report who said they have begun to put AI use cases into production. Larger manufacturers with more than $10 billion in revenue were significantly ahead, with 77% already deploying AI use cases, according to the report.
“Manufacturing has a lot of data and is a perfect use case for AI,” says Sobel. “An industry that has been seen by some as lagging when it comes to digital technology and AI may be in the best position to lead. It’s very unexpected.”
Download the report.
This content was produced by Insights, the custom content arm of MIT Technology Review. It was not written by MIT Technology Review’s editorial staff. It was researched, designed, and written by human writers, editors, analysts, and illustrators. This includes the writing of surveys and collection of data for surveys. AI tools that may have been used were limited to secondary production processes that passed thorough human review.
The idea that machines will be as smart as—or smarter than—humans has hijacked an entire industry. But look closely and you’ll see it’s a myth that persists for many of the same reasons conspiracies do.
The experimental model won't compete with the biggest and best, but it could tell us why they behave in weird ways—and how trustworthy they really are.
Machine translators have made it easier than ever to create error-plagued Wikipedia articles in obscure languages. What happens when AI models get trained on junk pages?
India is OpenAI’s second-largest market, but ChatGPT and Sora reproduce caste stereotypes that harm millions of people.
Discover special offers, top stories, upcoming events, and more.
Thank you for submitting your email!
It looks like something went wrong.
We’re having trouble saving your preferences. Try refreshing this page and updating them one more time. If you continue to get this message, reach out to us at customer-service@technologyreview.com with a list of newsletters you’d like to receive.

© 2025 MIT Technology Review

source
This is a newsfeed from leading technology publications. No additional editorial review has been performed before posting.

Continue Your AI Leadership Journey

Turn insight into action with CDO TIMES.

CDO TIMES helps executives move from AI awareness to AI execution through practical frameworks, tools, executive research, and advisory support.

Explore the Frameworks

Continue with Enterprise AI 2030, HI + AI = ECI, AI Governance, and executive playbooks.

Explore Enterprise AI 2030 →

Use the Free Tools

Assess readiness, estimate AI ROI, model AI costs, and prioritize AI initiatives.

Open Executive Tools →

Read the Book

Explore the HI + AI = ECI leadership model in The AI-Ready Leader.

Order The AI-Ready Leader →

Go deeper with CDO TIMES Pro.

Unlock premium research, executive playbooks, templates, advanced tools, and member-only briefings.

Join CDO TIMES Pro

Need executive help?

Explore advisory, workshops, fractional CIO/CDO/CISO/CAIO support, and AI operating model design.

Explore Advisory →

Attend executive events

Join leadership forums, executive dinners, webinars, and strategic AI briefings.

View Events →

Build AI capability

Use CDO TIMES Academy for executive learning, AI leadership development, and implementation training.

Explore Academy →

Leave a Reply