Skip to content
MarketScale
‹ Back to IndustriesEngineering & Construction

How AI and Machine Learning are Shaping Data Management

Artificial intelligence and machine learning are innovative technologies that provide powerful use cases across all industries, including data management. But with these solutions come some headaches, too, as OT & IT professionals learn to process, analyze and create actionable insights around their data. And that’s not to mention all the challenges related to retaining, storing…

This story was produced through MarketScale. See how Engineering & Construction teams put it to work with Partner & Channel Enablement.

Share

Artificial intelligence and machine learning are innovative technologies that provide powerful use cases across all industries, including data management. But with these solutions come some headaches, too, as OT & IT professionals learn to process, analyze and create actionable insights around their data.

And that’s not to mention all the challenges related to retaining, storing and accessing old data for future use. For insights and some answers, host Daniel Litwin tapped Ray McCay, VP of Solution Sales, and Michael Lamb, Product Manager for Solution Infrastructure, from ViON, an IT storage and services solutions company.

“AI is giving the world new value propositions every day, and everyone is learning how to think about new AI actions they can take in the future to drive more value for the entire world,” McCay said. “So, now the concept of data having expiration dates starts to go away, because I’m using my data today to create value, and, tomorrow, data that I wouldn’t have used [in the past] will suddenly be useful to me again.”

McCay also said the data management model is changing as the data model itself is changing. “We have to effectively manage that data, manage the performance, manage the cost, manage the access patterns, and, when technology and use technology changes, the management of that technology changes too.”

It is essential when managing data to consider both active and inactive data storage needs. “You need to make sure management platform is going to be able to talk to your active performance NVMe storage all the way down to the cheapest inactive storage, whether that’s spinning hard drive or tape media, and see all the data that’s there,” Lamb said.

Follow us on social media for the latest updates in B2B!

Twitter – @MarketScale

Facebook – facebook.com/marketscale

LinkedIn – linkedin.com/company/marketscale

Engineering & Construction: are you visible to AI?

Before they reach out, Engineering & Construction buyers ask AI engines which vendors to trust. See how AI describes your company today, and where competitors show up instead.

Free workspace

You just read one expert. Imagine publishing your whole team.

This article was produced through MarketScale. Create a free workspace and turn your own team's expertise into articles, video, and social posts. No credit card, no demo required.

NPS +73 · 1,000+ creators · 38+ countries

What you get, free

Your own MarketScale Studio workspace
One video edit a month, on us
AI writing, editing, and publishing tools
In-platform coaching to learn the system

More Engineering & Construction Insights

AI moves from back office to job site in construction's next build-out

AI moves from back office to job site in construction's next build-out

McCarthy Building Companies has entered a multimillion-dollar agreement with Palantir to enhance AI adoption. However, RICS experts highlight that data readiness and organizational culture pose significant challenges. This development signals a shift in integrating AI within construction sectors.

  • 01McCarthy Building Cos. signs a major deal with Palantir.
  • 02Data readiness is a critical hurdle for AI integration.
  • 03Organizational culture impacts AI adoption in construction.

Jul 11, 2026

South Korea commits $7.5 billion to AI-autonomous manufacturing as smart factory count hits 30,000

South Korea commits $7.5 billion to AI-autonomous manufacturing as smart factory count hits 30,000

South Korea is investing $7.5 billion in advancing AI-autonomous manufacturing, with a significant increase in smart factories, now totaling 30,000. The initiative also targets the development of 100 AI manufacturing zones throughout the country.

  • 01South Korea invests $7.5 billion in AI-autonomous manufacturing.
  • 02There are currently 30,000 smart factories in South Korea.
  • 03The government aims to develop 100 AI manufacturing zones.

Jul 11, 2026

Construction's productivity crisis: why ML cost forecasting and off-site methods are converging

Construction's productivity crisis: why ML cost forecasting and off-site methods are converging

U.S. construction productivity has decreased since 1968. Machine learning models and off-site construction methods are becoming pivotal in bridging this productivity gap by providing accurate cost forecasting and efficient building practices.

  • 01U.S. construction productivity has been declining since 1968.
  • 02Machine learning models offer enhanced cost forecasting capabilities.
  • 03Off-site construction methods contribute to improved project efficiency.

Jul 10, 2026

Explore More Engineering & Construction Insights

Read more expert perspectives from across Engineering & Construction.

Browse Engineering & Construction Hub

For B2B teams

Your experts could be publishing here

Stories like this one run on content MarketScale captures from real practitioners. See how your team's expertise becomes coverage in Engineering & Construction and beyond.

Book a 15-minute demo

Or call us. No forms required. We pick up. 214-945-2512