Building an AI foundation for a smarter digital enterprise
Bringing AI into industry isn’t something that can happen all at once, rather, something that will happen gradually by applying AI to individual areas where it can have the most impact. With that said, as these foundations continue to grow, more complex, overarching AI applications will begin to find their way into industry as well, offering greater flexibility and possibility then traditional systems can.
In this episode, host Spencer Acain is joined by Dr. James Loach, head of research at Senseye Predictive Maintenance to look at the applications of LLMs and other, similar AI technologies to the vast store of information available across a digital enterprise, and what that means for the future of design and manufacturing.
In this episode you will learn:
- What comes after the time series foundation model? (0:35)
- Expanding AI to enterprise data (3:26)
- The broader role of AI in industry (9:50)
Spencer Acain
Technical Writer for Global Marketing at Siemens Digital Industries Software
AI Spectrum
This podcast features discussions around the importance of AI and ML in today’s industrial world.
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Great insight—AI adoption really does build step-by-step, creating value long before the big, enterprise-wide systems arrive. Even simple digital tools or games like Slice Master show how small innovations can scale. The future of design looks exciting.
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