Ramu Gopal: The Engineer Bridging CAD Automation and AI Systems
Hi there, little explorer! 👋
Imagine Ramu Gopal is like a superhero builder! 🦸♂️ He used to build cool things with special LEGOs on a computer, called CAD. It's like drawing amazing cars or robots with a magic pencil!
Now, he's learning how to teach computers to be super smart, like a clever robot friend! 🤖 This is called AI.
So, Ramu is teaching his magic LEGOs to talk to his smart robot friends. He's showing them how to build even cooler things all by themselves! It's like teaching your toy car to drive itself! Zoom! 🚗💨 Isn't that super cool?
Can a mechanical engineer evolve into an AI systems builder? In today’s rapidly changing engineering world, the answer is increasingly yes… Continue reading on Medium »
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