AI in Design: Coming Full Circle

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As a Generation X engineer, I've witnessed remarkable shifts in how we approach design engineering.

Recently, I saw an article suggesting Gen X is frustrated because the skills we learned early in our careers no longer apply in today's technological landscape. This characterization made me pause and reflect. While our tools have certainly evolved dramatically, I believe we're experiencing something more nuanced than obsolescence.

With AI in design, we're coming full circle, with artificial intelligence and machine learning enhancing rather than replacing the fundamental skills we developed.

AI hierarchy with machine learning, deep learning, LLMs, AI agents, rule-based systems, expert systems
AI hierarchy with machine learning, deep learning, LLMs, AI agents, rule-based systems, expert systems
AI in Product Development
AI in Product Development

If you're feeling overwhelmed by these technological advancements, consider starting with a foundational course in machine learning. Focus on understanding how machine learning works and how to query using AI. Skip the programming part because with today's advancements, I doubt you'll need to learn how to code.

After that, or if you didn't feel you needed that, focus on applications specific to your engineering discipline. You will likely find the tools you use being enhanced. Combine your machine learning understanding with those tools to better understand how these tools may introduce errors into your decisions: assumptions in calculations, models being used, and data cleanliness to name a few.

You know what factors affect your decisions. So, continue to verify the answers you get. Avoid blindly accepting answers by applying critical thinking.

Three areas showing particular promise are:

  • topology optimization (using AI and generative algorithms to optimize designs for weight, strength, and manufacturability)
  • simulation and analysis (using surrogate models to accelerate simulations)
  • material selection (finding optimal materials based on performance requirements).

I've also included a graphic about what you might use during which step of product development.

The essence of design engineering hasn't changed – we're still solving problems and creating functional products. What has changed is our toolkit, which can now handle computational heavy lifting while we focus on creative problem-solving and engineering judgment.

Everything old hasn't gone out of style; we've just developed enhanced ways to accomplish our goals. AI and machine learning are giving designers unprecedented control if we're willing to embrace these new capabilities as extensions of our engineering expertise rather than replacements for it.

Other podcast episodes you may like:

Predictive Analytics, Machine Learning, AI, and VR in Design Engineering

SOR 1045 Complex AI Reliability - Accendo Reliability Join Dianna and Fred as they discuss complex AI reliability: using AI for complex systems.

 

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