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2 MIT professors offer a case study to consider for AI adoption: GM versus Toyota in the 1980s
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2 MIT professors offer a case study to consider for AI adoption: GM versus Toyota in the 1980s

Claire Dubois 10 views
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2 MIT professors offer a case study to consider for AI adoption: GM versus Toyota in the 1980s

Step one: understand how work actually gets done

Next, run targeted trials

Then, redeploy, don’t just reduce

Nelson Repenning is the faculty director of the MIT Leadership Center, and the School of Management Distinguished Professor of System Dynamics and Organization Studies at the MIT Sloan School of Management. Don Kieffer is a senior lecturer in Operations Management at MIT Sloan and the founder of ShiftGear Work Design, LLC. They are the

On October 20, 1984, The New York Times ran an article headlined, “GM Factory of the Future Will Run with Robots.” In it, Roger Smith, then GM’s CEO, claimed that automation would save the company from increasingly formidable Asian competitors.

But that didn’t happen. Smith’s robotic factories struggled to match the productivity of their human-run counterparts. Robots sometimes painted each other instead of cars or welded doors shut. And they carried much higher costs.

Today, the assembly of automobiles and countless other products is done primarily

A recent report

Take a cue from Taiichi Ohno, the engineer known as the father of the Toyota Production System. He argued for “autonomation:” or automation with a human touch. Here’s how leaders can put his insight into practice with AI:

One of the students we taught at MIT Sloan School of Management likes to say, “There are few ways to lose money faster than automating a process you don’t understand.” That was Smith’s first error.

Automotive assembly plants are complex environments. Every process combines formal procedures and countless local refinements to get work done. Most of these tweaks, while necessary, are invisible to people one level up, let alone the CEO.

Knowledge work is even harder to map and is often shaped

Successfully using AI requires a similar approach. You have to understand the work, otherwise you risk creating tools that, as the MIT report concluded about current AI applications, are “…brittle, overengineered, or misaligned with actual workflows.”

Smith’s second mistake was going too big, too fast—trying to replace entire systems overnight rather than proceeding incrementally with small, focused experiments.

Toyota pinpointed jobs where robots could make the work better

The AI analogy is clear: repetitive tasks are dull and create the mental equivalent of repetitive stress injuries. Look for processes that are predictable and repeatable. Start where boredom is high and variability is low then use these simpler automation successes as learning experiences toward automating more sophisticated, complex work.

AI will never grasp the full context of your organization or the surrounding social and political dynamics. AI only knows what it has learned from experience. You still need employees who know the work and the organization to oversee AI to make sure its learning is headed in the right direction.

There’s little doubt that AI will eventually eliminate jobs, but if your company hopes to grow and thrive, choose this as a last resort. Smith didn’t think this way. His tenure was marked

This is misguided. The “machines versus people” dynamic has fueled labor tensions, slowed technology adoption, and hurt organizational performance for over a century. It’s also bad business. Technology should improve productivity and fuel growth, not just slash costs.

AI frees up capacity. Use this newly available bandwidth to dust off ideas that have been sitting on the shelf: new services to offer, new markets to enter, and nagging problems to finally solve. Position employees where their skills are strongest; you know them, and they know the business.

Our approach requires a strong stomach, at least initially. At first, it’ll feel too small and too slow, especially when competitors boast about “doing AI everywhere.” But as you clear away work that is easily automated, building skills along the way, and delivering returns on the AI investment, more complex challenges will appear. Rinse and repeat with the next opportunity, ensuring that AI is not just cutting costs, it is helping you redesign and grow the business.

Much as robots are everywhere in factories now, AI will find a permanent place in most organizations. Your company will get there faster and with less heartache if you understand how work gets done, start with small experiments and prioritize growth over cuts.

The opinions expressed in Fortune.com commentary pieces are solely the views of their

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Claire

Claire Dubois

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