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An engineer overseeing automated robot arms in a smart factory using real-time monitoring software on a tablet to control and check welding robotics and digital manufacturing processes

GenAI is doing some heavy lifting in 5 labor-intensive industries

GenAI will make its mark in industries that rely on physical labor, from agriculture to manufacturing.

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In the more than two years since OpenAI introduced ChatGPT, generative AI (GenAI) has been mainly associated with changing how white-collar professions work. In a 2024 study by the Society for Human Resource Management and The Burning Glass Institute, the authors noted that the technology will broadly transform nearly all categories of white-collar work, while “blue-collar work will remain shielded from major disruptions.”

For now, maybe. But many industries typically associated with physical work are also experimenting with GenAI to resolve seemingly intractable issues. These range from improving crop yields in agriculture to easing labor shortages in construction.

What follows is a roundup of articles on how five such industries are putting GenAI to use. Their creative approaches offer lessons for any industry—white-collar or blue—on how to get the greatest value from this revolutionary technology.

Agriculture: Increasing farmers’ insights in a changing world

Sustainable food production is at the forefront of the agriculture industry’s challenges. Today’s farmers need to make efficient use of natural resources such as soil, seed, and water, as well as reduce the toll farming takes on the environment through methane generation, pesticide use, and other factors. At the same time, they must adapt to a changing climate that directly affects their revenue.

These pressures have prompted organizations to devise an array of GenAI applications, ranging from chatbots for small farmers in India, to data collection and analysis systems for multinational agricultural conglomerates.

Digital Green, a nonprofit that builds technology to help farmers in developing countries, has rolled out a virtual agronomist chatbot to extension agents in India, Kenya, and Ethiopia. The goal is to deliver information on farming essentials like seeds, climate, and even market prices.

And in Switzerland, tech company Datamars is investigating how GenAI could be used to improve milk production while also gathering sustainability data that is increasingly important, not only to the buying public, but also to governments

Cross-industry takeways

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An architect and a foreperson at a construction site discussing blueprints while looking at a laptop

Construction: Combating labor and productivity challenges

Construction has historically been reluctant to invest in technology. But faced with labor and productivity challenges, major builders are experimenting with GenAI.

Skilled labor is growing scarce as older workers leave the industry and fewer young people enter its ranks. More than one in five construction workers are 55 or older, according to research by Associated Builders and Contractors. Meanwhile, productivity lags, and schedule and cost overruns are the norm, with just 8.5% of megaprojects ($1 billion or more) meeting or exceeding their time and budget expectations, according to Bent Flyvbjerg, emeritus professor at the University of Oxford’s Saïd Business School.

The hope with GenAI is that builders can use the accumulated decades’ worth of data to help solve these problems. “We’re sitting on 40 years of construction data,” says Kelsey Gauger, national director of operational excellence at Suffolk Construction. However, for many construction companies, that data is siloed, unstandardized, and hard to access.

Cross-industry takeaways

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GenAI: Spurring a new era of construction tech

GenAI could solve a range of construction’s longstanding challenges. But most firms have catching up to do, technology-wise.

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Manufacturing: Easing skills shortages and avoiding costly downtime

Skilled workers are also in short supply in manufacturing. According to the Manufacturing Institute, the workforce development arm of the National Association of Manufacturers, a lack of skilled labor could leave 2.1 million manufacturing jobs unfilled by 2030.

This explains why one GenAI application that’s gaining ground in this industry is chatbots based on voluminous amounts of specifications, technical manuals, and other details. These bots can be used to train and provide answers in real time to junior-level staff, delivering instructions on how to fix equipment and even which tools are needed. This is crucial in an industry where downtime losses can total $532,000 an hour, on average.

Although interest in GenAI is high (some 78% of industrial manufacturing executives surveyed by KPMG named it as the top emerging technology), most are proceeding with caution. “Organizations are being cautious about applying GenAI to core operations that could directly impact their P&L,” says Kabali Ganesan, director of business consulting at Cognizant.

Cross-industry takeaways

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Generative AI will help manufacturers cut through complexity, ease skills shortages, and avoid costly downtime.

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Aerospace and defense: Improving parts design

Manufacturers in aerospace and defense are especially conservative when it comes to implementing GenAI. Whether airplanes, satellites, drones, naval ships, or army tanks, the equipment they produce is extremely expensive, in the millions, even billions, of dollars. Just as important, the equipment must comply with strict military, government, and data security specifications.

While these companies see several potential benefits of GenAI, including improving predictive maintenance and aftermarket services, the most popular application today is in equipment design. Some 41% of aerospace and defense organizations surveyed by Capgemini said they were piloting generative AI in 3D modeling to speed up design, improve the aerodynamics of parts, and reduce costs.

Cross-industry takeaways

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GenAI will impact aerospace/defense—but slowly

GenAI may not seem a natural fit for this security-minded sector, but it is already making inroads in key areas like design.

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A power line technician wearing a yellow hard hat and a safety vest and using a tablet while standing in front of a meter box

Utilities: Improving infrastructure management and maintenance

Today’s utilities contend with myriad challenges, including dealing with many new sources of energy and evolving business models. Take West Penn Power, for example. Besides delivering a reliable source of electricity, the 100-year-old provider in Pennsylvania must now offer customers a percentage of electricity from alternative types of energy. It contracts with a couple dozen wind, solar, and hydropower suppliers, in addition to consumers who generate their own solar power and sell it back to West Penn.

GenAI could help companies sort out how to distribute which types of energy, and which supplier to pay for the energy used. The hope is that, by managing this complexity, GenAI will both reduce operating costs and increase reliability. Utilities are also using GenAI to improve maintenance and repairs, most notably by analyzing video of infrastructure. Nearly 40% of utility and energy companies surveyed by Capgemini have a dedicated team and budget for GenAI, and one in three have started pilots.

Cross-industry takeaways

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What generative AI can do for utilities

With practice, utilities see using GenAI to better manage power lines, predict and prevent outages, and train field workers.

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