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How manufacturers can best use generative AI

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

Imagine that an equipment problem just brought your factory assembly line to a grinding halt. Production is delayed indefinitely, as technicians struggle to identify and fix the problem. The clock, in this case, is the enemy: when you factor in lost revenue, financial penalties, idle staff time, and restarting lines, you’re looking at losses totaling $532,000 an hour on average.

Clearly, shortening downtime is essential in industrial manufacturing. But doing so is increasingly difficult because of a growing shortage of experienced workers, who are typically spread too thin to fix every equipment breakdown.

Here's where generative AI (GenAI) could play – and in some cases already is playing – a major role. With GenAI's ability to digest hundreds of pages of manuals, technical information, and input from experienced technicians, a junior-level maintenance engineer could get fast answers to problems through a natural-language query – as well as easy-to-understand instructions and tools to fix them.

While industrial manufacturers are being cautious about applying GenAI to their core operations, the majority are actively exploring how this powerful technology could reduce costs, increase efficiency, and improve aftermarket services. For that to happen, they will need to assess and prepare their data, determine which large language models (LLMs) to use in which contexts, and develop governance mechanisms for their companies’ use of AI models and data.

Below, we address questions that manufacturing leaders can consider as they evaluate how best to use GenAI.

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Q: Our company hasn’t begun using GenAI. Are we at risk of falling behind?

A: It’s definitely time to get into exploration mode with this powerful technology. Some 78% of industrial manufacturing executives recently surveyed by KPMG named GenAI as the top emerging technology of today – and many are already exploring ways to apply it.

Azaz Faruki, partner at management consultancy Kearney, says 70% of the firm’s clients are “actively considering it and trying to identify use cases.” Cognizant, a provider of consulting and professional services, has over 200 GenAI projects in process around the world, according to Bhoopahti Rapolu, leader of the company’s analytics practice in manufacturing.

But some perspective is needed. Although most manufacturers are investing in identifying use cases for GenAI across their supply chains and trying it in areas such as customer service, “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. “But it’s just a matter of time before this technology starts benefiting core operations,” he predicts.

That’s hard to judge, given that most projects are in such early stages. “This is so new that there are very few examples of proven results,” says Naren Agrawal, professor of supply chain management and analytics at Leavey School of Business, Santa Clara University. “People are considering many different use cases, and in some they are making progress, but it’s too early for validated successes.”

Further, many manufacturers may rely on their existing software vendors to fold GenAI capabilities into existing tools that use AI and machine learning. And according to a report by Boston Consulting Group (BCG), the most promising applications for optimizing factory operations will likely use a mix of GenAI, machine learning, and deep learning.

“For certain digital applications in the factory of the future, GenAI is less suitable or offers a less favorable ROI than traditional machine learning/deep learning–based AI,” says the firm’s December 2023 report on GenAI. “Consequently, manufacturers will need to employ both GenAI and traditional AI to optimize their factory operations.”.

This is so new that there are very few examples of proven results. People are considering many different use cases, and in some they are making progress, but it’s too early for validated successes.
Naren Agrawal, Professor of Supply Chain Management and Analytics at Leavey School of Business, Santa Clara University

Q: Where should we focus our exploration?

A: The most immediate use cases of GenAI for industrial manufacturers will apply the technology’s ability to digest large amounts of data and present information to workers or customers through chatbots. The most likely use cases fall into the following categories:

The chatbot could identify three things that may need adjustment or recalibration, then pull up the documentation showing the engineer how to do it. Now you have a more informed and natural way of responding to the maintenance needs.
Randal Kenworthy, Senior Partner and Consumer & Industrial Products Global Practice Leader, West Monroe Partners

With a chatbot trained with user manuals, service manuals, and data on previous service calls and repairs, maintenance engineers have an automatic assistant. For instance, they can ask the chatbot how many times a problem has happened in the past and what specific part was replaced.

Q: Is there anything we can do now to prepare for a GenAI initiative?

A: One is to find out what your software vendors’ planned capabilities are for GenAI. “In the future, we see GenAI becoming embedded in existing platforms,” says West Monroe Partners’ Kenworthy. For example, a vendor of a manufacturing execution system platform that already uses AI will likely incorporate the natural-language processing capabilities of GenAI.

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Other recommendations include:

  1. Take the time to improve data quality and management. “Manufacturers are not spending enough time on enterprise data management,” says Legan. The best algorithm in the world won’t help if you have inaccurate or conflicting data. Many companies are dealing with a hodgepodge of legacy systems. They often have multiple enterprise resource planning systems and different data warehouses, for example. The data in these silos has to be unified and reconciled before it can be useful, he notes.

    This may be one reason that the most immediate application of GenAI is to ingest technical information from manuals. This information is not data taken from key operational systems; presumably, specifications and instructions in various manuals are consistent. Such an application would be of limited use, however, if companies don’t have good data on past repairs.

  2. Carefully examine whether and where to use GenAI to make sure it’s adding business value. The aforementioned elevator manufacturer, for example, is cutting repair time, which keeps the customer happy and saves the manufacturer time and money. A semiconductor equipment maker could save time and costs in quoting and building custom machines.

  3. Decide on LLM sourcing. According to the BCG study, manufacturers have three options: use a model hosted by a vendor and fine-tune it to their specific needs; use an open-source foundational model, which can also be fine-tuned if required; or develop their own LLMs. The third option is for those who want more control and customization. It’s also expensive and requires huge amounts of data, so businesses usually use one of the first two options.

    Survey the field to see if there are LLMs available that are appropriate for your application. Determine what kind of data the LLM requires for training to fit your application and whether you have such data in usable form. And even when using a pretrained model, you should test that model in your application for reliability and accuracy.

  4. Develop oversight and security. How much human interaction is needed in this application? What would a mistake by GenAI cost you? For example, some industries or products require more reliability than others – think washing machine failure vs. semiconductor fabrication equipment failure, the latter of which could cost a customer millions of dollars in revenue. If the manufacturing process will be audited – for example, to meet government regulations – companies should require human review and sign-off to ensure traceability.

  5. Meet data privacy requirements. Three-quarters of organizations in Capgemini’s research identified a lack of data privacy and protection as a major concern for realizing the full potential of GenAI. Some countries, including Italy, Spain, and Canada, are looking into how OpenAI is collecting its training data. So organizations could be exposed to liability when using OpenAI or other pretrained models from the market, Capgemini says.

It's clear that GenAI offers the chance for manufacturers to augment and improve how they deploy skilled workers, manage production workflows, and serve customers. Achieving these benefits means assessing your data – its quality and how it’s managed – as well as how best to use it with GenAI in your operations.