From Data to Decisions: AI in Manufacturing
It is not a secret that Artificial Intelligence (AI) is now starting to transform industries globally, and manufacturing is no exception. Mainstream everyday adoption, however, will most probably come from Agentic AI, more commonly referred to as AI Assistants or Agents.
But before we go into how AI is transforming the business world, let’s keep in mind that the technology will likely not solve all manufacturing challenges and that not all AI Agents are created equal. There are mainly two kinds of AI Agents. One is based on the AI we all started talking about a few years ago, which is more of Machine Learning (ML) and is based on the statistical relationships between numbers. The AI that is more popular these days is Generative AI, or just GenAI for short, which is the statistical relationships between words.
In manufacturing, Machine Learning is being used heavily to identify patterns and optimize processes from numerical data, such as production rates, defect rates, and performance data. This kind of AI plays a crucial role in refining the level of operational effectiveness, pinpointing the underlying causes of production problems, and enhancing overall product quality.
GenAI is the opposite, however, and is all about interpreting and generating human language so that machines can comprehend questions, provide insight, and interact in a more intuitive, human-friendly manner. In manufacturing, the ability can be harnessed to simplify the reporting of data, aid operators in instructions, or even handle customer service queries more conversational in nature.
Empowering the Workforce
This is where the Augmented Connected Worker (ACW) concept comes in, a digitally empowered front-line worker using AI-powered tools to enhance decision-making, reduce errors, and enhance productivity. With the provision of real-time information, voice-enabled instructions, and perfect communication, ACW retains human workers at the center but with tremendous digital support.
Take the semiconductor industry as an example, its production process involves hundreds of complex steps, and one small deviation can cause a drastic decline in product quality. Machine Learning has been a game-changer in this respect as it has enabled manufacturers to detect infinitesimal changes in the process and make real-time corrections to prevent defects and yield loss. GenAI, in turn, helps to reduce communication efficiency by enabling engineers and operators to ask systems for quick information or detailed reports, which is time-efficient and reduces errors.
Another example of the ACW concept can be seen in the use of GenAI in production planning systems to narrow the gap between novice and expert users. Manufacturing planning and scheduling problems are complex, and sophisticated optimization methods are needed to solve them. While modern user-friendly interfaces hide much of the complexity, these systems can appear as “black boxes” to novice users, who may not understand the planning choices made. GenAI can provide natural language explanations to the decisions made by such systems, bridging the gap between mathematical sophistication and human understanding, and empowering novice users to work as effectively as experts. By enabling more intuitive interactions and demystifying system outputs, GenAI tools further strengthen the role of the Augmented Connected Worker, enhancing not only operational execution but also user confidence and autonomy on the shop floor.
With both of these types of AI increasingly being employed in everyday manufacturing activities, they will complement each other to improve productivity, rationalize processes, and provide more efficient decision-making. The future of manufacturing lies in an environment where AI does not just support employees but positively assists them in maximizing both operational effectiveness and communication in general.
Unlocking AI’s Full Potential Through Digitization
However, to truly take full advantage of AI, businesses must first digitize their operations. AI is enabled where data is interrelated and connected, with businesses needing to go beyond isolated systems and processes. Real AI strength is derived from optimizing end-to-end processes, unifying planning, scheduling, and execution as a smooth digital ecosystem. With the establishment of these ‘improvement strings’ throughout the business, AI can provide more profound insights, not just by optimizing separate silos, but by enhancing the whole process flow. This approach unleashes better and more powerful decision-making, giving businesses an edge in a data-driven world.
AI is only as powerful as the systems it connects to. Don’t let siloed data hold your business back. Start connecting your planning, scheduling, and execution systems today!