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Manufacturing Technology Insights | Thursday, February 05, 2026
FREMONT, CA: In the ever-changing landscape of manufacturing and automation, the drive for efficiency, quality, and flexibility is still vital. However, fulfilling these objectives has become increasingly difficult due to an array of challenges confronting modern manufacturing facilities. Fortunately, advances in artificial intelligence (AI) and machine learning technologies provide a ray of hope, promising to transform industrial automation and confront these difficulties head-on.
Challenges sustaining interest in AI and Machine Learning: Manufacturers today face the urgent requirement to anticipate manufacturing performance with unprecedented precision. Rising operating costs, including energy and software license prices, and the rising costs of quality failures, such as product recalls, highlight the need for solutions to improve process efficiency. This need for efficiency benefits fuels the increased interest in AI and machine learning technology. Generative AI and machine learning tools are especially intriguing because they provide insight into the underlying relationships in manufacturing processes. By demystifying these relationships, algorithms enable teams to repurpose previously underutilized assets and improve overall operational efficiency.
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AI's current applications in industrial automation: Although the use of AI in manufacturing is still in its infancy, innovative facilities have already started integrating AI into their daily operations. These early adopters, who have a robust data infrastructure and a culture of continuous improvement, utilize AI to spot anomalies and perform predictive maintenance. By evaluating real-time data streams, AI systems may detect deviations from the ideal condition and take proactive steps to ensure process integrity.
Using data from reliable processes is essential to confidently address production line limitations and improve overall operational performance. These gains often emerge through efficiency improvements such as predictive maintenance rather than reactive repairs. In manufacturing environments increasingly reliant on real-time data, Quasi Robotics applies intelligent automation to help manufacturers identify anomalies and optimize process integrity across complex production workflows. Data-driven insights also support quality improvements by revealing correlations between raw material batches and key manufacturing KPIs, while enabling greater flexibility through automation capable of handling production lot sizes of one.
Verifying tasks that follow pre-planned work instructions can verify that all data for the lot is completed before a product leaves a specific work cell. This flexibility can be demonstrated further by challenging the sequential dependencies of certain jobs, allowing each lot size to be completed as efficiently as possible. This maximizes output independent of product mix, allowing facilities to reliably meet production targets.
Bisco Industries supplies electronic components and supply chain services that support flexible, data-driven manufacturing and industrial automation operations.
However, widespread AI implementation in industrial automation confronts challenges, such as a need for standardized data aggregation frameworks and scalable deployment networks. Bridging these gaps is crucial for realizing AI's full potential in manufacturing.
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