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Enabling modern manufacturing outcomes with AI, edge, and modern infrastructure

May 22, 2024
Fabien Duboeuf

Industry Manager, Manufacturing, Google Cloud

Dario Salischiker

Sr. Product Manager, Google Distributed Cloud, Google Cloud

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Emerging technologies, such as artificial intelligence (AI), edge computing, and software infrastructure are opening new doors for manufacturers to redefine operational efficiency, product quality, and safety standards. However, the complexity of implementing and scaling these cutting-edge solutions across diverse manufacturing environments and locations remains a challenge.

At the forefront of this technological wave is Google Distributed Cloud, a product that enables manufacturers to leverage the latest in AI, modern infrastructure, and security from Google Cloud directly on premises. Google Distributed Cloud can be deployed in a range of configurations, from self-managed software-only to fully managed hardware and cloud services, to meet OT security, latency, and availability requirements while bringing an agile platform to run modern applications onto the shop floor.

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Manufacturing use cases

Google Distributed Cloud is transforming manufacturing operations in powerful ways across a variety of areas. 

Visual inspection
Traditionally, quality control relied on human inspection, which was often time-consuming, error-prone, and costly. Edge-deployed AI models can perform visual inspection, analyze high-resolution images and video feeds in real time, and detect defects with unprecedented speed and accuracy. This real-time quality assurance translates into reduced waste, improved customer satisfaction, and the protection of brand reputation.

AI-driven visual inspection requires feeds from tens to hundreds of cameras to be analyzed at sub-second speed while continuously monitoring the performance of the AI models carrying out the analysis. As business needs drive changes to production lines, customers need the flexibility to update AI models to support new configurations. As a key component of the production process, visual inspection infrastructure has to operate reliably. 

Automated process control
Similar to visual inspection use cases, automated process control generates vast amounts of data from Internet of Things (IoT) sensors or cameras embedded in production equipment. Modern process control infrastructure can leverage AI to perform micro-adjustments to machinery, optimize operations to yield higher quality with greater throughput, and reduce energy consumption and downtime.

Emerging workforce safety use cases, such as proactive hazard identification, leverage cameras and wearables, enabling real-time alerts or automated corrective measures to protect workers. Edge-based augmented reality (AR) enhances training and maintenance procedures, reducing human error and improving task efficiency. Preventing accidents and injuries, creates a safer work environment, resulting in reduction of physical harm to workers, machinery damage, and ultimately reducing costly disruptions.

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Workforce safety and productivity
Integrating AI capabilities into existing manufacturing lines can bring new capabilities to legacy infrastructure and help avoid costly overhauls. Machine learning models running at the edge unlock valuable insights from existing equipment, enabling predictive maintenance to prevent malfunctions, extend equipment lifespans, and minimize costly downtime.

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Modernization of legacy systems with AI
Google Distributed Cloud running on premise provides real-time responsiveness, simplified scalability, and operational resiliency to run the most demanding visual inspection workloads. In addition, Google Distributed Cloud also allows for efficient data filtering, aggregation, and analysis locally, reducing the need to send massive datasets to the cloud, thus optimizing bandwidth usage and reducing costs. Google Distributed Cloud brings the flexibility and seamless integration for modern OT and IT needs.

These are just a few examples of some of the exciting ways Google Distributed Cloud is helping to enhance manufacturing, but there are many other additional use cases and the list continues to grow.

What are the benefits of Google Distributed Cloud for manufacturing?

The advantages of Google Distributed Cloud for manufacturers extend far beyond technological improvements, translating directly into tangible business outcomes impacting cost, efficiency, safety, and resource management:

  • Reduced scrap: Enhancing quality control with AI can reduce defective products, resulting in less wasted raw materials and improved manufacturing efficiency.

  • Enhanced safety practices: The ability to identify hazards or potential accidents in real time helps minimize costly disruptions to operations and increases workers safety.

  • Accelerated insights: Cloud-native tools and processes enable rapid experimentation, iteration, and the development of new AI-powered solutions deployed at the edge, which can be tailored to specific needs. Google Distributed Cloud brings cloud and edge together in an efficient and integrated way, allowing manufacturers to shorten implementation cycles and drive competitive differentiation.

  • Improved sustainability: Enabling edge-driven process optimization, the identification of value add vs. non-value add tasks, waste reduction, and predictive maintenance can lead to long-term operational savings and environmental benefits.

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The future of manufacturing

In the competitive world of manufacturing, the factories of tomorrow are being built today. By embracing edge computing with solutions like Google Distributed Cloud, manufacturers gain an essential tool to address the complex challenges of this dynamic industry. From increased automation and real-time insights to a commitment to safety and sustainability, Google Distributed Cloud paves the way towards intelligent, adaptive, and ultimately more successful manufacturing operations.

Learn more about how you can leverage Google Distributed Cloud on the manufacturing floor by downloading this report on delivering modern manufacturing insights. You can also come see how we are enabling innovation in person at our showcase at MxD (Manufacturing x Digital) where innovative manufacturers go to forge their futures and learn more about how you can leverage Google Distributed Cloud.

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