Automating quality control processes can improve yield, process efficiencies, and ensure businesses never ship defective products to customers. Computer Vision for Quality Insight solutions on AWS help quality and process engineers collect and analyze data from disparate sources, including cameras from multiple vendors, which saves significant time compared to manual inspection. Automated image analysis enables root-cause analytics and the development of countermeasures, helping teams manage the entire process life cycle, and better achieve zero defects at scale.
Partner Solutions
Software, SaaS, or managed services from AWS Partners
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Total results: 4
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APEx Quality Management at the Edge via Computer Vision
The computer vision-based quality analytics solution will automate the visual inspection process, then accurately identify, categorize, and label defect types. Data is used to determine the root cause of an issue by examining a timeline of rejected parts and the annotated image. Results are integrated with OEE calculations and Quality Management System to trigger corrective action. An MLOps framework was designed to facilitate the development, maintenance, and deployment of machine learning models. This framework is utilized to support the Quality Management use case. The solution can also be extended to other vision-based and AI/ML use cases. A gateway management tool was designed to support multi-site enterprise deployments. This tool will reduce the gateway deployment effort and provide a central location to monitor status and to manage functionality updates. -
Denali Analytics and Monitoring Application
Denali’s Analytics & Monitoring Application (AMA) is a browser-based interface for industrial customers to visualize and retain production line insights generated by complementary computer vision applications such as Denali Automated Quality Inspection, both powered by AWS. AMA runs locally and is used to capture images from multiple cameras then display anomalies detected by AWS machine learning models. This capability allows plant managers and staff to quickly identify defects and associated trends on their production lines over time. As a result, they can make data-driven decisions that reduce downtime and increase efficiency.
Guidance
Prescriptive architectural diagrams, sample code, and technical content
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Total results: 3
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Computer Vision Based Product Quality for Manufacturing
Use this architecture for camera-based, end-of-line quality inspection; defect-detection using image classification and semantic segmentation at edge with x86 central processing unit (CPU) or NVIDIA graphics processing unit (GPU); alert notifications; near real-time actuation; and root cause analysis using process data and inferred vision results.
Internet of Things | Machine Learning & AI | Consumer Packaged Goods (CPG) | Manufacturing