aws-samples/amazon-sagemaker-edge-defect-detection-computer-vision
Workshop showcasing how to run defect detection using computer vision at the edge with Amazon SageMaker
This helps quality control engineers and manufacturing operators set up automated visual inspections on the factory floor. It takes camera images of products as they are being made and identifies defects like cracks or deformities in real time. The output is an immediate alert about a defective product, enabling quick intervention.
Use this if you need to detect manufacturing defects automatically and instantly using cameras on your production line.
Not ideal if you are looking for a current solution, as the core SageMaker Edge Manager service has been discontinued.
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Feb 21, 2026
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