Publication | Closed Access
Getting More From the Semiconductor Test: Data Mining With Defect-Cluster Extraction
34
Citations
22
References
2011
Year
EngineeringMachine LearningDiagnosisMining MethodsDefect ToleranceUnsupervised Machine LearningOptimization-based Data MiningDefect-cluster IdentificationData ScienceData MiningPattern RecognitionElectrical EngineeringClustering (Nuclear Physics)Knowledge DiscoveryComputer EngineeringDefect-cluster ExtractionDefect FormationSemiconductor TestAutomated InspectionSoftware TestingStructure DiscoveryProbe TestClustering (Data Mining)Fault Detection
High-volume production data shows that dies, which failed probe test on a semiconductor wafer, have a tendency to form certain unique patterns, i.e., defect clusters. Identifying such clusters is one of the crucial steps toward improvement of the fabrication process and design for manufacturing. This paper proposes a new technique for defect-cluster identification that combines data mining with a defect-cluster extraction using a Segmentation, Detection, and Cluster-Extraction algorithm. It offers high defect-extraction accuracy, without any significant increase in test time and cost.
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