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Data Mining and Diagnosing IC Fails [recurso electrónico] / by Leendert M. Huisman.

Por: Colaborador(es): Tipo de material: TextoTextoSeries Frontiers in Electronic Testing ; 31Editor: Boston, MA : Springer US, 2005Descripción: XIX, 250 p. online resourceTipo de contenido:
  • text
Tipo de medio:
  • computer
Tipo de soporte:
  • recurso en línea
ISBN:
  • 9780387263519
  • 99780387263519
Tema(s): Formatos físicos adicionales: Printed edition:: Sin títuloClasificación CDD:
  • 621.3815 23
Recursos en línea:
Contenidos:
Introduction -- Statistics -- Yield Statistics -- Area Dependence of the Yield -- Statistics of Embedded Object Fails -- Fail Commonalities -- Spatial Patterns -- Test Coverage and Test Fallout -- Logic Diagnosis -- Slat Based Diagnosis -- Data Collection Requirements -- Appendix A. Distribution of IC Fails -- Appendix B. General Yield Model -- Appendix C. Simplified Center-Satellite Model -- Appendix D. Quadrat Analysis -- Appendix E. Cell Fail Probabilities -- Appendix F. Characterization Group -- Appendix G. Component Fail Probabilities -- Appendix H. Yield and Coverage -- Appendix I. Estimating First Fail Probabilities from the Fallout -- Appendix J. Identity of M and S -- References -- Index.
En: Springer eBooksResumen: Datamining and Diagnosing Integrated Circuit Fails addresses the problem of obtaining maximum information from (functional) Integrated Circuit fail data about the defects that caused the fails. It starts at the highest level from mere sort codes, and drills down via various data mining techniques to detailed logic diagnosis. The various approaches discussed in this book have a thorough theoretical underpinning, but are geared towards applications on real life fail data and state of the art ICs. This book brings together a large number of analysis techniques that are suitable for IC fail data, but that are not available elsewhere in a single place. Several of the techniques, in fact, have been presented only recently in technical conferences. Datamining and Diagnosing Integrated Circuit Fails begins with a discussion of sort codes and yield analysis. It then discusses various data mining techniques centered on fail syndrome commonalities and the statistics of embedded object fails. It gives a thorough discussion of the area dependence of the yield and of the recognition of spatial patterns of failing die or embedded objects. Next, it gives a detailed analysis of the relationship between defect coverage and yield. It ends with a description of state of the art logic diagnosis techniques. The purpose of the book is to bring together in one place a large number of analysis, data mining and diagnosis techniques that have proven to be useful in analyzing IC fails. The descriptions of the techniques and analysis routines is sufficiently detailed that profession manufacturing engineers can implement them in their own work environment. There are many techniques for analyzing IC fails, but they are scattered over the professional IC test and diagnosis literature, and in various statistics and data mining handbooks. Moreover, many data mining techniques that are standard in other data analysis environments, and that are appropriate for analyzing IC fails, have not yet been employed for that purpose. There is a clear need for a single source for all these analysis techniques, suitable for professional IC manufacturing and test engineers.
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Libros electrónicos Libros electrónicos CICY Libro electrónico Libro electrónico 621.3815 (Browse shelf(Opens below)) Available

Introduction -- Statistics -- Yield Statistics -- Area Dependence of the Yield -- Statistics of Embedded Object Fails -- Fail Commonalities -- Spatial Patterns -- Test Coverage and Test Fallout -- Logic Diagnosis -- Slat Based Diagnosis -- Data Collection Requirements -- Appendix A. Distribution of IC Fails -- Appendix B. General Yield Model -- Appendix C. Simplified Center-Satellite Model -- Appendix D. Quadrat Analysis -- Appendix E. Cell Fail Probabilities -- Appendix F. Characterization Group -- Appendix G. Component Fail Probabilities -- Appendix H. Yield and Coverage -- Appendix I. Estimating First Fail Probabilities from the Fallout -- Appendix J. Identity of M and S -- References -- Index.

Datamining and Diagnosing Integrated Circuit Fails addresses the problem of obtaining maximum information from (functional) Integrated Circuit fail data about the defects that caused the fails. It starts at the highest level from mere sort codes, and drills down via various data mining techniques to detailed logic diagnosis. The various approaches discussed in this book have a thorough theoretical underpinning, but are geared towards applications on real life fail data and state of the art ICs. This book brings together a large number of analysis techniques that are suitable for IC fail data, but that are not available elsewhere in a single place. Several of the techniques, in fact, have been presented only recently in technical conferences. Datamining and Diagnosing Integrated Circuit Fails begins with a discussion of sort codes and yield analysis. It then discusses various data mining techniques centered on fail syndrome commonalities and the statistics of embedded object fails. It gives a thorough discussion of the area dependence of the yield and of the recognition of spatial patterns of failing die or embedded objects. Next, it gives a detailed analysis of the relationship between defect coverage and yield. It ends with a description of state of the art logic diagnosis techniques. The purpose of the book is to bring together in one place a large number of analysis, data mining and diagnosis techniques that have proven to be useful in analyzing IC fails. The descriptions of the techniques and analysis routines is sufficiently detailed that profession manufacturing engineers can implement them in their own work environment. There are many techniques for analyzing IC fails, but they are scattered over the professional IC test and diagnosis literature, and in various statistics and data mining handbooks. Moreover, many data mining techniques that are standard in other data analysis environments, and that are appropriate for analyzing IC fails, have not yet been employed for that purpose. There is a clear need for a single source for all these analysis techniques, suitable for professional IC manufacturing and test engineers.

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