Title :
Semiconductor Yield Analysis and Multi-Chip Package (MCP) Die Pairing Optimization using Statistical-Learning
Author :
Goodwin, Randall ; Miller, Russell ; Tuv, Eugene ; Borisov, Alexander
Author_Institution :
Technol. & Manuf. Group, Intel Corp., Santa Clara, CA
Abstract :
In this paper we discuss the advancement and applications of Tree based classification and regression methods to semiconductor data. We begin the paper with a description of the problem, followed by an overview of the statistical-learning techniques we use in our case studies. We then describe how the challenges presented by semiconductor data were addressed with original extensions to tree-based and kernel-based methods. Next, we review four case studies: home sales price prediction, signal identification/separation, final speed bin classification and die pairing optimization for multi-chip packages (MCP). Results from the case studies demonstrate how statistical-learning addresses the challenges presented by semiconductor manufacturing data and enables improved data discovery and prediction when compared to traditional statistical approaches
Keywords :
data mining; learning (artificial intelligence); multichip modules; regression analysis; data mining; machine learning; multichip package die pairing optimization; regression methods; semiconductor yield analysis; statistical-learning; tree based classification; Assembly; Computer aided manufacturing; Microprocessors; Process control; Semiconductor device manufacture; Semiconductor device packaging; Semiconductor process modeling; Signal processing; Testing; Virtual manufacturing; data mining; machine learning; optimization; statistics;
Conference_Titel :
Electronic Packaging Technology, 2006. ICEPT '06. 7th International Conference on
Conference_Location :
Shanghai
Print_ISBN :
1-4244-0619-6
Electronic_ISBN :
1-4244-0620-X
DOI :
10.1109/ICEPT.2006.359858