Graduate Thesis Or Dissertation
 

Just enough die-level functional test : optimizing IC test via machine learning and decision theory

Public Deposited

Downloadable Content

Download PDF
https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/hh63t0452

Descriptions

Attribute NameValues
Creator
Abstract
  • This research explores the hypothesis that methods from decision theory and machine learning can be combined to provide practical solutions to current manufacturing control problems. This hypothesis is explored by developing an integrated approach to solving one manufacturing problem - the optimization of die-level functional test. An integrated circuit (IC) is an electronic circuit in which a number of devices are fabricated and interconnected on a single chip of semiconductor material. According to current manufacturing practice, integrated circuits are produced en masse in the form of processed silicon wafers. While still in wafer form the ICs are referred to as dice, an individual IC is called a die. The process of cutting the dice from wafers and embedding them into mountable containers is called packaging. During the manufacturing process the dice undergo a number of tests. One type of test is die-level functional test (DLFT). The conventional approach is to perform DLFT on all dice. An alternative to exhaustive die-level testing is selective testing. With this approach only a sample of the dice on each wafer is tested. Determining which dice to test and which to package is referred to as the "optimal test problem", and this problem provides the application focus for this research. In this study, the optimal test problem is formulated as a partially observable Markov decision model that is evaluated in real time to provide answers to test questions such as which dice to test, which dice to package, and when to stop testing. Principles from decision theory (expected utility, value of information) are employed to generate tractable decision models, and machine learning techniques (Expectation Maximization, Gibbs Sampling) are employed to acquire the real-valued parameters of these models. Several problem formulations are explored and empirical tests are performed on historical test data from Hewlett-Packard Company. There are two significant results: (1) the selective test approach produces an expected net profit in manufacturing costs as compared to the current testing policy, and (2) the selective test approach greatly reduces the amount of testing performed while maintaining an appropriate level of performance monitoring.
Resource Type
Date Available
Date Issued
Degree Level
Degree Name
Degree Field
Degree Grantor
Commencement Year
Advisor
Academic Affiliation
Non-Academic Affiliation
Subject
Rights Statement
Publisher
Peer Reviewed
Language
Digitization Specifications
  • File scanned at 300 ppi (Monochrome, 8-bit Grayscale) using ScandAll PRO 1.8.1 on a Fi-6770A in PDF format. CVista PdfCompressor 4.0 was used for pdf compression and textual OCR.
Replaces

Relationships

Parents:

This work has no parents.

In Collection:

Items