© 1987

An Artificial Intelligence Approach to Test Generation


Table of contents

  1. Front Matter
    Pages i-xiii
  2. Narinder Singh
    Pages 1-17
  3. Narinder Singh
    Pages 19-66
  4. Narinder Singh
    Pages 67-91
  5. Narinder Singh
    Pages 93-131
  6. Narinder Singh
    Pages 133-136
  7. Back Matter
    Pages 137-193

About this book


I am indebted to my thesis advisor, Michael Genesereth, for his guidance, inspiration, and support which has made this research possible. As a teacher and a sounding board for new ideas, Mike was extremely helpful in pointing out Haws, and suggesting new directions to explore. I would also like to thank Harold Brown for introducing me to the application of artificial intelligence to reasoning about designs, and his many valuable comments as a reader of this thesis. Significant contribu­ tions by the other members of my reading committee, Mark Horowitz, and Allen Peterson have greatly improved the content and organization of this thesis by forcing me to communicate my ideas more clearly. I am extremely grateful to the other members of the Logic Group at the Heuristic Programming Project for being a sounding board for my ideas, and providing useful comments. In particular, I would like to thank Matt Ginsberg, Vineet Singh, Devika Subramanian, Richard Trietel, Dave Smith, Jock Mackinlay, and Glenn Kramer for their pointed criticisms. This research was supported by Schlumberger Palo Alto Research (previously Fairchild Laboratory for Artificial Intelligence). I am grateful to Peter Hart, the former head of the AI lab, and his successor Marty Tenenbaum for providing an excellent environment for performing this research.


Syntax algorithms artificial intelligence automated deduction control diagnosis intelligence knowledge logic programming semantics simulation

Authors and affiliations

  1. 1.Stanford UniversityUSA

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