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Allen Newell AI Magazine Volume 13 Number 3 (1992) (© AAAI) AAAI AAAI Officials Patrick Hayes, Stanford University President-elect Barbara Grosz, Harvard University Past President Daniel G Bobrow, Xerox Palo Alto Research Center Secretary-Treasurer Bruce Buchanan, University of Pittsburgh Councilon (through 1993) Mark Fox, University of Toronto Barbara Hayes-Roth, Stanford University Thomas Dietterich, Oregon State University Richard Fikes, Stanford University Councilon (through 1994) Jaime Carbonell, Carnegie Mellon University Paul Cohen, University of Massachusetts Elaine Kant, Schlumberger Candy Sidner, Digital Equipment Corporation Councilon (through 1995) Johan de Kleer, Xerox PARC Benjamin Kuipers, University of Texas at Austin Paul Rosenbloom, USC-IS1 Beverly Woolf, University of Massachusetts Standing Committees ConferenceChair: William Swartout, USC-IS1 Finance Chair. Bruce Buchanan, Univ of Pittsburgh Publications Chair: Mark Fox, University of Toronto Scholarship Chair: Katia Sycara, Carnegie Mellon University Symposium Chair: Peter Pat&Schneider, AT&T Bell Laboratories Symposium Cochair; James Hendler, Univ of Maryland Symposium Associate Chair Paul Cohen, Univ of Mass Workshop Granh Chair Candy Sidner, Digital Workshop Grants Cochair: Beverly Woolf, University of Massachusetts AI in Medicine Subgroup Liaison: Serdar Uckun, IN MEMORIAM Stanford University AI in Manufacturing Subgroup Liaison: Karl Kempf, Intel AI and the Law Subgroup Liaison: Edwina P&land, University of Massachusetts Allen Newell AI and Business Subgroup Liaison: Dan O’Leary, University of Southern California 1927-1992 The AAAI Press Editor-in,Chief Ken Ford, University of West Florida General Manager David Mike Hamilton, The Live Oak Press Allen Newell, one of the founders of the MIT Press Coliaisons Robert Prior, Teresa Ehling fields of artificial intelligence and cognitive Management Board William Clancey, Institute for Research on Learning Ken Ford, University of West Florida science, died on July 19, 1992 in Pittsburgh, David Mike Hamilton, The Live Oak Press Robert Prior, Teresa Ehling, The MIT Press Pennsylvania. He was among the founders Reid Smith, Schlumberger Editorial Board Ken Forbus, Northwestern University of AAAI and served as the association’s first Tom Dietterich, Oregon State University Scott Fahlman, Carnegie Mellon University president. Jean-Claude Latombe, Stanford University John McDermott, Digital Equipment Corporation Judea Pearl, University of California, Los Angeles Reid Smith, Schlumberger Yoav Shoham, Stanford University The winter issue of AI Magazine will be Howard Shrobe, Symbolics J Martin Tenenbaum, EITech dedicated to Allen Newell in tribute to his Bonnie Webber, University of Pennsylvania extraordinary contributions to the artificial The AAAI Staff Executive Director: Carol McKenna Hamilton Accountant: Julia G Bowen inte mlligence community and to the world. ,Membership and Systems Coordinator: Richard A Skalsky Conference Coordinator: Annette Eldredge ConferenceKmde Show Coordinator: May Livingston Administrative: Hasina Aziz, Daphene Black, Sally McLaughlin, Arthur Okorie, and Goodwin Okorie AAAI Corporate Sponsors Digital Equipment Corporation General Motors Research Laboratory 6 AI MAGAZINE .
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