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Glift: Generic, efficient, random-access GPU data structures
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Authors:
Aaron E. Lefohn
University of California, Davis, Davis, CA
Shubhabrata Sengupta
University of California, Davis, Davis, CA
Joe Kniss
University of Utah, Salt Lake City, UT
Robert Strzodka
Stanford University, Stanford, CA
John D. Owens
University of California, Davis, Davis, CA
2006 Article
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ACM Transactions on Graphics (TOG)
TOG Homepage
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Volume 25 Issue 1, January 2006
Pages 60-99
ACM
New York, NY
, USA
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doi>
10.1145/1122501.1122505
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Tags:
adaptive
adaptive shadow maps
algorithms
concurrent programming structures
data structures
gpgpu
gpu
graphics data structures and data types
graphics hardware
graphics processors
languages
multiresolution
octree textures
parallel computation
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