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Learning-Based Approach to Estimation of Morphable Model Parameters

Author(s)
Kumar, Vinay; Poggio, Tomaso
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Abstract
We describe the key role played by partial evaluation in the Supercomputing Toolkit, a parallel computing system for scientific applications that effectively exploits the vast amount of parallelism exposed by partial evaluation. The Supercomputing Toolkit parallel processor and its associated partial evaluation-based compiler have been used extensively by scientists at MIT, and have made possible recent results in astrophysics showing that the motion of the planets in our solar system is chaotically unstable.
Date issued
2000-09-01
URI
http://hdl.handle.net/1721.1/7264
Other identifiers
AIM-1696
CBCL-191
Series/Report no.
AIM-1696CBCL-191

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  • AI Memos (1959 - 2004)
  • CBCL Memos (1993 - 2004)

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