Verified Tensor-Program Optimization Via High-Level ...
As the existing tactic language is Turing-complete, we have a powerful framework for coding derivation building blocks at many levels of abstraction and automation. With our tooling, any programmer may add a new rewrite rule or automation procedure, with no danger of ... and the machine-checkable proof of
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Introduction To Machine Learning - people.csail.mit.edu
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A secure processor architecture for encrypted computation ...
people.csail.mit.eduAscend is marginally more complex than a conventional proces- sor, in the sense that Ascend must implement an ISA and also make sure that the work it does is sufficiently obfuscated.
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JIGSAW - Massachusetts Institute of Technology
people.csail.mit.eduJigsaw is the only scheme to simultaneously benefit network and DRAM latency Optimum . Evaluation: Energy 60 ! 16-core multiprogrammed mixes ! McPAT models of full-system energy (chip + DRAM) ! Jigsaw achieves best energy reduction ! Up to 72%, gmean of 11% ! …
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