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Jan-Jan Wu

Researcher at Academia Sinica

Publications -  154
Citations -  1781

Jan-Jan Wu is an academic researcher from Academia Sinica. The author has contributed to research in topics: Scheduling (computing) & SIMD. The author has an hindex of 21, co-authored 148 publications receiving 1660 citations. Previous affiliations of Jan-Jan Wu include Center for Information Technology & Yale University.

Papers
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Proceedings ArticleDOI

Energy-Aware Virtual Machine Dynamic Provision and Scheduling for Cloud Computing

TL;DR: This paper compares the Dynamic Round-Robin algorithm with the GREEDY, ROUNDROBIN and POWERSAVE scheduling strategies implemented in the Eucalyptus Cloud system and shows that the algorithm reduce a significant amount of power consumption.
Proceedings ArticleDOI

HQEMU: a multi-threaded and retargetable dynamic binary translator on multicores

TL;DR: This work takes advantage of the ubiquitous multicore platforms, using multithreaded approach to implement DBT, and demonstrates in a multi-threaded DBT prototype, called HQEMU, that it could improve QEMU performance by a factor of 2.4X on the SPEC 2006 integer and floating point benchmarks.
Journal ArticleDOI

Distributed memory compiler design for sparse problems

TL;DR: A run time support mechanism is proposed that is used effectively by a compiler to generate efficient code in these situations of compiling concurrent loop nests in the presence of complicated array references and irregularly distributed arrays.
Proceedings ArticleDOI

Energy-efficient Virtual Machine Provision Algorithms for Cloud Systems

TL;DR: Two new algorithms are proposed, Dynamic Round-Robin (DRR) and Hybrid, which combines DRR and First-Fit, for energy aware virtual machine scheduling and consolidation and result in 3% less power consumption on average, compared with the POWERSAVE scheduling strategy in Eucalyptus.

Optimal Placement of Replicas in Data Grid Environments with Locality Assurance

TL;DR: This paper proposes a new placement algorithm that finds the optimal locations for the replicas so that the workload among these replicas is balanced and ensures that locality requirements from the users are satisfied.