Works Published in 2008

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Displaying all 12 works

Sorted by most recent date added to the index first, which may not be the same as publication date order.

2008 report

Cross-Input Learning and Discriminative Prediction in Evolvable Virtual Machines

(No. WM-CS-2008-06). Williamsburg, VA: Computer Science Department, The College of William and Mary.

By: F. Mao & X. Shen

Source: NC State University Libraries
Added: February 20, 2021

2008 report

A Cross-Input Adaptive Framework for GPU Program Optimization

(No. WM-CS-2008-09). Williamsburg, VA: Computer Science Department, The College of William and Mary.

By: Y. Liu, E. Zhang & X. Shen

Source: NC State University Libraries
Added: February 20, 2021

2008 report

LU Decomposition on Cell Broadband Engine

(Technical Report No. WM-CS-2008-08). Computer Science Department, The College of William and Mary.

By: F. Mao & X. Shen

Source: NC State University Libraries
Added: January 30, 2021

2008 conference paper

Adaptive Software Speculation for Enhancing the Cost-Efficiency of Behavior-Oriented Parallelization

2008 37th International Conference on Parallel Processing. Presented at the 2008 37th International Conference on Parallel Processing (ICPP).

By: Y. Jiang* & X. Shen*

Event: 2008 37th International Conference on Parallel Processing (ICPP)

Sources: Crossref, NC State University Libraries
Added: January 5, 2021

2008 conference paper

Analysis and approximation of optimal co-scheduling on chip multiprocessors

Proceedings of the 17th international conference on Parallel architectures and compilation techniques - PACT '08. Presented at the the 17th international conference.

By: Y. Jiang*, X. Shen*, J. Chen* & R. Tripathi*

Event: the 17th international conference

author keywords: co-scheduling; CMP scheduling; cache contention; perfect matching
TL;DR: This paper presents a theoretical analysis of the complexity of co-scheduling, proving its NP-completeness and designs and evaluates a sequence of approximation algorithms, among which, the hierarchical matching algorithm produces near-optimal schedules and shows good scalability. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries
Added: January 5, 2021

2008 chapter

Scalable Implementation of Efficient Locality Approximation

In Languages and Compilers for Parallel Computing (pp. 202–216).

By: X. Shen* & J. Shaw

TL;DR: An algorithm that approximates reuse distance on arbitrary scales is described; a portable scheme that employs memory controller to accelerate the measure of time distance is explained; and the algorithm and proof of a trace generator that can facilitate various locality studies are uncovered. (via Semantic Scholar)
Sources: Crossref, ORCID
Added: September 10, 2020

2008 chapter

Exploration of the Influence of Program Inputs on CMP Co-scheduling

In Lecture Notes in Computer Science (pp. 263–273).

By: Y. Jiang* & X. Shen*

TL;DR: It is shown that the ability to adapt to program inputs is important for a co-scheduler to work effectively on Chip Multiprocessors and the potential of the predictive models in guiding contention-aware co- scheduling is demonstrated. (via Semantic Scholar)
UN Sustainable Development Goal Categories
8. Decent Work and Economic Growth (OpenAlex)
Sources: Crossref, ORCID
Added: September 6, 2020

2008 journal article

Cycles in dense digraphs

Combinatorica, 28(1), 1–18.

TL;DR: It is proved that in general β(G) ≤ γ(G), and that in two special cases: when V (G) is the union of two cliques when the vertices of G can be arranged in a circle such that if distinct u, v, w are in clockwise order and uw is a (directed) edge, then so are both uv, vw. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries, ORCID
Added: February 5, 2020

2008 article

Adaptive speculation in behavior-oriented parallelization

Jiang, Y., & Shen, X. (2008, April). 2008 IEEE International Symposium on Parallel and Distributed Processing.

By: Y. Jiang* & X. Shen*

TL;DR: Adaptive speculation is proposed to predict the profitability of a speculation and dynamically enable or disable the speculation of a region and enhance the usability of behavior-oriented parallelization by allowing users to label potential parallel regions more flexibly. (via Semantic Scholar)
Source: ORCID
Added: December 31, 2019

2008 article

Bayesian reliability

By: M. Hamada*, A. Wilson*, C. Reese* & H. Martz*

Source: ORCID
Added: December 27, 2019

2008 journal article

Scientists urge DHS to improve bioterrorism risk assessment

Biosecurity and Bioterrorism, 6(4), 353–356.

By: G. Parnell*, L. Borio*, G. Brown*, D. Banks* & A. Wilson*

Contributors: G. Parnell*, L. Borio*, G. Brown*, D. Banks* & A. Wilson*

MeSH headings : Behavior; Bioterrorism; Government Agencies; Models, Theoretical; Risk Assessment / methods; Risk Assessment / standards; Risk Management; United States
TL;DR: The National Research Council established the Committee on Methodological Improvements to the Department of Homeland Security's Biological Agent Risk Analysis to provide an independent, scientific peer review of the BTRA, and concluded that an improved BTRA is needed to provide a more credible foundation for risk-informed decision making. (via Semantic Scholar)
UN Sustainable Development Goal Categories
16. Peace, Justice and Strong Institutions (OpenAlex)
Source: ORCID
Added: December 7, 2019

2008 journal article

Reliability modeling using both system test and quality assurance data

Military Operations Research, 13(3), 5–18. http://www.scopus.com/inward/record.url?eid=2-s2.0-57849156786&partnerID=MN8TOARS

By: C. Anderson-Cool, T. Graves, N. Hengartner, R. Klamann, A. Wiedlea, A. Wilson, G. Anderson, G. Lopez

Contributors: C. Anderson-Cool, T. Graves, N. Hengartner, R. Klamann, A. Wiedlea, A. Wilson, G. Anderson, G. Lopez

Source: ORCID
Added: December 7, 2019

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