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ICN 2005
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Performance Improvement of Hardware-Based Packet Classification Algorithm
14 years 4 months ago
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www.csie.nctu.edu.tw
Yaw-Chung Chen, Pi-Chung Wang, Chun-Liang Lee, Chi
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Added
27 Jun 2010
Updated
27 Jun 2010
Type
Conference
Year
2005
Where
ICN
Authors
Yaw-Chung Chen, Pi-Chung Wang, Chun-Liang Lee, Chia-Tai Chan
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Researcher Info
Computer Networks Study Group
Computer Vision