Andromeda: Performance, Isolation, and Velocity at Scale in Cloud Network Virtualization
Michael Dalton(Google (United States)), Amin Vahdat(Google (United States)), Riccardo Crepaldi(Google (United States)), Uday Naik(Google (United States)), Yossi Richter(Google (United States)), Enrique Cauich Zermeno(Google (United States)), Nikhil Kasinadhuni(Google (United States)), Subbaiah Venkata(Google (United States)), Ahsan Arefin(Google (United States)), Erik Rubow(Google (United States)), Kevin DeCabooter(Google (United States)), James Alexander Docauer(Google (United States)), Srinivas Krishnan(Google (United States)), David Schultz(Google (United States)), Nathan E. Lewis(University of Georgia), Marc de Kruijf(Google (United States)), Brian Fahs(Google (United States)), Anshuman Gupta(Google (United States)), Nan Hua(Google (United States)), Jon Olson(Google (United States)), Jacob Adriaens(Google (United States)), Jesse Alpert(Google (United States)), Jing Ai(University of California, Los Angeles), Dima Rubinstein(Google (United States))
Networked Systems Design and Implementation
April 9, 2018
Cited by 60
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