Reinforcement Learning for Capacity Tuning of Multi-Core Servers Liat Ein-Dor*, Yossi Itach*, Aharon Bar-Hillel*, Amir Di-Nur+, and Ran Gilad-Bachrach*
*Intel Research Israel Labs and +Intel IT
Melody - Expert-Free System Analysis Sivan Sabato, Elad Yom-Tov, and Ohad Rodeh
IBM Haifa Research Labs
Online Learning with Constraints for Systems Branislav Kveton*, Jia Yuan Yu+, Georgios Theocharous*, and Shie Mannor+
*Intel Research and +McGill University
Reinforcement Learning for Utility-Based Grid Scheduling Julien Perez, Balazs Kegl, and Cecile Germain-Renaud
University of Paris-Sud
Learning to Dynamically Allocate Memory Nicolo Cesa-Bianchi* and Ofer Dekel+
*Universtia delgi Studi di Milano and +Microsoft Research
Software Unit Test Prioritization: A Statistical Approach Jason V. Davis and Emmet Witchel
University of Texas at Austin
Using Machine Learning to Discover Service and Host Dependencies in Networked Systems Paul Barham, Richard Black, Moises Goldszmidt, Rebecca Isaacs, John MacCormick, Richard Mortier, and Aleksandr Simma
Microsoft Research
Real-Time Anomaly Detection in Software Appliances F. Knorn, D.J. Leith, and R.N. Shorten
Hamilton Institute, Ireland
Policy Search Optimization for Spatial Path Planning Matthew E. Taylor, Katherine E. Coons, Behnam Robatmili, Doug Burger, and Kathryn S. McKinley
University of Texas at Austin
Dynamic Clustering of Interference Domains in Large Scale 802.11 Networks Reza Lotun, Kan, Cai, and Mike Feeley
University of British Columbia
Network Planning Using Reinforcement Learning Eric Vigeant, Shie Mannor, and Doina Precup
McGill University
Approaches to Anomaly Detection using Host Network-Traffic Traces John Mark Agosta, Jaideep Chardrashekar, Frederic Giroire, Carl Livadas, and Jing Xu
Intel Research
Approximate Decision Making in Large-Scale Distributed Systems Ling Huang*, Minos Garofalakis+, Anthony D. Joseph#, and Nina Taft*
*Intel Research, +Yahoo! Research, and #UC Berkeley
Tracking Malicious Regions of the IP Space Avrim Blum*, Subhabrata Sen+, Oliver Spatscheck+, Dawn Song*, and Shobha Venkataraman*
*Carnegie Mellon University and +AT&T Labs Research
Response-Time Modeling for Resource Allocation and Energy-Informed SLAs Peter Bodik, Charles Sutton, Armando Fox, David Patterson, and Michael Jordan
UC Berkeley
Discovering the Runtime Structure of Software with Probabilistic Generative Models Scott Richardson, Michael Otte, Michael c. Mozer, Amer Diwan, Dan Connors
University of Colorado
Learning Link Quality in Wireless Communication Networks Joseph E. Gonzalez, Andreas Krause, Katherine Chen, and Carlos Guestrin
Carnegie Mellon University