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Towards a Layered Architecture for Object-Based Execution in Wide-Area Deeply Embedded Computing.

, , , , , , , , , , and . ISORC, page 133-140. IEEE Computer Society, (2007)

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Dustminer: troubleshooting interactive complexity bugs in sensor networks., , , , and . SenSys, page 99-112. ACM, (2008)Joint Optimization of Computing and Cooling Energy: Analytic Model and a Machine Room Case Study., , , , and . ICDCS, page 396-405. IEEE Computer Society, (2012)Towards a Layered Architecture for Object-Based Execution in Wide-Area Deeply Embedded Computing., , , , , , , , , and 1 other author(s). ISORC, page 133-140. IEEE Computer Society, (2007)Distilling likely truth from noisy streaming data with Apollo., , , , , , and . SenSys, page 417-418. ACM, (2011)AdaptSens: An Adaptive Data Collection and Storage Service for Solar-Powered Sensor Networks., , , , , , and . RTSS, page 303-312. IEEE Computer Society, (2009)Data Mining for Diagnostic Debugging in Sensor Networks: Preliminary Evidence and Lessons Learned., , , , and . KDD Workshop on Knowledge Discovery from Sensor Data, volume 5840 of Lecture Notes in Computer Science, page 1-24. Springer, (2008)Diagnostic powertracing for sensor node failure analysis., , , , , , , , , and 1 other author(s). IPSN, page 117-128. ACM, (2010)Minimum Variance Energy Allocation for a Solar-Powered Sensor System., , , , and . DCOSS, volume 5516 of Lecture Notes in Computer Science, page 44-57. Springer, (2009)On truth discovery in social sensing: a maximum likelihood estimation approach., , , and . IPSN, page 233-244. IEEE Computer Society / ACM, (2012)Troubleshooting interactive complexity bugs in wireless sensor networks using data mining techniques., , , , and . ACM Trans. Sens. Networks, 10 (2): 31:1-31:35 (2014)