Dinesh Kumar, Asser Tantawi, et al.
MASCOTS 2009
MapReduce is a scalable parallel computing framework forbig data processing. It exhibits multiple processing phases,and thus an efficient job scheduling mechanism is crucial forensuring efficient resource utilization. This work studies thescheduling challenge that results from the overlapping of the"map" and "shuffle" phases in MapReduce. We propose anew, general model for this scheduling problem. Further,we prove that scheduling to minimize average response timein this model is strongly NP-hard in the offline case andthat no online algorithm can be constant-competitive in theonline case. However, we provide two online algorithms thatmatch the performance of the offline optimal when given aslightly faster service rate.
Dinesh Kumar, Asser Tantawi, et al.
MASCOTS 2009
Bernardetta Addis, Danilo Ardagna, et al.
CLOUD 2010
Jian Tan, Hanhua Feng, et al.
ITC 2012
James A. Broberg, Zhen Liu, et al.
SIGMETRICS 2006