Title
Flow-Aware Workload Migration in Data Centers.
Abstract
In data centers, subject to workloads with heterogeneous (and sometimes short) lifetimes, workload migration is a way of attaining a more efficient utilization of the underlying physical machines. To not introduce performance degradation, such workload migration must take into account not only machine resources, and per-task resource requirements, but also application dependencies in terms of network communication. This paper presents a workload migration model capturing all of these constraints. A linear programming framework is developed allowing accurate representation of per-task resources requirements and inter-task network demands. Using this, a multi-objective problem is formulated to compute a re-allocation of tasks that (1) maximizes the total inter-task throughput, while (2) minimizing the cost incurred by migration and (3) allocating the maximum number of new tasks. A baseline algorithm, solving this multi-objective problem using the \(\varepsilon\)-constraint method is proposed, in order to generate the set of Pareto-optimal solutions. As this algorithm is compute-intensive for large topologies, a heuristic, which computes an approximation of the Pareto front, is then developed, and evaluated on different topologies and with different machine load factors. These evaluations show that the heuristic can provide close-to-optimal solutions, while reducing the solving time by one to two order of magnitudes.
Year
DOI
Venue
2018
10.1007/s10922-018-9452-5
J. Network Syst. Manage.
Keywords
Field
DocType
Data center networking,VM migration,Application-aware allocation,MILP,Multi-objective optimization,Pareto optimality
Heuristic,Network communication,Workload,Computer science,Flow (psychology),Multi-objective optimization,Network topology,Linear programming,Throughput,Distributed computing
Journal
Volume
Issue
ISSN
26
4
1064-7570
Citations 
PageRank 
References 
0
0.34
22
Authors
3
Name
Order
Citations
PageRank
Yoann Desmouceaux1101.97
Sonia Toubaline2607.54
Thomas Clausen32068141.73