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Title: Scheduling Challenges for Variable Capacity Resources
Datacenter scheduling research often assumes resources as a constant quantity, but increasingly external factors shape capacity dynamically, and beyond the control of an operator. Based on emerging examples, we define a new, open research challenge: the variable capacity resource scheduling problem. The objective here is effective resource utilization despite sudden, perhaps large, changes in the available resources. We define the problem, key dimensions of resource capacity variation, and give specific examples that arise from the natural world (carboncontent, power price, datacenter cooling, and more). Key dimensions of the resource capacity variation include dynamic range, frequency, and structure. With these dimensions, an empirical trace can be characterized, abstracting it from the many possible important real-world generators of variation. Resource capacity variation can arise from many causes including weather, market prices, renewable energy, carbon emission targets, and internal dynamic power management constraints. We give examples of three different sources of variable capacity. Finally, we show variable resource capacity presents new scheduling challenges. We show how variation can cause significant performance degradation in existing schedulers, with up to 60% goodput reduction. Further, initial results also show intelligent scheduling techniques can be helpful. These insights show the promise and opportunity for future scheduling studies on resource volatility.  more » « less
Award ID(s):
1901466
NSF-PAR ID:
10253544
Author(s) / Creator(s):
;
Editor(s):
Cirne, Walfredo; Rodrigo, Gonzalo P.; Klusáček, Dalibor
Date Published:
Journal Name:
Workshop on Job Scheduling for Parallel Processing (JSSPP)
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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