Exploiting Data Locality to Improve Performance of Heterogeneous Server Clusters

11/29/2022
by   Zhisheng Zhao, et al.
0

We consider load balancing in large-scale heterogeneous server systems in the presence of data locality that imposes constraints on which tasks can be assigned to which servers. The constraints are naturally captured by a bipartite graph between the servers and the dispatchers handling assignments of various arrival flows. When a task arrives, the corresponding dispatcher assigns it to a server with the shortest queue among d≥ 2 randomly selected servers obeying the above constraints. Server processing speeds are heterogeneous and they depend on the server-type. For a broad class of bipartite graphs, we characterize the limit of the appropriately scaled occupancy process, both on the process-level and in steady state, as the system size becomes large. Using such a characterization, we show that data locality constraints can be used to significantly improve the performance of heterogeneous systems. This is in stark contrast to either heterogeneous servers in a full flexible system or data locality constraints in systems with homogeneous servers, both of which have been observed to degrade the system performance. Extensive numerical experiments corroborate the theoretical results.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset