Clearing the clouds

Author:

Ferdman Michael1,Adileh Almutaz2,Kocberber Onur2,Volos Stavros2,Alisafaee Mohammad2,Jevdjic Djordje2,Kaynak Cansu2,Popescu Adrian Daniel2,Ailamaki Anastasia2,Falsafi Babak2

Affiliation:

1. Carnegie Mellon University, Pittsburgh, PA, USA

2. École Polytechnique Fédérale de Lausanne, Lausanne, Switzerland

Abstract

Emerging scale-out workloads require extensive amounts of computational resources. However, data centers using modern server hardware face physical constraints in space and power, limiting further expansion and calling for improvements in the computational density per server and in the per-operation energy. Continuing to improve the computational resources of the cloud while staying within physical constraints mandates optimizing server efficiency to ensure that server hardware closely matches the needs of scale-out workloads. In this work, we introduce CloudSuite, a benchmark suite of emerging scale-out workloads. We use performance counters on modern servers to study scale-out workloads, finding that today's predominant processor micro-architecture is inefficient for running these workloads. We find that inefficiency comes from the mismatch between the workload needs and modern processors, particularly in the organization of instruction and data memory systems and the processor core micro-architecture. Moreover, while today's predominant micro-architecture is inefficient when executing scale-out workloads, we find that continuing the current trends will further exacerbate the inefficiency in the future. In this work, we identify the key micro-architectural needs of scale-out workloads, calling for a change in the trajectory of server processors that would lead to improved computational density and power efficiency in data centers.

Publisher

Association for Computing Machinery (ACM)

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