Toward a Principled Framework for Benchmarking Consistency
Large-scale key-value storage systems sacrifice consistency in the interest of dependability (i.e., partition tolerance and availability), as well as performance (i.e., latency). Such systems provide eventual consistency,which---to this point---has been difficult to quantify in real systems. Given t...
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Zusammenfassung: | Large-scale key-value storage systems sacrifice consistency in the interest
of dependability (i.e., partition tolerance and availability), as well as
performance (i.e., latency). Such systems provide eventual
consistency,which---to this point---has been difficult to quantify in real
systems. Given the many implementations and deployments of
eventually-consistent systems (e.g., NoSQL systems), attempts have been made to
measure this consistency empirically, but they suffer from important drawbacks.
For example, state-of-the art consistency benchmarks exercise the system only
in restricted ways and disrupt the workload, which limits their accuracy.
In this paper, we take the position that a consistency benchmark should paint
a comprehensive picture of the relationship between the storage system under
consideration, the workload, the pattern of failures, and the consistency
observed by clients. To illustrate our point, we first survey prior efforts to
quantify eventual consistency. We then present a benchmarking technique that
overcomes the shortcomings of existing techniques to measure the consistency
observed by clients as they execute the workload under consideration. This
method is versatile and minimally disruptive to the system under test. As a
proof of concept, we demonstrate this tool on Cassandra. |
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DOI: | 10.48550/arxiv.1211.4290 |