Title of article :
Generating request streams on Big Data using clustered renewal processes
Author/Authors :
Abad، نويسنده , , Cristina L. and Yuan، نويسنده , , Mindi and Cai، نويسنده , , Chris X. and Lu، نويسنده , , Yi and Roberts، نويسنده , , Nathan and Campbell، نويسنده , , Roy H.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
16
From page :
704
To page :
719
Abstract :
The performance evaluation of large file systems, such as storage and media streaming, motivates scalable generation of representative traces. We focus on two key characteristics of traces, popularity and temporal locality. The common practice of using a system-wide distribution obscures per-object behavior, which is important for system evaluation. We propose a model based on delayed renewal processes which, by sampling interarrival times for each object, accurately reproduces popularity and temporal locality for the trace. A lightweight version reduces the dimension of the model with statistical clustering. It is workload-agnostic and object type-aware, suitable for testing emerging workloads and ‘what-if’ scenarios. We implemented a synthetic trace generator and validated it using: (1) a Big Data storage (HDFS) workload from Yahoo!, (2) a trace from a feature animation company, and (3) a streaming media workload. Two case studies in caching and replicated distributed storage systems show that our traces produce application-level results similar to the real workload. The trace generator is fast and readily scales to a system of 4.3 million files. It outperforms existing models in terms of accurately reproducing the characteristics of the real trace.
Keywords :
big data , Workload generation , HDFS , popularity , Temporal locality , Storage
Journal title :
Performance Evaluation
Serial Year :
2013
Journal title :
Performance Evaluation
Record number :
1733339
Link To Document :
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