Hadoop’s Adolescence An analysis of Hadoop usage in scientific workloads
نویسندگان
چکیده
We analyze Hadoop workloads from three di↵erent research clusters from a user-centric perspective. The goal is to better understand data scientists’ use of the system and how well the use of the system matches its design. Our analysis suggests that Hadoop usage is still in its adolescence. We see underuse of Hadoop features, extensions, and tools. We see significant diversity in resource usage and application styles, including some interactive and iterative workloads, motivating new tools in the ecosystem. We also observe significant opportunities for optimizations of these workloads. We find that job customization and configuration are used in a narrow scope, suggesting the future pursuit of automatic tuning systems. Overall, we present the first user-centered measurement study of Hadoop and find significant opportunities for improving its e cient use for data scientists.
منابع مشابه
Hadoop’s Adolescence: A Comparative Workload Analysis from Three Research Clusters
We analyze Hadoop workloads from three different research clusters from an application-level perspective, with two goals: (1) explore new issues in application patterns and user behavior and (2) understand key performance challenges related to IO and load balance. Our analysis suggests that Hadoop usage is still in its adolescence. We see underuse of Hadoop features, extensions, and tools as we...
متن کاملMochi: Visual Log-Analysis Based Tools for Debugging Hadoop
Mochi, a new visual, log-analysis based debugging tool correlates Hadoop’s behavior in space, time and volume, and extracts a causal, unified controland dataflow model of Hadoop across the nodes of a cluster. Mochi’s analysis produces visualizations of Hadoop’s behavior using which users can reason about and debug performance issues. We provide examples of Mochi’s value in revealing a Hadoop jo...
متن کاملHadoop's Adolescence
We analyze Hadoop workloads from three di↵erent research clusters from a user-centric perspective. The goal is to better understand data scientists’ use of the system and how well the use of the system matches its design. Our analysis suggests that Hadoop usage is still in its adolescence. We see underuse of Hadoop features, extensions, and tools. We see significant diversity in resource usage ...
متن کامل1Mochi: Visual Log-Analysis Based Tools for Debugging Hadoop
Mochi, a new visual, log-analysis based debugging tool correlates Hadoop’s behavior in space, time and volume, and extracts a causal, unified controland dataflow model of Hadoop across the nodes of a cluster. Mochi’s analysis produces visualizations of Hadoop’s behavior using which users can reason about and debug performance issues. We provide examples of Mochi’s value in revealing a Hadoop jo...
متن کاملMochi: Visual Log-Analysis Based Tools for Debugging Hadoop (CMU-PDL-09-103)
Mochi, a new visual, log-analysis based debugging tool correlates Hadoop’s behavior in space, time and volume, and extracts a causal, unified controland data-flow model of Hadoop across the nodes of a cluster. Mochi’s analysis produces visualizations of Hadoop’s behavior using which users can reason about and debug performance issues. We provide examples of Mochi’s value in revealing a Hadoop j...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013