RCMP: A System Enabling Efficient Re-computation Based Failure Resilience for Big Data Analytics
نویسندگان
چکیده
Multi-job I/O-intensive big-data computations can suffer a significant performance hit due to relying on data replication as the main failure resilience strategy. Data replication is inherently an expensive operation for I/O-intensive jobs because the datasets to be replicated are very large. Moreover, since the failure resilience guarantees provided by replication are fundamentally limited by the number of available replicas, jobs may fail when all replicas are lost. In this paper we argue that job re-computation should also be a first-order failure resilience strategy for big data analytics. Recomputation support is especially important for multi-job computations because they can require cascading re-computations to deal with the data loss caused by failures. We propose RCMP, a system that performs efficient job re-computation. RCMP improves on state-of-the-art big data processing systems which rely on data replication and consequently lack any dedicated support for recomputation. RCMP can speed-up a job’s re-computation by leveraging outputs that it stored during that job’s successful run. During re-computation, RCMP can efficiently utilize the available compute node parallelism by switching to a finer-grained task scheduling granularity. Furthermore, RCMP can mitigate hot-spots specific to re-computation runs. Our experiments on a moderate-sized cluster show that compared to using replication, RCMP can provide significant benefits during failure-free periods while still finishing multijob computations in comparable or better time when impacted by single and double data loss events.
منابع مشابه
The Need for Resilience Research in Workflows of Big Compute and Big Data Scientific Applications
Projections and reports about exascale failure modes conclude that we need to protect numerical simulations and data analytics from an increasing risk of hardware and software failures and silent data corruptions (SDC) [1, 4]. At this scale, hardware and software failures could be as frequent as ten or more per day. According to [9], the semiconductor industry will have increased difficulty pre...
متن کاملBig Data Analytics and Now-casting: A Comprehensive Model for Eventuality of Forecasting and Predictive Policies of Policy-making Institutions
The ability of now-casting and eventuality is the most crucial and vital achievement of big data analytics in the area of policy-making. To recognize the trends and to render a real image of the current condition and alarming immediate indicators, the significance and the specific positions of big data in policy-making are undeniable. Moreover, the requirement for policy-making institutions to ...
متن کاملA Fuzzy TOPSIS Approach for Big Data Analytics Platform Selection
Big data sizes are constantly increasing. Big data analytics is where advanced analytic techniques are applied on big data sets. Analytics based on large data samples reveals and leverages business change. The popularity of big data analytics platforms, which are often available as open-source, has not remained unnoticed by big companies. Google uses MapReduce for PageRank and inverted indexes....
متن کاملScalable Progressive Analytics on Big Data in the Cloud
Analytics over the increasing quantity of data stored in the Cloud has become very expensive, particularly due to the pay-as-you-go Cloud computation model. Data scientists typically manually extract samples of increasing data size (progressive samples) using domain-specific sampling strategies for exploratory querying. This provides them with user-control, repeatable semantics, and result prov...
متن کاملBuilding Efficient and Cost-Effective Cloud-based Big Data Management Systems
Title of dissertation: BUILDING EFFICIENT AND COST-EFFECTIVE CLOUD-BASED BIG DATA MANAGEMENT SYSTEMS Abdul Hussain Quamar, Doctor of Philosophy, 2015 Dissertation directed by: Professor Amol Deshpande Department of Computer Science In today’s big data world, data is being produced in massive volumes, at great velocity and from a variety of different sources such as mobile devices, sensors, a pl...
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