Cache utilization for enhancing analyzation of Big-Data & increasing the performance of Hadoop

Sanjeev G Kanbargi, S. S
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引用次数: 4

Abstract

Our world generating a lot of different kinds of data. These data can be analyzed and processed for valuable information. The traditional systems like data base, which has been used to store and process, are failing to handle these huge data which ranges in tera and peta bytes and also known as Big-data. We have many tools which can be used to analyze Big-Data. The apache's hadoop is one of the most used Big-data analyzing frameworks, Hadoop uses large number of libraries to handle and manage Big-data processes. It also handles different kinds of failures which may occur in the system. It uses map-reduce programing paradigm to analyze, distributed processing and storage of Big-Data. Big-data will be divided in different blocks and distributed within the network. The mapper functions runs in parallel on each block of Big-data and parse it to filter out the required data, which can be used for further processing. The reducer function accepts the data from mapper functions and processes it for required or expected results. It has been observed that, the intermediate data generated by mapper while processing on same Big-Data is always same. Hence, system doing redundant operations and generates same results, which is not an efficient use of resources and it delays the performance speed of the system. The proposed system creates a novel cache, which stores the intermediate data or mapper's output into a novel cache. Whenever the system needs to analyze same Big-data set, It fetches already processed data from novel cache rather than running mapper function on whole Big-data set again.
缓存利用率,用于增强大数据分析和提高Hadoop的性能
我们的世界产生了很多不同种类的数据。可以对这些数据进行分析和处理,以获得有价值的信息。传统的存储和处理系统,如数据库,无法处理这些巨大的数据,这些数据的规模在tera和peta字节之间,也被称为大数据。我们有很多工具可以用来分析大数据。apache的hadoop是最常用的大数据分析框架之一,hadoop使用大量的库来处理和管理大数据过程。它还处理系统中可能发生的各种故障。它采用map-reduce编程范式对大数据进行分析、分布式处理和存储。大数据将被划分成不同的区块,并分布在网络中。mapper函数在每个大数据块上并行运行,并对其进行解析以过滤出所需的数据,这些数据可用于进一步处理。reducer函数接受来自mapper函数的数据,并对其进行处理以获得所需的或预期的结果。研究发现,mapper在处理同一大数据时生成的中间数据总是相同的。因此,系统会进行冗余的操作,产生相同的结果,这不是对资源的有效利用,而且会延迟系统的性能速度。该系统创建了一个新的缓存,将中间数据或映射器的输出存储到一个新的缓存中。当系统需要分析同一个大数据集时,它从新的缓存中提取已经处理过的数据,而不是在整个大数据集上再次运行mapper函数。
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