首页> 外文会议>International Conference on Recent Trends and Challenges in Computational Models >A New Method for Acquiring Relevant Data Partitioning by Optimization Techniques
【24h】

A New Method for Acquiring Relevant Data Partitioning by Optimization Techniques

机译:一种通过优化技术获取相关数据划分的新方法

获取原文

摘要

Over the past several decades there is an exceptionally large improvement in the computer technology which leads to an uncountable number of data and information emerging in and all over the world. Due to this tremendous and huge dump of data as well as web data most popular search engines are experiencing a lot of irrelevant retrieval of data. The major aspire of this proposed Improved Weis to identify an accurate data search and also to generate data that comes from anywhere. Furthermore, the data itself may be too large to store on a single machine such that the computers are inter connected with each other by the massive internet storage technologies. This approach mainly focuses on design of search engines and its infrastructure grave. Improved Micro partitioning is a modularized approach of cloud computing mainly framed to overcome the pitfalls in the traditional search engine and also in manipulation of large information stored in a single computer. The Map Reduce Task Scheduling algorithm which has been used in the cloud helps in overcoming the challenges of conventional methodologies. The map reduce protocol model is a simple model that makes the data to save in different locations by partitioning the data technique. Additionally in order to avoid the uneven distribution of data the data sampling technique is used. Henceforth, the Search engine in cloud produces low-latency and the data materialization will increase the efficiency in its optimized search and thus outperforms the traditional approaches.
机译:在过去的几十年里,计算机技术存在特别大的改进,这导致了一个不可数的数据和世界各地的数据和信息。由于这种巨大而巨大的数据转储以及Web数据,大多数流行的搜索引擎都遇到了很多无关的数据检索。这提出的主要追求提出了改进的WEIS,以确定准确的数据搜索,也可以生成来自任何地方的数据。此外,数据本身可能太大,不能存储在单个机器上,使得计算机通过大规模的因特网存储技术彼此连接。这种方法主要侧重于搜索引擎的设计及其基础设施坟墓。改进的微分区是云计算的模块化方法,主要是框架,以克服传统搜索引擎中的陷阱,也可以操纵存储在单个计算机中的大型信息。 MAP减少云中使用的任务调度算法有助于克服传统方法的挑战。地图减少协议模型是一个简单的模型,它通过分区数据技术来使数据保存在不同的位置。另外,为了避免数据的不均匀分布,使用数据采样技术。此后,云中的搜索引擎产生低延迟,数据实现将提高其优化搜索中的效率,从而越优于传统方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号