97成人免费视频,97视频免费公开成人福利,免费视频99,99婷婷,国产伊人久久,亚洲视频欧美,国产精品福利久久

 首頁 > 新聞 > 國內(nèi) >

《華為數(shù)據(jù)中心3.0架構(gòu)白皮書(英文)》

2014-07-24 15:25:28   作者:   來源:CTI論壇   評論:0  點擊:


  High Throughput Computing Data Center Architecture

  Abstract

  In the last few decades, data center(DC)technologies have kept evolving from DC 1.0(tightly-coupled silos)to DC 2.0(computer virtualization)to enhance data processing capability. Emerging      big data analysis based business raises highly-diversified and time-varied demand for DCs.  Due to  the limitations on throughput, resource utilization, manageability and energy efficiency, current DC 2.0 shows its incompetence to provide higher throughput and seamless integration of heterogeneous  resources for different big data applications. By rethinking the demand for big data applications,  Huawei proposes a high throughput computing data center architecture(HTC-DC)。Based on resource disaggregation and interface-unified interconnects, HTC-DC is enabled with PB-level data processing capability, intelligent manageability, high scalability and high energy efficiency. With   competitive features, HTC-DC can be a promising candidate for DC3.0.

  Contents

  • Era of Big Data: New Data Center Architecture in Need

  1、Needs on Big Data Processing

  2、DC Evolution: Limitations and Strategies

  3、Huawei’s Vision on Future DC

  • DC3.0: Huawei HTC-DC

  1、HTC-DC Overview

  2、Key Features

  • Summary

  ERA OF BIG DATA: NEW DATA CENTER ARCHITECTURE IN NEED

  Needs on Big Data Processing

  During the past few years, applications which are based on big data analysis have emerged, enriching human life with more real-time and intelligent interactions. Such applications have proven themselves to become the next wave of mainstream of online services. As the era of big data approaches, higher and higher demand on data processing capability has been raised. Being the major   facilities to support highly varied big data processing tasks, future data centers(DCs)are  expected to meet the following big data requirements(Figure 1):

  • PB/s-level data processing capability ensuring aggregated high-throughput computing, storage and networking;
  • Adaptability to highly-varied run-time resource demands;
  • Continuous availability providing 24x7 large-scaled service coverage, and supporting high-concurrency access;
  • Rapid deployment allowing quick deployment and resource configuration for emerging applications.

  DC Evolution: Limitations and Strategies

  DC technologies in the last decade have been evolved(Figure 2)from DC 1.0(with tightly-coupled silos)to current DC 2.0(with computer virtualization)。 Although data processing capability of DCs have been significantly enhanced, due to the limitations on throughput, resource utilization, manageability and energy efficiency, current DC 2.0 shows its incompetence to meet the demands of the future:


Figure 2.DC Evolution

  - Throughput : Compared with technological improvement in computational capability of processors, improvement in I/O access performance has long been lagged behind. With the fact that computing within conventional DC architecture largely involves data movement between storage and CPU/memory via I/O ports,  it is challenging for current DC architecture to provide PB-level high throughput for big data applications. The problem of I/O gap is resulted from low-speed characteristics of conventional transmission and storage mediums, and also from inefficient architecture design and data access mechanisms.

  To meet the requirement of future high throughput data processing capability, adopting new  transmission technology(e.g. optical interconnects)and new storage medium can be feasible solutions. But a more fundamental approach is to re-design DC architecture as well as data access mechanisms for computing. If data access in computing process can avoid using conventional I/O mechanism, but use ultra-high-bandwidth network to serve as the new I/O functionality, DC throughput can be significantly improved.

分享到: 收藏

專題

稷山县| 平舆县| 桃园市| 镇平县| 克拉玛依市| 西畴县| 临邑县| 电白县| 石棉县| 农安县| 大悟县| 新和县| 广德县| 渝中区| 宕昌县| 兴和县| 清苑县| 呼和浩特市| 信阳市| 尼木县| 台前县| 玉环县| 南安市| 望都县| 于田县| 报价| 黄浦区| 天台县| 安丘市| 新泰市| 双柏县| 东至县| 兰考县| 台中市| 怀远县| 抚顺市| 东山县| 永宁县| 蕲春县| 大同县| 莒南县|