大数据分析存储解决方案toBD39

上传人:xins****2008 文档编号:56900850 上传时间:2022-02-22 格式:PPTX 页数:39 大小:6.71MB
收藏 版权申诉 举报 下载
大数据分析存储解决方案toBD39_第1页
第1页 / 共39页
大数据分析存储解决方案toBD39_第2页
第2页 / 共39页
大数据分析存储解决方案toBD39_第3页
第3页 / 共39页
资源描述:

《大数据分析存储解决方案toBD39》由会员分享,可在线阅读,更多相关《大数据分析存储解决方案toBD39(39页珍藏版)》请在装配图网上搜索。

1、Page 1从企业数据向大数据的扩展Traditional ApproachStructured, analytical, logicalSystems of RecordNew ApproachCreative, holistic thought, intuitionSystems Of EngagementMultimediaSystems of Insight Enterprise Integrationand Context AccumulationStructuredRepeatableLinearUnstructuredExploratoryDynamicData Warehous

2、eWeb LogsSocial DataText Data:emailsSensor data:imagesRFIDInternal App DataTransaction DataMainframe DataOLTP System DataHadoop andStreamsTraditional SourcesNew SourcesERP data具备洞悉能力的系统Systems of InsightPage 2在可靠和安全可靠和安全的环境中处理关键业务应用存取和处理存取和处理海量数据包括结构化和非结构化数据速度及时响应随时可能出现的商业机会,这就需要灵活、实时性的基础架构The dynam

3、ics of SoR and SoE: 通过负载及资源部署的优化,来增强灵活性和效益 通过采用包括基于开放标准的技术等新技术来改善IT economicsSystem of Record ( (SoR) )Systems of Engagement( (SoE) )对对的决策的决策对对的地方的地方对对的的时间时间点点Big Data& AnalyticsPage 3IBM Big Data & Analytics InfrastructureData Zone Application Zone Page 44Smart MeteringGrid Operations电网管理电网管理Field

4、Service外勤现场服务外勤现场服务Resource Planning资源规划资源规划Customer Service / Customer Operations实现真正的有效的法规遵从及时发现能源损耗问题、以及偷电和欺诈行为提高客户满意度电量使用预测更为精确电网运维优化减少停电次数和时间法法规规遵从遵从Page 5数据分析的高可用性,以确保随时了解用户喜好跨应用的TB级的数据需求 通用虚拟化存储平台实时收集、存储并分析数据,最快可达 50,000 data points/sec历史用电状态数据的复杂查询处理数据在加载到数据仓库前的清洗、验证,这些数据可能来自很多的用户、收费系统或断电保护系

5、统关系掌控构建和维护电网的唯一试图对整个企业的结构化和非结构化数据t做全局导览Navigation,从中发现Discover价值分析用户用电情况,侦测偷电、改表等行为预测哪些用户适合于哪些分时时段电价或需求/响应服务分时时段电价的实时定价 或 提供及时的需求/响应服务Page 6IBM Big Data & Analytics Reference ArchitectureBig Data Platform CapabilitiesInformation IngestReal-time AnalyticsWarehouse & Data MartsAnalytic AppliancesAll D

6、ata SourcesAdvanced Analytics/New InsightsNew/Enhanced ApplicationsCognitive认知认知Learn Dynamically?Prescriptive 规范规范Best Outcomes?Predictive预测预测What Could Happen?Descriptive描述描述What Has Happened?Exploration and DiscoveryWhat Do You Have?Streaming DataText DataApplications DataTime SeriesGeo SpatialRe

7、lationalSocial NetworkVideo & ImageAutomated ProcessCase ManagementAnalytic ApplicationsWatsonCloud ServicesISV SolutionsAlertsPage 7New Infrastructure Leverages Data TypesData inMotionData atRestData inMany FormsInformation Ingestion and Operational Information Decision ManagementBI and Predictive

8、AnalyticsNavigation and DiscoveryIntelligenceAnalysis Raw Data Structured Data Text Analytics Data Mining Entity Analytics Machine LearningLanding Area, Analytics Zone and ArchiveVideo/AudioNetwork/SensorEntity AnalyticsPredictiveReal-time AnalyticsExploration,Integrated Warehouse, and Mart ZonesDis

9、coveryDeep ReflectionOperationalPredictive Stream Processing Data Integration Master Data StreamsInformation Governance, Security and Business Continuity BigInsightsStreamsWarehouse Copyright IBM Corporation 2014Page 9InfoSphere BigInsights Hadoop-based 低延迟分析,针对多样化的、海量静态数据Data-At-RestNetezza High Ca

10、pacity Appliance基于结构化数据的可查询归档Netezza 1000基于结构化数据的BI+定制化分析 DataSmart Analytics System基于结构化数据的运营分析Informix TimeseriesTime-structured analyticsInfoSphere Warehouse基于结构化数据的大容量数据分析InfoSphere Streams低延迟流数据分析Velocity, Variety & VolumeData-In-MotionMPP Data WarehouseStream ComputingInformation IntegrationHa

11、doopInfoSphere Information Server海量数据集成和转化Apache Hadoop:跨服务器集群的大数据集分布式处理开放系统框架,采用的是一种简单化编程模型IBM Big Data Platform大数据平台大数据平台Page 10 What: 一种开源软件,将数据计算分布到整个集群的常见商用服务器和存储上 Why: 传统的计算架构是一种沿纵向扩展模式,通过更快的SAN、大容量内存和多级缓存将数据加载到CPU上,成本比较高。 What: Hadoop 把大数据集合拆分区划为小数据集合,再把小数据集合分发到多台普通服务器上,是一种横向扩展模式。 Why: Scalab

12、le, Flexible, Cost Effective, Fault Tolerent Components: Map Reduce, HDFSWhat is Hadoop?Page 11NameNode (Metadata store)NodesHDFS ClusterOperating SystemNodesElastic Storage -SNC ClusterKernel LevelIBM Value for Hadoop!HDFS 把数据分散存储在多个存储节点Node上HDFS 设计时就假设存储节点有失效的可能,所以HDFS会把一份数据复制3份以上,分散存储在多个节点上,从而实现系

13、统整体上的可靠性HDFS文件系统是由服务器节点集群组成的,每台服务器依照HDFS的特有block协议支持网络化block 数据HDFS Name Node 有发生单点故障的危险IBM 在改善文件系统的性能同时消除了单点故障 Elastic Storage -SNC (available as beta code)Hadoop 说明说明, Map Reduce, HDFSPage 12What does it look like?Page 13典型典型Hadoop存储的存储的Pain Points在选择HDFS的组件(如软件、服务器、网络和存储等)时很难选对对在从测试环境迁移到生产环境时,需要做

14、的调优和调整工作太繁复了长期持续不断的运维保障过于繁重,比如老要更换失效组件(尤其是硬盘),这使得保证期望的SLA非常难CPU 和存储去耦o本来用户的CPU和内存已经满足计算需求,但为了存储容量需要安装更多的硬盘不得不买更多的、不必要的CPU和内存Storage options available have clear gapso本地存储的利用率低 (25%),每次需要扩容的时候就要添加更多的服务器,而一旦硬盘失效后需要重建,服务器越多,失效的几率越高,性能也就越差Page 14传统的 Hadoop 集群使用的是服务器内置硬盘存储。如果用作测试或科学研究还好,可作为业务运行的存储就要采用企业存

15、储Hadoop 集群要负责数据保护和复制l重建(就是copy)失效的数据集到不同节点上 严重影响CPU性能,无法实现企业级的RASlReplicate data 问题同上l扩展的时候同时增加处理器/网络/存储,无法做到物尽其用( no way to separate these 3 even if excess capacity existing in one (e.g. Needed more storage but had to add Compute and Network))使用外部存储可以将存储负载和Hadoop计算节点分离,同时还获得了企业存储的好处。lSell the value

16、 of XIV, V7000, SVC, etc.用户一般会随Hadoop File System部署;采用Elastic Storage 可以有很多好处14Page 15数据加速数据加速lExperience the instant results that come from IBM FlashSystemlDrive as much as 45X faster analytics results on certain workloads数据负载的多样性和灵活性数据负载的多样性和灵活性lXIV delivers predictable performance that scales lin

17、early without hotspots delivering insights from analytics faster with tuning-free data distributionlScale-out, parallel processing of Elastic Storage software and integration with FlashSystem dramatically accelerates performance of Analytics clusters lVirtual Storage Center with SVC automatically op

18、timizes data warehouse performance and cost across Flash and DiskMainframe Data EnvironmentslIntegration with DB2 & specialty analytics “engines” leveraging DS8870 delivers 4x reduction in batch times with new High Performance Flash EnclosureslHigh speed encryption on every drive type secures data数据

19、保护和保留数据保护和保留 lLTFS EE w/ tape provides reduced TCO by up to 90% over disk for long term retention of data at rest with a large open format tape repositorylReduce the amount of data to be stored by up to 25 times with ProtecTIER de-duplication 12x 更快更快IBM FlashSystem increased SPLUNK & SAS applicatio

20、n efficiency to perform business analytics20 x 改善改善 in actionable supply chain analytics, 4x reduction in batch times, virtualization for plug & play6x 时间节时间节省省“GPFS allows us to move the metadata from the disk to the FlashSystem online. Once we did that, the backups were reduced down to about an ho

21、ur.” 2 hrs becomes2 minutes失效切换时间大幅缩短Mapping Characteristics to IBM Storage Products Page 16Storage Infrastructure 需求需求适用于所有的5种应用场景 Optimized Multi-TemperatureWarehouse优化的多级存储库优化的多级存储库 oAll FlashFlashSystemoHybridDS8000 EasyTierXIV + SSD CachingStorwize EasyTierFlashSystem Solution (VSC + FlashSyste

22、m)oPureSystemsPureFlex (XIV or Storwize w/EasyTier)PureData for Transactions (Storwize)PureData for Analytics (Netezza)Page 17Midrange & EntryTier 0 AccelerationEnterpriseOfferingsXIVzEnterprise Solutions for Analytics with DS8000PureData System forOperational Analytics with StorwizePureFlex Systemw

23、ith StorwizeDS8000Smart Analytics Systems with DS3xxxStorwizefamilyFlashSystemfamilyIBM Smarter Storage 的设计就是支持大数据分析的设计就是支持大数据分析高效和优化数据基础架构高效和优化数据基础架构Page 18IBM FlashSystem的的 极速性能极速性能 让实时业务决策成为可能让实时业务决策成为可能适合于模块化数据存储结构的适合于模块化数据存储结构的Hadoop系统。某些或所有数据可系统。某些或所有数据可以保存到以保存到Flash闪存上,其他可以保存到闪存上,其他可以保存到XIVPa

24、ge 19IBM XIV 的的高性能高性能无须人工干预配置,且适用于各无须人工干预配置,且适用于各种各样的存储负载种各样的存储负载IBM XIV 的的效率效率 高的异乎寻常,而且简单性业内最高,内高的异乎寻常,而且简单性业内最高,内置友好界面置友好界面IBM XIV 的的弹性弹性是企业级的,完全保证了数据的可用性是企业级的,完全保证了数据的可用性和业务连续性和业务连续性Page 20 可扩展的网格存储架构 任意时间支持任意读写负载 板上的闪存Flash 精致的数据分布 无双的磁盘重建时间 企业级的可用性 简单的规划、供给和灵活性 上线后零维护 零调优“XIV最吸引我们的地方就是其超强的性能 w

25、e正是由于XIV为我们的精细复杂的分析应用提供了一致的高性能, 使得我们能够为我们的用户带来更多的价值。”Page 21 大规模并行计算 保持持续地最佳性能 Balanced Performance性能均衡性能均衡 常年零调整 Unprecedented Scalability史无前例的史无前例的扩扩展性展性 配合添加SAS节点和XIV模块即可Page 22IBM SVC 通过如下功能在通过如下功能在IBM 大数据产品线上增加了大数据产品线上增加了灵灵活性活性:完整和数据虚拟化和数据移动性完整和数据虚拟化和数据移动性高级集群和复制高级集群和复制多路镜像,多路镜像,read preferred

26、optionReal Time Compression实时压缩实时压缩Easy Tier Hot Extent cachingStorwize V7000/UIBM SVCPage 23Real-Time Compression实时压缩是设计来做:l作用于 l专用的压缩平台Platform handles ALL heavy lifting associated with compressionl不会影响性能We modify a compressed file in-place efficientlyl不会改变用户应用Users nor admins need to change anyth

27、ingl处理流程不变压缩是在线完成,不是事后压缩l业界标准压缩算法所采用的压缩算法已经使用了几十年Storwize V7000/UIBM SVCPage 2424流处理计算 & IBM Flash SystemsPage 25Data inData at25Page 26为分析动态数据而建l多并发输入数据流l大规模可扩展Massive scalability分析和处理的数据多样化lStructured, unstructured, video, audiolAdvanced analytic operators自适应实时分析lWith Data WarehouseslWith Hadoop S

28、ystemsPage 27Current fact finding当前数据查询分许流动中的数据在数据落盘前低延迟模式, push model数据驱动真正的数据分析Historical fact finding历史数据查询查找和分析存储在磁盘上的数据信息批处理模式, pull model查询驱动: submits queries to static data Traditional ComputingStream ComputingReal-time AnalyticsPage 28 来自多个多样输入源的大量数据 直接处理和过滤数据,而不必存储 仅保存有价值的数据 仅关联对数据最感兴趣的用户 随

29、着数据信息的产生采取行动Page 291. Data Ingest数据集成,数据挖掘,机器学习, 统计建模实时和历史数据洞察力的可视化3. Adaptive Analytics Model数据收取,在线分析准备,模式校验Data2. Bootstrap/EnrichControl flowInfoSphereBigInsights, Database & WarehouseInfoSphereStreamsPage 30 来自多个多样输入源的大量数据 过去、现在和未来全方位综合性视图l实时分析,低延时结果lFull context for deep analysis深度分析的完整的上下文 跨d

30、ata in motion and data at rest的常用数据分析 自适应-随机而变l当发现非预期行为时,自适应l当识别出新数据意义时深度分析之l开始没有意识到的数据意义,随后才可能意识到l自适应在开始没有意识到的,随后可以找出数据模式Page 31Stock market Impact of weather on securities prices Analyze market data at ultra-low latencies Momentum CalculatorFraud prevention Detecting multi-party fraud Real time fr

31、aud preventione-Science Space weather prediction Detection of transient events Synchrotron atomic research Genomic ResearchTransportation Intelligent traffic management Automotive TelematicsEnergy & Utilities Transactive control Phasor Monitoring Unit Down hole sensor monitoringNatural Systems Wildf

32、ire management Water managementOther Manufacturing Text Analysis ERP for Commodities Real-time multimodal surveillance Situational awareness Cyber security detectionLaw Enforcement, Defense & Cyber SecurityHealth & Life Sciences ICU monitoring Epidemic early warning system Remote healthcare monitori

33、ngTelephony CDR processing Social analysis Churn prediction GeomappingPage 32向交易方向加速。一个高效和灵活的基一个高效和灵活的基础架构显然可以加快础架构显然可以加快流速,并平衡不同数流速,并平衡不同数据分析的需求据分析的需求CoresSCMStorageNetworkCoresSCMStorageNetworkCoresSCMStorageNetworkCoresSCMStorageNetwork+预测分析预测分析数据仓库数据仓库文本分析文本分析HadoopHadoop Workloads Workloads优化优化

34、敏感性分析敏感性分析加快流速加快流速价值时间“触发事件触发事件”数据完备数据完备交易交易Insight预见预见获取数据获取数据时间时间分析数据分析数据时间时间行动时间行动时间Page 33IBM Big Data & Analytics InfrastructureData Zone Application Zone Page 34 Experience real-time analytical insights with up to 50 x better performance than enterprise disk systems using IBM FlashCore technol

35、ogy Preserve and protect infrastructure continuity while scaling to over 2 petabyte of effective all-flash capacity under a single integrate interface Deliver agility and data economics with 4x greater capacity in less rack space than competitive all-flash productsSynchronized and Complimentary to O

36、verarching Storage Messaging - Accelerate time to insights through data without borders. IBM innovation frees data with agile and simple to use storage solutions delivering superior data economics IBM FlashSystem Core Launch MessagingDrive a complete paradigm shift in Enterprise Storage with the all

37、 new IBM FlashSystem FamilyPage 35Time to insight. Time to value. Time to market.IBM FlashSystem, its about time.Flash Realized!Page 36IBM FlashCore Technology is the DNA of the FlashSystem FamilyScalable PerformanceEnduring EconomicsAgile IntegrationPage 37Introducing the New IBM FlashSystem Family

38、 OfferingsIBM FlashSystem 900Extreme Performance: Delivers 100 microsecond response times Macro Efficiency: Lowest latency offering with 40% greater capacity at a lower cost per capacityEnterprise Reliability: IBM enhanced Micron MLC flash technology with Flash Wear GuaranteePowered by IBM FlashCore

39、 TechnologyIBM FlashSystem V9000Scalable Performance: Grow capacity and performance with up to 2.2PB scaling capabilityEnduring Economics: Next generation flash media with lower cost per capacity Agile Integration: Fully integrated system management to simplify management and improve workforce produ

40、ctivity under a single name spacePage 38Introducing IBM FlashSystem 900, the next generation in our lowest latency offering IBM MicroLatency with up to 1.1 million IOPS 40% greater capacity at a 10% lower cost per capacity IBM FlashCore technology, our secret sauce Technical collaboration with Micro

41、n Technology, our flash chip supplier IBM enhanced flash technology MLC NAND flash offering with Flash Wear Guarantee VAAI UNMAP and VASA support with IBMSIS for improved cloud storage performance and efficiencyMinimum latency Write90 sRead155 s Maximum IOPS 4 KBRead (100%, random)1,100,00Read/write

42、 (70%/30%, random)800,000Write (100%, random)600,000Maximum bandwidth 256 KBRead (100%, sequential)10 GB/s Write (100%, sequential)4.5 GB/s Performance at-a-glanceIBM MicroLatency module type1.2 TB2.9 TB5.7 TBModules quantity46 8 10 12 6 8 10 12 6810 12RAID 5 capacity (TB)2.44.87.29.6 1211.6 17.423.

43、229.022.834.245.657.0Raw Capacity (TB)7.110.714.217.821.426.335.143.952.752.770.387.9105.5Page 39IBM introduces a fully integrated, fully managed, full function all-flash storage systemScalable all-flash architecture with full set of advanced data featuresPerforms at up to 2.5M IOPS with IBM MicroLa

44、tency, scalable to 19.2 GB/s Scales to 456 TB usable and up to 2.28 PB effective capacity in only 34UUp to 57 TB usable and up to 285 TB effective capacity in only 6UNew licensing structure to simplify ordering and planning for External Data Virtualization, Flash Copy, Metro Mirror, and Real-time CompressionScalablePerformanceAgile IntegrationEnduringEconomicsPowered by FlashCoreTechnology

展开阅读全文
温馨提示:
1: 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。图纸软件为CAD,CAXA,PROE,UG,SolidWorks等.压缩文件请下载最新的WinRAR软件解压。
2: 本站的文档不包含任何第三方提供的附件图纸等,如果需要附件,请联系上传者。文件的所有权益归上传用户所有。
3.本站RAR压缩包中若带图纸,网页内容里面会有图纸预览,若没有图纸预览就没有图纸。
4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
5. 装配图网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对用户上传分享的文档内容本身不做任何修改或编辑,并不能对任何下载内容负责。
6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。
关于我们 - 网站声明 - 网站地图 - 资源地图 - 友情链接 - 网站客服 - 联系我们

copyright@ 2023-2025  zhuangpeitu.com 装配图网版权所有   联系电话:18123376007

备案号:ICP2024067431-1 川公网安备51140202000466号


本站为文档C2C交易模式,即用户上传的文档直接被用户下载,本站只是中间服务平台,本站所有文档下载所得的收益归上传人(含作者)所有。装配图网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。若文档所含内容侵犯了您的版权或隐私,请立即通知装配图网,我们立即给予删除!