[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"$fn-L7t6f4ctrGqfP02nIjyFy4YGyT3nQiZACAh6I3rm0":3},{"answer":4,"createTime":5,"id":6,"options":7,"origin":10,"question":17,"related":18,"source":24,"type":25},[],"2023-06-03 20:46:22",44275605,[8,9],"正确","错误",{"count":11,"courseId":12,"courseImg":13,"courseName":14,"workId":15,"workName":16},94,"e6369db87b37bab83439728e7cc901d0","https:\u002F\u002Ftihai-oss-cloud.itihey.com\u002Fimg\u002F61c7e6cde2d4fcf634c4675c008e2d14.jpg","公安大数据智能分析与应用Ⅰ","exam_95499344","判断题测验","对于大数据而言,最基本.最重要的要求就是减少错误.保证质量.因此,大数据收集的信息精确.( )",[19,26,31,36,41,46,51,56,61,66],{"answer":20,"createTime":5,"id":21,"options":22,"question":23,"source":24,"type":25},[],44275573,[8,9],"Hadoop是Apache软件基金会旗下的一个开源分布式计算平台,是基于Python语言开发的,具有很好的跨平台特性.( )","v1",3,{"answer":27,"createTime":5,"id":28,"options":29,"question":30,"source":24,"type":25},[],44275574,[8,9],"HDFS分布式文件系统,是谷歌文件系统GFS的开源实现.( )",{"answer":32,"createTime":5,"id":33,"options":34,"question":35,"source":24,"type":25},[],44275575,[8,9],"Hadoop生态系统中MapReduce并行计算框架是针对谷歌MapReduce的开源实现.( )",{"answer":37,"createTime":5,"id":38,"options":39,"question":40,"source":24,"type":25},[],44275576,[8,9],"在分布式文件系统HDFS中,名称节点负责管理HDFS的元数据,这些元数据被保存在磁盘中.( )",{"answer":42,"createTime":5,"id":43,"options":44,"question":45,"source":24,"type":25},[],44275577,[8,9],"HDFS可以高效存储大量的小文件.( )",{"answer":47,"createTime":5,"id":48,"options":49,"question":50,"source":24,"type":25},[],44275578,[8,9],"FsImage用于维护文件系统树以及文件树中所有的文件和文件夹的元数据.( )",{"answer":52,"createTime":5,"id":53,"options":54,"question":55,"source":24,"type":25},[],44275579,[8,9],"第二名称节点(Secondary NameNode)是HDFS架构中的一个组成部分,它是用来保存名称节点中对HDFS元数据信息的备份,并减少名称节点重启的时间.( )",{"answer":57,"createTime":5,"id":58,"options":59,"question":60,"source":24,"type":25},[],44275580,[8,9],"HDFS采用了主从(Master\u002FSlave)架构模型,一个HDFS集群包括一个名称节点和若干个数据节点.( )",{"answer":62,"createTime":5,"id":63,"options":64,"question":65,"source":24,"type":25},[],44275581,[8,9],"Hive适合于长时间的批处理查询分析.( )",{"answer":67,"createTime":5,"id":68,"options":69,"question":70,"source":24,"type":25},[],44275582,[8,9],"对于大数据而言,最基本、最重要的要求就是减少错误、保证质量.因此,大数据收集的信息量要尽量精确.( )"]