[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"$f-ndlV-bJgw73izMiSzfhuoN6_B8POqYmgSJirBLbpK0":3},{"answer":4,"createTime":5,"id":6,"options":7,"origin":12,"question":19,"related":20,"source":31,"type":32},[],"2024-05-13 13:40:30",143206461,[8,9,10,11],"df.show()","df.show(false)","df.show(30)","df.collect()",{"count":13,"courseId":14,"courseImg":15,"courseName":16,"workId":17,"workName":18},5,"adebc9641ed097fe6154ee2537ec8b4a","https:\u002F\u002Ftihai-oss-cloud.itihey.com\u002Fimg\u002F888458b350a5206e12c6a3d04b7977b3.jpg","分布式计算框架Spark","work_34848545","作业3_20240508","查看DataFrame对象df前30条记录的命令是( ).A. B. C. D",[21,33,36,45,54],{"answer":22,"createTime":23,"id":24,"options":25,"question":30,"source":31,"type":32},[],"2024-05-13 13:40:29",143206460,[26,27,28,29],"Spark SQL的前身是Hive","DataFrame其实就是RDD","HiveContext继承了SqlContext","HiveContext只支持SQL语法解析器","关于Spark SQL的论述,说法正确的是( )","v1",0,{"answer":34,"createTime":5,"id":6,"options":35,"question":19,"source":31,"type":32},[],[8,9,10,11],{"answer":37,"createTime":5,"id":38,"options":39,"question":44,"source":31,"type":32},[],143206462,[40,41,42,43],"数据文件","数据文件、Hive表","数据文件、Hive表、RDD","数据文件、Hive表、RDD、外部数据库","Spark SQL可以处理的数据源包括( )",{"answer":46,"createTime":5,"id":47,"options":48,"question":53,"source":31,"type":32},[],143206463,[49,50,51,52],"people.oderBy(- &quot;age&quot;)","people.oderBy(-people(&quot;age&quot;))","people.oderBy(&quot;age&quot;,desc)","people.oderBy(people(&quot;age&quot;),desc)","使用orderBy方法根据age字段对DataFrame对象people中的数据降序排序命令是( )",{"answer":55,"createTime":5,"id":56,"options":57,"question":62,"source":31,"type":32},[],143206464,[58,59,60,61],"JSON、parquet、TXT","JSON、CSV、TXT","parquet、CSV、TXT","JSON、parquet、CSV","Spark SQL可以直接从下列( )文件数据加载数据创建DataFrame"]