[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"$fUhnosnjgFIODq117RE0NxnbV45_VWjs_SNpHiweJuNI":3},{"id":4,"source":5,"question":6,"options":7,"answer":12,"related":13,"type":24,"origin":111,"createTime":26},80222629,"v1","请阅读下面一段程序: import pandas as pd ser_obj = pd.Series(range(1, 6), index=[5, 3, 1, 3, 2]) print(ser_obj) 执行上述程序后,最终输出的结果为( )",[8,9,10,11],"a 3.0 d 2.0 c 1.0 b NaN","a 3.0 b NaN c 1.0 d 2.0","程序出现异常","c 1 d 2 a 3",[],[14,27,37,47,57,67,77,87,91,101],{"id":15,"source":5,"question":16,"options":17,"answer":22,"related":23,"type":24,"origin":25,"createTime":26},80222622,"下列关于数据分析概念的描述错误的是( )",[18,19,20,21],"使用适当的统计分析方法对收集来的大量数据进行分析","数据分析可以从数据中提炼出有用的信息并形成结论","数据分析可以对数据进行更深层的研究","数据分析不能够在杂乱无章的数据中提取有用的数据",[],[],0,null,"2023-06-24T17:31:12+08:00",{"id":28,"source":5,"question":29,"options":30,"answer":35,"related":36,"type":24,"origin":25,"createTime":26},80222623,"下列选项中,用于搭接数据仓库和保证数据质量的是( )",[31,32,33,34],"数据收集","数据处理","数据分析","数据展现",[],[],{"id":38,"source":5,"question":39,"options":40,"answer":45,"related":46,"type":24,"origin":25,"createTime":26},80222624,"请阅读下列一段示例程序: arr2d = np.array([[11, 20, 5],[21, 15, 26],[17, 8, 19]]) arr2d[0:2, 0:2] 运行上述程序,它最终执行的结果为( )",[41,42,43,44],"array([[11, 20],[21, 15]])","array([11, 20])","array([21, 15])","array([11, 21])",[],[],{"id":48,"source":5,"question":49,"options":50,"answer":55,"related":56,"type":24,"origin":25,"createTime":26},80222625,"在创建ndarray对象时,可以使用( )参数来指定元素类型",[51,52,53,54],"dtype","dtypes","type","types",[],[],{"id":58,"source":5,"question":59,"options":60,"answer":65,"related":66,"type":24,"origin":25,"createTime":26},80222626,"关于数组运算的说法中,下列描述错误的是( )",[61,62,63,64],"数组不需要循环遍历,就可以对每个元素执行算术运算","如果两个数组的形状不同,则它们进行算术运算时会出现广播机制","数组还支持使用算术运算符与标量进行运算","广播机制需要扩展维度大的数组",[],[],{"id":68,"source":5,"question":69,"options":70,"answer":75,"related":76,"type":24,"origin":25,"createTime":26},80222627,"关于ndarray对象属性,下列描述错误的是( )",[71,72,73,74],"ndim属性表示数组轴的个数","shape属性表示每个维度上数组的大小","size属性表示数组元素的总个数,等于shape属性元组元素的和","dtype属性表示数组中元素类型的对象",[],[],{"id":78,"source":5,"question":79,"options":80,"answer":85,"related":86,"type":24,"origin":25,"createTime":26},80222628,"关于Pandas数据读写的说法中,下列描述错误的是()",[81,82,83,84],"read_csv()能够读取所有文本数据","read_sql()可以读取数据库中的数据","to_csv()能够将结构化数据写入到csv文件中","to_excel()能够将结构化数据写入到excel文件中",[],[],{"id":4,"source":5,"question":6,"options":88,"answer":89,"related":90,"type":24,"origin":25,"createTime":26},[8,9,10,11],[],[],{"id":92,"source":5,"question":93,"options":94,"answer":99,"related":100,"type":24,"origin":25,"createTime":26},80222630,"下列关于Pandas库的说法中正确的是( )",[95,96,97,98],"Pandas中只有两种数据结构","Pandas不支持读取文本数据","Pandas是在NumPy基础上建立的新程序库","Pandas中Series和DataFrame可以解决数据分析中一切的问题",[],[],{"id":102,"source":5,"question":103,"options":104,"answer":109,"related":110,"type":24,"origin":25,"createTime":26},80222631,"下列关于DataFrame说法正确的是( )",[105,106,107,108],"DataFrame结构是由索引和数据组成","DataFrame的行索引位于最右侧","创建一个DataFrame对象时需要指定索引","DataFrame每列的数据类型必须是相同的",[],[],{"courseName":112,"courseImg":113,"workName":114,"workId":115,"count":116,"courseId":117},"Python数据分析与可视化","https:\u002F\u002Ftihai-oss-cloud.itihey.com\u002Fimg\u002Fe5f96e05b615afd97367b1207b9a423a.png","2022-2023-2学期Python数据分析与可视化课程考试","exam_98723374",56,"368de6d27f4e54e22961a6b15884be32"]