df=pd.read_csv('../input/loan-data/loan_data.csv')

时间: 2024-01-03 08:03:02 浏览: 25
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在正确的前提下,用其他形式表达这段代码:import pandas as pd import numpy as np from sklearn.preprocessing import Imputer from sklearn.model_selection import train_test_split df_table_all = pd.read_csv("D:\python_pytharm\datasets\chapter3_data_handled\train_all.csv", index_col=0) df_table_all = df_table_all.drop(['LOAN_DATE_x'], axis=1) df_table_all = df_table_all.drop(['LOAN_DATE_y'], axis=1) df_table_all = df_table_all.dropna(axis=1,how='all') columns = df_table_all.columns imr = Imputer(missing_values='NaN', strategy='mean', axis=0) df_table_all = pd.DataFrame(imr.fit_transform(df_table_all.values)) df_table_all.columns = columns df_table_all.to_csv("D:\python_pytharm\datasets\chapter3_data_handled\trainafter.csv")

使用Python代码块的格式: ``` import pandas as pd import numpy as np from sklearn.preprocessing import Imputer from sklearn.model_selection import train_test_split df_table_all = pd.read_csv("D:\python_pytharm\datasets\chapter3_data_handled\train_all.csv", index_col=0) df_table_all = df_table_all.drop(['LOAN_DATE_x'], axis=1) df_table_all = df_table_all.drop(['LOAN_DATE_y'], axis=1) df_table_all = df_table_all.dropna(axis=1,how='all') columns = df_table_all.columns imr = Imputer(missing_values='NaN', strategy='mean', axis=0) df_table_all = pd.DataFrame(imr.fit_transform(df_table_all.values)) df_table_all.columns = columns df_table_all.to_csv("D:\python_pytharm\datasets\chapter3_data_handled\trainafter.csv") ``` 这段代码导入了必要的库,读取了一个csv文件并对其进行了预处理,最后将处理后的结果保存到了另一个csv文件中。

import pandas as pd import numpy as np from sklearn.preprocessing import Imputer from sklearn.model_selection import train_test_split df_table_all = pd.read_csv("D:\python_pytharm\datasets\chapter3_data_handled\\train_all.csv", index_col=0) df_table_all = df_table_all.drop(['LOAN_DATE_x'], axis=1) df_table_all = df_table_all.drop(['LOAN_DATE_y'], axis=1) df_table_all = df_table_all.dropna(axis=1,how='all') columns = df_table_all.columns imr = Imputer(missing_values='NaN', strategy='mean', axis=0) df_table_all = pd.DataFrame(imr.fit_transform(df_table_all.values)) df_table_all.columns = columns df_table_all.to_csv("D:\python_pytharm\datasets\chapter3_data_handled\\trainafter.csv")解释代码

这段代码主要进行数据处理,包括读取csv文件、删除指定列和删除全为NaN的列。然后使用Imputer类对NaN值进行填充,填充方法为使用该列的平均值。最后将处理后的数据保存为新的csv文件。 具体代码解释如下: 1. import pandas as pd import numpy as np from sklearn.preprocessing import Imputer from sklearn.model_selection import train_test_split 导入所需的库和模块。 2. df_table_all = pd.read_csv("D:\python_pytharm\datasets\chapter3_data_handled\\train_all.csv", index_col=0) 使用pandas库中的read_csv()函数读取指定路径下的csv文件,将其存储为DataFrame格式,并将第一列作为索引列。 3. df_table_all = df_table_all.drop(['LOAN_DATE_x'], axis=1) df_table_all = df_table_all.drop(['LOAN_DATE_y'], axis=1) 使用drop()函数删除指定列。 4. df_table_all = df_table_all.dropna(axis=1,how='all') 使用dropna()函数删除全为NaN的列。 5. columns = df_table_all.columns 获取DataFrame的列名。 6. imr = Imputer(missing_values='NaN', strategy='mean', axis=0) 创建Imputer对象,用于填充NaN值。missing_values参数指定需要填充的值,strategy参数指定填充方法,axis参数指定填充方向。 7. df_table_all = pd.DataFrame(imr.fit_transform(df_table_all.values)) 使用fit_transform()函数填充NaN值,并将其转换为DataFrame格式。 8. df_table_all.columns = columns 将DataFrame的列名设置为原始列名。 9. df_table_all.to_csv("D:\python_pytharm\datasets\chapter3_data_handled\\trainafter.csv") 使用to_csv()函数将处理后的数据保存为新的csv文件。

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优化下这个代码 select sum(auth_amt) sum_auth_amt from auth_cont auth left join (select * from RPT_DUE_LOAN_ACC_M loan where loan.send_flag = '2' and loan.prd_userdf_type != '3017' and loan.bank_id = 162000 and (loan.cif_no in (select cif_no from RPT_DUE_LOAN_ACC_M a where 1 = 1 AND LOAN.YEAR = '2021' AND LOAN.MONTH = '12' AND LOAN.ACCOUNT_STATUS NOT IN ('0', '2') AND ((LOAN.LOAN_BAL > 0 OR LOAN.IN_INTST > 0 OR LOAN.OUT_INTST > 0 OR LOAN.CMPD_INTST > 0) or substr(LOAN.SETTL_DATE, 0, 6) = '202112') AND LOAN.MANG_BR_NO IN (SELECT BR_NO FROM TBL_ORG_DEPARTMENTS START WITH BR_NO = '162000' CONNECT BY PRIOR BR_NO = UP_ONE) group by cif_no and (loan.cif_no in (select cif_no from RPT_DUE_LOAN_ACC_M a where 1 = 1 AND LOAN.YEAR = '2021' AND LOAN.MONTH = '12' AND LOAN.ACCOUNT_STATUS NOT IN ('0', '2') AND ((LOAN.LOAN_BAL > 0 OR LOAN.IN_INTST > 0 OR LOAN.OUT_INTST > 0 OR LOAN.CMPD_INTST > 0) or substr(LOAN.SETTL_DATE, 0, 6) = '202112') AND LOAN.MANG_BR_NO IN (SELECT BR_NO FROM TBL_ORG_DEPARTMENTS START WITH BR_NO = '162000' CONNECT BY PRIOR BR_NO = UP_ONE) group by cif_no group by cif_no) loan on loan.cif_no = auth.cif_no where auth_sts = '1' AND LOAN.YEAR = '2021' AND LOAN.MONTH = '12' AND LOAN.ACCOUNT_STATUS NOT IN ('0', '2') AND ((LOAN.LOAN_BAL > 0 OR LOAN.IN_INTST > 0 OR LOAN.OUT_INTST > 0 OR LOAN.CMPD_INTST > 0) or substr(LOAN.SETTL_DATE, 0, 6) = '202112') AND LOAN.MANG_BR_NO IN (SELECT BR_NO FROM TBL_ORG_DEPARTMENTS START WITH BR_NO = '162000' CONNECT BY PRIOR BR_NO = UP_ONE)

请将这个存储过程修改为触发器,当其余四个表插入新数据时,t_pcm_prod_own能够修改更新数据 CREATE DEFINER=root@% PROCEDURE test03() BEGIN -- 是否持有活期 IF EXISTS(SELECT CUST_ID FROM T_PCM_PROD_OWN WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_CURR)) THEN UPDATE T_PCM_PROD_OWN SET IS_DEP = '1' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_CURR); ELSE UPDATE T_PCM_PROD_OWN SET IS_DEP = '0' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_CURR); END IF; -- 是否持有定期 IF EXISTS(SELECT CUST_ID FROM T_PCM_PROD_OWN WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_FIXED)) THEN UPDATE T_PCM_PROD_OWN SET IS_FIXED_DEP = '1' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_FIXED); ELSE UPDATE T_PCM_PROD_OWN SET IS_FIXED_DEP = '0' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_DEP_FIXED); END IF; -- 是否持有贷款 IF EXISTS(SELECT CUST_ID FROM T_PCM_PROD_OWN WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_LOAN)) THEN UPDATE T_PCM_PROD_OWN SET IS_LOAN = '1' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_LOAN); ELSE UPDATE T_PCM_PROD_OWN SET IS_LOAN = '0' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_LOAN); END IF; -- 是否持有理财 IF EXISTS(SELECT CUST_ID FROM T_PCM_PROD_OWN WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_WEALTH)) THEN UPDATE T_PCM_PROD_OWN SET IS_WEALTH = '1' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_WEALTH); ELSE UPDATE T_PCM_PROD_OWN SET IS_WEALTH = '0' WHERE CUST_ID IN (SELECT CUST_ID FROM T_PCM_WEALTH); END IF; INSERT INTO T_PCM_PROD_OWN SELECT REPLACE(UUID(),'-','') ,T_PCM_CUST.CUST_ID ,T_PCM_CUST.LAW_ORG_ID ,T_PCM_CUST.ECIF_CUST_ID ,T_PCM_PROD_OWN.IS_DEP ,T_PCM_PROD_OWN.IS_FIXED_DEP ,T_PCM_PROD_OWN.IS_LOAN ,T_PCM_PROD_OWN.IS_WEALTH ,T_PCM_DEP_CURR.CURRENT_BAL ,T_PCM_DEP_FIXED.BAL ,T_PCM_LOAN.LOAN_MON ,T_PCM_WEALTH.CURRENT_BAL FROM T_PCM_CUST LEFT JOIN T_PCM_DEP_CURR ON T_PCM_CUST.CUST_ID = T_PCM_DEP_CURR.CUST_ID LEFT JOIN T_PCM_DEP_FIXED ON T_PCM_CUST.CUST_ID = T_PCM_DEP_FIXED.CUST_ID LEFT JOIN T_PCM_LOAN ON T_PCM_CUST.CUST_ID = T_PCM_LOAN.CUST_ID LEFT JOIN T_PCM_WEALTH ON T_PCM_CUST.CUST_ID = T_PCM_WEALTH.CUST_ID LEFT JOIN T_PCM_PROD_OWN ON T_PCM_CUST.CUST_ID = T_PCM_PROD_OWN.CUST_ID; END

优化这条sql: select distinct (select product_name from t_product from where id = #{productId} and mark = 1 and status = 1) as productName, (select count(0) from t_clue a where a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId} and a.status in(1,2,3,31,32,33)) as clueCount, (select count(0) from t_clue a left join t_clue_appendix b on a.clue_code = b.clue_code where a.distribution_status != 4 and a.mark = 1 and b.file_url is not null and a.product_id = #{productId} and a.status in (3,31,32,33)) as intentionCount, (select count(0) from t_clue a where a.status in (4,5,7,8) and a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId} and a.status = 4) as incomingCount, (select count(0) from t_clue a where a.status in (5,7,8) and a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId} and a.status in (5,7,8)) as approvedCount, (select count(0) from t_clue a where a.status = 6 and a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId} and a.status = 6) as rejectionCount, (select count(0) from t_clue a where a.status in (7,8) and a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId}) as loanCount, (select count(0) from t_clue a where a.status = 8 and a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId}) as swipeCount, (select sum(a.loan_amount) from t_clue a where a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId}) as loanMoney, (select sum(a.use_amount) from t_clue a where a.distribution_status != 4 and a.mark = 1 and a.product_id = #{productId}) as swipeMoney

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