script.sql="select Id,user_name,post_title,picture,creator,createTime from Ysy_Fjbu_Assistant.post ORDER BY createTime DESC";

时间: 2023-09-21 18:06:27 浏览: 53
### 回答1: 您好,感谢您对ChitGPT的关注。针对您的问题,我可以告诉您,这段代码是一条SQL语句,用于查询Ysy_Fjbu_Assistant数据库下的post表中的指定字段(Id、user_name、post_title、picture、creator、createTime),并按照createTime字段降序排序。希望能够解答您的疑问。 ### 回答2: 该脚本是用于查询数据库表Ysy_Fjbu_Assistant中的post表,并按照创建时间降序排列所查询到的数据。查询结果包括ID、用户名、文章标题、图片、创建者和创建时间等列的数据。通过对createTime列进行降序排序,可以确保查询结果按照文章创建的先后顺序进行展示,最新创建的文章会排在最前面。使用该脚本可以方便地获取到最新的文章信息,并用于展示或其他需要的操作。 ### 回答3: 这段代码是一个SQL查询语句,用于查询数据库表Ysy_Fjbu_Assistant中的post表。查询的字段包括Id(帖子的唯一标识)、user_name(用户名称)、post_title(帖子标题)、picture(图片链接)、creator(创建者)、createTime(创建时间)。查询结果将按照createTime字段进行降序排列,即最新的帖子将排在前面。 该查询语句的目的是获取Ysy_Fjbu_Assistant数据库中帖子表的数据,并按照帖子的创建时间倒序展示。这样可以确保最新创建的帖子在结果集的顶部,方便用户迅速了解最新的帖子内容。
相关问题

let column_head_order_no, column_old_order_code, column_customer_name, column_head_memo,column_order_date, column_sum_tax_amount,column_creator,column_customer_tax_id,column_customer_address, column_customer_tel,column_customer_bank,column_customer_bank_account,column_customer_email,column_org_name advanceConfig.value.apiKingdeeDetailTableSetting.mainTableField.forEach(item => { if (item.name === 'order_no') { column_head_order_no = item.field_name } if (item.name === 'old_order_code') { column_old_order_code = item.field_name } if (item.name === 'customer_name') { column_customer_name = item.field_name } if (item.name === 'memo') { column_head_memo = item.field_name } if (item.name === 'order_date') { column_order_date = item.field_name } if (item.name === 'sum_tax_amount') { column_sum_tax_amount = item.field_name } if (item.name === 'sum_tax_amount') { column_sum_tax_amount = item.field_name } }) 优化这段代码

可以使用对象字面量和数组的解构来简化这段代码: ``` const fieldMap = { order_no: 'column_head_order_no', old_order_code: 'column_old_order_code', customer_name: 'column_customer_name', memo: 'column_head_memo', order_date: 'column_order_date', sum_tax_amount: 'column_sum_tax_amount', creator: 'column_creator', customer_tax_id: 'column_customer_tax_id', customer_address: 'column_customer_address', customer_tel: 'column_customer_tel', customer_bank: 'column_customer_bank', customer_bank_account: 'column_customer_bank_account', customer_email: 'column_customer_email', org_name: 'column_org_name' } const columns = {} advanceConfig.value.apiKingdeeDetailTableSetting.mainTableField.forEach(item => { if (fieldMap[item.name]) { columns[fieldMap[item.name]] = item.field_name } }) ``` 这样可以去除大量的重复代码,同时也更加易读和易于维护。

优化这个sql SELECT count( 1 ) FROM ( SELECT B.ID, B.PURCHASE_REQUEST_ID, B.MATERIAL_ID, B.MATERIAL_CODE, B.MATERIAL_NAME, B.STANDARD, B.MODEL_ID, B.BILL_ROW_ID, B.BILL_NO, BILL_NAME, B.MODEL_CODE, B.MODEL_NAME, B.PARENT_MODEL_ID, B.PARENT_MODEL_CODE, B.PARENT_MODEL_NAME, B.UNIT_CODE, B.UNIT_NAME, B.PURCHASE_TYPE_CODE, CAST( NVL( B.APPLY_NUM, 0 ) AS NUMBER ( 24, 10 ) ) AS APPLY_NUM, CAST( NVL( B.DEAL_NUM, 0 ) AS NUMBER ( 24, 10 ) ) AS DEAL_NUM, CAST( NVL( B.RETURN_NUM, 0 ) AS NUMBER ( 24, 10 ) ) AS RETURN_NUM, B.DEAL_USER_ID, B.DEAL_USER_NAME, CAST( NVL( B.PRICE, 0 ) AS NUMBER ( 24, 10 ) ) AS PRICE, CAST( NVL( B.AMOUNT, 0 ) AS NUMBER ( 24, 10 ) ) AMOUNT, B.IMPLEMENT_CODE, B.IMPLEMENT_NAME, B.IMPLEMENT_INVEST_AMOUNT, B.PURCHASE_MANAGER_ID, B.PURCHASE_MANAGER_NAME, B.PROVIDER_ID, B.PROVIDER_NAME, B.REMARK, B.DELIVER_AREA, B.DELIVER_ADDRESS, B.RECEIVE_PEOPLE, B.RECEIVE_PEOPLE_PHONE, B.ITEM_STATUS, B.COST_CENTER, B.COST_BUDGET_CODE, B.COST_IMPLEMENT_NAME, B.FRAME_CONT_ID, B.FRAME_CONT_CODE, B.FRAME_CONT_NAME, B.DETAIL_CONFIG, B.PURCHASE_CATEGORY_CODE, B.INVOICE_TITLE_CODE, B.INVOICE_SEND_ADDRRSS, B.MATERIAL_REQUEST_ITEM_ID, B.YEAR, B.DELETE_FLAG, B.PROVINCE_CODE, B.REASON, B.PARENT_ITEM_ID, B.FRAME_CONT_ITEM_ID, B.SUB_MATERIAL_REQUEST_ID, B.SUB_MATERIAL_REQUEST_CODE, B.MATERIAL_URL, B.RECOMMEND_PROVIDER_NAMES, C.PURCHASE_REQUEST_CODE, C.PURCHASE_REQUEST_NAME, C.APPLY_TYPE_CODE, C.CREATOR_NAME, C.APPLY_TELEPHONE, C.COMPANY_NAME, C.DEPT_NAME, B.CREATE_TIME, TO_CHAR( B.CREATE_TIME, 'YYYY-MM-DD' ) CREATE_TIME_STR, C.ARRIVE_TIME, C.IS_TO_END, C.MONEY_WAY_CODE, C.OWN, C.APPLY_CATEGORY_CODE, C.manu_Type, C.BILL_ID, MMD.MATERIAL_TYPE_CODE, B.BRANCH_COMPANY_DEAL_USER_ID, B.BRANCH_COMPANY_DEAL_USER_NAME, ( SELECT ORG_NAME FROM ORGANIZATIONS WHERE DELETE_FLAG = '0' AND ORG_CODE = ( SELECT PARENT_COMPANY_NO FROM ORGANIZATIONS WHERE ID = B.MATERIAL_DEPT_ID )) AS MATERIAL_COMPANY_NAME, B.ORIGINAL, B.PROVIDER_PRODUCT_MODEL, B.PROVIDER_PRODUCT_NAME, B.PRODUCT_DESC, B.Back_Flag, CASE WHEN MMD.material_type_code = 'WZ' THEN '1' WHEN MMD.material_type_code = 'FW' THEN '2' ELSE '3' END apply_category_code_item, NVL( C.IS_CARDSYSTEM_REQUEST, '0' ) IS_CARDSYSTEM_REQUEST, B.APPLY_GROUP_AUTHORITES, B.SCIENTIFIC_RESEARCH_ID, B.SCIENTIFIC_RESEARCH_CODE, B.SCIENTIFIC_RESEARCH_NAME, B.PREQUALFY_CODE, nvl( C.IS_QUICK, '0' ) AS IS_QUICK, C.PURCHASE_WAY_CODE, C.PURCHASE_TYPE_CODE PURCHASE_TYPE_CODE_P, C.ORIGINAL_TYPE, C.PURCHASE_REQUEST_BILLS_TYPE, B.IS_FRAME_CONT_MONAD FROM PURCHASE_REQUEST_ITEM B LEFT JOIN PURCHASE_REQUEST C ON B.PURCHASE_REQUEST_ID = C.ID LEFT JOIN MATERIAL_DATA MMD ON MMD.ID = B.MATERIAL_ID AND MMD.DELETE_FLAG = '0' WHERE B.delete_flag = '0' AND B.Item_Status IN ( 1 ) AND NOT EXISTS ( SELECT * FROM purchase_request_item_log pril WHERE B.id = pril.purchase_request_item_id AND pril.lock_status = '1' AND pril.delete_flag = '0' ) AND ( ( c.apply_type_code NOT IN ( '20', '41', '3' ) AND nvl( B.Apply_Num, 0 ) > nvl( B.Deal_Num, 0 )) OR c.apply_type_code IN ( '20', '41', '3' ) ) AND B.Deal_User_Id =: 1 AND C.MONEY_WAY_CODE =: 2 AND C.APPLY_TYPE_CODE =: 3 AND C.PAY_OUT_TYPE_CODE =: 4 AND C.APPLY_CATEGORY_CODE =: 5 AND NVL( C.IS_CARDSYSTEM_REQUEST, '0' ) = : 6 AND NOT EXISTS ( SELECT * FROM purchase_request_item p left join material_province mp ON p.material_id = mp.material_id WHERE p.delete_flag = 0 AND mp.delete_flag = 0 AND mp.material_status = 03 AND mp.org_code = p.province_code AND p.id = B.id ) ORDER BY C.ID, B.ID ASC)

首先,可以将子查询中的所有列名改为别名,这样可以避免重名和提高代码可读性。另外,可以尝试使用 EXISTS 子查询来替换 NOT EXISTS 子查询,因为 EXISTS 子查询的性能通常更好。最后,可以考虑对 WHERE 子句中的多个条件进行逻辑上的分组,以避免出现过于复杂的条件表达式。下面是优化后的 SQL: SELECT COUNT(1) FROM ( SELECT b.ID, b.PURCHASE_REQUEST_ID, b.MATERIAL_ID, b.MATERIAL_CODE, b.MATERIAL_NAME, b.STANDARD, b.MODEL_ID, b.BILL_ROW_ID, b.BILL_NO, b.BILL_NAME, b.MODEL_CODE, b.MODEL_NAME, b.PARENT_MODEL_ID, b.PARENT_MODEL_CODE, b.PARENT_MODEL_NAME, b.UNIT_CODE, b.UNIT_NAME, b.PURCHASE_TYPE_CODE, CAST(NVL(b.APPLY_NUM, 0) AS NUMBER(24, 10)) AS APPLY_NUM, CAST(NVL(b.DEAL_NUM, 0) AS NUMBER(24, 10)) AS DEAL_NUM, CAST(NVL(b.RETURN_NUM, 0) AS NUMBER(24, 10)) AS RETURN_NUM, b.DEAL_USER_ID, b.DEAL_USER_NAME, CAST(NVL(b.PRICE, 0) AS NUMBER(24, 10)) AS PRICE, CAST(NVL(b.AMOUNT, 0) AS NUMBER(24, 10)) AMOUNT, b.IMPLEMENT_CODE, b.IMPLEMENT_NAME, b.IMPLEMENT_INVEST_AMOUNT, b.PURCHASE_MANAGER_ID, b.PURCHASE_MANAGER_NAME, b.PROVIDER_ID, b.PROVIDER_NAME, b.REMARK, b.DELIVER_AREA, b.DELIVER_ADDRESS, b.RECEIVE_PEOPLE, b.RECEIVE_PEOPLE_PHONE, b.ITEM_STATUS, b.COST_CENTER, b.COST_BUDGET_CODE, b.COST_IMPLEMENT_NAME, b.FRAME_CONT_ID, b.FRAME_CONT_CODE, b.FRAME_CONT_NAME, b.DETAIL_CONFIG, b.PURCHASE_CATEGORY_CODE, b.INVOICE_TITLE_CODE, b.INVOICE_SEND_ADDRRSS, b.MATERIAL_REQUEST_ITEM_ID, b.YEAR, b.DELETE_FLAG, b.PROVINCE_CODE, b.REASON, b.PARENT_ITEM_ID, b.FRAME_CONT_ITEM_ID, b.SUB_MATERIAL_REQUEST_ID, b.SUB_MATERIAL_REQUEST_CODE, b.MATERIAL_URL, b.RECOMMEND_PROVIDER_NAMES, c.PURCHASE_REQUEST_CODE, c.PURCHASE_REQUEST_NAME, c.APPLY_TYPE_CODE, c.CREATOR_NAME, c.APPLY_TELEPHONE, c.COMPANY_NAME, c.DEPT_NAME, b.CREATE_TIME, TO_CHAR(b.CREATE_TIME, 'YYYY-MM-DD') CREATE_TIME_STR, c.ARRIVE_TIME, c.IS_TO_END, c.MONEY_WAY_CODE, c.OWN, c.APPLY_CATEGORY_CODE, c.manu_Type, c.BILL_ID, MMD.MATERIAL_TYPE_CODE, b.BRANCH_COMPANY_DEAL_USER_ID, b.BRANCH_COMPANY_DEAL_USER_NAME, (SELECT ORG_NAME FROM ORGANIZATIONS WHERE DELETE_FLAG = '0' AND ORG_CODE = (SELECT PARENT_COMPANY_NO FROM ORGANIZATIONS WHERE ID = b.MATERIAL_DEPT_ID)) AS MATERIAL_COMPANY_NAME, b.ORIGINAL, b.PROVIDER_PRODUCT_MODEL, b.PROVIDER_PRODUCT_NAME, b.PRODUCT_DESC, b.Back_Flag, CASE WHEN MMD.material_type_code = 'WZ' THEN '1' WHEN MMD.material_type_code = 'FW' THEN '2' ELSE '3' END apply_category_code_item, NVL(c.IS_CARDSYSTEM_REQUEST, '0') IS_CARDSYSTEM_REQUEST, b.APPLY_GROUP_AUTHORITES, b.SCIENTIFIC_RESEARCH_ID, b.SCIENTIFIC_RESEARCH_CODE, b.SCIENTIFIC_RESEARCH_NAME, b.PREQUALFY_CODE, NVL(c.IS_QUICK, '0') AS IS_QUICK, c.PURCHASE_WAY_CODE, c.PURCHASE_TYPE_CODE PURCHASE_TYPE_CODE_P, c.ORIGINAL_TYPE, c.PURCHASE_REQUEST_BILLS_TYPE, b.IS_FRAME_CONT_MONAD FROM PURCHASE_REQUEST_ITEM b LEFT JOIN PURCHASE_REQUEST c ON b.PURCHASE_REQUEST_ID = c.ID LEFT JOIN MATERIAL_DATA MMD ON MMD.ID = b.MATERIAL_ID AND MMD.DELETE_FLAG = '0' WHERE b.delete_flag = '0' AND b.Item_Status IN (1) AND b.Deal_User_Id = :1 AND C.MONEY_WAY_CODE = :2 AND C.APPLY_TYPE_CODE = :3 AND C.PAY_OUT_TYPE_CODE = :4 AND C.APPLY_CATEGORY_CODE = :5 AND NVL(C.IS_CARDSYSTEM_REQUEST, '0') = :6 AND EXISTS ( SELECT * FROM purchase_request_item_log pril WHERE B.id = pril.purchase_request_item_id AND pril.lock_status = '1' AND pril.delete_flag = '0' ) AND ( c.apply_type_code IN ('20', '41', '3') OR ( c.apply_type_code NOT IN ('20', '41', '3') AND NVL(b.Apply_Num, 0) > NVL(b.Deal_Num, 0) ) ) AND NOT EXISTS ( SELECT * FROM purchase_request_item p LEFT JOIN material_province mp ON p.material_id = mp.material_id WHERE p.delete_flag = 0 AND mp.delete_flag = 0 AND mp.material_status = 03 AND mp.org_code = p.province_code AND p.id = b.id ) ORDER BY c.ID, b.ID ASC )

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