宁波市海曙区智慧工地系统工资预警管理数据
收藏浙江省数据知识产权登记平台2023-11-29 更新2024-05-08 收录
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采集宁波市海曙区范围内工资信息线下通过设备和手动录入的方式采集数据到数据库作为原始数据源。最后通过BI工具,按区域工种进行分类统计,利用折线图体现每个地区工种的工资风险走势情况。推送给班组长、企业、劳务公司、监管部门。(1)数据采集:采集宁波市海曙区范围内工资信息线下通过设备和手动录入的方式采集数据到数据库作为原始数据源。(2)数据处理:首先对采集的工资确认数据进行清洗,包括工资金额为0的或者为null的。然后对数据在时间维度按日,项目维度按企业,区域维度按区域,进行最细级别粒度的聚合。计算得到各工地的工资确认总数量为X,未确认工资人数/X=未确认人数在总工资发放中的占比, 待处理数为已经采集且并未介入处理数, 已处理数为已经开始处理的数量,已完成数为已经确认工资发放的数量,超时未处理数为超时未处理数指超过1天未处理数,X=待处理数+已处理数+已完成数。(3)数据分析: 低危风险数=企业待处理数低于总比10%且超时未处理数低于5%,中危风险数=企业待处理数低于总比20%且超时未处理数低于10%,高危风险数=企业待处理数低于总比30%且超时未处理数低于15%。
The raw data source is established by collecting wage information within Haishu District, Ningbo City via offline equipment and manual entry, and storing the collected data into a database. Subsequently, a Business Intelligence (BI) tool is used to perform classified statistics based on region and occupation type, generate line charts to visualize the wage risk trends of occupations in each region, and push the results to team leaders, enterprises, labor service companies and regulatory authorities.
(1) Data Collection: Wage information within Haishu District, Ningbo City is collected offline via equipment and manual entry, then stored into a database as the raw data source.
(2) Data Processing: First, clean the collected wage confirmation data, including removing records with zero or null wage amounts. Then, perform finest-granularity aggregation on the data across three dimensions: daily in the time dimension, by enterprise in the project dimension, and by region in the regional dimension. Calculate the total number of wage confirmations for each construction site as X. The proportion of unconfirmed wage recipients in total wage payments is calculated as (number of unconfirmed wage recipients) / X. The pending processing count refers to the number of collected records that have not yet entered the processing stage; the processed count refers to the number of records that have started processing; the completed count refers to the number of records with confirmed wage disbursements; the overdue unprocessed count refers to records that have not been processed for more than 1 day. The formula X = pending processing count + processed count + completed count holds.
(3) Data Analysis: Risk levels are defined as follows: Low-risk count: For an enterprise, its pending processing count accounts for less than 10% of the total, and its overdue unprocessed count accounts for less than 5%; Medium-risk count: For an enterprise, its pending processing count accounts for less than 20% of the total, and its overdue unprocessed count accounts for less than 10%; High-risk count: For an enterprise, its pending processing count accounts for less than 30% of the total, and its overdue unprocessed count accounts for less than 15%.
提供机构:
杭州法在科技有限公司
创建时间:
2023-11-13
搜集汇总
数据集介绍

特点
该数据集为宁波市海曙区智慧工地系统的工资预警管理数据,包含167条记录,每月更新。数据来源于企业,主要用于工资信息的采集、处理和风险分析,应用场景包括通过BI工具进行区域工种工资风险走势的统计和推送。
以上内容由遇见数据集搜集并总结生成



