亚洲精品国偷拍自产在线,精品久久一区二区乱码,精品无人区一区二区三区,久久夜色精品国产爽爽,玩弄人妻少妇精品视频,亚洲国产精品无码久久久不卡,日韩精品无码久久久久久,无码吃奶揉捏奶头高潮视频
Inspection and Testing Information Management: 400-686-4199 Data Asset Management: 400-643-4668 Supply Chain Management: 400-629-4066
Product description

In the process of enterprise data standardization, it is expected to feedback value to business through data standardization management. So, the importance of data quality can not be overemphasized. In this process, the generation of low quality data is inevitable, because the mass data initialization, unprocessed historical data diffusion and emergency businesses will all affect the quality  of data standard coding library. Thus, what the enterprises can do is to control the probability of generating low quality data and to discover low quality data in time and deal with it effectively. Therefore, the correct understanding on enterprise data quality management is that it is to reduce and control the production rate and the existence rate of low quality data through scientific, effective and professional management and technical supports, and discover low quality data in time and deal with it effectively, and keep standard code library's high health degree rather than not generating low quality data.

Product Functional Framework

Data quality management platform (DQMP) is the core standard component of SunwayWorld's information standardization and management integration Platform solution (6P+2E+Mobile), ensuring the data quality of the enterprise data standard library and transparent visual analysis of the standard data code library. However, due to factors such as the large amount of data, the complexity of data information and the high professional requirements of the data coding library, manual guarantee of quality is difficult. Thus, the standard data coding library should be tested by professional quality management tools so as to discover incomplete and abnormal (but real) data to be processed, iterant and noise data to be removed. Data health analysis should be provided by a professional data quality management platform in order to steering data cleaning and governance, so as to ensure the uniqueness, integrity,consistency, and improve data quality.

Features

6

Data quality control and configuration

Through the Data Quality Management Platform, data models of different types are configured with the corresponding quality control and analysis parameters to achieve normal quality monitoring and management on standard data of different types, thus realizing accurate duplicate checking and fuzzy duplicate checking among data and providing configurable data verification functions. The platform also supports verification and inspection of data uniqueness, completeness and consistency. 
It supports the configuration of similar data matching conditions. 
The system supports regular repeated code inspection on master data and provides the list of repeated codes of master data.
Support accurate duplicate checking function and configure duplicate checking rules.
Support batch export of the list of repeated codes of master data.
Support to establish unified approval process.
Support publication of the list of repeated codes and collection of opinions: the list of repeated codes of master data will be only announced to subsidiaries or business units which use to-be-deleted master data in the business system.
Achieve various inspection functions on data through configurable data inspection conditions. 
processing conditions of each business system of the released list of repeated codes: establish the mapping relation of repeated codes of master data and track the business processing conditions of deleted master data (including the processing status of outstanding business and master data).
Support approval, publication, opinion collection, release and export of the list of repeated codes; realize the establishment of data constraint rules.
Realize mandatory inspection function on fields.
Realize inspection function on relationship fields.
The system supports regular health analysis of master data and provides health analysis reports of master data.
 

主站蜘蛛池模板: 国产日产免费高清欧美一区| 男人的天堂av社区在线| 色综合色狠狠天天综合网| 产后漂亮奶水人妻无码| 另类亚洲综合区图片区小说| 免费人成小说在线观看网站| 久久国产精品娇妻素人| 亚洲电影天堂av2017| 99re久久精品国产首页| 一区二区不卡av免费观看| 国产日本精品视频在线观看| 18禁美女裸体爆乳无遮挡| 波多野结衣久久一区二区| 亚洲精品国产成人99久久6| 亚洲人成手机电影网站| 131美女mm爱做爽爽爽视频| 人人爽久久涩噜噜噜av| 亚洲日韩欧美在线观看一区二区三区 | 亚洲中文有码字幕日本| 在线播放亚洲人成电影| 日韩精品无码综合福利网| 人人曰人人做人人| 国产亚洲精品美女久久久m| 中文字字幕人妻中文| 中文字幕日本特黄aa毛片| 亚洲中文字幕高清乱码在线| av在线播放日韩亚洲欧| 国产成人av一区二区三区在线| 2021少妇久久久久久久久久| aⅴ亚洲 日韩 色 图网站 播放| 久久久久青草线蕉亚洲| 菠萝菠萝蜜午夜视频在线播放观看 | 超碰成人人人做人人爽| 精品国产免费人成电影在线看| 亚洲午夜无码毛片av久久| 中文乱码免费一区二区三区| 亚洲欧美成αⅴ人在线观看 | 免费久久精品国产片| 最新综合精品亚洲网址| 尤物蜜芽国产成人精品区| 亚洲 校园 欧美 国产 另类|