- Statistics for Data Science
- James D. Miller
- 192字
- 2021-07-02 14:58:45
Data quality or data cleansing
Do you think a data developer is interested in the quality of data in a database? Of course, a data developer needs to care about the level of quality of the data they support or provide access to. For a data developer, the process of data quality assurance (DQA) within an organization is more mechanical in nature, such as ensuring data is current and complete and stored in the correct format.
With data cleansing, you see the data scientist put more emphasis on the concept of statistical data quality. This includes using relationships found within the data to improve the levels of data quality. As an example, an individual whose age is nine, should not be labeled or shown as part of a group of legal drivers in the United States incorrectly labeled data.
- 西門子PLC與InTouch綜合應(yīng)用
- 反饋系統(tǒng):多學(xué)科視角(原書第2版)
- Hands-On Data Warehousing with Azure Data Factory
- PLC與變頻技術(shù)應(yīng)用
- Linux系統(tǒng)下C程序開發(fā)詳解
- Drupal高手建站技術(shù)手冊
- 深度學(xué)習(xí)原理與 TensorFlow實(shí)踐
- Learn Microsoft Azure
- Embedded Linux Development using Yocto Projects(Second Edition)
- Windows 7來了
- Eclipse全程指南
- AVR單片機(jī)C語言程序設(shè)計(jì)實(shí)例精粹
- Internet of Things with Raspberry Pi 3
- 設(shè)計(jì)中的人因:34個(gè)設(shè)計(jì)小故事
- 局域網(wǎng)組建與使用完全自學(xué)手冊