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University of Michigan

The Total Data Quality Framework

By the end of this first course in the Total Data Quality specialization, learners will be able to: 1. Identify the essential differences between designed and gathered data and summarize the key dimensions of the Total Data Quality (TDQ) Framework; 2. Define the three measurement dimensions of the Total Data Quality framework, and describe potential threats to data quality along each of these dimensions for both gathered and designed data; 3. Define the three representation dimensions of the Total Data Quality framework, and describe potential threats to data quality along each of these dimensions for both gathered and designed data; and 4. Describe why data analysis defines an important dimension of the Total Data Quality framework, and summarize potential threats to the overall quality of an analysis plan for designed and/or gathered data. This specialization as a whole aims to explore the Total Data Quality framework in depth and provide learners with more information about the detailed evaluation of total data quality that needs to happen prior to data analysis. The goal is for learners to incorporate evaluations of data quality into their process as a critical component for all projects. We sincerely hope to disseminate knowledge about total data quality to all learners, such as data scientists and quantitative analysts, who have not had sufficient training in the initial steps of the data science process that focus on data collection and evaluation of data quality. We feel that extensive knowledge of data science techniques and statistical analysis procedures will not help a quantitative research study if the data collected/gathered are not of sufficiently high quality. This specialization will focus on the essential first steps in any type of scientific investigation using data: either generating or gathering data, understanding where the data come from, evaluating the quality of the data, and taking steps to maximize the quality of the data prior to performing any kind of statistical analysis or applying data science techniques to answer research questions. Given this focus, there will be little material on the analysis of data, which is covered in myriad existing Coursera specializations. The primary focus of this specialization will be on understanding and maximizing data quality prior to analysis.

状态:Threat Detection
状态:Data Access
初级课程小时

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CM

4.0评论日期:Mar 6, 2026

The four lecturers were top notch.. They were able to articulate matters amicably making the understanding of the course flawless.. keep up guys!

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Alejandro Maldonado Caerols
5.0
评论日期:Aug 20, 2024
DIAZ VILLAVICENCIO, CARLOS EMILIO
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Carlos Alejandro Belmar Montalba
5.0
评论日期:Jul 15, 2024
MAURICIO JOSE VULCANO
5.0
评论日期:Sep 9, 2022
Eduardo Andrés Chávez Chávez
5.0
评论日期:Nov 5, 2024
Francisco Jose Concha Araya
5.0
评论日期:Aug 28, 2024
NOUF OWAID SALAMAH ALANAZI NOUF OWAID SALAMAH ALANAZI
5.0
评论日期:Apr 21, 2024
Cornelius Ngunjiri Mwangi
4.0
评论日期:Mar 6, 2026
Fernando Andrés González Cerda
4.0
评论日期:Jan 17, 2025
CRISTIAN ERNESTO FARIAS VARGAS
4.0
评论日期:Dec 19, 2024