Data Analysis for Business
Offered By: Fundação Instituto de Administração via Coursera
Course Description
Overview
The Data Science in Business course equips participants with the tools and techniques to leverage data for informed decision-making in the corporate world. Covering data analysis, and data-driven strategies, this course empowers individuals to extract valuable insights, enhance business processes, and drive strategic initiatives through data-driven approaches. Combining theoretical foundations with hands-on applications, learners will be well-prepared to navigate the intersection of data science and business analytics.
Syllabus
- Introduction to Data Analysis
- This week, you’ll learn the impact of data analysis and its elements on business. Also, the diferences of variables, measurement scales and types of data analysis.
- Organizing and Visualizing Data
- This week, you’ll learn how to tell something through data. Managing data in graphs and tables, and the principals pitfalls about data visualization.
- Descriptive measures: univariate and bivariate
- This week, you’ll learn how to deal with data and how to describe data in terms of some parameters: the differences between dispersion and central tendcy measures.
- Statistical Inference
- In this week you will see some probability principles which are linked with datasets and data visualization. Also, statistical principles which are applied in data analysis.
- Regression Analysis
- In this week you will see topics in linear regressions. Regression analysis is used to investigate the relationship between two or more variables. Often used in predicting some characteristic using one or more independent variables .
Taught by
Fabiana Cherubim Bortoleto
Tags
Related Courses
Statistics in MedicineStanford University via Stanford OpenEdx Introduction to Statistics: Inference
University of California, Berkeley via edX Probability - The Science of Uncertainty and Data
Massachusetts Institute of Technology via edX Statistical Inference
Johns Hopkins University via Coursera Explore Statistics with R
Karolinska Institutet via edX