Introduction to Accounting Data Analytics and Visualization

Coursera Courses ↗ · Coursera

Open Course on Coursera

Free to audit · Opens on Coursera

Introduction to Accounting Data Analytics and Visualization

Coursera · Beginner ·📊 Data Analytics & Business Intelligence ·1mo ago
Accounting has always been about analytical thinking. From the earliest days of the profession, Luca Pacioli emphasized the importance of math and order for analyzing business transactions. The skillset that accountants have needed to perform math and to keep order has evolved from pencil and paper, to typewriters and calculators, then to spreadsheets and accounting software. A new skillset that is becoming more important for nearly every aspect of business is that of big data analytics: analyzing large amounts of data to find actionable insights. This course is designed to help accounting students develop an analytical mindset and prepare them to use data analytic programming languages like Python and R. We’ve divided the course into three main sections. In the first section, we bridge accountancy to analytics. We identify how tasks in the five major subdomains of accounting (i.e., financial, managerial, audit, tax, and systems) have historically required an analytical mindset, and we then explore how those tasks can be completed more effectively and efficiently by using big data analytics. We then present a FACT framework for guiding big data analytics: Frame a question, Assemble data, Calculate the data, and Tell others about the results. In the second section of the course, we emphasize the importance of assembling data. Using financial statement data, we explain desirable characteristics of both data and datasets that will lead to effective calculations and visualizations. In the third, and largest section of the course, we demonstrate and explore how Excel and Tableau can be used to analyze big data. We describe visual perception principles and then apply those principles to create effective visualizations. We then examine fundamental data analytic tools, such as regression, linear programming (using Excel Solver), and clustering in the context of point of sale data and loan data. We conclude by demonstrating the power of data analytic programming langu
Watch on Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

Day 43: Hypothesis Testing & Statistical Analysis — Understanding How Data Makes Decisions
Learn hypothesis testing and statistical analysis to make data-driven decisions
Medium · AI
Day 43: Hypothesis Testing & Statistical Analysis — Understanding How Data Makes Decisions
Learn hypothesis testing and statistical analysis to make data-driven decisions
Medium · Machine Learning
DSPM: The Missing Piece For A Successful DLP Project
Learn how Data Security Posture Management (DSPM) is crucial for a successful Data Loss Prevention (DLP) project and its role in the future of data security
Forbes Innovation
Before You Touch Data: Business Understanding & Data Collection
Understand the business context before collecting data for analytics to ensure effective decision-making
Medium · Data Science
Up next
Tableau Full Course 2026 [FREE] | Tableau Data Visualization Course | Tableau Tutorial | Simplilearn
Simplilearn
Watch →