Data-driven Decision Making
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Data-driven Decision Making
This course is part of Data Analysis and Presentation Skills: the PwC Approach Specialization
Instructor: Alex Mannella
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6,192 reviews
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There are 4 modules in this course
Welcome to Data-driven Decision Making. In this course, you'll get an introduction to Data Analytics and its role in business decisions. You'll learn why data is important and how it has evolved. You'll be introduced to βBig Dataβ and how it is used. You'll also be introduced to a framework for conducting Data Analysis and what tools and techniques are commonly used. Finally, you'll have a chance to put your knowledge to work in a simulated business setting.
This course was created by PricewaterhouseCoopers LLP with an address at 300 Madison Avenue, New York, New York, 10017.
In this module, you'll learn the basics of data analytics and how businesses use to solve problems. You'll learn the value data analytics brings to business decision-making processes. Weβll introduce you to a framework for data analysis and tools used in data analytics. Finally, weβre going to talk about careers and roles in data analytics and data science. Note: Video transcripts are auto generated and may contain spelling and punctuation errors.
What's included
11 videos8 readings1 assignment2 discussion prompts
11 videosβ’Total 57 minutes
- Specialization overviewβ’7 minutes
- Welcome to Data Driven Decision Makingβ’3 minutes
- What is Data Analytics?β’7 minutes
- Solving business problems using data analyticsβ’5 minutes
- Making business-defining decisions using data analyticsβ’4 minutes
- Why do you need a data and analytics framework?β’4 minutes
- The 4 aspects of the data and analytics frameworkβ’4 minutes
- Data and analytics framework: tools and techniquesβ’12 minutes
- Make better and faster decisions with data and analyticsβ’4 minutes
- Data and analytics at PwCβ’6 minutes
- Week 1 recap with Amity and Mikeβ’1 minute
8 readingsβ’Total 90 minutes
- Course overview and syllabusβ’10 minutes
- Updating your profileβ’10 minutes
- The value delivered by analyticsβ’10 minutes
- PwC's Global Data and Analytics Survey 2016β’10 minutes
- The data and analytics frameworkβ’10 minutes
- Types of analyticsβ’10 minutes
- Careers and roles in a professional services firmβ’20 minutes
- Learn more about PwC and our career opportunitiesβ’10 minutes
1 assignmentβ’Total 15 minutes
- Week 1 Quizβ’15 minutes
2 discussion promptsβ’Total 20 minutes
- Get to know your classmates and share your goalsβ’10 minutes
- Making better and faster decisionsβ’10 minutes
This module is an introductory look at big data and big data analytics where you will learn the about different types of data. Weβll also introduce you to PwC's perspective on big data and explain the impact of big data on businesses. Finally we will name some of the different types of tools and technologies used to gather data.
What's included
7 videos3 readings1 assignment4 discussion prompts
7 videosβ’Total 53 minutes
- The marketplace and emerging trends in big data analyticsβ’11 minutes
- Business impacts of technology advancements and data trendsβ’9 minutes
- What is Big Data?β’12 minutes
- PwC's perspective on big dataβ’6 minutes
- Data and analytics examples at PwCβ’5 minutes
- Identifying, organizing and processing dataβ’8 minutes
- Week 2 recap with Amity and Mikeβ’2 minutes
3 readingsβ’Total 40 minutes
- "Structured", "Semi-Structured", and "Unstructured" dataβ’10 minutes
- Implications of unstructured data - Case studiesβ’20 minutes
- Data tools and technologiesβ’10 minutes
1 assignmentβ’Total 15 minutes
- Week 2 Quizβ’15 minutes
4 discussion promptsβ’Total 40 minutes
- Predicting the implications of technology advancementsβ’10 minutes
- What technology advacements have changed your behaviors?β’10 minutes
- Data in action discussionβ’10 minutes
- What is the value you can expect from emerging trends in big data?β’10 minutes
In this module we will describe some of the tools for data analytics and some of the key technologies for data analysis. We will talk about how visualization is important to the practice of data analytics. Finally we will identify a variety of tools and languages used and consider when those tools are best used.
What's included
8 videos2 readings1 assignment1 discussion prompt
8 videosβ’Total 38 minutes
- Types of data analysis techniquesβ’10 minutes
- The role of Excelβ’3 minutes
- The role of SASβ’2 minutes
- The role of Rβ’6 minutes
- The role of Pythonβ’6 minutes
- The Power of Visualizationβ’4 minutes
- The role of QlikViewβ’5 minutes
- Week 3 recap with Amity and Mikeβ’2 minutes
2 readingsβ’Total 20 minutes
- Data analysis approaches and techniquesβ’10 minutes
- A Business Example of Data Visualization Toolsβ’10 minutes
1 assignmentβ’Total 15 minutes
- Week 3 quizβ’15 minutes
1 discussion promptβ’Total 10 minutes
- What tools have you used?β’10 minutes
The course project will give you an opportunity to practice what you have learned. You will participate in a simulated business situation in which you will select the best course of action. You will then prepare a final deliverable which will be evaluated by your peers. Additionally, you will have the opportunity to provide feedback on your peer's submissions.
What's included
2 videos2 readings1 assignment1 peer review
2 videosβ’Total 5 minutes
- Intro to Week 4 and Course Projectβ’2 minutes
- Course recap with Amity and Mikeβ’3 minutes
2 readingsβ’Total 20 minutes
- Final course simulationβ’10 minutes
- Learn more about PwC and our career opportunitiesβ’10 minutes
1 assignmentβ’Total 10 minutes
- Final course simulation quizβ’10 minutes
1 peer reviewβ’Total 90 minutes
- Final Project and Peer Review with Feedbackβ’90 minutes
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Reviewed on May 12, 2020
So glad of this course as it gave me clear knowledge on types of analysis and techniques, as well as channels/technologies into which we can innovate and leverage on big data to insights.
Reviewed on May 29, 2020
Great course for anyone who wants to learn the frameworks for problem solving with data, and for those who want to learn about the use cases of tools like Python, R, SAS, and many other tools
Reviewed on Aug 15, 2018
This is a great course in data and analytics for the every day professional. It gives great insight into how data and analytics can support decision making. The mode of delivery of the course is e
Frequently asked questions
You'll learn how organizations use data and analytics to make better business decisions, and how to approach a problem with a clear analysis framework. It starts with what data analytics is and why it matters, then moves into big data, common analysis approaches, and the role of tools and visualization. You'll apply those ideas in a simulated business setting and a final project where you outline a data analysis plan.
No, prior analytics experience isn't expected here, and it doesn't appear to assume programming experience. It begins with the basics of data, analytics, and business decision-making before introducing common tools and techniques. Lessons on tools like Excel and Python are presented as part of the landscape, not as skills you're expected to already have.
Yes, it's a good fit if you're new to data analytics and want to understand how it supports business decisions. The course uses short lessons, readings, and quizzes to explain the ideas before asking you to apply them in a simulation and final project. If you're looking for deep statistical modeling or coding practice, this one will feel more introductory than technical.
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Financial aid available,
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