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Data science has matured into a cross functional discipline. In simple terms, its main purpose is to extract meaningful information from a variety of data sources. This definition is very general and must be explored in more detail to understand the building blocks needed for success. Related workgroups must understand each other and work together to make meaningful impact.
Effective data science is a critical enabler for companies to become “data-driven” and to “compete on analytics”. To give shape to data science as a discipline, this course introduces core principles and concepts to provide a solid foundation of understanding. Data science is described in terms of its, purpose, capabilities, techniques, approaches and skills. It’s dependencies on other disciplines and how it enables value creation within the broader “data-driven” ecosystem is also provided.
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This course introduces data science and sets the stage for understanding how process, data, skills, culture, methodology and technical building blocks collectively drive results.
You will learn to:
- Key concepts in data science
- How data science relates to other related disciplines
- Practical data science process lifecycle steps
- Common data science tools, techniques and modeling categories
- Recommended data science approaches, methods and processes
- The data science process
- Critical success factors for data science
- Why organizational culture and data literacy are challenges that must be managed
This course is geared towards:
- Business managers and executives
- Technology managers and executives
- Data science and data engineering team members
- Business analysts, statisticians and modelers
- Process managers and decision makers
- Business measurement and performance analysts
- IT analysts and developers
- Data management analysts
- Technology and business architects
- Analytics, business intelligence, data science and data engineering program leaders
- Anyone with an interest in understanding the capabilities, opportunities and challenges offered by data science
About the Course (10 min)
Setting the Stage (60 min)
- Basic Concepts
- Value Chain Analysis
- Thinking Styles
- Research Methods
Introducing Data Science (49 min)
- Data Science Concepts
- Aspects of Science in Data Science
- Value Framework
- Module Summary
Being Data Driven (26 min)
- Pursuit of Value
- Data Driven Organizations
- Success Factors
Data and Technology Landscape (88 min)
- Big Data – The Open Catalyst
- Data Resources
- Data Management
- Discovery and Exploration
- Model Building
- Model Execution and Analysis
- Interpretation and Storytelling
Modeling and Analysis Techniques (55 min)
- Problem Framing
- Research Methods
- Modeling Techniques
- Model Deployment
Click
–here- to download a more detailed outline of this course.
This exam tests knowledge and understanding of basic concepts, principles, and terminology of data science projects.
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You will be tested in these areas:
- Elements of science and how they relate to data
- Human dimensions and thinking styles in data science
- Research methods
- Data science definitions and perspectives
- Disciplines and components of data science
- Business and organizational impacts of data science
- Data and technology in data science
- Data mining, predictive modeling, and prescriptive modeling
- Modeling techniques for data science
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Additional Information
Number of Questions: 25
Time Limit: 50 Minutes
Passing Score: 70%
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Once you pass the exam, you will receive a Certificate of Education
documenting that you have demonstrated mastery of the topic. Course
exams count towards eLC certification programs. Visit our Certification page for more information about our various programs.
We recommend that you take detailed notes and review the course material multiple times before taking this exam.
Click here to learn more about CIMP exams.
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