Data Science for Business Leaders: ML Fundamentals
Offered By: Udemy
Course Description
Overview
What you'll learn:
- Learn what models are, how they work, and how they fit in the overall picture of machine learning (ML) and data science.
- Lots of terminology ("AI", "deep learning", etc.); plain and simple explanations (without the hype).
- Fair warning: NO hands-on model development (NO code & NO complex formulas)
- Includes sections dedicated to *identifying* and *quantifying* machine learning opportunities.
- Focused on understanding ML as a capability that can benefit any business.
Machine learning is a capability that business leaders should grasp if they want to extract value from data. There's a lot of hype; but there's some truth: the use of modern data science techniques could translate to a leap forward in progress or a significant competitive advantage. Whether your are building or buying "AI-powered" solutions, you should consider how your organization could benefit from machine learning.
No coding or complex math. This is not a hands-on course. We set out to explain all of the fundamental concepts you'll need in plain English.
This course is broken into 5 key parts:
Part 1: Models, Machine Learning, Deep Learning, & Artificial Intelligence Defined
This part has a simple mission:to give you a solid understanding of what Machine Learning is. Mastering the concepts and the terminology is your first step to leveraging them as a capability. We walk through basic examples to solidify understanding.
Part 2: Identifying Use Cases
Tired of hearing about the same 5 uses for machine learning over and over? Not sure if ML even applies to you? Take some expert advice on how you can discover ML opportunities in *your* organization.
Part 3: Qualifying Use Cases
Once you've identified a use for ML, you'll need to measure and qualify that opportunity. How do you analyze and quantify the advantage of an ML-driven solution? You do not need to be a data scientist to benefit from this discussion on measurement. Essential knowledge for business leaders who are responsible for optimizing a business process.
Part 4: Building an ML Competency
Key considerations and tips on building / buying ML and AI solutions.
Part 5: Strategic Take-aways
A view on how ML changes the landscape over the long term; and discussion of things you can do *now* to ensure your organization is ready to take advantage of machine learning in the future.
Taught by
Robert Fox
Related Courses
Introduction to Artificial IntelligenceStanford University via Udacity Natural Language Processing
Columbia University via Coursera Probabilistic Graphical Models 1: Representation
Stanford University via Coursera Computer Vision: The Fundamentals
University of California, Berkeley via Coursera Learning from Data (Introductory Machine Learning course)
California Institute of Technology via Independent