Udemy – AI foundations for business professionals
English | Tutorial | Size: 680.93 MB
A code-free intro to artificial intelligence, ML, & data science for professionals, marketers, managers, & executives
Full course outline:
—
Module 1: Demystifying AI
Lecture 1
A term with any definitions
An objective and a field
Excitement and disappointment
Lecture 2:
Introducing prediction engines
Introducing machine learning
Lecture 3
Prediction engines
Don’t expect ‘intelligence’ (It’s not magic)
Module 2: Building a prediction engine
Lecture 4:
What characterizes AI? Inputs, model, outputs
Lecture 5:
Two approaches compared: a gentle introduction
Building a jacket prediction engine
Lecture 6:
Human-crafted rules or machine learning?
Module 3: New capabilities… and limitations
Lecture 7
Expanding the number of tasks that can be automated
New insights –> more informed decisions
Personalization: when predictions are granular… and cheap
Lecture 8:
What can’t AI applications do well?
Module 4: From data to ‘intelligence
Lecture 9
What is data?
Structured data
Machine learning unlocks new insights from more types of data
Lecture 10
What do AI applications do?
Predictions and automated instructions
When is a machine ‘decision’ appropriate?
Module 5: Machine learning approaches
Lecture 11
Three definitions
Machine learning basics
Lecture 12
What’s an algorithm?
Traditional vs machine learning algorithms
What’s a machine learning model?
Lecture 13
Machine learning approaches
Supervised learning
Unsupervised learning
Lecture 14
Artificial neural networks and deep learning
Module 6: Risks and trade-offs
Lecture 15:
Beware the hype
Three drivers of new risks
Lecture 16
What could go wrong? Potential consequences
Module 7: How it’s built
Lecture 17
It’s all about data
Oil and data: two similar transformations
Lecture 18
The anatomy of an AI project
The data scientist’s mission
Module 8: The importance of domain expertise
Lecture 19:
The skills gap
A talent gap and a knowledge gap
Marrying technical sills and domain expertise
Lecture 20: What do you know that data scientists might not?
Applying your skills to AI projects
What might you know that data scientists’ not?
How can you leverage your expertise?
Module 9: Bonus module: Go from observer to contributor
Lecture 21
Go from observer to contributor
What you’ll learn
This course provides students with a broad introduction to AI, and a foundational understanding of what AI is, what it is not, and why it matters.
The main differences between building a prediction engine using human-crafted rules and machine learning – and why this difference is central to AI.
Three key capabilities that AI makes possible, why they matter, and what AI applications cannot yet do.
The types of data that AI applications feed on, where that data comes from, and how AI applications – with the help of ML – turn this data into ‘intelligence’.
The main principles behind the machine learning and deep learning approaches that power the current wave of AI applications.
Artificial neural networks and deep learning: the reality behind the hype.
Three main drivers of risks which are characteristic of AI, why they arise, and their potential consequences in a workplace environment.
An overview of how AI applications are built – and who builds them (with the help of extended analogy).
Why one of the biggest problems the AI industry faces today – a pronounced skills gap – represents an opportunity for students.
How to use their own knowledge, skills and expertise to provide valuable contributions to AI projects.
Students will learn how to build upon the foundations they learned upon in this course, to make the move from informed observer to valuable contributor.
Are there any course requirements or prerequisites?
None whatsoever. This course is designed to help complete beginners in the field of AI make the transition to informed participants in the workplace.
Who this course is for:
This course is accessible to anybody. I has been designed with a special focus on the requirements and objectives generally shared by individuals with the following roles:
Executives
Board members
Line of business managers
Analysts
Marketers
Other business professionals who want to engage with AI projects
Students and anyone contemplating a future in data science
RAPIDGATOR
rapidgator.net/file/9edac343986f29f33b4d6064ead7087c/UDEMY_-_AI_foundations_for_business_professionals.part1.rar.html
rapidgator.net/file/3891511e8abfffd4f08ae546fe1b314d/UDEMY_-_AI_foundations_for_business_professionals.part2.rar.html
NITROFLARE
nitroflare.com/view/AE6983A07211AE1/UDEMY_-_AI_foundations_for_business_professionals.part1.rar
nitroflare.com/view/00FC8767B4C4EE1/UDEMY_-_AI_foundations_for_business_professionals.part2.rar