Intro to Machine Learning & Deep Learning

Non-Technical Overview of ML & DL Fundamentals

Get under the hood of today’s smartest technologies — without writing a single line of code.

From recommendation engines to autonomous vehicles and voice assistants, machine learning (ML) and deep learning (DL) power some of the most impactful technologies of our time. Intro to Machine Learning & Deep Learning (Non-Technical) explains how these systems work in an intuitive, easy-to-understand way — no programming or math background required.

This course breaks down the logic behind how models learn from data, identify patterns, make predictions, and improve over time. Learners explore core differences between ML and DL, what neural networks are, how training and testing works, and how these models are applied in business, government, healthcare, and more. Key ethical issues, such as model bias and black-box challenges, are also discussed.

Designed for professionals, educators, and decision-makers seeking conceptual clarity, this course replaces technical complexity with practical understanding. You'll walk away equipped to discuss ML and DL intelligently, evaluate AI-powered tools, and support or oversee AI initiatives in your organization or field.

Course Content

Module 1: ML & DL Basics

Module 2: How ML Models Learn (Conceptual)

Module 3: Delving into Neural Networks (Non-Technical)

Module 4: Data & Ethical Considerations

Module 5: Practical ML/DL Use Cases

Module 6: Limitations & Future Outlook

 

expected Time: 6-8 hours

Complete Essentials Package

€ 15,-