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In diesem Kurs gibt es 4 Module
This four-module course gives you a clear, practical foundation in Generative AI from what it is and where it’s used, to how modern models work and how to apply them responsibly. You’ll start with the big picture: GenAI capabilities across text, image, audio, and video, plus real-world industry applications. Then you’ll dive into the science behind today’s Large Language Models: text representation (tokenization, embeddings), and the Transformer architecture (positional encoding, self-attention, encoder/decoder flow).
Next, you’ll get hands-on with LLMs and workflows: crafting effective prompts, calling models via web/UI and APIs, running models locally (e.g., via Ollama), and extending capabilities with Retrieval-Augmented Generation (RAG) and fine-tuning. Finally, you’ll examine challenges and responsible practice, including copyright, privacy and security, explainability, and questions of ownership in the GenAI era.
Designed for learners with basic Machine Learning and Python familiarity, the course blends short lessons with labs, quizzes, and exercises. By the end, you’ll understand the core concepts and architectures behind GenAI with a strong sense in ethical and responsible use and GenAI limitations.
By the end of this course, learners will be able to:
Explain how generative AI spans text, image, audio, and video and assess real industry workflows where it creates value.
Trace the evolution of language modeling from probabilistic/NLP approaches to Transformers, and justify why attention overcomes prior limitations.
Understand tokenization and word embeddings, and reason about how these representations affect model behavior.
Decompose a Transformer block and follow tensors, through self-attention, MLPs, and normalization to explain how representations are formed and refined.
Operate LLMs via web UIs, APIs, and locally with Ollama to write minimal inference code and improve outputs using prompt patterns and get familiar with concepts of RAG and Fine-Tuning as possible next steps.
Identify, analyze, and explain LLMs shortcomings such as bias, hallucination, ownership, and prompt injection by formulating user-level guidelines, organizational processes, and governance policies.
In the first week of the course, we begin with the most fundamental question: What is Generative AI? From there, we explore the scope of Gen-AI projects and examine the most popular applications for various tasks. Learners will discover how Gen-AI is transforming industries and driving change in sectors such as healthcare, business, and finance. We then provide a high-level overview of the science behind these technologies, preparing participants for more technical concepts.
Das ist alles enthalten
20 Videos4 Aufgaben
Infos zu Modulinhalt anzeigen
20 Videos•Insgesamt 119 Minuten
Course Introduction•5 Minuten
Meet your instructor: Soroush Razavi•1 Minute
Meet your instructor: Amreen Anbar•2 Minuten
What is Generative AI?•5 Minuten
Applications of Chatbots•8 Minuten
Applications of Image Models•6 Minuten
Applications of Audio Models•7 Minuten
Applications of Video Models•6 Minuten
GenAI in Healthcare•6 Minuten
GenAI in Education and Training•8 Minuten
GenAI in Creative Industries•7 Minuten
GenAI in Media and Entertainment•4 Minuten
How Does Generative AI Work?•8 Minuten
Multimodal Generative AI•8 Minuten
Generative AI vs Discriminative AI•8 Minuten
Generative AI Model: GANs•8 Minuten
Generative AI Model: Transformer-Based Models•6 Minuten
Generative AI Model: Diffusion Models•8 Minuten
Generative AI Model: VAEs•7 Minuten
Module 1 Recap•2 Minuten
4 Aufgaben•Insgesamt 160 Minuten
Lesson 1 Quiz•30 Minuten
Lesson 2 Quiz•30 Minuten
Lesson 3 Quiz•30 Minuten
Module 1 Quiz•70 Minuten
NLP Essentials
Modul 2•5 Stunden abzuschließen
Moduldetails
This module grounds learners in Natural Language Processing from its roots to the present. You’ll examine how language is represented and why these steps matter. Building on that foundation, the module demystifies the Transformer, covering positional encoding, self-attention, and multi-head attention. By the end, you’ll understand the end-to-end mechanics that power today’s chatbots.
Das ist alles enthalten
18 Videos4 Aufgaben
Infos zu Modulinhalt anzeigen
18 Videos•Insgesamt 125 Minuten
Module 2 Introduction•2 Minuten
What is NLP?•7 Minuten
Evolution of NLP (Part 1)•9 Minuten
Evolution of NLP (Part 2)•6 Minuten
Probabilistic Models in NLP•10 Minuten
Transition From RNNs to Transformers•8 Minuten
Text PreProcessing and Tokenization•7 Minuten
Why Do We Need Text Representation?•9 Minuten
One-Hot Encoding & Bag of Words•5 Minuten
Word2Vec to Contextual Embedding•7 Minuten
Origins of Transformers•8 Minuten
How Transformers Work? •9 Minuten
Positional Encoding•9 Minuten
Self-Attention•6 Minuten
Multi-Head and Masked Multi-Head Attention•8 Minuten
Encoder and Decoder •6 Minuten
Different Types of Transformers•7 Minuten
Module 2 Recap•2 Minuten
4 Aufgaben•Insgesamt 150 Minuten
Lesson 1 Quiz•30 Minuten
Lesson 2 Quiz•10 Minuten
Lesson 3 Quiz•30 Minuten
Module 2 Quiz•80 Minuten
Practical use of LLMs
Modul 3•3 Stunden abzuschließen
Moduldetails
This module explores how you can turn your ideas into GenAI applications and explores the open-source vs. proprietary model ecosystem. You will get hands-on experience by making API calls to cloud models and running open-source models locally with Ollama. Finally, you will master the complete reliability toolkit, moving from advanced prompt engineering to Retrieval-Augmented Generation (RAG) and fine-tuning.
Das ist alles enthalten
14 Videos2 Lektüren4 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
14 Videos•Insgesamt 73 Minuten
Module 3 Introduction•1 Minute
Transformer or LLM?•4 Minuten
Gen-AI Can Solve Your Daily Challenges•5 Minuten
Turning Ideas into Apps: The GenAI Builder’s Path•9 Minuten
Towards More Reliable LLMs: A Guide to Enhanced Outputs•5 Minuten
Prompt Engineering: The Fundamentals•7 Minuten
Prompt Engineering: Techniques and Applications•6 Minuten
Beyond Prompt Engineering: RAG•6 Minuten
Beyond Prompt Engineering: Fine Tuning•7 Minuten
Module 3 Recap•2 Minuten
2 Lektüren•Insgesamt 20 Minuten
How to Get Private Key•10 Minuten
How to Choose LLM?•10 Minuten
4 Aufgaben•Insgesamt 100 Minuten
Lesson 1 Quiz•10 Minuten
Lesson 2 Quiz•10 Minuten
Lesson 3 Quiz•20 Minuten
Module 3 Quiz•60 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
Think about how you can use GenAI to make your daily challenges easier•10 Minuten
Ethical Considerations and Responsible Development in AI
Modul 4•4 Stunden abzuschließen
Moduldetails
Module 4 directly addresses the growing concerns around using Gen AI by focusing on Generative AI's challenges and the principles of Responsible AI. We will investigate critical limitations like bias and hallucinations and explore their mitigations. This module also covers complex issues surrounding intellectual property, data privacy, and ownership, as well as the role of Explainable AI (XAI) in building secure and trustworthy systems.
Das ist alles enthalten
17 Videos4 Aufgaben
Infos zu Modulinhalt anzeigen
17 Videos•Insgesamt 109 Minuten
Module 4 Introduction•2 Minuten
Limitations of LLMs: Bias•8 Minuten
Limitations of LLMs: Hallucination•4 Minuten
Ownership in Generative AI•6 Minuten
Toward Responsible AI and Explainability•7 Minuten
Algorithmic Bias and Fairness: Analysis and Examples•8 Minuten
Algorithmic Bias and Fairness: Methodologies for Mitigation •5 Minuten
AI Hallucinations: Documented Occurrences and Statistical Perspectives •8 Minuten
AI Hallucinations: Remediation•7 Minuten
Prompt Hacking: Exploiting AI Behavior•9 Minuten
Prompt Hacking: Mitigation •8 Minuten
Imitating Artistic Style: In There a Difference?•6 Minuten
Intellectual Property and Generative AI: Strategic Approaches•6 Minuten
Technical and Theoretical Solutions to Copyright Infringement•7 Minuten
Privacy Preservation in AI Systems: Advanced Techniques for Data Protection•6 Minuten
Ethical AI Frameworks •9 Minuten
Course Wrap up•3 Minuten
4 Aufgaben•Insgesamt 160 Minuten
Lesson 1 Quiz•20 Minuten
Lesson 2 Quiz•30 Minuten
Lesson 3 Quiz•30 Minuten
Module 4 Quiz•80 Minuten
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