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GenAI and AI Security – Frameworks and Best Practices
Score 4,2 van de 5(238 scores)
1.221 studenten
Laatst bijgewerkt: 5-2026
Engels

Wat je leert

  • Master the foundational principles and best practices for integrating Generative AI in cybersecurity.
  • This course uses 1–2 minute byte-sized concept videos with additional materials in each chapter, so please enroll only if you are comfortable with this format.
  • Practitioners who derive insights from research papers, case studies, and foundational concepts
  • Become aware about AI, ML, and deep learning, focusing on their applications in various industries, including a case study on Tesla Autopilot.
  • Study the intersection of AI/ML and cybersecurity, understanding ethical considerations and potential risks with examples from real-world scenarios.
  • Explore the latest trends as per industry reports like those from Gartner.
  • Delve into typical cloud-based and AI-specific cybersecurity architectures, learning how they differ and why they're essential.
  • Develop strategies for managing AI data privacy, including data quality, governance, and lifecycle management.
  • Learn about AI risk management frameworks like NIST AI RMF, and explore case studies on navigating AI risks.
  • Understand key AI controls and policies, including the CIA Triad, OWASP AI vulnerabilities, and AI governance frameworks.
  • Gain knowledge about auditing AI systems, understanding components of compliance, and readiness comparisons.
  • Explore various AI regulatory frameworks, including the EU AI Act, GDPR, and ethical AI frameworks by OECD.
  • Understand the security implications of Generative AI, exploring defenses, future challenges, and opportunities.
  • Learn about innovative GenAI solutions and opportunities, including custom LLM implementations and industry-specific applications.
  • Understand how AI can be used to enhance governance practices and develop frameworks for low-risk AI adoption.
  • Study key controversies and ethical issues in AI, as outlined by UNESCO and other bodies, to inform responsible AI practices.

Cursusinhoud

17 secties171 collegesTotale lengte van 6u 45m
  • GenAI and Cybersecurity – Frameworks and Best Practices V12:16

    Introduction to the course and Instructors

  • AI in 5 mins4:28

    Grasp essential AI concepts in a condensed 5-minute overview

  • AI Key Trends2:57

    Timeline of AI Progress / Key Milestones

  • ML vs Deep Learning vs GenAI vs Human Intelligence2:32

    Comparative analysis of capabilities and limitations across ML, Deep Learning, GenAI, and human intelligence

  • Vision – Text – Modern AI Systems2:54

    Timeline of Models in Vision / NLP

  • AI Automation Levels2:38

    Classification framework for different levels of AI automation and their operational implications

  • ML / DL / GenAI3:20

    Differentiate between Machine Learning, Deep Learning, and Generative AI

  • Strategic AI Use Cases1:28

    Real-world applications and implementations of AI across industries

  • Computer Vision Applications0:46

    Explore computer vision applications and their implementations

  • Test Autopilot1:17

    How Tesla Autopilot leverages Vision models for lane, pedestrians, Signs, CNN + Segmentation in Action

  • Tesla Autopilot - Anamoly0:49

    How AI systems handle unexpected situations and edge cases

  • Detection vs Common Sense1:03

    Understanding the gap between AI detection capabilities and human reasoning

  • Coca-Cola's AI Holiday Ad: Tradition vs. Innovation1:46

    GenAI Marketing in Action, Vision models recreating Ad Campaign. Is this going to be the Future Trend ?

  • GenAI Business Adoption Trends1:35

    Current market trends and adoption patterns in AI technology

  • Knowledge Check - AI Fundamentals

Vereisten

  • Those with a basic, working knowledge of AI/ML and GenAI technologies (Not for beginners)
  • This course uses 1–2 minute byte-sized concept videos with additional materials in each chapter, so please enroll only if you are comfortable with this format.
  • Professionals who are involved in or supporting GenAI initiatives at work / Enroll only if you have practical knowledge
  • People who actively follow real-world AI/GenAI developments and use cases across industries
  • Individuals who have worked with or alongside AI/ML teams and understand practical applications
  • Security teams actively involved in GenAI initiatives or supporting projects that integrate AI/ML into products or workflows
  • People interested in translating GenAI risks into actionable security controls, playbooks, or architecture
  • Not Recommended for Complete beginners with no exposure to AI/GenAI projects
  • Not Recommended for Theoretical or academic professionals without hands-on or applied experience

Beschrijving

Welcome to GenAI & AI Security – Frameworks and Best Practices for Responsible AI Adoption

Generative AI is transforming how products are built, decisions are made, and businesses operate. This course is designed for practitioners who want to move beyond hype and understand how to adopt GenAI responsibly, securely, and meaningfully.

More from a practitioner’s experience, drawing on research papers, core ideas, and real-world outcomes. It's not to aim a perfect recipe but provide moments of learning and useful directions. Don’t think of this as classroom-style coaching. It’s more about experience sharing and perspective alignment. That’s the blend, an industry practitioner’s perspective.

AI can amplify productivity, creativity, and automation but only when grounded in data, domain understanding, guardrails, and governance. This course uses 1–2 minute byte-sized concept videos with additional materials in each chapter, so please enroll only if you are comfortable with this format. I would rather be an imperfect teacher than a perfect LLM AI Avatar, Mistakes make us human :)

This Udemy course venture is more of summary of my daily blogs, research papers, ideas at work. This is not a perfect recipe but more of sharing a practitioners perspective across implementation of use cases.

What This Course Is (and Isn’t)

Bad AI use cases

  • AI suggesting layoffs

  • AI replacing human judgment in sales or hiring

  • Emotion detection without context or ethics

Responsible AI use cases

  • Knowledge assistants for FAQs and decision support

  • AI-assisted writing and summarization

  • Automated information processing (OCR, multimodal), with humans in control

Responsible AI isn’t about banning technology, it’s about using it with intent, limits, and accountability.

What You’ll Learn

By the end of this course, you’ll understand:

  • Core concepts: AI, ML, DL, GenAI

  • Cybersecurity risks in AI/ML systems

  • AI ethics, privacy, and data governance

  • AI risk & threat management using NIST AI RMF

  • AI controls, audits, compliance, and regulations (EU AI Act, GDPR, OECD)

  • Generative AI & LLM security: risks, biases, defenses

  • Real-world case studies across industries

  • Practical frameworks for low-risk, responsible AI adoption

How This Course Helps You

  • Build an AI lens to map your domain and data

  • Ask better AI solution questions,  with clarity and required technical depth

  • Identify where to focus: GenAI PM · GenAI Development · Fine-tuning · Agents · Text-to-SQL · Vision · Domain-specific use cases

  • Distinguish hands-on expertise vs opinions vs hype

  • Evaluate AI systems using benchmarks, guardrails, and evidence

A practitioner-led AI experience, where ideas, logic, research, and real-world adoption come together.

Support & Mentorship

At any point during the course, you’re welcome to reach out for 1-on-1 discussions, project ideation, reviews, or mentoring.

Not recommended for beginners.
This course won’t make you an expert overnight but it will help you ask better, use-case-driven questions and evaluate AI systems with clarity and responsibility.

Before You Enroll

This course is for practitioners who care about thoughtful, responsible GenAI adoption. There’s no single “right” answer, what matters is your approach, perspective, and willingness to explore trade-offs. If that resonates with you you’ll feel at home here.

You’ll Get Lifetime Access To

  • Comprehensive video lessons

  • Real-world case studies

  • Practical exercises and projects

  • Up-to-date industry insights

If you’re making AI decisions without a clear risk, ROI, and governance lens, this course will change how you think

Enroll if you want to move from AI curiosity → responsible, real-world capability.

Build responsibly. Think critically. Deploy with control.

Happy learning.

Voor wie is deze cursus bedoeld:

  • Product Managers: Ideal for those adopting LLM-based solutions, this course will help you enhance product development and ensure secure implementation.
  • Data Scientists: Perfect for professionals aiming to integrate GenAI with data-driven projects, manage biases, and mitigate security risks effectively.
  • Cybersecurity Teams: Essential for cybersecurity and CISO teams involved in AI/ML and GenAI adoption, focusing on securing AI initiatives and understanding emerging threats.
  • Business Leaders and Executives: Beneficial for business leaders and executives targeting GenAI-based use case adoption, driving innovation while maintaining compliance and security.
  • Innovative Problem Solvers: Suited for creative thinkers who enjoy tackling complex challenges with cutting-edge technology and AI-driven solutions.
  • IT Professionals: Crucial for IT experts responsible for managing and securing AI infrastructure, ensuring robust cybersecurity measures are in place.
  • AI Enthusiasts and Tech Innovators: Great for individuals passionate about AI, looking to stay updated with the latest trends and advancements in Generative AI and cybersecurity.
  • Compliance Officers and Legal Experts: Valuable for professionals overseeing compliance and regulatory aspects, providing insights into AI frameworks, policies, and ethical considerations.