In this course, you’ll learn how generative AI systems evolve from tools into more autonomous, goal-driven systems—and what that means for how they are built, evaluated, and used in the real world. You’ll explore how foundational models, feedback loops, tools, and memory combine to create agent-like behavior, and how modern AI systems are designed as coordinated “teams” rather than single models. Along the way, you’ll examine how AI is being applied in areas like scientific discovery and complex workflows, while also learning how to evaluate performance, manage risk, and design systems responsibly. By the end of the course, you’ll be able to think like an orchestrator—someone who can guide, oversee, and safely deploy increasingly capable AI systems in your field.
In this module, you’ll learn how modern generative AI systems are built and how their capabilities are measured. You’ll explore foundational ideas like transformers, scaling, fine-tuning, and reinforcement learning, and see how these shape what models can and cannot do. You’ll also examine how AI is evaluated—through benchmarks, human judgment, and long-horizon tasks—and why strong scores don’t always translate to real-world reliability. Finally, you’ll explore how feedback loops enable systems to improve over time, and begin thinking about when (and if) these systems should be trusted to act more autonomously.
Inclus
6 vidéos3 lectures1 devoir
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6 vidéos•Total 63 minutes
Course Overview•10 minutes
Generative AI Refresher •16 minutes
Overview•2 minutes
Foundational Models•15 minutes
Measuring Capability•9 minutes
Intelligence as a process•10 minutes
3 lectures•Total 30 minutes
Reference: GenAI Tools Handout•10 minutes
What Changes When Models Scale? (Trends, Tradeoffs, and Misread Signals)•10 minutes
Evaluation in Practice •10 minutes
1 devoir•Total 30 minutes
When Is a System Ready for Autonomy?•30 minutes
What Makes an Agent an Agent: From Tasks to Objectives
Module 2•2 heures à terminer
Détails du module
In this module, you’ll learn what makes an AI system an “agent” rather than just a tool. You’ll explore how agents operate over time by combining reasoning, memory, tools, planning, and verification into a continuous loop. You’ll also learn how agents “sense” and respond to changing information, and why that matters for real-world applications. A key focus will be thinking of agents as coordinated teams—with roles like planner, executor, and evaluator—and understanding where human oversight must remain in place. By the end, you’ll have a clear mental model for how agents differ from prompts and workflows.
Inclus
3 vidéos3 lectures1 devoir
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3 vidéos•Total 33 minutes
Overview•2 minutes
From Tasks to Objectives•19 minutes
Sensing, Skills, and State•12 minutes
3 lectures•Total 30 minutes
Prompt vs Workflow vs Agent•10 minutes
How Agents Connect to the World•10 minutes
Where Agent Systems Break•10 minutes
1 devoir•Total 30 minutes
Autonomy or Oversight? Choosing the Right Boundaries•30 minutes
Agent Architectures, Multi-Model Workflows, and Orchestration
Module 3•1 heure à terminer
Détails du module
In this module, you’ll learn how agent systems are designed in practice. You’ll explore how different roles—like planning, reasoning, tool use, and evaluation—are structured into working systems, and why many real-world solutions rely on multiple specialized models instead of just one. You’ll examine how these systems are orchestrated, how tasks are routed between components, and how coordination affects performance, cost, and reliability. Through examples and case studies, you’ll shift from thinking about prompts to thinking about systems—and learn why orchestration and verification are the key skills for advanced AI use.
Inclus
3 vidéos2 lectures1 devoir
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3 vidéos•Total 16 minutes
Overview•2 minutes
Architecting Agents•7 minutes
Multi-Model Workflows•7 minutes
2 lectures•Total 20 minutes
Architecture Pattern Cards•10 minutes
Case Studies in Orchestration (Modular Frameworks and Deployments)•10 minutes
1 devoir•Total 30 minutes
Scaling Up Without Falling Apart•30 minutes
The Limits of Agents Today: Verification, Security, and Governance
Module 4•2 heures à terminer
Détails du module
In this module, you’ll learn where today’s agent systems fall short—and why human oversight is still essential. You’ll explore common limitations like weak long-term planning, unreliable memory, and alignment challenges, and understand why autonomy does not equal understanding. You’ll also learn how to design safer systems by using verification, permission controls, and “guardrails” that limit what agents can do. Beyond the technical side, you’ll examine broader risks like bias, misuse, and security vulnerabilities, and learn how governance and responsible design play a critical role as AI systems become more capable.
Inclus
3 vidéos4 lectures1 devoir
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3 vidéos•Total 29 minutes
Overview•2 minutes
The Limits of Agents•19 minutes
Security Leashes•8 minutes
4 lectures•Total 40 minutes
Limits of Agents Today + Likely Near-Term Improvements•10 minutes
Verification & Validation for Agentic Work•10 minutes
Moltbook•10 minutes
Policy & Governance Snapshot (EU / US and Emerging Guidance)•10 minutes
1 devoir•Total 30 minutes
Design the Leash — Safe Autonomy Under Pressure•30 minutes
Scientific Discovery, Simulation, and Emerging Research Directions
Module 5•1 heure à terminer
Détails du module
In this module, you’ll learn how generative AI is being used beyond productivity—to accelerate scientific discovery and innovation. You’ll explore real-world examples in areas like biology and materials science, and see how AI can support hypothesis generation, simulation, and experimentation. You’ll also be introduced to emerging ideas like world models, which combine memory, simulation, and planning to enable more advanced reasoning. Rather than focusing on predictions about AGI, this module will help you understand the building blocks of more general capabilities and how to interpret ongoing research trends.
Inclus
4 vidéos2 lectures1 devoir
Afficher les informations sur le contenu du module
4 vidéos•Total 32 minutes
Overview•2 minutes
AI for Discovery•11 minutes
V&V in Scientific AI•10 minutes
World Models•9 minutes
2 lectures•Total 20 minutes
Case Studies in AI-Accelerated Science (AlphaFold, Materials, Drug Discovery)•10 minutes
Competing Views on “General Capability” Without Timelines•10 minutes
1 devoir•Total 30 minutes
Is This “Discovery,” “Automation,” or “Speculation”?•30 minutes
Working Alongside AI in an AI-Augmented Society
Module 6•1 heure à terminer
Détails du module
In this module, you’ll learn how to position yourself in a world shaped by increasingly capable AI systems. You’ll explore where human skills—like judgment, oversight, coordination, and ethical decision-making—remain essential, even as automation increases. You’ll revisit the idea that AI capability often advances faster than adoption, and learn how that gap creates opportunities for those who can safely deploy and manage these systems. By the end, you’ll develop a clearer sense of how to work alongside AI strategically—focusing not on competing with it, but on using it to enhance your value.
Inclus
5 vidéos3 lectures1 devoir
Afficher les informations sur le contenu du module
5 vidéos•Total 25 minutes
Overview•2 minutes
Your Job Isn’t “Competing With AI”•7 minutes
Human-in-the-Loop Isn’t a Buzzword•8 minutes
Prepare Without Panic•7 minutes
Wrap Up— Your Role in an AI-Accelerated World•2 minutes
3 lectures•Total 30 minutes
Capability vs Adoption in the Real World•10 minutes
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Étudiant(e) depuis 2020
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Étudiant(e) depuis 2021
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