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الدورة 1 — الأساسيات

أساسيات الذكاء الاصطناعي

مقدمتك الشاملة للذكاء الاصطناعي. تعرّف على ماهية الذكاء الاصطناعي، وكيف يفكّر، وأين يوجد في العالم، وكيف تستخدمه بأمان — من خلال قصص حقيقية وأنشطة تطبيقية.

شهادات إتقان الذكاء الاصطناعي

الشهادة الأساسيات أرصدة الدورات الأساسية
(تُجدَّد كل 3 سنوات)
أرصدة الدورات النشطة
(تُجدَّد كل سنة)
المستوى الأول
محترف ذكاء اصطناعي معتمد
مقدمة+ 6
المستوى الثاني
محترف ذكاء اصطناعي متقدم معتمد
أساسي+ 12 6
المستوى الثالث
خبير ذكاء اصطناعي معتمد
متقدم 24 12
⚠ غير متوفر — هذه الدورات غير متوفرة بعد بهذه اللغة.
📡 AI Models
🔭 AI Progress
🎨 Art
💼 Business
⚙️ Development
📚 Core Courses
🎓
74 Courses Available
Welcome to the Course Catalog
Choose a course from the dropdown above to see its modules, progress, and details. Courses marked with a green dot are live and ready to start.
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🏛️
Core Course 1 of 18
AI Governance
Understand how AI is regulated, who makes the rules, and why it matters. Explore international policy frameworks, corporate accountability, and what responsible AI deployment looks like in practice.
Live 8 Modules
Course modules
M1
Defining AI Governance
What it is, what it isn't, and why the question matters more than the answer
M2
The World's First AI Law
How Europe decided to regulate AI — and what that means for everyone
M3
The US Approach
Voluntary frameworks, principles-based guidance, and the theory behind American AI policy
M4
China's AI Governance Framework
State-centric regulation, targeted rules, and a different theory of what AI governance means
M5
Corporate AI Governance Structures
How organizations govern AI internally — and the gap between policy and practice
M6
How AI Auditing Works
Technical audits, process audits, and outcome audits — and why each alone is insufficient
M7
What Corporate AI Policies Contain
The anatomy of a corporate AI policy — and why structure matters for reading critically
M8
Policy Drafting Fundamentals
How to write AI governance policy that creates real obligations — not just intentions
Enter Course →
🌐
Core Course 2 of 18
AI in Society
Explore how AI shapes jobs, laws, communities, and culture. Examine real-world case studies on bias, fairness, and the future of human-AI collaboration.
Live 8 Modules
Course modules
M1
AI Is Already Everywhere
Mapping the systems shaping your day before you notice them
M2
What AI Actually Does to Jobs
Task automation, labor market power, and what the evidence says
M3
Disinformation at Scale
How AI changes the production, spread, and detection of false information
M4
Facial Recognition and Biometric Surveillance
How AI identifies people at scale — and what that changes about being in public
M5
The Digital Divide and AI Access
Who gets AI's benefits — and who gets left out
M6
The Digital Divide and AI Access
Who gets the benefits of AI — and who gets left behind
M7
The Energy Cost of AI
What training and running AI actually costs the planet — and why the numbers are contested
M8
Forecasting AI — What We Know and Don't Know
How to think about AI's future without falling for hype or dismissal
Enter Course →
🎨
Core Course 3 of 18
AI & Creativity
Dive deep into generative AI for writing, art, music, and storytelling. Learn to collaborate with AI as a creative partner while protecting your original voice.
Coming Soon 8 Modules
Course modules
M1
How Generative AI Works
The models behind text, image, audio, and video generation
M2
AI & Writing
Using AI for drafting, editing, and storytelling — and its limits
M3
AI & Visual Art
Tools, techniques, and the authorship question
M4
AI & Music
From composition to production — how AI is changing music
M5
The Consent & Copyright Problem
Training data, style theft, and the legal gray zone
M6
Protecting Your Creative Voice
How to use AI without losing what makes your work yours
M7
AI as a Creative Partner
Workflow design for human-AI creative collaboration
M8
The Future of Creative Work
Economic and cultural implications of generative AI
In Development
⚖️
Core Course 4 of 18
AI Ethics & Decision-Making
Tackle the hard questions. Privacy, consent, algorithmic fairness, surveillance capitalism, and what it means to build AI responsibly.
Live 8 Modules
Course modules
M1
When Machines Decide
What it means for an AI system to make a decision — and who is responsible
M2
Surveillance at Scale
How AI-powered monitoring transforms the relationship between institutions and individuals
M3
The Consent You Never Gave
Data collection, inference, and the gap between what you share and what companies know
M4
The Professional's Dilemma
What engineers, designers, and researchers owe — to users, to the public, and to themselves
M5
AI and Democracy
How AI systems interact with elections, political discourse, and the conditions for democratic self-governance
M6
AI in Healthcare
Clinical decision support, diagnostic AI, and the ethics of machines in medicine
M7
Autonomous Systems and Moral Agency
What changes ethically when AI acts in the world — not just recommends, but decides and executes
M8
AI and Human Identity
What AI systems that simulate persons, relationships, and emotional connection change about what it means to be human
Enter Course →
🛠️
Core Course 5 of 18
Building with AI
Go from user to builder. Learn prompt engineering, AI tool integration, and how to design your own AI-powered projects — no coding required to start.
Live 8 Modules
Course modules
M1
Thinking Like a Builder
Mental models for designing AI-powered systems
M2
Prompt Engineering
Writing effective prompts for any task or model
M3
Working with APIs
How to connect AI tools to your own projects
M4
AI Tool Integration
Combining multiple AI tools into a working workflow
M5
Designing AI Products
UX, safety, and product design for AI-powered experiences
M6
Evaluating AI Output
How to test, validate, and improve what your AI produces
M7
Responsible Building
Ethics, safety, and accountability for AI builders
M8
Your First AI Project
A guided capstone to launch something real
Enter Course →
🚀
Core Course 6 of 18
AI Careers & Research
Explore career paths in AI research, policy, design, and engineering. Real profiles, skill roadmaps, and a capstone project to launch your future.
Coming Soon 6 Modules
Course modules
M1
The AI Career Landscape
Every major AI career path mapped out
M2
Technical Roles
ML engineering, data science, AI research — what each requires
M3
Policy & Governance Roles
AI policy analyst, ethicist, compliance — growing fast
M4
Creative & Design Roles
AI-adjacent creative careers and how to build them
M5
Reading AI Research
How to find, read, and evaluate AI papers
M6
Your Skill Roadmap
A personalized plan to reach your AI career goal
In Development
⚕️
Core Course 7 of 18
AI in Healthcare
Explore how AI is transforming medicine — from diagnostics to drug discovery — and the safety, equity, and privacy stakes involved.
Live 6 Modules
Course modules
M1
AI Diagnostics
How AI reads scans, detects disease, and assists clinicians
M2
Drug Discovery & AI
Accelerating research from years to months
M3
AI in Mental Health
Companion tools, therapy bots, and the risks of over-reliance
M4
Health Data & Privacy
HIPAA, patient consent, and the value of health data
M5
AI & Medical Equity
Who benefits from medical AI — and who is systematically excluded
M6
Regulation & Safety in Medical AI
FDA pathways, clinical validation, and real-world deployment
Enter Course →
📚
Core Course 8 of 18
AI & Education
Examine how AI is reshaping teaching, learning, and academic integrity — and what it means for the future of schools.
Live 6 Modules
Course modules
M1
AI in the Classroom
How AI tools are already changing teaching and learning
M2
Personalized Learning
The promise and the risks of AI-driven adaptive learning
M3
Academic Integrity in the AI Era
Plagiarism, assessment design, and what fairness means now
M4
AI & the Achievement Gap
Does AI narrow or widen educational inequity?
M5
Designing AI-Resilient Curriculum
Building courses and assessments that work with AI
M6
The Future of Credentials
Degrees, certificates, and competency in an AI world
Enter Course →
🌿
Core Course 9 of 18
AI & Climate
Discover how AI is being applied to climate science, energy systems, and sustainability — and its own growing environmental cost.
Coming Soon 6 Modules
Course modules
M1
AI for Climate Science
Modeling, prediction, and monitoring at planetary scale
M2
AI in Energy Systems
Smart grids, demand forecasting, and renewable optimization
M3
AI for Environmental Monitoring
Satellites, sensors, and real-time ecosystem tracking
M4
The Carbon Cost of AI
Training emissions, data center energy, and the trade-off
M5
AI & Climate Justice
Who bears the environmental cost of AI infrastructure
M6
Building for Sustainability
How AI developers can reduce their environmental footprint
In Development
💰
Core Course 10 of 18
AI & Finance
Understand how AI is transforming banking, investing, lending, and financial risk — and the systemic risks it introduces.
Coming Soon 6 Modules
Course modules
M1
Algorithmic Trading
How AI moves markets and what can go wrong
M2
AI in Lending & Credit
Automated decisions, bias, and the fair lending question
M3
Fraud Detection & Cybersecurity
AI on the defense — and on the attack
M4
AI & Financial Risk
Systemic risk, model risk, and what regulators are watching
M5
Central Banks & AI
How monetary policy intersects with machine learning
M6
The Future of Money
CBDC, DeFi, and AI's role in reshaping finance
In Development
🧠
Core Course 11 of 18
AI Psychology & Behavior
Examine the psychological dimensions of AI — how it shapes human behavior, cognition, trust, and mental wellbeing.
Coming Soon 6 Modules
Course modules
M1
How AI Shapes Attention
Recommendation systems, engagement loops, and cognitive load
M2
Trust & Anthropomorphism
Why we trust AI — and when that trust is misplaced
M3
AI & Addiction
Persuasive design, dopamine loops, and digital wellbeing
M4
AI & Identity
How AI tools are changing how we see ourselves
M5
Emotional AI
Affective computing, chatbot companions, and emotional manipulation
M6
Designing for Wellbeing
Building AI products that support — not exploit — human psychology
In Development
🔒
Core Course 12 of 18
AI Safety & Alignment
Go deep on the technical and philosophical challenge of making AI systems that reliably do what humans intend.
Coming Soon 6 Modules
Course modules
M1
What Is AI Safety?
The field, its history, and why it matters now
M2
Alignment Fundamentals
RLHF, constitutional AI, and the core alignment techniques
M3
Failure Modes & Edge Cases
How aligned AI can still behave in dangerous ways
M4
Interpretability
Opening the black box — what mechanistic interpretability reveals
M5
Existential Risk
The long-term safety arguments and how to evaluate them
M6
AI Safety Research Landscape
Key organizations, open problems, and how to contribute
In Development
💻
Core Course 13 of 18
Applied AI Development
For learners ready to build real AI systems. From fine-tuning to deployment — hands-on, project-based, no fluff.
Coming Soon 8 Modules
Course modules
M1
Python & AI Tooling
The essential stack for applied AI development
M2
Working with Foundation Models
APIs, prompting at scale, and model selection
M3
Fine-Tuning
When to fine-tune, how to do it, and what it costs
M4
RAG & Knowledge Systems
Retrieval-augmented generation for real-world applications
M5
Evaluation & Testing
How to measure whether your AI system actually works
M6
Deployment & Monitoring
Shipping AI to production and keeping it healthy
M7
AI System Design
Architecture patterns for scalable, safe AI applications
M8
Capstone Project
Build and deploy a complete AI-powered application
In Development
👔
Core Course 14 of 18
AI Leadership
For managers, executives, and decision-makers. How to lead organizations through AI adoption responsibly and effectively.
Live 6 Modules
Course modules
M1
AI Strategy for Leaders
How to think about AI as a strategic asset or risk
M2
Building an AI Team
Hiring, structuring, and managing AI capability in your org
M3
Procurement & Vendor Evaluation
How to evaluate and buy AI products responsibly
M4
Change Management for AI
Getting your organization ready for AI-driven change
M5
AI Risk for Executives
Reputational, legal, and operational risks of AI deployment
M6
Board Governance & AI
Fiduciary duty, oversight, and board-level AI literacy
Enter Course →
📰
Core Course 15 of 18
AI & Media
Explore how AI is transforming journalism, content creation, misinformation, and the information ecosystem.
Coming Soon 6 Modules
Course modules
M1
AI in Journalism
From automated reporting to AI-assisted investigation
M2
Deepfakes & Synthetic Media
Detection, impact, and the future of visual trust
M3
AI & Misinformation
How AI creates, spreads, and can combat false information
M4
Content Moderation at Scale
How platforms use AI to police speech — and where it fails
M5
AI & Advertising
Programmatic ad systems, targeting, and manipulation
M6
The Future of Media
Business models, audience trust, and AI's role in it all
In Development
🛡️
Core Course 16 of 18
AI & National Security
Examine AI's role in defense, intelligence, cyber operations, and geopolitical competition — and what it means for global stability.
Coming Soon 6 Modules
Course modules
M1
AI in Defense Systems
Autonomous weapons, decision support, and international law
M2
Intelligence & Surveillance
How AI is transforming intelligence collection and analysis
M3
Cyber Operations & AI
AI-enabled attacks, defense, and the evolving threat landscape
M4
AI Geopolitics
The US-China AI race and what it means for the international order
M5
Arms Control for AI
Can AI weapons be regulated? What treaties already exist?
M6
Dual-Use Research
When civilian AI becomes a military capability
In Development
Core Course 17 of 18
AI Consciousness & Philosophy
Grapple with the deepest questions about intelligence, consciousness, moral status, and what AI reveals about what it means to be human.
Coming Soon 6 Modules
Course modules
M1
What Is Intelligence?
Definitions, theories, and what AI reveals about the question
M2
The Consciousness Problem
Why we can't agree on what consciousness is — and why it matters for AI
M3
The Chinese Room Revisited
Searle, Turing, and what modern AI tells us about each
M4
Moral Status & AI Rights
When — if ever — might AI systems deserve moral consideration?
M5
AI & Human Identity
What it means to be human in a world of intelligent machines
M6
The Long View
Where AI fits in the arc of intelligence on Earth
In Development
🌐
Core Course 18 of 18
The Future of Intelligence
A capstone exploration of where AI is headed — technically, socially, and philosophically — and how to think about it clearly.
Coming Soon 6 Modules
Course modules
M1
Reading the Trajectory
How to assess AI progress without hype or dismissal
M2
Transformative AI Scenarios
What different futures look like and how likely each is
M3
Economic Transformation
AI and the long-run future of work, wealth, and human purpose
M4
Governing Transformative AI
What institutions, laws, and norms we need — and don't have
M5
The Human Flourishing Question
What does a good future with AI actually look like?
M6
Your Role in It
How to contribute — as a learner, builder, citizen, or leader
In Development
🤖
AI Models · Course 1 of 8
GPT vs. Claude vs. Gemini
Compare the leading AI models — their strengths, limitations, design philosophies, and real-world performance. Learn to choose the right model for the right job.
Live 8 Modules
Course modules
M1
The Model Landscape
Who built what, and why the differences between models actually matter
M2
How GPT-4o Works
OpenAI's architecture, training approach, and what makes it distinctive
M3
Understanding Claude
Anthropic's constitutional AI, safety focus, and where Claude excels
M4
Gemini and Google's Approach
Multimodal-first design and how Google's AI strategy differs
M5
Benchmark Reality Check
What benchmarks measure, what they miss, and how to read them critically
M6
Cost, Speed, and Context
Practical tradeoffs — tokens, latency, pricing, and context window limits
M7
Choosing the Right Model
A framework for model selection across use cases and constraints
M8
The Frontier Is Moving
How to track model releases and evaluate new models as they launch
Enter Course →
🖼️
AI Models · Course 2 of 8
Multimodal Models
Explore AI systems that see, hear, and generate across text, images, audio, and video. Understand how multimodal capabilities are reshaping what AI can do.
Coming Soon 8 Modules
Course modules
M1
What Multimodal Means
Why combining modalities is harder than it sounds — and why it matters
M2
Vision-Language Models
How models like GPT-4V and Gemini understand and describe images
M3
Image Generation Deep Dive
Diffusion models, latent space, and how images are generated from text
M4
Audio and Speech AI
Transcription, voice synthesis, and real-time audio understanding
M5
Video Understanding
How AI processes and generates video — current capabilities and limits
M6
Cross-Modal Reasoning
Tasks that require connecting information across different input types
M7
Building Multimodal Applications
Practical patterns for integrating multimodal models into products
M8
What's Coming in Multimodal AI
The next capabilities — and the hard problems still unsolved
In Development
🎯
AI Models · Course 3 of 8
Reinforcement Learning & Decision Models
Understand how AI systems learn through trial, reward, and feedback — and how reinforcement learning powers everything from game-playing agents to RLHF in large language models.
Coming Soon 8 Modules
Course modules
M1
The RL Framework
Agents, environments, rewards, and policies — the core vocabulary
M2
How Reward Signals Work
Designing rewards that actually produce the behavior you want
M3
From Games to Real Problems
How RL moved from Atari and chess to robotics and language models
M4
RLHF Explained
How human feedback is used to align language model outputs
M5
Policy Gradient Methods
The math and intuition behind modern RL training approaches
M6
Exploration vs. Exploitation
The fundamental tradeoff at the heart of every RL system
M7
When RL Goes Wrong
Reward hacking, misalignment, and famous RL failures
M8
Decision Models in Production
Real-world applications — recommendation systems, logistics, and more
In Development
💻
AI Models · Course 4 of 8
Running Models Locally
Learn to run open-source and quantized models on your own hardware. From setup to inference, understand the practical reality of local AI — privacy, cost, and control.
Coming Soon 8 Modules
Course modules
M1
Why Run Models Locally
Privacy, cost, latency, and the cases where local beats cloud
M2
The Open-Source Model Ecosystem
Llama, Mistral, Phi, and the landscape of locally-runnable models
M3
Hardware Requirements
What GPU, RAM, and storage you actually need for different model sizes
M4
Quantization Explained
How 4-bit and 8-bit quantization shrinks models without killing quality
M5
Setting Up Ollama
The fastest path from zero to running a local model
M6
LM Studio and llama.cpp
Alternative runtimes and when each makes sense
M7
Prompt Formatting for Local Models
Why chat templates matter and how to get consistent outputs
M8
Building Applications on Local Models
API compatibility, speed tuning, and practical production patterns
In Development
🧠
AI Models · Course 5 of 8
How Large Language Models Work
Demystify the technology behind ChatGPT, Claude, and Gemini. Understand transformers, training, and why these systems behave the way they do — without needing a PhD.
Coming Soon 8 Modules
Course modules
M1
The Transformer Architecture
Attention mechanisms, tokens, and what's actually happening inside an LLM
M2
Pre-Training at Scale
How models learn from the internet — and what that means for their behavior
M3
Tokens, Context, and Memory
Why LLMs don't 'remember' and what context windows actually do
M4
Temperature and Sampling
How randomness is controlled to produce different output behaviors
M5
Emergent Capabilities
Why large models can do things small models can't — and the debate around why
M6
Fine-Tuning vs. Prompting
When you need to train and when a good prompt is enough
M7
Hallucination and Confabulation
Why models make things up and what can be done about it
M8
The Limits of Scale
What bigger models can't fix — and where the field is going
In Development
🎨
AI Models · Course 6 of 8
Image Generation Models
Go deep on diffusion models, LoRA, and the technology behind Midjourney, DALL·E, and Stable Diffusion. Learn to generate, control, and understand AI imagery.
Coming Soon 8 Modules
Course modules
M1
How Diffusion Models Work
Noise, denoising, and the math behind image generation
M2
Text-to-Image Pipelines
How a prompt becomes an image — step by step
M3
The Role of CLIP and Vision Encoders
How models understand what text means visually
M4
Stable Diffusion Architecture
UNet, VAE, and the components that make open-source generation possible
M5
LoRA and Model Customization
How to train lightweight adapters for consistent styles and subjects
M6
ControlNet and Guided Generation
Depth maps, poses, edges — controlling generation with structure
M7
Prompt Engineering for Images
What actually works — syntax, weights, negative prompts, and style tokens
M8
Evaluating and Selecting Generated Images
How to assess quality, consistency, and fitness for use
In Development
📊
AI Models · Course 7 of 8
Model Evaluation and Benchmarks
Learn to read, run, and design AI evaluations. Understand what benchmarks actually measure, how to evaluate models for your specific use case, and where standard evals fall short.
Coming Soon 8 Modules
Course modules
M1
Why Benchmarks Exist
The history and purpose of AI evaluation — from ImageNet to MMLU
M2
Reading Benchmark Scores
What leaderboards show, what they hide, and how to read them honestly
M3
Common Benchmarks Explained
MMLU, HumanEval, HellaSwag — what each tests and why it matters
M4
Benchmark Contamination
How training on test data distorts scores — and how to detect it
M5
Task-Specific Evaluation
Designing evals for your actual use case, not the general case
M6
Human Evaluation Methods
When to use humans and how to do it without introducing bias
M7
Building an Eval Pipeline
Automating evaluation across model versions and prompt changes
M8
The Limits of Evaluation
What no benchmark measures — and what that means for trust
In Development
⚖️
AI Models · Course 8 of 8
The Alignment Problem
Understand what AI alignment means, why it's hard, and why the field's best researchers consider it one of the most important problems in technology.
Coming Soon 8 Modules
Course modules
M1
What Alignment Means
Defining the problem — and why 'just make it do what we want' isn't simple
M2
Instrumental Convergence
Why many different AI goals lead to similar dangerous sub-goals
M3
The Specification Problem
Why it's nearly impossible to fully specify what we actually want
M4
RLHF and Its Limits
How current alignment techniques work and where they break down
M5
Deceptive Alignment
The concern that systems might appear aligned while pursuing other goals
M6
Scalable Oversight
How to supervise AI systems smarter than us — proposed approaches
M7
The Debate in the Field
Safety researchers, doomers, and optimists — mapping the disagreements
M8
What You Can Do
How individuals, companies, and governments are engaging with alignment
In Development
🎙️
AI Progress · Course 1 of 9
Voice and Real-Time AI
Explore the rapidly evolving world of real-time AI — voice interfaces, speech recognition, synthesis, and the systems powering always-on AI assistants.
Coming Soon 8 Modules
Course modules
M1
The State of Voice AI
From Siri to GPT-4o voice — how the technology evolved
M2
Automatic Speech Recognition
How transcription works and why accuracy varies by speaker and context
M3
Text-to-Speech Synthesis
Neural TTS, voice cloning, and what makes voices sound natural
M4
Real-Time Conversation Models
How low-latency voice models handle interruption and turn-taking
M5
Voice Interfaces in Products
Design principles for conversational UX — what works and what doesn't
M6
Speaker Identification and Diarization
Who said what — identifying speakers in multi-party audio
M7
Emotional and Prosodic AI
How models are learning to interpret and express tone and emotion
M8
Where Voice AI Is Headed
Multimodal conversation, always-on assistants, and the ambient computing future
In Development
AI Progress · Course 2 of 9
The Hardware Race
Understand the chip competition powering the AI era — GPUs, TPUs, custom silicon, and why hardware has become the defining constraint in AI development.
Coming Soon 8 Modules
Course modules
M1
Why Hardware Determines AI Capability
The link between compute, model size, and what AI can do
M2
NVIDIA's Dominance
How CUDA lock-in and GPU architecture made NVIDIA the AI hardware king
M3
Google's TPU Strategy
Custom silicon, distributed training, and why Google built its own chips
M4
The New Entrants
AMD, Intel, Cerebras, Groq — challengers and what they're trying to do differently
M5
The Memory Bandwidth Bottleneck
Why moving data is often harder than computing it
M6
Inference vs. Training Hardware
Different workloads demand different silicon — what that means in practice
M7
The Export Control Dimension
How US chip restrictions are shaping the global AI race
M8
What Comes After GPUs
Neuromorphic chips, optical computing, and long-run hardware possibilities
In Development
🔄
AI Progress · Course 3 of 9
Synthetic Data and Self-Improvement
Explore how AI systems use generated data to train themselves — and what that means for capability growth, quality control, and the future of AI development.
Coming Soon 8 Modules
Course modules
M1
What Synthetic Data Is
Generated vs. real data — definitions, use cases, and tradeoffs
M2
Why Real Data Is Running Out
Token scarcity, copyright, and the limits of internet-scale training
M3
How Models Generate Training Data
Self-play, distillation, and prompting models to produce their own examples
M4
Quality Control for Synthetic Data
Filtering, verification, and avoiding model collapse
M5
Constitutional AI and Self-Critique
How Anthropic uses AI feedback to improve AI behavior
M6
Model Distillation
Training smaller models on larger model outputs — efficiency gains and limits
M7
The Recursive Improvement Question
Can AI improve itself indefinitely — and what are the risks?
M8
Where Synthetic Data Is Going
Current research frontiers and what the next generation of training looks like
In Development
📐
AI Progress · Course 4 of 9
The Context Window Race
Understand why context length matters, how it's grown from 2K to 1M+ tokens, and what expanding context windows make possible — and what problems they create.
Coming Soon 8 Modules
Course modules
M1
What a Context Window Is
Tokens, attention, and why longer context is technically hard
M2
The History of Context Expansion
From GPT-3's 4K to Gemini's 1M — how context grew and why
M3
Attention Complexity
Why quadratic attention makes long contexts expensive to compute
M4
Efficient Attention Methods
Sliding window, sparse attention, and the architectures solving long context
M5
What You Can Do With Long Context
Full codebases, books, legal documents — real use cases unlocked
M6
Lost in the Middle
Why models don't use long context equally — attention distribution problems
M7
RAG vs. Long Context
When to retrieve and when to just put it all in the prompt
M8
Where Context Length Is Going
Theoretical limits, practical limits, and what the next generation enables
In Development
🧩
AI Progress · Course 5 of 9
The Reasoning Revolution
Explore how AI reasoning has evolved — chain-of-thought, reasoning models like o1 and o3, and what it means for AI to 'think before it answers.'
Coming Soon 8 Modules
Course modules
M1
What Reasoning Means in AI
Defining reasoning — and why it's different from retrieval or generation
M2
Chain-of-Thought Prompting
How asking models to show their work dramatically improves accuracy
M3
The o1 Architecture
What OpenAI changed to produce reasoning models — and what we know
M4
Test-Time Compute
Trading inference cost for accuracy — the tradeoff that reasoning models exploit
M5
When Reasoning Models Beat Standard Models
Task types where extended thinking actually helps
M6
Math and Code as Reasoning Benchmarks
Why formal domains reveal reasoning capability most clearly
M7
Reasoning Failures
Where reasoning models still get it wrong — and why
M8
The Road to Reliable Reasoning
Open research problems and where the field is heading
In Development
🔬
AI Progress · Course 6 of 9
AI in Science
Discover how AI is accelerating scientific discovery — from protein folding to drug discovery, climate modeling, and materials science.
Coming Soon 8 Modules
Course modules
M1
AI as a Scientific Tool
How AI fits into the scientific method — and where it fits best
M2
AlphaFold and Protein Structure
The breakthrough that changed biology and what came after it
M3
Drug Discovery and Molecular Design
How AI is compressing the timeline from target to candidate
M4
Climate and Earth System Modeling
AI's role in simulating complex systems at planetary scale
M5
Materials Science and Discovery
Finding new materials by searching chemical space with AI
M6
AI in Astronomy and Physics
Pattern recognition at cosmic scale — what AI finds that humans miss
M7
Reproducibility and Scientific Integrity
AI-specific challenges for peer review and scientific validation
M8
The Future of AI-Augmented Research
What science looks like when every researcher has an AI co-pilot
In Development
🤖
AI Progress · Course 7 of 9
AI Agents in the Wild
Survey real-world AI agent deployments — what works, what fails, and what the current frontier of autonomous AI systems looks like in practice.
Coming Soon 8 Modules
Course modules
M1
What Makes Something an Agent
Perception, reasoning, action, and memory — the agent loop
M2
Browser and Computer-Use Agents
Agents that operate software — current capabilities and limits
M3
Customer Service Agents
The most deployed category — what works and what still breaks
M4
Coding Agents
Devin, GitHub Copilot Workspace, and the state of autonomous coding
M5
Research Agents
Deep research tools — how they work and where they fall short
M6
Multi-Agent Systems
Orchestration, delegation, and what happens when agents talk to agents
M7
Failure Modes and Safety
How agents go wrong and what guardrails are being built
M8
The Frontier of Agent Capability
What the next 12 months of agent development looks like
In Development
🌐
AI Progress · Course 8 of 9
Multimodal Breakthroughs
Explore the key milestones in multimodal AI — the models, papers, and moments that changed what AI could perceive and generate across media types.
Coming Soon 8 Modules
Course modules
M1
The History of Multimodal AI
From image classification to GPT-4V — the major milestones
M2
CLIP and Contrastive Learning
The idea that connected text and image understanding
M3
Dall·E, Stable Diffusion, Midjourney
Three approaches to image generation and what made each matter
M4
Whisper and Audio Understanding
OpenAI's speech model and the impact of open-source audio AI
M5
GPT-4V and Gemini Vision
The moment frontier models could see — capabilities and limits
M6
Sora and Video Generation
What video generation changes and what it still can't do
M7
Real-Time Multimodal Interaction
Live video understanding, voice, and the ambient AI interface
M8
Where Multimodal Goes Next
Open problems — 3D understanding, tactile sensing, embodied AI
In Development
🔭
AI Progress · Course 9 of 9
What's Coming Next
A living course tracking the AI frontier — emerging capabilities, upcoming model releases, and how to read the signals that matter in a fast-moving field.
Coming Soon 8 Modules
Course modules
M1
How to Read AI Progress
Signal vs. noise — what announcements, papers, and demos actually mean
M2
The Research Pipeline
From paper to product — how long things actually take to arrive
M3
Capabilities on the Near Horizon
What's in labs right now that hasn't shipped yet
M4
The Agentic Transition
How AI is moving from tools to actors — and what that changes
M5
Hardware and Infrastructure Bets
The infrastructure investments that tell you where the field is going
M6
Geopolitical AI Dynamics
US, China, EU — how policy and competition are shaping the frontier
M7
How to Stay Current
Resources, communities, and practices for tracking AI without drowning in it
M8
Your Role in What Comes Next
How to engage with AI progress as a builder, critic, or citizen
In Development
🎮
Art · Course 1 of 12
AI in Game Design I
Explore how AI is transforming game design — procedural generation, NPC behavior, and the tools reshaping how games are made. Part one of three.
Live 8 Modules
Course modules
M1
AI's Role in Game History
From rule-based NPCs to neural networks — how game AI evolved
M2
Procedural Content Generation
Algorithms and AI that create levels, maps, and worlds
M3
NPC Behavior and Decision-Making
Behavior trees, finite state machines, and ML-driven characters
M4
Dialogue Systems
Branching narrative, dynamic conversation, and LLM-powered NPCs
M5
AI Game Design Tools Today
What's available now — and what designers are actually using
M6
Player Modeling
Using AI to understand player behavior and personalize experience
M7
Ethical Questions in AI Game Design
Addiction mechanics, manipulation, and the designer's responsibility
M8
The Changing Role of the Game Designer
What AI changes about the craft — and what it can't replace
Enter Course →
🕹️
Art · Course 2 of 12
AI in Game Design II
Go deeper into AI-driven mechanics, narrative systems, and generative content. Part two of three.
Coming Soon 8 Modules
Course modules
M1
Generative Level Design
AI systems that build playable spaces from constraints
M2
Dynamic Difficulty Adjustment
Adapting challenge in real time to player skill and frustration
M3
Emergent Narrative
Systems that generate story from player action — not author intention
M4
AI Dungeon Masters
LLM-powered game masters — what they can do and what they can't
M5
Asset Generation for Games
Textures, sprites, audio — AI tools accelerating game production
M6
AI Playtesting
Using AI agents to find bugs, balance issues, and progression blockers
M7
Player Sentiment Analysis
Mining reviews and telemetry with AI to guide design decisions
M8
Case Studies in AI Game Design
Real games using AI meaningfully — what worked and what didn't
In Development
🏆
Art · Course 3 of 12
AI in Game Design III
The frontier of AI in games — fully generative worlds, AI companions, and what the next decade of game design looks like. Part three of three.
Coming Soon 8 Modules
Course modules
M1
Fully Generative Game Worlds
What it means to generate everything — story, space, characters, and rules
M2
AI Companions and Relationship Systems
Long-term, memory-driven AI characters and what they demand
M3
Real-Time Neural Rendering
How AI is changing how game worlds look and perform
M4
The Economic Impact on Game Studios
Job changes, cost structures, and what AI means for indie vs. AAA
M5
Multiplayer and Competitive AI
Bots that play fairly, anti-cheat systems, and matchmaking AI
M6
AI-Generated Games at Runtime
The vision of games that write themselves as you play
M7
Player Rights and AI Content
Who owns AI-generated in-game content — emerging legal questions
M8
Designing for an AI-Native Future
Principles for game designers working with and against AI systems
In Development
🎬
Art · Course 4 of 12
AI Video Production
Learn how AI is transforming video creation — from script to screen. Explore generative video, AI editing tools, and the workflows reshaping filmmaking.
Coming Soon 8 Modules
Course modules
M1
The AI Video Landscape
Text-to-video, image-to-video, and the tools reshaping production
M2
How Video Generation Models Work
Diffusion, temporal consistency, and the hard problem of motion
M3
Sora, Runway, and Kling
Comparing the leading generative video tools — capabilities and limits
M4
AI-Assisted Scriptwriting
Using LLMs for story development, dialogue, and script drafting
M5
AI in Editing and Post-Production
Automated cuts, upscaling, color grading, and VFX with AI
M6
Voice and Audio for AI Video
Synthesis, dubbing, sound design — the audio side of AI production
M7
Legal and Ethical Dimensions
Copyright, likeness rights, synthetic actors, and disclosure requirements
M8
Building an AI Video Workflow
Practical integration — what to use, when to use it, what to avoid
In Development
✏️
Art · Course 5 of 12
Prompt Craft for Visual Art
Master the language of image generation. Learn systematic prompt engineering for visual AI — from basic composition to advanced style control and LoRA techniques.
Coming Soon 8 Modules
Course modules
M1
How Prompts Become Images
The pipeline from text to image — what the model actually processes
M2
Core Composition Vocabulary
Framing, lighting, subject, style — the building blocks of a good prompt
M3
Style and Reference Techniques
Artist references, era tags, and how to guide aesthetic direction
M4
Negative Prompting
What to exclude, why it matters, and common negative prompt patterns
M5
Prompt Weighting and Syntax
Using parentheses, brackets, and numeric weights to control emphasis
M6
Iterative Refinement
Treating prompt craft as a design process — systematic iteration strategies
M7
LoRA and Embedding Prompts
Activating trained concepts, styles, and characters in your prompts
M8
Building a Prompt Library
Organizing, versioning, and sharing prompts that reliably work
In Development
🏛️
Art · Course 6 of 12
AI and Architecture
Explore how AI is reshaping architectural design — from generative floor plans to parametric facades, structural optimization, and AI-assisted urban planning.
Coming Soon 8 Modules
Course modules
M1
AI in the Design Process
Where AI fits in architectural workflow — ideation, documentation, analysis
M2
Generative Design Tools
Parametric AI tools architects are actually using — Midjourney, Stable Diffusion, Rhino AI
M3
Floor Plan and Space Generation
AI systems that generate functional layouts from programmatic constraints
M4
Structural Optimization
How AI finds efficient structural forms that humans wouldn't design
M5
Environmental Simulation
AI-driven energy modeling, daylight analysis, and climate-responsive design
M6
Urban Planning and City-Scale AI
Traffic modeling, zoning optimization, and AI in urban policy
M7
Computational Heritage and Preservation
Using AI to document, analyze, and restore historic buildings
M8
The Future of the Architect
How the profession is changing — and what AI can't replace in design
In Development
🎵
Art · Course 7 of 12
AI Music Composition
Dive into AI-powered music creation — from generative melody and harmony to full production. Learn the tools, the techniques, and the questions about creativity and authorship.
Coming Soon 8 Modules
Course modules
M1
How AI Composes Music
The models and methods behind AI-generated melody, harmony, and rhythm
M2
Generative Music Tools
Suno, Udio, MusicGen — comparing the leading AI music platforms
M3
Prompt Engineering for Music
Describing what you want — genre, mood, instrumentation, and structure
M4
AI in Music Production
MIDI generation, stem separation, mastering assistance, and sample creation
M5
Training on Human Music
Copyright, consent, and the ethics of training on existing works
M6
Collaboration Between Human and AI
Workflows where AI augments rather than replaces the composer
M7
Generative Music for Games and Film
Adaptive soundtracks, procedural audio, and real-time composition
M8
Authorship and Ownership
Who owns AI music — current law, industry practice, and open questions
In Development
🖌️
Art · Course 8 of 12
AI for Graphic Design
Learn to use AI in professional graphic design workflows — logo generation, layout, typography, brand systems, and the tools reshaping visual communication.
Coming Soon 8 Modules
Course modules
M1
AI's Place in the Design Workflow
Where AI helps, where it hurts, and what designers actually use it for
M2
Generative Image Tools for Designers
Firefly, Midjourney, DALL·E — comparing outputs for design use cases
M3
Logo and Brand Identity Generation
AI in brand exploration — speed, iteration, and the limits of generation
M4
Layout and Composition Assistance
AI tools for page layout, spacing, and visual hierarchy
M5
Typography and AI
Font recommendation, variable fonts, and AI-generated letterforms
M6
Brand Consistency with AI
Training models on brand assets and maintaining visual identity
M7
Presentation and Infographic Design
AI-powered slide design, data visualization, and document creation
M8
The Changing Design Profession
What AI changes about the designer's role — and what it doesn't
In Development
✍️
Art · Course 9 of 12
AI and the Writer's Voice
Explore how writers can work with AI without losing what makes their writing theirs. Covers voice preservation, AI-assisted drafting, editing, and the ethics of AI authorship.
Coming Soon 8 Modules
Course modules
M1
What Voice Means in Writing
Defining the thing AI threatens to flatten — and how to protect it
M2
AI as Drafting Partner
Using LLMs for first drafts, brainstorming, and overcoming blocks
M3
Preserving Voice When Using AI
Prompting techniques that pull AI toward your style, not away from it
M4
AI-Assisted Editing
Grammar, clarity, flow — where AI editing helps and where it damages writing
M5
Research and Fact-Finding with AI
Using AI for research without inheriting its hallucinations
M6
Genre-Specific AI Writing
Fiction, nonfiction, poetry, journalism — how AI tools differ by form
M7
Disclosure and Authorship Ethics
When and how to disclose AI use — industry norms and personal ethics
M8
Developing Your AI-Augmented Practice
Building a writing workflow that uses AI without depending on it
In Development
📷
Art · Course 10 of 12
Photography and AI
Explore how AI is transforming photography — from intelligent cameras to AI editing, image upscaling, generative fill, and the ethics of synthetic photography.
Coming Soon 8 Modules
Course modules
M1
AI in the Camera
Computational photography — how your phone already uses AI before you edit
M2
AI Photo Editing Tools
Lightroom AI, Luminar, Photoshop generative fill — what they actually do
M3
Image Upscaling and Restoration
Super-resolution, noise reduction, and restoring damaged photographs
M4
Generative Fill and Inpainting
Adding, removing, and replacing content in photographs with AI
M5
AI-Powered Photo Selection
Culling thousands of images — AI tools for editing down a shoot
M6
Style Transfer for Photography
Applying aesthetic styles to photographs — techniques and limits
M7
The Ethics of AI Photography
Disclosure, manipulation, deepfakes, and photojournalism standards
M8
The Future of the Photographer
What AI changes about the craft — and where human vision still leads
In Development
🎭
Art · Course 11 of 12
Performing Arts and AI
Discover how AI is entering theater, dance, and live performance — as a creative collaborator, a generative tool, and a disruptive force in the performing arts.
Coming Soon 8 Modules
Course modules
M1
AI on Stage
Current uses of AI in theater and performance — and the debates they spark
M2
Generative Text for Theatre
LLMs in playwriting, dialogue generation, and dramaturgical research
M3
AI in Choreography
Motion capture, movement analysis, and AI-assisted dance creation
M4
Synthetic Actors and Digital Doubles
De-aging, resurrection, and virtual performers — where the industry stands
M5
Immersive and Interactive Performance
AI-driven audience interaction and responsive performance environments
M6
AI for Music and Sound in Live Performance
Real-time composition, adaptive scoring, and live AI instruments
M7
Accessibility and AI in Performance
Sign language interpretation, audio description, and real-time captioning
M8
The Human Question in Performing Arts
What live performance means when performers and writers can be simulated
In Development
📖
Art · Course 12 of 12
Storytelling with AI
Learn to use AI as a storytelling tool — for interactive narrative, character development, world-building, and the emerging forms of AI-native story.
Coming Soon 8 Modules
Course modules
M1
Narrative Structure and AI
Teaching AI what makes a story work — structure, tension, and payoff
M2
Character Development with LLMs
Building characters AI can portray consistently across a long narrative
M3
World-Building Assistance
Using AI to develop consistent history, geography, and culture
M4
Interactive and Branching Narrative
AI-powered choice-based storytelling — technical and creative patterns
M5
AI as Story Editor
Using AI critique to find structure problems, pacing issues, and inconsistencies
M6
Collaborative Fiction and Co-Writing
Workflows for human-AI collaborative story development
M7
AI-Native Story Forms
New forms of narrative only possible with AI — generative fiction, living stories
M8
Audience and Reader Considerations
How AI storytelling changes the reader relationship and disclosure ethics
In Development
🚀
Business · Course 1 of 10
AI Tools for Solo Founders
A practical guide to running a solo business with AI. From operations to marketing to product development, learn to use AI as your unfair advantage.
Live 8 Modules
Course modules
M1
The AI-Augmented Solo Founder
What's possible now — and the mindset shift required to use it
M2
Operations with AI
Project management, scheduling, email, and admin — eliminating the busywork
M3
Market Research and Competitor Analysis
AI-powered research workflows that used to require a team
M4
Content and Marketing at Scale
Using AI to produce consistent, on-brand content without a marketing department
M5
AI-Assisted Product Development
Prototyping, spec writing, and feedback analysis with AI
M6
Sales and Customer Communication
AI tools for outreach, follow-up, and customer support
M7
Financial Management with AI
Forecasting, reporting, and scenario planning with AI assistance
M8
Building Your AI Toolkit
Selecting, integrating, and iterating your personal AI stack
Enter Course →
📈
Business · Course 2 of 10
AI for Marketing and Growth
Learn how AI is transforming marketing — from campaign creation to audience targeting, content personalization, and growth analytics.
Coming Soon 8 Modules
Course modules
M1
The AI Marketing Landscape
What's changed, what's hype, and what's actually driving results
M2
AI-Generated Content at Scale
Blog posts, ads, social copy — production systems that maintain quality
M3
Audience Intelligence and Segmentation
Using AI to understand who your customers are and what they want
M4
Personalization at Scale
Dynamic content, email personalization, and AI-driven customer journeys
M5
AI in Paid Advertising
Smart bidding, creative testing, and AI campaign optimization
M6
SEO and Content Strategy with AI
Keyword research, content briefs, and AI-assisted SEO workflows
M7
Analytics and Attribution
AI tools for measurement — what's working and what the numbers actually mean
M8
Ethics and Transparency in AI Marketing
Disclosure, manipulation concerns, and building trust with AI-assisted marketing
In Development
⚠️
Business · Course 3 of 10
AI Risk for Business Leaders
Understand the AI risks that matter for business — operational, reputational, legal, and strategic. Learn to govern AI use without stifling it.
7 Modules
Course modules
M1
The AI Risk Landscape
Mapping the risks — what to worry about and in what order
M2
Operational Risk
Model failures, hallucinations, and what happens when AI gets it wrong in production
M3
Reputational Risk
Bias, controversy, and the AI incidents that have damaged brands
M4
Legal and Regulatory Exposure
Liability, IP ownership, privacy, and the emerging legal framework for AI
M5
Vendor and Supply Chain Risk
Depending on third-party AI — lock-in, outages, and policy changes
M6
Data Risk and Privacy
What AI systems do with your data — and your customers' data
M7
Building an AI Risk Framework
Practical governance structures that work at different organizational scales
Enter Course →
💰
Business · Course 4 of 10
Funding and Pitching AI Ventures
Learn how investors evaluate AI companies, what makes an AI pitch compelling, and how to navigate the specific dynamics of raising for an AI-driven business.
Coming Soon 8 Modules
Course modules
M1
The AI Investment Landscape
Where money is flowing, who's funding what, and why the AI bubble is different
M2
What Investors Look for in AI Companies
Defensibility, data moats, team, and the product-market fit question
M3
Crafting the AI Pitch Narrative
How to explain what your AI does without losing the room
M4
Technical Due Diligence Preparation
The questions sophisticated investors ask — and how to answer them
M5
Valuation in AI Businesses
Revenue multiples, ARR, and how investors value AI-native companies
M6
Competitive Differentiation
How to answer 'why won't OpenAI just do this?' convincingly
M7
Term Sheet Dynamics for AI Deals
IP ownership, data rights, and AI-specific terms to negotiate
M8
From Pitch to Close
Managing the fundraising process — timelines, updates, and decision-making
In Development
👥
Business · Course 5 of 10
AI and the Future of Work
Examine how AI is reshaping employment — which jobs are changing, which are disappearing, and how workers and organizations can adapt.
Live 8 Modules
Course modules
M1
What the Evidence Shows
Labor market data, productivity research, and what's actually happening to jobs
M2
Task Automation vs. Job Automation
Why the right unit of analysis is tasks, not jobs — and what that means
M3
High-Risk Occupations
Which roles face the most disruption — and the timeline for that disruption
M4
Human-AI Collaboration Models
Centaur models, AI augmentation, and the jobs that grow with AI
M5
Reskilling and Workforce Transition
What effective reskilling looks like — and what doesn't work
M6
Organizational Change Management
Leading teams through AI adoption — communication, trust, and resistance
M7
AI and Labor Relations
Union responses, worker rights, and the politics of AI in the workplace
M8
Building an AI-Ready Organization
Culture, structure, and practices for organizations that adapt well
Enter Course →
🛠️
Business · Course 6 of 10
AI for Product Development
Learn how product teams are integrating AI into discovery, design, development, and delivery — and how to build AI-native products that actually work.
Coming Soon 8 Modules
Course modules
M1
AI in the Product Lifecycle
Where AI fits at each stage — and where it currently breaks down
M2
AI-Assisted User Research
Interview analysis, survey synthesis, and pattern detection in qualitative data
M3
Rapid Prototyping with AI
Going from idea to testable prototype faster with generative tools
M4
Spec and PRD Writing with AI
Using LLMs to accelerate documentation without losing precision
M5
AI in Development Workflow
Copilot-assisted coding, code review, and the developer experience shift
M6
AI-Powered Testing
Automated test generation, edge case discovery, and regression coverage
M7
Product Analytics with AI
Behavioral analysis, anomaly detection, and AI-assisted decision-making
M8
Building AI Features Users Trust
Explainability, error states, and designing for AI uncertainty
In Development
🏗️
Business · Course 7 of 10
Building an AI-First Business
A strategic and operational guide to building a business where AI is central — not bolted on. Covers architecture, culture, competitive advantage, and execution.
Coming Soon 8 Modules
Course modules
M1
What AI-First Actually Means
The difference between using AI tools and building AI into your business model
M2
Identifying AI-Native Opportunities
Finding problems where AI creates structural advantage, not just efficiency
M3
Data Strategy and Moats
Building proprietary data assets that compound your AI advantage
M4
The AI-First Tech Stack
Infrastructure decisions — models, infrastructure, and build vs. buy tradeoffs
M5
Team and Culture for AI-First Orgs
Hiring, roles, and the cultural norms that make AI-first work
M6
Speed as a Strategic Asset
How AI-first businesses move faster — and how incumbents respond
M7
Ethical and Governance Foundations
Building responsibility into the architecture before you need it
M8
Scaling an AI-First Business
What breaks at scale — and how to build systems that hold
In Development
💼
Business · Course 8 of 10
AI for Finance and Operations
Learn how AI is transforming financial analysis, forecasting, and operational management — and how finance and ops leaders can use these tools effectively.
Coming Soon 8 Modules
Course modules
M1
AI in Financial Analysis
Automating reports, identifying patterns, and AI-assisted financial modeling
M2
Forecasting and Scenario Planning
AI tools for revenue forecasting, demand planning, and risk modeling
M3
Accounts Payable and Receivable Automation
Document processing, matching, and exception handling with AI
M4
AI in Supply Chain and Logistics
Demand sensing, inventory optimization, and routing intelligence
M5
Expense Management and Fraud Detection
AI systems for identifying anomalies and controlling spend
M6
AI in HR Operations
Recruiting, workforce planning, and employee experience with AI
M7
Operational Dashboards and AI Reporting
Building executive-level AI-powered reporting systems
M8
Risk and Compliance in AI Finance Systems
Audit trails, explainability, and regulatory considerations
In Development
🎧
Business · Course 9 of 10
AI in Customer Service
Explore how AI is transforming customer support — from chatbots to intelligent routing, agent assistance, and the future of human-AI service teams.
Coming Soon 8 Modules
Course modules
M1
The State of AI Customer Service
What's deployed, what customers think, and where the bar is today
M2
Chatbot Architecture and Design
Intent recognition, dialog management, and building bots that don't frustrate
M3
LLM-Powered Support Agents
Moving beyond scripted bots to generative AI in customer-facing roles
M4
Agent Assist Tools
Real-time AI assistance for human agents — how it improves speed and quality
M5
Intelligent Ticket Routing
Classification, prioritization, and AI-driven support workflow
M6
Voice AI in Customer Service
IVR evolution, voice bots, and real-time transcription for support
M7
Measuring AI Customer Service Performance
CSAT, resolution rate, and the metrics that matter for AI-powered support
M8
The Human-AI Support Team Model
Designing the blend — when to hand off, escalate, and intervene
In Development
📋
Business · Course 10 of 10
Procurement and Vendor Evaluation
Learn how to evaluate, procure, and govern AI vendors and tools — from assessing capabilities to negotiating contracts and managing ongoing vendor risk.
Coming Soon 8 Modules
Course modules
M1
The AI Vendor Landscape
Categories of AI vendors, what they sell, and how to orient in the market
M2
Defining Requirements Before You Shop
How to specify what you need before vendors tell you what they have
M3
Technical Evaluation Criteria
Performance, reliability, latency, scalability — what to measure and how
M4
Security and Data Handling Assessment
What to audit in vendor data practices and where the risks are
M5
Contract and IP Negotiation
Data rights, model ownership, SLAs, and AI-specific contract terms
M6
Proof of Concept Design
Running a rigorous PoC that actually predicts production performance
M7
Vendor Risk Monitoring
Ongoing governance — how to track vendor health and catch problems early
M8
Build vs. Buy Decision Framework
When to procure, when to build, and how to make the case either way
In Development
🤖
Development · Course 1 of 14
Building AI Agents I — Use Cases
Survey the landscape of AI agent use cases — understand when agents add value, what architectures they use, and how to evaluate whether agency is the right solution.
Live 8 Modules
Course modules
M1
What Is an AI Agent
Agents vs. tools vs. assistants — precise definitions and why they matter
M2
The Agent Loop
Perception, reasoning, action, observation — the core cycle of agent operation
M3
Survey of Agent Use Cases
Research, coding, customer service, data analysis — mapping the landscape
M4
When Agency Adds Value
The decision framework for whether an agent is actually the right solution
M5
Agent Architectures Overview
ReAct, Plan-and-Execute, and other patterns — a comparative map
M6
Multi-Agent Systems Introduction
Orchestrators, sub-agents, and the cases that require multiple agents
M7
Evaluating Agent Performance
Task completion, cost, reliability — how to measure agent quality
M8
Risks and Failure Modes
What goes wrong with agents — and the categories of failure to design against
Enter Course →
🧠
Development · Course 2 of 14
Building AI Agents II — Skills
Equip your agents with memory, knowledge, and reasoning capabilities. Learn how agents store context, access information, and plan across multi-step tasks.
Live 8 Modules
Course modules
M1
Memory Types for Agents
Short-term, episodic, semantic, and procedural memory — what each does
M2
Implementing Working Memory
Context management, summarization, and keeping agents on track
M3
Long-Term Memory with Vector Databases
Embeddings, retrieval, and giving agents persistent knowledge
M4
Knowledge Graphs for Agents
Structured knowledge and when graphs outperform vector search
M5
Agent Planning Strategies
Task decomposition, subgoal generation, and backtracking
M6
Reasoning Under Uncertainty
How agents handle ambiguity, missing information, and conflicting signals
M7
Skill Libraries and Agent Capabilities
Building reusable skill modules that agents can compose
M8
Benchmarking Agent Cognition
How to measure reasoning and planning quality — practical eval methods
Enter Course →
🔧
Development · Course 3 of 14
Building AI Agents III — Tools
Give your agents real capabilities through tool use — web browsing, code execution, API calls, and MCP integration. Build agents that act in the real world.
Live 8 Modules
Course modules
M1
Tool Use Fundamentals
Function calling, tool schemas, and how agents decide which tool to use
M2
Web Search and Browsing Tools
Search APIs, browser automation, and web-capable agent design
M3
Code Execution Environments
Sandboxed code runners — security, capabilities, and integration patterns
M4
File System and Document Tools
Reading, writing, and manipulating files safely within an agent
M5
API Integration Patterns
Connecting agents to third-party services — auth, rate limits, and error handling
M6
MCP Integration
Model Context Protocol — architecture, setup, and building MCP-compatible agents
M7
Tool Selection and Orchestration
How to design tool selection logic that doesn't get expensive or stuck
M8
Security and Safety for Tool-Using Agents
Injection attacks, privilege limits, and safe tool design
Enter Course →
⚙️
Development · Course 4 of 14
Building AI Agents IV — OpenClaw
Build and deploy OpenClaw — a production-grade AI agent framework. Full implementation, testing, and real-world deployment patterns from architecture to launch.
Live 8 Modules
Course modules
M1
OpenClaw Architecture Overview
Design decisions, component structure, and the philosophy behind the framework
M2
Core Agent Loop Implementation
Building the perception-reasoning-action cycle from scratch
M3
Tool Registry and Plugin System
Dynamic tool loading, schema validation, and plugin architecture
M4
Memory System Implementation
In-memory and persistent memory — the OpenClaw approach
M5
Orchestration and Sub-Agent Management
How OpenClaw handles multi-agent coordination
M6
Observability and Logging
Tracing agent runs, debugging failures, and monitoring in production
M7
Testing Your Agent System
Unit tests, integration tests, and end-to-end agent evaluation
M8
Deploying OpenClaw to Production
Containerization, scaling, and operating an agent system in the real world
Enter Course →
Development · Course 5 of 14
Building AI Agents V — Optimization
Optimize your agent systems for performance, cost, and reliability. Profiling, latency reduction, token efficiency, and graceful failure design.
Live 8 Modules
Course modules
M1
Profiling Agent Performance
Finding bottlenecks — where time and money actually go in an agent run
M2
Reducing Latency
Parallelization, caching, and prompt engineering for faster agent response
M3
Token Optimization Strategies
Shrinking context, summarizing history, and reducing unnecessary LLM calls
M4
Cost Modeling for Agent Systems
Estimating, tracking, and controlling the cost of agent operations
M5
Caching for Agents
What to cache, where to cache it, and invalidation strategies
M6
Graceful Degradation
Designing agents that fail safely — fallbacks, retries, and circuit breakers
M7
Reliability Engineering for Agents
SLA design, uptime monitoring, and incident response for agent systems
M8
Continuous Improvement Pipelines
Feedback loops, eval-driven iteration, and keeping agents getting better
Enter Course →
🏗️
Development · Course 6 of 14
AI App Architecture
Design production-grade AI applications. Learn the architectural patterns, infrastructure decisions, and system design principles that make AI apps reliable and scalable.
Coming Soon 8 Modules
Course modules
M1
AI Application Architecture Patterns
Gateway, pipeline, mesh — the major patterns for AI app structure
M2
Model Routing and Selection
Dynamic model selection — routing by task, cost, and quality requirements
M3
Latency Management
Streaming, async patterns, and designing for perceived vs. actual response time
M4
Caching Strategies for AI
Semantic caching, prompt caching, and when caching helps vs. hurts
M5
Context Management at Scale
Handling long contexts, conversation history, and multi-user state
M6
Multi-Model Pipelines
Chaining models — when to split tasks and how to manage handoffs
M7
Infrastructure and Deployment
Containerization, orchestration, and scaling AI workloads
M8
Reliability and Fallback Design
Graceful degradation, fallback models, and building systems that hold
In Development
✏️
Development · Course 7 of 14
Prompt Engineering for Developers
Master prompt engineering as a technical discipline — system prompts, few-shot examples, chain-of-thought, structured outputs, and the full toolkit for production AI.
Coming Soon 8 Modules
Course modules
M1
Prompt Engineering as Engineering
Treating prompts as code — version control, testing, and iteration
M2
System Prompt Design
Persona, constraints, output format — the anatomy of a good system prompt
M3
Few-Shot Examples
When to use examples, how many, and how to select the right ones
M4
Chain-of-Thought Techniques
Getting models to reason step by step — and when it helps
M5
Structured Output Prompting
JSON, XML, and format enforcement — reliable structured generation
M6
Prompt Injection Defense
How injection attacks work and how to design prompts that resist them
M7
Evaluating and Testing Prompts
Building test suites for prompts — coverage, regression, and red-teaming
M8
Prompt Management in Production
Storage, versioning, A/B testing, and prompt deployment workflows
In Development
📡
Development · Course 8 of 14
Deploying and Monitoring AI
Learn to operate AI systems in production — observability, logging, alerting, cost tracking, and the practices that keep models performing after launch.
Coming Soon 8 Modules
Course modules
M1
AI Observability Fundamentals
What to measure in an AI system and why standard APM isn't enough
M2
Logging for AI Applications
What to log, at what granularity, and how to do it without killing performance
M3
Tracing LLM Calls
End-to-end tracing from user request to model response — tools and patterns
M4
Monitoring Model Quality Over Time
Drift detection, output quality monitoring, and knowing when to retrain
M5
Alerting and Anomaly Detection
Setting up alerts that catch real problems without alert fatigue
M6
Cost Monitoring and Budgeting
Tracking token spend, setting limits, and building cost dashboards
M7
Incident Response for AI Systems
On-call runbooks, postmortems, and recovering from AI outages
M8
Continuous Evaluation in Production
Running evals continuously — not just at deployment
In Development
📚
Development · Course 9 of 14
RAG Systems from Scratch
Build retrieval-augmented generation systems from the ground up — embeddings, vector databases, chunking strategies, hybrid search, and production RAG architecture.
Coming Soon 8 Modules
Course modules
M1
Why RAG Exists
The problem RAG solves — grounding, currency, and context limits
M2
Embeddings Deep Dive
How text becomes vectors — models, dimensions, and similarity search
M3
Chunking Strategies
Fixed-size, semantic, and recursive chunking — what works for different content
M4
Vector Databases
Pinecone, Weaviate, Chroma, pgvector — comparing the options and tradeoffs
M5
Hybrid Search
Combining dense and sparse retrieval for better coverage and precision
M6
Retrieval Quality and Evaluation
Measuring retrieval — recall, precision, and end-to-end quality
M7
RAG Pipeline Design
Query rewriting, re-ranking, and the full retrieval-to-generation pipeline
M8
Production RAG Architecture
Scale, latency, cost, and operating a RAG system in production
In Development
🔌
Development · Course 10 of 14
Working with the Anthropic API
Build production applications on Claude — Messages API, tool use, vision, streaming, and the patterns that make Anthropic API integration reliable and efficient.
Coming Soon 8 Modules
Course modules
M1
The Messages API
Request structure, roles, content types, and the basics of the API
M2
System Prompts and Context
How to structure system prompts and manage conversation context at scale
M3
Tool Use and Function Calling
Defining tools, handling tool calls, and building reliable tool-use workflows
M4
Vision and Document Input
Passing images and documents to Claude — formats, limits, and use cases
M5
Streaming Responses
Server-sent events, incremental processing, and streaming UX patterns
M6
Rate Limits and Error Handling
Understanding limits, implementing retries, and building resilient clients
M7
Cost Optimization
Prompt caching, token efficiency, and controlling spend on Claude
M8
Production Patterns
Batching, async processing, and architectural patterns for Claude at scale
In Development
🔌
Development · Course 11 of 14
Working with the OpenAI API
Build on GPT-4o — chat completions, function calling, assistants, threads, and the OpenAI ecosystem. Production patterns for real applications.
Coming Soon 8 Modules
Course modules
M1
Chat Completions API
Request structure, roles, parameters, and the core API surface
M2
Function Calling
Defining functions, handling calls, and building reliable function-calling workflows
M3
The Assistants API
Threads, runs, and stateful conversations — when to use Assistants vs. completions
M4
File Handling and Retrieval
Uploading files, vector stores, and the Assistants file search tool
M5
Vision with GPT-4o
Image input formats, multi-image prompts, and vision use cases
M6
Streaming and Real-Time Output
SSE streaming, delta processing, and building responsive UX
M7
Rate Limits, Quotas, and Error Handling
Tier limits, backoff strategies, and production resilience
M8
Cost Management and Optimization
Prompt caching, token tracking, and building cost-efficient OpenAI applications
In Development
🎛️
Development · Course 12 of 14
Fine-Tuning Language Models
Learn when and how to fine-tune — LoRA, QLoRA, instruction tuning, and dataset preparation. Understand the tradeoffs between fine-tuning and prompting.
Coming Soon 8 Modules
Course modules
M1
When Fine-Tuning Beats Prompting
The cases where training beats prompting — and the ones where it doesn't
M2
Full Fine-Tuning vs. PEFT
The spectrum from full retraining to lightweight adapters — tradeoffs explained
M3
LoRA Deep Dive
Low-rank adaptation — the math, the intuition, and the practical parameters
M4
QLoRA and Memory Efficiency
4-bit quantization plus LoRA — fine-tuning large models on consumer hardware
M5
Dataset Preparation
Collecting, cleaning, and formatting training data for instruction fine-tuning
M6
Training Configuration
Learning rates, batch size, epochs, and the knobs that matter most
M7
Evaluation and Avoiding Catastrophic Forgetting
Measuring fine-tuned model quality and preserving base capabilities
M8
Deploying Fine-Tuned Models
Serving your model — inference infrastructure and integration patterns
In Development
🔒
Development · Course 13 of 14
AI Security and Red-Teaming
Learn to build AI systems that hold up under adversarial pressure — prompt injection, jailbreaks, data leakage, and the security practices that matter for production AI.
Coming Soon 8 Modules
Course modules
M1
The AI Security Threat Model
Mapping the attack surface — what adversaries want and how they get it
M2
Prompt Injection Attacks
Direct and indirect injection — how they work and defense strategies
M3
Jailbreaking and Policy Bypass
Techniques for bypassing safety training and how to harden against them
M4
Data Exfiltration via LLMs
How attackers extract sensitive data through AI systems — and how to prevent it
M5
Model Inversion and Extraction
Reconstructing training data or model weights — attack and defense
M6
RAG System Security
Poisoning retrieval, manipulating context, and securing the knowledge pipeline
M7
Red-Teaming Methodology
How to structure an AI red-team exercise — scope, techniques, and reporting
M8
Building a Secure AI System
Defense in depth — layered security for production AI applications
Coming Soon
🧪
Development · Course 14 of 14
Evaluation and Testing for AI
Build the testing infrastructure that lets you ship AI confidently — evals, benchmarks, red-teaming, and regression testing for real AI systems.
Coming Soon 8 Modules
Course modules
M1
Why AI Testing Is Different
The non-determinism problem — why standard software testing doesn't fully transfer
M2
Designing Eval Suites
What to test, how many examples, and how to ensure coverage
M3
LLM-as-Judge Evaluation
Using models to evaluate models — strengths, weaknesses, and calibration
M4
Human Evaluation Design
When to use humans, how to minimize bias, and annotation best practices
M5
Regression Testing for AI
Catching capability regressions across model updates and prompt changes
M6
Red-Teaming and Adversarial Testing
Finding failure modes before users do — systematic red-team approaches
M7
Benchmark Selection and Interpretation
Choosing the right benchmarks for your system and reading results honestly
M8
Continuous Evaluation in CI/CD
Running evals in your deployment pipeline — tooling and thresholds
In Development
🧠
AIP Draft
Understanding AI Bias and Fairness
Learn how AI systems can perpetuate unfair biases and discrimination in hiring, lending, healthcare, and criminal justice. Develop skills to recognize biased AI outputs and understand approaches for creating more equitable artificial intelligence.
Coming Soon 4 Modules
Proposed modules
M1
What Is Algorithmic Bias
M2
Real World Bias Examples
M3
Detecting Bias in Systems
M4
Building Fairer AI Solutions
In Development
🔬
AIP Draft
AI Privacy and Data Security
Explore how AI systems collect, process, and potentially misuse personal information in our digital lives. Master practical strategies to protect your privacy while understanding emerging laws and regulations governing AI development.
Coming Soon 4 Modules
Proposed modules
M1
How AI Uses Personal Data
M2
Privacy Risks and Threats
M3
Protecting Your Digital Footprint
M4
AI Governance and Regulation
In Development
🌐
AIP Draft
AI's Impact on Future Work
Discover which jobs AI will automate, augment, or create in the coming decades across different industries. Learn essential skills and strategies to thrive in an AI-enhanced workplace and adapt your career for the future.
Coming Soon 4 Modules
Proposed modules
M1
Jobs AI Will Transform
M2
Skills for AI Era
M3
Human AI Collaboration Strategies
M4
Preparing for Career Changes
In Development
🧠
AIP Draft
AI for Accessibility
Discover how AI technologies can help people with disabilities access information and services. Learn principles for designing inclusive AI systems.
Coming Soon 4 Modules
Proposed modules
M1
Assistive Technology Applications
M2
Inclusive AI Design
M3
Breaking Down Barriers
M4
Universal Access Principles
In Development
🔬
AIP Draft
Autonomous AI Systems
Explore AI systems that operate independently in the physical world. Understand the technology behind autonomous vehicles, drones, and robots.
Coming Soon 4 Modules
Proposed modules
M1
Self-Driving Vehicle Technology
M2
Autonomous Drones and Robots
M3
Safety and Reliability
M4
Human Oversight Requirements
In Development
AIP Draft
Data Literacy for AI
Develop essential data skills needed to understand how AI systems work. Learn about data quality, sources, and your rights as a data subject.
Coming Soon 4 Modules
Proposed modules
M1
Data Quality and Preparation
M2
Understanding Training Data
M3
Data Sources and Collection
M4
Privacy and Data Rights
In Development