AI, Surveillance & Privacy: From Smart Cameras to Data Brokers
Discover how AI is supercharging surveillance in both the physical and digital worlds, from facial recognition and smart cameras to data brokers and inferential tracking.
AI in High-Stakes Decisions: Hiring, Policing, Lending, and Beyond
An exploration of how AI is used in high-stakes decisions that shape lives, from hiring and policing to lending and healthcare. Learn the risks and what's at stake.
Algorithmic Bias & Discrimination: When Models Pick Winners and Losers
A deep dive into algorithmic bias and discrimination. Learn where bias comes from (data, models, humans) and how it leads to real-world harm in hiring, lending, and more.
From Individual Harm to Systemic Risk: How AI Ethics Scales
Learn how small, individual AI harms can scale into major systemic risks through aggregation, feedback loops, and homogenization. A critical concept in AI ethics.
How AI Goes Wrong: Data, Models, and Deployment Failures
Discover the three main failure points of AI systems. This guide explains how bad data, flawed models, and poor deployment lead to real-world AI harms.
AI Ethics & Risks 101: The Landscape of AI Harms
Explore the landscape of AI harms, from individual and group harms like bias and discrimination to societal risks like misinformation and erosion of trust. A plain-language guide.
What Do We Mean by “AI Ethics”? A Plain-Language Guide
GPT stands for Generative Pre-trained Transformer. Learn what each part of this powerful acronym means and why it’s the engine behind the current AI revolution.
What Is an AI Context Window? Understanding AI’s Short-Term Memory
GPT stands for Generative Pre-trained Transformer. Learn what each part of this powerful acronym means and why it’s the engine behind the current AI revolution.
What Does the "GPT" in ChatGPT Actually Mean?
GPT stands for Generative Pre-trained Transformer. Learn what each part of this powerful acronym means and why it’s the engine behind the current AI revolution.
The 3 Ways AI Learns: Supervised, Unsupervised & Reinforcement Learning
Explore the three core machine learning paradigms: Supervised Learning (from labeled data), Unsupervised Learning (finding patterns), and Reinforcement Learning (trial and error).

