AI Glossary

Welcome to the Future – One Term at a Time!
The world of Artificial Intelligence is full of buzzwords that sound like they’re straight out of a sci-fi movie. From „Black Box“ to „Zero-shot Learning“ – it’s easy to get lost in translation.

But fear not: This AI Glossary is your trusty Compass through the jargon jungle. Whether you’re a curious newbie, a legal eagle trying to make sense of machine logic, or an AI enthusiast brushing up your vocabulary – this list brings clarity.

Let’s decode the future, one term at a time.

A

The theoretical holy grail of AI: a machine with the cognitive abilities of a human.

A set of rules or instructions that a computer follows to solve problems.

The umbrella term for machines mimicking human intelligence.

Learn more about what AI actually is >>

A system that operates independently without human intervention.

B

When an AI reflects or amplifies human prejudices from skewed data.

Learn more about Bias in AI systems >>

A model whose inner workings are not transparent. Mysterious, eh?

C

Grouping similar data points together in machine learning.

AI’s ability to “see” and interpret visual input.

When an AI model becomes less accurate over time due to real-world changes.

D

Tagging data (like images or text) to train AI models.

A type of ML using neural networks with many layers.

Learn more about Deep Learning >>

Used in image generation by reversing noise — the secret sauce behind AI art.

Aimed at curbing the power of Big Tech “gatekeepers.” Important if your AI operates in digital marketplaces or uses large datasets from dominant platforms.

This law regulates online platforms and content moderation, with a focus on transparency and accountability. Relevant for AI systems used in recommender systems or content filtering.

E

AI that runs locally on devices (not in the cloud).

The first major attempt to regulate AI in the EU. It classifies AI systems based on risk levels (minimal, limited, high, and unacceptable) and imposes stricter rules the higher the risk. Think GDPR, but for robots with ambition.

Learn more about the EU AI Act >>

Turning data (like words) into numerical vectors with meaning.

Developing AI responsibly and without harming society.

The disconnect between AI behavior and human understanding.

Efforts to make AI decisions understandable to humans.

F

Training models across decentralized devices while keeping data private.

Adapting a pre-trained model to a specific task or domain.

G

Two neural nets battling to create ultra-realistic content.

The EU’s iconic data protection law that governs how personal data is collected, stored, and used. If your AI handles personal data, GDPR is the big boss — with fines to match.

Learn more about the GDPR >>

AI that creates — whether it’s text, music, or cat memes.

H

When an AI makes stuff up with confidence.

I

The moment a model puts its learning to work.

J

K

A structured map of facts and their relationships.

L

Time delay between user input and AI output. Shorter = better.

A model trained on massive datasets for language tasks.

M

A subset of AI where machines learn from data.

Learn more about ML >> 

The result of training — used to make predictions or generate content.

AI that combines text, images, audio, and more.

N

AI’s ability to understand and produce human language.

A brain-inspired system of interconnected “neurons.”

Learn more about Neural Networks >>

O

When a model learns training data too well and fails on new input.

P

A model trained on a large dataset, ready for adaptation.

Your input to an AI — the digital “go fetch!”

Learn more about Prompts >>

Crafting clever prompts to get better results from AI.

Learn how to become a prompting Master >>

Q

R

Combines search with generative AI for fact-based output.

Training a model using rewards and penalties — just like training a dog, but nerdier.

S

Making sure AI systems behave in line with human values.

Also known as AGI — AI that can think and generalize like a human.

Modeling AI behavior on natural systems like ant colonies.

Artificial data created to train or test AI systems.

Digitally generated or altered content created using AI. This includes AI-generated images, videos, voices, and text — from deepfakes to digital influencers. It’s the future of creativity… and misinformation, depending on who’s behind the keyboard.

T

A small piece of input (like a word fragment) that models use.

The max number of tokens an AI model can handle at once.

The data used to “teach” AI models.

The architecture behind powerful language models like GPT.

Settings adjusted during training to improve performance.

Alan Turing’s idea: if you can’t tell a machine from a human, the machine wins.

Read more about Alan Turing >>

U

When a model fails to learn enough from the data.

V

Confirming AI output is correct, especially critical in legal/medical contexts.

An AI-powered chatbot or assistant, often used in customer service or HR bots. Like Clippy 2.0, but smarter.

W

AI specialized for a narrow task — not as scary, but very useful.

X

Y

Z

When a model successfully handles tasks it wasn’t explicitly trained for.