Module 2: Module-2 in AI-Basics (BG)

Module 2 demystifies the mechanics behind large language models. Learners won't write code or do math — they'll build a conceptual model of how AI is trained, what 'tokens' and 'context windows' mean in practice, and why AI confidently produces wrong answers. This module turns AI from a mysterious oracle into a comprehensible tool with known strengths and failure modes.

Sign in to join the discussion.
Recent posts
No posts yet.
Topics in this module
Free trial available: Module 1, Topic 1 — AI, Machine Learning, and Generative AI: What's the Difference?
Go to trial topic
1
How AI Is Trained: Data, Patterns, and the Scale That Changes Everything What it means to 'train' an AI model — the conceptual picture without any math or code
2
Tokens, Context Windows, and Temperature: What They Mean for You The three AI concepts users encounter most often — explained in practical terms that change how you use AI tools
3
Why AI Makes Things Up: Understanding Hallucination Why confident-sounding AI output is sometimes completely wrong — and the practical habits that protect you
Module

How do large language models actually work? This module explains training, tokens, contex…

Sign in to join the discussion.
Recent posts
No posts yet.

Module 2 demystifies the mechanics behind large language models. Learners won't write code or do math — they'll build a conceptual model of how AI is trained, what 'tokens' and 'context windows' mean in practice, and why AI confidently produces wrong answers. This module turns AI from a mysterious oracle into a comprehensible tool with known strengths and failure modes.

Navigator
Topics
3
Free trial available: Module 1, Topic 1 — AI, Machine Learning, and Generative AI: What's the Difference?
Go to trial topic
1
How AI Is Trained: Data, Patterns, and the Scale That Changes Everything What it means to 'train' an AI model — the conceptual picture without any math or code
2
Tokens, Context Windows, and Temperature: What They Mean for You The three AI concepts users encounter most often — explained in practical terms that change how you use AI tools
3
Why AI Makes Things Up: Understanding Hallucination Why confident-sounding AI output is sometimes completely wrong — and the practical habits that protect you
Info
You aren't logged in. Please Log In or Join for Free to unlock full access.