Course Content
Course Structure Overview
The course is organized into five modules, each culminating in a dual-track assignment that uses the assisted/unassisted framework. Each module includes: Conceptual material Guided interaction with AI tools One structured assignment with: - Assisted component - Unassisted component - Reflective comparison
Module 1: What Is a Language Model, Really?
This module establishes conceptual grounding. Its goal is not to make learners fluent in AI terminology, but to ensure they understand what language models actually do, what they do not do, and why their outputs can be simultaneously impressive and misleading. This module also introduces the core pedagogical pattern of the course: working with AI tools while remaining epistemically independent of them.
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Introduction to Small Language Models

Language models are particularly effective at:

  • Producing well-structured explanations

  • Matching tone and register

  • Filling in plausible details

They are significantly weaker at:

  • Identifying when an explanation is inappropriate for an audience

  • Recognizing missing domain constraints

  • Signaling uncertainty or ignorance reliably

As a result, explanations are one of the most common failure points in applied AI work.