// This skill should be used when generating lesson summaries for educational content. It extracts key concepts, mental models, patterns, and common mistakes from lesson markdown files using a Socratic extraction process. Use this skill when a lesson file needs a `.summary.md` companion file, or when reviewing/refreshing existing summaries.
| name | summary-generator |
| description | This skill should be used when generating lesson summaries for educational content. It extracts key concepts, mental models, patterns, and common mistakes from lesson markdown files using a Socratic extraction process. Use this skill when a lesson file needs a `.summary.md` companion file, or when reviewing/refreshing existing summaries. |
This skill generates concise, scannable summaries for educational lessons by extracting the essential learning elements through Socratic questioning. Summaries serve two user needs: quick review (students returning to refresh understanding) and just-in-time reference (students checking back mid-practice).
To generate a summary, work through these questions in order. Each question extracts content for one section of the summary.
"If a student remembers only ONE thing from this lesson tomorrow, what must it be?"
Extract the single most important takeaway in 1-2 sentences. This should be the foundational insight that unlocks everything else.
Test: Could someone who only read this sentence explain the lesson's purpose to a peer?
"What mental frameworks does this lesson install in the student's mind? What 'lenses' do they now see problems through?"
Extract 2-3 mental models—these are the reusable thinking patterns, not facts. Look for:
Test: Are these transferable to new situations, or are they lesson-specific facts?
"What practical techniques or patterns does this lesson teach? What can the student now DO that they couldn't before?"
Extract 2-4 actionable patterns from the lesson. These come from:
Test: Could a student apply these patterns without re-reading the lesson?
"How does AI help with this topic? What prompts or collaboration patterns make the difference?"
Extract 1-2 insights about working with AI on this topic. This should NOT expose the Three Roles framework—focus on practical collaboration patterns.
Note: Skip this section if the lesson doesn't involve AI collaboration (Layer 1 content).
"Where do students typically go wrong? What misconceptions does this lesson correct?"
Extract 2-3 common mistakes from:
Test: Would knowing these prevent a real mistake?
"What prerequisite knowledge does this build on? Where does this lead next?"
Extract navigation links:
Note: This section is optional. Skip if connections aren't clear or useful.
Generate the summary following this exact structure:
### Core Concept
[1-2 sentences from Question 1]
### Key Mental Models
- **[Model Name]**: [Brief explanation]
- **[Model Name]**: [Brief explanation]
- **[Model Name if needed]**: [Brief explanation]
### Critical Patterns
- [Pattern/technique 1]
- [Pattern/technique 2]
- [Pattern/technique 3 if applicable]
- [AI collaboration pattern if applicable]
### Common Mistakes
- [Mistake 1 and why it's wrong]
- [Mistake 2 and why it's wrong]
- [Mistake 3 if applicable]
### Connections
- **Builds on**: [Prior concept/chapter]
- **Leads to**: [Next concept/chapter]
Adjust summary length based on lesson complexity (from frontmatter proficiency_level):
| Proficiency | Target Length | Reason |
|---|---|---|
| A1-A2 (Beginner) | 150-250 words | Simpler concepts, fewer patterns |
| B1-B2 (Intermediate) | 200-350 words | More nuanced, multiple techniques |
| C1-C2 (Advanced) | 250-400 words | Complex topics, many interconnections |
Following Principle 7: Minimal Sufficient Content, summaries must NOT contain:
Summary files are named by appending .summary.md to the lesson filename (without extension):
# Lesson file:
book-source/docs/05-Python/17-intro/01-what-is-python.md
# Summary file:
book-source/docs/05-Python/17-intro/01-what-is-python.summary.md
.summary.md fileFor a lesson teaching Python data types at A2 proficiency:
### Core Concept
Data types are Python's classification system—they tell Python "what kind of data is this?" and "what operations are valid?"
### Key Mental Models
- **Types → Operations**: Numbers enable math; text enables joining; booleans enable decisions
- **Type Mismatch → Error**: `5 + "hello"` fails because Python can't add numbers to text
- **Type Decision Framework**: Ask "What kind of data?" to determine the right type
### Critical Patterns
- Use `type()` to verify what type Python assigned: `type(42)` returns `<class 'int'>`
- Type hints express intent: `age: int = 25` tells both AI and humans what you expect
- 7 categories cover all data: Numeric, Text, Boolean, Collections, Binary, Special (None)
### Common Mistakes
- Storing numbers as text (`"25"` instead of `25`) prevents math operations
- Forgetting that `0.1 + 0.2` doesn't exactly equal `0.3` (floating point precision)
- Mixing types in operations without explicit conversion
### Connections
- **Builds on**: Python installation and first programs (Chapter 17)
- **Leads to**: Deep dive into numeric types and text handling (Chapters 18-20)
Word count: ~175 words (appropriate for A2)