Syllabus — Course Supplementary Reading List
Portability: Requires a Consensus MCP connection, Node.js with
docxpackage, and file reading capability for the syllabus. Works in Claude Code CLI natively. In Claude.ai with Consensus MCP + Code Execution + file upload, the workflow is supported.
For an instructor or student with a course syllabus, produce a professional supplementary reading list as .docx containing recent peer-reviewed papers per course section.
Architectural Pattern: Bundled Script
This skill uses a bundled JavaScript helper script for DOCX generation rather than inlining the 300+ lines of layout code:
- DOCX generation logic is reusable + complex
- Better separation of concerns: skill = orchestration + intelligence; script = mechanical document assembly
- Token-efficient: skill doesn't re-derive layout each run
- Easier to maintain and version
The bundled script is at scripts/generate_reading_list.js. The skill orchestrates the pipeline + invokes the script with JSON input.
Agent Integrity Rules (Research-Pack Convention)
Locked verbatim per PR #657 audit.
- Only use what Consensus returns. Every paper title, author, journal, year, URL must come from this session's tool calls. Training-knowledge papers labeled
[Not from Consensus — model knowledge]and excluded. - Confirm before moving on. A search isn't complete until response received and inspected.
- Track three counts. Queries sent / papers received / papers cited. Surface in audit summary.
- Surface gaps, don't fill them. Section with one paper + note about limited results > section padded with fabrications.
Phase 0: Grill-Me Intake (3 forcing questions)
Q1 (root) — Syllabus input
Provide the syllabus — pick one:
- File path (PDF, DOCX, text) — I'll read it
- Pasted content — paste below
- Image of a printed syllabus — attach the image
Why I'm asking: Each format needs a different reader (PDF / DOCX parser / vision). Picking upfront prevents wasted attempts.
Forcing choice. Refuse to start without a syllabus.
Q2 (depends on Q1) — Course audience
Course audience — pick one:
- Undergraduate (intro level)
- Undergraduate (advanced / upper division)
- Graduate (Masters / early PhD)
- Graduate (doctoral / advanced)
- Professional / continuing education
- Mixed
Why I'm asking: Audience dictates summary jargon level and discussion-question complexity. Undergrad summaries define every term; grad summaries assume technical fluency. Discussion questions for undergrads test analysis; for grads test critique and extension.
See references/audience_calibration.md for the canon.
Q3 (depends on Q1) — Year range
Year range for papers — pick one:
- Last 1 year (most recent only)
- Last 2 years (default — recent + a year of context)
- Last 5 years (broader, includes foundational recent work)
Why I'm asking: Reading lists go stale fast. 1-year filters keep things fresh; 5-year filters surface foundational recent work that's already standard. Drives the year_min parameter on every Consensus search.
Forcing choice with default (last 2 years).
Stop condition: 3 questions max before Phase 1. The post-Phase-2 group-and-confirm checkpoint is its own grill-me moment.
Phase 1: Parse the Syllabus
Per Q1 input format:
- PDF: use PDF reader; extract text
- DOCX: use pandoc or DOCX parser; extract text
- Text/pasted: read directly
- Image: use vision; extract text
From extracted text:
- Course title + instructor + term
- Topic list (lecture titles, week-by-week breakdown, etc.)
- Learning outcomes (if explicit; if missing, infer 3-5 from description)
Mark inferred learning outcomes as [inferred] in the DOCX.
Phase 2: Group Topics + Confirm with User
Group via topic_grouper.py
Use scripts/topic_grouper.py to cluster related topics into 6-12 sections. Heuristic: closely-related topics merge; cross-cutting topics get their own section.
Group-and-Confirm Checkpoint (Forcing Options)
After grouping, present:
Proposed sections: [list with item counts]. Pick one:
- "Looks good — proceed with these sections"
- "Merge sections [X] and [Y]"
- "Split section [X] into two"
- "Add a section for [topic]"
- "Remove section [X]"
Why I'm asking: Grouping drives search allocation. Wrong grouping wastes the search budget on bad clusters. This is the last cheap moment to correct course before searches consume Consensus calls.
Refuse to start Phase 3 without explicit user choice.
Phase 3: Search Consensus per Section
Sequential, 1 q/sec. 1-2 queries per section.
Applied-Domain Weaving (Critical)
Don't just search the topic — search the topic + applied domain:
| ❌ Generic | ✅ Applied-domain |
|---|---|
| "enzyme kinetics" | "enzyme kinetics food processing applications" |
| "machine learning" | "machine learning clinical decision support" |
| "thermodynamics" | "thermodynamics renewable energy systems" |
| "social network analysis" | "social network analysis public health interventions" |
Boosts paper relevance dramatically. See references/applied_domain_weaving.md for the canon.
Per-Section Pattern
For each section:
1. Construct query: "{topic-keywords} {applied-domain-angle}" + year_min from Q3
2. Submit to Consensus (sequential, 1 q/sec gap enforced by citation_tracker)
3. Receive results
4. (If thin) submit one fallback query without applied-domain angle
5. Select 1-3 papers per section (15-25 total across all sections)
Selection Priorities
- Relevance — paper directly addresses the section topic
- Reviews / meta-analyses — synthesize the field
- Citation count — established work
- Applied-domain connection — tied to the course's domain (e.g., engineering vs theory)
Phase 4: Write Summaries + Discussion Questions
Summary writing
Per paper:
- Plain language (calibrated to audience from Q2)
- 2-3 sentences
- Define jargon if undergraduate audience; assume fluency if graduate
Quality bars
| ✅ Good summary | ❌ Bad summary |
|---|---|
| "This review maps how different diets — Mediterranean, Nordic, vegetarian — reshape the types of fat molecules circulating in your blood, with implications for heart disease risk." | "This paper reviews lipidomic profiles across dietary interventions and their cardiometabolic implications." |
Discussion question writing
Per paper:
- Bloom higher-order (apply / analyze / evaluate)
- Tied to a specific course learning outcome
- Promotes discussion, not just recall
| ✅ Good question | ❌ Bad question |
|---|---|
| "If dietary fat quality can reshape your lipoprotein lipidome, what does this suggest about the biochemical basis for dietary guidelines recommending unsaturated over saturated fats?" | "What did the authors find?" (Just recall) |
Use scripts/discussion_question_validator.py to flag recall-only questions.
Phase 5: Generate .docx via Bundled Script
node ../scripts/generate_reading_list.js \
--input /tmp/syllabus_data.json \
--output /path/to/reading_list_<course>_<date>.docx
The script accepts JSON with this schema:
{
"courseTitle": "string",
"courseSubtitle": "string",
"generatedDate": "string",
"yearRange": "string",
"introText": "string",
"learningOutcomes": ["string", ...],
"sections": [
{
"heading": "string",
"papers": [
{
"title": "string",
"authors": "string",
"journal": "string",
"year": number,
"url": "string",
"summary": "string",
"question": "string"
}
]
}
],
"auditLog": {
"totalQueriesSent": number,
"totalPapersReceived": number,
"totalPapersCited": number,
"toolConstraints": "string",
"s