Specstory Yak Shave Analyzer
Analyzes your .specstory/history to detect when coding sessions drifted off track from their original goal. Produces a "yak shave score" for each session.
How It Works
- •Parses specstory history files from a date range (or all recent sessions)
- •Extracts the initial user intent from the first message
- •Tracks domain shifts: file references, tool call patterns, goal changes
- •Scores each session from 0 (laser focused) to 100 (maximum yak shave)
- •Summarizes your worst offenders and patterns
What Is Yak Shaving?
"I need to deploy my app, but first I need to fix CI, but first I need to update Node, but first I need to fix my shell config..."
Yak shaving is when you start with Goal A but end up deep in unrelated Task Z. This skill detects that pattern in your AI coding sessions.
Usage
Slash Command
When invoked via /specstory-yak, interpret the user's natural language:
| User says | Script args |
|---|---|
/specstory-yak | --days 7 (default) |
/specstory-yak last 30 days | --days 30 |
/specstory-yak this week | --days 7 |
/specstory-yak top 10 | --top 10 |
/specstory-yak january | --from 2026-01-01 --to 2026-01-31 |
/specstory-yak from jan 15 to jan 20 | --from 2026-01-15 --to 2026-01-20 |
/specstory-yak by modification time | --by-mtime |
/specstory-yak last 14 days as json | --days 14 --json |
/specstory-yak save to yak-report.md | -o yak-report.md |
/specstory-yak last 90 days output to report | --days 90 -o report.md |
Direct Script Usage
python /path/to/skills/specstory-yak/scripts/analyze.py [options]
Arguments:
- •
--days N- Analyze last N days (default: 7) - •
--from DATE- Start date (YYYY-MM-DD) - •
--to DATE- End date (YYYY-MM-DD) - •
--path PATH- Path to .specstory/history (auto-detects if not specified) - •
--top N- Show top N worst yak shaves (default: 5) - •
--json- Output as JSON - •
--verbose- Show detailed analysis - •
--by-mtime- Filter by file modification time instead of filename date - •
-o, --output FILE- Write report to file (auto-adds .md or .json extension)
Examples:
# Analyze last 7 days python scripts/analyze.py # Analyze last 30 days, show top 10 python scripts/analyze.py --days 30 --top 10 # Analyze specific date range python scripts/analyze.py --from 2026-01-01 --to 2026-01-28 # Filter by when files were modified (not session start time) python scripts/analyze.py --days 7 --by-mtime # JSON output for further processing python scripts/analyze.py --days 14 --json # Save report to a markdown file python scripts/analyze.py --days 90 -o yak-report.md # Save JSON to a file python scripts/analyze.py --days 30 --json -o yak-data.json
Output
Yak Shave Report (2026-01-21 to 2026-01-28) ========================================== Sessions analyzed: 23 Average yak shave score: 34/100 Top Yak Shaves: --------------- 1. [87/100] "fix button alignment" (2026-01-25) Started: CSS fix for button Ended up: Rewriting entire build system Domain shifts: 4 (ui -> build -> docker -> k8s) 2. [72/100] "add logout feature" (2026-01-23) Started: Add logout button Ended up: Refactoring auth system + session management Domain shifts: 3 (ui -> auth -> database) 3. [65/100] "update readme" (2026-01-22) Started: Documentation update Ended up: CI pipeline overhaul Domain shifts: 2 (docs -> ci -> testing) Most Focused Sessions: ---------------------- 1. [5/100] "explain auth flow" (2026-01-26) - Pure analysis, no drift 2. [8/100] "fix typo in config" (2026-01-24) - Quick surgical fix Patterns Detected: ------------------ - You yak shave most on: UI tasks (avg 58/100) - Safest task type: Code review/explanation (avg 12/100) - Peak yak shave hours: 11pm-2am (avg 71/100)
Scoring Methodology
The yak shave score (0-100) is computed from:
| Factor | Weight | Description |
|---|---|---|
| Domain shifts | 40% | How many times file references jumped domains |
| Goal completion | 25% | Did the original stated goal get completed? |
| Session length ratio | 20% | Length vs. complexity of original ask |
| Tool type cascade | 15% | Read->Search->Edit->Create->Deploy escalation |
Score interpretation:
- •0-20: Laser focused
- •21-40: Minor tangents
- •41-60: Moderate drift
- •61-80: Significant yak shaving
- •81-100: Epic rabbit hole
Present Results to User
IMPORTANT: After running the analyzer script, you MUST add a personalized LLM-generated summary at the very top of your response, BEFORE showing the raw report output.
LLM Summary Guidelines
Generate a 3-5 sentence personalized commentary that:
- •
Opens with a verdict - A witty one-liner about the overall state (e.g., "Your coding sessions this week were... an adventure." or "Remarkably disciplined! Someone's been taking their focus vitamins.")
- •
Calls out the highlight - Reference the most notable session specifically:
- •If high yak shave: "That January 25th button fix that somehow became a Kubernetes migration? Chef's kiss of scope creep."
- •If low yak shave: "Your January 26th auth flow explanation was surgical - in and out, no detours."
- •
Identifies a pattern - Note any recurring theme:
- •"You seem to yak shave most when starting with UI tasks"
- •"Late night sessions are your danger zone"
- •"Your refactoring sessions tend to stay focused"
- •
Ends with actionable advice or a joke - Either:
- •A practical tip: "Consider time-boxing those 'quick CSS fixes' - they have a 73% yak shave rate"
- •Or a joke: "At this rate, your next typo fix will result in a complete rewrite of the Linux kernel"
Example LLM Summary
## 🐃 Your Yak Shave Analysis Well, well, well. You came to fix buttons and left having rewritten half the infrastructure. Your average yak shave score of 47/100 puts you firmly in "classic developer behavior" territory. The standout? That January 25th session where a CSS alignment fix somehow evolved into a full Kubernetes deployment overhaul. Four domain shifts later, you probably forgot what a button even looks like. Pattern I noticed: Your UI tasks have a 58% higher yak shave rate than your code review sessions. Maybe start labeling those "quick UI fixes" as "potential 3-hour adventures" in your calendar. Here's the full breakdown:
Then show the raw report output below your summary.
What to Highlight
After your summary, when presenting the raw results:
- •The worst offenders with before/after comparison
- •Patterns in when/what causes yak shaving
- •Actionable insight - what task types to watch out for