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evolve-skill-from-traces

pjt222
Updated 2 days ago
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About

This skill automatically generates and updates SKILL.md documentation by analyzing agent execution traces. It uses a three-stage pipeline to collect trajectories, propose improvements via multi-agent analysis, and merge edits conflict-free. Developers can use it to bridge observed agent behavior with formal skill documentation.

Quick Install

Claude Code

Recommended
Primary
npx skills add pjt222/agent-almanac -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/evolve-skill-from-traces

Copy and paste this command in Claude Code to install this skill

Documentation

Evolve a Skill from Execution Traces

Raw traces → validated SKILL.md via 3-stage pipeline: trajectory collect, parallel multi-agent patch proposal, conflict-free consolidation. Bridges observed behavior + documented procedures. Successful runs → reproducible skills.

Use When

  • Traces reveal recurring patterns not in skills
  • Observed behavior outperforms documented
  • Build skills from scratch via expert demos
  • Multiple agents propose conflicting improvements

In

  • Required: traces — agent logs/transcripts (min 10 successful recommended)
  • Required: target_skill — path to existing SKILL.md or "new" for from-scratch
  • Optional: analyst_count — parallel analysts (default: 4)
  • Optional: held_out_ratio — fraction reserved for validation (default: 0.2)

Do

Step 1: Collect Traces

Gather logs/tool-call sequences/transcripts. Filter successful. Normalize → (state, action, outcome) triples w/ timestamps.

  1. Identify source: session logs, tool-call history, conversation exports
  2. Filter by success (exit 0, completion flag, user confirm)
  3. Normalize each → structured triples:
trace_entry:
  state: <context before the action>
  action: <tool call, command, or decision made>
  outcome: <result, output, or state change>
  timestamp: <ISO 8601>
  1. Partition: reserve held_out_ratio (default 20%) for Step 7 validation, rest for Steps 2-6
# Example: count available traces and compute partition
total_traces=$(ls traces/*.json | wc -l)
held_out=$(echo "$total_traces * 0.2 / 1" | bc)
drafting=$((total_traces - held_out))
echo "Drafting: $drafting traces, Held-out: $held_out traces"

→ Normalized traces partitioned drafting (80%) + held-out (20%). Each entry has state, action, outcome, timestamp.

If err: <10 successful → collect more. Small sets → overfit → fail on novel. No timestamps → ordinal sequence.

Step 2: Cluster

Group by outcome pattern. Identify invariant core (all successful) vs variant branches (diff across runs). Invariant core = skeleton.

  1. Align by action type → sequence labels
  2. Longest common subsequence → invariant core
  3. Classify rest → variants, note which traces + conditions
  4. Branch frequency: % of successful including each variant
invariant_core:
  - action: "read_input_file"
    frequency: 100%
  - action: "validate_schema"
    frequency: 100%
  - action: "transform_data"
    frequency: 100%

variant_branches:
  - action: "retry_on_timeout"
    frequency: 35%
    condition: "network latency > 2s"
  - action: "fallback_to_cache"
    frequency: 15%
    condition: "API returns 503"

→ Clear separation invariant (all) vs variant (subset). Each variant has frequency + condition.

If err: no invariant emerges (heterogeneous) → target may be multiple distinct skills. Split by outcome type, process each.

Step 3: Draft Skeleton

Invariant core → initial SKILL.md w/ frontmatter, When to Use (entry conditions), Inputs (varied params), Procedure (1 step per invariant action).

  1. Extract entry conditions from first state → When to Use
  2. Params varied (paths, thresholds, options) → Inputs
  3. 1 procedure step per invariant action, most common phrasing
  4. Placeholder Expected/On failure based on observed outcomes
# Scaffold the skeleton if creating a new skill
mkdir -p skills/<skill-name>/
# Skeleton structure
## When to Use
- <derived from common entry conditions>

## Inputs
- **Required**: <parameters present in all traces>
- **Optional**: <parameters present in some traces>

## Procedure
### Step N: <invariant action label>
<most common implementation from traces>

**Expected:** <most common success outcome>
**On failure:** <placeholder -- refined in Steps 4-6>

→ Valid SKILL.md skeleton w/ frontmatter, When to Use, Inputs, Procedure (1 step per invariant). Expected = observed, On failure = placeholder.

If err: skeleton >500 lines pre-variants → invariant too granular. Merge adjacent actions always together. Target 5-10 steps.

Step 4: Parallel Multi-Agent Patches

Spawn N analysts (4-6), each reviews traces vs skeleton from diff lens. Each → structured patch: section, old, new, rationale.

Lens per analyst:

AnalystLensFocus
1CorrectnessAll success paths captured? Any invariant missing?
2EfficiencyRedundant steps? Merge/parallelize?
3RobustnessFailure modes unhandled? On failure content?
4Edge CasesVariants become conditional steps or pitfalls?
5 (optional)ClarityEach step unambiguous? Mechanically followable?
6 (optional)GeneralizabilityTrace-specific artifacts should abstract?

Each analyst gets:

  • Skeleton from Step 3
  • Full drafting set (not held-out)
  • Assigned lens + focus questions

Each → structured patches:

patch:
  analyst: "robustness"
  section: "Procedure > Step 3"
  old_text: "**On failure:** <placeholder>"
  new_text: "**On failure:** If the API returns 503, wait 5 seconds and retry up to 3 times. If retries are exhausted, fall back to the cached response from the previous successful run."
  rationale: "Traces #4, #7, #12 show 503 errors resolved by retry. Trace #15 shows cache fallback when retries fail."
  supporting_traces: [4, 7, 12, 15]

→ Each analyst returns 3-10 patches w/ section, old/new, rationale, trace IDs. All collected into single set.

If err: analyst returns no patches → lens may not apply. OK — not every lens surfaces issues. Vague patches no trace refs → reject + re-prompt w/ supporting_traces req.

Step 5: Detect + Classify Conflicts

Compare all patches for overlapping edits. Classify each pair.

  1. Index by target section
  2. Same section → compare old_text + new_text
  3. Classify:
ConflictDefResolution
CompatibleDiff sections, no overlapMerge directly
ComplementarySame section, additive (both add, no contradiction)Combine text
ContradictorySame section, mutually exclusive (add X, remove X or add Y instead)Step 6 resolution
conflict_report:
  total_patches: 24
  compatible: 18
  complementary: 4
  contradictory: 2
  contradictions:
    - section: "Procedure > Step 5"
      patch_a: {analyst: "efficiency", action: "remove step"}
      patch_b: {analyst: "robustness", action: "add retry logic"}
      supporting_traces_a: [2, 8, 11]
      supporting_traces_b: [4, 7, 12, 15]

→ Conflict report: all pairs classified, contradictions have supporting trace counts.

If err: ambiguous (patch adds + modifies same section) → split into 2 (additive + modifying). Re-classify.

Step 6: Consolidate

Merge all → single SKILL.md via 3-tier resolution.

  1. Compatible: Apply directly — diff sections no conflict
  2. Complementary: Combine new_text from both → coherent block, both contributions preserved
  3. Contradictory: Prevalence-weighting:
    • Count traces supporting each
    • Prefer more traces
    • Tied (or within 10%) → argumentation skill to eval which better serves purpose
    • Document rejected as Pitfall or On failure note
consolidation_log:
  applied_directly: 18
  combined: 4
  resolved_by_prevalence: 1
  resolved_by_argumentation: 1
  rejected_alternatives_documented: 2

Post-consolidation verify:

  • All sections present (When to Use, Inputs, Procedure, Validation, Common Pitfalls, Related Skills)
  • Every step has Expected + On failure
  • No duplicate/contradictory instructions
  • Line count ≤ 500

→ Single consolidated SKILL.md incorporating all analysts. Contradictions resolved w/ rationale. Rejected alts → pitfall/note.

If err: internally inconsistent (Step 3 assumes file exists but Step 2 removed by efficiency) → revert conflicting edit, keep original skeleton for section. Flag for manual review.

Step 7: Validate + Register

Run consolidated against held-out (20% Step 1). Verify Expected/On failure match observed in unseen traces.

  1. Each held-out → walk through procedure step-by-step
  2. Each step → compare Expected vs actual
  3. Record matches/mismatches:
validation_results:
  held_out_traces: 5
  full_match: 4
  partial_match: 1
  no_match: 0
  mismatches:
    - trace_id: 23
      step: 4
      expected: "API returns 200"
      actual: "API returns 429 (rate limited)"
      action: "Add rate-limit handling to On failure block"
  1. Mismatch >20% → return Step 4 w/ mismatched added to drafting
  2. New skill → create-skill for dir, registry, symlinks
  3. Evolving existing → evolve-skill for version + translation sync
# Final validation: line count
lines=$(wc -l < skills/<skill-name>/SKILL.md)
[ "$lines" -le 500 ] && echo "OK ($lines lines)" || echo "FAIL: $lines lines > 500"

→ ≥80% held-out match end-to-end. Registered in skills/_registry.yml w/ correct metadata.

If err: >20% mismatch → overfit to drafting. Add mismatched to drafting, re-run Step 2. Still fail after 2 iterations → too variable for single skill → split by outcome type.

Check

  • ≥10 successful traces before drafting
  • Partitioned drafting (80%) + held-out (20%)
  • Invariant + variants documented
  • ≥4 analysts distinct lenses
  • All conflicts classified (compatible, complementary, contradictory)
  • Contradictions resolved w/ rationale
  • SKILL.md all sections w/ Expected/On failure
  • Held-out ≥80% match
  • Line ≤500
  • Registered (new) or version-bumped (existing)

Traps

  • Too few traces: <10 → unreliable. Invariant may include accidental, variants lack frequency data. Collect more.
  • Overfit to artifacts: Tool-specific (particular API client retry) may not generalize. Step 3 abstract → tool-agnostic. Describe what, not which tool.
  • Ignore failure traces: Failures reveal On failure content. Step 1 collect failed + tag. Step 4 robustness analyst evaluates unhandled.
  • Single-lens: 1-2 analysts miss perspectives. Efficiency alone strips safety checks robustness would preserve. ≥4 distinct lenses.
  • Merge contradictions w/o resolution: Both sides → inconsistent skill ("do X" + "skip X"). Always classify + resolve Step 6.
  • No held-out validation: Consolidated may fit drafting perfect, fail novel runs. Reserve 20% + test.

  • evolve-skill — simpler human-directed (complementary: no traces)
  • create-skill — newly extracted from scratch; Step 7 registration
  • review-skill-format — validation post-consolidation → agentskills.io
  • argumentation — Step 6 resolve contradictions when prevalence tied
  • verify-agent-output — evidence trails for patches; validates analyst outputs Step 4

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman-ultra/skills/evolve-skill-from-traces
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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