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evolve-skill-from-traces

pjt222
Mis à jour 2 days ago
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Métageneral

À propos

Cette compétence génère et met à jour automatiquement la documentation SKILL.md en analysant les traces d'exécution des agents. Elle utilise un pipeline en trois étapes pour collecter les trajectoires, proposer des améliorations via une analyse multi-agents, et fusionner les modifications sans conflits. Les développeurs peuvent l'utiliser pour établir un lien entre le comportement observé des agents et la documentation formelle des compétences.

Installation rapide

Claude Code

Recommandé
Principal
npx skills add pjt222/agent-almanac -a claude-code
Commande PluginAlternatif
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternatif
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/evolve-skill-from-traces

Copiez et collez cette commande dans Claude Code pour installer cette compétence

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

Dépôt GitHub

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

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