Metacognitive Self-Modification
Analyze the effectiveness of past skill improvements and refine the improvement process itself. This is the core innovation from the Hyperagents paper: not just improving skills, but improving HOW skills are improved.
Context Triggers (auto-invocation)
This skill should be invoked automatically when:
-
Regression detected: The homeostatic monitor finds a skill's evaluation window ended in
pending_rollback_reviewstatus. The improvement made things worse -- we need to understand why. -
Low effectiveness rate: When
ImprovementMemory.get_effective_strategies()vsget_failed_strategies()shows effectiveness below 50%, the improvement process itself needs refinement. -
Degradation despite improvements: When
PerformanceTracker.get_improvement_trend()returns negative for a skill that was recently improved. -
Periodic check: After every 10 improvement cycles (tracked via outcome count in ImprovementMemory).
Hook integration
The homeostatic monitor emits
"improvement_triggered": true when a skill crosses the
flag threshold. At that point, before dispatching the
skill-improver, check if metacognitive analysis is
warranted:
from abstract.improvement_memory import ImprovementMemory
from pathlib import Path
memory = ImprovementMemory(
Path.home() / ".claude/skills/improvement_memory.json"
)
# Check if metacognitive analysis is warranted
effective = memory.get_effective_strategies()
failed = memory.get_failed_strategies()
total = len(effective) + len(failed)
needs_metacognition = False
# Trigger 1: Low effectiveness rate
if total >= 5 and len(effective) / total < 0.5:
needs_metacognition = True
# Trigger 2: Periodic check (every 10 outcomes)
if total > 0 and total % 10 == 0:
needs_metacognition = True
# Trigger 3: Recent regression
if failed and failed[-1].get("outcome_type") == "failure":
needs_metacognition = True
if needs_metacognition:
# Run metacognitive analysis before next improvement
pass # Skill(abstract:metacognitive-self-mod)
When To Use (Manual)
- After a batch of skill improvements to assess what worked
- When improvement outcomes show regressions
- Periodically (monthly) to refine improvement strategy
- When the skill-improver agent seems ineffective
When NOT To Use
- Routine skill improvements (use skill-improver directly)
- First-time skill creation (use skill-authoring)
Workflow
Step 1: Load improvement data
Read improvement memory and performance tracker data:
# Check for improvement memory
MEMORY_FILE=~/.claude/skills/improvement_memory.json
TRACKER_FILE=~/.claude/skills/performance_history.json
if [ ! -f "$MEMORY_FILE" ]; then
echo "No improvement memory found."
echo "Run skill-improver first to generate improvement data."
exit 0
fi
Load the JSON files using Python:
from abstract.improvement_memory import ImprovementMemory
from abstract.performance_tracker import PerformanceTracker
from pathlib import Path
memory = ImprovementMemory(Path.home() / ".claude/skills/improvement_memory.json")
tracker = PerformanceTracker(Path.home() / ".claude/skills/performance_history.json")
Step 2: Classify improvement outcomes
For each improvement outcome in memory, classify:
- Effective:
after_score - before_score >= 0.1 - Neutral:
-0.1 < improvement < 0.1 - Regression:
after_score < before_score
effective = memory.get_effective_strategies()
failed = memory.get_failed_strategies()
# Calculate effectiveness rate
total = len(effective) + len(failed)
if total > 0:
effectiveness_rate = len(effective) / total
Step 3: Extract meta-patterns
Analyze WHAT types of improvements succeed vs fail:
Success patterns to look for:
- Adding error handling (reduces failure rate)
- Adding examples (improves user ratings)
- Adding quiet/verbose modes (reduces friction)
- Simplifying workflow steps (reduces duration)
Failure patterns to look for:
- Over-engineering (adding too many options)
- Breaking existing workflows (regression)
- Adding complexity without validation
- Token budget overflow from verbose additions
For each pattern found, record as a causal hypothesis:
memory.record_insight(
skill_ref="_meta", # Special ref for meta-insights
category="causal_hypothesis",
insight="Error handling improvements have 85% success rate",
evidence=["skill-A v1.1.0: +0.3", "skill-B v2.1.0: +0.15"]
)
Step 4: Analyze improvement trends
Use PerformanceTracker to identify:
- Skills with sustained improvement (positive trend)
- Skills with degradation despite improvement attempts
- Domains where improvements are most effective
for skill_ref in tracker.get_all_skill_refs():
trend = tracker.get_improvement_trend(skill_ref)
if trend is not None:
if trend > 0.05:
# Sustained improvement - what's working?
pass
elif trend < -0.05:
# Degrading despite improvements - investigate
pass
Step 5: Generate strategy recommendations
Based on the meta-analysis, generate recommendations for the skill-improver:
-
Priority formula adjustments: If certain issue types have higher improvement success rates, weight them higher.
-
Approach selection: If "add error handling" has 85% success vs "restructure workflow" at 30%, bias toward error handling.
-
Threshold adjustments: If improvements below priority 3.0 consistently fail, raise the minimum threshold.
-
Avoidance rules: Document anti-patterns to avoid in future improvements.
Step 6: Store meta-insights
Record all findings back into ImprovementMemory under the
special _meta skill ref:
# Record strategy recommendation
memory.record_insight(
skill_ref="_meta",
category="strategy_success",
insight="Recommendation: Prioritize error handling and examples over restructuring",
evidence=[f"Success rate: error_handling={eh_rate:.0%}, restructure={rs_rate:.0%}"]
)
Step 7: Update skill-improver strategy
If significant meta-insights are found, propose concrete modifications to the skill-improver agent:
- Update priority weights in the priority formula
- Add avoidance rules for known anti-patterns
- Adjust thresholds based on empirical data
- Add new improvement patterns that proved effective
Important: Propose changes, do not auto-apply. The user must approve modifications to the improvement process.
Output
Metacognitive Self-Modification Report
Improvement Data:
Total outcomes analyzed: 15
Effective improvements: 11 (73%)
Regressions: 2 (13%)
Neutral: 2 (13%)
Success Patterns:
1. Error handling additions: 5/6 success (83%)
2. Example additions: 3/3 success (100%)
3. Quiet mode additions: 2/2 success (100%)
Failure Patterns:
1. Workflow restructuring: 1/3 success (33%)
2. Token-heavy additions: 0/1 success (0%)
Performance Trends:
Improving: 8 skills (positive trend)
Stable: 4 skills (no trend)
Degrading: 1 skill (negative trend despite attempts)
Recommendations:
1. Weight error handling improvements 2x in priority
2. Avoid workflow restructuring below priority 8.0
3. Cap additions at 200 tokens to prevent budget overflow
4. Focus next improvement cycle on degrading skill X
Meta-insights stored: 5 new entries in improvement memory
Related
abstract:skill-improver- The agent this skill analyzes and proposes modifications forabstract:skills-eval- Evaluation framework whose criteria could be refined by meta-insightsabstract:aggregate-logs- Data source for improvement metrics