Ajuster le système

VérifiéSûr

Examine l'opération du système d'automatisation et effectue des ajustements conservateurs et basés sur des données aux cadences et seuils. Tâche de maintenance mensuelle.

Spar Skills Guide Bot
DevOpsAvancé
3002/06/2026
Claude Code
#automation-tuning#system-maintenance#cadence-adjustment#operational-review

Recommandé pour

Notre avis

Cette compétence analyse les métriques opérationnelles d'un système d'automatisation et propose des ajustements prudents des cadences et des seuils, basés sur des preuves.

Points forts

  • Automatise les tâches de maintenance mensuelle avec des décisions fondées sur des données
  • Inclut des conditions d'abandon claires pour éviter des modifications nuisibles
  • Nécessite des preuves statistiques avant d'appliquer des changements
  • Suivi des verrous et des changements antérieurs pour éviter les conflits

Limites

  • Nécessite une structure de fichiers spécifique (Obsidian workflow)
  • Ne gère que les ajustements de cadences et de seuils, pas d'optimisations plus larges
  • Peut être trop conservateur dans ses recommandations
Quand l'utiliser

Utilisez cette compétence mensuellement ou après des échecs significatifs pour affiner les paramètres de l'automation.

Quand l'éviter

Évitez si le système est déjà stable et manque de données suffisantes, ou si des changements majeurs au-delà de son champ sont nécessaires.

Analyse de sécurité

Sûr
Score qualité92/100

The skill instructs reading and modifying local configuration files within an Obsidian workspace; no external execution, network access, or destructive commands are involved. The operations are limited to safe file edits for system tuning.

Aucun point d'attention détecté

Exemples

Monthly system tune
Run the tune-system skill to analyze my automation system and adjust cadences and thresholds if needed.
Post-failure analysis
We've had several task failures recently. Please do a system tune to check if cadences or thresholds need adjustment.

name: tune-system description: Review automation system operation and make conservative adjustments to cadences and thresholds when clearly warranted. Monthly maintenance task.

Tune System

A meta-review skill that analyzes the automation system's own operation and makes conservative, evidence-based adjustments. Mirrors The Unfinishable Map's "Minimal Quantum Interaction" tenet: small, precise interventions with clear justification.

When to Use

  • Monthly maintenance: Runs on 30-day cadence (injected when 45 days overdue)
  • Post-milestone: After reaching convergence milestones (50%, 75%, etc.)
  • Manual invocation: When you notice operational issues
  • After significant failures: If failed_tasks count exceeds 5 in a session

Instructions

1. Load Data Sources

Read these files to gather operational data:

obsidian/workflow/evolution-state.yaml  # Primary metrics
obsidian/workflow/changelog.md          # Execution history
obsidian/workflow/todo.md               # Task patterns
obsidian/reviews/                       # Recent review outputs
obsidian/project/project-brief.md       # Project goals (reference)

2. Check Abort Conditions

STOP and escalate to human if any of these are true:

  • More than 50% of recent tasks (last 10) failed
  • Convergence has regressed for 3+ consecutive sessions
  • quality.critical_issues > 0
  • Any file read errors during analysis

If aborting, create a minimal report explaining why and skip to step 8.

3. Check Locked Settings

Read evolution-state.yaml for locked_settings section. These settings cannot be modified automatically—note them for the report.

4. Analyze Five Categories

A. Cadence Analysis

Compare last_runs timestamps against cadences settings:

  • Calculate days between actual runs for each maintenance task
  • Identify tasks frequently overdue (pattern: overdue in >60% of opportunities)
  • Identify tasks never reaching cadence (always run early)

Evidence required: 5+ data points (sessions) showing consistent pattern

B. Failure Pattern Analysis

Examine failed_tasks and recent_tasks:

  • Count failures by task type
  • Look for common error patterns
  • Identify environmental issues (missing files, API errors)

Evidence required: 3+ failures of same type or pattern

C. Queue Health Analysis

Examine queue_status and replenishment_source_counts:

  • Compare task sources (chain, research, gap, staleness) to execution rates
  • Check if certain sources produce tasks that never get executed
  • Monitor P3 promotion rate

Evidence required: 5+ sessions of queue data

D. Review Finding Patterns

Scan recent files in reviews/:

  • Identify issues raised multiple times but never addressed
  • Track issue resolution rate
  • Note recurring themes across pessimistic reviews

Evidence required: 3+ reviews showing same pattern

E. Convergence Progress

Analyze progress and quality metrics:

  • Calculate convergence rate (% change per session)
  • Identify stalled areas (no progress in 3+ sessions)
  • Compare current state to convergence_targets

Evidence required: 5+ sessions of convergence data

5. Generate Findings

For each finding, determine the tier:

Tier 1 — Automatic Changes (max 3 per session)

Small, safe adjustments with clear evidence. Apply directly:

| Change Type | Limits | Example | |-------------|--------|---------| | Cadence adjustment | ±2 days | pessimistic-review: 7 → 5 days | | Overdue threshold | ±2 days | validate-all overdue: 2 → 3 days | | Replenishment weight | ±20% | chain source weight: 50 → 60 |

Before applying, verify:

  • Setting is not in locked_settings
  • Setting hasn't changed in last 60 days (check changelog)
  • Clear directional pattern (not random variation)

Tier 2 — Recommendations (log for human approval)

Medium-impact changes:

  • New task suggestions (add to todo.md as P3)
  • Cadence changes >2 days
  • Replenishment mode changes (conservative ↔ aggressive)
  • Convergence target adjustments

Tier 3 — Report Only (never automatic)

Changes requiring human judgment:

  • Skill instruction modifications
  • New skill creation
  • Tenet-related adjustments
  • Removing vetoed task constraints
  • Priority level promotions

6. Apply Tier 1 Changes

For each approved Tier 1 change:

  1. Record the previous value
  2. Apply the change to the appropriate file
  3. Add a comment noting the change date and rationale

Example change to evolution-state.yaml:

cadences:
  pessimistic-review: 5  # Changed from 7 by tune-system 2026-01-08 (overdue 4/5 sessions)

7. Update Evolution State

Add/update these fields in evolution-state.yaml:

last_runs:
  tune-system: [current ISO timestamp]

# Track what was changed for cooldown enforcement
tune_system_history:
  last_run: [ISO timestamp]
  changes_applied:
    - setting: cadences.pessimistic-review
      old_value: 7
      new_value: 5
      date: [ISO date]
      rationale: "Overdue in 4 of 5 recent sessions"

8. Generate Report

Create report at obsidian/reviews/system-tune-YYYY-MM-DD.md:

---
title: "System Tuning Report - YYYY-MM-DD"
created: YYYY-MM-DD
modified: YYYY-MM-DD
human_modified: null
ai_modified: [ISO timestamp]
draft: false
topics: []
concepts: []
related_articles:
  - "[[todo]]"
  - "[[changelog]]"
ai_contribution: 100
author: null
ai_system: [current model]
ai_generated_date: YYYY-MM-DD
last_curated: null
---

# System Tuning Report

**Date**: YYYY-MM-DD
**Sessions analyzed**: N (sessions X to Y)
**Period covered**: [date range]

## Executive Summary

[2-3 sentences on overall system health and key findings]

## Metrics Overview

| Metric | Current | Previous | Trend |
|--------|---------|----------|-------|
| Session count | N | N-X | +X |
| Avg tasks/session | X.X | X.X | ↑/↓/→ |
| Failure rate | X% | X% | ↑/↓/→ |
| Convergence | X% | X% | +X% |
| Queue depth (P0-P2) | X | X | ↑/↓/→ |

## Findings

### Cadence Analysis

[Findings with evidence and recommendations]

### Failure Pattern Analysis

[Findings with evidence and recommendations]

### Queue Health Analysis

[Findings with evidence and recommendations]

### Review Finding Patterns

[Findings with evidence and recommendations]

### Convergence Progress

[Findings with evidence and recommendations]

## Changes Applied (Tier 1)

| File | Setting | Old | New | Rationale |
|------|---------|-----|-----|-----------|
| evolution-state.yaml | cadences.X | Y | Z | [reason] |

*No changes applied* — if none were warranted

## Recommendations (Tier 2)

### [Recommendation Title]
- **Proposed change**: [specific change]
- **Rationale**: [why this helps]
- **Risk**: Low/Medium
- **To approve**: [how human can apply]

## Items for Human Review (Tier 3)

### [Item Title]
- **Issue observed**: [description]
- **Why human needed**: [explanation]
- **Suggested action**: [what human might do]

## Next Tuning Session

- **Recommended**: [date, 30 days out]
- **Focus areas**: [what to watch]

9. Log to Changelog

Add entry to obsidian/workflow/changelog.md:

### HH:MM - tune-system
- **Status**: Success/Partial/Failed
- **Sessions analyzed**: N
- **Findings**: X cadence, Y failure, Z queue, W review, V convergence
- **Tier 1 changes**: N applied
- **Tier 2 recommendations**: N logged
- **Output**: `reviews/system-tune-YYYY-MM-DD.md`

Safeguards

Evidence Thresholds

| Analysis Type | Minimum Data Points | |---------------|---------------------| | Cadence patterns | 5 sessions | | Failure patterns | 3 occurrences | | Queue patterns | 5 sessions | | Review patterns | 3 reviews | | Convergence trends | 5 sessions |

Change Cooldowns

After a Tier 1 change, that setting cannot be changed again for:

  • 2 tune-system sessions, OR
  • 60 days

Check tune_system_history.changes_applied before making any change.

Magnitude Limits

  • Cadence: ±2 days maximum
  • Threshold: ±2 days maximum
  • Weight: ±20 percentage points maximum
  • Maximum 3 Tier 1 changes per session

Locked Settings

Human can prevent automatic changes by adding to evolution-state.yaml:

locked_settings:
  cadences.check-tenets: "Locked 2026-01-10 - monthly cadence is intentional"

Important

DO NOT:

  • Modify skill instruction files (SKILL.md files)
  • Change priority levels (P0-P3) of existing tasks
  • Remove items from vetoed tasks
  • Modify anything related to tenets
  • Make changes without clear evidence (no speculative "improvements")
  • Exceed magnitude limits even if evidence seems strong
  • Change locked settings
  • Run more frequently than monthly (unless manually invoked)

DO:

  • Be conservative — when in doubt, recommend rather than apply
  • Document everything — all findings, all changes, all rationale
  • Respect cooldowns — no rapid oscillation of settings
  • Focus on operational parameters — cadences, thresholds, weights
  • Generate actionable recommendations for Tier 2/3 items
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