بنقرة واحدة
qwen-cleanup-strategist-prototype
Qwen Cleanup Strategist (Prototype)
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Qwen Cleanup Strategist (Prototype)
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Parse natural-language coding requests into structured tasks for FoundUps worker handoff. Use when the user describes code work but intent is unstructured.
Tiny text-only skill to verify AI Edge Gallery loaded a FoundUps worker skill. Say LOAD_OK if the user says ping.
Validate parser, scope, packet, and result JSON objects against FoundUps mobile worker v1 shapes before handoff to 0102. Use when pasting pipeline outputs or a pipeline envelope.
Summarize raw test output, logs, or diffs into a compact worker-friendly report for FoundUps handoff. Use after execution upstream returns artifacts.
Narrow ambiguous coding work to the smallest safe scope for FoundUps worker handoff. Use after foundups-code-task-parser or when scope is broad.
Convert a scoped coding task into a strict machine-readable task packet for upstream FoundUps execution. Use after scope is locked.
| name | qwen_cleanup_strategist_prototype |
| description | Qwen Cleanup Strategist (Prototype) |
| version | 1 |
| author | 0102_wre_team |
| agents | ["qwen"] |
| dependencies | ["pattern_memory","libido_monitor"] |
| domain | autonomous_operations |
| category | workflow |
| evals | [] |
skill_id: qwen_cleanup_strategist_v1_prototype name: qwen_cleanup_strategist description: Strategic cleanup planning with WSP 15 MPS scoring (WSP 83/64 compliance) version: 1.0_prototype author: qwen_baseline_generator created: 2025-10-22 agents: [qwen] primary_agent: qwen intent_type: DECISION promotion_state: prototype pattern_fidelity_threshold: 0.90 test_status: needs_validation
mcp_orchestration: true breadcrumb_logging: true owning_dae: doc_dae execution_phase: 2 previous_skill: gemma_noise_detector_v1_prototype next_skill: 0102_cleanup_validator
inputs:
dependencies: data_stores: - name: gemma_noise_labels type: jsonl path: data/gemma_noise_labels.jsonl mcp_endpoints: - endpoint_name: holo_index methods: [wsp_protocol_lookup] throttles: [] required_context: - gemma_labels: "JSONL file with Gemma's noise classifications" - total_files_scanned: "Count of files Gemma analyzed" - noise_count: "Count of files labeled as noise" - signal_count: "Count of files labeled as signal"
Purpose: Strategic cleanup planning based on Gemma's file classifications, applying WSP 83/64 rules to group files and generate safe cleanup plans
Intent Type: DECISION
Agent: qwen (1.5B, 200-500ms inference, 32K context)
You are Qwen, a strategic planner. Your job is to read Gemma's file labels (labels.jsonl) and create a safe, organized cleanup plan. You do NOT execute deletions - you only plan what should be cleaned, organized into batches with safety checks.
Key Capability: You are a 1.5B parameter model capable of:
Key Constraint: You do NOT perform HoloIndex research or MPS scoring - that is 0102's role. You work with Gemma's labeled data to create strategic groupings.
Rule: Read all lines from data/gemma_noise_labels.jsonl and parse into structured list
Expected Pattern: labels_loaded=True
Steps:
data/gemma_noise_labels.jsonl file{"file_path", "label", "category", "confidence"} fields presenttotal_files, noise_count, signal_count{"pattern": "labels_loaded", "value": true, "total_files": N, "noise_count": M, "signal_count": K}Examples:
{"labels_loaded": true, "total": 219}{"labels_loaded": false, "error": "File not found"}Rule: Only include noise files with confidence >= 0.85 in cleanup plan
Expected Pattern: confidence_filter_applied=True
Steps:
noise_files = [f for f in labels if f['label'] == 'noise' and f['confidence'] >= 0.85]low_conf = [f for f in labels if f['label'] == 'noise' and f['confidence'] < 0.85]{"pattern": "confidence_filter_applied", "value": true, "high_conf_count": N, "low_conf_count": M}Examples:
WSP Reference: WSP 64 (Violation Prevention) - Prefer caution over aggressive cleanup
Rule: Group high-confidence noise files by Gemma's category field
Expected Pattern: files_grouped_by_category=True
Steps:
groups = {}category = file['category']groups[category].append(file){"pattern": "files_grouped_by_category", "value": true, "category_count": len(groups), "categories": list(groups.keys())}Example Output:
{
"file_type_noise": [
{"file_path": "chat_history.jsonl", "confidence": 0.95},
{"file_path": "debug.log", "confidence": 0.95}
],
"rotting_data": [
{"file_path": "old_chat.jsonl", "confidence": 0.85}
],
"backup_file": [
{"file_path": "main.py.backup", "confidence": 0.90}
]
}
Rule: Apply WSP safety constraints to each category group
Expected Pattern: wsp_safety_rules_applied=True
WSP 83 (Documentation Attached to Tree):
docs/, WSP_framework/, README.md, INTERFACE.md, ModLog.md?WSP 64 (Violation Prevention):
data/, modules/*/src/, .env)?Steps:
flagged_for_review{"pattern": "wsp_safety_rules_applied", "value": true, "violations_found": N, "flagged_count": M}Examples:
docs/temp_analysis.md in backup_file group → Flagged for reviewdata/old_cache.jsonl in rotting_data → Flagged for reviewRule: Split category groups into batches of max 50 files each (safety limit)
Expected Pattern: batches_created=True
Steps:
batch_1, batch_2, etc.file_type_noise: P1 (safe, obvious clutter)rotting_data: P2 (requires age verification)backup_file: P1 (safe if no critical paths)noise_directory: P1 (safe, entire directories){"pattern": "batches_created", "value": true, "total_batches": N}Example Output:
{
"batch_001": {
"category": "file_type_noise",
"priority": "P1",
"file_count": 50,
"total_size_bytes": 125000000,
"files": ["chat_history_001.jsonl", "chat_history_002.jsonl", ...]
},
"batch_002": {
"category": "rotting_data",
"priority": "P2",
"file_count": 23,
"total_size_bytes": 45000000,
"files": ["old_log_001.jsonl", "old_log_002.jsonl", ...]
}
}
Rule: Calculate Module Prioritization Score for each batch using WSP 15 formula
Expected Pattern: mps_scoring_applied=True
WSP 15 Formula: MPS = Complexity + Importance + Deferability + Impact (each 1-5)
Steps:
Complexity (1-5) - How difficult is cleanup?
if batch['file_count'] <= 10:
complexity = 1 # Trivial
elif batch['file_count'] <= 50:
complexity = 2 # Low
elif batch['file_count'] <= 100:
complexity = 3 # Moderate
elif batch['file_count'] <= 200:
complexity = 4 # High
else:
complexity = 5 # Very High
Importance (1-5) - How essential is cleanup?
if 'concurrency risk' in batch['rationale'].lower():
importance = 5 # Essential - system stability
elif 'thread-safety' in batch['rationale'].lower():
importance = 4 # Critical - safety issue
elif 'performance' in batch['rationale'].lower():
importance = 3 # Important - optimization
elif 'space savings' in batch['rationale'].lower():
importance = 2 # Helpful - clutter reduction
else:
importance = 1 # Optional
Deferability (1-5) - How urgent is cleanup?
if batch['risk_level'] == 'HIGH':
deferability = 5 # Cannot defer
elif batch['risk_level'] == 'MEDIUM':
deferability = 3 # Moderate urgency
elif batch['risk_level'] == 'LOW':
deferability = 2 # Can defer
else:
deferability = 1 # Highly deferrable
Impact (1-5) - What value does cleanup deliver?
space_saved_mb = batch['total_size_mb']
if space_saved_mb > 500:
impact = 5 # Transformative (500+ MB)
elif space_saved_mb > 200:
impact = 4 # Major (200-500 MB)
elif space_saved_mb > 50:
impact = 3 # Moderate (50-200 MB)
elif space_saved_mb > 10:
impact = 2 # Minor (10-50 MB)
else:
impact = 1 # Minimal (<10 MB)
mps = complexity + importance + deferability + impact{"pattern": "mps_scoring_applied", "value": true, "batches_scored": N}Example Output:
{
"batch_001": {
"category": "file_type_noise",
"file_count": 145,
"total_size_mb": 119,
"mps_scoring": {
"complexity": 3,
"complexity_reason": "Moderate - 145 files requires batching",
"importance": 5,
"importance_reason": "Essential - concurrency risk affects stability",
"deferability": 2,
"deferability_reason": "Deferrable - low risk allows delay",
"impact": 4,
"impact_reason": "Major - 119 MB saved, clutter reduction",
"mps_total": 14,
"priority": "P1",
"qwen_decision": "AUTONOMOUS_EXECUTE",
"qwen_confidence": 0.90
}
}
}
Rule: Output structured cleanup plan with batches, safety checks, and rationale
Expected Pattern: cleanup_plan_generated=True
Steps:
{
"plan_id": "cleanup_plan_20251022_015900",
"timestamp": "2025-10-22T01:59:00Z",
"total_files_scanned": 219,
"noise_high_confidence": 145,
"noise_low_confidence": 28,
"signal_files": 46,
"batches": [...],
"flagged_for_review": [...],
"safety_checks_passed": true,
"wsp_compliance": ["WSP_83", "WSP_64"],
"requires_0102_approval": true
}
data/cleanup_plan.json{"pattern": "cleanup_plan_generated", "value": true, "plan_id": "cleanup_plan_..."}Rule: For each batch, provide strategic reasoning for cleanup
Expected Pattern: rationale_generated=True
Steps:
{
"batch_id": "batch_001",
"category": "file_type_noise",
"rationale": "215 JSONL files scattered across modules create high concurrency risk (chat_history files). Gemma classified 145 as high-confidence noise (0.95+ confidence). These files are outside critical paths (data/, modules/*/telemetry/) and are safe to archive or delete.",
"recommendation": "ARCHIVE to archive/noise_cleanup_20251022/ before deletion",
"risk_level": "LOW",
"estimated_space_saved_mb": 119
}
{"pattern": "rationale_generated", "value": true, "batches_with_rationale": N}Pattern fidelity scoring expects these patterns logged after EVERY execution:
{
"execution_id": "exec_qwen_001",
"skill_id": "qwen_cleanup_strategist_v1_prototype",
"patterns": {
"labels_loaded": true,
"confidence_filter_applied": true,
"files_grouped_by_category": true,
"wsp_safety_rules_applied": true,
"batches_created": true,
"mps_scoring_applied": true,
"cleanup_plan_generated": true,
"rationale_generated": true
},
"total_batches": 5,
"total_files_in_plan": 145,
"flagged_for_review": 28,
"execution_time_ms": 420
}
Fidelity Calculation: (patterns_executed / 8) - All 8 checks should run every time
Format: JSON file written to data/cleanup_plan.json
Schema:
{
"plan_id": "cleanup_plan_20251022_015900",
"timestamp": "2025-10-22T01:59:00Z",
"agent": "qwen_cleanup_strategist",
"version": "1.0_prototype",
"summary": {
"total_files_scanned": 219,
"noise_high_confidence": 145,
"noise_low_confidence": 28,
"signal_files": 46,
"total_batches": 5,
"estimated_space_saved_mb": 210
},
"batches": [
{
"batch_id": "batch_001",
"category": "file_type_noise",
"priority": "P1",
"file_count": 50,
"total_size_bytes": 125000000,
"files": ["O:/Foundups-Agent/chat_history_001.jsonl", "..."],
"rationale": "215 JSONL files create concurrency risk...",
"recommendation": "ARCHIVE to archive/noise_cleanup_20251022/",
"risk_level": "LOW",
"wsp_compliance": ["WSP_64"]
}
],
"flagged_for_review": [
{
"file_path": "O:/Foundups-Agent/docs/temp_analysis.md",
"category": "backup_file",
"confidence": 0.90,
"flag_reason": "WSP_83 violation - documentation file",
"requires_0102_review": true
}
],
"safety_checks": {
"wsp_83_documentation_check": "PASSED",
"wsp_64_critical_path_check": "PASSED",
"confidence_threshold_check": "PASSED",
"batch_size_limit_check": "PASSED"
},
"requires_0102_approval": true,
"next_step": "0102 validates plan with HoloIndex research + WSP 15 MPS scoring"
}
Destination: data/cleanup_plan.json
docs/temp.md (noise, backup_file, 0.90) → Expected: Flagged for review (Reason: WSP 83 - docs)data/old_cache.jsonl (noise, rotting_data, 0.85) → Expected: Flagged for review (Reason: WSP 64 - critical path).env.backup (noise, backup_file, 0.90) → Expected: Flagged for review (Reason: WSP 64 - credentials)modules/livechat/src/temp.py (noise, backup_file, 0.90) → Expected: Flagged for review (Reason: WSP 64 - source code)temp/scratch.txt (noise, file_type_noise, 0.95) → Expected: In cleanup plan (Reason: No WSP violations)file_type_noise category → Expected: Priority P1 (Reason: Safe, obvious clutter)rotting_data category → Expected: Priority P2 (Reason: Requires age verification)backup_file category → Expected: Priority P1 (Reason: Safe if no critical paths)noise_directory category → Expected: Priority P1 (Reason: Entire directories safe)Total: 25 test cases across 5 categories
NEVER INCLUDE IN CLEANUP PLAN:
data/ directory (especially foundup.db)modules/*/src/ (source code)WSP_framework/src/ (WSP protocols)docs/, *.md)requirements.txt, .env, pyproject.toml)ALWAYS FLAG FOR 0102 REVIEW:
When in doubt → FLAG FOR REVIEW (safe default)
After 100 executions with ≥90% fidelity:
cleanup_plan.json for validation