| name | memory-health |
| description | Check memory system health and data quality. Use when user asks "how's my memory?", "system health", "memory stats", "data quality", "how's my brain?", or for periodic self-diagnostics. See also: `memory-audit` for content-level provenance; `diagnose` for daemon connectivity issues. |
Memory Health
Provide a dashboard view of the memory system's health, including entity counts, memory statistics, data quality indicators, and recommendations.
Triggers
- User says "memory health", "memory stats", "brain check"
- User says "data quality", "how's my memory system?"
- User says "how much do you remember?", "what's in your brain?"
- Periodic self-check (weekly review, morning brief)
Schema Reference
Use these exact column names in all SQLite queries. Do NOT guess column names.
entities table: id, name, type, canonical_name, description, importance (REAL), created_at, updated_at, metadata, last_contact_at, contact_frequency_days, contact_trend, attention_tier, close_circle (BOOLEAN), close_circle_reason, deleted_at, deleted_reason
memories table: id, content, content_hash, type, importance (REAL), confidence (REAL), source, source_id, source_context, created_at, updated_at, last_accessed_at, access_count, verified_at, verification_status, metadata, source_channel, deadline_at, temporal_markers, lifecycle_tier, sacred_reason (NOT sacred), archived_at, fact_id, hash, prev_hash, workspace_id, corrected_at, corrected_from, invalidated_at, invalidated_reason, origin_type
relationships table: id, source_entity_id, target_entity_id, relationship_type, strength (REAL), origin_type, direction, valid_at, invalid_at (NOT invalidated_at), created_at, updated_at, metadata, lifecycle_tier
predictions table: id, content, prediction_type, priority (REAL), expires_at, is_shown, is_acted_on, created_at, shown_at, prediction_pattern_name, metadata
Important distinctions:
- Embeddings are in SEPARATE tables (
entity_embeddings, memory_embeddings), NOT columns on the main tables
memories.sacred_reason exists, but there is no column called sacred or critical
relationships.invalid_at (not invalidated_at) marks invalid relationships
memories.invalidated_at marks invalidated memories (different column name than relationships)
- Always filter with
deleted_at IS NULL on entities and invalidated_at IS NULL on memories
Workflow
Step 1: Gather Statistics
Use the memory_system_health MCP tool or direct SQLite queries with the schema above.
Alternatively, use the Claudia CLI to get current system state:
claudia memory session context --scope full --project-dir "$PWD"
This returns entity counts, memory counts, relationship counts, and predictions.
Step 2: Calculate Health Indicators
From the session context, derive:
Entity Health
- Total entities by type (people, projects, organizations, topics)
- Entities with no associated memories (orphans)
- Entities not mentioned in 90+ days (stale)
Memory Health
- Total memories by type (fact, preference, observation, learning)
- Average importance score
- Invalidated vs. active memories
- Corrected memories count
Relationship Health
- Total active relationships
- Relationships marked as invalid
- Cooling relationships (no recent activity)
Data Quality
- Potential duplicate entities (fuzzy name match)
- Orphan memories (no entity links)
- Memories below importance threshold (0.3)
Step 3: Present Dashboard
Format:
## Memory System Health Report
### Entities
| Type | Count | Stale (90d) |
|--------------|-------|-------------|
| People | 23 | 2 |
| Projects | 12 | 5 |
| Organizations| 8 | 0 |
| Topics | 15 | 3 |
### Memories
- **Total:** 847 active memories
- **Average importance:** 0.72
- **By type:** 412 facts, 198 preferences, 156 observations, 81 learnings
- **Corrected:** 12 memories have been corrected
- **Invalidated:** 34 memories marked as no longer true
### Relationships
- **Active:** 67 relationships
- **Cooling:** 8 relationships (no contact in 30+ days)
### Data Quality
- **Potential duplicates:** 3 entity pairs to review
- **Orphan memories:** 5 memories without entity links
- **Low importance:** 23 memories below 0.3 threshold
### Recommendations
1. Review potential duplicates: "John Smith" and "Jon Smith" may be the same person
2. Consider archiving 5 stale projects with no recent activity
3. 8 relationships are cooling - may want to reconnect
Quick Stats Mode
If user just wants numbers:
Your memory at a glance:
- 58 people, 12 projects, 8 orgs
- 847 memories (avg importance: 0.72)
- 67 relationships tracked
- Last consolidation: 2 hours ago
Troubleshooting Mode
When user reports memory issues ("you forgot X", "why don't you remember"):
- Search for the specific topic/entity
- Check if memories exist but are below recall threshold
- Check if memories were invalidated
- Report findings:
I searched for memories about "[topic]":
- Found 3 memories, but all below importance 0.4 (not surfacing in context)
- One memory was corrected on [date]
- Recommendation: I can boost the importance of these if they're still relevant
Recommendations Engine
Based on health metrics, suggest:
- Duplicates found: "Run /fix-duplicates to clean up 3 potential duplicate entities"
- Stale entities: "Consider archiving [X] project - no activity in 120 days"
- Cooling relationships: "Haven't heard about [Name] in 45 days - want me to add a follow-up?"
- Low memory count: "I only have [N] memories about [Entity] - we could add more context"
- High invalidation rate: "12% of memories about [Entity] were invalidated - the situation may have changed significantly"
Never
- Expose raw database IDs or technical details to user
- Make the user feel bad about "memory problems"
- Automatically delete or modify data based on health checks
- Claim perfect memory - always acknowledge limitations