--- description: > Detect recurring patterns using the Agent Monitor's workflow intelligence — toolFlow transitions (tool A → B frequency matrices), recurring workflow patterns, agent co-occurrence pairs, model delegation habits, error propagation paths by agent depth, and compaction triggers. Use to discover habitual usage patterns and anti-patterns. --- # Pattern Detect Identify recurring patterns using the Agent Monitor's workflow intelligence engine. ## Input The user provides: **$ARGUMENTS** Options: "all", "tools", "errors", "workflows", "last N sessions". ## Data Sources | Endpoint | Returns | |----------|---------| | `GET /api/sessions?limit=200` | Session list with status, model, cwd, metadata | | `GET /api/analytics` | tool_usage top 20, event_types, agent_types | | `GET /api/workflows/{sessionId}` | 11 datasets per session (see below) | ### Workflow datasets used for pattern detection | Dataset | Pattern insight | |---------|----------------| | `toolFlow` | **Tool transition matrix**: tool A → tool B with counts — reveals sequential habits | | `patterns` | **Detected workflow patterns**: recurring sequences with frequency scores | | `cooccurrence` | **Agent co-occurrence**: which agents frequently run together | | `modelDelegation` | **Model habits**: which models are chosen for which task types | | `errorPropagation` | **Error patterns**: where errors start and how they cascade by agent depth | | `effectiveness` | **Subagent patterns**: which types succeed most, avg duration per type | | `compaction` | **Compaction triggers**: what causes context overflow | | `complexity` | **Complexity patterns**: session complexity scores over time | ## Pattern Categories ### 1. Tool Chain Patterns (from `toolFlow`) - **Most common sequences**: Top 10 tool transitions (e.g., Read → Edit: 145 times) - **Starter tools**: First tool used in sessions (indicates task type) - **Finisher tools**: Last tool before Stop event - **Anti-patterns**: Tool → same Tool repeated (retries/failures) - **Co-occurrence**: Tools that always appear together in sessions ### 2. Workflow Patterns (from `patterns`) - **Named patterns**: Workflow sequences the API has detected with frequency - **Session archetypes**: Common session shapes (short edit, long debug, subagent-heavy) - **Project-specific**: Patterns that appear in specific working directories ### 3. Error Patterns (from `errorPropagation` + `event_types`) - **Error origins**: Which agent depth level produces most errors - **Cascade patterns**: Errors that trigger chains of follow-up errors - **APIError frequency**: quota hits, rate_limit, overloaded — by time of day - **Recovery patterns**: How errors are typically resolved (tool retry vs agent switch) ### 4. Agent Patterns (from `cooccurrence` + `effectiveness`) - **Agent pairs**: Which agents are spawned together frequently - **Delegation patterns**: Main agent → subagent task delegation habits - **Success by type**: Which subagent types (task/explore/code-review) work best for which tasks ### 5. Temporal Patterns (from session timestamps + `daily_sessions`) - **Peak hours**: When sessions cluster - **Duration patterns**: Short vs long session distribution - **Day-of-week trends**: Productive days vs quiet days ## Output **Pattern Report** with top 10 patterns ranked by frequency × impact: - Pattern name and description - Frequency (occurrences across analyzed sessions) - Impact: positive (reinforce), negative (eliminate), or neutral (observe) - Actionable recommendation for each