--- description: > Debug a specific session by inspecting its full event chain (PreToolUse, PostToolUse, Stop, SubagentStop, Compaction, APIError, TurnDuration, Notification events), agent hierarchy (recursive parent/child tree with subagent_type and depth), token usage with compaction baselines, workflow intelligence data (orchestration DAG, error propagation by depth), and session metadata (thinking_blocks, turn_count, total_turn_duration_ms). --- # Session Debug Debug and inspect a Claude Code session from Agent Monitor data. ## Input The user provides: **$ARGUMENTS** This may be: - A session ID to debug - "latest" or "last" for the most recent session - "errors" to find and debug the most recent errored session ## Procedure 1. **Identify the target session**: - If session ID given: `GET /api/sessions/{id}` from `http://localhost:4820` - If "latest": `GET /api/sessions?limit=1` (default sort: most recently updated first) - If "errors": `GET /api/sessions?limit=10&status=error` 2. **Collect full session data**: - Session metadata: status, model, cwd, timestamps, duration - Events: `GET /api/events?session_id={session_id}` — full event timeline - Agents: `GET /api/agents?session_id={session_id}` — all agents in session - Cost: `GET /api/pricing/cost/{session_id}` 3. **Analyze the session**: ### Session Lifecycle - Start time → first event → last event → end time - Status transitions (active → working → completed/error) - Total duration and active-vs-idle time ### Event Chain Analysis - Chronological event list with timestamps and durations - Identify the **critical path** (longest chain of dependent events) - Flag events that took unusually long - Highlight error events with full error context ### Agent Inspection - List all agents: type, task, status, duration - Subagent tree visualization (parent → children) - Agents that failed and their last known state - Agent switching patterns (when and why new agents spawned) ### Tool Execution Trace - Every tool invocation in order with: tool name, duration, success/failure - Failed tool calls with error messages - Tool retry patterns (same tool called multiple times) ### Anomaly Detection - Events out of expected order - Gaps in event timeline (>30s with no events) - Duplicate events or agent states - Token usage spikes (compaction indicators) 4. **Diagnosis**: - Root cause hypothesis (if errors present) - Contributing factors - Remediation suggestions ## Output Format Present as a debug report with: - Session summary header (ID, status, model, duration, cost) - Color-coded timeline (✅ success, ❌ error, ⚠️ warning, ℹ️ info) - Agent tree diagram - Diagnosis section with numbered findings