Free SKILL.md scraped from GitHub. Clone the repo or copy the file directly into your Claude Code skills directory.
npx versuz@latest install hoangsonww-claude-code-agent-monitor-plugins-ccam-analytics-skills-usage-trendsgit clone https://github.com/hoangsonww/Claude-Code-Agent-Monitor.gitcp Claude-Code-Agent-Monitor/SKILL.MD ~/.claude/skills/hoangsonww-claude-code-agent-monitor-plugins-ccam-analytics-skills-usage-trends/SKILL.md---
description: >
Analyze Claude Code usage trends over time using the Agent Monitor's
analytics API — daily session counts, daily event counts, token volumes
by type, model distribution, tool usage rankings, and agent/event type
distributions across 365-day retention windows.
---
# Usage Trends
Analyze usage patterns and trends from the Agent Monitor analytics data.
## Input
The user provides: **$ARGUMENTS**
Options: "last 7 days", "last 30 days", "last quarter", "peak hours", "tool trends", "model usage".
## Data Sources
| Endpoint | Returns |
|----------|---------|
| `GET /api/analytics` | Comprehensive analytics object (see schema below) |
| `GET /api/stats` | `{ total_sessions, active_sessions, active_agents, total_agents, total_events, events_today, ws_connections, agents_by_status, sessions_by_status }` |
| `GET /api/sessions?limit=200` | Full session records with timestamps and metadata |
### Analytics response schema (`GET /api/analytics`)
```json
{
"overview": { "total_sessions", "active_sessions", "active_agents", "total_agents", "total_events" },
"tokens": {
"total_input": N, "total_output": N,
"total_cache_read": N, "total_cache_write": N
},
"tool_usage": [{ "tool_name": "...", "count": N }], // top 20
"daily_events": [{ "date": "YYYY-MM-DD", "count": N }], // 365 days
"daily_sessions": [{ "date": "YYYY-MM-DD", "count": N }], // 365 days
"agent_types": [{ "subagent_type": "task"|"explore"|null, "count": N }],
"event_types": [{ "event_type": "PreToolUse"|"PostToolUse"|..., "count": N }],
"avg_events_per_session": N,
"total_subagents": N,
"sessions_by_status": { "active": N, "completed": N, "error": N, "abandoned": N },
"agents_by_status": { "working": N, "completed": N, "error": N, ... }
}
```
## Trend Analyses to Produce
### 1. Daily Activity Trend
Plot `daily_sessions` and `daily_events` for the requested period. Compute:
- **Average sessions/day** and **events/day**
- Week-over-week delta (%)
- Peak day and quietest day
### 2. Token Volume Trends
From analytics tokens (baselines are pre-summed into totals at the DB level):
- Total tokens: `total_input`, `total_output`, `total_cache_read`, `total_cache_write`
- **Cache efficiency over time**: `total_cache_read / (total_cache_read + total_input)` — trending up = improving
- **Output intensity**: `total_output / total_input` ratio — high = Claude is verbose
### 3. Tool Usage Ranking
From `tool_usage` (top 20 tools by event count):
- Bar chart data (tool name → count)
- Tool diversity: unique tools used
- Subagent spawns: count of "Agent" tool uses (each = a subagent launched)
### 4. Model Distribution
From `agent_types` + per-session model field:
- Which models are used most frequently
- Subagent type distribution: main (null) vs task vs explore vs code-review
### 5. Session Health Distribution
From `sessions_by_status`:
- Completion rate: `completed / total × 100`
- Error rate: `error / total × 100`
- Abandoned rate: `abandoned / total × 100`
### 6. Event Type Distribution
From `event_types`:
- PreToolUse/PostToolUse ratio (should be ~1:1; gap = tools failing)
- Compaction frequency relative to session count
- APIError count (quota hits, rate limits, overloaded)
## Output
Markdown with tables and ASCII trend indicators (▲▼→). Include period comparison when applicable.