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ClaudeWave
Skill456 estrellas del repoactualizado 2d ago

usage-trends

Usage Trends analyzes Agent Monitor analytics data to identify patterns in session activity, token consumption, tool usage, and model distribution across configurable time periods. Users select from predefined options like "last 7 days" or "peak hours" to receive metrics including daily activity trends, cache efficiency ratios, top tools ranked by frequency, and subagent type distribution, making it useful for understanding system performance and resource allocation over time.

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git clone --depth 1 https://github.com/hoangsonww/Claude-Code-Agent-Monitor /tmp/usage-trends && cp -r /tmp/usage-trends/plugins/ccam-analytics/skills/usage-trends ~/.claude/skills/usage-trends
Después abre una sesión nueva de Claude Code; el skill carga automáticamente.

SKILL.md

# 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.