claude-token-analyzer
Diagnoses token waste in Claude Code sessions with 6 anomaly types and severity scoring. Fully local.
Claude Token Analyzer
Your Claude Code sessions might be burning tokens you can't see. Diagnoses where your tokens go, why they're wasted, and what to fix first.
Fully local — parses your ~/.claude JSONL files into SQLite. Nothing leaves your machine. No cloud. No telemetry.
Features
- Diagnose token waste — Detects 6 statistical anomaly types (HighCost, LowCacheHitRate, CostInefficient, ExcessiveToolUse, HighTokenUsage, UnusualModelMix) with severity scoring
- Audit costs — Per-session, per-project, and global cost breakdowns with monthly trends
- Forecast spending — Daily/weekly/monthly usage trends with burn-rate projections
- Optimize cache — Identifies sessions with poor cache hit rates that inflate costs
- Prioritize fixes — Severity-scored anomalies so you know what to fix first, not just what's wrong
- Converse naturally — Ask in plain language: "how much did I spend?" or "scan for anomalies"
Quick Start
# Install (binary auto-downloads, no Rust toolchain needed)
claude plugin install claude-token-analyzer
Then just ask in any Claude Code session:
> cta
> how much did I spend this month?
> scan for anomalies
> analyze this project
> show me usage trends
How It Works
~/.claude/projects/**/*.jsonl Your session logs (never modified)
→ parser.rs Extract + deduplicate responses
→ analyzer.rs Cost calculation, 10-dimension metrics
→ storage.rs Upsert into local SQLite
→ detector.rs 6-type anomaly detection + severity scoring
→ MCP tools / Skills You ask, it answers
All processing happens locally. The SQLite database lives in the plugin directory. No network calls, no external dependencies at runtime.
Skills
| Skill | Trigger Phrases | What It Does |
|---|---|---|
cta | "cta", "analyze tokens" | Routes to the right sub-skill |
cta-health-check | "quick check", "overview", "看看狀況" | One-page usage summary |
cta-cost-audit | "monthly costs", "cost report", "這個月花多少" | Monthly cost breakdown with model split |
cta-anomaly-hunt | "anomalies", "problems", "有異常嗎" | Statistical anomaly scan with drill-down |
cta-project-review | "analyze project", "專案健檢" | Four-dimension project analysis |
cta-trend-watch | "trends", "burn rate", "趨勢" | Usage trend analysis with forecasting |
MCP Tools
| Tool | Purpose |
|---|---|
sync_db | Sync JSONL session logs to SQLite |
analyze_session | 10-dimension session analysis |
analyze_project | Project-level aggregation with sorting |
analyze_global | Cross-project panoramic view |
cost_report | Monthly cost report (daily granularity available) |
anomaly_scan | 6-type anomaly detection with severity scoring |
trend_report | Time-series trends (daily/weekly/monthly) |
Configuration
Environment variables (all optional):
| Variable | Purpose | Default |
|---|---|---|
CTA_DB_PATH | SQLite database location | ${CLAUDE_PLUGIN_ROOT}/data/token-analyzer.db |
CTA_PROJECTS_DIR | Session logs directory | ~/.claude/projects |
CTA_ARCHIVE_DIR | Archive directory | ~/.claude/token-analyzer-archive |
CTA_PRICING_PATH | Custom pricing TOML | Embedded in binary |
Path resolution priority: Environment variable > Plugin mode ($CLAUDE_PLUGIN_ROOT) > Standalone mode ($HOME/.claude/)
Building from Source
git clone https://github.com/li195111/claude-token-analyzer.git
cd claude-token-analyzer
bash scripts/build.sh
# Binary: mcp-server/target/release/cta-mcp-server
# Run tests (98 tests)
cargo test --all-targets --manifest-path mcp-server/Cargo.toml
# Lint
cargo clippy --manifest-path mcp-server/Cargo.toml -- -D warnings
# Launch with plugin loaded
claude --plugin-dir .
Requires: Rust toolchain
Contributing
Issues and PRs welcome! See open issues for starter tasks.
Development setup:
- Clone the repo and run
bash scripts/build.sh - Run
cargo test --all-targets --manifest-path mcp-server/Cargo.tomlto verify - Load the plugin locally with
claude --plugin-dir .
Rust toolchain required. The project uses cargo clippy -- -D warnings for linting.
License
MIT
繁體中文
你的 Claude Code 會話可能正在浪費你看不見的 token。 診斷 token 流向、浪費原因,並告訴你該優先修正什麼。
全本地運行 — 解析 ~/.claude JSONL 檔案到 SQLite。資料不離開你的機器。無雲端、無遙測。
功能特色
- 診斷 token 浪費 — 6 種統計異常類型,含嚴重度評分
- 成本審計 — 按會話、專案、全域的費用拆解與月度趨勢
- 趨勢預測 — 日/週/月用量趨勢與燃燒率預測
- 快取優化 — 識別低快取命中率的會話,降低不必要開銷
- 嚴重度排序 — 優先處理影響最大的問題,不只是標記異常
- 自然語言互動 — 用中文直接問:「看看狀況」「這個月花多少」「有異常嗎」
快速開始
# 安裝(自動下載 binary,無需 Rust 工具鏈)
claude plugin install claude-token-analyzer
然後在 Claude Code 中直接問:
> 看看狀況
> 這個月花多少?
> 有異常嗎?
> 分析這個專案
> 用量趨勢
技能一覽
| 技能 | 觸發語 | 功能 |
|---|---|---|
cta | "cta"、"分析 token" | 智能路由至子技能 |
cta-health-check | "看看狀況"、"總覽" | 一頁式用量摘要 |
cta-cost-audit | "這個月花多少"、"成本報告" | 月度費用明細 |
cta-anomaly-hunt | "有異常嗎"、"排查" | 統計異常掃描 |
cta-project-review | "專案健檢" | 四維度專案分析 |
cta-trend-watch | "趨勢"、"燃燒率" | 用量趨勢分析 |
歡迎台灣及亞洲開發者試用和回饋!
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