图表生成器
ChartMaker
by BytesAgain
Visualize data with bar charts, sparklines, and progress bars in terminal. Use when plotting metrics, rendering inline charts, or transforming data.
安装
claude skill add --url github.com/openclaw/skills/tree/main/skills/bytesagain1/chartmaker文档
ChartMaker
A data toolkit for chart-related data logging and export. Record, transform, query, and export data entries — all from the command line, all stored locally.
Commands
| Command | What it does |
|---|---|
chartmaker ingest <input> | Log a new ingest entry (no args = show recent entries) |
chartmaker transform <input> | Log a transform entry |
chartmaker query <input> | Log a query entry |
chartmaker filter <input> | Log a filter entry |
chartmaker aggregate <input> | Log an aggregate entry |
chartmaker visualize <input> | Log a visualize entry |
chartmaker export <input> | Log an export entry (see also export with format below) |
chartmaker sample <input> | Log a sample entry |
chartmaker schema <input> | Log a schema entry |
chartmaker validate <input> | Log a validate entry |
chartmaker pipeline <input> | Log a pipeline entry |
chartmaker profile <input> | Log a profile entry |
chartmaker stats | Show summary statistics across all log files |
chartmaker export <fmt> | Export all data to json, csv, or txt format |
chartmaker search <term> | Search all entries for a term (case-insensitive) |
chartmaker recent | Show the 20 most recent activity log entries |
chartmaker status | Health check — version, entry count, disk usage |
chartmaker help | Show usage and available commands |
chartmaker version | Print version string |
Each logging command (ingest, transform, query, etc.) accepts free-form text. Called without arguments, it shows the 20 most recent entries for that category.
Data Storage
All data is stored locally in ~/.local/share/chartmaker/. Each command category writes to its own .log file, and all actions are recorded in history.log with timestamps.
Requirements
- Bash 4+
When to Use
- Logging chart and visualization data points from the command line
- Tracking data transformations and schema changes over time
- Exporting accumulated entries to JSON, CSV, or plain text for reports
- Searching across all logged entries to find specific visualization data
- Checking health and statistics of your local chart data store
Examples
# Log visualization data
chartmaker ingest "Monthly revenue: Jan=10k Feb=12k Mar=15k"
# Transform and record a data step
chartmaker transform "Normalized Q1 values to percentage scale"
# Search across all logs
chartmaker search "revenue"
# Export everything to CSV
chartmaker export csv
# View recent activity
chartmaker recent
Powered by BytesAgain | bytesagain.com | hello@bytesagain.com
相关 Skills
数据库建模
by alirezarezvani
把需求梳理成关系型数据库表结构,自动生成迁移脚本、TypeScript/Python 类型、种子数据、RLS 策略和索引方案,适合多租户、审计追踪、软删除等后端建模与 Schema 评审场景。
✎ 把数据库结构设计、ER图梳理和SQL建模放到一处,复杂业务也能快速统一数据模式,少走不少返工弯路。
资深数据科学家
by alirezarezvani
覆盖实验设计、特征工程、预测建模、因果推断与模型评估,适合用 Python/R/SQL 做 A/B 测试、时序分析和生产级 ML 落地,支撑数据驱动决策。
✎ 从 A/B 测试、因果分析到预测建模一条龙搞定,既有硬核统计方法也懂业务沟通,特别适合把数据结论真正落地。
数据库设计
by alirezarezvani
聚焦数据库 Schema 设计与演进,自动检查规范化、数据类型、约束和索引问题,生成 ERD,并为零停机迁移、数据变更和回滚提供可执行方案。
✎ 专注数据库设计与数据建模,帮你快速理清表结构和关系,减少后期返工,SQL 落地也更顺手。
相关 MCP 服务
PostgreSQL 数据库
编辑精选by Anthropic
PostgreSQL 是让 Claude 直接查询和管理你的数据库的 MCP 服务器。
✎ 这个服务器解决了开发者需要手动编写 SQL 查询的痛点,特别适合数据分析师或后端开发者快速探索数据库结构。不过,由于是参考实现,生产环境使用前务必评估安全风险,别指望它能处理复杂事务。
SQLite 数据库
编辑精选by Anthropic
SQLite 是让 AI 直接查询本地数据库进行数据分析的 MCP 服务器。
✎ 这个服务器解决了 AI 无法直接访问 SQLite 数据库的问题,适合需要快速分析本地数据集的开发者。不过,作为参考实现,它可能缺乏生产级的安全特性,建议在受控环境中使用。
Firecrawl 智能爬虫
编辑精选by Firecrawl
Firecrawl 是让 AI 直接抓取网页并提取结构化数据的 MCP 服务器。
✎ 它解决了手动写爬虫的麻烦,让 Claude 能直接访问动态网页内容。最适合需要实时数据的研究者或开发者,比如监控竞品价格或抓取新闻。但要注意,它依赖第三方 API,可能涉及隐私和成本问题。