Web Profiler Bundle
by ckchzh
Provides a development tool that gives detailed information about the execution of any request web profiler bundle, twig, component, dev, php, symfony.
安装
claude skill add --url github.com/openclaw/skills/tree/main/skills/ckchzh/web-profiler文档
Web Profiler
A utility toolkit for profiling, checking, and analyzing web request execution. Log profiling runs, analyze performance data, generate reports, and export results — all from the command line.
Commands
All commands accept optional <input> arguments. Without arguments, they display recent entries from their log.
| Command | Description |
|---|---|
web-profiler run <input> | Run a profiling task and log the result |
web-profiler check <input> | Check a configuration, endpoint, or dependency |
web-profiler convert <input> | Convert profiling data between formats |
web-profiler analyze <input> | Analyze request timing, memory, or query data |
web-profiler generate <input> | Generate profiling configurations or templates |
web-profiler preview <input> | Preview profiling output before committing |
web-profiler batch <input> | Batch process multiple profiling tasks |
web-profiler compare <input> | Compare two profiling results side by side |
web-profiler export <input> | Log an export operation |
web-profiler config <input> | Log or update configuration entries |
web-profiler status <input> | Log a status check result |
web-profiler report <input> | Generate or log a report entry |
web-profiler stats | Show summary statistics across all log files |
web-profiler export json|csv|txt | Export all data in JSON, CSV, or plain text format |
web-profiler search <term> | Search across all log entries for a keyword |
web-profiler recent | Show the 20 most recent activity entries |
web-profiler help | Show all available commands |
web-profiler version | Print version (v2.0.0) |
Data Storage
All data is stored locally in ~/.local/share/web-profiler/. Each command maintains its own .log file with timestamped entries in YYYY-MM-DD HH:MM|value format. A unified history.log tracks all operations across commands.
Export formats supported:
- JSON — Array of objects with
type,time, andvaluefields - CSV — Standard comma-separated with
type,time,valueheader - TXT — Human-readable grouped by command type
Requirements
- Bash 4.0+ with
set -euo pipefail(strict mode) - Standard Unix utilities:
date,wc,du,grep,tail,sed,cat - No external dependencies — runs on any POSIX-compliant system
When to Use
- Profiling web request performance — Log and review timing, memory, and query data for HTTP requests
- Debugging slow routes — Use
analyzeandcompareto record performance investigations - Tracking profiling history — Keep a timestamped log of all profiling runs for trend analysis
- Generating performance reports — Export accumulated profiling data to JSON/CSV for dashboards
- Batch profiling operations — Profile multiple endpoints in one session and review results later
Examples
# Run a profiling task
web-profiler run "GET /api/users — 342ms, 12MB memory"
# Analyze query performance
web-profiler analyze "SELECT * FROM orders — 89ms, 1.2k rows"
# Compare two profiling runs
web-profiler compare "v2.1 vs v2.2: 15% latency reduction"
# Search for previous profiling entries
web-profiler search "memory"
# Export all profiling data to CSV
web-profiler export csv
# View summary statistics
web-profiler stats
How It Works
Web Profiler stores all data locally in ~/.local/share/web-profiler/. Each command creates a dedicated log file (e.g., run.log, analyze.log, report.log). Every entry is timestamped and appended, providing a full audit trail. The history.log file aggregates activity across all commands for unified tracking.
When called without arguments, each command displays its most recent 20 entries, making it easy to review past profiling work without manually inspecting log files.
Output
All output goes to stdout. Redirect to a file with:
web-profiler stats > report.txt
web-profiler export json # writes to ~/.local/share/web-profiler/export.json
Powered by BytesAgain | bytesagain.com | hello@bytesagain.com
相关 Skills
前端设计
by anthropics
面向组件、页面、海报和 Web 应用开发,按鲜明视觉方向生成可直接落地的前端代码与高质感 UI,适合做 landing page、Dashboard 或美化现有界面,避开千篇一律的 AI 审美。
✎ 想把页面做得既能上线又有设计感,就用前端设计:组件到整站都能产出,难得的是能避开千篇一律的 AI 味。
网页构建器
by anthropics
面向复杂 claude.ai HTML artifact 开发,快速初始化 React + Tailwind CSS + shadcn/ui 项目并打包为单文件 HTML,适合需要状态管理、路由或多组件交互的页面。
✎ 在 claude.ai 里做复杂网页 Artifact 很省心,多组件、状态和路由都能顺手搭起来,React、Tailwind 与 shadcn/ui 组合效率高、成品也更精致。
网页应用测试
by anthropics
用 Playwright 为本地 Web 应用编写自动化测试,支持启动开发服务器、校验前端交互、排查 UI 异常、抓取截图与浏览器日志,适合调试动态页面和回归验证。
✎ 借助 Playwright 一站式验证本地 Web 应用前端功能,调 UI 时还能同步查看日志和截图,定位问题更快。
相关 MCP 服务
GitHub
编辑精选by GitHub
GitHub 是 MCP 官方参考服务器,让 Claude 直接读写你的代码仓库和 Issues。
✎ 这个参考服务器解决了开发者想让 AI 安全访问 GitHub 数据的问题,适合需要自动化代码审查或 Issue 管理的团队。但注意它只是参考实现,生产环境得自己加固安全。
Context7 文档查询
编辑精选by Context7
Context7 是实时拉取最新文档和代码示例的智能助手,让你告别过时资料。
✎ 它能解决开发者查找文档时信息滞后的问题,特别适合快速上手新库或跟进更新。不过,依赖外部源可能导致偶尔的数据延迟,建议结合官方文档使用。
by tldraw
tldraw 是让 AI 助手直接在无限画布上绘图和协作的 MCP 服务器。
✎ 这解决了 AI 只能输出文本、无法视觉化协作的痛点——想象让 Claude 帮你画流程图或白板讨论。最适合需要快速原型设计或头脑风暴的开发者。不过,目前它只是个基础连接器,你得自己搭建画布应用才能发挥全部潜力。