← 返回
数据分析 中文

Senior Fullstack

Fullstack development toolkit with project scaffolding for Next.js, FastAPI, MERN, and Django stacks, code quality analysis with security and complexity scor...
全栈开发工具包,提供 Next.js、FastAPI、MERN 和 Django 框架的项目脚手架,代码质量分析包括安全性和复杂度评分
alirezarezvani
数据分析 clawhub v2.1.1 2 版本 99673.9 Key: 无需
★ 2
Stars
📥 2,405
下载
💾 17
安装
2
版本
#latest

概述

Senior Fullstack

Fullstack development skill with project scaffolding and code quality analysis tools.


Table of Contents


Trigger Phrases

Use this skill when you hear:

  • "scaffold a new project"
  • "create a Next.js app"
  • "set up FastAPI with React"
  • "analyze code quality"
  • "check for security issues in codebase"
  • "what stack should I use"
  • "set up a fullstack project"
  • "generate project boilerplate"

Tools

Project Scaffolder

Generates fullstack project structures with boilerplate code.

Supported Templates:

  • nextjs - Next.js 14+ with App Router, TypeScript, Tailwind CSS
  • fastapi-react - FastAPI backend + React frontend + PostgreSQL
  • mern - MongoDB, Express, React, Node.js with TypeScript
  • django-react - Django REST Framework + React frontend

Usage:

# List available templates
python scripts/project_scaffolder.py --list-templates

# Create Next.js project
python scripts/project_scaffolder.py nextjs my-app

# Create FastAPI + React project
python scripts/project_scaffolder.py fastapi-react my-api

# Create MERN stack project
python scripts/project_scaffolder.py mern my-project

# Create Django + React project
python scripts/project_scaffolder.py django-react my-app

# Specify output directory
python scripts/project_scaffolder.py nextjs my-app --output ./projects

# JSON output
python scripts/project_scaffolder.py nextjs my-app --json

Parameters:

ParameterDescription
------------------------
templateTemplate name (nextjs, fastapi-react, mern, django-react)
project_nameName for the new project directory
--output, -oOutput directory (default: current directory)
--list-templates, -lList all available templates
--jsonOutput in JSON format

Output includes:

  • Project structure with all necessary files
  • Package configurations (package.json, requirements.txt)
  • TypeScript configuration
  • Docker and docker-compose setup
  • Environment file templates
  • Next steps for running the project

Code Quality Analyzer

Analyzes fullstack codebases for quality issues.

Analysis Categories:

  • Security vulnerabilities (hardcoded secrets, injection risks)
  • Code complexity metrics (cyclomatic complexity, nesting depth)
  • Dependency health (outdated packages, known CVEs)
  • Test coverage estimation
  • Documentation quality

Usage:

# Analyze current directory
python scripts/code_quality_analyzer.py .

# Analyze specific project
python scripts/code_quality_analyzer.py /path/to/project

# Verbose output with detailed findings
python scripts/code_quality_analyzer.py . --verbose

# JSON output
python scripts/code_quality_analyzer.py . --json

# Save report to file
python scripts/code_quality_analyzer.py . --output report.json

Parameters:

ParameterDescription
------------------------
project_pathPath to project directory (default: current directory)
--verbose, -vShow detailed findings
--jsonOutput in JSON format
--output, -oWrite report to file

Output includes:

  • Overall score (0-100) with letter grade
  • Security issues by severity (critical, high, medium, low)
  • High complexity files
  • Vulnerable dependencies with CVE references
  • Test coverage estimate
  • Documentation completeness
  • Prioritized recommendations

Sample Output:

============================================================
CODE QUALITY ANALYSIS REPORT
============================================================

Overall Score: 75/100 (Grade: C)
Files Analyzed: 45
Total Lines: 12,500

--- SECURITY ---
  Critical: 1
  High: 2
  Medium: 5

--- COMPLEXITY ---
  Average Complexity: 8.5
  High Complexity Files: 3

--- RECOMMENDATIONS ---
1. [P0] SECURITY
   Issue: Potential hardcoded secret detected
   Action: Remove or secure sensitive data at line 42

Workflows

Workflow 1: Start New Project

  1. Choose appropriate stack based on requirements (see Stack Decision Matrix)
  2. Scaffold project structure
  3. Verify scaffold: confirm package.json (or requirements.txt) exists
  4. Run initial quality check — address any P0 issues before proceeding
  5. Set up development environment
# 1. Scaffold project
python scripts/project_scaffolder.py nextjs my-saas-app

# 2. Verify scaffold succeeded
ls my-saas-app/package.json

# 3. Navigate and install
cd my-saas-app
npm install

# 4. Configure environment
cp .env.example .env.local

# 5. Run quality check
python ../scripts/code_quality_analyzer.py .

# 6. Start development
npm run dev

Workflow 2: Audit Existing Codebase

  1. Run code quality analysis
  2. Review security findings — fix all P0 (critical) issues immediately
  3. Re-run analyzer to confirm P0 issues are resolved
  4. Create tickets for P1/P2 issues
# 1. Full analysis
python scripts/code_quality_analyzer.py /path/to/project --verbose

# 2. Generate detailed report
python scripts/code_quality_analyzer.py /path/to/project --json --output audit.json

# 3. After fixing P0 issues, re-run to verify
python scripts/code_quality_analyzer.py /path/to/project --verbose

Workflow 3: Stack Selection

Use the tech stack guide to evaluate options:

  1. SEO Required? → Next.js with SSR
  2. API-heavy backend? → Separate FastAPI or NestJS
  3. Real-time features? → Add WebSocket layer
  4. Team expertise → Match stack to team skills

See references/tech_stack_guide.md for detailed comparison.


Reference Guides

Architecture Patterns (references/architecture_patterns.md)

  • Frontend component architecture (Atomic Design, Container/Presentational)
  • Backend patterns (Clean Architecture, Repository Pattern)
  • API design (REST conventions, GraphQL schema design)
  • Database patterns (connection pooling, transactions, read replicas)
  • Caching strategies (cache-aside, HTTP cache headers)
  • Authentication architecture (JWT + refresh tokens, sessions)

Development Workflows (references/development_workflows.md)

  • Local development setup (Docker Compose, environment config)
  • Git workflows (trunk-based, conventional commits)
  • CI/CD pipelines (GitHub Actions examples)
  • Testing strategies (unit, integration, E2E)
  • Code review process (PR templates, checklists)
  • Deployment strategies (blue-green, canary, feature flags)
  • Monitoring and observability (logging, metrics, health checks)

Tech Stack Guide (references/tech_stack_guide.md)

  • Frontend frameworks comparison (Next.js, React+Vite, Vue)
  • Backend frameworks (Express, Fastify, NestJS, FastAPI, Django)
  • Database selection (PostgreSQL, MongoDB, Redis)
  • ORMs (Prisma, Drizzle, SQLAlchemy)
  • Authentication solutions (Auth.js, Clerk, custom JWT)
  • Deployment platforms (Vercel, Railway, AWS)
  • Stack recommendations by use case (MVP, SaaS, Enterprise)

Quick Reference

Stack Decision Matrix

RequirementRecommendation
----------------------------
SEO-critical siteNext.js with SSR
Internal dashboardReact + Vite
API-first backendFastAPI or Fastify
Enterprise scaleNestJS + PostgreSQL
Rapid prototypeNext.js API routes
Document-heavy dataMongoDB
Complex queriesPostgreSQL

Common Issues

IssueSolution
-----------------
N+1 queriesUse DataLoader or eager loading
Slow buildsCheck bundle size, lazy load
Auth complexityUse Auth.js or Clerk
Type errorsEnable strict mode in tsconfig
CORS issuesConfigure middleware properly

版本历史

共 2 个版本

  • v2.1.1 当前
    2026-05-03 02:33 安全 安全
  • v1.0.0
    2026-03-11 09:33 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
查看报告

腾讯云安全 (Sanbu)

安全,无风险
查看报告

🔗 相关推荐

data-analysis

Excel / XLSX

ivangdavila
创建、检查和编辑 Microsoft Excel 工作簿及 XLSX 文件,支持可靠的公式、日期、类型、格式、重算及模板保留功能。
★ 367 📥 139,997
data-analysis

A股量化 AkShare

mbpz
A股量化数据分析工具,基于AkShare库获取A股行情、财务数据、板块信息等。用于回答关于A股股票查询、行情数据、财务分析、选股等问题。
★ 163 📥 59,690
data-analysis

Data Analysis

ivangdavila
{"answer":"数据分析与可视化。查询数据库、生成报告、自动化电子表格,将原始数据转化为清晰可行的见解。适用于:(1) 您……"}
★ 198 📥 64,874