nodejs-best-practices
Node.js development principles and decision-making. Framework selection, async patterns, security, and architecture. Teaches thinking, not copying.
What this skill does
# Node.js Best Practices
> Principles and decision-making for Node.js development in 2025.
> **Learn to THINK, not memorize code patterns.**
## When to Use
Use this skill when making Node.js architecture decisions, choosing frameworks, designing async patterns, or applying security and deployment best practices.
---
## ⚠️ How to Use This Skill
This skill teaches **decision-making principles**, not fixed code to copy.
- ASK user for preferences when unclear
- Choose framework/pattern based on CONTEXT
- Don't default to same solution every time
---
## 1. Framework Selection (2025)
### Decision Tree
```
What are you building?
│
├── Edge/Serverless (Cloudflare, Vercel)
│ └── Hono (zero-dependency, ultra-fast cold starts)
│
├── High Performance API
│ └── Fastify (2-3x faster than Express)
│
├── Enterprise/Team familiarity
│ └── NestJS (structured, DI, decorators)
│
├── Legacy/Stable/Maximum ecosystem
│ └── Express (mature, most middleware)
│
└── Full-stack with frontend
└── Next.js API Routes or tRPC
```
### Comparison Principles
| Factor | Hono | Fastify | Express |
|--------|------|---------|---------|
| **Best for** | Edge, serverless | Performance | Legacy, learning |
| **Cold start** | Fastest | Fast | Moderate |
| **Ecosystem** | Growing | Good | Largest |
| **TypeScript** | Native | Excellent | Good |
| **Learning curve** | Low | Medium | Low |
### Selection Questions to Ask:
1. What's the deployment target?
2. Is cold start time critical?
3. Does team have existing experience?
4. Is there legacy code to maintain?
---
## 2. Runtime Considerations (2025)
### Native TypeScript
```
Node.js 22+: --experimental-strip-types
├── Run .ts files directly
├── No build step needed for simple projects
└── Consider for: scripts, simple APIs
```
### Module System Decision
```
ESM (import/export)
├── Modern standard
├── Better tree-shaking
├── Async module loading
└── Use for: new projects
CommonJS (require)
├── Legacy compatibility
├── More npm packages support
└── Use for: existing codebases, some edge cases
```
### Runtime Selection
| Runtime | Best For |
|---------|----------|
| **Node.js** | General purpose, largest ecosystem |
| **Bun** | Performance, built-in bundler |
| **Deno** | Security-first, built-in TypeScript |
---
## 3. Architecture Principles
### Layered Structure Concept
```
Request Flow:
│
├── Controller/Route Layer
│ ├── Handles HTTP specifics
│ ├── Input validation at boundary
│ └── Calls service layer
│
├── Service Layer
│ ├── Business logic
│ ├── Framework-agnostic
│ └── Calls repository layer
│
└── Repository Layer
├── Data access only
├── Database queries
└── ORM interactions
```
### Why This Matters:
- **Testability**: Mock layers independently
- **Flexibility**: Swap database without touching business logic
- **Clarity**: Each layer has single responsibility
### When to Simplify:
- Small scripts → Single file OK
- Prototypes → Less structure acceptable
- Always ask: "Will this grow?"
---
## 4. Error Handling Principles
### Centralized Error Handling
```
Pattern:
├── Create custom error classes
├── Throw from any layer
├── Catch at top level (middleware)
└── Format consistent response
```
### Error Response Philosophy
```
Client gets:
├── Appropriate HTTP status
├── Error code for programmatic handling
├── User-friendly message
└── NO internal details (security!)
Logs get:
├── Full stack trace
├── Request context
├── User ID (if applicable)
└── Timestamp
```
### Status Code Selection
| Situation | Status | When |
|-----------|--------|------|
| Bad input | 400 | Client sent invalid data |
| No auth | 401 | Missing or invalid credentials |
| No permission | 403 | Valid auth, but not allowed |
| Not found | 404 | Resource doesn't exist |
| Conflict | 409 | Duplicate or state conflict |
| Validation | 422 | Schema valid but business rules fail |
| Server error | 500 | Our fault, log everything |
---
## 5. Async Patterns Principles
### When to Use Each
| Pattern | Use When |
|---------|----------|
| `async/await` | Sequential async operations |
| `Promise.all` | Parallel independent operations |
| `Promise.allSettled` | Parallel where some can fail |
| `Promise.race` | Timeout or first response wins |
### Event Loop Awareness
```
I/O-bound (async helps):
├── Database queries
├── HTTP requests
├── File system
└── Network operations
CPU-bound (async doesn't help):
├── Crypto operations
├── Image processing
├── Complex calculations
└── → Use worker threads or offload
```
### Avoiding Event Loop Blocking
- Never use sync methods in production (fs.readFileSync, etc.)
- Offload CPU-intensive work
- Use streaming for large data
---
## 6. Validation Principles
### Validate at Boundaries
```
Where to validate:
├── API entry point (request body/params)
├── Before database operations
├── External data (API responses, file uploads)
└── Environment variables (startup)
```
### Validation Library Selection
| Library | Best For |
|---------|----------|
| **Zod** | TypeScript first, inference |
| **Valibot** | Smaller bundle (tree-shakeable) |
| **ArkType** | Performance critical |
| **Yup** | Existing React Form usage |
### Validation Philosophy
- Fail fast: Validate early
- Be specific: Clear error messages
- Don't trust: Even "internal" data
---
## 7. Security Principles
### Security Checklist (Not Code)
- [ ] **Input validation**: All inputs validated
- [ ] **Parameterized queries**: No string concatenation for SQL
- [ ] **Password hashing**: bcrypt or argon2
- [ ] **JWT verification**: Always verify signature and expiry
- [ ] **Rate limiting**: Protect from abuse
- [ ] **Security headers**: Helmet.js or equivalent
- [ ] **HTTPS**: Everywhere in production
- [ ] **CORS**: Properly configured
- [ ] **Secrets**: Environment variables only
- [ ] **Dependencies**: Regularly audited
### Security Mindset
```
Trust nothing:
├── Query params → validate
├── Request body → validate
├── Headers → verify
├── Cookies → validate
├── File uploads → scan
└── External APIs → validate response
```
---
## 8. Testing Principles
### Test Strategy Selection
| Type | Purpose | Tools |
|------|---------|-------|
| **Unit** | Business logic | node:test, Vitest |
| **Integration** | API endpoints | Supertest |
| **E2E** | Full flows | Playwright |
### What to Test (Priorities)
1. **Critical paths**: Auth, payments, core business
2. **Edge cases**: Empty inputs, boundaries
3. **Error handling**: What happens when things fail?
4. **Not worth testing**: Framework code, trivial getters
### Built-in Test Runner (Node.js 22+)
```
node --test src/**/*.test.ts
├── No external dependency
├── Good coverage reporting
└── Watch mode available
```
---
## 9. Anti-Patterns to Avoid
### ❌ DON'T:
- Use Express for new edge projects (use Hono)
- Use sync methods in production code
- Put business logic in controllers
- Skip input validation
- Hardcode secrets
- Trust external data without validation
- Block event loop with CPU work
### ✅ DO:
- Choose framework based on context
- Ask user for preferences when unclear
- Use layered architecture for growing projects
- Validate all inputs
- Use environment variables for secrets
- Profile before optimizing
---
## 10. Decision Checklist
Before implementing:
- [ ] **Asked user about stack preference?**
- [ ] **Chosen framework for THIS context?** (not just default)
- [ ] **Considered deployment target?**
- [ ] **Planned error handling strategy?**
- [ ] **Identified validation points?**
- [ ] **Considered security requirements?**
---
> **Remember**: Node.js best practices are about decision-making, not memorizing patterns. Every project deserves fresh consideration based on its requirements.
## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, pRelated in Backend & APIs
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