一键导入
database-schema
Schema awareness - read before coding, type generation, prevent column errors
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
菜单
Schema awareness - read before coding, type generation, prevent column errors
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Use when the user wants to merge dev into main for a production release — covers rebasing dev from main if behind, automatic semantic versioning from conventional commits, merge commit, release tagging, and syncing dev back onto main.
Use when the user wants to ship current working changes through a feature branch PR into the DEV branch — covers pulling latest, staging, committing, pushing, PR creation, merge, branch cleanup, and syncing DEV locally.
Audit all feature specs in docs/features/ against the current template, CAP-ID standards, open questions, logical gaps, and plan coverage — then request user authorization before making any changes
Universal coding patterns, constraints, TDD workflow, atomic todos
Prevent semantic code duplication with capability index and check-before-write
Mandatory code reviews via /code-review before commits and deploys
| name | database-schema |
| description | Schema awareness - read before coding, type generation, prevent column errors |
| installed-from | llm_skills |
Load with: base.md + [your database skill]
Problem: Claude forgets schema details mid-session - wrong column names, missing fields, incorrect types. TDD catches this at runtime, but we can prevent it earlier.
MANDATORY: Before writing ANY code that touches the database:
┌─────────────────────────────────────────────────────────────┐
│ 1. READ the schema file (see locations below) │
│ 2. VERIFY columns/types you're about to use exist │
│ 3. REFERENCE schema in your response when writing queries │
│ 4. TYPE-CHECK using generated types (Drizzle/Prisma/etc) │
└─────────────────────────────────────────────────────────────┘
If schema file doesn't exist → CREATE IT before proceeding.
| Stack | Schema Location | Type Generation |
|---|---|---|
| Drizzle | src/db/schema.ts or drizzle/schema.ts | Built-in TypeScript |
| Prisma | prisma/schema.prisma | npx prisma generate |
| Supabase | supabase/migrations/*.sql + types | supabase gen types typescript |
| SQLAlchemy | app/models/*.py or src/models.py | Pydantic models |
| TypeORM | src/entities/*.ts | Decorators = types |
| Raw SQL | schema.sql or migrations/ | Manual types required |
Create _project_specs/schema-reference.md for quick lookup:
# Database Schema Reference
*Auto-generated or manually maintained. Claude: READ THIS before database work.*
## Tables
### users
| Column | Type | Nullable | Default | Notes |
|--------|------|----------|---------|-------|
| id | uuid | NO | gen_random_uuid() | PK |
| email | text | NO | - | Unique |
| name | text | YES | - | Display name |
| created_at | timestamptz | NO | now() | - |
| updated_at | timestamptz | NO | now() | - |
### orders
| Column | Type | Nullable | Default | Notes |
|--------|------|----------|---------|-------|
| id | uuid | NO | gen_random_uuid() | PK |
| user_id | uuid | NO | - | FK → users.id |
| status | text | NO | 'pending' | enum: pending/paid/shipped/delivered |
| total_cents | integer | NO | - | Amount in cents |
| created_at | timestamptz | NO | now() | - |
## Relationships
- users 1:N orders (user_id)
## Enums
- order_status: pending, paid, shipped, delivered
Before writing any database code, Claude MUST:
### Schema Verification Checklist
- [ ] Read schema file: `[path to schema]`
- [ ] Columns I'm using exist: [list columns]
- [ ] Types match my code: [list type mappings]
- [ ] Relationships are correct: [list FKs]
- [ ] Nullable fields handled: [list nullable columns]
Example in practice:
### Schema Verification for TODO-042 (Add order history endpoint)
- [x] Read schema: `src/db/schema.ts`
- [x] Columns exist: orders.id, orders.user_id, orders.status, orders.total_cents, orders.created_at
- [x] Types: id=uuid→string, total_cents=integer→number, status=text→OrderStatus enum
- [x] Relationships: orders.user_id → users.id (many-to-one)
- [x] Nullable: none of these columns are nullable
// Schema defines types automatically
// src/db/schema.ts
import { pgTable, uuid, text, integer, timestamp } from 'drizzle-orm/pg-core';
export const users = pgTable('users', {
id: uuid('id').primaryKey().defaultRandom(),
email: text('email').notNull().unique(),
name: text('name'),
createdAt: timestamp('created_at').notNull().defaultNow(),
});
export const orders = pgTable('orders', {
id: uuid('id').primaryKey().defaultRandom(),
userId: uuid('user_id').notNull().references(() => users.id),
status: text('status').notNull().default('pending'),
totalCents: integer('total_cents').notNull(),
createdAt: timestamp('created_at').notNull().defaultNow(),
});
// Inferred types - USE THESE
export type User = typeof users.$inferSelect;
export type NewUser = typeof users.$inferInsert;
export type Order = typeof orders.$inferSelect;
export type NewOrder = typeof orders.$inferInsert;
// prisma/schema.prisma
model User {
id String @id @default(uuid())
email String @unique
name String?
orders Order[]
createdAt DateTime @default(now()) @map("created_at")
@@map("users")
}
model Order {
id String @id @default(uuid())
userId String @map("user_id")
user User @relation(fields: [userId], references: [id])
status String @default("pending")
totalCents Int @map("total_cents")
createdAt DateTime @default(now()) @map("created_at")
@@map("orders")
}
# Generate types after schema changes
npx prisma generate
# Generate TypeScript types from live database
supabase gen types typescript --local > src/types/database.ts
# Or from remote
supabase gen types typescript --project-id your-project-id > src/types/database.ts
// Use generated types
import { Database } from '@/types/database';
type User = Database['public']['Tables']['users']['Row'];
type NewUser = Database['public']['Tables']['users']['Insert'];
type Order = Database['public']['Tables']['orders']['Row'];
# app/models/user.py
from sqlalchemy import Column, String, DateTime
from sqlalchemy.dialects.postgresql import UUID
from sqlalchemy.sql import func
from app.db import Base
import uuid
class User(Base):
__tablename__ = "users"
id = Column(UUID(as_uuid=True), primary_key=True, default=uuid.uuid4)
email = Column(String, nullable=False, unique=True)
name = Column(String, nullable=True)
created_at = Column(DateTime(timezone=True), server_default=func.now())
# Relationships
orders = relationship("Order", back_populates="user")
# app/schemas/user.py - Pydantic for API validation
from pydantic import BaseModel, EmailStr
from uuid import UUID
from datetime import datetime
class UserBase(BaseModel):
email: EmailStr
name: str | None = None
class UserCreate(UserBase):
pass
class User(UserBase):
id: UUID
created_at: datetime
class Config:
from_attributes = True
Extend the standard TDD workflow for database work:
┌─────────────────────────────────────────────────────────────┐
│ 0. SCHEMA: Read and verify schema before anything else │
│ └─ Read schema file │
│ └─ Complete Schema Verification Checklist │
│ └─ Note any missing columns/tables needed │
├─────────────────────────────────────────────────────────────┤
│ 1. RED: Write tests that use correct column names │
│ └─ Import generated types │
│ └─ Use type-safe queries in tests │
│ └─ Tests should fail on logic, NOT schema errors │
├─────────────────────────────────────────────────────────────┤
│ 2. GREEN: Implement with type-safe queries │
│ └─ Use ORM types, not raw strings │
│ └─ TypeScript/mypy catches column mismatches │
├─────────────────────────────────────────────────────────────┤
│ 3. VALIDATE: Type check catches schema drift │
│ └─ tsc --noEmit / mypy catches wrong columns │
│ └─ Tests validate runtime behavior │
└─────────────────────────────────────────────────────────────┘
| Mistake | Example | Prevention |
|---|---|---|
| Wrong column name | user.userName vs user.name | Read schema, use generated types |
| Wrong type | totalCents as string | Type generation catches this |
| Missing nullable check | user.name! when nullable | Schema shows nullable fields |
| Wrong FK relationship | order.userId vs order.user_id | Check schema column names |
| Missing column | Using user.avatar that doesn't exist | Read schema before coding |
| Wrong enum value | status: 'complete' vs 'completed' | Document enums in schema reference |
Drizzle (catches errors at compile time):
// ✅ Correct - uses schema-defined columns
const user = await db.select().from(users).where(eq(users.email, email));
// ❌ Wrong - TypeScript error: 'userName' doesn't exist
const user = await db.select().from(users).where(eq(users.userName, email));
Prisma (catches errors at compile time):
// ✅ Correct
const user = await prisma.user.findUnique({ where: { email } });
// ❌ Wrong - TypeScript error
const user = await prisma.user.findUnique({ where: { userName: email } });
Raw SQL (NO protection - avoid):
// ❌ Dangerous - no type checking, easy to get wrong
const result = await db.query('SELECT * FROM users WHERE user_name = $1', [email]);
// Should be 'email' not 'user_name' - won't catch until runtime
When schema changes are needed:
┌─────────────────────────────────────────────────────────────┐
│ 1. Update schema file (Drizzle/Prisma/SQLAlchemy) │
├─────────────────────────────────────────────────────────────┤
│ 2. Generate migration │
│ └─ Drizzle: npx drizzle-kit generate │
│ └─ Prisma: npx prisma migrate dev --name add_column │
│ └─ Supabase: supabase migration new add_column │
├─────────────────────────────────────────────────────────────┤
│ 3. Regenerate types │
│ └─ Prisma: npx prisma generate │
│ └─ Supabase: supabase gen types typescript │
├─────────────────────────────────────────────────────────────┤
│ 4. Update schema-reference.md │
├─────────────────────────────────────────────────────────────┤
│ 5. Run type check - find all broken code │
│ └─ npm run typecheck │
├─────────────────────────────────────────────────────────────┤
│ 6. Fix type errors, update tests, run full validation │
└─────────────────────────────────────────────────────────────┘
When starting a session that involves database work:
_project_specs/schema-reference.md if existsSession state example:
## Current Session - Database Context
**Schema read:** ✓ src/db/schema.ts
**Tables in scope:** users, orders, order_items
**Key columns:**
- users: id, email, name, created_at
- orders: id, user_id, status, total_cents
- order_items: id, order_id, product_id, quantity, price_cents
_project_specs/schema-reference.md created