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database-designer by borghei/claude-skills
npx skills add https://github.com/borghei/claude-skills --skill database-designer一个全面的数据库设计技能,为现代数据库系统提供专家级的分析、优化和迁移能力。本技能结合理论原则与实践工具,帮助架构师和开发者创建可扩展、高性能且易于维护的数据库模式。
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违规示例:
-- BAD: Multiple phone numbers in one column
CREATE TABLE contacts (
id INT PRIMARY KEY,
name VARCHAR(100),
phones VARCHAR(200) -- "123-456-7890, 098-765-4321"
);
-- GOOD: Separate table for phone numbers
CREATE TABLE contacts (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE contact_phones (
id INT PRIMARY KEY,
contact_id INT REFERENCES contacts(id),
phone_number VARCHAR(20),
phone_type VARCHAR(10)
);
违规示例:
-- BAD: Student course table with partial dependencies
CREATE TABLE student_courses (
student_id INT,
course_id INT,
student_name VARCHAR(100), -- Depends only on student_id
course_name VARCHAR(100), -- Depends only on course_id
grade CHAR(1),
PRIMARY KEY (student_id, course_id)
);
-- GOOD: Separate tables eliminate partial dependencies
CREATE TABLE students (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE courses (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE enrollments (
student_id INT REFERENCES students(id),
course_id INT REFERENCES courses(id),
grade CHAR(1),
PRIMARY KEY (student_id, course_id)
);
违规示例:
-- BAD: Employee table with transitive dependency
CREATE TABLE employees (
id INT PRIMARY KEY,
name VARCHAR(100),
department_id INT,
department_name VARCHAR(100), -- Depends on department_id, not employee id
department_budget DECIMAL(10,2) -- Transitive dependency
);
-- GOOD: Separate department information
CREATE TABLE departments (
id INT PRIMARY KEY,
name VARCHAR(100),
budget DECIMAL(10,2)
);
CREATE TABLE employees (
id INT PRIMARY KEY,
name VARCHAR(100),
department_id INT REFERENCES departments(id)
);
冗余存储
-- Store calculated values to avoid expensive joins
CREATE TABLE orders (
id INT PRIMARY KEY,
customer_id INT REFERENCES customers(id),
customer_name VARCHAR(100), -- Denormalized from customers table
order_total DECIMAL(10,2), -- Denormalized calculation
created_at TIMESTAMP
);
物化聚合
-- Pre-computed summary tables
CREATE TABLE customer_statistics (
customer_id INT PRIMARY KEY,
total_orders INT,
lifetime_value DECIMAL(12,2),
last_order_date DATE,
updated_at TIMESTAMP
);
-- Query pattern determines optimal column order
-- Query: WHERE status = 'active' AND created_date > '2023-01-01' ORDER BY priority DESC
CREATE INDEX idx_task_status_date_priority
ON tasks (status, created_date, priority DESC);
-- Query: WHERE user_id = 123 AND category IN ('A', 'B') AND date_field BETWEEN '...' AND '...'
CREATE INDEX idx_user_category_date
ON user_activities (user_id, category, date_field);
-- Include additional columns to avoid table lookups
CREATE INDEX idx_user_email_covering
ON users (email)
INCLUDE (first_name, last_name, status);
-- Query can be satisfied entirely from the index
-- SELECT first_name, last_name, status FROM users WHERE email = 'user@example.com';
-- Index only relevant subset of data
CREATE INDEX idx_active_users_email
ON users (email)
WHERE status = 'active';
-- Index for recent orders only
CREATE INDEX idx_recent_orders_customer
ON orders (customer_id, created_at)
WHERE created_at > CURRENT_DATE - INTERVAL '30 days';
1. Identify WHERE clause columns
2. Determine most selective columns first
3. Consider JOIN conditions
4. Include ORDER BY columns if possible
5. Evaluate covering index opportunities
6. Check for existing overlapping indexes
-- Central fact table
CREATE TABLE sales_facts (
sale_id BIGINT PRIMARY KEY,
product_id INT REFERENCES products(id),
customer_id INT REFERENCES customers(id),
date_id INT REFERENCES date_dimension(id),
store_id INT REFERENCES stores(id),
quantity INT,
unit_price DECIMAL(8,2),
total_amount DECIMAL(10,2)
);
-- Dimension tables
CREATE TABLE date_dimension (
id INT PRIMARY KEY,
date_value DATE,
year INT,
quarter INT,
month INT,
day_of_week INT,
is_weekend BOOLEAN
);
-- Normalized dimension tables
CREATE TABLE products (
id INT PRIMARY KEY,
name VARCHAR(200),
category_id INT REFERENCES product_categories(id),
brand_id INT REFERENCES brands(id)
);
CREATE TABLE product_categories (
id INT PRIMARY KEY,
name VARCHAR(100),
parent_category_id INT REFERENCES product_categories(id)
);
-- Flexible document storage with indexing
CREATE TABLE documents (
id UUID PRIMARY KEY,
document_type VARCHAR(50),
data JSONB,
created_at TIMESTAMP DEFAULT NOW(),
updated_at TIMESTAMP DEFAULT NOW()
);
-- Index on JSON properties
CREATE INDEX idx_documents_user_id
ON documents USING GIN ((data->>'user_id'));
CREATE INDEX idx_documents_status
ON documents ((data->>'status'))
WHERE document_type = 'order';
-- Adjacency list for hierarchical data
CREATE TABLE categories (
id INT PRIMARY KEY,
name VARCHAR(100),
parent_id INT REFERENCES categories(id),
level INT,
path VARCHAR(500) -- Materialized path: "/1/5/12/"
);
-- Many-to-many relationships
CREATE TABLE relationships (
id UUID PRIMARY KEY,
from_entity_id UUID,
to_entity_id UUID,
relationship_type VARCHAR(50),
created_at TIMESTAMP,
INDEX (from_entity_id, relationship_type),
INDEX (to_entity_id, relationship_type)
);
阶段 1:扩展
-- Add new column without constraints
ALTER TABLE users ADD COLUMN new_email VARCHAR(255);
-- Backfill data in batches
UPDATE users SET new_email = email WHERE id BETWEEN 1 AND 1000;
-- Continue in batches...
-- Add constraints after backfill
ALTER TABLE users ADD CONSTRAINT users_new_email_unique UNIQUE (new_email);
ALTER TABLE users ALTER COLUMN new_email SET NOT NULL;
阶段 2:收缩
-- Update application to use new column
-- Deploy application changes
-- Verify new column is being used
-- Remove old column
ALTER TABLE users DROP COLUMN email;
-- Rename new column
ALTER TABLE users RENAME COLUMN new_email TO email;
-- Safe string to integer conversion
ALTER TABLE products ADD COLUMN sku_number INTEGER;
UPDATE products SET sku_number = CAST(sku AS INTEGER) WHERE sku ~ '^[0-9]+$';
-- Validate conversion success before dropping old column
-- Range partitioning by date
CREATE TABLE sales_2023 PARTITION OF sales
FOR VALUES FROM ('2023-01-01') TO ('2024-01-01');
CREATE TABLE sales_2024 PARTITION OF sales
FOR VALUES FROM ('2024-01-01') TO ('2025-01-01');
-- Hash partitioning by user_id
CREATE TABLE user_data_0 PARTITION OF user_data
FOR VALUES WITH (MODULUS 4, REMAINDER 0);
CREATE TABLE user_data_1 PARTITION OF user_data
FOR VALUES WITH (MODULUS 4, REMAINDER 1);
-- Separate frequently accessed columns
CREATE TABLE users_core (
id INT PRIMARY KEY,
email VARCHAR(255),
status VARCHAR(20),
created_at TIMESTAMP
);
-- Less frequently accessed profile data
CREATE TABLE users_profile (
user_id INT PRIMARY KEY REFERENCES users_core(id),
bio TEXT,
preferences JSONB,
last_login TIMESTAMP
);
-- Write queries to primary
INSERT INTO users (email, name) VALUES ('user@example.com', 'John Doe');
-- Read queries to replicas (with appropriate read preference)
SELECT * FROM users WHERE status = 'active'; -- Route to read replica
-- Consistent reads when required
SELECT * FROM users WHERE id = LAST_INSERT_ID(); -- Route to primary
def get_user(user_id):
# Try cache first
user = cache.get(f"user:{user_id}")
if user is None:
# Cache miss - query database
user = db.query("SELECT * FROM users WHERE id = %s", user_id)
# Store in cache
cache.set(f"user:{user_id}", user, ttl=3600)
return user
PostgreSQL
MySQL
文档存储 (MongoDB, CouchDB)
键值存储 (Redis, DynamoDB)
列族数据库 (Cassandra, HBase)
图数据库 (Neo4j, Amazon Neptune)
分布式 SQL (CockroachDB, TiDB, Spanner)
有效的数据库设计需要平衡多个相互竞争的因素:性能、可扩展性、可维护性和业务需求。本技能提供了在整个数据库生命周期中做出明智决策的工具和知识,从初始模式设计到生产优化和演进。
包含的工具自动化了常见的分析和优化任务,而全面的指南则为做出合理的架构决策提供了理论基础。无论是构建新系统还是优化现有系统,这些资源都为创建健壮、可扩展的数据库解决方案提供了专家级指导。
每周安装数
33
代码仓库
GitHub 星标数
30
首次出现
11 天前
安全审计
已安装于
claude-code29
opencode19
gemini-cli19
github-copilot19
cline19
codex19
A comprehensive database design skill that provides expert-level analysis, optimization, and migration capabilities for modern database systems. This skill combines theoretical principles with practical tools to help architects and developers create scalable, performant, and maintainable database schemas.
Example Violation:
-- BAD: Multiple phone numbers in one column
CREATE TABLE contacts (
id INT PRIMARY KEY,
name VARCHAR(100),
phones VARCHAR(200) -- "123-456-7890, 098-765-4321"
);
-- GOOD: Separate table for phone numbers
CREATE TABLE contacts (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE contact_phones (
id INT PRIMARY KEY,
contact_id INT REFERENCES contacts(id),
phone_number VARCHAR(20),
phone_type VARCHAR(10)
);
Example Violation:
-- BAD: Student course table with partial dependencies
CREATE TABLE student_courses (
student_id INT,
course_id INT,
student_name VARCHAR(100), -- Depends only on student_id
course_name VARCHAR(100), -- Depends only on course_id
grade CHAR(1),
PRIMARY KEY (student_id, course_id)
);
-- GOOD: Separate tables eliminate partial dependencies
CREATE TABLE students (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE courses (
id INT PRIMARY KEY,
name VARCHAR(100)
);
CREATE TABLE enrollments (
student_id INT REFERENCES students(id),
course_id INT REFERENCES courses(id),
grade CHAR(1),
PRIMARY KEY (student_id, course_id)
);
Example Violation:
-- BAD: Employee table with transitive dependency
CREATE TABLE employees (
id INT PRIMARY KEY,
name VARCHAR(100),
department_id INT,
department_name VARCHAR(100), -- Depends on department_id, not employee id
department_budget DECIMAL(10,2) -- Transitive dependency
);
-- GOOD: Separate department information
CREATE TABLE departments (
id INT PRIMARY KEY,
name VARCHAR(100),
budget DECIMAL(10,2)
);
CREATE TABLE employees (
id INT PRIMARY KEY,
name VARCHAR(100),
department_id INT REFERENCES departments(id)
);
Redundant Storage
-- Store calculated values to avoid expensive joins
CREATE TABLE orders (
id INT PRIMARY KEY,
customer_id INT REFERENCES customers(id),
customer_name VARCHAR(100), -- Denormalized from customers table
order_total DECIMAL(10,2), -- Denormalized calculation
created_at TIMESTAMP
);
Materialized Aggregates
-- Pre-computed summary tables
CREATE TABLE customer_statistics (
customer_id INT PRIMARY KEY,
total_orders INT,
lifetime_value DECIMAL(12,2),
last_order_date DATE,
updated_at TIMESTAMP
);
-- Query pattern determines optimal column order
-- Query: WHERE status = 'active' AND created_date > '2023-01-01' ORDER BY priority DESC
CREATE INDEX idx_task_status_date_priority
ON tasks (status, created_date, priority DESC);
-- Query: WHERE user_id = 123 AND category IN ('A', 'B') AND date_field BETWEEN '...' AND '...'
CREATE INDEX idx_user_category_date
ON user_activities (user_id, category, date_field);
-- Include additional columns to avoid table lookups
CREATE INDEX idx_user_email_covering
ON users (email)
INCLUDE (first_name, last_name, status);
-- Query can be satisfied entirely from the index
-- SELECT first_name, last_name, status FROM users WHERE email = 'user@example.com';
-- Index only relevant subset of data
CREATE INDEX idx_active_users_email
ON users (email)
WHERE status = 'active';
-- Index for recent orders only
CREATE INDEX idx_recent_orders_customer
ON orders (customer_id, created_at)
WHERE created_at > CURRENT_DATE - INTERVAL '30 days';
1. Identify WHERE clause columns
2. Determine most selective columns first
3. Consider JOIN conditions
4. Include ORDER BY columns if possible
5. Evaluate covering index opportunities
6. Check for existing overlapping indexes
-- Central fact table
CREATE TABLE sales_facts (
sale_id BIGINT PRIMARY KEY,
product_id INT REFERENCES products(id),
customer_id INT REFERENCES customers(id),
date_id INT REFERENCES date_dimension(id),
store_id INT REFERENCES stores(id),
quantity INT,
unit_price DECIMAL(8,2),
total_amount DECIMAL(10,2)
);
-- Dimension tables
CREATE TABLE date_dimension (
id INT PRIMARY KEY,
date_value DATE,
year INT,
quarter INT,
month INT,
day_of_week INT,
is_weekend BOOLEAN
);
-- Normalized dimension tables
CREATE TABLE products (
id INT PRIMARY KEY,
name VARCHAR(200),
category_id INT REFERENCES product_categories(id),
brand_id INT REFERENCES brands(id)
);
CREATE TABLE product_categories (
id INT PRIMARY KEY,
name VARCHAR(100),
parent_category_id INT REFERENCES product_categories(id)
);
-- Flexible document storage with indexing
CREATE TABLE documents (
id UUID PRIMARY KEY,
document_type VARCHAR(50),
data JSONB,
created_at TIMESTAMP DEFAULT NOW(),
updated_at TIMESTAMP DEFAULT NOW()
);
-- Index on JSON properties
CREATE INDEX idx_documents_user_id
ON documents USING GIN ((data->>'user_id'));
CREATE INDEX idx_documents_status
ON documents ((data->>'status'))
WHERE document_type = 'order';
-- Adjacency list for hierarchical data
CREATE TABLE categories (
id INT PRIMARY KEY,
name VARCHAR(100),
parent_id INT REFERENCES categories(id),
level INT,
path VARCHAR(500) -- Materialized path: "/1/5/12/"
);
-- Many-to-many relationships
CREATE TABLE relationships (
id UUID PRIMARY KEY,
from_entity_id UUID,
to_entity_id UUID,
relationship_type VARCHAR(50),
created_at TIMESTAMP,
INDEX (from_entity_id, relationship_type),
INDEX (to_entity_id, relationship_type)
);
Phase 1: Expand
-- Add new column without constraints
ALTER TABLE users ADD COLUMN new_email VARCHAR(255);
-- Backfill data in batches
UPDATE users SET new_email = email WHERE id BETWEEN 1 AND 1000;
-- Continue in batches...
-- Add constraints after backfill
ALTER TABLE users ADD CONSTRAINT users_new_email_unique UNIQUE (new_email);
ALTER TABLE users ALTER COLUMN new_email SET NOT NULL;
Phase 2: Contract
-- Update application to use new column
-- Deploy application changes
-- Verify new column is being used
-- Remove old column
ALTER TABLE users DROP COLUMN email;
-- Rename new column
ALTER TABLE users RENAME COLUMN new_email TO email;
-- Safe string to integer conversion
ALTER TABLE products ADD COLUMN sku_number INTEGER;
UPDATE products SET sku_number = CAST(sku AS INTEGER) WHERE sku ~ '^[0-9]+$';
-- Validate conversion success before dropping old column
-- Range partitioning by date
CREATE TABLE sales_2023 PARTITION OF sales
FOR VALUES FROM ('2023-01-01') TO ('2024-01-01');
CREATE TABLE sales_2024 PARTITION OF sales
FOR VALUES FROM ('2024-01-01') TO ('2025-01-01');
-- Hash partitioning by user_id
CREATE TABLE user_data_0 PARTITION OF user_data
FOR VALUES WITH (MODULUS 4, REMAINDER 0);
CREATE TABLE user_data_1 PARTITION OF user_data
FOR VALUES WITH (MODULUS 4, REMAINDER 1);
-- Separate frequently accessed columns
CREATE TABLE users_core (
id INT PRIMARY KEY,
email VARCHAR(255),
status VARCHAR(20),
created_at TIMESTAMP
);
-- Less frequently accessed profile data
CREATE TABLE users_profile (
user_id INT PRIMARY KEY REFERENCES users_core(id),
bio TEXT,
preferences JSONB,
last_login TIMESTAMP
);
-- Write queries to primary
INSERT INTO users (email, name) VALUES ('user@example.com', 'John Doe');
-- Read queries to replicas (with appropriate read preference)
SELECT * FROM users WHERE status = 'active'; -- Route to read replica
-- Consistent reads when required
SELECT * FROM users WHERE id = LAST_INSERT_ID(); -- Route to primary
def get_user(user_id):
# Try cache first
user = cache.get(f"user:{user_id}")
if user is None:
# Cache miss - query database
user = db.query("SELECT * FROM users WHERE id = %s", user_id)
# Store in cache
cache.set(f"user:{user_id}", user, ttl=3600)
return user
PostgreSQL
MySQL
Document Stores (MongoDB, CouchDB)
Key-Value Stores (Redis, DynamoDB)
Column-Family (Cassandra, HBase)
Graph Databases (Neo4j, Amazon Neptune)
Distributed SQL (CockroachDB, TiDB, Spanner)
Effective database design requires balancing multiple competing concerns: performance, scalability, maintainability, and business requirements. This skill provides the tools and knowledge to make informed decisions throughout the database lifecycle, from initial schema design through production optimization and evolution.
The included tools automate common analysis and optimization tasks, while the comprehensive guides provide the theoretical foundation for making sound architectural decisions. Whether building a new system or optimizing an existing one, these resources provide expert-level guidance for creating robust, scalable database solutions.
Weekly Installs
33
Repository
GitHub Stars
30
First Seen
11 days ago
Security Audits
Gen Agent Trust HubPassSocketPassSnykPass
Installed on
claude-code29
opencode19
gemini-cli19
github-copilot19
cline19
codex19
GitHub Actions 官方文档查询助手 - 精准解答 CI/CD 工作流问题
53,800 周安装