install
source · Clone the upstream repo
git clone https://github.com/xu-xiang/everything-claude-code-zh
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/xu-xiang/everything-claude-code-zh "$T" && mkdir -p ~/.claude/skills && cp -r "$T/docs/ja-JP/skills/clickhouse-io" ~/.claude/skills/xu-xiang-everything-claude-code-zh-clickhouse-io && rm -rf "$T"
manifest:
docs/ja-JP/skills/clickhouse-io/SKILL.mdsource content
ClickHouse 分析模式
针对高性能分析和数据工程的 ClickHouse 特定模式。
概览
ClickHouse 是一个用于联机分析处理(OLAP)的列式数据库管理系统(DBMS)。它针对大规模数据集上的快速分析查询进行了优化。
主要功能:
- 列式存储
- 数据压缩
- 并行查询执行
- 分布式查询
- 实时分析
表设计模式
MergeTree 引擎(最常用)
CREATE TABLE markets_analytics ( date Date, market_id String, market_name String, volume UInt64, trades UInt32, unique_traders UInt32, avg_trade_size Float64, created_at DateTime ) ENGINE = MergeTree() PARTITION BY toYYYYMM(date) ORDER BY (date, market_id) SETTINGS index_granularity = 8192;
ReplacingMergeTree (重复数据删除)
-- 用于可能存在重复的数据(如来自多个源的数据) CREATE TABLE user_events ( event_id String, user_id String, event_type String, timestamp DateTime, properties String ) ENGINE = ReplacingMergeTree() PARTITION BY toYYYYMM(timestamp) ORDER BY (user_id, event_id, timestamp) PRIMARY KEY (user_id, event_id);
AggregatingMergeTree (预聚合)
-- 用于维护聚合指标 CREATE TABLE market_stats_hourly ( hour DateTime, market_id String, total_volume AggregateFunction(sum, UInt64), total_trades AggregateFunction(count, UInt32), unique_users AggregateFunction(uniq, String) ) ENGINE = AggregatingMergeTree() PARTITION BY toYYYYMM(hour) ORDER BY (hour, market_id); -- 查询聚合数据 SELECT hour, market_id, sumMerge(total_volume) AS volume, countMerge(total_trades) AS trades, uniqMerge(unique_users) AS users FROM market_stats_hourly WHERE hour >= toStartOfHour(now() - INTERVAL 24 HOUR) GROUP BY hour, market_id ORDER BY hour DESC;
查询优化模式
高效过滤
-- ✅ 推荐:优先使用索引列 SELECT * FROM markets_analytics WHERE date >= '2025-01-01' AND market_id = 'market-123' AND volume > 1000 ORDER BY date DESC LIMIT 100; -- ❌ 不推荐:先过滤非索引列 SELECT * FROM markets_analytics WHERE volume > 1000 AND market_name LIKE '%election%' AND date >= '2025-01-01';
聚合
-- ✅ 推荐:使用 ClickHouse 特有的聚合函数 SELECT toStartOfDay(created_at) AS day, market_id, sum(volume) AS total_volume, count() AS total_trades, uniq(trader_id) AS unique_traders, avg(trade_size) AS avg_size FROM trades WHERE created_at >= today() - INTERVAL 7 DAY GROUP BY day, market_id ORDER BY day DESC, total_volume DESC; -- ✅ 计算分位数请使用 quantile(比 percentile 更高效) SELECT quantile(0.50)(trade_size) AS median, quantile(0.95)(trade_size) AS p95, quantile(0.99)(trade_size) AS p99 FROM trades WHERE created_at >= now() - INTERVAL 1 HOUR;
窗口函数 (Window Functions)
-- 累计计算 SELECT date, market_id, volume, sum(volume) OVER ( PARTITION BY market_id ORDER BY date ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW ) AS cumulative_volume FROM markets_analytics WHERE date >= today() - INTERVAL 30 DAY ORDER BY market_id, date;
数据插入模式
批量插入 (推荐)
import { ClickHouse } from 'clickhouse' const clickhouse = new ClickHouse({ url: process.env.CLICKHOUSE_URL, port: 8123, basicAuth: { username: process.env.CLICKHOUSE_USER, password: process.env.CLICKHOUSE_PASSWORD } }) // ✅ 批量插入(高效) async function bulkInsertTrades(trades: Trade[]) { const values = trades.map(trade => `( '${trade.id}', '${trade.market_id}', '${trade.user_id}', ${trade.amount}, '${trade.timestamp.toISOString()}' )`).join(',') await clickhouse.query(` INSERT INTO trades (id, market_id, user_id, amount, timestamp) VALUES ${values} `).toPromise() } // ❌ 逐条插入(低效) async function insertTrade(trade: Trade) { // 请勿在循环中执行此操作! await clickhouse.query(` INSERT INTO trades VALUES ('${trade.id}', ...) `).toPromise() }
流式插入
// 用于持续的数据摄取 import { createWriteStream } from 'fs' import { pipeline } from 'stream/promises' async function streamInserts() { const stream = clickhouse.insert('trades').stream() for await (const batch of dataSource) { stream.write(batch) } await stream.end() }
物化视图 (Materialized Views)
实时聚合
-- 创建按小时统计的物化视图 CREATE MATERIALIZED VIEW market_stats_hourly_mv TO market_stats_hourly AS SELECT toStartOfHour(timestamp) AS hour, market_id, sumState(amount) AS total_volume, countState() AS total_trades, uniqState(user_id) AS unique_users FROM trades GROUP BY hour, market_id; -- 查询物化视图 SELECT hour, market_id, sumMerge(total_volume) AS volume, countMerge(total_trades) AS trades, uniqMerge(unique_users) AS users FROM market_stats_hourly WHERE hour >= now() - INTERVAL 24 HOUR GROUP BY hour, market_id;
性能监控
查询性能
-- 检查慢查询 SELECT query_id, user, query, query_duration_ms, read_rows, read_bytes, memory_usage FROM system.query_log WHERE type = 'QueryFinish' AND query_duration_ms > 1000 AND event_time >= now() - INTERVAL 1 HOUR ORDER BY query_duration_ms DESC LIMIT 10;
表统计信息
-- 检查表大小 SELECT database, table, formatReadableSize(sum(bytes)) AS size, sum(rows) AS rows, max(modification_time) AS latest_modification FROM system.parts WHERE active GROUP BY database, table ORDER BY sum(bytes) DESC;
常见分析查询
时序分析
-- 日活跃用户 (DAU) SELECT toDate(timestamp) AS date, uniq(user_id) AS daily_active_users FROM events WHERE timestamp >= today() - INTERVAL 30 DAY GROUP BY date ORDER BY date; -- 留存分析 SELECT signup_date, countIf(days_since_signup = 0) AS day_0, countIf(days_since_signup = 1) AS day_1, countIf(days_since_signup = 7) AS day_7, countIf(days_since_signup = 30) AS day_30 FROM ( SELECT user_id, min(toDate(timestamp)) AS signup_date, toDate(timestamp) AS activity_date, dateDiff('day', signup_date, activity_date) AS days_since_signup FROM events GROUP BY user_id, activity_date ) GROUP BY signup_date ORDER BY signup_date DESC;
漏斗分析 (Funnel Analysis)
-- 转化漏斗 SELECT countIf(step = 'viewed_market') AS viewed, countIf(step = 'clicked_trade') AS clicked, countIf(step = 'completed_trade') AS completed, round(clicked / viewed * 100, 2) AS view_to_click_rate, round(completed / clicked * 100, 2) AS click_to_completion_rate FROM ( SELECT user_id, session_id, event_type AS step FROM events WHERE event_date = today() ) GROUP BY session_id;
同期群分析 (Cohort Analysis)
-- 按注册月份划分的用户同期群 SELECT toStartOfMonth(signup_date) AS cohort, toStartOfMonth(activity_date) AS month, dateDiff('month', cohort, month) AS months_since_signup, count(DISTINCT user_id) AS active_users FROM ( SELECT user_id, min(toDate(timestamp)) OVER (PARTITION BY user_id) AS signup_date, toDate(timestamp) AS activity_date FROM events ) GROUP BY cohort, month, months_since_signup ORDER BY cohort, months_since_signup;
数据流水线模式 (Data Pipeline Patterns)
ETL 模式
// 提取、转换、加载 (Extract, Transform, Load) async function etlPipeline() { // 1. 从源提取 const rawData = await extractFromPostgres() // 2. 转换 const transformed = rawData.map(row => ({ date: new Date(row.created_at).toISOString().split('T')[0], market_id: row.market_slug, volume: parseFloat(row.total_volume), trades: parseInt(row.trade_count) })) // 3. 加载到 ClickHouse await bulkInsertToClickHouse(transformed) } // 定期执行 setInterval(etlPipeline, 60 * 60 * 1000) // 每 1 小时一次
变更数据捕获 (CDC)
// 监听 PostgreSQL 变更并同步到 ClickHouse import { Client } from 'pg' const pgClient = new Client({ connectionString: process.env.DATABASE_URL }) pgClient.query('LISTEN market_updates') pgClient.on('notification', async (msg) => { const update = JSON.parse(msg.payload) await clickhouse.insert('market_updates', [ { market_id: update.id, event_type: update.operation, // INSERT, UPDATE, DELETE timestamp: new Date(), data: JSON.stringify(update.new_data) } ]) })
最佳实践
1. 分区策略
- 按时间分区(通常是月或日)
- 避免分区过多(会影响性能)
- 分区键应使用 DATE 类型
2. 排序键 (Sorting Key)
- 将最常过滤的列放在前面
- 考虑基数(优先放置高基数列)
- 顺序会影响压缩率
3. 数据类型
- 使用最小且合适的类型(如 UInt32 vs UInt64)
- 对于重复出现的字符串使用 LowCardinality
- 对于分类数据使用 Enum
4. 应当避免的操作
- 使用 SELECT *(应指定具体列)
- 使用 FINAL(建议在查询前合并数据)
- 使用过多的 JOIN(应针对分析进行反规范化)
- 频繁的小批量插入(应改用大批量处理)
5. 监控
- 跟踪查询性能
- 监控磁盘使用情况
- 检查合并(Merge)操作
- 查看慢查询日志
注意:ClickHouse 在分析工作负载方面表现出色。请根据查询模式设计表结构,采用批量插入,并利用物化视图进行实时聚合。