SKILL.md
readonlyread-only
name
clickhouse-io
description
ClickHouse 資料庫模式、查詢最佳化、分析與資料工程最佳實務,專為高效能分析工作負載設計。
ClickHouse 分析模式
專為高效能分析與資料工程設計的 ClickHouse 特定模式。
啟用時機
- 設計 ClickHouse 資料表結構(MergeTree 引擎選擇)
- 撰寫分析查詢(聚合、視窗函數、JOIN)
- 最佳化查詢效能(分割區剪枝、投影、實體化視圖)
- 大量資料匯入(批次插入、Kafka 整合)
- 從 PostgreSQL/MySQL 遷移至 ClickHouse 進行分析
- 實作即時儀表板或時間序列分析
概述
ClickHouse 是一個專為線上分析處理(OLAP)設計的列式資料庫管理系統(DBMS),針對大型資料集的快速分析查詢進行最佳化。
主要特色:
- 列式儲存
- 資料壓縮
- 平行查詢執行
- 分散式查詢
- 即時分析
資料表設計模式
MergeTree 引擎(最常見)
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(去重)
-- 適用於可能包含重複資料的情況(例如來自多個來源)
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(預聚合)
-- 用於維護聚合指標
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);
-- 查詢聚合資料
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;
查詢最佳化模式
高效過濾
-- PASS: 良好:優先使用索引欄位
SELECT *
FROM markets_analytics
WHERE date >= '2025-01-01'
AND market_id = 'market-123'
AND volume > 1000
ORDER BY date DESC
LIMIT 100;
-- FAIL: 不良:先過濾非索引欄位
SELECT *
FROM markets_analytics
WHERE volume > 1000
AND market_name LIKE '%election%'
AND date >= '2025-01-01';
聚合
-- PASS: 良好:使用 ClickHouse 專用聚合函數
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;
-- PASS: 使用 quantile 計算百分位數(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;
視窗函數
-- 計算累計總和
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;
資料插入模式
批次插入(建議)
import { createClient } from '@clickhouse/client'
const clickhouse = createClient({
url: process.env.CLICKHOUSE_URL ?? 'http://localhost:8123',
username: process.env.CLICKHOUSE_USER,
password: process.env.CLICKHOUSE_PASSWORD
})
// PASS: 批次插入(高效)
async function bulkInsertTrades(trades: Trade[]) {
await clickhouse.insert({
table: 'trades',
values: trades.map(trade => ({
id: trade.id,
market_id: trade.market_id,
user_id: trade.user_id,
amount: trade.amount,
timestamp: trade.timestamp.toISOString()
})),
format: 'JSONEachRow'
})
}
// FAIL: 單筆插入(緩慢)
async function insertTrade(trade: Trade) {
// 不要在迴圈中這樣做!
await clickhouse.insert({
table: 'trades',
values: [{
id: trade.id,
market_id: trade.market_id,
user_id: trade.user_id,
amount: trade.amount,
timestamp: trade.timestamp.toISOString()
}],
format: 'JSONEachRow'
})
}
串流插入
// 用於持續資料匯入
import { Readable } from 'node:stream'
async function streamInserts(dataSource: AsyncIterable<Record<string, unknown>>) {
await clickhouse.insert({
table: 'trades',
values: Readable.from(dataSource, { objectMode: true }),
format: 'JSONEachRow'
})
}
實體化視圖
即時聚合
-- 建立每小時統計的實體化視圖
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;
-- 查詢實體化視圖
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;
效能監控
查詢效能
-- 檢查慢查詢
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;
資料表統計
-- 檢查資料表大小
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;
常見分析查詢
時間序列分析
-- 每日活躍使用者
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
-- 轉換漏斗
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;
同群分析
-- 依註冊月份的使用者同群
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;
資料管線模式
ETL 模式
// 擷取、轉換、載入
async function etlPipeline() {
// 1. 從來源擷取
const rawData = await extractFromPostgres()
// 2. 轉換
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. 載入至 ClickHouse
await bulkInsertToClickHouse(transformed)
}
// 定期執行
setInterval(etlPipeline, 60 * 60 * 1000) // 每小時
變更資料擷取(CDC)
// 監聽 PostgreSQL 變更並同步至 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({
table: 'market_updates',
values: [
{
market_id: update.id,
event_type: update.operation, // INSERT, UPDATE, DELETE
timestamp: new Date(),
data: JSON.stringify(update.new_data)
}
],
format: 'JSONEachRow'
})
})
最佳實務
1. 分割策略
- 按時間分割(通常按月或日)
- 避免過多分割區(影響效能)
- 使用 DATE 類型作為分割鍵
2. 排序鍵
- 將最常過濾的欄位放在前面
- 考慮基數(高基數優先)
- 排序影響壓縮率
3. 資料類型
- 使用最小的適當類型(UInt32 vs UInt64)
- 對重複字串使用 LowCardinality
- 對類別資料使用 Enum
4. 避免
- SELECT *(指定欄位)
- FINAL(應在查詢前合併資料)
- 過多 JOIN(為分析進行反正規化)
- 頻繁的小量插入(改為批次)
5. 監控
- 追蹤查詢效能
- 監控磁碟使用量
- 檢查合併操作
- 檢視慢查詢日誌
切記:ClickHouse 擅長分析工作負載。根據查詢模式設計資料表、批次插入,並利用實體化視圖進行即時聚合。






