ClickHouse Analytics Patterns
ClickHouse-specific patterns for high-performance analytics and data engineering.
Overview
ClickHouse is a column-oriented database management system (DBMS) for online analytical processing (OLAP). It's optimized for fast analytical queries on large datasets.
Key Features:
- •Column-oriented storage
- •Data compression
- •Parallel query execution
- •Distributed queries
- •Real-time analytics
Table Design Patterns
MergeTree Engine (Most Common)
sql
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 (Deduplication)
sql
-- For data that may have duplicates (e.g., from multiple sources)
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 (Pre-aggregation)
sql
-- For maintaining aggregated metrics
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);
-- Query aggregated data
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;
Query Optimization Patterns
Efficient Filtering
sql
-- ✅ GOOD: Use indexed columns first SELECT * FROM markets_analytics WHERE date >= '2025-01-01' AND market_id = 'market-123' AND volume > 1000 ORDER BY date DESC LIMIT 100; -- ❌ BAD: Filter on non-indexed columns first SELECT * FROM markets_analytics WHERE volume > 1000 AND market_name LIKE '%election%' AND date >= '2025-01-01';
Aggregations
sql
-- ✅ GOOD: Use ClickHouse-specific aggregation functions
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;
-- ✅ Use quantile for percentiles (more efficient than percentile)
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;
Window Functions
sql
-- Calculate running totals
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;
Data Insertion Patterns
Bulk Insert (Recommended)
typescript
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
}
})
// ✅ Batch insert (efficient)
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 ${values}
`).toPromise()
}
// ❌ Individual inserts (slow)
async function insertTrade(trade: Trade) {
// Don't do this in a loop!
await clickhouse.query(`
INSERT INTO trades VALUES ('${trade.id}', ...)
`).toPromise()
}
Streaming Insert
typescript
// For continuous data ingestion
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()
}
Materialized Views
Real-time Aggregations
sql
-- Create materialized view for hourly stats
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;
-- Query