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find-hypertable-candidates

@timescale · 收录于 1 周前 · 上游提交 2 周前

Use this skill to analyze an existing PostgreSQL database and identify which tables should be converted to Timescale/TimescaleDB hypertables. **Trigger when user asks to:** - Analyze database tables for hypertable conversion potential - Identify time-series or event tables in an existing schema - Evaluate if a table would benefit from Timescale/TimescaleDB - Audit PostgreSQL tables for migration to Timescale/TimescaleDB/TigerData - Score or rank tables for hypertable candidacy **Keywords:** hypertable candidate, table analysis, migration assessment, Timescale, TimescaleDB, time-series detection, insert-heavy tables, event logs, audit tables Provides SQL queries to analyze table statistics, index patterns, and query patterns. Includes scoring criteria (8+ points = good candidate) and pattern recognition for IoT, events, transactions, and sequential data.

适合你,如果正在评估PostgreSQL中哪些表适合迁移到TimescaleDB

/ 下载安装
find-hypertable-candidates.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add timescale/pg-aiguide/find-hypertable-candidates
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- timescale/pg-aiguide/find-hypertable-candidates
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify timescale/pg-aiguide/find-hypertable-candidates
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

商店整理自技能原文 · 版本 b4f11a4 · 表述以原文为准
它做什么

分析 PostgreSQL 数据库,找出适合转为 TimescaleDB 超表的表,并给出评分(8分以上为强候选)。

什么时候触发

当你要求分析数据库表、识别时序表或评估迁移到 TimescaleDB 的可行性时触发。

装好后可以这样说
Claude 会执行 SQL 查询并返回候选表列表。
Claude 会检查该表的模式、索引和查询模式。
技能原文 SKILL.md作者撰写 · Apache-2.0 · b4f11a4

PostgreSQL Hypertable Candidate Analysis

Identify tables that would benefit from TimescaleDB hypertable conversion. After identification, use the companion "migrate-postgres-tables-to-hypertables" skill for configuration and migration.

TimescaleDB Benefits

Performance gains: 90%+ compression, fast time-based queries, improved insert performance, efficient aggregations, continuous aggregates for materialization (dashboards, reports, analytics), automatic data management (retention, compression).

Best for insert-heavy patterns:

  • Time-series data (sensors, metrics, monitoring)
  • Event logs (user events, audit trails, application logs)
  • Transaction records (orders, payments, financial)
  • Sequential data (auto-incrementing IDs with timestamps)
  • Append-only datasets (immutable records, historical)

Requirements: Large volumes (1M+ rows), time-based queries, infrequent updates

Step 1: Database Schema Analysis
Option A: From Database Connection
Table statistics and size
-- Get all tables with row counts and insert/update patterns
WITH table_stats AS (
    SELECT
        schemaname, tablename,
        n_tup_ins as total_inserts,
        n_tup_upd as total_updates,
        n_tup_del as total_deletes,
        n_live_tup as live_rows,
        n_dead_tup as dead_rows
    FROM pg_stat_user_tables
),
table_sizes AS (
    SELECT
        schemaname, tablename,
        pg_size_pretty(pg_total_relation_size(schemaname||'.'||tablename)) as total_size,
        pg_total_relation_size(schemaname||'.'||tablename) as total_size_bytes
    FROM pg_tables
    WHERE schemaname NOT IN ('information_schema', 'pg_catalog')
)
SELECT
    ts.schemaname, ts.tablename, ts.live_rows,
    tsize.total_size, tsize.total_size_bytes,
    ts.total_inserts, ts.total_updates, ts.total_deletes,
    ROUND(CASE WHEN ts.live_rows > 0
          THEN (ts.total_inserts::float / ts.live_rows) * 100
          ELSE 0 END, 2) as insert_ratio_pct
FROM table_stats ts
JOIN table_sizes tsize ON ts.schemaname = tsize.schemaname AND ts.tablename = tsize.tablename
ORDER BY tsize.total_size_bytes DESC;

Look for:

  • mostly insert-heavy patterns (less updates/deletes)
  • big tables (1M+ rows or 100MB+)
Index patterns
-- Identify common query dimensions
SELECT schemaname, tablename, indexname, indexdef
FROM pg_indexes
WHERE schemaname NOT IN ('information_schema', 'pg_catalog')
ORDER BY tablename, indexname;

Look for:

  • Multiple indexes with timestamp/created_at columns → time-based queries
  • Composite (entity_id, timestamp) indexes → good candidates
  • Time-only indexes → time range filtering common
Query patterns (if pg_stat_statements available)
-- Check availability
SELECT EXISTS (SELECT 1 FROM pg_extension WHERE extname = 'pg_stat_statements');

-- Analyze expensive queries for candidate tables
SELECT query, calls, mean_exec_time, total_exec_time
FROM pg_stat_statements
WHERE query ILIKE '%your_table_name%'
ORDER BY total_exec_time DESC LIMIT 20;

✅ Good patterns: Time-based WHERE, entity filtering combined with time-based qualifiers, GROUP BY time_bucket, range queries over time ❌ Poor patterns: Non-time lookups with no time-based qualifiers in same query (WHERE email = ...)

Constraints
-- Check migration compatibility
SELECT conname, contype, pg_get_constraintdef(oid) as definition
FROM pg_constraint
WHERE conrelid = 'your_table_name'::regclass;

Compatibility:

  • Primary keys (p): Must include partition column or ask user if can be modified
  • Foreign keys (f): Plain→Hypertable and Hypertable→Plain OK, Hypertable→Hypertable NOT supported
  • Unique constraints (u): Must include partition column or ask user if can be modified
  • Check constraints (c): Usually OK
Option B: From Code Analysis
✅ GOOD Patterns
# Append-only logging
INSERT INTO events (user_id, event_time, data) VALUES (...);
# Time-series collection
INSERT INTO metrics (device_id, timestamp, value) VALUES (...);
# Time-based queries
SELECT * FROM metrics WHERE timestamp >= NOW() - INTERVAL '24 hours';
# Time aggregations
SELECT DATE_TRUNC('day', timestamp), COUNT(*) GROUP BY 1;
❌ POOR Patterns
# Frequent updates to historical records
UPDATE users SET email = ..., updated_at = NOW() WHERE id = ...;
# Non-time lookups
SELECT * FROM users WHERE email = ...;
# Small reference tables
SELECT * FROM countries ORDER BY name;
Schema Indicators

✅ GOOD:

  • Has timestamp/timestamptz column
  • Multiple indexes with timestamp-based columns
  • Composite (entity_id, timestamp) indexes

❌ POOR:

  • Mostly indexes with non-time-based columns (on columns like email, name, status, etc.)
  • Columns that you expect to be updated over time (updated_at, updated_by, status, etc.)
  • Unique constraints on non-time fields
  • Frequent updated_at modifications
  • Small static tables
Special Case: ID-Based Tables

Sequential ID tables can be candidates if:

  • Insert-mostly pattern / updates are either infrequent or only on recent records.
  • If updates do happen, they occur on recent records (such as an order status being updated orderered->processing->delivered. Note once an order is delivered, it is unlikely to be updated again.)
  • IDs correlate with time (as is the case for serial/auto-incrementing IDs/GENERATED ALWAYS AS IDENTITY)
  • ID is the primary query dimension
  • Recent data accessed more often (frequently the case in ecommerce, finance, etc.)
  • Time-based reporting common (e.g. monthly, daily summaries/analytics)
CREATE TABLE orders (
    id BIGSERIAL PRIMARY KEY,           -- Can partition by ID
    user_id BIGINT,
    created_at TIMESTAMPTZ DEFAULT NOW() -- For sparse indexes
);

Note: For ID-based tables where there is also a time column (created_at, ordered_at, etc.), you can partition by ID and use sparse indexes on the time column. See the migrate-postgres-tables-to-hypertables skill for details.

Step 2: Candidacy Scoring (8+ points = good candidate)
Time-Series Characteristics (5+ points needed)
  • Has timestamp/timestamptz column: 3 points
  • Data inserted chronologically: 2 points
  • Queries filter by time: 2 points
  • Time aggregations common: 2 points
Scale & Performance (3+ points recommended)
  • Large table (1M+ rows or 100MB+): 2 points
  • High insert volume: 1 point
  • Infrequent updates to historical: 1 point
  • Range queries common: 1 point
  • Aggregation queries: 2 points
Data Patterns (bonus)
  • Contains entity ID for segmentation (device_id, user_id, product_id, symbol, etc.): 1 point
  • Numeric measurements: 1 point
  • Log/event structure: 1 point
Common Patterns
✅ GOOD Candidates

✅ Event/Log Tables (user_events, audit_logs)

CREATE TABLE user_events (
    id BIGSERIAL PRIMARY KEY,
    user_id BIGINT,
    event_type TEXT,
    event_time TIMESTAMPTZ DEFAULT NOW(),
    metadata JSONB
);
-- Partition by id, segment by user_id, enable minmax sparse_index on event_time

✅ Sensor/IoT Data (sensor_readings, telemetry)

CREATE TABLE sensor_readings (
    device_id TEXT,
    timestamp TIMESTAMPTZ,
    temperature DOUBLE PRECISION,
    humidity DOUBLE PRECISION
);
-- Partition by timestamp, segment by device_id, minmax sparse indexes on temperature and humidity

✅ Financial/Trading (stock_prices, transactions)

CREATE TABLE stock_prices (
    symbol VARCHAR(10),
    price_time TIMESTAMPTZ,
    open_price DECIMAL,
    close_price DECIMAL,
    volume BIGINT
);
-- Partition by price_time, segment by symbol, minmax sparse indexes on open_price and close_price and volume

✅ System Metrics (monitoring_data)

CREATE TABLE system_metrics (
    hostname TEXT,
    metric_time TIMESTAMPTZ,
    cpu_usage DOUBLE PRECISION,
    memory_usage BIGINT
);
-- Partition by metric_time, segment by hostname, minmax sparse indexes on cpu_usage and memory_usage
❌ POOR Candidates

❌ Reference Tables (countries, categories)

CREATE TABLE countries (
    id SERIAL PRIMARY KEY,
    name VARCHAR(100),
    code CHAR(2)
);
-- Static data, no time component

❌ User Profiles (users, accounts)

CREATE TABLE users (
    id BIGSERIAL PRIMARY KEY,
    email VARCHAR(255),
    created_at TIMESTAMPTZ,
    updated_at TIMESTAMPTZ
);
-- Accessed by ID, frequently updated, has timestamp but it's not the primary query dimension (the primary query dimension is id or email)

❌ Settings/Config (user_settings)

CREATE TABLE user_settings (
    user_id BIGINT PRIMARY KEY,
    theme VARCHAR(20),       -- Changes: light -> dark -> auto
    language VARCHAR(10),    -- Changes: en -> es -> fr
    notifications JSONB,     -- Frequent preference updates
    updated_at TIMESTAMPTZ
);
-- Accessed by user_id, frequently updated, has timestamp but it's not the primary query dimension (the primary query dimension is user_id)
Analysis Output Requirements

For each candidate table provide:

  • Score: Based on criteria (8+ = strong candidate)
  • Pattern: Insert vs update ratio
  • Access: Time-based vs entity lookups
  • Size: Current size and growth rate
  • Queries: Time-range, aggregations, point lookups

Focus on insert-heavy patterns with time-based or sequential access. Tables scoring 8+ points are strong candidates for conversion.

按 Apache-2.0 许可原样转载,未经改动 · 在 GitHub 查看 →

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