event-store-design

event-store-design

热门

Design and implement event stores for event-sourced systems. Use when building event sourcing infrastructure, choosing event store technologies, or implementing event persistence patterns.

26KStar
2.9KFork
更新于 1/22/2026
SKILL.md
readonly只读
name
event-store-design
description

Design and implement event stores for event-sourced systems. Use when building event sourcing infrastructure, choosing event store technologies, or implementing event persistence patterns.

Event Store Design

Comprehensive guide to designing event stores for event-sourced applications.

When to Use This Skill

  • Designing event sourcing infrastructure
  • Choosing between event store technologies
  • Implementing custom event stores
  • Optimizing event storage and retrieval
  • Setting up event store schemas
  • Planning for event store scaling

Core Concepts

1. Event Store Architecture

┌─────────────────────────────────────────────────────┐
│                    Event Store                       │
├─────────────────────────────────────────────────────┤
│  ┌─────────────┐  ┌─────────────┐  ┌─────────────┐ │
│  │   Stream 1   │  │   Stream 2   │  │   Stream 3   │ │
│  │ (Aggregate)  │  │ (Aggregate)  │  │ (Aggregate)  │ │
│  ├─────────────┤  ├─────────────┤  ├─────────────┤ │
│  │ Event 1     │  │ Event 1     │  │ Event 1     │ │
│  │ Event 2     │  │ Event 2     │  │ Event 2     │ │
│  │ Event 3     │  │ ...         │  │ Event 3     │ │
│  │ ...         │  │             │  │ Event 4     │ │
│  └─────────────┘  └─────────────┘  └─────────────┘ │
├─────────────────────────────────────────────────────┤
│  Global Position: 1 → 2 → 3 → 4 → 5 → 6 → ...     │
└─────────────────────────────────────────────────────┘

2. Event Store Requirements

Requirement Description
Append-only Events are immutable, only appends
Ordered Per-stream and global ordering
Versioned Optimistic concurrency control
Subscriptions Real-time event notifications
Idempotent Handle duplicate writes safely

Technology Comparison

Technology Best For Limitations
EventStoreDB Pure event sourcing Single-purpose
PostgreSQL Existing Postgres stack Manual implementation
Kafka High-throughput streaming Not ideal for per-stream queries
DynamoDB Serverless, AWS-native Query limitations
Marten .NET ecosystems .NET specific

Templates

Template 1: PostgreSQL Event Store Schema

-- Events table
CREATE TABLE events (
    id UUID PRIMARY KEY DEFAULT gen_random_uuid(),
    stream_id VARCHAR(255) NOT NULL,
    stream_type VARCHAR(255) NOT NULL,
    event_type VARCHAR(255) NOT NULL,
    event_data JSONB NOT NULL,
    metadata JSONB DEFAULT '{}',
    version BIGINT NOT NULL,
    global_position BIGSERIAL,
    created_at TIMESTAMPTZ DEFAULT NOW(),

    CONSTRAINT unique_stream_version UNIQUE (stream_id, version)
);

-- Index for stream queries
CREATE INDEX idx_events_stream_id ON events(stream_id, version);

-- Index for global subscription
CREATE INDEX idx_events_global_position ON events(global_position);

-- Index for event type queries
CREATE INDEX idx_events_event_type ON events(event_type);

-- Index for time-based queries
CREATE INDEX idx_events_created_at ON events(created_at);

-- Snapshots table
CREATE TABLE snapshots (
    stream_id VARCHAR(255) PRIMARY KEY,
    stream_type VARCHAR(255) NOT NULL,
    snapshot_data JSONB NOT NULL,
    version BIGINT NOT NULL,
    created_at TIMESTAMPTZ DEFAULT NOW()
);

-- Subscriptions checkpoint table
CREATE TABLE subscription_checkpoints (
    subscription_id VARCHAR(255) PRIMARY KEY,
    last_position BIGINT NOT NULL DEFAULT 0,
    updated_at TIMESTAMPTZ DEFAULT NOW()
);

Template 2: Python Event Store Implementation

from dataclasses import dataclass, field
from datetime import datetime
from typing import Any, Optional, List
from uuid import UUID, uuid4
import json
import asyncpg

@dataclass
class Event:
    stream_id: str
    event_type: str
    data: dict
    metadata: dict = field(default_factory=dict)
    event_id: UUID = field(default_factory=uuid4)
    version: Optional[int] = None
    global_position: Optional[int] = None
    created_at: datetime = field(default_factory=datetime.utcnow)


class EventStore:
    def __init__(self, pool: asyncpg.Pool):
        self.pool = pool

    async def append_events(
        self,
        stream_id: str,
        stream_type: str,
        events: List[Event],
        expected_version: Optional[int] = None
    ) -> List[Event]:
        """Append events to a stream with optimistic concurrency."""
        async with self.pool.acquire() as conn:
            async with conn.transaction():
                # Check expected version
                if expected_version is not None:
                    current = await conn.fetchval(
                        "SELECT MAX(version) FROM events WHERE stream_id = $1",
                        stream_id
                    )
                    current = current or 0
                    if current != expected_version:
                        raise ConcurrencyError(
                            f"Expected version {expected_version}, got {current}"
                        )

                # Get starting version
                start_version = await conn.fetchval(
                    "SELECT COALESCE(MAX(version), 0) + 1 FROM events WHERE stream_id = $1",
                    stream_id
                )

                # Insert events
                saved_events = []
                for i, event in enumerate(events):
                    event.version = start_version + i
                    row = await conn.fetchrow(
                        """
                        INSERT INTO events (id, stream_id, stream_type, event_type,
                                          event_data, metadata, version, created_at)
                        VALUES ($1, $2, $3, $4, $5, $6, $7, $8)
                        RETURNING global_position
                        """,
                        event.event_id,
                        stream_id,
                        stream_type,
                        event.event_type,
                        json.dumps(event.data),
                        json.dumps(event.metadata),
                        event.version,
                        event.created_at
                    )
                    event.global_position = row['global_position']
                    saved_events.append(event)

                return saved_events

    async def read_stream(
        self,
        stream_id: str,
        from_version: int = 0,
        limit: int = 1000
    ) -> List[Event]:
        """Read events from a stream."""
        async with self.pool.acquire() as conn:
            rows = await conn.fetch(
                """
                SELECT id, stream_id, event_type, event_data, metadata,
                       version, global_position, created_at
                FROM events
                WHERE stream_id = $1 AND version >= $2
                ORDER BY version
                LIMIT $3
                """,
                stream_id, from_version, limit
            )
            return [self._row_to_event(row) for row in rows]

    async def read_all(
        self,
        from_position: int = 0,
        limit: int = 1000
    ) -> List[Event]:
        """Read all events globally."""
        async with self.pool.acquire() as conn:
            rows = await conn.fetch(
                """
                SELECT id, stream_id, event_type, event_data, metadata,
                       version, global_position, created_at
                FROM events
                WHERE global_position > $1
                ORDER BY global_position
                LIMIT $2
                """,
                from_position, limit
            )
            return [self._row_to_event(row) for row in rows]

    async def subscribe(
        self,
        subscription_id: str,
        handler,
        from_position: int = 0,
        batch_size: int = 100
    ):
        """Subscribe to all events from a position."""
        # Get checkpoint
        async with self.pool.acquire() as conn:
            checkpoint = await conn.fetchval(
                """
                SELECT last_position FROM subscription_checkpoints
                WHERE subscription_id = $1
                """,
                subscription_id
            )
            position = checkpoint or from_position

        while True:
            events = await self.read_all(position, batch_size)
            if not events:
                await asyncio.sleep(1)  # Poll interval
                continue

            for event in events:
                await handler(event)
                position = event.global_position

            # Save checkpoint
            async with self.pool.acquire() as conn:
                await conn.execute(
                    """
                    INSERT INTO subscription_checkpoints (subscription_id, last_position)
                    VALUES ($1, $2)
                    ON CONFLICT (subscription_id)
                    DO UPDATE SET last_position = $2, updated_at = NOW()
                    """,
                    subscription_id, position
                )

    def _row_to_event(self, row) -> Event:
        return Event(
            event_id=row['id'],
            stream_id=row['stream_id'],
            event_type=row['event_type'],
            data=json.loads(row['event_data']),
            metadata=json.loads(row['metadata']),
            version=row['version'],
            global_position=row['global_position'],
            created_at=row['created_at']
        )


class ConcurrencyError(Exception):
    """Raised when optimistic concurrency check fails."""
    pass

Template 3: EventStoreDB Usage

from esdbclient import EventStoreDBClient, NewEvent, StreamState
import json

# Connect
client = EventStoreDBClient(uri="esdb://localhost:2113?tls=false")

# Append events
def append_events(stream_name: str, events: list, expected_revision=None):
    new_events = [
        NewEvent(
            type=event['type'],
            data=json.dumps(event['data']).encode(),
            metadata=json.dumps(event.get('metadata', {})).encode()
        )
        for event in events
    ]

    if expected_revision is None:
        state = StreamState.ANY
    elif expected_revision == -1:
        state = StreamState.NO_STREAM
    else:
        state = expected_revision

    return client.append_to_stream(
        stream_name=stream_name,
        events=new_events,
        current_version=state
    )

# Read stream
def read_stream(stream_name: str, from_revision: int = 0):
    events = client.get_stream(
        stream_name=stream_name,
        stream_position=from_revision
    )
    return [
        {
            'type': event.type,
            'data': json.loads(event.data),
            'metadata': json.loads(event.metadata) if event.metadata else {},
            'stream_position': event.stream_position,
            'commit_position': event.commit_position
        }
        for event in events
    ]

# Subscribe to all
async def subscribe_to_all(handler, from_position: int = 0):
    subscription = client.subscribe_to_all(commit_position=from_position)
    async for event in subscription:
        await handler({
            'type': event.type,
            'data': json.loads(event.data),
            'stream_id': event.stream_name,
            'position': event.commit_position
        })

# Category projection ($ce-Category)
def read_category(category: str):
    """Read all events for a category using system projection."""
    return read_stream(f"$ce-{category}")

Template 4: DynamoDB Event Store

import boto3
from boto3.dynamodb.conditions import Key
from datetime import datetime
import json
import uuid

class DynamoEventStore:
    def __init__(self, table_name: str):
        self.dynamodb = boto3.resource('dynamodb')
        self.table = self.dynamodb.Table(table_name)

    def append_events(self, stream_id: str, events: list, expected_version: int = None):
        """Append events with conditional write for concurrency."""
        with self.table.batch_writer() as batch:
            for i, event in enumerate(events):
                version = (expected_version or 0) + i + 1
                item = {
                    'PK': f"STREAM#{stream_id}",
                    'SK': f"VERSION#{version:020d}",
                    'GSI1PK': 'EVENTS',
                    'GSI1SK': datetime.utcnow().isoformat(),
                    'event_id': str(uuid.uuid4()),
                    'stream_id': stream_id,
                    'event_type': event['type'],
                    'event_data': json.dumps(event['data']),
                    'version': version,
                    'created_at': datetime.utcnow().isoformat()
                }
                batch.put_item(Item=item)
        return events

    def read_stream(self, stream_id: str, from_version: int = 0):
        """Read events from a stream."""
        response = self.table.query(
            KeyConditionExpression=Key('PK').eq(f"STREAM#{stream_id}") &
                                  Key('SK').gte(f"VERSION#{from_version:020d}")
        )
        return [
            {
                'event_type': item['event_type'],
                'data': json.loads(item['event_data']),
                'version': item['version']
            }
            for item in response['Items']
        ]

# Table definition (CloudFormation/Terraform)
"""
DynamoDB Table:
  - PK (Partition Key): String
  - SK (Sort Key): String
  - GSI1PK, GSI1SK for global ordering

Capacity: On-demand or provisioned based on throughput needs
"""

Best Practices

Do's

  • Use stream IDs that include aggregate type - Order-{uuid}
  • Include correlation/causation IDs - For tracing
  • Version events from day one - Plan for schema evolution
  • Implement idempotency - Use event IDs for deduplication
  • Index appropriately - For your query patterns

Don'ts

  • Don't update or delete events - They're immutable facts
  • Don't store large payloads - Keep events small
  • Don't skip optimistic concurrency - Prevents data corruption
  • Don't ignore backpressure - Handle slow consumers

Resources

You Might Also Like

Related Skills

zig-system-calls

zig-system-calls

87Kdev-database

Guides using bun.sys for system calls and file I/O in Zig. Use when implementing file operations instead of std.fs or std.posix.

oven-sh avataroven-sh
获取
bun-file-io

bun-file-io

86Kdev-database

Use this when you are working on file operations like reading, writing, scanning, or deleting files. It summarizes the preferred file APIs and patterns used in this repo. It also notes when to use filesystem helpers for directories.

anomalyco avataranomalyco
获取
vector-index-tuning

vector-index-tuning

26Kdev-database

Optimize vector index performance for latency, recall, and memory. Use when tuning HNSW parameters, selecting quantization strategies, or scaling vector search infrastructure.

wshobson avatarwshobson
获取

Implement efficient similarity search with vector databases. Use when building semantic search, implementing nearest neighbor queries, or optimizing retrieval performance.

wshobson avatarwshobson
获取

Master dbt (data build tool) for analytics engineering with model organization, testing, documentation, and incremental strategies. Use when building data transformations, creating data models, or implementing analytics engineering best practices.

wshobson avatarwshobson
获取
projection-patterns

projection-patterns

26Kdev-database

Build read models and projections from event streams. Use when implementing CQRS read sides, building materialized views, or optimizing query performance in event-sourced systems.

wshobson avatarwshobson
获取