SurrealDB Boilerplates

Explore 1 boilerplate in this collection. Find the perfect starting point for your next project.

Visit website for FastestEngineer

FastestEngineer

Build a fully featured SaaS app with Primate.js and Svelte

Go
JavaScript
Python
Ruby
TypeScript
Angular
Handlebars
HTMX
Markdown
Marko
React
Solid
MongoDB
MySQL
PostgreSQL
SQLite
SurrealDB
Stripe
Analog
Next.js
Nuxt
Primate.js
Svelte
SvelteKit
Vue.js

Features:

API
Auth
Blog
CI/CD
Deployment
Docs
Emails
+7 more

Why Choose SurrealDB Boilerplates?

SurrealDB provides a powerful data storage solution with specific transaction models, indexing strategies, and query capabilities suited for SaaS applications. Our SurrealDB boilerplates implement database-native features—from ACID transactions to advanced indexing—with schemas optimized for SurrealDB's query engine and scaling characteristics.

SurrealDB boilerplates are designed around the database's data modeling approach and transaction semantics. They leverage SurrealDB-specific features like JSONB columns, full-text search, aggregation pipelines, or partition keys depending on the database type. The schema design follows SurrealDB's best practices for normalization (SQL) or document structure (NoSQL), with strategic indexes on query-heavy columns. Migration systems use SurrealDB-native tools for version-controlled schema evolution.

Key Benefits

  • SurrealDB-native features (JSONB, aggregations)
  • SurrealDB-optimized schema design
  • SurrealDB indexing strategies
  • SurrealDB transaction patterns
  • SurrealDB-specific query optimization
  • SurrealDB scaling architecture
  • SurrealDB backup and replication
  • SurrealDB migration tooling

Browse our collection of 1 SurrealDB boilerplate to find the perfect starting point for your next SaaS project. Each boilerplate has been carefully reviewed to ensure quality, security, and production-readiness.

Frequently Asked Questions

What SurrealDB-specific features are leveraged in these boilerplates?

SurrealDB boilerplates utilize the database's native capabilities including its transaction model (ACID for SQL, eventual consistency for NoSQL), indexing strategies (B-tree, GiST, full-text search), and advanced features like JSON columns, array types, window functions, or document queries. The schema design takes advantage of SurrealDB's strengths—whether that's PostgreSQL's JSONB, MySQL's full-text search, MongoDB's aggregation pipeline, or Redis's data structures.

How is the SurrealDB schema designed for SaaS applications?

SurrealDB boilerplates include production-tested schemas for multi-tenancy, user management, subscriptions, and billing. The design follows SurrealDB's best practices for data modeling—whether that's normalized tables with foreign keys (SQL), embedded documents vs. references (MongoDB), or partition key strategies (DynamoDB). Schemas include proper constraints, default values, and relationship management optimized for SurrealDB's query engine.

What SurrealDB query optimization techniques are implemented?

SurrealDB boilerplates implement database-specific query optimizations including strategic indexing on frequently queried columns, query plan analysis, proper use of SurrealDB's query features (prepared statements, query builders, aggregations), and N+1 query prevention. Connection pooling is configured for SurrealDB's optimal settings, and caching layers are positioned to reduce database load while maintaining data consistency.

How does SurrealDB scale in these boilerplates?

SurrealDB boilerplates are structured for horizontal and vertical scaling using the database's native scaling features. This includes read replicas, sharding strategies (if applicable), connection pool sizing, and query optimization for distributed systems. The architecture supports SurrealDB's scaling patterns—whether that's PostgreSQL's logical replication, MongoDB's sharding, or DynamoDB's automatic partitioning.

What SurrealDB backup and migration strategies are included?

SurrealDB boilerplates include migration systems using database-specific tools (Prisma migrations, Django migrations, Flyway, Liquibase, or native tools). They follow SurrealDB's best practices for zero-downtime deployments, backward-compatible schema changes, and data migrations. Backup strategies leverage SurrealDB's native backup features (pg_dump, mysqldump, mongodump) with automated scheduling and point-in-time recovery configurations.