StackShareStackShare
Follow on
StackShare

Discover and share technology stacks from companies around the world.

Follow on

© 2025 StackShare. All rights reserved.

Product

  • Stacks
  • Tools
  • Feed

Company

  • About
  • Contact

Legal

  • Privacy Policy
  • Terms of Service
  1. Stackups
  2. Application & Data
  3. Relational Databases
  4. Postgresql As A Service
  5. Crunchy Bridge vs Google Cloud SQL for PostgreSQL

Crunchy Bridge vs Google Cloud SQL for PostgreSQL

OverviewComparisonAlternatives

Overview

Google Cloud SQL for PostgreSQL
Google Cloud SQL for PostgreSQL
Stacks142
Followers106
Votes0
Crunchy Bridge
Crunchy Bridge
Stacks8
Followers18
Votes0

Crunchy Bridge vs Google Cloud SQL for PostgreSQL: What are the differences?

Introduction

Crunchy Bridge and Google Cloud SQL for PostgreSQL are two popular managed PostgreSQL database services that offer various features and capabilities to users. Here are the key differences between the two services:

1. Deployment Options:

Crunchy Bridge offers a fully managed PostgreSQL service where users do not have to worry about infrastructure or maintenance tasks. On the other hand, Google Cloud SQL for PostgreSQL provides more control and flexibility over the deployment options, allowing users to choose from various configurations and settings.

2. Scalability:

Crunchy Bridge offers seamless scalability with automatic read replicas and scaling based on workload demands. In contrast, Google Cloud SQL for PostgreSQL allows users to manually configure and scale their instances according to their needs, providing more control but requiring more management effort.

3. High Availability:

Crunchy Bridge provides built-in high availability with automated failover and data redundancy to ensure continuous uptime. Google Cloud SQL for PostgreSQL also offers high availability options, but users may need to manually configure features like read replicas and failover mechanisms for better fault tolerance.

4. Pricing Structure:

The pricing structure of Crunchy Bridge is straightforward with a pay-as-you-go model that includes all necessary features and support. Google Cloud SQL for PostgreSQL offers more complex pricing options, including different pricing tiers based on instance size, storage, and additional features, which can make cost estimation more challenging for users.

5. Security Features:

While both services offer robust security features such as encryption at rest and in transit, Crunchy Bridge emphasizes data security and compliance with features like audit logging and role-based access control. Google Cloud SQL for PostgreSQL also provides security features, but users may need to configure and manage them more actively.

6. Support and SLA:

Crunchy Bridge provides dedicated 24/7 support and guarantees a certain level of service availability through its SLA. In comparison, Google Cloud SQL for PostgreSQL offers various support options and SLAs based on the chosen pricing tier, with higher tiers including premium support and better service level commitments.

In Summary, Crunchy Bridge and Google Cloud SQL for PostgreSQL differ in deployment options, scalability, high availability, pricing structure, security features, and support offerings.

Share your Stack

Help developers discover the tools you use. Get visibility for your team's tech choices and contribute to the community's knowledge.

View Docs
CLI (Node.js)
or
Manual

Detailed Comparison

Google Cloud SQL for PostgreSQL
Google Cloud SQL for PostgreSQL
Crunchy Bridge
Crunchy Bridge

With Cloud SQL for PostgreSQL, you can spend less time on your database operations and more time on your applications.

It is a fully-managed database as a service. It takes care of backups, high availability, monitoring. Additionally, it is multi-cloud supporting AWS and Azure and comes with PL/Python3u and PL/R for more powerful work.

-
Production-ready; Developer friendly; Choose between AWS and Azure; Replicas available in other regions; Replicas available across infrastructure provider; Encryption at rest; Encryption in transit; Backups automatically taken and tested for you; Built-in point in time recovery to any time in last seven days
Statistics
Stacks
142
Stacks
8
Followers
106
Followers
18
Votes
0
Votes
0
Integrations
Google App Engine
Google App Engine
Google Compute Engine
Google Compute Engine
PostgreSQL
PostgreSQL
PostgreSQL
PostgreSQL
Microsoft Azure
Microsoft Azure

What are some alternatives to Google Cloud SQL for PostgreSQL, Crunchy Bridge?

Amazon RDS for PostgreSQL

Amazon RDS for PostgreSQL

Amazon RDS manages complex and time-consuming administrative tasks such as PostgreSQL software installation and upgrades, storage management, replication for high availability and back-ups for disaster recovery. With just a few clicks in the AWS Management Console, you can deploy a PostgreSQL database with automatically configured database parameters for optimal performance. Amazon RDS for PostgreSQL database instances can be provisioned with either standard storage or Provisioned IOPS storage. Once provisioned, you can scale from 10GB to 3TB of storage and from 1,000 IOPS to 30,000 IOPS.

Heroku Postgres

Heroku Postgres

Heroku Postgres provides a SQL database-as-a-service that lets you focus on building your application instead of messing around with database management.

ElephantSQL

ElephantSQL

ElephantSQL hosts PostgreSQL on Amazon EC2 in multiple regions and availability zones. The servers are continuously transferring the Write-Ahead-Log (the transaction log) to S3 for maximum reliability.

Database Labs

Database Labs

We manage an optimized Postgres image. You focus on your core app, not on becoming a database administrator.

Azure Database for PostgreSQL

Azure Database for PostgreSQL

Azure Database for PostgreSQL provides a managed database service for app development and deployment that allows you to stand up a PostgreSQL database in minutes and scale on the fly – on the cloud you trust most.

Neon Database

Neon Database

It is a fully managed serverless PostgreSQL. Neon separates storage and compute to offer modern developer features such as serverless, branching, bottomless storage, and more.

Amazon Aurora PostgreSQL

Amazon Aurora PostgreSQL

It is a fully managed, PostgreSQL–compatible, and ACID–compliant relational database engine that combines the speed, reliability, and manageability of Amazon Aurora with the simplicity and cost-effectiveness of open-source databases.

Vercel Postgres

Vercel Postgres

It enables you to create scalable, secure PostgreSQL databases. You should use Vercel Postgres if you need to manage customer profiles, user-generated content, financial transaction processing, or other complex data.

PaaS DB PostgreSQL

PaaS DB PostgreSQL

A simple product to get an operational database without any pain about server management, security settings and upgrading. We provide resources to instanciate your database (PostgreSQL 9.4). Our goal is to propose this service with an hourly billing.

Related Comparisons

Bootstrap
Materialize

Bootstrap vs Materialize

Laravel
Django

Django vs Laravel vs Node.js

Bootstrap
Foundation

Bootstrap vs Foundation vs Material UI

Node.js
Spring Boot

Node.js vs Spring-Boot

Liquibase
Flyway

Flyway vs Liquibase