Back to case studies
AI Product to Production

Lovable Cloud to DigitalOcean Migration

A startup-focused migration that moved an AI-built product from prototype hosting to production-ready infrastructure on DigitalOcean.

AI product development
AI deployment
cloud architecture
DevOps consulting
Problem
  • The product had been built quickly on a prototype-friendly platform, but release control, scalability, and runtime confidence were not good enough for real customer traffic.
  • The founders needed to keep momentum without dragging the team into a heavy enterprise platform build.
Approach
  • Mapped the production-critical parts of the AI workflow and identified what needed to move first: infrastructure, deployment, secrets, and runtime visibility.
  • Built a lean DigitalOcean-based cloud architecture that gave the team predictable releases and a clearer operating model.
  • Focused on AI product development continuity so the team could keep shipping product work while the production layer matured.
Tools
DigitalOcean
Docker
GitHub Actions
Managed Databases
Outcome
  • A cleaner production path for an AI-built product moving beyond prototype hosting.
  • More confidence in release flow, rollback, and operational ownership.
  • A startup-appropriate platform that improved reliability without unnecessary complexity.

Want this level of delivery clarity for your team?

We help teams move AI products, cloud platforms, and internal developer systems into production safely.

Start a conversation

Related Case Studies

More delivery work across AI, cloud, and platform systems

A cost optimization case study that simplified overengineered AWS compute and reduced spend without hurting release safety.

AWS Fargate
Terraform
GitHub Actions

A private GPT architecture for regulated workflows using AWS Bedrock and secure delivery controls.

AWS Bedrock
Terraform
IAM
Platform Engineering

A platform engineering case study that improved delivery speed and governance with an internal developer platform for fintech teams.

Backstage
GCP
GitHub Actions
Contact Us