Back to Services

Orbit

A dedicated AI team, on your sprints, every week

Most companies treat AI like a project. Build a feature, hand it off, move on. But AI needs continuous attention. Models drift. New use cases surface. Data changes. Orbit gives you a persistent AI team on retainer that ships alongside your engineers, sprint after sprint.

2–3

Dedicated engineers

Every Sprint

ships AI

30d

Notice period

AI shouldn't be
a one-off project

AI projects get delivered, then abandoned without persistent teams to maintain and evolve them.

Hiring senior AI engineers takes 6+ months and requires competing with the best salaries in tech.

Consulting engagements produce reports, not products.

One-off AI projects create technical debt with multiple vendor architectures that nobody owns.

What you actually get

01

Dedicated AI Team

AI engineers, ML ops specialists, and a technical lead who work inside your codebase. They join your standups, use your tools, and commit to your repos.

02

Sprint-Aligned Delivery

No kickoff docs or SOWs for every feature. Your AI team pulls tickets from the backlog each sprint and ships production-ready work on a rolling basis.

03

Continuous Model Ops

Monitoring, drift detection, fallback strategies, and cost optimization come standard with every deployment. Your AI features stay reliable at scale.

04

Rapid Prototyping Pipeline

New AI ideas go from concept to working prototype in days. Test feasibility quickly, then promote the winners to production.

05

Impact Measurement

Every feature ships with success metrics. Monthly reports show exactly how AI is moving your product KPIs, from time saved to revenue influenced.

06

Knowledge Transfer

Documentation, runbooks, architecture decisions, and pair programming sessions. Your internal team gets better at AI every month we're embedded.

Sprint-Aligned Delivery
Month-to-Month Retainer
Full Codebase Ownership
NDA & IP Protection
Flexible Team Scaling

Productive in weeks,
not months

We've done this enough times to have a repeatable onboarding playbook. No 3-month ramp-ups. No discovery phases that drag on forever. Your team starts shipping from week two.

01

Week 1

Discovery & Onboarding

We audit your stack, map AI opportunities to business goals, and build a prioritized roadmap. The team gets access to repos, tools, and channels.

02

Week 2–3

First Sprint Delivery

The team joins your sprint cadence and delivers the first AI feature. Early wins build momentum and prove the model works inside your workflow.

03

Month 2+

Continuous AI Velocity

AI features ship every sprint. The team refines the backlog, proposes new opportunities, and optimizes deployed models based on production data.

04

Ongoing

Scale & Transfer

As your internal AI capability grows, we hand over knowledge and operational ownership. Scale the team up or down based on your roadmap.

Who this is for

Product Companies

You have a working product and want to add AI features systematically, without hiring a full ML team from scratch.

Growth-Stage Startups

You're scaling fast and need AI capabilities now. But the 6-month hiring cycle for senior AI engineers isn't an option.

Enterprise Teams

Your engineering org is strong but lacks specialized AI depth. You need people who ship, not consultants who produce slide decks.

Platform Companies

You're building developer tools or B2B platforms and need AI features to stay competitive. Think smart search, recommendations, and automation.

The full AI stack, covered

One team handles everything from prototyping and model development to production ops and strategic planning. No handoffs between vendors. No gaps in coverage.

Core AI Development

  • LLM integration & prompt engineering
  • RAG pipeline design
  • Custom model fine-tuning
  • Agent workflow development
  • Intelligent UX features
  • AI-powered automation

Operations & Reliability

  • Model monitoring & drift detection
  • Cost optimization
  • A/B testing frameworks
  • Fallback & reliability patterns
  • Performance benchmarking
  • Incident response

Strategy & Growth

  • AI opportunity mapping
  • Feature prioritization
  • Internal tooling & automation
  • Team upskilling & pairing
  • Architecture reviews
  • Quarterly roadmap planning

Let's talk about
your AI roadmap

30 minutes. We'll map your AI opportunities and show you what the first sprint looks like.