AI Product Development

The AI Product Development Company That Ships Products to Launch in Sprints

You have an AI concept. Your team needs it built, tested, and generating revenue, not explored in a workshop. Redefine plans, develops, and ships end-to-end AI products for enterprise and growth-stage companies, from the first prototype to scaled production systems.

0+AI products shipped
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Enterprise clients

0 days

First deliverable

AI product development team reviewing sprint board with code and AI model output on screens
The reality of AI product development

Most AI builds stall before they ship.

The gap between an AI prototype and a live product that generates revenue is where most teams lose months. These are the patterns that slow AI product development down.

The old way

Months in discovery, nothing to show

Workshops, decks, and frameworks that delay the first working model by a quarter.

Model trained, product never integrated

Machine learning teams hand off a model that never connects to your user-facing application.

Siloed vendors, no single owner

Data scientists, frontend devs, and DevOps all on separate contracts. No one owns the full product.

Proof of concept that never scales

Lab accuracy of 94% collapses to 61% on real production data. No path to fix it.

No monitoring after launch

Model drift goes undetected for months. By the time someone notices, trust is gone.

The Redefine way

Sprint 1 deliverable within 7 days

A working prototype is in your hands one week after sign-off. Not a slide. Not a spec.

Full-stack AI product, one team

Machine learning engineers, backend developers, UI designers, and DevOps under a single engagement.

Production-grade from week one

Architecture decisions account for production scale. No rewrite later.

Data-tested before user-facing

Real production data validation before you put the model in front of your customers.

Observability built into the product

Drift detection, performance monitoring, and retraining triggers included at launch.

Pain · developer at fragmented systems

Developer overwhelmed by disconnected AI development tools and fragmented workflows across multiple screens
How every AI product build works

From Discovery to Deployed in Six Tracked Phases

Click any phase to see what happens, what you receive, and who is responsible. Every phase has a deliverable. Nothing is invisible.

Phase 01: Discovery

AI product consulting that maps your opportunity before writing a line of code.

Stakeholder interviews, data audit, feasibility review, and competitive positioning. You leave with a clear problem statement, a viable AI approach, and a scope that fits your timeline.

Discovery Report: Redefine AI
AI Opportunity ScoreHigh Viability
Data readiness82%
Technical feasibility91%
Revenue potentialHigh

Phase 02: Architecture

System design decisions that survive production load.

Tech stack selection, data pipeline architecture, model hosting strategy, API design, and a sprint-by-sprint roadmap. Every decision is documented with the trade-offs that shaped it.

Architecture Decision Record
Model layerFine-tuned LLM
Data pipelineReal-time + batch
API surfaceREST + WebSocket
InfrastructureAWS EKS

Phase 03: Development

Two-week sprints. A demo at the end of every one.

Full-stack development with sprint demos, code reviews, and documented handoff. Your team reviews working software every 14 days, not a status update.

Sprint Board: Sprint 4

To Do

Model API endpoint
Rate limiting

In Progress

UI integration
Auth layer

Done

Data pipeline
Schema design

Phase 04: AI Training

Model performance validated on your production data.

Training, validation, and fine-tuning on your actual dataset. Accuracy metrics reported against your domain-specific benchmarks, not generic leaderboards. No surprises when you go live.

Model Validation Report
Training accuracy96.4%
Production validation accuracy93.1%
Inference latency (p95)142ms
False positive rate1.8%
Model approved for integration: production ready

Phase 05: QA and Integration

End-to-end testing before your users see anything.

Load testing, security audit, adversarial input testing, and user acceptance testing. A pass/fail report with every finding documented and resolved before launch.

QA Report: Pre-Launch
Load test: 10k concurrent usersPass
OWASP security scanPass
Adversarial input testingPass
User acceptance testing sign-offPending
Data privacy compliancePass

Phase 06: Launch and Optimize

Your AI product is live. Drift detection starts immediately.

Blue-green deployment, real-time monitoring, drift alerts, and a retraining schedule built into the product from day one. Launch is not the end of the engagement.

Production Monitor
Model healthNominal
Requests (last 24 hours)47,821
Average response time138ms
Model accuracy (live)93.4%
Drift alertNone detected
What you receive

Enterprise AI product development services, built and shipped by one team.

Every capability below is included or available as part of a scoped engagement. Nothing is farmed out. Nothing is invisible.

Machine Learning Model Development

Custom model training, fine-tuning, and validation on your production dataset. Accuracy reported against domain-specific benchmarks, not generic leaderboards.

Full-Stack Product Engineering

Application layer, application programming interface design, and user interface built alongside the model. Sprint demos every two weeks. Full code handoff at project close.

Data Pipeline Architecture

Real-time and batch ingestion, feature engineering, and storage strategy designed for production from the start. Not retrofitted from a prototype.

Production Deployment and Monitoring

Blue-green deployment, drift detection, alerting, and a retraining schedule built in from day one. Launch is not the end of the engagement.

Enterprise System Integration

Connects to Dynamics 365, Salesforce, custom databases, and existing frontend architectures. Application programming interface design is part of the architecture phase, not an afterthought.

Enterprise scale

Built for teams that need production AI, not proofs of concept.

Security audit, load testing at scale, compliance review, and full intellectual property transfer. Your team owns everything at handoff.

Get A Scoped Proposal
Results in production

What shipped AI product solutions deliver for the teams that commission them.

Case study

Demand forecasting model reduced overstock costs by 34 percent in the first quarter post-launch.

A mid-market retail operator needed to predict replenishment cycles across 2,400 stock-keeping units without adding headcount to the buying team. Redefine built a custom forecasting model, integrated it with their existing warehouse management system, and deployed it in 11 weeks. The model runs continuously in production with drift alerts wired to the operations manager's dashboard.

James Whitfield, Head of Operations, Fenbrook Retail Group

Retail operations dashboard showing AI demand forecasting metrics and inventory reduction results
47+
AI products built and shipped in production
11wk
Average time from sign-off to live deployment
93%
Average production validation accuracy across all shipped models
100%
Full code and intellectual property ownership transferred to client
Why Redefine

What typical AI product developers deliver, and what Redefine does differently.

Typical AI Development Vendor

  • Separate machine learning, development, and DevOps vendors with handoff gaps between them
  • 6 to 12 weeks before anything is visible to your team
  • Prototype architecture not designed for production load
  • Lab accuracy reported at handoff, not production accuracy
  • No monitoring or retraining plan after launch
  • Time-and-materials billing where scope expands after kick-off
  • Intellectual property ownership unclear or retained by vendor in contract

Redefine AI Product Development

  • One integrated team: machine learning, engineering, and DevOps under a single engagement contract
  • Sprint 1 delivers a working prototype within 7 days of sign-off
  • Architecture designed for production load from the first phase, not retrofitted
  • Accuracy validated on your production data, benchmarked against your domain, not generic leaderboards
  • Drift detection, alerting, and retraining schedule built into the product before launch
  • Scoped and priced before work starts, with a line-by-line breakdown by phase
  • Full source code, trained models, and intellectual property transferred to you at project completion
Common questions

Answers before you commit to a call.

A focused minimum viable product with one AI capability takes 8 to 12 weeks from sign-off to production deployment. That includes discovery, architecture, development, model training, quality assurance, and launch. Sprint 1 delivers a working prototype within 7 days. Larger enterprise platforms with multiple AI features run 16 to 24 weeks. Every project is scoped before work starts so the timeline is agreed, not estimated after the fact.

Having your own labeled dataset speeds up model development, but it is not required to start. Discovery and architecture phases happen regardless. If your data is sparse, we scope a data collection and labeling strategy as part of the engagement. For certain product types, pre-trained foundation models reduce the data requirement significantly. The feasibility report in Phase 1 tells you exactly what data you need and how long it takes to get there.

3 to 4 hours per week from your side. That is one sprint review every two weeks, async feedback on deliverables via Loom or Slack, and a final quality assurance sign-off before launch. We handle architecture decisions, development, model training, testing, and deployment. You do not need to manage daily stand-ups, write technical specifications, or coordinate between sub-contractors. Those tasks belong to us.

You own everything. All source code, trained models, data pipelines, documentation, and intellectual property transfer to you at project completion. This is written into the engagement contract before a single line of code is written. We do not retain licensing rights, usage rights, or any ongoing claim to your product. The handoff includes full code documentation and a technical runbook so your team can operate and extend the product independently.

Scoped before work starts with a line-by-line breakdown by phase. No time-and-materials billing that expands after kick-off. Discovery and architecture are priced as a standalone phase so you receive a full technical plan before committing to the full build. Pricing reflects team composition, sprint count, and model complexity. You receive the full cost before you sign anything.

Yes. Integration with existing enterprise resource planning systems, customer relationship management platforms, data warehouses, and customer-facing applications is a core part of every enterprise AI engagement. We have experience connecting AI products to systems including Dynamics 365, Salesforce, custom databases, and headless frontend architectures. Application programming interface design is handled as part of the architecture phase, and integration testing is included before launch. See our AI integration services for further detail on system connectivity.

Is this engagement right for you

Read this before you submit a brief.

Good fit for Redefine

  • You have a specific AI problem, not a vague "AI strategy" request
  • You want a shipped product, not a research report
  • Revenue, cost reduction, or operational efficiency is the target outcome
  • Your team can commit 3 to 4 hours per week for sprint reviews
  • You are scaling an existing business with AI, not starting from zero revenue
  • You want to own the code, models, and intellectual property outright at the end

Not a fit if...

  • You are a solo operator with no existing product or customer base
  • Your goal is a research report, white paper, or strategy deck rather than working software
  • You have no data, no access to data, and no plan to collect any before starting
  • You need a full AI product live within 30 days with no prior architecture or discovery work done
  • You are pre-revenue and not yet ready to invest in a production-grade build

Not sure? Tell us your situation and we will be straight with you. Submit a brief and we will respond honestly.

Start your engagement

Get Your Scoped Proposal In 3 Days.

Describe your AI workflow or automation problem. We will review it and return a scoped proposal with a line-by-line cost breakdown within 3 business days.

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Response in 48 hours

A real engineer reviews every brief

Proposal in 3 days

Line-by-line cost breakdown, no vague estimates

47+ AI products built

Shipped in production across multiple industries

Full code ownership

All intellectual property transfers to you at handoff

Ready to build

Your AI product. Built to ship. Owned by you.

Partner with an ai product development company that ships. Submit your brief and receive a scoped proposal within 3 business days. Scoped before work starts. Line-by-line pricing. No commitment to receive a proposal.

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