42 AI systems shipped · 30+ enterprise teams served

AI Development Services

The ai development company that builds AI systems that ship to production

Redefine engineers production-ready AI systems for enterprise and growth teams. From model selection through deployment and monitoring, you get working software with measurable outcomes, not a notebook and a handoff slide.

AI developer reviewing model performance metrics on dual monitors, screen light illuminating focused expression

Systems in production

42

across enterprise teams

The engineering challenge

Most AI projects never reach the systems they were built for

CTOs and engineering leads tell us the same three things. Each one has a direct fix.

After working with Redefine

A working system in production, not a notebook

First deployment within 8 weeks of sign-off. Evaluation harness built before training starts.

What we hear from CTOs

Prototype stuck, production nowhere

"We have a working prototype that has been almost ready for eight months. Getting it into production has been the hard part."

After working with Redefine

Real data handling with tested fallback logic

Every model tested on production-representative data. Degradation alerts built before go-live.

What we hear from VP Engineering

Test data passes, production breaks

"The model performs well in test data. It breaks in ways we did not anticipate once real production traffic hits it."

After working with Redefine

A line-by-line scoped proposal in 3 days

No commitment required to receive a proposal. Every deliverable named and priced before Sprint 1 starts.

What we hear from Operations Leads

Vague proposals, unclear deliverables

"Every vendor gave us a three-slide proposal and asked for six months upfront. We still have no idea what we are actually getting."

Enterprise engineering team in a focused problem-solving session around a table, laptops open, morning office light
Built for your role

What you need depends on where you sit

Select your role to see how Redefine solves for your specific challenge.

Your role

Chief Technology Officer

You need AI that runs in production, not in a demo

Your team built a proof of concept. Leadership wants production results. The gap between prototype and a reliable system is where most projects stall.

  • Production deployment with monitoring and alerting from day one
  • Governance dashboard with model registry and full audit logs
  • Compliance review baked into the delivery process, not added at the end

Your role

VP Engineering

You need AI developers who ship machine learning code, not just notebooks

You have engineers who write Python but not machine learning engineers who take models to production. The gap between a trained model and a reliable API is expensive to close alone.

  • Sprint-based delivery with clear model evaluation gates each sprint
  • MLOps pipeline configured before the first model is trained
  • Handoff documentation and internal team training at every milestone

Your role

Operations Lead

You need automation that holds up under real volume

You have a high-volume process running on spreadsheets and manual steps. AI should handle it. Nobody has scoped what that actually looks like yet.

  • Clear process map and automation spec before any code is written
  • Human-in-the-loop checkpoints built into every automated flow
  • Error handling and fallback logic reviewed before go-live

Your role

Head of Product

You need AI features that move your core product metrics

Every competitor is shipping AI features. You need features tied to conversion, retention, or engagement, not AI added for its own sake.

  • Feature design tied to measurable key performance indicators before a single model trains
  • Evaluation framework built and agreed before training starts
  • Staged rollout plan with feature flags and revert controls
AI Model Registry

Deployed Models

3 Active

enterprise-search-v3

847k calls/day · 94.2% accuracy · 23ms p50

Deployed

classification-llm-v2

12k calls/day · 89.1% accuracy · 41ms p50

Staging

document-extract-v1

Evaluation in progress · Sprint 7

Testing
SOC 2GDPRInternal Audit Q1
Sprint Board - AI Recommendations

Sprint 6 of 10

On track · 34 pts/sprint

Backlog

Load testing

5 pts

In Progress

Fine-tune recall

8 pts

Review

API contract

3 pts

Done

Data prep

13 pts

Sprint velocity

29 of 34 points completed

Invoice Processing Pipeline

Before

3 staff · 4 hours/day

12% error rate

After

AI-assisted · 40 min

0.3% error rate

Automated workflow

Ingest

AI

Extract

AI

Validate

Human

Route

AI

Approve

Human

AI Feature Pipeline

Semantic Search

100% rollout

+12% conversion rate

Smart Recommendations

40% rollout

Testing

Auto-categorization

10% rollout

Early data

Predictive Reorder

Development · Q2 target

In dev

What we build

Enterprise AI development services with every capability your production system needs

From the first model experiment to monitored production deployment. Delivered as sprint-scoped work, not open-ended retainers.

Core capability

Model Development and Fine-Tuning

Foundation model integration, domain-specific fine-tuning, retrieval-augmented generation, and custom model training when off-the-shelf models fall short. Every approach evaluated against your business metric before training starts.

Foundation model integration
Domain fine-tuning
Retrieval-augmented generation architecture
Evaluation harness design

MLOps and Production Deployment

Continuous integration and deployment pipelines for machine learning, model monitoring, drift detection, rollback automation, and alerting. Built before the first model goes live, not bolted on after.

AI Application Programming Interface Engineering

REST and GraphQL AI application programming interfaces, streaming inference endpoints, async job queues, and latency optimization. Built to your integration spec, not a default template.

Data Pipeline Engineering

Extract, transform, and load pipelines designed for AI workloads, vector database setup, embedding pipelines, and data quality validation. Your model is only as good as your data infrastructure.

AI Security and Compliance

Data privacy controls, model access management, audit trails, prompt injection defense, and compliance review. Built in, not added as an afterthought.

Proof

Real systems. Real results.

Corporate Gear

B2B Ecommerce / ERP

Corporate Gear serves businesses with branded merchandise, apparel, and promotional products. Their platform handles complex catalog operations, multi-system data, and high-volume order processing.

Revenue outcome

$0M+

annual revenue achieved through data-driven optimization and automation systems

Systems integrated

6+

ERP, customer relationship management, business intelligence, email, analytics, inventory

Optimization cycles

A/B

Ongoing test and learn across all platforms

The challenge

Corporate Gear needed to improve usability, accessibility, and conversion performance while competing in a crowded market. Data was fragmented across ERP, customer relationship management, and marketing tools, creating operational bottlenecks. Testing frameworks were underdeveloped and personalization was not in place.

What we built

A comprehensive data-driven optimization system implemented across the commerce platform. AI-assisted A/B testing identified high-performing layouts and messaging. ERP and analytics integrations unified operational and customer data into a single decision layer. Personalization and segmentation systems were deployed across all key conversion paths. Search engine optimization and performance improvements compounded gains across paid and organic channels.

Two analytics and engineering team members reviewing AI system performance dashboards in natural office light
Delivery methodology

From problem statement to production system

Every engagement follows the same six-phase structure. Each phase has defined deliverables, owner actions, and exit criteria before the next phase starts.

1

Scope

Days 1-2

Problem framing, data audit, feasibility assessment

2

Design

Days 3-5

Stack selection, integration design, security review

3

Build

Weeks 2-6

Model development, API engineering, sprint delivery

4

Integrate

Weeks 7-8

System connection, data pipelines, staging environment

5

Deploy

Days 1-3

Production rollout, monitoring setup, alerting

6

Optimize

Ongoing

Drift detection, performance tuning, iteration

scope.md - Problem Brief

Phase 1 - Scope deliverables

Problem framing documentDelivered
Data availability assessmentDelivered
Feasibility and risk briefDelivered
Go/no-go recommendationDelivered

Your team's time: 2-hour discovery call. We write the brief.

architecture.md - System Design

Phase 2 - Architecture decisions

Model layerGPT-4 fine-tune + retrieval-augmented generation

Selected over custom training based on data volume and latency targets

Vector storePinecone / Weaviate

Evaluated against Qdrant and Chroma for your query patterns

Integration surfaceREST API + webhook

Async job queue for batch operations, sync for real-time queries

build-status - Sprint 4

Phase 3 - Sprint 4 of 8

Build progress62%
Embedding pipelineDone
Retrieval API v1Done
Re-ranking layerIn progress
Eval harnessQueued
integration-tests - Staging

Phase 4 - Integration status

Core platform APIConnected
Vector store syncConnected
Webhook deliveryTesting
Load test (1k requests per second)Queued
deploy.yml - Production

Phase 5 - Production deployment

Blue/green deployment configured
Monitoring dashboards live
Latency alerts active
Model drift detection running
System live - p99 latency 47ms
model-health - Week 8 post-launch

Phase 6 - Optimization signals

Accuracy94.2% up

Up from 91.8% at launch. Drift threshold: 88%

p50 latency23ms down

Down from 41ms. SLO target: 50ms

Next iterationQueued Sprint 12

Re-ranking layer update based on 30-day user feedback

Why Redefine

What separates our AI solutions from broad promises

Most AI vendors can show you a demo. Not all of them can show you a production system running on your data at your scale.

Capability

Redefine

Typical AI vendor

Ideal client qualification before scoping

Proof tied to delivery type, not general case studies

Production-grade MLOps from sprint one

Existing system integration as core scope item

Post-launch drift detection and monitoring

Security and compliance review in the delivery process

Fixed-sprint delivery cadence with exit criteria per phase

You own the intellectual property, code, and models at every stage

Common questions

What most CTOs ask before starting

Search and retrieval systems, document processing pipelines, recommendation engines, classification and routing systems, conversational AI with production retrieval-augmented generation, and custom machine learning models for prediction and forecasting. The scope is defined by your business problem, not a pre-packaged product. We evaluate whether a foundation model, fine-tuned model, or custom-trained model best fits your use case before any code is written.

A first production deployment of a focused AI system takes 8 to 12 weeks from signed scope. A more complex platform with multiple integrated components runs 14 to 20 weeks. The scope document defines the timeline before Sprint 1 starts. Every project uses the same six-phase structure: scope, design, build, integrate, deploy, optimize. You see the timeline before you commit.

Both, based on your use case. The large majority of production enterprise AI systems benefit from using an existing foundation model with domain-specific fine-tuning and retrieval augmentation rather than training from scratch. We run a feasibility assessment during the Scope phase that evaluates your data volume, latency requirements, accuracy targets, and total cost of operation before recommending an approach. If a foundation model is sufficient, we will not recommend custom training.

Two-week sprints with a 45-minute sprint review at the end of each. You give async feedback on deliverables via a shared workspace: no long review meetings or status calls. Your team's involvement is 3 to 4 hours per week. We manage all day-to-day decisions, standups, testing, and documentation. You review outputs, approve direction changes, and sign off on each phase's exit criteria before we move to the next.

A security review is part of the Design phase, not an add-on. We review data handling requirements, personally identifiable information exposure in training data, model access controls, prompt injection attack surfaces, and audit trail requirements before a line of production code is written. If your business requires SOC 2, GDPR, HIPAA, or CCPA alignment, those constraints shape the architecture from day one rather than being retrofitted at the end.

Who we work with

Is this the right fit?

We work well with some teams and not others. Here is an honest read.

Good fit for

  • Enterprise or growth teams with a defined AI use case and real production data
  • Teams that have a working prototype and need it in production, monitored, and integrated
  • Organizations that want to own the code, models, and intellectual property outright
  • Leaders who can give 3 to 4 hours per week and want a sprint-based, scoped engagement

Not a fit if

  • You need a proof of concept or demo built with no intention to take it to production
  • You have no existing data or a use case that is not yet defined enough to scope
  • You need a full system built in under 4 weeks with no review cycles
  • You are a solo operator or pre-revenue startup without an engineering counterpart

Not sure? Tell us your situation and we will be straight with you.

Start here

Tell us what you are building

Scoped before work starts · line-by-line pricing · no commitment to receive a proposal.

Response within 48 hours

A senior engineer reviews your brief and follows up directly

Scoped proposal in 3 days

Line-by-line deliverables, timeline, and pricing before Sprint 1

You own the intellectual property from day one

Code, models, and data stay yours: no licensing lock-in

42 AI systems shipped

Across 30+ enterprise teams, from first deployment to ongoing optimization

Form
Ready to ship

AI development with no ambiguity about what ships

Work with an ai development company that scopes every deliverable up front. No commitment. No pitch. A scoped proposal in 3 days.

0

AI systems shipped to production

0+

enterprise teams served

3 days

to a scoped proposal

8 weeks

first production deployment

Engineer calmly watching a successful AI system deployment on a terminal screen, warm focused lamp light

Get on a call with us to see how we can help you

Get a Quote