The $100K Offshore Development Nightmare
A healthcare technology client came to us with a familiar story: they'd spent $100,000 and 6 months with an offshore development consultancy trying to build a medical documentation platform. An onshore Australian consultancy had quoted them $200,000.
The result? An incomplete, buggy application that didn't meet requirements. Frustrated developers. Missed deadlines. And a healthcare solution that doctors couldn't actually use.
The Challenge: Medical AI That Works
The client needed a sophisticated medical transcription platform - HealthScriber - that could:
🎙️ Real-Time Transcription
- - Medical speech-to-text with Australian accents
- - Doctor-patient conversation capture
- - HIPAA/APP compliance requirements
- - Integration with AWS Transcribe Medical
🤖 AI Document Generation
- - Multiple LLM support (Claude, GPT, Mistral)
- - Clinical note generation
- - Referral letter automation
- - Doctor's writing style mimicry
🏥 Healthcare Integration
- - HL7 v2.3.1 and v2.4 message parsing
- - FHIR R4 API endpoints
- - Healthlink API integration
- - Practice management system sync
🔒 Enterprise Security
- - Australian data residency (ap-southeast-2)
- - Multi-tenant schema isolation
- - AWS Cognito authentication
- - Full audit logging (7-year retention)
This wasn't a simple CRUD app. This was a production medical platform that doctors would use daily to document patient consultations. Lives could depend on accuracy.
Enter: The AI-Powered Development Approach
When the client came to us, they had only a 5-page requirements document and a lot of frustration. Here's what happened next.
The Agentive Approach
Agent Hours
Not 6 months
AI Token Cost
Not $100K+
Human Code Lines
100% AI-generated
End-to-End
Including client reviews
The AI Development Journey
Phase 1: Deep Requirements Discovery
Unlike traditional development where misunderstandings surface months later, our AI agents asked 60+ clarifying questions upfront. Every architectural decision, every edge case, every compliance requirement - addressed before a single line of code.
Sample Questions Our AI Asked:
- - "Which LLM models should users be able to select from the admin panel?"
- - "What HL7 version for diagnostic messaging vs pathology partners?"
- - "Schema-per-tenant or row-level security for multi-tenancy?"
- - "Audio recording retention period for compliance?"
- - "Rolling deployment or blue/green for zero downtime?"
The client confirmed requirements 10 times throughout the process. No assumptions. No surprises.
Phase 2: AI-Powered Development
Our multi-agent AI system went to work. Frontend, backend, database, infrastructure - all developed in parallel by specialized AI agents.
Frontend
Next.js 14, React, TypeScript, Tailwind CSS, Progressive Web App
Backend
NestJS, PostgreSQL, AWS Bedrock, EventBridge, SQS
Infrastructure
AWS CloudFormation, ECS Fargate, RDS, S3, CloudFront
Security
AWS Cognito, Schema isolation, Audit logging, Encryption
Phase 3: AI-Powered Testing
Here's where it gets interesting. Our AI didn't just write code - it tested it. Using Computer Use AI agents, we automatically:
- + Tested every click, every page, every feature
- + Captured screenshots of every UI state
- + Recorded video walkthroughs
- + Generated comprehensive unit tests
Result: 229 test files with comprehensive coverage - all auto-generated by AI
Phase 4: Production Deployment
Our AI set up the complete CI/CD pipeline. The only human tasks?
- 1. Register domain healthscriber.com.au (AI suggested HealthScriber.com for $5K - we passed)
- 2. Point nameservers to what the AI specified
That's it. The AI handled AWS CloudFormation, GitHub Actions CI/CD, SSL certificates, environment configuration - everything.
The Numbers Don't Lie
| Metric | Offshore Team | Agentive AI |
|---|---|---|
| Time to Delivery | 6 months (incomplete) | 2 weeks (production-ready) |
| Cost | $100,000+ | ~$10K AI tokens |
| Active Development Time | Months of back-and-forth | 42 agent hours |
| Source Files | Unknown | 224 files |
| Lines of Code | Unknown | 34,000+ |
| Test Files | Minimal | 229 test files |
| Documentation Files | Sparse | 18 comprehensive docs |
| Human Coding Required | 100% | 0% |
| Client Satisfaction | Unhappy | Live & Working |
What the AI Actually Built
This wasn't a demo or prototype. HealthScriber is a production medical platform:
📱 Full-Stack Application
- - Next.js 14 frontend with TypeScript
- - NestJS backend with modular architecture
- - PostgreSQL with schema-per-tenant
- - PWA for mobile access
🤖 AI Integration
- - AWS Bedrock (Claude, GPT, Mistral)
- - AWS Transcribe Medical
- - Configurable model selection
- - Template-based generation
🏗️ Infrastructure
- - AWS CloudFormation IaC
- - ECS Fargate containers
- - CloudFront CDN (AU-only)
- - S3 Intelligent-Tiering storage
🔄 DevOps
- - GitHub Actions CI/CD
- - Automated testing pipeline
- - Rolling deployments
- - CloudWatch monitoring
Why AI Succeeded Where Humans Failed
1. No Communication Gaps
60+ questions asked upfront. 10 confirmations. The AI didn't assume - it clarified. Offshore teams often build the wrong thing due to miscommunication.
2. 24/7 Development
42 hours of continuous agent work. No meetings, no standups, no context-switching. Just focused development around the clock.
3. Parallel Processing
Frontend, backend, infrastructure, testing - all developed simultaneously by specialized AI agents. Traditional teams work sequentially.
4. Built-In Quality
229 test files. 18 documentation files. Computer-vision testing of every UI element. Quality wasn't an afterthought - it was automatic.
HealthScriber is Live Now
Today, HealthScriber is helping Australian doctors save hours daily. Real consultations. Real patients. Real impact.
Ready to Stop Wasting Money on Traditional Development?
Whether you've been burned by offshore teams, shocked by agency quotes, or just want to move faster - there's a better way.
Start with our $1K Demo App to validate your idea in 7 days, or discuss a full AI-powered build like HealthScriber.