8-WEEK PRODUCTION TRANSITION
We Bridge the Gap Between Prototype and Production
Your Replit app got 500 upvotes. Your Loveable prototype wowed the investors. Your Cursor-built MVP landed the first 50 users. Now what? We take what you've built and make it production-ready — infrastructure, security, testing, monitoring, and all.4.9/5 ★ on Clutch based on 111+ Enterprise Reviews
550+ Engagements Since 2006 — Trusted By
THE PRODUCTION GAP
The Distance Between It Works and It Ships
Your Prototype
Production-Ready
Works on localhost
Works on AWS/GCP with auto-scaling, CDN, and failover
No authentication or basic auth
OAuth 2.0, JWT, RBAC, session management, MFA
console.log debugging
Structured logging, APM, error tracking, alerting
No tests
Unit, integration, E2E, load testing, security scanning
Manual deployment via CLI
CI/CD pipelines, blue-green deploys, and rollback capability
SQLite or in-memory data
Managed databases, migrations, backups, and replication
No rate limiting
Rate limiting, DDoS protection, WAF, CSP headers
Single environment
Dev, staging, production environments with parity
WHERE PROTOTYPES FAIL
Where Prototypes Typically Break
Traffic Growth
Security and Compliance
Operational Blindness
Without a centralized logging stack, production bugs remain invisible. We deploy monitoring systems to catch errors before customer reports arrive.
Data Rigidity
Flat schemas fail at 100,000 records. We execute data normalization and migration scripts to ensure query performance remains under 30 secs.
Cost Inefficiency
Unoptimized AI agents generate redundant API calls. We audit token usage and memory management to reduce cloud overhead by up to 60%.
Technical Onboarding
Undocumented code halts team growth. We refactor for strict typing (TypeScript) and modular architecture to reduce new-hire ramp time.
Seen any of these before? Let’s fix them before they cost you.
OUR PROCESS
From Prototype to Production in 6 to 8 Weeks
Production-Readiness Assessment
- Codebase quality report with severity ratings
- Architecture risk assessment
- Infrastructure gap analysis
- Prioritized remediation roadmap
Architecture & Re-engineering
- Production-grade architecture design
- Database schema optimization & migrations
- API standardization (REST or GraphQL)
- Authentication & authorization layer
Infrastructure & DevOps
- Infrastructure as Code (Terraform/Pulumi)
- CI/CD pipeline (GitHub Actions / GitLab CI)
- Staging & production environments
- Monitoring, logging, and alerting stack
Testing & Quality Gates
- Test suite (unit, integration, E2E)
- Automated security scanning (SAST/DAST)
- Performance benchmarks & load testing
- Quality gates in the CI/CD pipeline
Launch & Stabilization
- Production deployment with rollback capability
- Load testing against projected traffic
- Launch monitoring & incident response
THE 50 POINT STANDARD
Production Checklist We Use on Every Project
Infrastructure
- Cloud-hosted with managed services
- Auto-scaling configured and tested
- CDN for static assets
- Environment parity (dev/staging/prod)
- Infrastructure defined as code
Security
- HTTPS everywhere with HSTS
- Authentication (OAuth 2.0 / JWT)
- Role-based access control
- Input validation & sanitization
- Dependency vulnerability scanning
Testing
- Unit test coverage > 80%
- Integration tests for all API endpoints
- E2E tests for critical user flows
- Load testing against projected traffic
- Automated security scanning (SAST)
DevOps
- CI/CD pipeline with automated tests
- Blue-green or rolling deployments
- Rollback capability < 5 minutes
- Branch protection & code review gates
- Secrets management (no hardcoded keys)
Observability
- Structured logging with correlation IDs
- APM with response time tracking
- Error tracking with alerting
- Uptime monitoring & SLA dashboards
- Cost monitoring & anomaly detection
Code Quality
- TypeScript strict mode enabled
- Consistent code style (ESLint/Prettier)
- API documentation (OpenAPI/Swagger)
- README with setup & architecture docs
- Database migration scripts versioned
PROVEN RESULTS
Real Products. Real Impact.
Bridge the Gap, Stop Being Stuck in Production.
Schedule a brief consulting session to stop infrastructure bleed and start scaling your AI product today.
TRUSTED BY
EXPLORE OUR CAPABILITIES
More Ways We Can Help You with AI-Powered Product Engineering
AI-Native Engineering
We integrate AI into your core architecture using RAG pipelines, LLM orchestration, and agent frameworks, ensuring AI is a functional engine, not an afterthought.
Prototype to Production
We transition your MVP into a professional-grade system by implementing the infrastructure, security, and monitoring required for market deployment.
Code Quality and Engineering Excellence
We conduct deep-tier audits, architecture reviews, and security assessments to ensure your build is right the first time.Code Audit in 2 Weeks
Scaling MVP to Market Leader
We manage the complex transition to microservices, database optimization, and infrastructure scaling as you achieve product-market fit.Market-ready App in 3-4 Months
Product Studio for the AI Era
We provide the strategic leadership necessary to navigate the "hard middle" between a prototype and a global scale-up.Custom Sprint
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