12 KiB
Recommended Approach: 3-Phase Bootstrap Plan
Overview
Motto: "Slow is smooth, smooth is fast"
Philosophy: Bootstrap with minimal capital, use customer revenue to fund platform development, transition to recurring revenue model.
Phase 1: Integration Consulting (Months 1-3)
Objective
Generate cash flow, validate market demand, build network of relationships.
Timeline
Week 1-2: Setup
Week 3-4: Outreach
Week 5-8: First pilot project
Week 9-12: Complete pilot, land second project
Services Offered
- OT/IT integration consulting
- PLC programming for data export
- Edge gateway setup (on customer hardware)
- MQTT/OPC UA configuration
- Grafana dashboard deployment
- Training and documentation
Revenue Model
- Hourly: $150-200/hour
- Project: $15k-40k (100-200 hours)
- Retainer: $2k-5k/month (optional support)
Infrastructure
NONE - Deploy on customer hardware:
- Raspberry Pi 4 or old industrial PC (customer buys)
- Ubuntu Server + Docker/LXC (free)
- Mosquitto MQTT + InfluxDB + Grafana (free, open source)
- Node-RED for PLC integration (free)
Capital Requirements
Total: $500
- LLC filing: $100-300
- Basic website (Carrd/WordPress): $0-200
- Business cards: $50
- LinkedIn Premium: $0 (optional)
Activities
Week 1-2: Foundation
- Register LLC (1-2 hours, $100-300)
- Set up website (4-6 hours, $0-200)
- Service description
- Case study section (empty initially)
- Contact form
- Bio highlighting OT + cloud expertise
- Update LinkedIn profile (1 hour)
- "OT/IT Integration Consultant"
- Headline: "I help manufacturers bridge PLC data to dashboards"
- Create contact list (20+ from controls engineering days)
Week 3-4: Outreach
- Email/call 20 contacts (5 per week)
- Message template:
"Hey [Name], after 13 years programming PLCs, I spent the last 4 years learning cloud engineering. Now I'm helping manufacturers get visibility into production data without expensive cloud platforms. Know anyone struggling with this?"
- Target: 3-5 discovery calls
- Join local ISA chapter (optional)
Week 5-8: First Pilot
- Land pilot project: $5k-10k (discounted)
- Scope: Single production line, basic monitoring
- PLC data collection (Modbus/OPC UA)
- MQTT broker on Raspberry Pi
- Grafana dashboards (3-5 views)
- Alert configuration
- Document EVERYTHING
- Before/after metrics
- Technical architecture
- Customer testimonial
- Deliverables:
- Working edge gateway
- 3-5 Grafana dashboards
- Alert rules configured
- 2-4 hours of training
- Documentation for maintenance
Week 9-12: Validate & Scale
- Complete pilot project
- Get written testimonial
- Take photos/screenshots
- Write case study
- Publish to LinkedIn + website
- Ask pilot customer for 2-3 referrals
- Land second project at full price ($20k-40k)
- Begin prospecting for Phase 2 recurring customers
Success Metrics (Phase 1)
- 2-3 completed consulting projects
- $20k-45k revenue generated
- 5+ discovery calls completed
- 1-2 case studies published
- 10+ new LinkedIn connections
- 3-5 warm prospects for Phase 2
Expected Outcomes
- Revenue: $20k-45k in 90 days
- Profit: ~$19k-43k (95% margin)
- Network: 20+ new manufacturing contacts
- Validation: Proven demand for services
- Foundation: Customer base for Phase 2 transition
Phase 2: Edge Monitoring Platform (Months 4-9)
Objective
Transition from project-based to recurring revenue, deploy multi-tenant infrastructure.
Timeline
Month 4-6: Build platform, convert 2-3 consulting clients
Month 7-9: Add 3-5 new monitoring customers, refine product
Services Offered
Consulting (continued, reduced):
- 1-2 projects/month for cash flow
- Integration work for monitoring customers
New - Monitoring Platform:
- Edge monitoring as a service
- Setup + monthly subscription
- Remote management
- Alert management
- Data backup and retention
Revenue Model
Hybrid:
- Consulting: $10k-20k/month (declining)
- Monitoring setup fees: $5k-10k per customer
- Monitoring recurring: $0 → $10k/month (growing)
Infrastructure
GTHost Dedicated Server #1:
Configuration:
├── 8 cores, 32GB RAM, 1TB SSD
├── Estimated cost: $100-150/month
├── Capacity: 8-10 customers
└── Revenue potential: $12k-30k/month
Tech Stack:
- Ubuntu Server 24 LTS
- LXC for container isolation (per customer)
- MQTT broker per container
- InfluxDB per container (or shared with DB per customer)
- Grafana (shared with customer-specific dashboards)
- Automated backup system
- Monitoring and alerting (UptimeRobot, Prometheus)
Capital Requirements
Total: ~$1,000
- GTHost server: $100-150/month × 2 months
- Development time: Nights/weekends (sweat equity)
- Funded from Phase 1 consulting revenue
Activities
Month 4-5: Platform Development
- Provision GTHost server ($5/day trial first)
- Build LXC container template
- MQTT broker (Mosquitto)
- InfluxDB instance
- Grafana user + dashboards
- Backup scripts
- Create provisioning automation
- New customer onboarding script
- Container creation
- Credential generation
- DNS/subdomain setup
- Build simple web portal
- Customer login
- Dashboard links
- Support ticket system
- Billing integration (Stripe)
- Set up monitoring
- Server health monitoring
- Customer container monitoring
- Alert system for failures
- Documentation
- Customer onboarding guide
- Internal runbook
- Support procedures
Month 5-6: First Customers
- Approach 2-3 existing consulting clients
- Pitch: "I've built a monitoring platform. Want to be a pilot customer for $1k/month?"
- Deploy for first 2 customers
- Gather feedback, iterate
- Test backup/restore procedures
- Validate multi-tenant isolation
- Begin marketing monitoring service
Month 7-9: Growth & Refinement
- Add 3-5 new monitoring customers
- Continue 1-2 consulting projects/month (cash flow)
- Refine platform based on feedback
- Build case studies (monitoring-specific)
- Automate more operations
- Document standard procedures
- Plan for second server (if needed)
Success Metrics (Phase 2)
- GTHost server deployed and stable
- 5-8 monitoring customers live
- $10k-15k MRR achieved
- Multi-tenant architecture proven
- 99.5%+ uptime maintained
- Customer churn <10%
- 3+ new case studies published
Expected Outcomes
- Month 6 Revenue: $17k ($15k consulting + $2k MRR)
- Month 9 Revenue: $20k ($10k consulting + $10k MRR)
- Infrastructure Cost: $150/month
- Profit Margin: 85-90%
- Platform: Production-ready, scalable
- Foundation: Ready for Phase 3 premium features
Phase 3: GPU-Powered AI Features (Months 10-18)
Objective
Add premium AI-powered features for differentiation and margin expansion.
Timeline
Month 10-12: Build AI infrastructure, launch premium tier
Month 13-18: Convert customers, add new premium customers
Services Offered
Basic Tier (existing):
- Edge monitoring
- Dashboards and alerts
- $1.5k-2k/month
Premium AI Tier (new):
- Predictive maintenance
- Anomaly detection
- Computer vision quality inspection
- Advanced analytics
- $4k-8k/month
Revenue Model
Fully Recurring:
- Basic customers: $1.5k × 8-10 = $12k-15k/month
- Premium customers: $5k × 4-5 = $20k-25k/month
- Consulting (occasional): $5k/month
- Total: $37k-45k/month
Infrastructure
Server #1 (Basic tier):
- 8 cores, 32GB, 1TB
- 8-10 customers
- $100-150/month
Server #2 (Premium AI tier):
Configuration:
├── 16 cores, 64GB RAM
├── NVIDIA Tesla P4 8GB GPU
├── 2TB NVMe SSD
├── Estimated cost: $350-450/month
├── Capacity: 3-5 premium customers
└── Revenue potential: $15k-40k/month
Capital Requirements
Total: ~$3,000
- GPU server: $400/month × 3 months
- ML model development time
- Funded from Phase 2 profits
Activities
Month 10-11: AI Infrastructure
- Provision GTHost server with Tesla P4 GPU
- Install ML frameworks
- TensorFlow or PyTorch
- Scikit-learn
- ONNX Runtime (optimized inference)
- Build predictive maintenance models
- Anomaly detection (vibration, temperature)
- Failure prediction
- Remaining useful life (RUL)
- Computer vision setup (if pursued)
- Object detection
- Quality inspection
- Defect classification
- Test GPU inference performance
- Create premium tier documentation
Month 12: Premium Launch
- Select 2 customers to upgrade (beta pricing)
- Deploy AI features
- Gather data for model training
- Refine models based on customer data
- Measure ROI for customers
- Create case studies showing value
Month 13-18: Scale Premium
- Convert 2-3 more customers to premium
- Market premium tier to prospects
- Hire first contractor ($3k-5k/month)
- Customer support
- Deployment assistance
- Basic troubleshooting
- Formalize processes
- Build sales pipeline
- Plan for additional servers if needed
Success Metrics (Phase 3)
- GPU server operational
- 4-6 premium tier customers
- $35k+ MRR total
- First employee/contractor hired
- 95%+ customer satisfaction
- 3+ AI-specific case studies
- ROI demonstrated for customers
Expected Outcomes
- Month 18 Revenue: $40k-50k/month
- Infrastructure Cost: $500-600/month (2 servers)
- Contractor Cost: $5k/month
- Net Profit: $34k-44k/month
- Annual Run Rate: $480k-600k
- Positioning: Premium AI-powered industrial IoT platform
Transition Strategy Between Phases
Phase 1 → Phase 2
Trigger: When you have:
- 2-3 completed consulting projects
- $20k+ in the bank
- 2-3 customers willing to pilot monitoring
Transition:
- Reduce consulting to 50% time
- Invest 50% time in platform development
- Use consulting cash to fund infrastructure
- Convert consulting customers to monitoring
Phase 2 → Phase 3
Trigger: When you have:
- 5+ monitoring customers ($10k+ MRR)
- Consistent $20k+/month total revenue
- Stable platform with <5% churn
- Cash reserves to fund GPU server for 3 months
Transition:
- Add GPU server (funded from Phase 2 profits)
- Build AI features
- Beta test with 2 willing customers
- Launch premium tier
- Hire first contractor to handle growth
Risk Mitigation
Phase 1 Risks
Risk: Can't find customers
Mitigation: 13 years of network, LinkedIn outreach, local ISA chapter
Risk: Projects take too long
Mitigation: Scope small (40-80 hours max), resist feature creep
Risk: Customers don't pay
Mitigation: 50% deposit upfront, milestone payments
Phase 2 Risks
Risk: Platform technical failures
Mitigation: Start with 2-3 customers, test thoroughly, backup systems
Risk: Can't transition consulting customers
Mitigation: Offer discounted pilot pricing, add value not available before
Risk: Infrastructure costs escalate
Mitigation: Multi-tenant architecture, start with basic GTHost config
Phase 3 Risks
Risk: AI features don't deliver value
Mitigation: Beta test with willing customers, measure ROI, iterate
Risk: GPU costs too high
Mitigation: Start with 2-3 premium customers to fund server
Risk: Can't hire good contractor
Mitigation: Use Upwork/Fiverr first, hire part-time before full-time
Key Success Factors
- Start Small: $500 capital, basic consulting
- Customer-Funded: Use their money to build platform
- Validate First: Consulting proves demand before platform build
- Recurring Focus: Always transition to subscriptions when possible
- Edge-First: Maintains AWS non-compete compliance
- Iterative: Build → Test → Refine, don't try to be perfect
- Network Effects: Each customer = 2-3 referrals
- Documentation: Case studies critical for next phase
Timeline Summary
| Month | Phase | Focus | Revenue | Profit |
|---|---|---|---|---|
| 1-2 | 1 | Setup, first project | $5k | $4.5k |
| 3 | 1 | Second project | $20k | $19k |
| 4-5 | 2 | Platform dev | $17k | $16k |
| 6 | 2 | First monitoring customers | $20k | $19k |
| 9 | 2 | Growing MRR | $20k | $19k |
| 12 | 3 | Premium launch | $25k | $23k |
| 18 | 3 | Full premium | $40k | $34k |
Cumulative 18 months: ~$350k revenue, ~$300k profit
Next Steps
See go-to-market.md for detailed 90-day action plan.
Last Updated: December 2025