Marketplace
cost-estimator
Infrastructure and development cost estimation for technical projects. Use when planning budgets, evaluating build vs buy decisions, or projecting TCO for architecture choices.
$ 安裝
git clone https://github.com/alirezarezvani/claude-cto-team /tmp/claude-cto-team && cp -r /tmp/claude-cto-team/skills/cost-estimator ~/.claude/skills/claude-cto-team// tip: Run this command in your terminal to install the skill
SKILL.md
name: cost-estimator description: Infrastructure and development cost estimation for technical projects. Use when planning budgets, evaluating build vs buy decisions, or projecting TCO for architecture choices.
Cost Estimator
Provides frameworks for estimating infrastructure costs, development effort, and total cost of ownership (TCO) for technical projects.
When to Use
- Planning infrastructure budgets
- Evaluating build vs. buy decisions
- Projecting costs at different scale points
- Comparing technology options by cost
- Creating business cases for technical investments
Cost Categories
Total Cost of Ownership (TCO)
TCO = Infrastructure + Development + Operations + Opportunity Cost
┌─────────────────────────────────────────────────────────────────┐
│ TOTAL COST OF OWNERSHIP │
├─────────────────────────────────────────────────────────────────┤
│ │
│ Infrastructure Development Operations Opportunity │
│ ──────────────── ──────────── ────────── ──────────── │
│ • Compute • Engineering • Support • What else │
│ • Storage • QA • Monitoring • could team │
│ • Network • DevOps • On-call • be building? │
│ • Third-party • Management • Training │
│ APIs/SaaS • Contractors • Incidents │
│ │
└─────────────────────────────────────────────────────────────────┘
Infrastructure Cost Reference
Cloud Compute Pricing (2024-2025)
AWS EC2 On-Demand (US regions)
| Instance | vCPU | RAM | Monthly Cost | Best For |
|---|---|---|---|---|
| t3.micro | 2 | 1GB | $8 | Dev/test |
| t3.medium | 2 | 4GB | $30 | Small apps |
| t3.large | 2 | 8GB | $60 | Light production |
| m6i.large | 2 | 8GB | $70 | General production |
| m6i.xlarge | 4 | 16GB | $140 | Medium workloads |
| m6i.2xlarge | 8 | 32GB | $280 | Heavy workloads |
| c6i.2xlarge | 8 | 16GB | $250 | CPU-intensive |
| r6i.2xlarge | 8 | 64GB | $370 | Memory-intensive |
GPU Instances
| Instance | GPU | VRAM | Monthly Cost | Best For |
|---|---|---|---|---|
| g4dn.xlarge | T4 | 16GB | $380 | Inference |
| g5.xlarge | A10G | 24GB | $730 | ML training/inference |
| p4d.24xlarge | 8x A100 | 320GB | $23,000 | Large model training |
Savings Options
| Plan | Savings | Commitment |
|---|---|---|
| On-Demand | 0% | None |
| Reserved (1yr) | 30-40% | 1 year |
| Reserved (3yr) | 50-60% | 3 years |
| Spot Instances | 60-90% | Can be interrupted |
Database Pricing
Managed Database (AWS RDS PostgreSQL)
| Instance | vCPU | RAM | Monthly Cost | Connections |
|---|---|---|---|---|
| db.t3.micro | 2 | 1GB | $15 | 50 |
| db.t3.medium | 2 | 4GB | $50 | 100 |
| db.m6g.large | 2 | 8GB | $120 | 200 |
| db.m6g.xlarge | 4 | 16GB | $240 | 400 |
| db.r6g.xlarge | 4 | 32GB | $350 | 500 |
| db.r6g.2xlarge | 8 | 64GB | $700 | 1000 |
Add for storage: $0.115/GB/month (gp3) Add for IOPS: $0.02/IOPS/month (over 3000 baseline)
Redis/ElastiCache
| Node Type | RAM | Monthly Cost |
|---|---|---|
| cache.t3.micro | 0.5GB | $12 |
| cache.t3.medium | 3GB | $50 |
| cache.m6g.large | 6.4GB | $100 |
| cache.r6g.large | 13GB | $175 |
Storage Pricing
| Service | Cost | Use Case |
|---|---|---|
| S3 Standard | $0.023/GB | Frequently accessed |
| S3 Infrequent | $0.0125/GB | Backups, archives |
| S3 Glacier | $0.004/GB | Long-term archive |
| EBS gp3 | $0.08/GB | Block storage |
| EBS io2 | $0.125/GB + IOPS | High performance |
Network Costs (Often Overlooked!)
| Traffic Type | Cost |
|---|---|
| Data IN | Free |
| Data OUT (first 10TB) | $0.09/GB |
| Data OUT (next 40TB) | $0.085/GB |
| Inter-AZ transfer | $0.01/GB each way |
| Inter-region transfer | $0.02/GB |
| CloudFront to internet | $0.085/GB |
Development Cost Estimation
Engineering Cost Framework
Development Cost = (Hours × Hourly Rate) × Complexity Factor × Risk Buffer
Hourly Rate (Fully Loaded):
- Junior Engineer: $75-100/hr
- Mid-level Engineer: $100-150/hr
- Senior Engineer: $150-200/hr
- Staff/Principal: $200-300/hr
Complexity Factors:
- Greenfield, known tech: 1.0x
- Existing codebase, known tech: 1.2x
- New technology for team: 1.5x
- Complex integrations: 1.3x
- Regulatory/compliance: 1.4x
Risk Buffer:
- Well-defined requirements: 1.2x
- Ambiguous requirements: 1.5x
- Experimental/R&D: 2.0x
Story Point to Cost Mapping
| Size | Story Points | Hours | Cost (Mid-level) |
|---|---|---|---|
| XS | 1 | 2-4 | $200-400 |
| S | 2 | 4-8 | $400-800 |
| M | 3 | 8-16 | $800-1,600 |
| L | 5 | 16-32 | $1,600-3,200 |
| XL | 8 | 32-64 | $3,200-6,400 |
| XXL | 13+ | 64+ | $6,400+ |
Team Cost Calculator
## Monthly Team Cost
Engineering Team:
- 2 Senior Engineers × $15,000 = $30,000
- 3 Mid-level Engineers × $10,000 = $30,000
- 1 Engineering Manager × $18,000 = $18,000
Overhead (benefits, tools, etc.): 30%
Monthly Burn: ($78,000) × 1.3 = $101,400
Annual Team Cost: ~$1.2M
Build vs. Buy Analysis
Decision Framework
Build vs Buy Decision Matrix:
LOW Differentiation HIGH Differentiation
┌────────────────────┬────────────────────┐
HIGH Volume/ │ │ │
Usage │ Consider │ BUILD │
│ Build │ (competitive │
│ (cost savings) │ advantage) │
├────────────────────┼────────────────────┤
LOW Volume/ │ │ │
Usage │ BUY │ BUY │
│ (no question) │ (then consider │
│ │ build if scales) │
└────────────────────┴────────────────────┘
TCO Comparison Template
## Option A: Build Custom Solution
### Initial Development
- Engineering time: X months × $Y/month = $Z
- Infrastructure setup: $A
### Ongoing Costs (Annual)
- Infrastructure: $B
- Maintenance (20% of dev time): $C
- On-call/support: $D
### 3-Year TCO
Year 1: $Z + $A + $B + $C + $D
Year 2: $B + $C + $D
Year 3: $B + $C + $D
Total: $XXX
---
## Option B: Buy SaaS Solution
### Initial Costs
- Implementation/integration: $X
- Training: $Y
### Ongoing Costs (Annual)
- License fees: $Z/year
- Per-user costs: $A × users
- API costs: $B
### 3-Year TCO
Year 1: $X + $Y + $Z + $A + $B
Year 2: $Z + $A + $B
Year 3: $Z + $A + $B
Total: $XXX
Common Build vs Buy Scenarios
| Capability | Build When | Buy When |
|---|---|---|
| Authentication | Unique security requirements | Standard OAuth/OIDC works |
| Payments | Core business differentiator | Standard e-commerce |
| Search | Domain-specific relevance | Generic search needs |
| Analytics | Proprietary insights needed | Standard dashboards work |
| High volume, custom delivery | Standard transactional | |
| ML/AI | Proprietary models needed | Pre-trained models work |
Cost Projection by Scale
SaaS Application Cost Model
| Scale | Users | Monthly Infra | Notes |
|---|---|---|---|
| Startup | 0-1K | $200-500 | Single server, managed DB |
| Growth | 1K-10K | $500-2,000 | Load balancer, caching |
| Scale | 10K-100K | $2,000-10,000 | Horizontal scaling |
| Enterprise | 100K-1M | $10,000-50,000 | Multi-region, HA |
| Large | 1M+ | $50,000+ | Global, custom CDN |
Cost Per User Benchmarks
| Application Type | Cost/User/Month | Notes |
|---|---|---|
| Simple web app | $0.05-0.20 | Static + API |
| Data-intensive | $0.20-0.50 | Analytics, storage |
| Real-time | $0.50-2.00 | WebSockets, streaming |
| ML-powered | $1.00-5.00 | Inference costs |
| Video/media | $2.00-10.00 | Transcoding, CDN |
E-commerce Cost Model
## Monthly Infrastructure Cost by GMV
$0-100K GMV/month:
- Basic infrastructure: $500
- Payment processing (2.9%): ~$2,000
- Total: ~$2,500
$100K-1M GMV/month:
- Scaled infrastructure: $2,000
- Payment processing: ~$20,000
- Fraud protection: $500
- Total: ~$22,500
$1M-10M GMV/month:
- HA infrastructure: $10,000
- Payment processing: ~$200,000
- Fraud/security: $5,000
- CDN/performance: $3,000
- Total: ~$218,000
Hidden Cost Checklist
Often Missed in Estimates
Infrastructure:
- Data transfer costs (egress)
- Backup storage
- Log storage (CloudWatch: $0.50/GB)
- SSL certificates
- DNS queries
- Load balancer hours
Development:
- Code reviews (add 20-30% to dev time)
- Documentation
- Testing infrastructure
- CI/CD pipeline (GitHub Actions: $0.008/min)
- Staging environments
Operations:
- Monitoring tools (Datadog: ~$15/host/month)
- Error tracking (Sentry: $26+/month)
- Log management
- On-call compensation
- Incident response time
Third-Party Services:
- Email (SendGrid: $0.00025-0.001/email)
- SMS (Twilio: $0.0075/message)
- Video (encoding, streaming)
- Maps/geocoding (Google: $7/1K requests)
Cost Optimization Strategies
Quick Wins
| Strategy | Savings | Effort |
|---|---|---|
| Reserved instances | 30-60% | Low |
| Right-sizing instances | 20-40% | Medium |
| Spot instances (non-critical) | 60-90% | Medium |
| Storage tiering | 50-80% | Low |
| CDN caching | 30-50% bandwidth | Low |
Architecture Optimizations
| Optimization | Impact | Complexity |
|---|---|---|
| Caching (Redis) | 50-80% DB load reduction | Medium |
| Queue-based processing | Smooth traffic spikes | Medium |
| Auto-scaling | Pay for what you use | Medium |
| Serverless (appropriate use) | Variable → zero when idle | High |
| Multi-region read replicas | Reduce cross-region costs | High |
Cost Estimation Templates
Project Budget Template
# Project: [Name]
# Duration: [X months]
## Development Costs
| Phase | Duration | Team Size | Cost |
|-------|----------|-----------|------|
| Discovery/Design | 2 weeks | 2 | $X |
| MVP Development | 8 weeks | 4 | $X |
| Testing/QA | 2 weeks | 3 | $X |
| Deployment | 1 week | 2 | $X |
| **Total Development** | | | **$X** |
## Infrastructure Costs (First Year)
| Component | Monthly | Annual |
|-----------|---------|--------|
| Compute | $X | $X |
| Database | $X | $X |
| Storage | $X | $X |
| Network | $X | $X |
| Third-party APIs | $X | $X |
| Monitoring/Tools | $X | $X |
| **Total Infrastructure** | **$X** | **$X** |
## Ongoing Costs (Annual)
| Category | Cost |
|----------|------|
| Infrastructure | $X |
| Maintenance (20% of dev) | $X |
| Support/On-call | $X |
| Tool licenses | $X |
| **Total Annual** | **$X** |
## Summary
| Metric | Value |
|--------|-------|
| Total First Year | $X |
| Annual Run Rate | $X |
| 3-Year TCO | $X |
| Cost per User (at scale) | $X |
Quick Estimate Calculator
## Quick Infrastructure Estimate
Inputs:
- Expected users: [X]
- Requests per user/day: [Y]
- Data storage per user: [Z GB]
- Growth rate: [W%/month]
Calculations:
- Daily requests: X × Y
- Monthly requests: Daily × 30
- Required compute: (Monthly requests / 100K) × $50
- Storage: X × Z × $0.10
- Database: (X / 10K) × $200
- Estimated monthly: Compute + Storage + Database × 1.3
12-month projection with growth:
Sum of (Monthly × (1 + W%)^month) for months 1-12
References
- Cloud Pricing Calculator - Detailed cloud provider comparison
- Build vs Buy Framework - Extended decision framework
Repository

alirezarezvani
Author
alirezarezvani/claude-cto-team/skills/cost-estimator
32
Stars
7
Forks
Updated3d ago
Added5d ago