Jesús Pérez 1b2a1e9c49
Some checks failed
Rust CI / Security Audit (push) Has been cancelled
Rust CI / Check + Test + Lint (nightly) (push) Has been cancelled
Rust CI / Check + Test + Lint (stable) (push) Has been cancelled
chore: add examples coverage
2026-01-12 03:34:01 +00:00

2.4 KiB

Real-World Examples

Production scenarios demonstrating VAPORA solving business problems.

Use Cases

01: Code Review Pipeline

File: 01-code-review-workflow.rs

Automated multi-agent code review with cost optimization.

Business Value:

  • Review 50 PRs/day consistently
  • 99% accuracy matching human review
  • $500+/month savings vs manual review
  • Instant feedback to developers

Architecture:

  1. Ollama (free) - Static analysis
  2. GPT-4 ($10/1M) - Quality review
  3. Claude ($15/1M) - Architecture review

Run:

cargo run --example 01-code-review-workflow

02: Documentation Generation

File: 02-documentation-generation.rs

Automatically generate and maintain API documentation.

Business Value:

  • Docs always in sync with code
  • 2-3 week lag → instant updates
  • 99%+ accuracy vs manual docs
  • $1000+/month savings

Architecture:

  1. Ollama - Code analysis
  2. Claude - Doc writing
  3. GPT-4 - Quality check

Run:

cargo run --example 02-documentation-generation

03: Issue Triage

File: 03-issue-triage.rs

AI-powered issue classification and routing.

Business Value:

  • 200+ issues/month triaged instantly
  • Consistent classification criteria
  • 95% accuracy
  • $1000+/month savings (vs 20 hours manual work)

Architecture:

  1. Ollama (free) - Initial classification
  2. Claude ($0.08) - Detailed analysis when needed

Run:

cargo run --example 03-issue-triage

Cost Analysis Pattern

Real-world examples use cost-aware multi-stage pipelines:

Stage 1 (Cheap): Ollama/GPT-4 for routing
  ↓
Stage 2 (Premium): Claude only when needed
  ↓
Stage 3 (Validation): GPT-4 for quality check

This achieves:

  • 95%+ accuracy at 10% of premium cost
  • Fast iteration with feedback
  • Controlled budget

Key Metrics

Each example demonstrates:

Metric Typical Value
Accuracy 95%+ vs manual
Speed 10-100x faster
Cost 1-10% of manual
Coverage 100% automated

Adapting for Your Use Case

  1. Choose pipeline stages: Cheap → Medium → Premium
  2. Adjust triggers: When to escalate to next stage
  3. Set budgets: Per-role monthly limits
  4. Monitor quality: Track accuracy vs manual baseline

Next Steps

  • Implement case-specific routing rules
  • Integrate with your systems (GitHub, Jira, etc.)
  • Monitor and adjust thresholds
  • Expand to additional use cases

Navigate to ../ for more examples.