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| # Article Digest -- Proof Points | |
| Compact proof points from portfolio projects. Read by career-ops at evaluation time. | |
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| ## FraudShield -- Real-Time Fraud Detection | |
| **Hero metrics:** 99.7% precision, 50ms p99 latency, $2M/year fraud prevented | |
| **Architecture:** Kafka Streams ingestion β real-time feature computation (200+ features, sliding windows) β ensemble model (XGBoost + neural network) β decision engine with configurable thresholds β human review queue for edge cases | |
| **Key decisions:** | |
| - Chose streaming over batch to catch fraud in real-time (batch had 4-hour delay) | |
| - Ensemble approach: XGBoost for speed + neural net for complex patterns | |
| - Built custom feature store for real-time features (Redis-backed, 5ms reads) | |
| **Proof points:** | |
| - Reduced false positives 60% vs previous rule-based system | |
| - Handles 10K transactions/second peak load | |
| - 500+ GitHub stars, adopted by 3 fintech startups | |
| - Conference talk: "Real-Time ML at Scale" (MLConf 2023) | |
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| ## LLM Eval Toolkit -- Evaluation Framework | |
| **Hero metrics:** 15 built-in metrics, CI/CD integration, used by 200+ developers | |
| **Architecture:** Pluggable metric system β test suite runner β regression detection β GitHub Actions integration β Slack alerts on regressions | |
| **Key decisions:** | |
| - Metrics as code: each metric is a Python function with clear interface | |
| - Deterministic testing: seeded prompts + temperature 0 for reproducible evals | |
| - Cost tracking: each eval run logs token usage and estimated cost | |
| **Proof points:** | |
| - Caught 3 production regressions before deployment in first month | |
| - Reduced eval cycle from "vibes check" to structured 15-minute CI run | |
| - Open source, 200+ weekly active users on PyPI | |