I am a highly analytical AI Engineer specializing in Generative AI, Computer Vision, and Probabilistic Modeling. My professional edge is built on the intersection of rigorous technical research and a multiyear career in Strategic Consulting and Global Finance (Citibank, UniCredit).
I don't just build models; I architect production-ready AI systems where technical precision meets business governance. My work focuses on high-fidelity RAG, hybrid transformer architectures, and generative density estimation.
- Email:
fvalerii@gmail.com - LinkedIn: linkedin.com/in/fabriziovalerii
- Location: Panama City, Panama
- GGenerative & Agentic AI: LangChain (LCEL/Agentic), Model Context Protocol (MCP), Diffusion Models, IBM Watsonx, Semantic Reranking, Prompt Engineering (XML Grounding).
- Computer Vision: Vision Transformers (ViT), Hybrid CNN-ViT Architectures, ResNet, Image Processing (OpenCV).
- Deep Learning & Probabilistic: PyTorch, TensorFlow/Keras, TensorFlow Probability, VAEs, Normalizing Flows, Seq2Seq (LSTM).
- Classic ML & Analytics: XGBoost, Random Forest, Predictive Modeling, Threshold Optimization (Precision-Recall tuning).
- Vector Databases: ChromaDB (Persistent), FAISS (In-memory).
- Data Science & Ops: Python (Expert), SQL, uv (DevOps), Knowledge Graphs (Neo4j), Geospatial Data.
- Core Logic: Dual-Backend RAG with Multi-Tenant Isolation.
- Achievements: Built two alternative pipelines (Watsonx/Granite-4 vs. Llama-3.1). Implemented Two-Stage Retrieval using Cross-Encoder Reranking and PDF hashing for session isolation. Optimized for zero-hallucination technical analysis via specialized XML grounding.
- Core Logic: Benchmarking Framework Parity (PyTorch vs. TensorFlow).
- Achievements: Integrated CNN feature extractors with Transformer self-attention blocks to capture global spatial relations. Achieved >99% accuracy and 1.000 ROC-AUC across both framework implementations.
- Core Logic: Generative Latent Space Organization.
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Achievements: Used Normalizing Flows for custom data generation and a VAE with
$\beta$ -weighting to force clear latent-space organization. Validated performance with a 0.4473 FID score, proving near-identical statistical distribution to real data.
- Core Logic: Custom Encoder-Decoder via TensorFlow Subclassing.
- Achievements: Scaled to 200,000+ sentence pairs using asynchronous prefetching. Achieved a 17.32 BLEU Score using a 512-unit LSTM engine with Orthogonal Initialization and asymmetric dropout profiles.
- Core Logic: Threshold Optimization for Business Retention.
- Achievements: Developed XGBoost ensembles achieving 97% Precision. Performed decision threshold tuning (optimized to 0.089 for Waze) to prioritize Recall and identify at-risk users, delivering actionable "burnout" and "churn" roadmaps for HR/Finance.
- MITx Micromasters in Statistics and Data Science (In Progress, MIT/edX)
- Completed: Probability - The Science of Uncertainty (6.431x) and Machine Learning with Python (6.86x).
- STATSX0001: Statistical Learning (Stanford Online)
- Degree in Management Engineering (Politecnico Di Milano)
Before transitioning full-time into AI, I built a career in finance and business consulting and strategic management.
- Chairman and Owner, Strategic Project Overseas Inc.: Oversaw private equity investments in young technology companies, focusing on strategic valuation and operational due diligence.
- Equity Trader (Independent): Developed and executed proprietary investment strategies based on technical and fundamental analysis of financial markets.
- Organization Manager, Pioneer Global Asset Management: Coordinated large-scale business rationalization, process optimization, and project management (PRINCE2) for Asset Management division of the UniCredit Group.
- Senior Business Consultant, PWC Consulting: Participated in projects in the financial sector in the areas of strategy, company restructuring, and implementation of IT systems.
- Telephone Banking Head, Citibank: Implemented the Telephone Banking unit of Citibank in Italy from the ground up and subsequently managing its operations.
- Model Context Protocol (MCP) Mastery (Jan 2026, Anthropic/Fractal Analysis)
- Building Diffusion Models (Jan 2026, Fractal Analysis)
- IBM RAG & Agentic AI Professional Certificate (Dec 2025, IBM)
- Google Cloud Professional Machine Learning Engineer (Nov 2025, Google)
- IBM GenAI Engineering Professional Certificate (Oct 2025, LangChain/Watsonx)
- IBM Deep Learning Professional Certificate (Oct 2025, PyTorch/TensorFlow)
- TensorFlow 2 for Deep Learning Specialization (Jan 2025, Imperial College London)
- Google Advanced Data Analytics Professional Certificate (Oct 2024, Google)
- Google Data Analytics Professional Certificate (July 2024, Google)
Polyglot: Italian (Native), English, Spanish, Portuguese, French, German.
