Due to NDAs and corporate policies, the vast majority of my professional-grade code resides in private repositories. The projects showcased here are primarily my academic and personal side-projects where I experiment, build, and deploy end-to-end systems from scratch.
• Strategic AI Solutions (OrangeDoor IT): Translating world-class Salesforce architectures into secure, business-oriented blueprints, ensuring 100% data governance and immediate ROI.
• Enterprise AI Architecture (Getter): Planning complex multi-agentic infrastructures and conducting high-level technical governance audits for autonomous enterprise logic.
• Architecting Digital Validation Models (Stealth Startup): Structuring multi-modal data pipelines for global environmental integrity, aligning technical roadmaps with VC-backed KPIs.
• Sovereign Data Ecosystems (Embrapa/ABCGIL): Architected the "Sovereign Bio-Graph," moving national genomic assets to air-gapped HPC infrastructure across 10+ countries.
• Neuro-Symbolic Breakthrough (FrameNet BR): Engineered a hybrid AI system fusing Vision Transformers with linguistic logic, achieving a 6x performance increase in semantic reasoning.
• 1st Place Winner - Reply Enterprise Challenge (FIAP NEXT 2025): Solo-architected a production-grade Agentic platform for predictive maintenance, reducing downtime by 40%.
• Global R&D Leadership: Orchestrated 3 international engineering cohorts at SuperDataScience, deploying full-stack financial intelligence and healthcare AI systems.
I partner with high-growth startups and global enterprises to architect sovereign AI ecosystems that drive ruthless market ROI. I bridge the gap between deep R&D and the boardroom, translating complex data physics into scalable B2B revenue.
- Strategic AI Architect @ OrangeDoor IT (Consulting): Designing secure agentic infrastructures that integrate world-class Salesforce solutions with enterprise-grade data governance.
- AI Architect @ Getter (Advisory): Managing technical leadership and organizational alignment, translating business goals into high-impact, autonomous technology solutions.
- Solutions Architect @ Stealth Startup: Leading the design of multi-modal data pipelines and AI validation models to ensure global environmental integrity and traceability.
- Enterprise Data Strategy @ Embrapa (Transitioning): Architected the digital foundations for international genomic improvement programs, ensuring research data drives objective business KPIs.
- Agentic AI Research @ UFJF (M.Sc. CS): Researching Cognitive Multi-Agent Systems (MAS) for autonomous decision-making and semantic interoperability in heterogeneous environments.
- Award-Winning Systems: Solo-architected the 1st place winner of the Reply Enterprise Challenge (FIAP NEXT 2025)—a production-grade platform for predictive maintenance.
Strategic AI Architect | OrangeDoor IT | Remote | Mar 2026 - Present
- Enterprise MAS Architecture: Planning of agentic infrastructures and Multi-Agent Systems (MAS), in large-scale enterprise operations.
- AI Governance & Security: Implementing rigid AI trust protocols, conducting data security audits, and establishing guardrails for mission-critical operations.
- Strategic Alignment: Interfacing with global strategic partners, such as Salesforce, for team coordination and enterprise integrations, translating their world-class ideas and solutions, into technical & business secure architectural blueprints, for both clients, and for the engineering teams.
- Organizational Alignment: Diverse alignment meetings with teams of engineers, architects, PMs, C-level personnel, and strategic private & governmental clients, translating business goals into technology solutions driven by ROI and efficiency.
Key Areas: Enterprise Architecture Agentic AI Salesforce Agentforce AI Governance Multi-Agent Systems ROI Optimization
Solutions Architect | Stealth Startup | Remote | Mar 2026 - Present
- Enterprise AI Architecture: Conceiving and developing autonomous AI models that integrate big data to monitor and process complex, large-scale realities.
- Large Scale Data Science: Leading and validating machine learning, deep learning, MLOps, and geospatial AI multi-modal techniques to align with business KPIs.
- Stakeholder Management: Serving as the strategic bridge between complex scientific modeling, VCs, and the CTO, translating technicalities and scientific rigor into KPIs and business metrics/impact.
Key Areas: Solutions Architecture Data Pipelines AI Integration System Integrity Big Data Enterprise AI
Data Manager & AI Systems Architect | Embrapa/ABCGIL | Juiz de Fora, MG | Dec 2025 - Present
- Sovereign AI Strategy: Architecting the "Sovereign Bio-Graph," moving national genomic assets from cloud dependency to on-premise, air-gapped high-performance computing.
- Global R&D Leadership: Acting as the strategic bridge between world-renowned PhD researchers and executives, aligning complex genomic R&D with business KPIs across 10+ countries.
- Systemic Engineering: Managing the transition from legacy SQL to Graph Databases (Neo4j) and implementing Agentic Workflows for automated pedigree validation.
Key Areas: Sovereign AI Genomics Graph Databases System Architecture R&D Strategy
Invited AI Researcher (Neuro-Symbolic Architecture) | FrameNet Brasil / UFJF | Sep 2025 - Mar 2026
- Architectural Innovation: Led the engineering of a Hybrid Neuro-Symbolic System that fuses Visual Transformers (ViT) with structured linguistic logic to solve "noisy data" challenges.
- SOTA Performance: Achieved a 6x improvement in multi-label classification accuracy by implementing Active Inference principles and Asymmetric Loss functions.
- End-to-End Pipeline: Managed the full lifecycle from data strategy to deployment, proving that small, structured models can outperform massive, unstructured baselines.
Key Areas: Neuro-Symbolic AI Multimodal Models Computer Vision Active Inference Deep Learning
Project Lead: AI/ML Engineering & Data Science | SuperDataScience | *Remote | Jun 2025 - January 2026
- Agentic AI Leadership: Architecting "FinResearch AI", a multi-agent system using CrewAI to automate institutional financial research, pivoting teams from static notebooks to production-grade orchestration.
- Predictive ML Platforms: Delivered full-stack healthcare (GlucoTrack) and HR analytics (MLPayGrade) platforms using Deep Learning, Model Explainability, and Tabular Embeddings.
- Global Team Management: Orchestrating the full lifecycle for diverse international cohorts, aligning KPIs, conducting 1x1 mentorship, and enforcing software engineering best practices for scalable deployment.
Key Areas: Agentic AI Multi-Agent Systems CrewAI Technical Leadership LLMs RAG Full-Stack ML
R&D Intern (Data & Genomics) | Embrapa Gado de Leite | Juiz de Fora, MG | Sep 2025 - Dec 2025
- Increased performance by 87% of genomic queries by migrating from PostgreSQL to Neo4j.
- Architected a scalable bioinformatics fullstack pipeline for genomic analysis (Docker, Nextflow, FastAPI).
- Optimized project presentations for stakeholders and executives responsible for laboratory budget and resources.
Key Areas: Genomics Bioinformatics Data Engineering Bioinformatics Neo4j
AI Trainer (LLM Systems via RLHF) | Outlier | Remote | Nov 2024 - Sep 2025
- Developed technical content to align Large Language Models (OpenAI, Meta, Anthropic), increasing model efficiency by 64% via RLHF in collaboration with technical teams.
Key Areas: RLHF Model Alignment AI Safety LLMs Quality Assurance
Data Analyst (Ecological Impact) | Impaakt | Remote | Feb 2022 - Oct 2024
- Delivered 500+ data-driven ecological impact reports that influenced ESG (Environmental, Social, and Governance) ratings used by investment firms.
Key Areas: Environmental Science Sustainability Analysis Data Analysis Process Optimization AI Integration Impact Assessment
Research Assistant | Georgia State University | Atlanta, GA | Feb 2019 - Feb 2020
- Increased research productivity by 84% by automating data collection and analysis workflows using Python.
Key Areas: Cognitive Sciences Philosophy of Mind Psychology Behavioral Analysis Research Methodology Data Analysis Data Science Python
Master of Science (M.Sc.) - Computer Science | Universidade Federal de Juiz de Fora (UFJF) | 2026 - 2028 (expected)
- Research Focus: Architecting Cognitive Multi-Agent Systems (MAS), semantic interoperability (Ontologies) in heterogeneous data, and autonomous decision-making based on Green AI.
- Key Graduate Coursework: Intelligent Agents • Autonomous Software Systems • Artificial Intelligence in Software Engineering • Machine Learning • Applied Intelligent Systems.
- Academic Excellence: Admitted with a 91.25 score on the Scientific Research Project defense.
Bachelor of Technology (Technologist Degree) - AI Systems & Machine Learning | FIAP | 2024 - 2026
Key Areas: AI Systems Architecture Machine Learning Engineering MLOps Edge AI IoT Development Software Engineering Data Engineering Cybersecurity Cloud Operations
Academic Excellence: GPA 4.0
Bachelor of Science - Biological Sciences | UniAcademia | 2022 - 2025
Key Areas: Molecular Biology Genetics Computational Biology Research Methodology Laboratory Management Scientific Publishing
Academic Excellence: GPA 3.7 | Thesis: Epigenetics Antiaging Health Software Leveraging Machine Learning & Deep Learning Algorithms
Bachelor of Science - Philosophy (Major) & Psychology (Minor) | Georgia State University | 2017 - 2020 (incomplete)
Key Areas: Cognitive Sciences Philosophy of Mind Psychology Human Behavior Research Methodology Academic Leadership
Academic Excellence: GPA 3.8 | Thesis: Differentiating Factual Belief, Imagination & Religious Credence - A Systematic Theory of Cognitive Attitudes
Additional Recognition: Columnist for "The Signal" (GSU's award-winning newspaper), Atlanta Campus Scholarship recipient, Dean's List, Honor Society member
View all recommendations on LinkedIn
I've been fortunate to work with exceptional professionals who have recognized my technical capabilities, problem-solving approach, and collaborative leadership style. These recommendations span my work in:
- AI/ML Engineering & Research
- Data Science & Analytics
- Project Leadership & Team Collaboration
- Academic Research & Scientific Methodology
This portfolio showcases end-to-end AI systems I've architected to solve real-world challenges. Each project demonstrates business impact, technical excellence, and production-ready implementation.
🏆 1st PLACE WINNER - Reply Enterprise Challenge @ FIAP NEXT 2025 🏆 An end-to-end, production-grade predictive maintenance platform I built from scratch (investing hundreds of hours) to win Reply's annual enterprise challenge. This system uses a 12-agent event-driven architecture (FastAPI, Redis) and 17 ML models (trained on 6 real-world datasets like NASA, AI4I, XJTU) to predict equipment failures before they happen.
- Business Value: Proven to reduce unplanned downtime by 40% and save R$ 100-500k per prevented failure.
- Performance: Validated at 103.8 RPS with 3ms P99 latency under load.
- Database: Achieved 37% faster dashboard queries using TimescaleDB continuous aggregates.
- Stack:
Python•FastAPI•TimescaleDB•MLflow•Docker•AWS•Streamlit(NDA Expired - Repository open for architectural review)
Solo Development | AI-powered invoice processing automation
- Business Goal: To eliminate the slow, error-prone manual process of invoice handling for small to medium businesses.
- Solution & Impact: Built a full-stack system that automates the entire invoice processing pipeline. By mapping the user journey and applying RAG for intelligent error handling, the system reduced manual processing time by over 85%.
- Technologies:
React.js•Next.js•TypeScript•FastAPI•LangChain•RAG•FAISS•Docker•AWS S3•PostgreSQL
🏆 Award Winner - FIAP Global Solution 2025.1
- Business Goal: To create a predictive system to manage and mitigate large-scale national crises like natural disasters.
- Solution & Impact: I single-handedly architected and developed this award-winning multi-agent platform. Five autonomous "Guardian" agents for different threat domains, with a fully functional MVP for fire risk prediction using real-time IoT sensor data.
- Technologies:
Agentic AI•Python•FastAPI•Docker•MicroPython•ESP32•IoT•Apache Spark
Solo Development | Personalized anti-aging recommendation system
- Business Goal: To create a scalable HealthTech platform that provides personalized, data-driven health recommendations, moving beyond generic advice.
- Solution & Impact: Developing an AI platform focused on Explainable AI (SHAP) and secure deployment (JWT). The system translates complex epigenetic data (BioPython) into actionable health insights by analyzing genetic predispositions (SNPs) and lifestyle habits to generate personalized risk assessments.
- Technologies:
PyTorch•Scikit-learn•BioPython•MLFlow•SHAP•Docker•FastAPI•React
End-to-End Architecture | Unified smart farming system integrating IoT, Cloud, and Hybrid AI
- Business Goal: To optimize agricultural ROI by minimizing water usage and crop loss through real-time telemetry and automated decision-making.
- Solution & Impact: A massive 6-module ecosystem combining Edge AI (YOLOv5) for pest detection and Cloud AI (GPT-4o) for insights. Features a custom Genetic Algorithm that solves the "knapsack problem" for crop allocation and a distributed ESP32 IoT network for predictive irrigation.
- Technologies:
Python•AWS•IoT (ESP32)•YOLOv5•Genetic Algorithms•OpenAI API•SQLAlchemy•Streamlit
Student Lead & Architect | Automated B3 Stock Analysis & Prediction System
- Business Goal: To automate the complex detection of Elliott Wave market patterns, creating a professional-grade technical analysis tool for the Brazilian Stock Exchange (B3).
- Solution & Impact: Led the research and development of a full-stack ML system processing real-time market data. Built a custom feature engineering engine (24 technical indicators) and an MLOps pipeline (MLflow + AWS S3) to train and version Random Forest/SVM models. The system classifies market movements into 4 strategic categories via a Streamlit UI.
- Technologies:
Python•MLflow•AWS S3•Docker•Scikit-learn•Streamlit•FastAPI•Technical Analysis
Lead Developer | High-performance bovine ancestry analysis pipeline for Embrapa
- Business Goal: To solve computational bottlenecks in genomic ancestry analysis and democratize access to complex tools for researchers.
- Solution & Impact: Architected a Nextflow automation pipeline that handles data conversion, Quality Control, and visualization. Introduced a parallelized Cross-Validation engine (reducing scan times drastically) and a Streamlit Web UI, allowing non-coders to run scientific-grade population structure analyses.
- Technologies:
Nextflow•Python•Streamlit•R•Bioinformatics•Parallel Computing•Docker
As a Project Leader in the international SuperDataScience community, I led diverse teams of data scientists and ML engineers to deliver production-ready AI/ML platforms. I was responsible for aligning project priorities with stakeholders, defining KPIs, and managing deployment.
Leadership Experience: Project Lead for 2 projects | Project Member for 2 projects
Project Lead | Comprehensive diabetes risk assessment system using the CDC diabetes dataset
Led a diverse team of data scientists and ML engineers to deliver both beginner-friendly and advanced deep learning solutions.
Key Features: Built traditional ML models (Logistic Regression, Decision Trees) and advanced Feedforward Neural Networks with hyperparameter tuning. Includes model explainability tools and multiple deployment options.
Technologies: Python • Scikit-learn • Deep Learning • Streamlit • Model Explainability • Healthcare AI • Data Science
Live app: glucotrack.streamlit.app
Project Lead | End-to-end salary prediction platform analyzing the 2024 machine learning job market
Coordinated a team of data scientists and ML engineers to build comprehensive solutions across multiple skill levels.
Key Features: Analyzes global salary trends and job feature impacts on compensation. Features both traditional ML pipelines and advanced deep learning on tabular data with embeddings and explainability.
Technologies: Python • Scikit-learn • Deep Learning • Tabular Data • Streamlit • Job Market Analytics• Data Science
Project Member | End-to-end machine learning platform to predict Total Cost of Attendance for international higher education
Key Features: Achieved a 96.44% R² score with an XGBoost Regressor, deployed via both a Streamlit web app and a FastAPI service, all containerized with Docker and automated with CI/CD.
Technologies: Scikit-learn • XGBoost • MLflow • Streamlit • FastAPI • Docker • CI/CD• Data Science
Project Lead | Agentic AI system for automated institutional-grade financial research
Led the development of an autonomous multi-agent system that mimics a professional financial analyst team.
Key Features: Orchestrates 5 specialized agents (Researcher, Quant Analyst, Reporter) using Shared Vector Memory to scrape real-time news, calculate financial ratios, and synthesize findings into investment-grade reports. Implements "Advanced Track" architecture using CrewAI concepts.
Technologies: Python • CrewAI • OpenAI Agents • RAG • ChromaDB • Streamlit • Financial APIs
Project Member | Deep learning solution that classifies 14 different crop diseases across four species
Key Features: A Convolutional Neural Network (CNN) trained on my local machine, on over 13,000 images, using only modulerized python scripts (no notebooks), deployed via a user-friendly Streamlit interface for real-time predictions. Covers corn, potato, rice, and wheat diseases.
Technologies: Deep Learning • Computer Vision • CNN • TensorFlow • PyTorch • Streamlit• Locally Trained Neural Network



