About Me

Research-oriented Systems Engineer with 2+ years building scalable ML infrastructure and simulation environments for agentic AI systems. Specializing in designing training environments inspired by world models and JEPA (Joint Embedding Predictive Architectures), with strong interest in neurosymbolic AI approaches for robust reasoning.

Currently expanding expertise in reinforcement learning environment design and LLM fine-tuning through hands-on implementation. Proven track record implementing ML pipelines and building rigorous evaluations measuring genuine model capabilities beyond standard benchmarks.

Demonstrated high agency by leading NASA-nominated AI project from concept to global recognition. Deep technical experience across distributed systems, containerization (Docker, Kubernetes), and production ML operations, balancing research exploration with engineering rigor.

  • Location Chiclayo, Peru
  • Email [email protected]
  • Phone +51 930 116 108
  • Degree B.Sc. Systems Engineering

Technical Skills

AI & Machine Learning Research

  • World Models & Representation Learning
  • JEPA Architectures
  • Neurosymbolic AI Systems
  • RL Environment Design
  • Agentic Task Planning
  • Model Evaluation Frameworks
  • LLM Fine-tuning & Alignment

ML Frameworks & Tools

  • PyTorch
  • TensorFlow
  • Hugging Face
  • Diffusion Models
  • GANs
  • Custom Training Pipelines

Infrastructure & DevOps

  • Docker
  • Kubernetes (AKS, OpenShift 4)
  • CI/CD Pipelines
  • Nginx
  • Ubuntu Server
  • Distributed Systems
  • VM Orchestration

Observability & Monitoring

  • Dynatrace
  • Grafana
  • Kibana
  • Prometheus
  • Incident Management
  • Performance Optimization

Programming Languages

  • Python (3.10+, production)
  • Rust (systems)
  • JavaScript / TypeScript
  • Three.js / React / Angular
  • Java
  • PHP

Databases & Storage

  • PostgreSQL
  • MySQL
  • Oracle PL/SQL
  • SQL Server
  • ML Workload Optimization

Research Interests

Training environments for long-horizon agentic tasks

Evaluation methodologies measuring real-world capabilities

Neurosymbolic AI: learned representations + structured reasoning

Empirical approaches to AI alignment and safety

Education

Bachelor of Science in Systems Engineering

Universidad Nacional Pedro Ruiz Gallo, Lambayeque, Peru October 2019 – September 2024

Relevant Coursework: Machine Learning, Distributed Systems, Computer Networks, Algorithms & Data Structures, Database Systems

Certifications

Oracle Cloud Infrastructure 2023 AI Certified Foundations Associate
Oracle Cloud Infrastructure 2023 Certified Foundations Associate
PMP PMBOK 7.0 Training
Agile Project Management with Scrum
Generative AI: LLMs Project Management & Practice