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guille-gil/README.md

Guillermo Gil de Avalle

📍 Based in Groningen, Netherlands

PhD Student in Applied AI for Industrial Maintenance | University of Groningen

University Profile ORCID LinkedIn

About

PhD student at the University of Groningen working on the Horizon Europe AIXPERT project. My research develops AI systems to assist industrial maintenance staff, combining Knowledge Graphs, RAG systems, and LLMs for procedural knowledge extraction from technical documents.

Academically focused on integration of structured knowledge into downstream tasks, in particular for industrial environments.

Research Interests

  • Knowledge Graph extraction and construction
  • LLM integration
  • Retrieval-Augmented Generation
  • Agentic workflows and tool use
  • Procedural knowledge extraction
  • Vision-Language Models and multimodal reasoning

Education

  • PhD in Applied AI (Current)
    University of Groningen, Netherlands

  • MSc Technology and Operations Management (Cum Laude)
    Data Science Specialty | Thesis on unsupervised fault detection for wind turbines
    University of Groningen, Netherlands

Experience

Previously worked as an AI Engineer / Consultant at Nexler, developing automation solutions using LLMs, APIs, and agentic frameworks, and as an Analytics Product Manager at BridgeU, developing predictive models for university admissions.

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  1. Anomaly_Detection_in_Wind_Turbines_using_Variational_Autoencoder_and_Isolation_Forest Anomaly_Detection_in_Wind_Turbines_using_Variational_Autoencoder_and_Isolation_Forest Public

    This repository contains the implementation of a study that addresses operational challenges in wind turbine fault detection by comparing static thresholds (ISO 10816-21) with a hybrid unsupervised…

    Python