Jesús Cáceres-Tello
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Contents

  • 🔬 Research Identity
  • 🎯 Research Mission
  • 🏗 Research Infrastructure & Open Science
  • 📚 Publications & Open Repositories
    • ⚖️ Urban PM2.5 Imbalance Evaluation Framework
    • 📊 Urban PM2.5 Methodology
    • 🌱 Behavioural and Institutional Drivers of Green Technology Adoption
    • 🎓 Citizen Science and STEM Education with R
    • 🧠 Quantum Computing in Data Science and STEM Education
  • 🎓 Academic Background & Professional Experience
  • 🧑‍🎓 Research Profiles
  • 🤝 Collaboration

Jesús Cáceres Tello

Research Profile | Data Science, Urban Sustainability & Reproducible AI

🔬 Research Identity

Urban Data Science · Imbalance-Aware Modelling · Reproducible AI Systems

Jesús Cáceres-Tello is a researcher working at the intersection of urban sustainability, machine learning methodology, and open computational science.

His research focuses on the design and evaluation of predictive models under real-world constraints, particularly in environments characterised by class imbalance, temporal structure, and operational limitations.

Rather than prioritising algorithmic novelty, his work emphasises:

  • Methodological rigour
  • Time-aware validation
  • Performance–cost trade-off analysis
  • Reproducibility by design
  • Open science integration

🎯 Research Mission

The core objective of my research is to develop methodologically coherent AI frameworks for urban sustainability and STEM education.

This involves:

  • Evaluating models under structural imbalance
  • Designing reproducible analytical pipelines
  • Integrating computational efficiency into model comparison
  • Linking data science with institutional decision-making

My work contributes to a broader research programme in applied data science for sustainable systems, currently developed within my doctoral studies at the Complutense University of Madrid. # 🔬 Research Areas

  • 🌍 Urban environmental modelling and air quality forecasting
  • ⚖️ Imbalanced learning and classification evaluation
  • 🤖 Hybrid predictive architectures (Prophet–LSTM, GAT–BiLSTM)
  • 📈 Performance–cost trade-off analysis
  • 🧩 Open science and reproducible research infrastructures
  • 🎓 AI-supported STEM education

🏗 Research Infrastructure & Open Science

All research projects are developed under a structured computational framework:

  • Git-based version control
  • Public repositories with DOI integration (Zenodo)
  • Reproducible scripts and notebooks (R / Python / Quarto)
  • Time-based validation strategies
  • Transparent performance reporting

Each publication is accompanied by:

  • An open repository
  • Executable code
  • Structured documentation
  • Publicly accessible data sources

This approach ensures traceability, transparency, and methodological consistency across projects.

📚 Publications & Open Repositories

⚖️ Urban PM2.5 Imbalance Evaluation Framework

Imbalance-aware classification and performance–cost trade-off analysis (Manuscript under review, 2026)

🌐 Project 📄 Article 🧪 Analysis Scripts 💾 Repository

📊 Urban PM2.5 Methodology

Reproducible methodological pipeline for urban PM2.5 time series analysis (Manuscript under review, 2026)

🌐 Project 📄 Article 💻 Notebook 💾 Repository 🧪 Scripts & Pipeline Validation

🌱 Behavioural and Institutional Drivers of Green Technology Adoption

TAM-based framework for sustainability transitions (Frontiers in Psychology, 2026)

🌐 Project 📄 Article 🧪 Analysis Scripts 💾 Repository

🎓 Citizen Science and STEM Education with R

Reproducible AI–IoT forecasting and learning from open urban air and meteorological data (Applied Sciences, 2025)

🌐 Project 📄 Article 💻 Notebook 💾 Repository

🧠 Quantum Computing in Data Science and STEM Education

Bibliometric mapping and pedagogical analysis of quantum computing tools (Computers, 2025)

🌐 Project 📄 Article 🧪 Analysis Scripts 💾 Repository

🎓 Academic Background & Professional Experience

Jesús Cáceres-Tello holds:

  • Diploma in Computer Science: University of Málaga
  • B.Sc. in Computer Engineering: Catholic University of Ávila
  • Master’s Degree in Educational Informatics: University of Alcalá
  • He is currently pursuing a Ph.D. in Statistical Studies at the Complutense University of Madrid, developing methodological frameworks for urban sustainability analytics.

His professional experience includes:

  • Leadership in university digital infrastructure systems
  • Participation in European Electronic Health Record interoperability projects (ISO 13606, ISO 21090)
  • Development of national e-learning platforms
  • Public-sector environmental technology projects at Madrid City Council

He has been teaching in higher education for over a decade and actively contributes to academic innovation initiatives.

🧑‍🎓 Research Profiles

You can explore my professional and academic presence across several open-science platforms. These profiles provide access to publications, collaborations, datasets, and teaching activities related to environmental informatics, STEM education, and open data research. Connect with me on:

LinkedIn Google Scholar ORCID ResearchGate

🤝 Collaboration

I welcome collaboration in:

  • Urban sustainability analytics
  • Methodological AI evaluation
  • Reproducible research frameworks
  • Hybrid predictive systems
  • AI-enhanced STEM education
Current research is developed within a compendium-based doctoral thesis integrating urban sustainability, methodological AI, and open science frameworks.

© 2025 Jesús Cáceres-Tello