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Department of Computer Science and Technology

 

Energy and Environment Group (EEG)

The Energy and Environment Research Group applies computer science to address renewable energy integration, energy demand reduction, and the assessment and management of environmental impact (e.g. climate change, biodiversity loss, deforestation) from anthropogenic activities.

We operate in an interdisciplinary manner, collaborating with climate scientists, ecologists, engineers, lawyers, regulators, and economists, and conducting wide engagement with external partners to effect evidence-based outcomes.

Goal

Our primary goal is to have a measurable impact on tools and techniques for de-risking our future. To do so, we share recent advances at the intersection of computer science, energy, and the environment through seminars, workshops, and scientific publications. We also help form collaborations between group members to coordinate interdisciplinary initiatives across University departments. 

Membership

EEG members are, in the first instance, faculty members in the Department for Computer Science and Technology and their students. We also invite membership from Postdocs, PhDs, Lab Visitors and Master’s students primarily from other departments, as appropriate.

Seminars

A list of talks for the current term can be found below; talks from prior terms are linked to this page. Seminar details can also be found at Talks.cam. Recordings from the EEG seminar series are available to watch online. We thank the Institute of Computing for Climate Science for their sponsorship of this series.


Partners


Upcoming seminars

Lent term

  • 23Jan
    Robin Young, University of Cambridge

    *Abstract*
    Mapping global forest biomass from NASA's GEDI mission requires interpolating sparse LiDAR observations across diverse landscapes. Standard machine learning approaches like Random Forest and XGBoost fail to produce calibrated uncertainty estimates, as they conflate ensemble variance with true predictive uncertainty and ignore spatial context.
    We introduce Attentive Neural Processes (ANPs), a probabilistic meta-learning framework that conditions predictions on local observations and geospatial foundation model embeddings. ANPs learn flexible spatial covariance functions, expanding uncertainty in complex landscapes and contracting it in homogeneous areas. Validated across five biomes from tropical Amazonian to boreal and alpine ecosystems, ANPs achieve competitive accuracy with near-ideal uncertainty calibration. The framework also enables few-shot adaptation, recovering most cross-region transfer performance with minimal local data. This provides a scalable, principled alternative to ensemble methods for continental-scale biomass mapping.

    *Bio*

    Robin Young is a first-year PhD student in Computer Science at the University of Cambridge.

  • 30Jan
    James Ball, University of Cambridge

    *Abstract*
    *Bio*

    Stay Tuned!

  • 06Feb
    Yihang She, University of Cambridge

    *Abstract*
    *Bio*

    Stay Tuned!

  • 13Feb
    Shane Weisz, University of Cambridge

    *Abstract*

    Stay Tuned!

    *Bio*

    Shane Weisz is a first-year PhD student in Computer Science at the University of Cambridge, supervised by Professor Anil Madhavapeddy. His research focuses on AI to support global biodiversity conservation.

  • 20Feb
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

  • 27Feb
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

  • 06Mar
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

  • 13Mar
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

  • 20Mar
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

  • 27Mar
    Speaker to be confirmed

    *Abstract*
    *Bio*

    Stay Tuned!

Easter term