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title EMTS 2025 - Generative Path Selection Technique for Efficient Ray Tracing Prediction (Invited)
categories
Research
Software
tags
machine-learning
manim
manim-slides
presentation
programming
propagation
ray-tracing
website https://differt.rtfd.io/icmlcn2025/notebooks/sampling_paths.html
github jeertmans/DiffeRT
image
path alt
/assets/img/posts/bologna.webp
Bologna, Italy - Image by Bianca Ackermann on Unsplash
permalink /posts/emts2025/
description Presentation slides and code for the invited talk at EMTS 2025 in Bologna, Italy.

As I could not be physically present for the 2025 International Symposium on Electromagnetic Theory, Prof. Enrico Maria Vitucci presented our work on generative path selection for efficient Ray Tracing. The presentation contents and slides are very close to what I presented at the INTERACT COST meeting in Dublin, in January 2025. For more details on the model we used, check out the ICMLCN 2025 post.

Slides

{% include slides.html url="/assets/slides/2025-06-27-emts-presentation.html" %}

If you prefer, PowerPoint and PDF versions are also available.

References

{% bibliography --cited %}

Source code

Available on GitHub: _slides/2025-06-27-emts-presentation/main.py{: .filepath}.