Skip to content
View AwesomeLemon's full-sized avatar
Block or Report

Block or report AwesomeLemon

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
AwesomeLemon/README.md

👋 Hi! I’m a PhD student in the Evolutionary Intelligence group at the Dutch Institute for Maths & Computer Science (CWI).

My primary research interests are Hyperparameter Optimization and Neural Architecture Search (NAS). I believe leveraging Evolutionary Algorithms (EAs) for non-differentiable Machine Learning problems such as these is a potentially high-impact research direction. In addition to not requiring gradients, most EAs are trivial to parallelize & scale, so they are fully compatible with Sutton’s Bitter Lesson.

Research-wise I’m also interested in Explainable AI (my Master thesis was partly about using NAS for explainability) and image generation (the applied part of my PhD project is about privacy-preserving medical image data sharing with GANs).

Life-wise I’m into fantasy, hiking, and discussing weird ideas.

Always happy to chat about these topics!

Pinned

  1. ENCAS ENCAS Public

    NAS + Cascades | Best Paper @ GECCO 2022

    Python 15 4

  2. PBT-NAS PBT-NAS Public

    Population Based Training for Neural Architecture Search

    Python 3

  3. MO-PBT MO-PBT Public

    Forked from ArkadiyD/MO-PBT

    An algorithm for multi-objective hyperparameter optimization: Multi-Objective Population Based Training (MO-PBT) | ICML 2023

    Python

  4. HyFree-S3 HyFree-S3 Public

    Hyperparameter-Free Medical Image Synthesis for Sharing Data and Improving Site-Specific Segmentation

    Python 2