
Researcher in ML and data science
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Evaluating your skill match against the job requirements…
Assessing your cultural and operational fit
Neural-networks-on-impulse
October 2, 2024 – October 2, 2024
Neural-networks-on-impulse — GitHub repository
View ProjectCausalBO
July 15, 2023 – March 8, 2024
"CausalBO" is a Python library that aims to spark Bayesian optimization through the lens of causality
View ProjectGINenergygrids
July 4, 2023 – March 20, 2024
Graph Isomorphic Networks for assessing the N-1 principle on energy grids
View Projectsafety-assessment-av
February 10, 2023 – August 11, 2023
safety-assessment-av — GitHub repository
View ProjectMasterThesis-1
November 16, 2022 – April 2, 2023
In my Computer Science Master's Thesis, I experimented with advanced deep learning models and introduced a new model, cNSVM, to refine the estimation of connectivity in financial time series data, facilitating enhanced market understanding for improved data-driven decision making in finance.
View Projectprecipitation-nowcasting-GANs-RU
March 10, 2022 – August 15, 2022
Nowcasting precipitation using GANs and KNMI data using the radboud server
View Projectprecipitationnowcasting-generativemodels-highevents
February 9, 2022 – December 29, 2023
Precipitation nowcasting using KNMI radar data.
View ProjectCultural Fit Analysis
The candidate's project portfolio shows a strong inclination towards research-oriented and complex data science problems, which aligns well with roles requiring innovation and deep analytical thinking. The diversity of projects, from environmental modeling to financial analysis, indicates adaptability and a broad interest in applying data science across different domains. However, the lack of team-based projects or professional experience makes it difficult to fully assess cultural fit in a collaborative environment.
Soft Skills & Operational Fit
Insufficient data to assess soft skills or operational fit. No psychometric test results or interview feedback provided.