Education
PhD in Engineering Science
KU Leuven, 2021 - Ongoing
Thesis: From Centralized to Federated: The Journey of Big Data in Healthcare
Under the supervision of Prof. Yves Moreau
Predoctoral in Engineering Science
KU Leuven, 2020 - 2021
Under the supervision of Prof. Yves Moreau
PhD in Biomedical Science
Universiteit Hasselt, 2019 - Ongoing
Under the supervision of Prof. Niels Hellings and Prof. Liesbet M. Peeters
Master in Industrial Engineering, Socio-Economic Systems Engineering
Kharazmi University, 2016 - 2019
Thesis: Optimization-Simulation Hybrid Model for Hub-Location Allocation in Postal Service Using Agent-Based Modeling and System Dynamics, Iran postal Office, Case Study
Under the supervision of Prof. HamidReza Izadbakhsh and Prof. Ammar Jalalimanesh
Points: 20/20
Master in MBA in Quality Engineering
Tose`e Higher Education Institute, 2015 - 2017
Bachelor in Industrial Engineering
Science and Culture University - Seraj University, 2011 - 2016
Thesis: Measurement System Analysis and Statistical Process Control, Case Study, ParangNovin Giti Co.
Points: 20/20
Experience
Global Data Sharing Initiative - Lead Architect
June 2022 - PRESENT
- Updated Results of the COVID-19 in MS Global Data Sharing Initiative Anti-CD20 With COVID-19: [Link](https://doi.org/10.1212/NXI.0000000000200021)
- A Federated 3-Layer Data Analysis Pipeline to Scale Up Multiple Sclerosis Research: [Link](https://medinform.jmir.org/2023/1/e48030/)
Project ATHENA - Data Scientist
Invalid Date - PRESENT
- Augmenting Therapeutic Effectiveness through Novel Analytics: Machine learning: [Link](https://ebooks.iospress.nl/doi/10.3233/SHTI220601)
PhD Research - Researcher
January 2020 - PRESENT
- Multiple Sclerosis & COVID-19 Global Data Sharing Initiative: A federated architecture was designed and implemented to address challenges in investigating multiple sclerosis and COVID-19. This architecture facilitated the seamless exchange of data while adhering to stringent privacy norms. Its effectiveness was demonstrated in the COVID-19 and MS Global Data Sharing Initiative, contributing to the assembly of the largest dataset of people with MS infected with COVID-19.
- Federated Learning for Everyone (FL4E): The FL4E framework was presented as a versatile and accessible ecosystem that simplified the intricacies of federated learning. This framework enabled multi-stakeholder clinical research collaboration and demonstrated efficacy through rigorous testing on real-world healthcare datasets. The framework’s innovative ‘degree of federation’ feature was noted for its ability to balance centralized and federated learning approaches.
- Leveraging Federated Learning for Multiple Sclerosis: An Empirical Examination of Using Real-World Data which aim is assess to different research question using FL: The research aims to address key questions that assess the challenges and effectiveness of Federated Learning in real-world scenarios. Heterogeneity in clinical practices and patient populations is analyzed, and the feasibility of different federated setups is assessed. Ideal configurations for conducting Federated Learning research are explored, seeking to identify the most effective federated methods.
Ashkan’s Subprojects - Contributor
January 2019 - PRESENT
- POC1 of the Flanders AI Research Project (2019-2023)
- Federated infrastructure used in the COVID-19 in MS Global Data Sharing Initiative (GDSI) (= MSDA project)
- POC4 of the Flanders AI Research Project (2019-2023)
- Leveraging Federated Learning for MS: an empirical examination of using RWD
- MS Data Alliance: COVID-19 & MS Global Data Sharing Initiative (GDSI)
- MSDA Catalogue
- Automated Catalogue
- ELIXIR: Federated Learning for Everyone (FL4E)
Skills
SHOULD BE UPDATED.
Selected Courses
AA 236A:
Spacecraft Design
•
CME 212:
Advanced Programming
•
CME 302:
Numerical Linear Algebra
•
CME 303:
PDE’s of Applied Mathematics
•
CME 304:
Numerical Optimization
•
CME 305:
Discrete Mathematics and Algorithms
•
CS 224d:
Deep Learning for Natural Language Processing
•
CS 229:
Machine Learning
•
CS 231n:
Convolutional Neural Networks for Visual Recognition
•
EE 263:
Introduction to Linear Dynamical Systems
•
EE 266:
Stochastic Control
•
EE 278B:
Introduction to Statistical Signal Processing
•
EE 364a:
Convex Optimization
•
MAE 397:
Design Theory and Methodology
•
MS&E 223:
Simulation
•
MS&E 226:
Small Data
•
CS 250:
Data Structures
•
CSE 321:
Realtime Embedded Systems
•
CSE 442:
Software Engineering Concepts
•
CSE 453:
Hardware/Software Integrated System Design
•
CSE 573:
Computer Vision and Image Processing
•
CSE 590:
Computer Architecture
•
EE 516:
Introduction to Digital Signal Processing