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Iason Skylitsis

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Last updated: October 2025

About Me

AI Master's student at the University of Amsterdam with a focus on causality and machine learning. Currently researching causal bandits, developing frameworks that can learn optimal interventions when both the causal structure is unknown and some variables cannot be directly manipulated, under supervision of PhD candidate Roel Hulsman and Assistant Professor Sara Magliacane.

With a background in Computer Science, I bring a hands-on approach to machine learning research, bridging theoretical advances with practical implementations. My industry experience as a software engineer at Twiki Solutions includes leading data-driven services and developing AI solutions for logistics applications.

My research interests lie at the intersection of causality, machine learning, and real-world applications. I'm particularly drawn to problems that require both theoretical rigor and practical implementation—developing methods that advance our understanding while solving meaningful challenges.

I'm motivated by intellectually stimulating research questions, collaborative academic environments, and the opportunity to contribute to the advancement of machine learning theory with real-world impact.

Research Projects
Structural Causal Bandits with Non-Manipulative Variables under Markov Equivalence
Iason Skylitsis, Roel Hulsman, Sara Magliacane

Ongoing Research
  • Extending the Structural Causal Bandits framework to operate on equivalence classes (CPDAGs, PAGs) learned through causal discovery
  • Incorporating non-manipulable variables (Lee & Bareinboim 2019) into the intervention-selection process to handle realistic decision-making constraints
Structural Causal Bandits with Non-Manipulative Variables under Markov Equivalence
Injecting Image Guidance into Text-Conditioned Diffusion Models at Inference
Agata Żywot, Iason Skylitsis, Thijmen Nijdam, Zoe Tzifa-Kratira, Derck W. E. Prinzhorn, Konrad Szewczyk, Aritra Bhowmik

Links: Paper | Code | Poster
  • Introduced Visual Concept Fusion (VCF), the first method enabling dual conditioning on both image and text prompts at inference time without retraining
  • Developed a lightweight aligner using InfoNCE and cross-attention reconstruction losses to map image tokens to text embedding space
  • Implemented a fusion strategy that preserves both textual and visual semantics
  • Added optional Prompt-Noise Optimization module for test-time refinement
Injecting Image Guidance into Text-Conditioned Diffusion Models at Inference
(Even More) Efficient Equivariant Transfer Learning from Pretrained Models
Mikhail Vlasenko, Ádám Divák, Iason Skylitsis, Milan Miletić, Zoe Tzifa-Kratira

Links: Blogpost | Code
  • Reproduced and extended the original paper by Basu et al. (2023)
  • Verified results across missing experiments and expanded the discussion on weight patterns learned by λ‑equitune
  • Proposed and implemented equiattention, an extension utilizing an Attention layer to potentially improve performance over λ‑equitune
(Even More) Efficient Equivariant Transfer Learning from Pretrained Models
Reproduction and Extension of "Robust Fair Clustering: A Novel Fairness Attack and Defense Framework"
Iason Skylitsis, Zheng Feng, Idries Nasim, Camille Niessink

Transactions on Machine Learning Research (TMLR), 2024
Also: NeurIPS 2024 (ML Reproducibility Challenge poster)
Links: Paper | Code | Poster | Slides
  • Reproduced and extended the ICLR'23 paper by Chhabra et al., refining the codebase
  • Introduced additional metrics and datasets for comprehensive evaluation
  • Explored novel attack strategies including targeted attacks
  • Conducted ablation studies to validate original claims and broaden the research landscape
Reproduction and Extension of
Evaluation of Supervision in Deep Learning Networks for Accelerated-MRI Reconstruction
Iason Skylitsis, Dimitrios Karkalousos, Matthan W. A. Caan

Links: Paper | Code | Slides
  • Investigated the efficiency and reconstruction quality of different supervised and self-supervised methods for MRI reconstruction
  • Extensively compared pre-trained CIRIM to various methods including Noise2Recon, SSDU, U-Net, ResNet, and traditional Compressed Sensing approaches
  • Evaluated trade-offs between training efficiency and reconstruction quality
Evaluation of Supervision in Deep Learning Networks for Accelerated-MRI Reconstruction
Deep Learning and Explainable Artificial Intelligence Techniques for Alzheimer's Disease Detection on MRI
Iason Skylitsis, Athanasios Voulodimos, Eftychios Protopapadakis

Links: Paper
  • Developed an Alzheimer's disease detection framework using deep learning and transfer learning on 2180 MRI images from the ADNI dataset
  • Implemented a comprehensive preprocessing pipeline for MRI data
  • Improved model explainability using Grad‑CAM visualization techniques
Deep Learning and Explainable Artificial Intelligence Techniques for Alzheimer's Disease Detection on MRI

Source: adapted from Thijmen Nijdam's fork of Alexander Timans' fork of Dharmesh Tailor's fork of Leonid Keselman's fork of John Barron's website.