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I’m currently pursuing my M.Sc. at McGill University, where I work under the guidance of Professor Tal Arbel in the Probabilistic Vision Group PVG. My research delves into cutting-edge deep-learning techniques, specifically focusing on leveraging GANs and diffusion models to advance medical imaging. Recently, I embarked on an exciting journey as a Visiting Researcher at ServiceNow in Montreal. Here, my focus has shifted towards Diffusion Language Modeling, particularly through the use of Masked Discrete Diffusions—a field that holds immense potential for the future of AI-driven communication.

I’m a Research Scientist at MILA (Quebec AI Institute), where I design and build multi-agent, multi-modal AI systems for healthcare. My day-to-day work centers on creating interconnected agents that can analyze medical images, generate clinical narratives, answer diagnostic queries, and propose counterfactual explanations—all within a unified, scalable framework.

I began my journey at Sharif University of Technology, earning a B.Sc. in Computer Engineering in 2017. Drawn to the challenge of medical image analysis, I pursued an M.Sc. in Electrical and Computer Engineering at McGill University under Prof. Tal Arbel in the Probabilistic Vision Group. There, I explored GANs, diffusion models, and 3D foundational architectures, laying the groundwork for explainable generative AI in medicine.

Following my master’s, I joined ServiceNow Research in Montreal as a Visiting Researcher and collaborated with Pierre-André Noël. I led the development of one of the first large-scale discrete diffusion language models, building an open-source framework capable of training and running at the billion-parameter scale. Through that work, I demonstrated how diffusion-based text generators can deliver 10–20× faster output than traditional autoregressive models without compromising quality—opening new possibilities for both cloud-based services and on-device applications.

Outside of work, when I am not tinkering with science, I enjoy reading books, watching movies, playing video games, and hanging out with friends and family.

Selected Publications & Preprints [full list]

  1. COLM’25
    Unifying Autoregressive And Diffusion-Based Sequence Generation
    Nima Fathi, Torsten Scholak, and Pierre-Andre Noel
    In , Also Poster Presentation at ICLR’25, DeLTa workshop , 2025
  2. MIDL’24
    DeCoDEx: Confounder Detector Guidance for Improved Diffusion-based Counterfactual Explanations
    Nima* Fathi, Amar* Kumar, Brennan Nichyporuk, and 2 more authors
    Medical Imaging with Deep Learning, 2024
  3. MICCAI’25
    AURA: A Multi-Modal Medical Agent for Understanding, Reasoning & Annotation
    Nima Fathi, Amar Kumar, and Tal Arbel
    arXiv preprint arXiv:2507.16940, 2025
  4. FAIMI - MICCAI
    Debiasing Counterfactuals In the Presence of Spurious Correlations
    Amar Kumar, Nima Fathi, Raghav Mehta, and 4 more authors
    In Workshop on Clinical Image-Based Procedures, 2023

Experience


ServiceNow

Visiting Researcher,

2024.07 - 2025.04

montreal, QC

EPFL

Research Intern

Lausanne, Switzerland

Divar

Machine Learning Engineer

2021.01 - 2021.08

Tehran, Iran

Yektanet Inc.

Machine Learning Engineer

2020.05 - 2021.01

Tehran, Iran