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I have completed my M.Sc. in Electrical and Computer Engineering at McGill University, where I was supervised by Professor Tal Arbel in the Probabilistic Vision Group (PVG) at Mila, the Quebec AI Institute. My research centers on language models, with a particular focus on Diffusion Language Models (dLLMs) and Agentic AI systems that combine reasoning, generation, and tool use.

My recent work explores alternatives to autoregressive LLMs through diffusion-based sequence modeling, as well as the design of multi-agent, multi-modal AI systems capable of reasoning over language, vision, and structured medical data. I have led and contributed to several projects at the intersection of LLMs, diffusion models, and agentic frameworks, including the development of large-scale discrete diffusion language models and medical AI agents that integrate perception, reasoning, and explanation.

A key milestone in this direction is AURA, a multi-modal medical agent designed for understanding, reasoning, and annotation across medical images and clinical context. This work was presented as an oral paper at MICCAI and received a Best Poster Award at the MedAgent Workshop, highlighting the growing role of Agentic AI in healthcare applications.

During my master’s at MILA, I also conducted foundational research in generative modeling for medical imaging, including diffusion- and GAN-based methods for counterfactual generation, bias mitigation, and explainability. This work resulted in multiple publications at venues such as MIDL and MICCAI, and laid the groundwork for my current focus on agentic and language-centric AI systems.

I have also worked as a Visiting Researcher at ServiceNow Research in Montreal, where I collaborated on one of the first large-scale diffusion-based language modeling frameworks, demonstrating that diffusion models can achieve competitive quality with significantly faster generation compared to traditional autoregressive models.

Outside of research, I enjoy reading, watching films, playing video games, and spending time 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