I am an M.S. Data Science researcher at Fordham University, where I work as a Graduate Research Assistant in the Educational Data Mining Lab and as a Teaching Assistant for graduate Machine Learning courses.
My research focuses on flow and diffusion models, multimodal learning, and causal interpretability. I study how score-based and flow-matching generative models behave in structured latent spaces, asking questions like: how does energy evolve during a diffusion trajectory, when does classifier-free guidance hurt high-resolution quality, and can a causal graph over modalities make multimodal predictions explainable? My current work (Affect-Diff) couples a VAE over text/audio/video with a conditional 1D diffusion U-Net and a Gumbel-Softmax causal attention graph, targeting emotion recognition with counterfactual explainability. I have authored three preprints on arXiv covering energy dynamics in diffusion sampling (RectifiedHR), training-free local style control in SDXL (Local Prompt Adaptation), and a systematic negative-result study of DINO feature reuse for few-shot NeRF (NeRF Few-Shot).
Before Fordham, I was an Associate Data Consultant at Decision Foundry (Bangalore) and an undergraduate researcher at Jain University, where I worked on medical image segmentation and multiclass skin lesion classification. I am actively looking for research internships, gen ai/ ml research jobs and Ph.D. positions in generative modeling, multimodal AI, and representation learning.
M.S. Data Science, Fordham University · New York, NY
| Aug 2025 – Present |
Teaching Assistant
Fordham University, New York, NY
Graduate courses: Data Mining (Fall 2025) and Machine Learning for Finance (Spring 2026). Weekly office hours, 1:1 research mentoring, and guest lectures.
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| Aug 2024 – Present |
Graduate Research Assistant
Fordham University, Educational Data Mining Lab, New York, NY
Leading the MAESTRO project; exploring few-shot 2D-to-3D reconstruction on medical imaging data (OASIS dataset) using efficient neural representations.
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| Jan 2023 – Jul 2024 |
Associate Data Consultant
Decision Foundry, Bangalore, India
Designed ETL workflows (DBT, Tableau Prep), optimized SQL on Amazon Redshift (40% faster retrieval on 1 TB+ datasets), delivered 25+ Tableau / Salesforce CRMA dashboards.
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| Jan 2022 – Jul 2023 |
Undergraduate Research Assistant
Jain University, Bangalore, India
Deep learning pipelines for medical imaging; published work on toxic language detection and multiclass skin lesion classification (85% validation accuracy).
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| 2024 – Present |
M.S. Data Science
Fordham University, New York, NY
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| 2019 – 2023 |
B.Tech Computer Science
Jain University, Bangalore, India
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