Utathya Aich

Utathya Aich

Software Developer – ML  ·  CNH Industrial, Gurgaon  ·  Independent Researcher

I work at the intersections of multimodal learning, clinical AI, and language reasoning. My research focuses on systems that fuse vision, text, and structured knowledge — with an emphasis on reliability, hallucination mitigation, and deployment under limited supervision. I collaborate with researchers at Jadavpur University, University of Liverpool, IIIT Bangalore, ISI Kolkata, and the University of South Carolina.

Prospective PhD Student  ·  Looking for research opportunities in multimodal AI, clinical AI, and language reasoning.

Open for Collaboration  ·  Happy to collaborate on high-impact projects, papers, and challenge benchmarks.

Research Statement

My research addresses a central challenge in AI deployment: building systems that are reliable, grounded, and interpretable when operating across heterogeneous data modalities. I am particularly interested in how vision, language, and structured knowledge can be jointly leveraged to solve high-stakes problems in clinical AI and document intelligence.

A recurring theme in my work is low-supervision learning — designing models that remain effective when labeled data is scarce or expensive. I explore this through semi-supervised encoders, retrieval-augmented generation, and knowledge-graph reasoning pipelines that reduce dependence on large annotated datasets.

Going forward, I aim to deepen my focus on hallucination mitigation in multi-agent LLM systems and extend my clinical AI work to longitudinal patient data, bridging the gap between AI research and real-world medical deployment.

Research Interests

Multimodal Learning Vision–Language Models Clinical AI Retrieval-Augmented Generation Hallucination Mitigation Medical Image Segmentation Document Intelligence Knowledge Graphs Efficient Fine-Tuning Semi-Supervised Learning EEG & Neurological AI

Publications by Year

Who Guided Me

Professors I worked under, with corresponding paper references.

Mentorships

Mentored students and what they are doing now, with co-authored paper references.

Academic Services

Journal Reviewing

Reviewer for journals and transactions in AI, medical imaging, and document intelligence.

Conference Program Committees

Program committee and reviewer support for leading AI/ML conferences and workshops.

Challenge Organization

Co-organizing benchmark-driven competitions in clinical imaging and multimodal reasoning.

Student Mentorship

Mentoring UG/PG researchers on publication-ready projects and research communication.

Awards

2026

Outstanding Reviewer Recognition

Recognized for high-quality and timely reviewing contributions in AI venues.

2025

Research Excellence Distinction

Awarded for impactful contributions to multimodal and clinical AI research.

2024

Best Project / Innovation Mention

Honored for translating research ideas into deployable AI systems.

2023

Academic Merit Recognition

Recognized for early research contributions and collaborative publications.

Hobbies

Long-Distance Running

Building consistency and endurance through regular runs and interval sessions.

Technical Writing

Writing research notes, implementation breakdowns, and explainers for complex AI ideas.

Reading Biographies

Exploring books on scientists, innovators, and founders to learn decision patterns.

Badminton

Playing for focus and reflex training, usually in doubles format on weekends.