Srijit Mukherjee

Associate Consultant

State College, Pennsylvania, United States3 yrs 9 mos experience
AI ML PractitionerAI Enabled

Key Highlights

  • Developed state-of-the-art AI frameworks for healthcare.
  • Mentored Master's students on advanced AI solutions.
  • Expert in bridging AI with biomedical applications.
Stackforce AI infers this person is a Biomedical AI expert with a strong focus on healthcare applications.

Contact

Skills

Core Skills

Artificial Intelligence (ai)Computer Vision

Other Skills

Deep LearningMathematicsStatisticsMachine LearningTeachingResearchProbabilityData ScienceComputer ProgrammingStart-up LeadershipContent DevelopmentStart-ups ManagementFinanceBusiness OwnershipTeam Management

About

(I am actively looking for a Summer/Fall 26 Internship in Biomedical AI! - Find my CV below) - Hey |ʘ‿ʘ)╯, I’m Srijit, a 4th-year Ph.D. student in the Department of EECS at Penn State (contact: szm6596@psu.edu), collaborating with doctors and biomedical engineers at Harvard and Yale to develop interpretable AI systems for biomedical imaging and disease detection. Before Penn State, I completed my undergraduate and graduate studies in Statistics at the Indian Statistical Institute, Kolkata. My research lies at the intersection of AI, domain knowledge, and scientific interpretability. I design domain-enriched, interpretable AI systems, embedding expert knowledge directly into data acquisition, model design, and regularization. This not only enhances accuracy but also creates robust, low-data, and explainable AI solutions that bridge the gap between algorithms and real-world science. I thrive in collaborative environments because I genuinely enjoy winning as a team. During my Ph.D., I’ve been mentoring two Master’s students: Utkarsh and Yuchen on AI solutions for Volumetric Analysis in Hydrocephalus (now graduated) and Disease Grading in Inflammatory Bowel Disease (IBD), respectively. At a deeper level, I’m fascinated by how the mind, information, and intelligence express themselves through the language of mathematics and engineering. I love learning across domains and solving problems from first principles. I also find finance deeply intriguing, perhaps because it’s a dance of psychology, probability, and unpredictability, which are the things I believe align the most with how the world works around us. Since my school days, I’ve followed what I call a “First Principles + System Principles” approach: breaking problems down to their fundamentals, then rebuilding them within context. This mindset shapes how I prove, debug, and optimize, ensuring that nothing is missed and everything connects. This has been the only guiding principle to how I learn myself, how I solve problems, how I build projects, and how I teach concepts to my students. The simple way to implement this is to ask questions (why, how, what), break down a concept till you reach what you know (not memorize!), and then build it up again to the top from scratch. It is equivalent to creating a knowledge tree, and then doing a traversal from leaves to parents, and vice-versa. This gives me immense freedom from a huge memory load. Thanks for stopping by! Feel free to reach out. I am very sparsely available on LinkedIn. Please email me at szm6596@psu.edu if you want to get in touch with me.

Experience

3 yrs 9 mos
Total Experience
3 yrs 9 mos
Average Tenure
3 yrs 9 mos
Current Experience

Penn state university

Research Assistant

Aug 2022Present · 3 yrs 9 mos · United States

  • Advisors: Prof. Vishal Monga (Penn State), Prof. Steven Schiff (Yale)
  • Developing an interpretable AI framework for histopathological analysis of Inflammatory Bowel Disease (IBD) - Integrating a Residual Network with Attention-based Pooling for robust feature extraction, followed by an Ordinal Regression head for disease grading.
  • Interpretability is embedded directly into the model architecture across multiple feature levels, complemented by Class Activation Maps (CAMs) for post-hoc explainability and visual insight.
  • Developed EnSegNet-Cross, an innovative AI framework by integrating disease-aware enhancement and cross-modal CT-guided topological learning with Meta's Segment Anything Model (SAM) to enable robust hydrocephalic brain volume estimation from low-field MRI
  • Achieved state-of-the-art Dice (0.85) and Volume (0.93) scores, delivering an interpretable and clinically meaningful solution for pediatric hydrocephalus
  • Developed GLAPAL-H: a novel Global, Local, And Parts Aware Learner for hydrocephalus diagnosis using LF-MRI
  • Achieved 87.11% accuracy for Two-Class and 90.19% for Three-Class problems, outperforming state-of-the-art while demonstrating robustness with only 40% of training data
  • Designed a multi-task architecture utilizing global, local, and parts segmentation branches guided by distinct regularized loss functions to capture holistic and fine-detailed features
  • Offered enhanced interpretability through Class Activation Maps that pinpoint infection-activating regions for valuable clinical understanding
Artificial Intelligence (AI)Computer Vision

Mdrk consulting

Research Assistant

Jan 2022Jul 2022 · 6 mos

  • Advisor: Prof. Diganta Mukherjee
  • Reviewed ad fraud types (Spoofed Attribution, Spoofed Users) and applied detection strategies like timestamp filtering and distribution analysis
  • Developed a probabilistic model with multivariate normal distribution and applied Mahalanobis Distance and kernel density estimation to detect outliers in installation, impression, and spoofing data
  • Identified 0.2% of the dataset as severe spoofing outliers, with 3.8% indicating broader fraud risks

Education

Penn State University

Doctor of Philosophy - PhD — Electrical and Electronics Engineering

Aug 2022May 2026

Indian Statistical Institute, Kolkata

Master's degree (M.Stat) — Mathematics and Statistics

Jan 2019Jan 2021

Indian Statistical Institute, Kolkata

Bachelor of Science (B.Stat) — Mathematics and Statistics

Jan 2016Jan 2019

South Point High School, Kolkata

Jan 2002Jan 2016

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