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Suman Kumari

NUST · 2026
Email
sumankumarpunshi@gmail.com
Phone
923145198558
LinkedIn
https://www.linkedin.com/in/suman-kumari-591b0124b/
GitHub

Academic

Program
BS Computer Science
CGPA
3.74
Year
2026
Education
School of Electrical Engineering and Computer Science
Address
Islamabad, Pakistan
DOB

Career

Current role
Target role
Skills
Python, C/C++, Java, Latex, Deep Learning, Machine Vision, Intelligent Systems, 1D-CNN, Probabilistic Deep Learning, Continual Learning, Bayesian Models, EEG, ECG, Mass Spectra, BERT, Single Cell Omics
Interests / quote
My research focuses on applying deep learning to understand and predict complex biological phenomena. I am particularly interested in modeling high-dimensional biomedical data, such as sequencing and -omics data, physiological signals (EEG, ECG), and biophysical signals (e.g., mass spectra), to uncover mechanisms behind cell behaviour, identify biomarkers, and guide drug discovery. Ultimately, my goal is to leverage deep learning to tackle fundamental problems in biology and neuroscience.

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Suman Kumari
Cell: 923145198558 |  Email: sumankumarpunshi@gmail.com
LinkedIn: https://www.linkedin.com/in/suman-kumari-591b0124b/
Address: HOUSE NO.498, NEAR: POLICE STATION, MIRPUR GHOTKIMATHELO, DISTRICT: (SINDH) , Islamabad , Pakistan
PROFESSIONAL PROFILE
My research focuses on applying deep learning to understand and predict complex biological phenomena. I am
particularly interested in modeling high-dimensional biomedical data, such as sequencing and -omics data,
physiological signals (EEG, ECG), and biophysical signals (e.g., mass spectra), to uncover mechanisms behind
cell behaviour, identify biomarkers, and guide drug discovery. Ultimately, my goal is to leverage deep learning
to tackle fundamental problems in biology and neuroscience.
EDUCATION
BS Computer Science
School of Electrical Engineering and Computer Science , Islamabad , 3.74 (2026)
INTERNSHIP EXPERIENCE
Machine Vision and Intelligent Systems Lab
01-Jun-2025 - 22-May-2026
1. Working under Dr. Moazam Fraz and Dr. Naseer Bajwa on project ”Transforming Clinical Decision-Making: Predicting
Antimicrobial Resistance from MALDI-TOF Data”. 2. Preprocessed and performed binning on more than 300,000 mass spectra. 3.
Trained and evaluated multi-label species-specific 1D-CNN models on diverse species–antibiotic pairs, achieving AUPRC scores
between 0.7 and 0.9 through cross-site validation and fine-tuning on external datasets, outperforming baseline methods. 4. Extended
the species-specific models to a single unified multi-modal model by combining the spectra and drug embeddings. 5. Reviewed
research papers and documentations to learn Probabilistic Deep Learning and Continual Learning for application in the project. 6.
Extended single model to bayesian model to estimate epistemic uncertainty. 7. Manuscript for these results is under preparation. 8.
Extending the current work to training under continual learning paradigms and exploring strategies like replay buffer, elastic weight
consolidation to adapt to evolving bacteria without catastrophic forgetting.
MITACS Globalink Research Internship | York University, Toronto, Canada
08-Jun-2026 - 31-Aug-2026
Selected for Research Project: Foundational Models for Single Cell Omics: Adapting BERT for Contextual Biological Data Analysis
Supervisor: Dr. Kaiqiong Zhao
China Pakistan Intelligent Systems Lab
25-Jul-2024 - 15-Jan-2026
Worked under Dr. Seemab Latif and Ms. Iram Tariq Bhatti on EEG-based Auditory Attention Detection; achieved 4th place out of 43
international teams in the ICASSP 2026 EEG Auditory Attention Decoding (AAD) Challenge.
FINAL YEAR PROJECT
Transforming Clinical Decision-Making: Predicting Antimicrobial Resistance from MALDI-TOF Data
Developing deep learning models for antimicrobial resistance prediction from bacterial mass spectrometry data, with uncertainty
quantification and continual adaptation to emerging data.
TECHNICAL EXPERTISE
Languages
Python, C/C++, Java, Latex

AI enrichment

Suman Kumari is a BS Computer Science student with a 3.74 CGPA, specializing in deep learning applications for biomedical data analysis. She has gained research experience in machine vision and intelligent systems, achieving notable results in international challenges and developing models for antimicrobial resistance prediction.
Skills (AI)
["Python", "Deep Learning", "1D-CNN", "Multi-modal Models", "Bayesian Deep Learning", "Continual Learning", "EEG Signal Processing", "Mass Spectrometry Data Analysis", "C/C++", "Java", "LaTeX"]
Status: ai_done
Provenance
Source file: SEECS - Computer Science-2026.pdf
From job #258 page 115
Created: 1778167261