Skip to content

azminewasi/azminewasi

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 

Repository files navigation

Hi 👋, I'm Azmine Toushik Wasi


Machine Learning Researcher
(Graph Neural Nets, Medical AI, Human-centric AI & NLP)
Kaggle Grandmaster | Explorer | Looking for research opportunities

website linkedin kaggle google-scholar arxiv twitter ORCID


  • An aspiring AI researcher and engineering student, exploring Graph Neural Networks (GNNs) in Bio-Medical AI, mainly focusing on neuro, biomedical and molecular domains. Along with GNN, my other research interests include Natural Language Processing (NLP) and Human-Centered AI for interdisciplinary works. I am looking forward to pursue a PhD in Fall 2025 to continue research and looking for potential options.
  • I am working on Data Intelligence Lab, HYU, KR. I have founded Computational Intelligence and Operations Lab - CIOL, SUST, BD, to mentor young researchers and bridge the gap between Industrial Engineering and AI. I'm also the 3rd Kaggle Grandmaster of BD.
  • My works has been published in prestigious venues such as LREC-COLING'24, ICLR'24 Tiny Papers Track, Workshops of CHI'24, AAAI'24 and NeurIPS'23, with ongoing reviews in ECCV'24, IEEE TCBB, ACL ARR, ACL-W, among others.
  • Outside research, I have work experience in AI-integrated IT Automation, Project - Product Management and Analytics roles.
  • Passionate about learning new things, sharing my knowledge, improving myself regularly, experimenting with acquired skills and challenging my capabilities. Building all-in-one free AI/ML resources collection here.
  • Serving as reviewer in top ML conferences, workshops and journals like ACL ARR, ICLR, IDC regularly; and program chair in multiple ACL'24 workshops.
  • Actively looking for research opportunities in theoretical or applied GNNs in medical domains (molecular/biomedical/neuroscience).

  • 💠 Graph Neural Networks (GNN): I am exploring Graph Neural Network or Geometric Machine Learning Theories, applying and improving GNN models and resources in Healthcare (Drugs, Proteins and Molecules) DDI, Knowledge Graphs BanglaAutoKG (COLING'24), and Supply Chains SupplyGraph (AAAI'24W).

  • 🧬 Medical AI: In Medical AI, I am working on developing AI systems for Healthcare, mainly focusing on Computational Molecular Biology - Neuroscience, Bioinformatics, Computational Drug Discovery CADGL, and Healthcare Optimization Glucose level control (ICLR'24).

  • 🧑‍💻 Human-Centered AI (HAI): Despite extensive coursework in ergonomics, Human Factors Engineering (HFE), behavior studies, and psychology within our IPE curriculum, there's a notable gap in inter-disciplinary research between IPE and AI. Motivated by this, I am working on integrating HFE AI Ownership, Individuality (CHI'24W), Computational Social Science (CSS) Social Biases (CHI'24W), Fairness and Reliability ARBEx into AI systems, focusing on HAI perspectives of IPE.

  • 📝 Natural Language Processing (NLP): In Natural Language Processing, I am developing Knowledge Graphs (COLING'24) and Bangla Knowledge Systems; motivated by NLP + GNNs. I am also working on inter-disciplinary CSS, Climate, and BioMedNLP Molecules+NLP (ICLR'24).

View All Publications


  • Programming: Python (Advanced), C (For Contests), R, SQL.
  • ML Techniques : Deep Learning, NLP, Graph Neural Networks, GANs.
  • DS & ML Tools (Python) : NumPy, Pandas, Matplotlib, Seaborn, Stats-models, Scikitlearn, Keras, Tensorflow, PyTorch.
  • Data Analysis: MS Excel, SAS, Tableau, Power BI.
  • IT Automation:
    • Automation in MS Word, Powerpoint, Excel, Google Sheets, Adobe Photoshop, Illustrator using Python, built-in toolkits and ML;
    • Photo Manipulations at large scale using OpenCV and Pillow;
    • NLP and CV-based ML models to detect error in textuala and visual contents.
  • Product Development, Project Management, Business Development and Strategic Planning and Analysis.


About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published