I'm a passionate Machine Learning Engineer with 1+ years of experience building ML models, scalable AI solutions, and backend systems. I have a strong foundation in Data Science, MLOps, and Full-Stack Development, seeking opportunities in AI/ML Engineering and Applied Data Science.
- π§ Expertise in Python, C++, JavaScript, Golang, ML Frameworks, DL, & LLMs.
- π» Skilled in Full-Stack Development and Agile Methodologies.
- βοΈ Experienced with MLOps, DevOps, and Cloud Platforms.
- π Working on ML models for DaaS & ETL pipelines with Snowflake/Flask.
- π± Learning advanced ML techniques and MLOps practices.
- π€ Looking to collaborate on challenging SaaS and ML/AI projects.
- π¬ Ask me about Machine Learning, Deep Learning, Data Science, or MLOps.
Developed a custom CNN to classify MRI images from the OASIS dataset into four dementia stages, achieving 99.99% accuracy. |
Built a deep learning model using EfficientNet with advanced data augmentation and hyperparameter tuning to classify MRI scans with 99.5% accuracy. |
Developed a cancer drug sensitivity predictor (RΒ²=99.41%) with XGBoost for IC50 predictions, integrating SHAP for interpretability. |
Built a cardiovascular disease risk predictor using XGBoost (73.66% accuracy, 0.75 precision, 0.69 recall), leveraging key health indicators. Integrated SHAP for explainability. |