About Me
Military Service Completed
Dynamic and innovative engineer specializing in computer vision and deep learning. Adept at applying state-of- the-art techniques such as CNNs, R-CNNs, and GANs to solve complex problems across…
Military Service Completed
Dynamic and innovative engineer specializing in computer vision and deep learning. Adept at applying state-of- the-art techniques such as CNNs, R-CNNs, and GANs to solve complex problems across various domains. Passionate about developing and deploying robust AI models, and translating research into practical applications.
Experience
Machine Learning Engineer
Researched, developed, and implemented state-of-the-art machine learning, Computer vision, and NLP models to solve complex business problems, such as customer churn and predictive maintenance. Worked extensively with CNNs, YOLO, and U-Net architectures to process and analyze large image datasets. Designed and maintained robust data pipelines for preprocessing and training large- scale models. Led the end-to-end machine learning process, from problem identification to deployment, ensuring scalable and effective solutions. Collaborated with cross-functional teams, including engineering, to deploy models in production, improving performance and scalability by 20%. Communicated technical concepts effectively to non-technical stakeholders, helping to drive data-driven decisions across the organization. Optimized and packaged machine learning models for scalable deployment, leveraging Docker and DevOps tools for streamlined production.
Artificial Intelligence Engineer
Developed machine learning models for GIS systems using Python, scikit-learn, and TensorFlow.
Implemented data scraping and wrangling techniques to prepare datasets for model training.
Utilized Jupyter Notebooks for exploratory data analysis and model prototyping.
Collaborated with software developers to integrate ML models into production systems.
Conducted error analysis and developed strategies to improve model performance.
Artificial Intelligence Engineer
Developed machine learning models for GIS systems using Python, scikit-learn, and TensorFlow. Implemented data scraping and wrangling techniques to prepare datasets for model training. Utilized Jupyter Notebooks for exploratory data analysis and model prototyping. Collaborated with software developers to integrate ML models into production systems. Conducted error analysis and developed strategies to improve model performance.
Machine Learning Engineer
Researched, developed, and implemented state-of-the-art machine learning, computer vision, and NLP models to solve complex business problems, such as customer churn and predictive maintenance.
Worked extensively with CNNs, YOLO, and U-Net architectures to process and analyze large image datasets.
Designed and maintained robust data pipelines for preprocessing and training large-scale models.
Led the end-to-end machine learning process, from problem identification to deployment, ensuring scalable and effective solutions.
Collaborated with cross-functional teams, including engineering, to deploy models in production, improving performance and scalability by 20%.
Communicated technical concepts effectively to non-technical stakeholders, helping to drive data-driven decisions across the organization.
Optimized and packaged machine learning models for scalable deployment, leveraging Docker and DevOps tools for streamlined production.