ML and DL in Medical Data Analytics and Healthcare Applications
The School of Computing Science Engineering and Artificial Intelligence (SCAI) has planned to organize a Two-day National level Workshop on “Machine Learning and Deep Learning in Medical Data Analytics and Healthcare Applications” from 10 – 11 October 2024 for Faculty, Research scholars and students both Internal and external participants through virtual mode.
Download Brochure ⇓
Resource persons:
Dr. Surendiran B, NIT, Puducherry.
Dr. Malaya Kumar Nath, NIT, Puducherry.
Dr. Senthil Kumar T, Amrita University, Coimbatore.
Dr. Kannimuthu S, Karpagam College of Engineering, Coimbatore.
Topics to be covered
- Data collection approaches from several sources for Machine Learning and Deep Learning models
- Machine Learning and Deep Learning models for Disease classification and prediction using images
- Recent Trends and Advancements in Healthcare Image Analytics
- Current and Future Impacts of Pandemics and Risk Mitigation in Healthcare
- Fundamentals of ML and DL in the context of the Healthcare domain
- Data collection approaches from several sources and how to use them in ML/DL models
- ML and DL models for Disease classification and prediction using images
- Recent Trends and Advancements in Healthcare Image Analytics
- Current and Future Impacts of Pandemics and Risk Mitigation in Healthcare
- Identification of heart defects from ECG signal using Explainable AI
Co-ordinator:
Dr. Komarasamy G, Senior Associate Professor, SCAI, VIT Bhopal University, Bhopal.
Dr. Jothiaruna N, Assistant Professor, SCAI, VIT Bhopal University, Bhopal.
Registration details:
Registration Fee External (Faculty / Student): Rs 300
Registration Fee VIT (Faculty / Student) : Rs 100
Account details for payment
After successful payment, submit the registration form:
https://forms.gle/dgBE7wKcTs5rTygh9
Last date for applying: 3rd October 2024
Registration confirmation: 4th October 2024
Benefits of attending the workshop
- Collaborate on projects and research initiatives.
- Access to workshop materials, resources, and tools.
- Opportunities for research publication and presentation.
- Insight into regulatory and ethical considerations.
- Potential for startup or entrepreneurship opportunities.
- Develop expertise in a rapidly growing field.
- Develop predictive models for patient outcomes and disease risk.
- Implement AI-driven solutions for healthcare challenges.