AI & ML in Healthcare An Introduction
Explore the intersection of healthcare, AI, and machine learning to acquire a deeper understanding of the practical applications and ethical implications of these technologies in enhancing patient care.
Description for AI & ML in Healthcare An Introduction
Importance of Data Management: Describes the reasons why AI applications rely on effective data management.
Data Requirements for AI: Provides a comprehensive list of the data types that are necessary for AI applications.
Data Extraction and Querying: Demonstrates the process of extracting and querying data from databases using SQL.
Data Visualization: Demonstrates the utilization of the Seaborn library to enhance the understanding of data.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by MGH_Institute
Duration: 2�4 hours per week approx 5 weeks
Schedule: Flexible
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