Data and AI Fundamentals
The course introduces fundamental AI technologies and applications, while also directing learners toward open-source resources and career opportunities.
Description for Data and AI Fundamentals
Types of AI Technologies: Core AI technologies, such as Natural Language Processing and Machine Learning, are distinguished by their distinctive attributes.
AI Use Cases Across Industries: Provides a comprehensive list of practical applications of AI in a variety of industries, demonstrating its versatility and influence.
Career Opportunities in AI: Emphasizes the potential career paths and opportunities for professionals who are entering the AI field.
Linux Foundation Open Source Projects: Offers a comprehensive overview of the open-source tools for AI and data that the Linux Foundation has developed to facilitate project development and hands-on learning.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by LinuxFoundationX
Duration: 1�2 hours per week approx 10 weeks
Schedule: Flexible
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