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
Pricing for Data and AI Fundamentals
Use Cases for Data and AI Fundamentals
FAQs for Data and AI Fundamentals
Reviews for Data and AI Fundamentals
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Data and AI Fundamentals
Featured Tools
By learning how to analyze health data and sequence genomes using AI, this course equips students with the tools they need to contribute to medical research.
An overview of machine learning for business applications is provided in this course, which instructs participants on the development and utilization of ML models with BigQuery.
Clouds, distributed systems, and networking. Acquire knowledge and develop distributed and networked systems for large data and clouds.
Learn Python, analyze and visualize data, and apply your skills to data science and machine learning with a practical assignment to acquire hands-on skills for a career in data science.
Gain a comprehensive understanding of AI applications, concepts, technological progression, software architecture, and deployment considerations across various environments.