Description for Ethical AI for Students
AI Terminology and Concepts: Comprehend frequently utilized AI terminology and identify AI-generated content.
Ethical Utilization of GenAI: Acquire ethical methodologies for employing GenAI in professional and academic environments.
Bias and Citation Awareness: Recognize the ramifications of biased AI information and the appropriate methods for citing AI utilization.
Policy and Upcoming Developments: Examine how use guidelines vary throughout policies and consider possible developments in artificial intelligence.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by AdelaideX
Duration: 1�2 hours per week 4 weeks (approximately)
Schedule: Flexible
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