In this course, delve into the profound impact of generative artificial intelligence (AI) on society, the workforce, organizations, and the environment. Gain a comprehensive understanding of the ethical, economic, and social implications of generative AI and how it can be used responsibly.
Throughout the course, you'll explore ethical concerns such as data privacy, biases, copyright infringement, and deepfakes, while also considering responsible use and broader implications on transparency, accountability, privacy, and safety. Moreover, you will learn about the socioeconomic impacts of generative AI through real-life scenarios and insights from industry practitioners.
Certificate Available ✔
Get Started / More InfoGenerative AI: Impact, Considerations, and Ethical Issues comprises comprehensive modules covering the limitations, ethical issues, economic and social impact, responsible use considerations, and ethical implications in different domains. Gain valuable insights and practical knowledge through engaging lessons and hands-on labs.
Delve into the limitations and ethical issues surrounding generative AI, including concerns about biases, data privacy, copyright infringement, and the creation of deepfakes. Explore real-life examples and complete hands-on labs to understand the considerations for responsible use of generative AI.
Explore the economic and social impact of generative AI, including considerations for responsible AI usage. Gain insights into how generative AI influences corporate social responsibility, mental health, and its ethical implications in different domains. Engage with interactive quizzes and a project to solidify your understanding.
Gain a comprehensive understanding of the ethical, economic, and social implications of generative AI. Identify the misuses related to generative AI, including deepfakes. Explore the considerations for the responsible use of generative AI and the broader implications on transparency, accountability, privacy, and safety. Finally, learn about the socioeconomic impacts of generative AI through real-life scenarios and insights from industry practitioners.
Microsoft Azure Developer Associate (AZ-204) course equips developers with the skills to create end-to-end solutions in Microsoft Azure, covering compute solutions,...
Train and deploy a multiclass neural network on Azure ML Studio to recognize handwritten digits. Create a Python web app to query the Azure web service API for deep...
Introduction to PyMC3 for Bayesian Modeling and Inference provides comprehensive instruction on using PyMC3 for scalable Bayesian modeling and inference, led by...
Réseaux neuronaux et Deep Learning est un cours complet qui vous initie aux bases du Deep Learning. Apprenez à développer, entraîner et utiliser des réseaux...