Generative AI For Dummies (For Dummies (Business & Personal Finance))
Author: Pam Baker (Author)
Publisher finelybook 出版社: For Dummies
Edition 版本: 1st edition
Publication Date 出版日期: 2024-10-15
Language 语言: English
Print Length 页数: 304 pages
ISBN-10: 1394270747
ISBN-13: 9781394270743
Book Description
Book Description
From the Back Cover
Responsibly harness the power of AI
Generative artificial intelligence (GenAI) is transforming life as we know it―one user prompt at a time. This book is your clear and trustworthy introduction to this new technology, offering a straightforward explanation of how the technology works and guidance on which GenAI tools are worth exploring. Get pro tips on writing effective prompts, creating text output, making multimedia content, and using AI to enhance your creativity. You can even integrate AI into your workflow in an ethical and responsible manner, thanks to the strategies inside. What will you generate with generative AI?
Inside…
- Understanding different kinds of generative AI models
- Writing better prompts
- Generating text, images, compositions, audio, and video
- Using AI to refine your work and your creative process
- Busting common AI myths
About the Author
Pam Baker is an award-winning freelance journalist, analyst, and author. Her previous book, ChatGPT For Dummies, was one of the first how-to guides for effective use of the ChatGPT platform. She writes for several media outlets, including The New York Times, CNN, Ars Technica, InformationWeek, and CSO. Baker is also an instructor on GenAI for LinkedIn Learning.
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