Generative Ai: Build a Strong Foundation in Machine Learning (A Step-by-step Understanding of Fundamental Concepts With Practical Applications) #868250

di Thomas Gobeil

Akshat Akshat

(Ancora nessuna recensione) Scrivi una recensione
2,99€

Leggi l'anteprima

Are you curious about the potential of generative ai to impact your career and everyday life, but unsure where to start?
Do complex ai platforms and ethical worries feel like barriers to unlocking this exciting technology?
Many tech enthusiasts, students, and professionals face these very questions every day, but your path to demystifying ai begins here.
Generative ai: beginners guide offers a step-by-step roadmap to understanding and applying ai for strategic advantage, ethical deployment, and practical integration in your life and work environments.

Here's what's waiting inside:
  • Unlock the secrets of generative ai – find the answers you were looking for and debunk the myths that might be holding you back
  • A deep dive into top ai platforms such as chatgpt, gemini, claude, perplexity and bard – explained in a way anyone can understand
  • How to make money online with your own ai business – tips, tricks, and strategies
  • Explanation of the 'do's and don'ts' of ai
  • Comprehensive walkthroughs and prompts for using ai in real-life scenarios such as writing and editing.
  • Practical use-cases and real-life examples to inspire you
  • Overview of top online resources for learning and mastering generative ai
Are you a forward-thinking business leader, striving to stay ahead in this fast-paced digital era?
Are you intrigued by the unlimited potential of artificial intelligence but overwhelmed by its intricacies?
Do ethical considerations and complexities of ai deployment leave you bewildered and hesitant?
Aggiunta al carrello in corso… L'articolo è stato aggiunto

Con l'acquisto di libri digitali il download è immediato: non ci sono costi di spedizione

Altre informazioni:

ISBN:
9798894582320
Formato:
ebook
Editore:
Akshat Akshat
Anno di pubblicazione:
2025
Dimensione:
634 KB
Protezione:
watermark
Lingua:
Inglese
Autori:
Thomas Gobeil