All basics of AI for any API developers
Acquire a thorough comprehension of the significance of ethics in the development of AI systems, as well as AI technologies, including generative AI.
Description for All basics of AI for any API developers
Comprehending Artificial Intelligence and Machine Learning: Acquire a fundamental understanding of artificial intelligence, machine learning, and the distinction between structured and unstructured data.
The Function of Neural Networks: Comprehend the necessity and operation of neural networks in artificial intelligence systems.
The Capabilities of Generative AI: Investigate the technology that underpins generative AI and its potential applications in a variety of industries.
Ethics in AI: Discover the process of identifying and eliminating bias in algorithms and data to develop ethical AI systems.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Nelson Dias
Duration: 1h 54m
Schedule: Full lifetime access
Pricing for All basics of AI for any API developers
Use Cases for All basics of AI for any API developers
FAQs for All basics of AI for any API developers
Reviews for All basics of AI for any API developers
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for All basics of AI for any API developers
Featured Tools
The course outlines techniques for establishing a data science environment on Azure and conducting predictive model training and data experimentation.
Begin Your Professional Journey in Self-Driving Vehicles. Be at the vanguard of the autonomous driving industry.
Neural Networks in the Field of Applied Medicine. Discover the most advanced techniques in Deep Learning for Medical Applications.
Become an ethical AI practitioner by developing the ability to identify and resolve ethical challenges in AI and data science initiatives.
Learn about various generative AI models and architectures, the application of LLMs in language processing, and implement NLP preprocessing techniques using libraries and PyTorch.