- Promoted by: Anonymous
- Platform: Udemy
- Category: Other IT & Software
- Language: English
- Instructor: Massimiliano Sorrentino
- Duration: 6 hour(s) 30 minute(s)
- Student(s): 1,285
- Rate 4.9 Of 5 From 28 Votes
- Expires on: 2025/07/10
-
Price:
43.990
Learn to do machine learning in the field of artificial intelligence with Python!
Unlock your potential with a Free coupon code
for the "Machine learning and AI" course by Massimiliano Sorrentino on Udemy.
This course, boasting a 4.9-star rating from 28 reviews
and with 1,285 enrolled students, provides comprehensive training in Other IT & Software.
Spanning approximately
6 hour(s)
30 minute(s)
, this course is delivered in English
and we updated the information on July 07, 2025.
To get your free access, find the coupon code at the end of this article. Happy learning!
This machine learning course provides a comprehensive introduction to the core concepts underpinning modern artificial intelligence. We begin with a foundational understanding of linear algebra, exploring vectors, matrices, and their crucial role in representing and manipulating data within machine learning models.
Building on this mathematical base, we delve into the optimization process, focusing on gradient descent. This essential algorithm allows us to iteratively refine model parameters, minimizing errors and maximizing accuracy. We examine how gradient descent functions in practice, including the efficiency gains achieved through mini-batch processing, which divides large datasets into manageable subsets for faster training.
The course then transitions to the fundamental building blocks of neural networks: artificial neurons. We explore how these simplified models mimic biological neurons, processing inputs through weighted sums and activation functions. We discuss the concept of activation thresholds and synaptic strengths, drawing parallels to biological processes.
Finally, we assemble these individual neurons into interconnected neural networks. We examine how these networks learn complex patterns through backpropagation and weight adjustments, enabling them to perform tasks like image recognition and data classification. Throughout the course, we emphasize practical application, ensuring students grasp both the theoretical underpinnings and the real-world implications of machine learning. Have a nice learning time.