Photo Credit: Pexels
Deep Learning Specialization
Photo Credit: Pexels
A number of topics are covered in this course, including evaluating Deep Learning models, validating the models, customizing them, utilizing APIs and more
Photo Credit: Pexels
Machine Learning with Python
Photo Credit: Pexels
It is a beginner’s course that focuses on fundamental machine-learning algorithms. This course will help enhance your understanding of machine learning.
Photo Credit: Pexels
Reinforcement Learning
Photo Credit: Pexels
This course focuses on the process of teaching computers to make decisions based on the information they are getting from their near environment.
Photo Credit: Pexels
Deep Learning and Artificial Intelligence
Photo Credit: Pexels
This course teaches students how computers process data just like a human brain. This course will give you exposure to various projects.
Photo Credit: Pexels
Deep Learning and NLP Projects
Photo Credit: Pexels
It covers the concepts of Deep Learning and Natural Language Processing (NLP). it teaches how to develop smart applications.
Photo Credit: Pexels
Coursera
Photo Credit: Pexels
It is the best app for beginners and experts to master deep learning. It covers theoretical concepts and their industry applications using Python and TensorFlow
Photo Credit: Pexels
Fast.ai
Photo Credit: Pexels
It provides many learning videos, homework assignments, study notes, and a discussion board for vast deep-learning courses.
Photo Credit: Pexels
edX
Photo Credit: Pexels
It offers a number of deep learning courses from deemed universities. It also offers Microsoft’s Deep Learning and IBM’s Deep Learning certification course.
Photo Credit: Pexels
Udacity
Photo Credit: Pexels
It provides job-ready deep learning and machine learning courses in collaboration with AWS.
Post Disclaimer
The information provided in our posts or blogs are for educational and informative purposes only. We do not guarantee the accuracy, completeness or suitability of the information. We do not provide financial or investment advice. Readers should always seek professional advice before making any financial or investment decisions based on the information provided in our content. We will not be held responsible for any losses, damages or consequences that may arise from relying on the information provided in our content.