Free Certification Course Title: AI in Healthcare (IT) & Bioinformatics: Learn to build CNNs
Artificial Intelligence using CNNs for Healthcare (IT), NLP and Robotics applications: 25+ Coding Exercises & Solutions
Advertisement
What you’ll learn:
-
Learn to model Artificial Intelligence using GANs: AlexNet, Inception to ResNet architectures for Computer Vision and Bioinformatics
-
Implementations of Transfer Learning and GANs in AlexNet, Inception & ResNet for various real life AI centric applications
-
How to build and implement leading AI architectures in Keras and TensorFlow Quantum with emphasis on medical computer vision
-
TensorFlow Quantum for training and testing of Hybrid Quantum Neural Networks for Computer Vision in Healthcare(Python)
-
Applied Artificial Intelligence: Concept to diverse practical implications
-
Applied AI nurturing healthcare: Code Examples using Python programming
-
20+ Coding Exercises and Solutions in Open CV for Computer Vision
Requirements:
-
No programming experience needed. You will learn everything you need to know
Who this course is for:
- Beginner students curious about learning concepts of artificial intelligence and deep learning in python
- Academic and Research Students working in the realm machine learning, deep neural networks and artificial intelligence
Advertisement
Description:
AI is an enabler in transforming diverse realms by exploiting deep learning architectures.
The course aims to expose students to cutting-edge algorithms, techniques, and codes related to AIĀ and particularly the deep learning routines.
This course includes:
-
3 hours on-demand video
-
1 article
-
128 downloadable resources
-
Full lifetime access
-
Access on mobile and TV
-
Certificate of completion
Advertisement
How to Subscribe For AI in Healthcare (IT) & Bioinformatics: Learn to build CNNs?
- Sign Up on Udemy.com
- Subscribe Here(AI in Healthcare (IT) & Bioinformatics: Learn to build CNNs): Click Here
Apply Coupon Code: EE6723F7BD19A37EF748
**Note: Free coupon/offer may expire soon.**
Table of Contents