Deep Learning Architecture for Building Artificial Neural Networks

Deep Learning Architecture for Building Artificial Neural Networks

English | MP4 | AVC 1920×1080 | AAC 48KHz 2ch | 1h 42m | 401 MB

An introduction to deep learning and its architectures with real-world use cases

The course starts off with an introduction to Deep Learning and the different tools, hardware, and software before we begin to understand the different training models. We then get to what everyone is talking about: Neural Networks.

Here we understand how Neural Networks work and the benefits they offer for supervised and well as unsupervised learning before building our very own neural network. We will then move on to understanding the different Deep Learning Architectures, including how to set up your architecture and align the output. Finally we take a look at Artificial Neural Networks and understand how to build your own ANN.

Taking this course will help you dive head first into the popular field of deep learning as a career choice or for further learning.

This course will give you an introduction to deep learning and its architectures with real-world use cases and neural networks, while exposing you to Deep Learning architectures. Also covered will be an introduction to Artificial Neural Networks and their implementation with practical sessions.

What You Will Learn

  • Learn how to utilize deep learning models and build business models around them
  • Gain a practical understanding of the architectures required to develop business use cases
  • Align your data science strategy with current and future systems in their respective ecosystem
  • Start to define data science problems and align them to specific business use case
  • Conceptualize process improvements with Deep Learning
  • Visualize leakages in your organization and fix them with deep learning
  • Predict outcomes of processes and propose improvements