TTAI3012: Deep Learning Essentials Boot Camp

Become an EPIC Affiliate

To view the class schedule you need to become an Affiliate

  • Largest “Guaranteed To Run” public technical training schedules available
  • Easy to become an Affiliate – no charge or fee
Become an EPIC Affiliate

already an Affiliate?  Login

About this Course

Jump Start your Deep Learning journey in our two-day, hands-on Deep Learning Essentials Boot Camp, where you’ll learn to employ deep learning, a potent subset of machine learning that utilizes artificial neural networks to mimic human cognition. This skill will equip you to analyze complex data, make informed predictions, and significantly contribute to your organization’s success.

This comprehensive course covers a broad array of crucial topics. You’ll explore the deep learning environment, become proficient with TensorFlow and Keras, and comprehend the principles of neural networks. You’ll also learn to handle data preprocessing, model tuning, and optimization, as well as model deployment using TensorFlow Serving. As part of the interactive curriculum, 40% of the course is dedicated to hands-on lab work. This experience allows you to apply your newfound knowledge to real-world projects, such as implementing neural networks, enhancing model performance, and deploying trained models on a server.

By the conclusion of this course, you’ll possess a robust foundation in deep learning with Python. You’ll be competent in creating, training, and optimizing deep learning models, and applying these skills to solve data-centric problems within your organization. Under the guidance of an industry expert and with exposure to cutting-edge tools, this course promises to be a valuable stepping-stone in your deep learning journey.

Audience Profile

This intermediate and beyond level course is geared for experienced professionals aiming to apply machine learning and deep learning to solve complex business problems, including product managers, data analysts, data scientists, developers, team leads, and other technical stakeholders who want to leverage deep learning for strategic decisions. It's also suited for those who are in roles that require them to work with data, understand patterns, or make predictions, such as business analysts, software developers, and researchers. Python experience is required.

At Course Completion

This course combines engaging instructor-led presentations and useful demonstrations with valuable hands-on labs and engaging group activities. Throughout the course you’ll learn how to:

· Gain a firm grasp of the fundamentals of deep learning, understanding the theory and math that powers it.

· Get comfortable with Anaconda and Jupyter Notebook, two essential tools in a data scientist's arsenal.

· Understand how to build, train, and deploy neural networks using Python, TensorFlow, and Keras.

· Dive deep into Python and its powerful libraries used for deep learning, becoming proficient in TensorFlow and Keras.

· Learn the art of data preprocessing, a critical skill in preparing data for machine learning models.

· Learn to tune and optimize your deep learning models to ensure they deliver the best performance possible. Uncover the mystery of various optimizers and learn to choose the right one.

· Bonus Content: Exploring GPT and its role in Deep Learning, and applying Generative AI to deep learning

If your team requires different topics, additional skills or a custom approach, our team will collaborate with you to adjust the course to focus on your specific learning objectives and goals.

Outline

1. Introduction to Deep Learning

· Understand the concept and significance of deep learning in modern business.

· Fundamental concepts in deep learning like neurons, layers, weights, bias, and activation functions.

· Real-world use cases of deep learning in business.

2. Setting up Deep Learning Environment

· Understand how to create an effective deep learning environment.

· Basics of Anaconda and Jupyter notebook.

· Lab: Set up a Python environment

3. Introduction to TensorFlow and Keras

· Get an overview of TensorFlow and Keras.

· Learn the process of creating a simple neural network using Keras.

· Lab: Build a basic neural network

4. Fundamentals of Neural Networks

· Understand what neural networks are and how they function.

· Learn about forward propagation and backpropagation in a neural network.

· Lab: Implement a Multi-Layer Perceptron (MLP) on a simple dataset

5. Working with Data in Deep Learning

· Understand the importance of data preprocessing in deep learning.

· Learn how to handle and preprocess different types of data - images, text, etc.

· Lab: Preprocess a dataset for a deep learning task

6. Tuning and Optimizing Deep Learning Models

· Learn about different types of optimizers - SGD, Adam, RMSprop, etc.

· Learn how to save and load trained models.

· Lab: Tune and optimize a neural network model

7. Deploying Deep Learning Models

· Understand how to deploy deep learning models.

· Learn about serving models with TensorFlow Serving.

· Lab: Deploy a trained model

8. Real-world Applications of Deep Learning

· Understand the real-world applications of deep learning.

· Overview of deep learning in healthcare, finance, transportation, and more.

Prerequisites

To ensure a smooth learning experience and maximize the benefits of attending this course, you should have the following prerequisite skills:

· Python programming is required, as the labs revolve around leveraging Python. Basic skills in handling and manipulating data using Python libraries such as NumPy and Pandas would be advantageous.

· Familiarity with concepts such as variables, functions, control flow, and data structures will ensure a smooth learning experience.

· While the course will introduce deep learning from scratch, having a grasp of basic machine learning concepts will be beneficial.

· Some understanding of algebra and basic calculus will be helpful in comprehending the mathematical components of deep learning.

Take Before: Students should have incoming practical skills aligned with those in the course(s) below, or should have attended the following course(s) as a pre-requisite:

· TTML5506-P Machine Learning Essentials with Python (3 days)