Working with TensorFlow
Course Description
The abundance of data and affordable cloud scale has led to an explosion of interest in Deep Learning. Google has released an excellent open-source library called TensorFlow. This library allows for state-of-the-art machine learning at scale with GPU-based acceleration. This course explores algorithms, machine learning, data mining concepts, and how TensorFlow implements them.
Highlights
Join an engaging hands-on learning environment, where you¡ll learn:
- Core Deep Learning and Machine Learning math essentials
- TensorFlow Overview and Basics
- TensorFlow Operations
- Neural Networks With TensorFlow
- Deep Learning With TensorFlow
This course has a 50% hands-on labs to 50% lecture ratio with engaging instruction, demos, group discussions, labs, and project work.
Target Audience
Experienced Developers, Data Scientist, Data Engineer, and others who seek to work with machine learning algorithms, machine learning, and deep learning fundamentals and concepts.
Course Outline
Machine Learning and Deep Learning Overview
- Mathematical Concepts
- ML Overview
- DL Overview
TensorFlow: Overview and Basics
- TensorFlow: What is it? History and Background
- Use cases and Key Applications
- Machine Learning and Deep Learning Basics
- Environment, Configuration Settings and Installation
- TensorFlow Primitives
- Declaring Tensors
- Declaring Placeholders and Variables
- Working with Matrices
- Declaring Operations
- Operations in Computational Graph
- Nested Operations
- Multiple Layers
- Implementing Loss Functions
- Implementing Back Propagation
Machine Learning With TensorFlow
- Linear Regression Review
- Linear Regression Using TensorFlow
- Support Vector Machines (SVM) Review
- SVM using TensorFlow
- Nearest Neighbor Method Review
- Nearest Neighbor Method using TensorFlow
Neural Networks With TensorFlow
- Neural Networks Review
- Optimization and Operational Gates
- Working with Activation Functions
- Implementing One-Layer Neural Network
- Implementing Different Layers
- Implementing Multilayer Neural Networks
Deep Neural Networks With TensorFlow
- Models and Overview
- Convolutional Neural Network Overview and Implementation
- CNN Architecture
- Recurrent Neural Network Overview and Implementation
- RNN Architecture
Additional Topics
- TensorFlow Extensions
- Scikit Flow
- TFLearn
- TF-Slim
- TensorLayer
- Keras
- Unit Testing
- Taking your implementation to production
Prerequisites
Before attending this course, you should have:
- Strong Python Skills
- Strong foundational mathematics in Linear Algebra and Probability; Matrix Transformation, Regressions, Standard Deviation, Statistics, Classification, etc.
- Basic knowledge of machine learning and deep learning algorithms
ALL ACCESS PASS FROM
$3,995
per license
Sign Up for All Access Pass and gain 12-month access up to 300+ Live instructor-led courses.
BUY NOWUpcoming Courses
Contact us to book a training.
We can plan a specific customized training session tailored to you or your organization's requirements,
or we can sign up several students for a future class.
We’re Ready Lets Talk
Do You Have More Questions? We're delighted to assist you!