Building Deep Learning Models with TensorFlow

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Course Features

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Duration

13 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

13 hours

Course Description

Most of the data in the world are unlabeled or unstructured. Deep neural networks are unable to capture the relevant structure, such as images, sounds, and textual data. These types of data are best suited for deep networks, which can discover hidden structures. This course will teach you how to use TensorFlow library for deep learning on different data types to solve real-world problems.

Learning Outcomes TensorFlow is used for classification, regression, classification, and minimization error functions. Learn about the different types of Deep Architectures such as Convolutional, Recurrent, and Autoencoders. TensorFlow is used to adjust the biases and weights of the Neural Networks being trained.

Course Overview

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Skills You Will Gain

What You Will Learn

You will learn about TensorFlow, and use it to create Linear and Logistic Regression models

Fundamentals of Deep Learning

You will learn about about Convolutional Neural Networks, and the building blocks of a convolutional neural network, such as convolution and feature learning

You will learn about the recurrent neural network model

You will learn about the applications of unsupervised learning

Course Instructors

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Samaya Madhavan

Advisory Software Engineer

Samaya Madhavan is an Advisory Software Engineer with IBM where she currently publishes content that are related to machine learning and deep learning. She is also a full stack software developer, ex...
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JEREMY NILMEIER

Data Scientist and Developer Advocate

JEREMY NILMEIER is the instructor for this course
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Romeo Kienzler

Chief Data Scientist, Course Lead

Romeo Kienzler holds a M. Sc. (ETH) in Information Systems, Bioinformatics & Applied Statistics (Swiss Federal Institute of Technology). He has nearly two decades of experience in Software Enineering...
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Alex Aklson

Ph.D., Data Scientist

Alex Aklson, Ph.D., is a data scientist in the Digital Business Group at IBM Canada. Alex has been intensively involved in many exciting data science projects such as designing a smart system that co...

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