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Basic Image Classification with TensorFlow 

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Basic Image Classification with TensorFlow
 at 
Coursera 
Overview

Fundamentals of Image Classification Using TensorFlow: A Beginner's Guide

Duration

2 hours

Mode of learning

Online

Difficulty level

Beginner

Official Website

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Credential

Certificate

Basic Image Classification with TensorFlow
 at 
Coursera 
Highlights

  • Hands-on Learning
  • Expert Guidance
  • Guided Project
Details Icon

Basic Image Classification with TensorFlow
 at 
Coursera 
Course details

What are the course deliverables?
  • Create, train and evaluate a neural network in TensorFlow
  • Understand the basics of neural networks
  • Solve classification problems with neural networks
More about this course
  • In this course, you'll master Keras with TensorFlow, tackling image classification. You'll craft, train, and assess a top-notch Neural Network model for accurate hand-written digit predictions.
  • Gain expertise in neural networks, TensorFlow, and Keras. Ideal for North American learners, with plans to expand globally for a broader audience.

Basic Image Classification with TensorFlow
 at 
Coursera 
Curriculum

Encode the labels

Understand neural networks

Preprocess image examples

Create a neural network model

Train the model to fit the dataset

Evaluate the model

Visualize the predictions

Faculty Icon

Basic Image Classification with TensorFlow
 at 
Coursera 
Faculty details

Amit Yadav
Amit is a Machine Learning Engineer with an interest in building machine learning products. He has led a number of machine learning projects at different companies - ranging from startups to large multinational corporations.

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Basic Image Classification with TensorFlow
 at 
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