Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Coursera Project Network

CNNs with TensorFlow: Basics of Machine Learning

Coursera Project Network via Coursera

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
In this 90-min long project-based course you will learn how to use Tensorflow to construct neural network models. Specifically, we will design, execute, and evaluate a neural network model to help a retail company with their marketing campaign by classifying images of clothing items into 10 different categories. Throughout this course, you will learn how to use Tensorflow to build and analyze neural neural networks that can perform multi-label classification for applications in image recognition. You will also be able to identify and adapt the main components of neural networks as well as evaluate the performance of different models and implement measures to improve their accuracy. At the end of the project, you will be able to design and implement convolutional neural networks helping a retail store with their targeted ad campaign, and the models can be easily adapted for self-driving cars, computer-assisted medical diagnosis, etc. This course is aimed at learners who want to get started with the design and implementation of neural networks with an intuitive and effective approach thanks to the Tensorflow library. Computer users with experience with programming in Python should be able to complete the project successfully.

Syllabus

  • Project Overview
    • In this project-based course you will learn how to use Tensorflow to construct neural network models. Specifically, we will design, execute, and evaluate a neural network model to help a retail company with their marketing campaign by classifying images of clothing items into 10 different categories. Throughout this course, you will learn how to use Tensorflow to build and analyze neural neural networks that can perform multi-label classification for applications in image recognition. You will also be able to identify and adapt the main components of neural networks as well as evaluate the performance of different models and implement measures to improve their accuracy. At the end of the project, you will be able to design and implement convolutional neural networks helping a retail store with their targeted ad campaign, and the models can be easily adapted for self-driving cars, computer-assisted medical diagnosis, etc. This course is aimed at learners who want to get started with the design and implementation of neural networks with an intuitive and effective approach thanks to the Tensorflow library. Basic familiarity with the Python programming language is required. Among the skills needed to complete this project are: importing libraries, defining variables, arrays, functions, and classes, as well as creating plots using the matplotlib library. Basic familiarity with mathematical vectors and matrices is also required. Computer users with programming experience in Python should be able to complete the project successfully.

Taught by

César Arturo Garza Garza

Reviews

Start your review of CNNs with TensorFlow: Basics of Machine Learning

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.