How to Install TensorFlow through Anaconda

Last updated on Oct 06 2022
Goutam Joseph

Table of Contents

How to Install TensorFlow through Anaconda

In this blog, we understand that how to install TensorFlow through Conda. Here, we need anaconda Navigator to set-up the platform.

These are the following steps which are given below:

Firstly, we have to open the official site of Anaconda and download Anaconda from the below link: https://www.anaconda.com/distribution/

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anaconda

After that, we have to download Anaconda from below highlighted Python 2.7 version.

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python

It will successfully be downloaded in our system. After that, we have to install Anaconda in our system.

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setup

Click on “Next.”

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next

Click on “I Agree.”

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agree

Again click on “Next.”

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destination

Click on “Next” again.

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register

Click on “Install.”

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install

Click on “Next.”

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complete

Click on “Next.”

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end

Click on “Next.”

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finish

After clicking on “finish.”

It will successfully be installed in our system.

After that, we have to run the given command to set-up the TensorFlow and libraries.

  1. Conda create -n tensorflow pip python.
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tensorflow
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download

Here, we are downloading and installing the essential things which are used in TensorFlow to work.

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working or not

After that, we have to check that TensorFlow is working or not in our system.

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working

So, according to the above screenshot, TensorFlow is successfully working in our system.

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What you will Learn in this Course?

Introduction to Deep Learning and AI

  • What is Deep Learning?
  • Advantage of Deep Learning over Machine learning
  • Real-Life use cases of Deep Learning
  • Review of Machine Learning: Regression, Classification, Clustering, Reinforcement Learning, Underfitting and Overfitting, Optimization
  • Pre-requisites for AI & DL
  • Python Programming Language
  • Installation & IDE

Environment Set Up and Essentials

  • Installation
  • Python – NumPy
  • Python for Data Science and AI
  • Python Language Essentials
  • Python Libraries – Numpy and Pandas
  • Numpy for Mathematical Computing

More Prerequisites for Deep Learning and AI

  • Pandas for Data Analysis
  • Machine Learning Basic Concepts
  • Normalization
  • Data Set
  • Machine Learning Concepts
  • Regression
  • Logistic Regression
  • SVM – Support Vector Machines
  • Decision Trees
  • Python Libraries for Data Science and AI

Introduction to Neural Networks

  • Creating Module
  • Neural Network Equation
  • Sigmoid Function
  • Multi-layered perception
  • Weights, Biases
  • Activation Functions
  • Gradient Decent or Error function
  • Epoch, Forward & backword propagation
  • What is TensorFlow?
  • TensorFlow code-basics
  • Graph Visualization
  • Constants, Placeholders, Variables

Multi-layered Neural Networks

  • Error Back propagation issues
  • Drop outs

Regularization techniques in Deep Learning

Deep Learning Libraries

  • Tensorflow
  • Keras
  • OpenCV
  • SkImage
  • PIL

Building of Simple Neural Network from Scratch from Simple Equation

  • Training the model

Dual Equation Neural Network

  • TensorFlow
  • Predicting Algorithm

Introduction to Keras API

  • Define Keras
  • How to compose Models in Keras
  • Sequential Composition
  • Functional Composition
  • Predefined Neural Network Layers
  • What is Batch Normalization
  • Saving and Loading a model with Keras
  • Customizing the Training Process
  • Using TensorBoard with Keras
  • Use-Case Implementation with Keras

GPU in Deep Learning

  • Introduction to GPUs and how they differ from CPUs
  • Importance of GPUs in training Deep Learning Networks
  • The GPU constituent with simpler core and concurrent hardware
  • Keras Model Saving and Reusing
  • Deploying Keras with TensorBoard

Keras Cat Vs Dog Modelling

  • Activation Functions in Neural Network

Optimization Techniques

  • Some Examples for Neural Network

Convolutional Neural Networks (CNN)

  • Introduction to CNNs
  • CNNs Application
  • Architecture of a CNN
  • Convolution and Pooling layers in a CNN
  • Understanding and Visualizing a CNN

RNN: Recurrent Neural Networks

  • Introduction to RNN Model
  • Application use cases of RNN
  • Modelling sequences
  • Training RNNs with Backpropagation
  • Long Short-Term memory (LSTM)
  • Recursive Neural Tensor Network Theory
  • Recurrent Neural Network Model

Application of Deep Learning in image recognition, NLP and more

Real world projects in recommender systems and others

Got a question for us? Please mention it in the comments section and we will get back to you.

 

 

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