Skip to content

Introduction to TensorFlow. Basic operators, linear and logistic regression and Tensorboard

Notifications You must be signed in to change notification settings

jaungiers/TensorFlow-Intro

Repository files navigation

Introduction to TensorFlow Basics

The following files give a brief 101 intro to TensorFlow. These files were created together for my Introduction to TensorFlow lecture VIDEO | SLIDES

basic_op.py

This file defines some basic operations, setting of constants, variables and operator nodes. It also introduces building a simple model and running a TensorFlow session to run the model.

linear_regression.py

Here we make a simple linear regression using the murder_rates_data.csv dataset to plot training and testing data on a linear regression. We also add TensorBoard summaries to the code which can then be run using tensorboard --logdir="/logs" Output of Linear Regression

logistic_regression.py

Here we expand on the linear regression model and build a logisitic (softmax) regression for the MNIST dataset. The output also includes a nice visual output from two test cases using matplotlib

Output of Logistic Regression

About

Introduction to TensorFlow. Basic operators, linear and logistic regression and Tensorboard

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages