A tensorflow model that predicts if the image is of a cat or of a dog.

Overview

Quick intro

Hello and thank you for your interest in my project! This is the backend part of a two-repo application. The other part can be found here

Prerequisites

In order to run this app, you will need Anaconda installed on your machine. You will also need a Chrome extension (download here) to run the project, since there were some problems in sending/receiving requests between two applications that run on localhost.

How to run the project

Install the dependencies (navigate to the downloaded project, where the environment.yml is):

conda env create -f environment.yml

Activate anaconda environment:

conda activate tensorflowGPU

Run the flask server:

python main.py

Navigate to http://localhost:5000 to see the flask server running.

Owner
Tudor Matei
16 Computer Science
Tudor Matei
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