Skip to content

sarikamohan08/AutoClassifier

Repository files navigation

AutoClassifer

It is a library that helps you select hyperparameters for selecting Keras models for image classification tasks . It provides a flexible and easy-to-use interface for tuning hyperparameters using various search architectures.

Quick Installation

$ pip install AutoClassifier

About

AutoClassifer is a Deep Learning web application come Package for training and predicting classification models which is written in Python 3. It is a library that helps you select hyperparameters for selecting Keras models for image classification tasks . It provides a flexible and easy-to-use interface for tuning hyperparameters using various search architectures. The main goal is to automate the process of hyperparameter which is a crucial step in developing deep learning models for Image Classification. It allows you to define the search space for hyperparameters, set the number of epochs,Batch Size,select various Architectures, and specify the performance metric to optimizeAutoClassifer is a Deep Learning web application come Package for training and predicting classification models which is written in Python 3. It is a library that helps you select hyperparameters for selecting Keras models for image classification tasks . It provides a flexible and easy-to-use interface for tuning hyperparameters using various search architectures. The main goal is to automate the process of hyperparameter which is a crucial step in developing deep learning models for Image Classification. It allows you to define the search space for hyperparameters, set the number of epochs,Batch Size,select various Architectures, and specify the performance metric to optimize

Skills:

Python (Programming Language) · Artificial Neural Networks (ANN) · Convolutional Neural Networks (CNN) · Modular coding · HTML · Cascading Style Sheets (CSS) · Flask

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published