Dogs-vs-Cats image classification
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Updated
Jun 10, 2017 - Jupyter Notebook
Dogs-vs-Cats image classification
Using various CNN techniques on the MNIST dataset
Keras Total Visualization project
An IPython notebook demonstrating the process of Transfer Learning using pre-trained Convolutional Neural Networks with Keras on the popular CIFAR-10 Image Classification dataset.
Keras implementation of a ResNet-CAM model
This is a repository for the code and various numpy files that going along with the face recognition project.
A keras implementation of DCGAN to generate Pokèmon sprites.
📉 Visualize your Deep Learning training in static graphics
Easy way to visualize convolutional neural networks, through two visualizations : Reason & MaxOut. First Version : Terminal.
Easy way to visualize convolutional neural networks, through two visualizations : Reason & MaxOut. Final version : web app.
A Deep Learning Automation Framework Library based on keras, sklearn for the automation of the machine learning and deeplearning algorithms training.testing,metrics,comparative analysis and visualisations
Open Source Health Analysis
Breast cancer is the most common form of cancer in women, and invasive ductal carcinoma (IDC) is the most common form of breast cancer. Accurately identifying and categorizing breast cancer subtypes is an important clinical task, and automated methods can be used to save time and reduce error. The goal of this script is to identify IDC when it i…
Project 3 of Term 1 in the Udacity Self Driving Car Nanodegree
ASCII summary for simple sequential models in Keras
Visualization techiques for deep learning neural networks using Keras
Recognition of the images includes train and tests based on Python.
Dynamic visualization training service in Jupyter Notebook for Keras tf.keras and others.
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