CNN digit recognizer implemented in Keras Notebook, Kaggle/MNIST (0.995).
-
Updated
Jul 9, 2021 - Jupyter Notebook
CNN digit recognizer implemented in Keras Notebook, Kaggle/MNIST (0.995).
Collection of tensorflow notebooks tutorials for implementing some basic Deep Learning architectures.
Some useful examples of Deep Learning (.ipynb)
This repository provides a Colab Notebook that shows how to use Spatial Transformer Networks inside CNNs in Keras.
This notebook implements a neural network using Julia Flux to recognize handwritten digits from MNIST dataset.
Implementation of Deep-learning techniques in pytorch
A Collection of Jupyter Notebooks with Deep Learning Models created using Pytorch for Computer Vision (Image Classification) problems trained on GPU.
This Repository contain an IPython notebook of an example implementation of conditional Deep Convolutional Generative Adversarial Networks or cDCGAN or DC cGAN using Tensorflow.Keras Funtional API.
Implementations of deep learning algorithms
Some coding stuff from various machine learning books
Digit recognition neural network
Notebooks containing various tools useful for data science
In the series of Python notebooks I am going to practice solving questions with common data science and machine learning techniques and I am going to share the notebooks here.
Jupyter Notebooks of my Deep Learning Experiments with Tensorflow.
Handwriting Detection using Deep Learing with Neural Network, tensorflow, keras and jupyter notebook
Notebook examples with tensorboard.dev
Files and Notebooks for Kaggle MNIST
Notebooks on PCA(Principal Component Analysis)
Neural Network ConsoleでMNISTのを学習するサンプルです。MNISTデータセットダウンロード(Jupyter Notebook)、学習・モデル構造自動探索(Neural Network Console)、ONNX推論(Jupyter Notebook)を含みます
This repository contains a notebook to take you through step by step guide on recognizing handwritten digits using a Multi-Layer-Perceptron(MLP)
Add a description, image, and links to the mnist topic page so that developers can more easily learn about it.
To associate your repository with the mnist topic, visit your repo's landing page and select "manage topics."