Deep Learning model for predicting success after donation coded in Google Colab
-
Updated
Oct 10, 2022 - Jupyter Notebook
Deep Learning model for predicting success after donation coded in Google Colab
Generic L-layer 'straight in Python' fully connected Neural Network implementation using numpy.
I have implemented some AI projects from scratch implementation without explicit use of the built-in-libraries and thus added to this repo.
Feed Forward Neural Network to classify the FB post likes in classes of low likes or moderate likes or high likes, back propagtion is implemented with decay learning rate method
Neural Network implementation from scratch along with its analysis with different type of activation function and with variation in hidden layer size and depth.
Artificial Neural Networks Activation Functions
GAAF implementation on Keras
Time series forecast using RNN and LSTM
2nd Project of Course 'Machine Learning' of the SMARTNET programme. Taken at the National and Kapodistrian University of Athens.
This repo is created for learning about computer vision and pattern recognition
Exploration of teamwork in neural networks
"The 'Activation Functions' project repository contains implementations of various activation functions commonly used in neural networks. "
A data classification using MLP
Neural-Net-Numpy(NNN) is a simple python package for training neural networks using only numpy components
Comparison of common activation functions on MNIST dataset using PyTorch.
Simple self-written ANN powered by NumPy to classify handwritten digits of the famous MNIST Dataset. ✍️
A neural network (NN) having two hidden layers is implemented, besides the input and output layers. The code gives choise to the user to use sigmoid, tanh orrelu as the activation function. Prediction accuracy is computed at the end.
Add a description, image, and links to the tanh topic page so that developers can more easily learn about it.
To associate your repository with the tanh topic, visit your repo's landing page and select "manage topics."