Build your neural network easy and fast, 莫烦Python中文教学
-
Updated
Mar 23, 2023 - Jupyter Notebook
Build your neural network easy and fast, 莫烦Python中文教学
ImageNet pre-trained models with batch normalization for the Caffe framework
The first machine learning framework that encourages learning ML concepts instead of memorizing class functions.
Educational deep learning library in plain Numpy.
Deep Learning Specialization courses by Andrew Ng, deeplearning.ai
Adaptive Affinity Fields for Semantic Segmentation
Synchronized Multi-GPU Batch Normalization
MNIST classification using Convolutional NeuralNetwork. Various techniques such as data augmentation, dropout, batchnormalization, etc are implemented.
Batch normalization fusion for PyTorch
Single (i) Cell R package (iCellR) is an interactive R package to work with high-throughput single cell sequencing technologies (i.e scRNA-seq, scVDJ-seq, scATAC-seq, CITE-Seq and Spatial Transcriptomics (ST)).
My workshop on machine learning using python language to implement different algorithms
MXNet Code For Demystifying Neural Style Transfer (IJCAI 2017)
TensorFlow implementation of real-time style transfer using feed-forward generation. This builds on the original style-transfer algorithm and allows for common personal computers to transform images.
An image recognition/object detection model that detects handwritten digits and simple math operators. The output of the predicted objects (numbers & math operators) is then evaluated and solved.
Using slim to perform batch normalization
Official code release for "CrossQ: Batch Normalization in Deep Reinforcement Learning for Greater Sample Efficiency and Simplicity"
[CVPRW 21] "BNN - BN = ? Training Binary Neural Networks without Batch Normalization", Tianlong Chen, Zhenyu Zhang, Xu Ouyang, Zechun Liu, Zhiqiang Shen, Zhangyang Wang
MNIST classification using Multi-Layer Perceptron (MLP) with 2 hidden layers. Some weight-initializers and batch-normalization are implemented.
[WACV 2022] "Sandwich Batch Normalization: A Drop-In Replacement for Feature Distribution Heterogeneity" by Xinyu Gong, Wuyang Chen, Tianlong Chen and Zhangyang Wang
Win probability predictions for League of Legends matches using neural networks
Add a description, image, and links to the batch-normalization topic page so that developers can more easily learn about it.
To associate your repository with the batch-normalization topic, visit your repo's landing page and select "manage topics."