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20 public repositories
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Deep Learning and deep reinforcement learning research papers and some codes
A Scaffold to help you build Deep Learning Model much more easily, implemented with TensorFlow 2.0
Updated
Feb 4, 2020
Python
Pytorch model zoo for human, include all kinds of 2D CNN, 3D CNN, and CRNN
Updated
May 29, 2019
Python
Updated
Aug 1, 2020
Python
🐺 🐯 🐋 🐘 🐒 Deep Learning model Zoo
Updated
Aug 29, 2018
Python
Atomated_LP is a simple tool helps you generate persian vehicle number pates in order to train your CNN.
Updated
Nov 28, 2020
Python
A game where you need to guess whether a tweet comes from a human, or from a neural network language model trained on a category of tweets.
Updated
Aug 12, 2021
JavaScript
Official examples for Model Zoo
Updated
Jul 15, 2020
Jupyter Notebook
a mindspore implementation of emotion detection model based on ERNIE.
Updated
Feb 25, 2021
Python
Model Zoo for many papers in machine learning/deep learning/computer vision/natural language processing field
Updated
Jan 11, 2019
Python
Updated
Feb 3, 2019
TypeScript
Updated
Jul 27, 2021
Python
The ModelZoo for Hi-Privacy project.
Updated
Jun 14, 2020
Python
Updated
May 14, 2020
Jupyter Notebook
a mindspore version of elmo implementation
Updated
Apr 15, 2021
Python
My Object Detection Project using Custom Objects
Updated
Jul 14, 2021
Jupyter Notebook
Updated
Feb 21, 2021
Python
My Object Detection Project: Sign Language Detection
Updated
Jul 12, 2021
Jupyter Notebook
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Thanks for your great work!
Could you please share the influence of the batch size and the number of GPUs?
Also how to choose a suitable learning rate and batch size if the available GPUs is not enough.
Thank you!