#NVIDIA Makes 3D #DeepLearning Research Easy with #Kaolin #PyTorch Library
At its core, Kaolin consists of an efficient suite of geometric functions that allow manipulation of 3D content. It can wrap into PyTorch tensors 3D datasets implemented as polygon meshes, point clouds, signed distance functions or voxel grids.
With their 3D dataset ready for deep learning, researchers can choose a neural network model from a curated collection that Kaolin supplies. The interface provides a rich repository of models, both baseline and state of the art, for classification, segmentation, 3D reconstruction, super-resolution and more.
Link to the article
🔭 @DeepGravity
At its core, Kaolin consists of an efficient suite of geometric functions that allow manipulation of 3D content. It can wrap into PyTorch tensors 3D datasets implemented as polygon meshes, point clouds, signed distance functions or voxel grids.
With their 3D dataset ready for deep learning, researchers can choose a neural network model from a curated collection that Kaolin supplies. The interface provides a rich repository of models, both baseline and state of the art, for classification, segmentation, 3D reconstruction, super-resolution and more.
Link to the article
🔭 @DeepGravity
Machine learning operations with GitHub Actions and Kubernetes - GitHub Universe 2019
Watch on YouTube
#MachineLearning
🔭 @DeepGravity
Watch on YouTube
#MachineLearning
🔭 @DeepGravity
YouTube
Machine learning operations with GitHub Actions and Kubernetes - GitHub Universe 2019
Presented by: Hamel Husain, Staff Machine Learning Engineer at GitHub Jeremy Lewi, Software Engineer at Google From automating mundane tasks to reducing inef...
This respository contains my exploration of the newly released TensorFlow 2.0. #TensorFlow team introduced a lot of new and useful changes in this release; automatic mixed precision training, flexible custom training, distributed GPU training, enhanced ops for the high-level #Keras API are some of my personal favorites. You can see all of the new changes here.
🔭 @DeepGravity
🔭 @DeepGravity
GitHub
TF-2.0-Hacks/README.md at master · sayakpaul/TF-2.0-Hacks
Contains my explorations of TensorFlow 2.x. Contribute to sayakpaul/TF-2.0-Hacks development by creating an account on GitHub.
The Ultimate guide to #AI, #DataScience & #MachineLearning, Articles, Cheatsheets and Tutorials ALL in one place
This is a carefully curated compendium of articles & tutorials covering all things AI, Data Science & Machine Learning for the beginner to advanced practitioner. I will be periodically updating this document with popular topics from time to time. My hope is that you find something of use and/or the content will generate ideas for you to pursue.
Link to the article
🔭 @DeepGravity
This is a carefully curated compendium of articles & tutorials covering all things AI, Data Science & Machine Learning for the beginner to advanced practitioner. I will be periodically updating this document with popular topics from time to time. My hope is that you find something of use and/or the content will generate ideas for you to pursue.
Link to the article
🔭 @DeepGravity
LinkedIn
The Ultimate guide to AI, Data Science & Machine Learning, Articles, Cheatsheets and Tutorials ALL in one place
Last updated 6/5/2019 This is a carefully curated compendium of articles & tutorials covering all things AI, Data Science & Machine Learning for the beginner to advanced practitioner. I will be periodically updating this document with popular topics from…
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#DeepFovea: #Neural Reconstruction for Foveated Rendering and Video Compression using Learned #Statistics of Natural Videos
Link to the paper
#FacebookAI
🔭 @DeepGravity
Link to the paper
#FacebookAI
🔭 @DeepGravity
Depth Predictions in #Art
Painters throughout art history have used various techniques to represent our three-dimensional world on a two-dimensional canvas. Using linear and atmospheric perspective, hard and soft edges, overlay of shapes, and nuanced hue and saturation, painters can render convincing illusions of depth on flat surfaces. These painted images, with varying degrees of “depth illusion" can also be interpreted by something entirely different: #MachineLearning models.
#DeepLearning
Link to the article
🔭 @DeepGravity
Painters throughout art history have used various techniques to represent our three-dimensional world on a two-dimensional canvas. Using linear and atmospheric perspective, hard and soft edges, overlay of shapes, and nuanced hue and saturation, painters can render convincing illusions of depth on flat surfaces. These painted images, with varying degrees of “depth illusion" can also be interpreted by something entirely different: #MachineLearning models.
#DeepLearning
Link to the article
🔭 @DeepGravity
pair-code.github.io
Depth in Art History Visualization
#MIT Technology Review:
#MachineLearning has revealed exactly how much of a #Shakespeare play was written by someone else
Link to the article
🔭 @DeepGravity
#MachineLearning has revealed exactly how much of a #Shakespeare play was written by someone else
Link to the article
🔭 @DeepGravity
MIT Technology Review
Machine learning has revealed exactly how much of a Shakespeare play was written by someone else
For much of his life, William Shakespeare was the house playwright for an acting company called the King’s Men that performed his plays on the banks of the River Thames in London. When Shakespeare died in 1616, the company needed a replacement and turned…
post-doctoral research fellow in the School of Computer Science at the University of Birmingham
PhD and Post-Doc positions on Artificial Intelligence for Personal
Senior Data Visualization Specialist @ Global Education provider in Chicago
PhD position: investigating the interaction of attention and motivation using fMRI
PhD positions in deep learning for medical image analysis, Montreal, Canada
Postdoctoral Research Position on Internet of Things in Agriculture, Nanjing Agricultural University
The Interactive Media Group at Microsoft Research, Redmond has several openings for research internships.
18 months Postdoctoral position in Computer Vision/Machine Learning/Human Behavior recognitio
PhD position on Geometric methods for robot learning @ Bosch center for AI
#Job
🔭 @DeepGravity
PhD and Post-Doc positions on Artificial Intelligence for Personal
Senior Data Visualization Specialist @ Global Education provider in Chicago
PhD position: investigating the interaction of attention and motivation using fMRI
PhD positions in deep learning for medical image analysis, Montreal, Canada
Postdoctoral Research Position on Internet of Things in Agriculture, Nanjing Agricultural University
The Interactive Media Group at Microsoft Research, Redmond has several openings for research internships.
18 months Postdoctoral position in Computer Vision/Machine Learning/Human Behavior recognitio
PhD position on Geometric methods for robot learning @ Bosch center for AI
#Job
🔭 @DeepGravity
Andriy Burkov’s Journey to Writing the Ultimate 100-Page #MachineLearning #Book
Have you seen most of the recommended books on Machine Learning only to feel overwhelmed by their thickness and the amount of effort it will take to read those books?
If you feel that way – don’t worry! You are not alone. A lot of people face this situation but do very little about it. Not Andriy Burkov! Andriy saw this and thought that the ideal Machine Learning book for beginners should be written within 100 pages.
Link to the article
🔭 @DeepGravity
Have you seen most of the recommended books on Machine Learning only to feel overwhelmed by their thickness and the amount of effort it will take to read those books?
If you feel that way – don’t worry! You are not alone. A lot of people face this situation but do very little about it. Not Andriy Burkov! Andriy saw this and thought that the ideal Machine Learning book for beginners should be written within 100 pages.
Link to the article
🔭 @DeepGravity
Gentle Introduction to Vector #Norms in #MachineLearning
After completing this tutorial, you will know:
* The L1 norm that is calculated as the sum of the absolute values of the vector.
* The L2 norm that is calculated as the square root of the sum of the squared vector values.
* The max norm that is calculated as the maximum vector values.
Link to the article
🔭 @DeepGravity
After completing this tutorial, you will know:
* The L1 norm that is calculated as the sum of the absolute values of the vector.
* The L2 norm that is calculated as the square root of the sum of the squared vector values.
* The max norm that is calculated as the maximum vector values.
Link to the article
🔭 @DeepGravity
MachineLearningMastery.com
Gentle Introduction to Vector Norms in Machine Learning - MachineLearningMastery.com
Calculating the length or magnitude of vectors is often required either directly as a regularization method in machine learning, or as part of broader vector or matrix operations. In this tutorial, you will discover the different ways to calculate vector…
Starting with the basics is a difficult (and frustrating) approach for learning programming. Instead, find a program that does something cool - a game or a website - and tinker with the code. Experiment and try to get it to do what you want.
Over time, you'll pick up the basics you need by solving problems and modifying/writing useful programs. It's tedious to learn the elements of code by themselves, but much more enjoyable when you're using them in the context of solving a problem.
Strings, lists, and functions are not inspiring. Code that helps to photograph a black hole or discover gravitational waves is definitely inspiring.
Here's a Python notebook you can run right now that shows how to process the data for observing gravitational waves
Here's some of the Python code used for photographing a black hole for the first time
In other words, learn to code from the top-down. First get a look at the big picture: what can I do with code? and then learn the fundamentals as you need them.
We learn code to solve problems and build things, not for the exercise itself!
Tweets by Will Koehrsen a Data scientist at Cortex Intel.
#Programming
#Learning
🔭 @DeepGravity
Over time, you'll pick up the basics you need by solving problems and modifying/writing useful programs. It's tedious to learn the elements of code by themselves, but much more enjoyable when you're using them in the context of solving a problem.
Strings, lists, and functions are not inspiring. Code that helps to photograph a black hole or discover gravitational waves is definitely inspiring.
Here's a Python notebook you can run right now that shows how to process the data for observing gravitational waves
Here's some of the Python code used for photographing a black hole for the first time
In other words, learn to code from the top-down. First get a look at the big picture: what can I do with code? and then learn the fundamentals as you need them.
We learn code to solve problems and build things, not for the exercise itself!
Tweets by Will Koehrsen a Data scientist at Cortex Intel.
#Programming
#Learning
🔭 @DeepGravity
Google
Guide_Notebook.ipynb
Run, share, and edit Python notebooks
Training a #MachineLearning Engineer
There is no clear outline on how to study Machine Learning/ #DeepLearning due to which many individuals apply all the possible algorithms that they have heard of and hope that one of implemented algorithms work for their problem in hand. Below, I've listed out some of the steps that one should adopt while solving a machine learning problem.
Link to the article
🔭 @DeepGravity
There is no clear outline on how to study Machine Learning/ #DeepLearning due to which many individuals apply all the possible algorithms that they have heard of and hope that one of implemented algorithms work for their problem in hand. Below, I've listed out some of the steps that one should adopt while solving a machine learning problem.
Link to the article
🔭 @DeepGravity
KDnuggets
Training a Machine Learning Engineer - KDnuggets
There is no clear outline on how to study Machine Learning/Deep Learning due to which many individuals apply all the possible algorithms that they have heard of and hope that one of implemented algorithms work for their problem in hand. Below, I've listed…
@DeepGravity - A very cool intro to Keras and CNN.rar
120.8 MB
Download a very cool intro to #Keras and #CNNs
Syllabus:
Keras 1, What is Keras
Keras 2, Installations for #DeepLearning, #Anaconda, #Jupyter Notebook, #Tensorflow, Keras
Keras 3, #NeuralNetwork Regression Model with Keras
Keras 4, Breast Cancer Diagnosis with Neural Networks
Keras 5, Understanding #ConvolutionalNeuralNetworks, Making a Handwritten Digit Calculator
Watch more videos on the related YouTube channel
🔭 @DeepGravity
Syllabus:
Keras 1, What is Keras
Keras 2, Installations for #DeepLearning, #Anaconda, #Jupyter Notebook, #Tensorflow, Keras
Keras 3, #NeuralNetwork Regression Model with Keras
Keras 4, Breast Cancer Diagnosis with Neural Networks
Keras 5, Understanding #ConvolutionalNeuralNetworks, Making a Handwritten Digit Calculator
Watch more videos on the related YouTube channel
🔭 @DeepGravity
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This Video Will Show You a demonstration of a Finger Counter Program created using #Keras and #OpenCV.
YouTube
#GitHub repo
🔭 @DeepGravity
YouTube
#GitHub repo
🔭 @DeepGravity
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Splice, a new way to make music.
It uses both #UnsupervisedLearning and #SupervisedLearning
🔭 @DeepGravity
It uses both #UnsupervisedLearning and #SupervisedLearning
🔭 @DeepGravity
Making progress in #MachineLearning is not possible without being strong in #Mathematics behind it.
To learn math behind ML just Google
🔭 @DeepGravity
To learn math behind ML just Google
🔭 @DeepGravity