Modern Text-to-Speech Systems Review by hydrosphere.io - https://youtu.be/8rXLSc-ZcRY
#AI #ML #TextToSpeech #DataScience #MachineLearning
#AI #ML #TextToSpeech #DataScience #MachineLearning
Tutorial: Poisson Regression in R - https://www.dataquest.io/blog/tutorial-poisson-regression-in-r/
In this tutorial, you will learn about Poisson Regression, what it is, and how R programmers can use it in real-world applications.
In this tutorial, you will learn about Poisson Regression, what it is, and how R programmers can use it in real-world applications.
Dataquest
Learn to Use Poisson Regression in R – Dataquest
Take a deep dive into Poisson Regression modeling in R with this in-depth programming and statistics tutorial.
Awesome Machine Learning Interpretability - https://github.com/jphall663/awesome-machine-learning-interpretability
A curated list of awesome machine learning interpretability resources, which includes a blueprint of use-cases, software examples, tutorials, packages, books, papers, etc.
A curated list of awesome machine learning interpretability resources, which includes a blueprint of use-cases, software examples, tutorials, packages, books, papers, etc.
GitHub
GitHub - jphall663/awesome-machine-learning-interpretability: A curated list of awesome responsible machine learning resources.
A curated list of awesome responsible machine learning resources. - jphall663/awesome-machine-learning-interpretability
Hands-on TensorFlow Tutorial: Train ResNet-50 from Scratch Using the ImageNet Dataset - https://blog.exxactcorp.com/deep-learning-with-tensorflow-training-resnet-50-from-scratch-using-the-imagenet-dataset/
From launching TensorFlow, downloading and preparing ImageNet, all the way to documenting and reporting training.
From launching TensorFlow, downloading and preparing ImageNet, all the way to documenting and reporting training.
Exxact
Hands-on TensorFlow Tutorial: Train ResNet-50 From Scratch Using the ImageNet Dataset - Exxact
In this blog, we give a quick hands on tutorial on how to train the ResNet model in TensorFlow. You don't want to miss this one. Learn more now!
“GANs” vs “ODEs”: The End of Mathematical Modeling? - https://towardsdatascience.com/gans-vs-odes-the-end-of-mathematical-modeling-ec158f04acb9
This article will review the main characteristics we expect from any model, pros, and cons of “classical” mathematical modeling and machine learning modeling, and it will show a candidate that combines both of the worlds — disentangled representation learning.
This article will review the main characteristics we expect from any model, pros, and cons of “classical” mathematical modeling and machine learning modeling, and it will show a candidate that combines both of the worlds — disentangled representation learning.
Medium
“GANs” vs “ODEs”: the end of mathematical modeling?
Hi everyone! In this article, I would like to make a connection between classical mathematical modeling, that we study in school, college…
UK Releases 130 Terabytes of Oil and Gas Data - https://www.spe.org/en/jpt/jpt-article-detail/?art=5282
The dataset covers 12,500 offshore wellbores, 5,000 seismic surveys, and 3,000 pipelines over more than five decades. The release is intended to help promote new investment, technology, and exploration activity on the UK Continental Shelf, ultimately boosting recovery.
The dataset covers 12,500 offshore wellbores, 5,000 seismic surveys, and 3,000 pipelines over more than five decades. The release is intended to help promote new investment, technology, and exploration activity on the UK Continental Shelf, ultimately boosting recovery.
Linear Regression - Visualized - https://youtu.be/3g-e2aiRfbU
This series of short videos make linear regression visually intuitive and provide great explanations of specific details.
This series of short videos make linear regression visually intuitive and provide great explanations of specific details.
YouTube
Simple Linear Regression Formula, Visualized | Ch.1
In this video, I will guide you through a really beautiful way to visualize the formula for the slope, beta, in simple linear regression.
In the next few chapters, I will explain the regression problem in the context of linear algebra, and visualize linear…
In the next few chapters, I will explain the regression problem in the context of linear algebra, and visualize linear…
Deep Learning: State of the Art - https://youtu.be/53YvP6gdD7U
Lex Fridman's 2nd lecture from his Deep Learning course at MIT is a great overview of the cutting edge in deep learning. It introduces a wide variety of applications in natural language processing, AutoML, use of synthetic data, image synthesis, semantic segmentation, etc. Includes a clickable outline that links to each section of the lecture.
Lex Fridman's 2nd lecture from his Deep Learning course at MIT is a great overview of the cutting edge in deep learning. It introduces a wide variety of applications in natural language processing, AutoML, use of synthetic data, image synthesis, semantic segmentation, etc. Includes a clickable outline that links to each section of the lecture.
YouTube
Deep Learning State of the Art (2019) - MIT
New lecture on recent developments in deep learning that are defining the state of the art in our field (algorithms, applications, and tools). This is not a complete list, but hopefully includes a good sampling of new exciting ideas. For more lecture videos…
Dive into Deep Learning - http://d2l.ai/
An interactive deep learning book with code, math, and immersive discussions.
An interactive deep learning book with code, math, and immersive discussions.
Best Deals in Deep Learning Cloud Providers - https://towardsdatascience.com/maximize-your-gpu-dollars-a9133f4e546a
Nice comparison of GPU cloud service providers, including specific things to look for, capabilities, costs, and performance.
Nice comparison of GPU cloud service providers, including specific things to look for, capabilities, costs, and performance.
Medium
Best Deals in Deep Learning Cloud Providers
Where to train deep learning models online for the lowest cost and least hassle
PySyft Step-By-Step Tutorial - https://github.com/OpenMined/PySyft/tree/master/examples/tutorials
This step-by-step notebook tutorial is an easy introduction to privacy preserving, decentralized deep learning. Here's how to do things like run ML spellcheck on encrypted email.
This step-by-step notebook tutorial is an easy introduction to privacy preserving, decentralized deep learning. Here's how to do things like run ML spellcheck on encrypted email.
Jupyter Lab: Evolution of the Jupyter Notebook - https://towardsdatascience.com/jupyter-lab-evolution-of-the-jupyter-notebook-5297cacde6b
An overview of JupyterLab, the next generation of the Jupyter Notebook.
An overview of JupyterLab, the next generation of the Jupyter Notebook.
Medium
Jupyter Lab: Evolution of the Jupyter Notebook
All good things (must) come to an end to make way for something better.
Production AI Conference - https://www.aibooster.com.ua/productionai2019/
First technical and practical conference about implementing models in high-load projects with limited computational resources and high requirements. Only technical speeches and high-professional experts. Speakers from MindGeek(PornHub), Reflect(even Elon Musk twitted about it), Neuromation, WIX, DatAI, AltexSoft, People.ai. Including practical workshops where you can try new technology right away!
Details: https://www.facebook.com/events/232502780882703/
First technical and practical conference about implementing models in high-load projects with limited computational resources and high requirements. Only technical speeches and high-professional experts. Speakers from MindGeek(PornHub), Reflect(even Elon Musk twitted about it), Neuromation, WIX, DatAI, AltexSoft, People.ai. Including practical workshops where you can try new technology right away!
Details: https://www.facebook.com/events/232502780882703/
AI Booster
Production AI Conference – AI Booster
Production.AI Conference – first technical and practical conference about implementing models in highload projects with limited computational resources and high requirements.
Machine Learning Serving cluster - https://github.com/Hydrospheredata/hydro-serving
Hydrosphere Serving enables you to get your models up and running in an instant, on just about any infrastructure and using any of the available machine learning toolkits.
Hydrosphere Serving enables you to get your models up and running in an instant, on just about any infrastructure and using any of the available machine learning toolkits.
GitHub
GitHub - Hydrospheredata/hydro-serving: MLOps Platform
MLOps Platform. Contribute to Hydrospheredata/hydro-serving development by creating an account on GitHub.
Pandaral·lel - https://github.com/nalepae/pandarallel
A simple and efficient tool to parallelize your Pandas operations on all your CPUs.
A simple and efficient tool to parallelize your Pandas operations on all your CPUs.
GitHub
GitHub - nalepae/pandarallel: A simple and efficient tool to parallelize Pandas operations on all available CPUs
A simple and efficient tool to parallelize Pandas operations on all available CPUs - nalepae/pandarallel
Frameworks for Machine Learning Model Management - https://www.inovex.de/blog/machine-learning-model-management/
This article compares three different tools developed to support reproducible machine learning model development: MLFlow, DVC and Sacred.
This article compares three different tools developed to support reproducible machine learning model development: MLFlow, DVC and Sacred.
inovex Blog
Frameworks for Machine Learning Model Management - inovex Blog
This blog post will compare three different tools developed to support reproducible machine learning model development: MLFlow developed by DataBricks (the company behind Apache Spark), DVC, a software product of the London based startup iterative.ai, and…
Mathematics Dataset - https://github.com/deepmind/mathematics_dataset
This dataset code generates mathematical question and answers pairs, from a range of question types at roughly school-level difficulty. This is designed to test the mathematical learning and algebraic reasoning skills of learning models.
This dataset code generates mathematical question and answers pairs, from a range of question types at roughly school-level difficulty. This is designed to test the mathematical learning and algebraic reasoning skills of learning models.
GitHub
GitHub - google-deepmind/mathematics_dataset: This dataset code generates mathematical question and answer pairs, from a range…
This dataset code generates mathematical question and answer pairs, from a range of question types at roughly school-level difficulty. - google-deepmind/mathematics_dataset
@like A Visual Exploration of Gaussian Processes - https://distill.pub/2019/visual-exploration-gaussian-processes/
This article will show how to turn a collection of small building blocks into a versatile tool for solving regression problems.
This article will show how to turn a collection of small building blocks into a versatile tool for solving regression problems.
Distill
A Visual Exploration of Gaussian Processes
How to turn a collection of small building blocks into a versatile tool for solving regression problems.
GANSynth: Making music with GANs - https://magenta.tensorflow.org/gansynth
In this article, you will learn about GANSynth, a method for generating high-fidelity audio with Generative Adversarial Networks (GANs).
In this article, you will learn about GANSynth, a method for generating high-fidelity audio with Generative Adversarial Networks (GANs).
Magenta
GANSynth: Making music with GANs
In this post, we introduce GANSynth, a method for generating high-fidelity audio with Generative Adversarial Networks (GANs). Colab Notebook 🎵Audio E...
