Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
02 - Introduction to TensorFlow
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
02 - Introduction to TensorFlow
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
03 - Neural Networks Foundations
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
03 - Neural Networks Foundations
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
04 - Beyond Image Recognition, End-to-End Learning, Embeddings
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
04 - Beyond Image Recognition, End-to-End Learning, Embeddings
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
05 - Optimization for Machine Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
05 - Optimization for Machine Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
06 - Deep Learning for NLP
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
06 - Deep Learning for NLP
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
07 - Attention and Memory in Deep Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
07 - Attention and Memory in Deep Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Learning course 2018
08 - Unsupervised learning and generative models
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
08 - Unsupervised learning and generative models
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2)
#DeepLearning
#DeepMind
🔭 @DeepGravity
DeepMind DeepLearning course.part1.rar
1000 MB
DeepMind Deep Learning course 2018 (all lectures and slides) - part1
#DeepLearning
#DeepMind
🔭 @DeepGravity
#DeepLearning
#DeepMind
🔭 @DeepGravity
DeepMind DeepLearning course.part2.rar
951.3 MB
DeepMind Deep Learning course 2018 (all lectures and slides) - part2
#DeepLearning
#DeepMind
🔭 @DeepGravity
#DeepLearning
#DeepMind
🔭 @DeepGravity
Everything a Data Scientist Should Know About Data Management
For full-stack data science mastery, you must understand data management along with all the bells and whistles of machine learning. This high-level overview is a road map for the history and current state of the expansive options for data storage and infrastructure solutions.
Link to the article
#Data
🔭 @DeepGravity
For full-stack data science mastery, you must understand data management along with all the bells and whistles of machine learning. This high-level overview is a road map for the history and current state of the expansive options for data storage and infrastructure solutions.
Link to the article
#Data
🔭 @DeepGravity
The Measure of #Intelligence, (Chollet 2019)
(François Chollet is the creator of #Keras)
Link to the paper
🔭 @DeepGravity
(François Chollet is the creator of #Keras)
Link to the paper
🔭 @DeepGravity
#Python developers survey 2019
Hey #Pythonista,
This is the third iteration of the official Python Developers Survey. With this survey, we aim to identify how the Python development world looks today and how it compares to last year. In 2018 we received 20,000 responses from Python developers, who shared their experience to help us map out an accurate landscape of the Python community.
The results of this survey serve as a major source of knowledge about the current state of the Python community, so we encourage you to participate and take this 10-minute survey and make an invaluable contribution to the community.
After the survey is over, we will publish the aggregated results and randomly choose 100 winners (from those who complete the survey in its entirety), who will each receive an amazing Python Surprise Gift Pack.
Thank you for contributing to this community effort!
Let’s get started with the survey!
🔭 @DeepGravity
Hey #Pythonista,
This is the third iteration of the official Python Developers Survey. With this survey, we aim to identify how the Python development world looks today and how it compares to last year. In 2018 we received 20,000 responses from Python developers, who shared their experience to help us map out an accurate landscape of the Python community.
The results of this survey serve as a major source of knowledge about the current state of the Python community, so we encourage you to participate and take this 10-minute survey and make an invaluable contribution to the community.
After the survey is over, we will publish the aggregated results and randomly choose 100 winners (from those who complete the survey in its entirety), who will each receive an amazing Python Surprise Gift Pack.
Thank you for contributing to this community effort!
Let’s get started with the survey!
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
Disney's Magic Highway - 1958
See how Walt #Disney in 1958 magically predicted future highways!
Link to the video in YouTube
Link to a related article
#Magic!
#SelfDrivingCars
🔭 @DeepGravity
See how Walt #Disney in 1958 magically predicted future highways!
Link to the video in YouTube
Link to a related article
#Magic!
#SelfDrivingCars
🔭 @DeepGravity
A new very cool paper by Google:
Self-training with Noisy Student improves ImageNet classification
Abstract
We present a simple self-training method that achieves
87.4% top-1 accuracy on ImageNet, which is 1.0% better
than the state-of-the-art model that requires 3.5B weakly labeled Instagram images. On robustness test sets, it improves
ImageNet-A top-1 accuracy from 16.6% to 74.2%, reduces
ImageNet-C mean corruption error from 45.7 to 31.2, and
reduces ImageNet-P mean flip rate from 27.8 to 16.1.
To achieve this result, we first train an EfficientNet model
on labeled ImageNet images and use it as a teacher to generate pseudo labels on 300M unlabeled images. We then
train a larger EfficientNet as a student model on the combination of labeled and pseudo labeled images. We iterate
this process by putting back the student as the teacher. During the generation of the pseudo labels, the teacher is not
noised so that the pseudo labels are as good as possible.
But during the learning of the student, we inject noise such
as data augmentation, dropout, stochastic depth to the student so that the noised student is forced to learn harder from
the pseudo labels.
Link to the paper
#ComputerVision
#Google
🔭 @DeepGravity
Self-training with Noisy Student improves ImageNet classification
Abstract
We present a simple self-training method that achieves
87.4% top-1 accuracy on ImageNet, which is 1.0% better
than the state-of-the-art model that requires 3.5B weakly labeled Instagram images. On robustness test sets, it improves
ImageNet-A top-1 accuracy from 16.6% to 74.2%, reduces
ImageNet-C mean corruption error from 45.7 to 31.2, and
reduces ImageNet-P mean flip rate from 27.8 to 16.1.
To achieve this result, we first train an EfficientNet model
on labeled ImageNet images and use it as a teacher to generate pseudo labels on 300M unlabeled images. We then
train a larger EfficientNet as a student model on the combination of labeled and pseudo labeled images. We iterate
this process by putting back the student as the teacher. During the generation of the pseudo labels, the teacher is not
noised so that the pseudo labels are as good as possible.
But during the learning of the student, we inject noise such
as data augmentation, dropout, stochastic depth to the student so that the noised student is forced to learn harder from
the pseudo labels.
Link to the paper
#ComputerVision
🔭 @DeepGravity
arXiv.org
Self-training with Noisy Student improves ImageNet classification
We present Noisy Student Training, a semi-supervised learning approach that works well even when labeled data is abundant. Noisy Student Training achieves 88.4% top-1 accuracy on ImageNet, which...
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
01 - Introduction to Reinforcement Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
01 - Introduction to Reinforcement Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
02 - Exploration and Exploitation
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
02 - Exploration and Exploitation
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
03 - Markov Decision Processes and Dynamic Programming
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
03 - Markov Decision Processes and Dynamic Programming
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
04 - Model-Free Prediction and Control
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
04 - Model-Free Prediction and Control
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
05 - Function Approximation and Deep Reinforcement Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
05 - Function Approximation and Deep Reinforcement Learning
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
Media is too big
VIEW IN TELEGRAM
DeepMind Deep Reinforcement Learning course 2018
06 - Policy Gradients and Actor Critics
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity
06 - Policy Gradients and Actor Critics
YouTube
Slides
⚠️ Download all lectures and slides in zipfiles here: (part1) , (part2) , (part3)
#DeepReinforcementLearning
#DeepMind
🔭 @DeepGravity