Who Will Win the Game of Thrones?
🔗 Who Will Win the Game of Thrones?
The final season of Game of Thrones is finally here and the question on everyone’s mind is: Who will end up on the Iron Throne?
🔗 Who Will Win the Game of Thrones?
The final season of Game of Thrones is finally here and the question on everyone’s mind is: Who will end up on the Iron Throne?
Towards Data Science
Who Will Win the Game of Thrones?
The final season of Game of Thrones is finally here and the question on everyone’s mind is: Who will end up on the Iron Throne?
Normalization vs Standardization — Quantitative analysis
🔗 Normalization vs Standardization — Quantitative analysis
Stop using StandardScaler from Sklearn as a default feature scaling method can get you a boost of 7% in accuracy!
🔗 Normalization vs Standardization — Quantitative analysis
Stop using StandardScaler from Sklearn as a default feature scaling method can get you a boost of 7% in accuracy!
Towards Data Science
Normalization vs Standardization — Quantitative analysis
Stop using StandardScaler from Sklearn as a default feature scaling method can get you a boost of 7% in accuracy!
МегаФон 💚💚💜 (резюме в личку)
https://hh.ru/vacancy/30374086
https://hh.ru/vacancy/30373162
🔗 Вакансия Главный аналитик SQL в Москве, работа в МегаФон
Вакансия Главный аналитик SQL. Зарплата: не указана. Москва. Требуемый опыт: 3–6 лет. Полная занятость. Дата публикации: 25.03.2019.
https://hh.ru/vacancy/30374086
https://hh.ru/vacancy/30373162
🔗 Вакансия Главный аналитик SQL в Москве, работа в МегаФон
Вакансия Главный аналитик SQL. Зарплата: не указана. Москва. Требуемый опыт: 3–6 лет. Полная занятость. Дата публикации: 25.03.2019.
hh.ru
Вакансия Главный аналитик SQL в Москве, работа в компании МегаФон (вакансия в архиве)
Зарплата: не указана. Москва. Требуемый опыт: 3–6 лет. Полная занятость. Дата публикации: 24.04.2019.
🎥 Занятие 5 | Машинное обучение
👁 3 раз ⏳ 3473 сек.
👁 3 раз ⏳ 3473 сек.
Преподаватель: Власов Кирилл Вячеславович
Материалы курса: https://github.com/ml-dafe/ml_mipt_dafe_minor
Дата: 30.03.2019Vk
Занятие 5 | Машинное обучение
Преподаватель: Власов Кирилл Вячеславович
Материалы курса: https://github.com/ml-dafe/ml_mipt_dafe_minor
Дата: 30.03.2019
Материалы курса: https://github.com/ml-dafe/ml_mipt_dafe_minor
Дата: 30.03.2019
Beyond A/B Testing: Multi-armed Bandit Experiments
🔗 Beyond A/B Testing: Multi-armed Bandit Experiments
An implementation of Google Analytics’ stochastic k-armed bandit test with Thompson sampling and Monte Carlo simulation
🔗 Beyond A/B Testing: Multi-armed Bandit Experiments
An implementation of Google Analytics’ stochastic k-armed bandit test with Thompson sampling and Monte Carlo simulation
Towards Data Science
Beyond A/B Testing: Multi-armed Bandit Experiments
An implementation of Google Analytics’ stochastic k-armed bandit test with Thompson sampling and Monte Carlo simulation
A Gentle Introduction to Channels First and Channels Last Image Formats for Deep Learning
🔗 A Gentle Introduction to Channels First and Channels Last Image Formats for Deep Learning
Color images have height, width, and color channel dimensions. When represented as three-dimensional arrays, the channel dimension for the image data is last by default, but may be moved to be the first dimension, often for performance-tuning reasons. The use of these two “channel ordering formats” and preparing data to meet a specific preferred channel …
🔗 A Gentle Introduction to Channels First and Channels Last Image Formats for Deep Learning
Color images have height, width, and color channel dimensions. When represented as three-dimensional arrays, the channel dimension for the image data is last by default, but may be moved to be the first dimension, often for performance-tuning reasons. The use of these two “channel ordering formats” and preparing data to meet a specific preferred channel …
Generative model of fonts as SVG instead of pixels. Structured format enables flexible manipulation arxiv.org/abs/1904.02632
🔗 A Learned Representation for Scalable Vector Graphics
Dramatic advances in generative models have resulted in near photographic quality for artificially rendered faces, animals and other objects in the natural world. In spite of such advances, a higher level understanding of vision and imagery does not arise from exhaustively modeling an object, but instead identifying higher-level attributes that best summarize the aspects of an object. In this work we attempt to model the drawing process of fonts by building sequential generative models of vector graphics. This model has the benefit of providing a scale-invariant representation for imagery whose latent representation may be systematically manipulated and exploited to perform style propagation. We demonstrate these results on a large dataset of fonts and highlight how such a model captures the statistical dependencies and richness of this dataset. We envision that our model can find use as a tool for graphic designers to facilitate font design.
🔗 A Learned Representation for Scalable Vector Graphics
Dramatic advances in generative models have resulted in near photographic quality for artificially rendered faces, animals and other objects in the natural world. In spite of such advances, a higher level understanding of vision and imagery does not arise from exhaustively modeling an object, but instead identifying higher-level attributes that best summarize the aspects of an object. In this work we attempt to model the drawing process of fonts by building sequential generative models of vector graphics. This model has the benefit of providing a scale-invariant representation for imagery whose latent representation may be systematically manipulated and exploited to perform style propagation. We demonstrate these results on a large dataset of fonts and highlight how such a model captures the statistical dependencies and richness of this dataset. We envision that our model can find use as a tool for graphic designers to facilitate font design.
arXiv.org
A Learned Representation for Scalable Vector Graphics
Dramatic advances in generative models have resulted in near photographic quality for artificially rendered faces, animals and other objects in the natural world. In spite of such advances, a...
Data Science Essentials in Python — Dmitry Zinoviev (en) 2916
📝 2_5447441436813296252.pdf - 💾10 881 637
📝 2_5447441436813296252.pdf - 💾10 881 637
The Data Fabric for Machine Learning. Part 2: Building a Knowledge-Graph.
🔗 The Data Fabric for Machine Learning. Part 2: Building a Knowledge-Graph.
Before being able to develop a Data Fabric we need to build a Knowledge-Graph. In this article I’ll set up the basis on how to create it…
🔗 The Data Fabric for Machine Learning. Part 2: Building a Knowledge-Graph.
Before being able to develop a Data Fabric we need to build a Knowledge-Graph. In this article I’ll set up the basis on how to create it…
Towards Data Science
The Data Fabric for Machine Learning. Part 2: Building a Knowledge-Graph.
Before being able to develop a Data Fabric we need to build a Knowledge-Graph. In this article I’ll set up the basis on how to create it…
🎥 GOTO 2018 • Machine Learning: Alchemy for the Modern Computer Scientist • Erik Meijer
👁 1 раз ⏳ 2701 сек.
👁 1 раз ⏳ 2701 сек.
This presentation was recorded at GOTO Copenhagen 2018. #gotocon #gotocph
http://gotocph.com
Erik Meijer - Think Like A Fundamentalist, Code Like A Hacker
ABSTRACT
In ancient times, the dream of alchemists was to mutate ordinary metals such as lead into noble metals such as gold. However, by using classic mathematics, modern physicists and chemists are much more successful in understanding and transforming matter than alchemists ever dreamt of.
The situation in software seems to be the opposite. Modern coVk
GOTO 2018 • Machine Learning: Alchemy for the Modern Computer Scientist • Erik Meijer
This presentation was recorded at GOTO Copenhagen 2018. #gotocon #gotocph http://gotocph.com Erik Meijer - Think Like A Fundamentalist, Code Like A Hacker ABSTRACT In ancient times, the dream of alchemists was to mutate ordinary metals such as lead into…
CACATOR CAVE MALVM
🔗 CACATOR CAVE MALVM
Four classifiers for the beautiful filthy graffiti of Pompeii
🔗 CACATOR CAVE MALVM
Four classifiers for the beautiful filthy graffiti of Pompeii
Towards Data Science
CACATOR CAVE MALVM
Four classifiers for the beautiful filthy graffiti of Pompeii
🎥 Hands-On Deep Learning with TensorFlow 2.0: Introduction to Recurrent | packtpub.com
👁 1 раз ⏳ 1142 сек.
👁 1 раз ⏳ 1142 сек.
This video tutorial has been taken from Hands-On Deep Learning with TensorFlow 2.0. You can learn more and buy the full video course here [https://bit.ly/2IfQV3J]
Find us on Facebook -- http://www.facebook.com/Packtvideo
Follow us on Twitter - http://www.twitter.com/packtvideoVk
Hands-On Deep Learning with TensorFlow 2.0: Introduction to Recurrent | packtpub.com
This video tutorial has been taken from Hands-On Deep Learning with TensorFlow 2.0. You can learn more and buy the full video course here [https://bit.ly/2IfQV3J]
Find us on Facebook -- http://www.facebook.com/Packtvideo
Follow us on Twitter - http://ww…
Find us on Facebook -- http://www.facebook.com/Packtvideo
Follow us on Twitter - http://ww…
Architecting a Machine Learning Pipeline
🔗 Architecting a Machine Learning Pipeline
How to build scalable Machine Learning systems — Part 2/2
🔗 Architecting a Machine Learning Pipeline
How to build scalable Machine Learning systems — Part 2/2
Towards Data Science
Architecting a Machine Learning Pipeline
How to build scalable Machine Learning systems — Part 2/2
Create Animated Bar Charts using R
🔗 Create Animated Bar Charts using R
Recently, Animated Bar Plots have started going Viral on Social Media leaving a lot of Data Enthusiasts wondering how are these Animated…
🔗 Create Animated Bar Charts using R
Recently, Animated Bar Plots have started going Viral on Social Media leaving a lot of Data Enthusiasts wondering how are these Animated…
Towards Data Science
Create Trending Animated Bar Charts using R
Recently, Animated Bar Plots have started going Viral on Social Media leaving a lot of Data Enthusiasts wondering how are these Animated…
🎥 Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 18 – Constituency Parsing, TreeRNNs
👁 1 раз ⏳ 4838 сек.
👁 1 раз ⏳ 4838 сек.
Professor Christopher Manning, Stanford University
http://onlinehub.stanford.edu/
Professor Christopher Manning
Thomas M. Siebel Professor in Machine Learning, Professor of Linguistics and of Computer Science
Director, Stanford Artificial Intelligence Laboratory (SAIL)
To follow along with the course schedule and syllabus, visit: http://web.stanford.edu/class/cs224n/index.html#schedule
To get the latest news on Stanford’s upcoming professional programs in Artificial Intelligence, visit: http://learn.sVk
Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 18 – Constituency Parsing, TreeRNNs
Professor Christopher Manning, Stanford University
http://onlinehub.stanford.edu/
Professor Christopher Manning
Thomas M. Siebel Professor in Machine Learning, Professor of Linguistics and of Computer Science
Director, Stanford Artificial Intelligence Laboratory…
http://onlinehub.stanford.edu/
Professor Christopher Manning
Thomas M. Siebel Professor in Machine Learning, Professor of Linguistics and of Computer Science
Director, Stanford Artificial Intelligence Laboratory…
Understanding and Reducing Bias in Machine Learning
https://medium.com/@Jaconda/understanding-and-reducing-bias-in-machine-learning-6565e23900ac
🔗 Understanding and Reducing Bias in Machine Learning
‘.. even after the observation of the frequent or constant conjunction of objects, we have no reason to draw any inference concerning any…
https://medium.com/@Jaconda/understanding-and-reducing-bias-in-machine-learning-6565e23900ac
🔗 Understanding and Reducing Bias in Machine Learning
‘.. even after the observation of the frequent or constant conjunction of objects, we have no reason to draw any inference concerning any…
Medium
Understanding and Reducing Bias in Machine Learning
‘.. even after the observation of the frequent or constant conjunction of objects, we have no reason to draw any inference concerning any…