Neural Networks | Нейронные сети
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​ISSCC 2019: Deep Learning Hardware: Past, Present, and Future - Yann LeCun

🔗 ISSCC 2019: Deep Learning Hardware: Past, Present, and Future - Yann LeCun
Yann LeCun, Facebook AI Research & New York University, New York, NY

Deep learning has caused revolutions in computer understanding of images, audio, and text,
enabling new applications such as information search and filtering, autonomous driving,
radiology screening, real-time language translation, and virtual assistants. But almost all these
successes largely use supervised learning, which requires human-annotated data, or
reinforcement learning, which requires too many trials to be practical in most rea
🎥 Swift for TensorFlow (Google I/O'19)
👁 1 раз 1705 сек.
Swift for TensorFlow is a platform for the next generation of machine learning that leverages innovations like first-class differentiable programming to seamlessly integrate deep neural networks with traditional software development. In this session, learn how Swift for TensorFlow can make advanced machine learning research easier and why Jeremy Howard’s fast.ai has chosen it for the latest iteration of their deep learning course.

Watch more #io19 here: Machine Learning at Google I/O 2019 Playlist → https:
🎥 Exploring the Deep Learning Framework PyTorch - Stephanie Kim
👁 1 раз 2159 сек.
STEPHANIE KIM | SOFTWARE ENGINEER AT ALGORITHMIA

Users rapidly adopted PyTorch 1.0 for many reasons. PyTorch is intuitive to learn, and its modularity enhances debugging and visibility. Additionally, unlike other frameworks such as Tensorflow, PyTorch supports dynamic computation graphs that allow network behavior changes on the fly. This talk showcases PyTorch benefits like TorchScript, which allows models to be exported in non-Python environments. We’ll also discuss pre-release serialization and performa
🎥 Train Custom Machine Learning Models with No Data Science Expertise (Google I/O'19)
👁 1 раз 1315 сек.
Cloud AutoML is a suite of machine learning products that enables developers with limited machine learning expertise to train high-quality models specific to their needs, by leveraging Google’s state-of-the-art neural architecture search technology. Learn the power and ease-of-use of Cloud AutoML Tables, Video Intelligence, and Natural Language, and take a look at how Cloud AutoML would fare if it were to participate in data science competitions.

Watch more #io19 here:
GCP at Google I/O 2019 Playlist → ht
🎥 Machine Learning is the New Chicken Sexer - This Week in Google 507
👁 1 раз 7351 сек.
Google I/O Highlights
This Week's Stories

--  Google I/O Highlights
--  Pixel 3A Unboxing
--  Nest Hub Max > Google Home Hub
--  AR Walking Directions in Google Maps
--  Google Leans into Helpfulness vs Privacy
--  Project Euphonia: Speech-to-text for People who are Hard to Understand
--  Trouble in Chromebook Land
--  AR Coming to Google Search
--  Next-Generation Google Assistant
--  Changes to Android Auto
--  Assistant Speeds Up
--  Google Maps Gets Incognito Mode
--  Android Q Preview
--  Protest Plan
🎥 ML Kit: Machine Learning for Mobile with Firebase (Google I/O'19)
👁 1 раз 2284 сек.
ML Kit allows you to harness the power of machine learning in your iOS and Android apps without needing to be an expert in it. Leverage powerful, but simple-to-use on-device and cloud-based APIs for Vision and Natural Language Processing, or train and/or deploy your own models. Understand some big additions to ML Kit and how to use these to enable smarter, richer experiences to your users.

Watch more #io19 here:
Firebase at Google I/O 2019 Playlist → https://goo.gle/2GSFVqN
Google I/O 2019 All Sessions Pl
🎥 Deep Learning with TensorFlow - Introduction to TensorFlow
👁 1 раз 1106 сек.
Welcome to second tutorial. Until now, we have used numpy to build neural networks. Now I will step you through a deep learning framework that will allow you to build neural networks more easily. Machine learning frameworks like TensorFlow can speed up your machine learning development significantly. This frameworks have a lot of documentation, which you should feel free to read. In this tutorial, I will teach to do the following in TensorFlow:
- Initialize variables
- Start your own session

Text version t
Deep Learning to Solve Challenging Problems (Google I/O'19)

https://www.youtube.com/watch?v=rP8CGyDbxBY

🎥 Deep Learning to Solve Challenging Problems (Google I/O'19)
👁 1 раз 2459 сек.
This talk will highlight some of Google Brain’s research and computer systems with an eye toward how it can be used to solve challenging problems, and will relate them to the National Academy of Engineering's Grand Engineering Challenges for the 21st Century, including the use of machine learning for healthcare, robotics, and engineering the tools of scientific discovery. He will also cover how machine learning is transforming many aspects of our computing hardware and software systems.

Watch more #io19
🎥 ML Kit x Material Design: Design Patterns for Mobile Machine Learning (Google I/O'19)
👁 1 раз 2043 сек.
Learn how to design user experiences for machine learning features in mobile apps using ML Kit and Material Design. This session will showcase design patterns for specific ML Kit API’s along with general considerations when designing for ML.

Watch more #io19 here:
Design at Google I/O 2019 Playlist → https://goo.gle/2IUneqd
Google I/O 2019 All Sessions Playlist → https://goo.gle/io19allsessions
Learn more on the I/O Website → https://google.com/io

Subscribe to the Google Design Channel → https://goo.gle
Задача по #DataScience от QIWI.

Наверняка вы знаете, что такое Терминалы QIWI. Они позволяют совершить оплату в пользу более чем двух тысяч провайдеров. Сейчас пользователи мало платят через терминалы, не знают или не помнят, что их услугу можно оплатить на терминале.

QIWI ищет команду, которая сможет доработать (уже реализованный) механизм, рекомендующий плательщику дополнительный платёж. Нужно научиться определять наиболее уместных провайдеров для данного терминала, исходя из его локации и частоты оплачиваемых провайдеров.

На реализацию QIWI выделяет 3 млн.рублей и 5 месяцев.

Задача подробно описана на сайте (видео + текст) — universe.qiwi.com

Заявки от команд до 19 мая.

🔗 QIWI Universe Product Hub 2019 — Сделаем бизнес вместе!
Product Hub QIWI Universe 3.0 2019
🎥 Diagnostic Visualization for Machine Learning with YellowBrick w/ Rebecca Bilbro - TWiML Talk #264
👁 1 раз 2559 сек.
Today we close out our PyDataSci series joined by Rebecca Bilbro, head of data science at ICX media and co-creator of the popular open-source visualization library YellowBrick.

In our conversation, Rebecca details:

• Her relationship with toolmaking, which led to the eventual creation of Yellowbrick.

• Popular tools within YellowBrick, including a summary of their unit testing approach.

• Interesting use cases that she’s seen over time.

• The growth she’s seen in the community of contrib