Data Phoenix – Telegram
Data Phoenix
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Data Phoenix is your best friend in learning and growing in the data world!
We publish digest, organize events and help expand the frontiers of your knowledge in ML, CV, NLP, and other aspects of AI. Idea and implementation: @dmitryspodarets
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📌Image Super-Resolution via Iterative Refinement

Chitwan Saharia et al. present SR3, an approach to image Super-Resolution via Repeated Refinement. SR3 adapts denoising diffusion probabilistic models to conditional image generation and performs super-resolution through a stochastic denoising process.
https://bit.ly/3AiBdN3
​​Good morning people! It's Sunday and the best way to start your day is to smile!🤗
💡SynLiDAR: Learning From Synthetic LiDAR Sequential Point Cloud for Semantic Segmentation

SynLiDAR is a synthetic LiDAR point cloud dataset that contains large-scale point-wise annotated point cloud with accurate geometric shapes and comprehensive semantic classes, which the authors used to design PCT-Net, to narrow down the gap with real-world point cloud data.
https://bit.ly/3CvT5WC
📚Designing, Visualizing and Understanding Deep Neural Networks

A collection of lectures on Deep Learning delivered by Sergey Levine at UC Berkeley in 2020/21. In total, the course features 66 lectures, from the ML basics to policy gradients and meta learning.
https://bit.ly/3fKyEMd
📌Alias-Free Generative Adversarial Networks

The synthesis process of typical generative adversarial networks depends on absolute pixel coordinates in an unhealthy manner. The authors trace its root cause and derive architectural changes that guarantee that unwanted information cannot leak into hierarchical synthesis.
https://bit.ly/3ix7E4v
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📌Building Architectures that Can Handle the World’s Data

Perceiver is a general-purpose architecture that can process data including images, point clouds, audio, video, and their combinations. Learn more about this universal architecture!

https://bit.ly/2VLxCc2
😊 Салют!
🙊 Бывает, что о важной, полезной конференции узнаешь уже по фотографиям с мероприятия, выложенных в сеть докладах и восторженных статусах коллег.
🔥 Есть способ не пропускать актуальные ивенты, загодя планировать время и бюджет на обучение.
🚀 Представляем канал наших друзей @gde_konfa, который поможет вам быть в курсе всех интересных конференций по data science, project/product менеджменту, маркетингу в Украине и не только! А теперь еще и много полезного online-контента: онлайн-курсы, конференциях и обучающие материалы.
⚠️ А еще, в канале часто публикуются уникальные промо-коды на ивенты.
​​We are aware that some of you are looking for job opportunities. We've put together a list of 10 positions available this week, enjoy!

1) Machine Learning Optimization Engineer, Data Science UA
https://bit.ly/3m4TgCD
2) Deep Learning Engineer, Reface
https://bit.ly/3yJo4MV
3) Data Scientist (Advanced Analytics), SoftServe
https://bit.ly/37Cu7Hd
4) Lead MLOps Engineer, SoftServe
https://bit.ly/3fWst7G
5) AI/ML Computer Vision Engineer, Xenoss
https://bit.ly/3lWiFOV
For other 5 positions click 👉🏻 https://bit.ly/3CKoR2h

Did you find something for yourself? Let us know!
​​Good morning folks! Here's your dose of positivity for this Sunday!🤗
https://bit.ly/3AHUMi7
📌Companies could spend nearly $342 billion on AI software, hardware, and services in 2021. The spending is to rise to $500 billion by 2024.

https://bit.ly/37JFQ6L
💡Make a Rock-Solid ML Model Using Sklearn Pipeline

Most of data is useless unless you perform a decent amount of transformation and preprocessing. In this article, you'll learn how to use Sklearn to design and build robust ML models.

https://bit.ly/2W29jq9

#DataPhoenix #DataScience #MachineLearning #ArtificialIntelligence #AI #ML #Data
💡Data Movement in Netflix Studio via Data Mesh

Learn about Netflix's journey to a more efficient data movement using Data Mesh, to improve the pace of production and efficiency of global business operations using the most up-to-date information.
https://bit.ly/3yWUV0R
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https://bit.ly/37UvSzC
📌Observation of Time-Crystalline Eigenstate Order on a Quantum Processor

The authors demonstrate the characteristic spatiotemporal response of a DTC for generic initial states. A time-reversal protocol discriminates external decoherence from intrinsic thermalization and uses quantum typicality to circumvent the cost of densely sampling the eigenspectrum.
https://bit.ly/3CTIBRn