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TensorFlow vs. PyTorch: What’s Better for a Deep Learning Project?

Towards AI

Photo by Marius Masalar on Unsplash Deep learning. A subset of machine learning utilizing multilayered neural networks, otherwise known as deep neural networks. If you’re getting started with deep learning, you’ll find yourself overwhelmed with the amount of frameworks.

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Transformer Impact: Has Machine Translation Been Solved?

Unite.AI

Neural Machine Translation (NMT) In 2016, Google made the switch to Neural Machine Translation. It uses deep learning models to translate entire sentences as a whole and at once, giving more fluent and accurate translations.

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AI News Weekly - Issue #339: Next DeepMind's Algorithm To Eclipse ChatGPT - Jun 29th 2023

AI Weekly

In the News Next DeepMind's Algorithm To Eclipse ChatGPT IN 2016, an AI program called AlphaGo from Google’s DeepMind AI lab made history by defeating a champion player of the board game Go. Powered by pluto.fi techxplore.com Sponsor Your AI investing Co-Pilot With Pluto you can: ?

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Game-Changer: How the World’s First GPU Leveled Up Gaming and Ignited the AI Era

NVIDIA

Deep learning — a software model that relies on billions of neurons and trillions of connections — requires immense computational power. His neural network, AlexNet, trained on a million images, crushed the competition, beating handcrafted software written by vision experts. This marked a seismic shift in technology.

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YOLOv9: A Leap in Real-Time Object Detection

Unite.AI

Object detection has seen rapid advancement in recent years thanks to deep learning algorithms like YOLO (You Only Look Once). Review of Previous YOLO Versions The YOLO (You Only Look Once) family of models has been at the forefront of fast object detection since the original version was published in 2016.

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Calibration Techniques in Deep Neural Networks

Heartbeat

Introduction Deep neural network classifiers have been shown to be mis-calibrated [1], i.e., their prediction probabilities are not reliable confidence estimates. Further, neural network classifiers are often overconfident in their predictions [1]. 4] as a regularization technique for deep neural networks.

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Introducing Our New Punctuation Restoration and Truecasing Models

AssemblyAI

  Each stage leverages a deep neural network that operates as a sequence labeling problem but at different granularities: the first network operates at the token level and the second at the character level. Training Data : We trained this neural network on a total of 3.7 billion words). billion words.