Remove 2016 Remove Deep Learning Remove Neural Network
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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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CES 2025: AI Advancing at ‘Incredible Pace,’ NVIDIA CEO Says

NVIDIA

RTX Neural Shaders use small neural networks to improve textures, materials and lighting in real-time gameplay. RTX Neural Faces and RTX Hair advance real-time face and hair rendering, using generative AI to animate the most realistic digital characters ever.

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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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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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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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YOLOv4: A Fast and Efficient Object Detection Model

Viso.ai

The YOLO Family of Models The first YOLO model was introduced back in 2016 by a team of researchers, marking a significant advancement in object detection technology. Convolution Layer: The concatenated feature descriptor is then passed through a Convolution Neural Network.

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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.