News

A system that generates images by inducing random fluctuations in a laser beam could slash energy use compared with standard ...
Researchers have developed a new tool, bimodularity, that adds directionality to community detection in networks.
Discover a smarter way to grow with Learn with Jay, your trusted source for mastering valuable skills and unlocking your full potential. Whether you're aiming to advance your career, build better ...
A new study led by researchers from the Yunnan Observatories of the Chinese Academy of Sciences has developed a neural network-based method for large-scale celestial object classification ...
This study assesses the performance of CustomNet, a lightweight neural network model trained using NumPy and Pandas, compared to the VGG-16 architecture on the datasets of MNIST, Fashion MNIST, and ...
Google confirmed that Imagen 4, which is the company's state-of-the-art text-to-image, is rolling out for free, but only on AI Studio.
Additionally, using foundation model encoders directly without fine-tuning resulted in generally poor performance on the classification task. Conclusion: Our findings suggest that deep learning models ...
This repository contains an end-to-end implementation of a convolutional neural network (CNN) trained on the CIFAR-10 dataset for multi-class image classification. It demonstrates fundamental deep ...
However, a relatively new form of quantile regression is neural network quantile regression -- a variation of neural network regression. By using a custom loss function that penalizes low predictions ...