Corippo, Clay Navarro, Akimmi Elias, Jarryd
The price of electricity can be very unpredictable as it is determined by many different factors including the usage at that time, weather, outages, location, and even the state of the economy. The ability to predict the price of electricity presents great value for both the consumers of electricity as well as the utility company themselves. All th...
Barrere, Killian Soullard, Yann Lemaitre, Aurélie Coüasnon, Bertrand
Transformer models have been showing groundbreaking results in the domain of natural language processing. More recently, they started to gain interest in many others fields as in computer vision. Traditional Transformer models typically require a significant amount of training data to achieve satisfactory results. However, in the domain of handwrit...
van Bokkem, Dirk (author)
The increasing global food demand, accompanied by the decreasing number of expert growers, brings the need for more sustainable and efficient solutions in horticulture. Consultancy company Delphy aims to face this challenge by taking a more data-driven approach, by means of autonomous growing inside the greenhouse. The controlled environment of gre...
Yamashita, Rikiya Kapoor, Tara Alam, Minhaj Nur Galimzianova, Alfiia Syed, Saad Ali Ugur Akdogan, Mete Alkim, Emel Wentland, Andrew Louis Madhuripan, Nikhil Goff, Daniel
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Published in
Radiology: Artificial Intelligence
Purpose To develop a deep learning–based risk stratification system for thyroid nodules using US cine images. Materials and Methods In this retrospective study, 192 biopsy-confirmed thyroid nodules (175 benign, 17 malignant) in 167 unique patients (mean age, 56 years ± 16 [SD], 137 women) undergoing cine US between April 2017 and May 2018 with Amer...
Yu, Alice C. Mohajer, Bahram Eng, John
Published in
Radiology: Artificial Intelligence
Purpose To assess generalizability of published deep learning (DL) algorithms for radiologic diagnosis. Materials and Methods In this systematic review, the PubMed database was searched for peer-reviewed studies of DL algorithms for image-based radiologic diagnosis that included external validation, published from January 1, 2015, through April 1, ...
Shim, Heesung Kim, Hyojin Allen, Jonathan E Wulff, Heike
The identification of promising lead compounds showing pharmacological activities toward a biological target is essential in early stage drug discovery. With the recent increase in available small-molecule databases, virtual high-throughput screening using physics-based molecular docking has emerged as an essential tool in assisting fast and cost-e...
Oh, Jiwon Song, Hyewon Shin, Euncheol Yang, Heesun Lim, Jongtae Hwang, Jin-Ha
Published in
ECS Journal of Solid State Science and Technology
Machine learning was applied to classify the device characteristics of indium gallium zinc oxide (IGZO) thin-film transistors (TFTs). A K-means approach was employed for initial clustering of IGZO transfer curves into three of four grades (high, medium-high, medium, and low) of TFT performance according to qualitative features. A 2-layered artifici...
Süzen, Mehmet
A short account of origins of mathematical formalism of neural networks is presented for physicists and computer scientist in basic discrete mathematical setting informally. The discourse of the development of mathematical formalism on the dynamics of lattice models in statistical physics and learning internal representations of neural networks as ...
Sawant, Aditya Raina, Rohit Patil, Anuja Pardeshi, Anand
Published in
Journal of Physics: Conference Series
Data plays the most important role in the development of industries, small businesses. Even world leaders need the data to make analyses and make better policies for people. In almost every field where the work process is digitized need to store data and then retrieve it. According to statistics most of the data is stored in the relational database...
Amri, Emna Courteille, Hermann Benoit, Alexandre Bolon, Philippe Dubucq, Dominique Poulain, Gilles Credoz, Anthony
Ocean surface monitoring, especially oil slick detection, has become mandatory due to its importance for oil exploration and risk prevention on ecosystems. For years, the detection task has been performed manually by photo-interpreters using Synthetic Aperture Radar (SAR) images with the help of contextual data such as wind. This tedious manual wor...