Original title: Communication-Efficient Heterogeneous Federated Learning with Generalized Heavy-Ball Momentum Authors: Riccardo Zaccone, Carlo Masone, Marco Ciccone This article discusses federated learning, which is a cutting-edge approach for learning from decentralized data in privacy-constrained scenarios.…
Month: December 2023
How can continuous 16-bit training accelerate pre-trained 32-bit neural networks?
Original title: Continuous 16-bit Training: Accelerating 32-bit Pre-Trained Neural Networks Authors: Juyoung Yun The article discusses a new approach to training deep learning models using 16-bit precision instead of the traditional 32-bit precision. It explains…
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Can protein language models predict polyreactivity of different types of antibodies?
Original title: Protein language models enable prediction of polyreactivity of monospecific, bispecific, and heavy-chain-only antibodies Authors: Xin Yu,Kostika Vangjeli,Anusha Prakash,Meha Chhaya,Samantha Stanley,Noah Cohen,Lili Huang In this article, the authors discuss the importance of early assessment…
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Can Charm simulate chromosomal rearrangements on Hi-C-like data?
Original title: Charm is a flexible pipeline to simulate chromosomal rearrangements on Hi-C-like data. Authors: Miroslav Nuriddinov,Polina Belokopytova,Veniamin Fishman The article discusses the challenge of identifying structural variants (SVs) in genomic studies and highlights the…
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How can LLVMs4Protest help to understand protests in the news?
Original title: LLVMs4Protest: Harnessing the Power of Large Language and Vision Models for Deciphering Protests in the News Authors: Yongjun Zhang In this article, the authors discuss how large language and vision models have revolutionized…
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Can backdoors in diffusion models be eliminated through distribution shift?
Original title: Elijah: Eliminating Backdoors Injected in Diffusion Models via Distribution Shift Authors: Shengwei An, Sheng-Yen Chou, Kaiyuan Zhang, Qiuling Xu, Guanhong Tao, Guangyu Shen, Siyuan Cheng, Shiqing Ma, Pin-Yu Chen, Tsung-Yi Ho, Xiangyu Zhang…
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What are Weighted Riesz Particles?
Original title: Weighted Riesz Particles Authors: Xiongming Dai, Gerald Baumgartner In this article, the authors discuss Markov chain Monte Carlo (MCMC) methods, which are used to explore complex statistical distributions. These methods allow for the…
Can BARtab & bartools effectively analyze synthetic cellular barcodes in the genome and transcriptome?
Original title: BARtab & bartools: an integrated Nextflow pipeline and R package for the analysis of synthetic cellular barcodes in the genome and transcriptome Authors: Henrietta Holze,Laure Talarmain,Katie A. Fennell,Enid Y. Lam,Mark A. Dawson,Dane Vassiliadis…
Is there an efficient method for creating positive NIPT samples with autosomal trisomy?
Original title: An Efficient Computational Method to Create Positive NIPT Samples with Autosomal Trisomy Authors: Tinh Nguyen Huy,Huynh Van Nguyen,Minh Dinh Pham,Vinh Sy Le In the article, researchers discuss the development of a new computational…
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What are the latest developments in 3D Neural Stylization?
Original title: Advances in 3D Neural Stylization: A Survey Authors: Yingshu Chen, Guocheng Shao, Ka Chun Shum, Binh-Son Hua, Sai-Kit Yeung The article explores how modern artificial intelligence is revolutionizing the production of digital art.…
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