351 research outputs found
Development Status and Application Research of Rare Earth Permanent Magnet Motor
Since entering the new century, the efficient use of energy has become the key to the development of every country in the world, so it is an inevitable trend to create a resource-saving society. So many fields are also actively exploring new environmental protection technology, and in the development process of China's industrial industry, the further use of rare earth permanent magnet motor can better realize the full use of energy. Therefore, this paper will analyze the development of rare earth permanent magnet motor and the overall application trend
Enabling Large Language Models to Learn from Rules
Large language models (LLMs) have shown incredible performance in completing
various real-world tasks. The current knowledge learning paradigm of LLMs is
mainly based on learning from examples, in which LLMs learn the internal rule
implicitly from a certain number of supervised examples. However, the learning
paradigm may not well learn those complicated rules, especially when the
training examples are limited. We are inspired that humans can learn the new
tasks or knowledge in another way by learning from rules. That is, humans can
grasp the new tasks or knowledge quickly and generalize well given only a
detailed rule and a few optional examples. Therefore, in this paper, we aim to
explore the feasibility of this new learning paradigm, which encodes the
rule-based knowledge into LLMs. We propose rule distillation, which first uses
the strong in-context abilities of LLMs to extract the knowledge from the
textual rules and then explicitly encode the knowledge into LLMs' parameters by
learning from the above in-context signals produced inside the model. Our
experiments show that making LLMs learn from rules by our method is much more
efficient than example-based learning in both the sample size and
generalization ability.Comment: In progres
Advances in alternative splicing identification: deep learning and pantranscriptome
In plants, alternative splicing is a crucial mechanism for regulating gene expression at the post-transcriptional level, which leads to diverse proteins by generating multiple mature mRNA isoforms and diversify the gene regulation. Due to the complexity and variability of this process, accurate identification of splicing events is a vital step in studying alternative splicing. This article presents the application of alternative splicing algorithms with or without reference genomes in plants, as well as the integration of advanced deep learning techniques for improved detection accuracy. In addition, we also discuss alternative splicing studies in the pan-genomic background and the usefulness of integrated strategies for fully profiling alternative splicing
Artificial intelligence applied in cardiovascular disease: a bibliometric and visual analysis
BackgroundWith the rapid development of technology, artificial intelligence (AI) has been widely used in the diagnosis and prognosis prediction of a variety of diseases, including cardiovascular disease. Facts have proved that AI has broad application prospects in rapid and accurate diagnosis.ObjectiveThis study mainly summarizes the research on the application of AI in the field of cardiovascular disease through bibliometric analysis and explores possible future research hotpots.MethodsThe articles and reviews regarding application of AI in cardiovascular disease between 2000 and 2023 were selected from Web of Science Core Collection on 30 December 2023. Microsoft Excel 2019 was applied to analyze the targeted variables. VOSviewer (version 1.6.16), Citespace (version 6.2.R2), and a widely used online bibliometric platform were used to conduct co-authorship, co-citation, and co-occurrence analysis of countries, institutions, authors, references, and keywords in this field.ResultsA total of 4,611 articles were selected in this study. AI-related research on cardiovascular disease increased exponentially in recent years, of which the USA was the most productive country with 1,360 publications, and had close cooperation with many countries. The most productive institutions and researchers were the Cedar sinai medical center and Acharya, Ur. However, the cooperation among most institutions or researchers was not close even if the high research outputs. Circulation is the journal with the largest number of publications in this field. The most important keywords are “classification”, “diagnosis”, and “risk”. Meanwhile, the current research hotpots were “late gadolinium enhancement” and “carotid ultrasound”.ConclusionsAI has broad application prospects in cardiovascular disease, and a growing number of scholars are devoted to AI-related research on cardiovascular disease. Cardiovascular imaging techniques and the selection of appropriate algorithms represent the most extensively studied areas, and a considerable boost in these areas is predicted in the coming years
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