Showing 43,541 - 43,560 results of 68,043 for search '"technology"', query time: 0.22s Refine Results
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    Florida 4-H Fashion Revue Guide by Geralyn Sachs, Monica Brinkley, Judith R. Butterfield, Heather M. Janney, Becky V. Bennett, S. Amolsch, Sarah T. Hensley, Pamela Phillippe, Muriel Turner, Stacey Ellison, Brenda Williams, Marnie Ward, Sonja Crawford, Caylin Hilton, Paula Davis, Judy Corbus, Marie Arick

    Published 2024-02-01
    “…This publication offers an exploration of science and art through clothing design, engineering, technology, and craftsmanship. It contains fashion revue guidelines, interview and modeling tips, entry forms, and more.  …”
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    Retracted: Intelligent design of rural residential environment guided by blockchain under the concept of green low carbon by Shuo Cheng, Yao Lu

    Published 2023-08-01
    “…The above article from IET Software, published online on 5 February 2023 in Wiley Online Library (wileyonlinelibrary.com), has been retracted by agreement between the Editor‐in‐Chief, Hana Chockler, the Institution of Engineering and Technology (the IET) and John Wiley and Sons Ltd. This article was published as part of a Guest Edited special issue. …”
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  7. 43547

    Model and Algorithm for Dependent Activity Schedule Optimization Combining with BIM by Guofeng Ma, Xiaoye Liu

    Published 2020-01-01
    “…This research also provides researchers a new insight into combining overlap problems and BIM technology.…”
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  8. 43548

    Programmed Tool for Quantifying Reliability and Its Application in Designing Circuit Systems by N. S. S. Singh

    Published 2014-01-01
    “…As CMOS technology scales down to nanotechnologies, reliability continues to be a decisive subject in the design entry of nanotechnology-based circuit systems. …”
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  9. 43549

    An optimized approach for container deployment driven by a two-stage load balancing mechanism. by Chaoze Lu, Jianchao Zhou, Qifeng Zou

    Published 2025-01-01
    “…Lightweight container technology has emerged as a fundamental component of cloud-native computing, with the deployment of containers and the balancing of loads on virtual machines representing significant challenges. …”
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    The TEI and Current Standards for Structuring Linguistic Data by Maik Stührenberg

    Published 2012-10-01
    “…During the last decade, efforts have been undertaken to develop definitive de jure standards for linguistic data that not only act as a normative basis for the exchange of language corpora but also address recent advancements in technology, such as web-based standards, and the use of large and multiply annotated corpora. …”
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  18. 43558

    Research on the graphical convolution neural network based benefits recommendation system strategy by Tao TAO, Zhen LI, Jibin WANG, Haiyong XU, Yong JIANG, Zhuo CEHN, Runbo ZHANG, Qingyuan HU

    Published 2023-08-01
    “…The recommendation system is one of the important methods to realize the intelligent recommendation of massive Internet benefit products.In order to improve the accuracy of personalized benefits recommendation, a deep learning recommendation system based on graph computing method was proposed.Considering the heterogeneity of multi-source data, a graph representation technology based on deep learning was carried out to construct the multiple relationship graph between users and benefit products.The multiple relationship graph extracted the information of graph structure, and model the heterogeneous graphs for the multi-dimensional features of users and the multiple interaction modes between rights and interests products, which effectively aggregated various interactive information and the multiple feature.A heterogeneous graph convolutional neural network was built to learn the high-dimensional feature vectors for various nodes, and excavate users' latent preferences to provide a recommendation link with strong interpretability, which greatly improved the recommendation success rate and generating economic value.…”
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