Showing 1 - 14 results of 14 for search '"data scientist"', query time: 0.05s Refine Results
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    Health Care Professionals and Data Scientists’ Perspectives on a Machine Learning System to Anticipate and Manage the Risk of Decompensation From Patients With Heart Failure: Qualitative Interview Study by Joana Seringa, Anna Hirata, Ana Rita Pedro, Rui Santana, Teresa Magalhães

    Published 2025-01-01
    “…ObjectiveThis study aimed to explore the perspectives of health care professionals and data scientists regarding the relevance, challenges, and potential benefits of using machine learning (ML) models to predict decompensation from patients with HF. …”
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    Understanding game data work by Heikki Tyni, Olli Sotamaa, Taina Myöhänen

    Published 2025-03-01
    “…These new needs and functions have generated emerging forms of work, such as those of the data analyst, data engineer, and data scientist. Through in-depth interviews with 20 Finnish game industry professionals and an analysis of game industry job advertisements, this paper examines the work and identity of game industry data workers. …”
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    ViT-DualAtt: An efficient pornographic image classification method based on Vision Transformer with dual attention by Zengyu Cai, Liusen Xu, Jianwei Zhang, Yuan Feng, Liang Zhu, Fangmei Liu

    Published 2024-12-01
    “…Experiments were conducted using the nsfw_data_scrapper dataset publicly available on GitHub by data scientist Alexander Kim. Our results demonstrated that ViT-DualAtt achieved a classification accuracy of 97.2% ± 0.1% in pornographic image classification tasks, outperforming the current state-of-the-art model (RepVGG-SimAM) by 2.7%. …”
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    More than data repositories: perceived information needs for the development of social sciences and humanities research infrastructures by Anna Sendra, Elina Late, Sanna Kumpulainen

    Published 2023-12-01
    “…Findings reveal that developing an infrastructure for conducting data-intensive research is a complicated task influenced by contrasting information needs between social sciences and humanities scholars and computer and data scientists, such as the demand for increased support of the former. …”
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    A dataset of Uniswap daily transaction indices by network by Nir Chemaya, Lin William Cong, Emma Jorgensen, Dingyue Liu, Luyao Zhang

    Published 2025-01-01
    “…Our work provides valuable resources for data scientists and contributes to the growth of the intelligent Web3 ecosystem.…”
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    How data science and AI-based technologies impact genomics by Jing Lin, Kee Yuan Ngiam

    Published 2023-01-01
    “…However, the accumulation of genomic data from sequencing and clinical data from electronic health records (EHRs) poses significant challenges for data scientists. Following the rise of artificial intelligence (AI) technology such as machine learning and deep learning, an increasing number of GWAS/PheWAS studies have successfully leveraged this technology to overcome the aforementioned challenges. …”
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    Explainable AI in Diagnostic Radiology for Neurological Disorders: A Systematic Review, and What Doctors Think About It by Yasir Hafeez, Khuhed Memon, Maged S. AL-Quraishi, Norashikin Yahya, Sami Elferik, Syed Saad Azhar Ali

    Published 2025-01-01
    “…<b>Background:</b> Artificial intelligence (AI) has recently made unprecedented contributions in every walk of life, but it has not been able to work its way into diagnostic medicine and standard clinical practice yet. Although data scientists, researchers, and medical experts have been working in the direction of designing and developing computer aided diagnosis (CAD) tools to serve as assistants to doctors, their large-scale adoption and integration into the healthcare system still seems far-fetched. …”
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    Using Gap Visualization to Navigate Multivariate Metabarcode Data, Select Primer Pairs, and Enhance Reference Data Quality by Xin‐Yi Chua, Louise Ord, Stephen J. Bent, David Lovell, Annette McGrath

    Published 2024-11-01
    “…We show how these visualization methods can enable amplicon survey study design and make fundamental molecular resources more accessible to a wider research audience beyond bioinformaticians and data scientists.…”
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    Measuring the Impact of the COVID-19 Pandemic on Diagnostic Delay in Rare Disease by Caitlin Hampson, William Evans, Lucy McKay, Lara Menzies

    Published 2022-07-01
    “…A cross-sector multi-stakeholder coalition was formed, Action for Rare Disease Empowerment (ARDEnt), with representation from patients with rare diseases and carers, patient advocacy groups, clinicians, academics, data scientists, and industry. A mixed methods approach was used to collect and collate information about the impact of the pandemic on diagnostic delay in rare disease. …”
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    Co-producing a safe mobility and falls informatics platform to drive meaningful quality improvement in the hospital setting: a mixed-methods protocol for the insightFall study by Ben Glampson, Clare Leon-Villapalos, Erik Mayer, Rachael Lear, Phoebe Averill, Catalina Carenzo, Rachel Tao, Robert Latchford

    Published 2025-02-01
    “…This protocol describes the co-design and testing of a safe mobility and falls informatics platform for automated, real-time insights to support the learning response to inpatient falls.Methods Underpinned by the learning health system model and human-centred design principles, this mixed-methods study will involve (1) collaboration between healthcare professionals, patients, data scientists and researchers to co-design a safe mobility and falls informatics platform; (2) co-production of natural language processing pipelines and integration with a user interface for automated, near-real-time insights and (3) platform usability testing. …”
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    Most prevalent jobs of doctoral degree graduates by detailed field of study by Marc Frenette, Tomasz Handler

    Published 2024-09-01
    “…Among female doctoral graduates of computer science programs, the most prevalent job was university professors and lecturers (29.5%), followed by software developers and programmers (18.1%); data scientists (10.9%); computer, software and Web designers and developers (10.0%); and computer and information systems professionals (9.0%). …”
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