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数智赋能竞技体育后备人才培养是实现精准化培养的应然选择,也是促进人才培养提质增效的关键举措。采用文献调研、逻辑分析等方法,研究数智赋能竞技体育后备人才培养的理论内涵、作用机理与实现路径。数智赋能竞技体育后备人才培养是指在竞技体育后备人才培养过程中通过融入数智技术,提高培养者的数字智商,营造数智化环境,从而在培养过程中生产数据智能,用以服务、支持和管理培养人才的实践活动。数智赋能竞技体育后备人才培养的作用机理主要体现在培养单位从低效协同向高效协同转变、培养环境从封闭保守向开放创新转变、培养过程从粗放式向精准式转变。提出强化政策顶层设计、补齐数智技术短板、搭建数智支持平台、构建数字智商培训体系、激发数据智能价值等行之有效的实现路径,希冀深入推进数智赋能竞技体育后备人才培养的实施。
Abstract:It is a necessarily choice to achieve accurate cultivation and a key initiative to promote the quality and efficiency of talent cultivation that uses digital intelligence to empower the cultivation of reserve talents in competitive sports. Using literature research,logical analysis,and other methods,we studied the theoretical connotation,function mechanism,and realization path for digital intelligence to empower the cultivation of sports reserve talents. That digital intelligence empowering the cultivation of sports reserve talents is a practical activity that improves the Digital IQ(DQ) of trainers and creates a digitally intelligent environment through the incorporation of digital intelligence technologies in the process of training reserve talents in competitive sports,to produce data intelligence in the process of training,which can be used to serve,support,and manage the activities of training talents. The mechanism of digital intelligence empowering the cultivation of sports reserve talents is mainly reflected in the transformation of the training unit from low efficient collaboration to high efficient collaboration,the transformation of the training environment from closed and conservative to open and innovative,and the transformation of the training process from rough to precise. Based on the above,this study proposes effective paths such as strengthening the top-level design of policies,making up the short board of digital intelligence technology,building a digital intelligence support platform,constructing a DQ training system,and stimulating the value of data intelligence,hoping to promote further empowerment from digital intelligence for the cultivation of sports reserve talents.
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基本信息:
DOI:10.13297/j.cnki.issn1005-0000.2025.02.014
中图分类号:G812
引用信息:
[1]李木子,杨青.数智赋能竞技体育后备人才培养的机理与路径研究[J].天津体育学院学报,2025,40(02):226-234.DOI:10.13297/j.cnki.issn1005-0000.2025.02.014.
基金信息:
国家社会科学后期资助项目(项目编号:24FTYB019); 江苏省社会科学基金项目(项目编号:23TYD006)