摘要
生成式人工智能正深刻变革着计算社会科学领域,为数据收集与分析的多模态处理开辟了新的可能。 这一技术突破对缺乏深厚编程背景的研究者而言影响重大。 其一,生成式人工智能可通过自动化代码生成、注释和调试,大幅提高社会科学研究者的工作效率;其二,借助创新的提示工程,研究人员能够深入开展复杂的数据分析;其三,计算社会科学的教学领域也能受益于生成式人工智能工具,尤其是在代码注释和复杂代码解释方面,从而简化了学习过程,使计算社会科学技术更易理解和接触。
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参考文献
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