社会技术系统
领域(数学)
计算机科学
奖学金
工艺
生成语法
数据科学
步伐
动作(物理)
论证(复杂分析)
社会学
工程伦理学
管理科学
引用
认识论
转化(遗传学)
人工智能
新兴技术
跨学科
功率(物理)
知识管理
信息系统
研究计划
信息技术
技术写作
作者
Ram D. Gopal,Jingjing Li,Kai Riemer,Suprateek Sarker,Param Vir Singh,Anjana Susarla,Martin Bichler,Jason Bennett Thatcher
标识
DOI:10.1287/isre.2025.editorial.v36.n4
摘要
Generative artificial intelligence (AI) is not merely changing how information systems (IS) research gets done—it is reshaping what research can be. We stand at a pivotal moment where machines can help generate hypotheses, synthesize vast literatures, and identify patterns that would take human researchers months to uncover. Yet, this unprecedented capability presents equally unprecedented risks to scholarly integrity. Because the field is uniquely positioned to understand sociotechnical transformations, IS research faces an extraordinary opportunity to pioneer “inventing with machines” while preserving the human insight and oversight that gives scholarship, as currently defined, its meaning. This transformation demands more than tool adoption. It requires a reimagination of scholarly infrastructure, norms, and practice. However, this transformation of research tooling creates a dangerous paradox: Powerful AI tools are now accessible to researchers who lack the technical literacy to understand and use them responsibly, threatening everything from citation accuracy to theoretical validity. Yet within this paradox lies the potential for revolutionary advances in how we craft our future as scholars. Informed by the sociotechnical perspective, we argue that the path forward requires coordinated community action that goes far beyond individual skill development. The IS community must lead the development of specialized AI tools that consider our theoretical traditions, create educational frameworks that preserve scholarly values while embracing computational capabilities, and pioneer review processes that harness AI’s analytical power without ceding human control, at least, in the short run. Success will determine not only the future of IS scholarship but our field’s capacity to guide other disciplines through this fundamental transformation of academic practice. The era of human-AI collaboration in research has already begun. How we govern and guide it will define the next generation of scholarly discovery.
科研通智能强力驱动
Strongly Powered by AbleSci AI