Large community science platforms such as iNaturalist contain hundreds of millions of biodiversity images that often capture ecological context on behaviors, interactions, phenology, and habitat. Yet most ecological workflows rely on metadata filtering or manual inspection, leaving this secondary information inaccessible at scale. We introduce INQUIRE-Search, an open-source system that enables scientists to rapidly and interactively search within an ecological image database for specific concepts using natural language, verify and export relevant observations, and utilize this discovered data for novel scientific analysis. Compared to traditional methods, INQUIRE-Search takes a fraction of the time, opening up new possibilities for scientific questions that can be explored. Through five case studies, we show the diversity of scientific applications that a tool like INQUIRE-Search can support, from seasonal variation in behavior across species to forest regrowth after wildfires. These examples demonstrate a new paradigm for interactive, efficient, and scalable scientific discovery that can begin to unlock previously inaccessible scientific value in large-scale biodiversity datasets. Finally, we emphasize using such AI-enabled discovery tools for science call for experts to reframe the priorities of the scientific process and develop novel methods for experiment design, data collection, survey effort, and uncertainty analysis.
翻译:诸如iNaturalist等大型社区科学平台包含数亿张生物多样性图像,这些图像通常记录了行为、相互作用、物候和栖息地等生态背景信息。然而,大多数生态学工作流程依赖于元数据过滤或人工检查,使得这些次要信息难以大规模获取。我们推出了INQUIRE-Search,这是一个开源系统,使科学家能够通过自然语言在生态图像数据库中快速交互式搜索特定概念,验证并导出相关观测数据,并将这些发现的数据用于新的科学分析。与传统方法相比,INQUIRE-Search仅需极短时间,为可探索的科学问题开辟了新可能性。通过五个案例研究,我们展示了INQUIRE-Search所能支持的科学应用多样性,从跨物种行为的季节性变化到野火后森林再生。这些示例展示了一种交互式、高效且可扩展的科学发现新范式,能够初步释放大规模生物多样性数据集中先前难以获取的科学价值。最后,我们强调,将此类人工智能驱动的发现工具用于科学研究,需要专家重新构建科学过程的优先级,并开发实验设计、数据收集、调查工作和不确定性分析的新方法。