论文标题

SPACEML:与公民科学家分发开源研究,以促进NASA的太空技术

SpaceML: Distributed Open-source Research with Citizen Scientists for the Advancement of Space Technology for NASA

论文作者

Koul, Anirudh, Ganju, Siddha, Kasam, Meher, Parr, James

论文摘要

传统上,学术实验室进行开放式研究,主要关注具有长期价值的发现,而不是可以在现实世界中部署的产品。另一方面,该行业的研究是由预期的商业投资回报率驱动的,因此着重于具有短期时间表的现实世界产品。在这两种情况下,机会都是有选择性的,通常可用于具有高级教育背景的研究人员。研究经常发生在闭门造车后面,并可能保密,直到其发布或产品发布,加剧了AI可重复性问题并减慢了该领域其他人的未来研究。由于许多研究组织倾向于专注于特定领域,因此跨学科研究的机会减少了。由于包括高前期风险,预算约束以及缺乏数据可用性和利基领域的专家的因素,在没有商业但巨大的公共价值的未开发领域进行长期大胆研究很难。只有少数公司或资金充足的研究实验室可以负担得起这样的长期研究。随着研究组织的重点是爆炸的领域和资源,分散了跨学科研究的成熟的稀薄机会。除了这些紧急情况之外,还需要通过开源贡献者与公民科学家一起参与研究对话中的积极作用。我们提出了一项简短的案例研究,该案例研究是NASA的AI加速器Frontier Development Lab的扩展。 SPACEML分发开源研究,并邀请志愿公民科学家在空间与AI的交汇处分享和部署高社会价值产品。

Traditionally, academic labs conduct open-ended research with the primary focus on discoveries with long-term value, rather than direct products that can be deployed in the real world. On the other hand, research in the industry is driven by its expected commercial return on investment, and hence focuses on a real world product with short-term timelines. In both cases, opportunity is selective, often available to researchers with advanced educational backgrounds. Research often happens behind closed doors and may be kept confidential until either its publication or product release, exacerbating the problem of AI reproducibility and slowing down future research by others in the field. As many research organizations tend to exclusively focus on specific areas, opportunities for interdisciplinary research reduce. Undertaking long-term bold research in unexplored fields with non-commercial yet great public value is hard due to factors including the high upfront risk, budgetary constraints, and a lack of availability of data and experts in niche fields. Only a few companies or well-funded research labs can afford to do such long-term research. With research organizations focused on an exploding array of fields and resources spread thin, opportunities for the maturation of interdisciplinary research reduce. Apart from these exigencies, there is also a need to engage citizen scientists through open-source contributors to play an active part in the research dialogue. We present a short case study of SpaceML, an extension of the Frontier Development Lab, an AI accelerator for NASA. SpaceML distributes open-source research and invites volunteer citizen scientists to partake in development and deployment of high social value products at the intersection of space and AI.

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