论文标题
从Frontier Development Lab和Spaceml学习 - NASA和ESA的AI加速器
Learnings from Frontier Development Lab and SpaceML -- AI Accelerators for NASA and ESA
论文作者
论文摘要
AI和ML技术的研究生活在各种具有异步目标和时间表的环境中:学术实验室和政府组织从事开放式研究,重点是具有长期价值的发现,而行业研究的研究是由商业追求驱动的,因此侧重于短期时间表和投资回报。从研究到产品的旅程通常是默认或临时的,导致技术过渡失败,在研发是跨组织和跨学科的情况下进一步加剧。更重要的是,许多产生结果的能力仍然锁定在私人存储库和个人研究人员的专业知识中,减慢了他人对未来研究的影响,并为ML社区的可重复性挑战做出了贡献。随着研究组织着重于爆炸的领域,跨学科研究的移交和成熟的机会减少了。有了这些紧张局势,我们看到有必要衡量研究过程中研究的正确性,影响和相关性,以实现更好的协作,提高可重复性,更快的进步和更受信任的结果。我们对NASA和ESA的公私伙伴关系下的AI加速器进行了Frontier Development Lab(FDL)的案例研究。 FDL研究遵循基于负责任的发展,进行和传播AI研究的原则实践,使FDL能够通过NASA的技术准备水平来衡量成功的跨学科和组织间研究项目。我们还研究了SPACEML开源研究计划,该计划有助于加速FDL的研究,从而在公民科学家中采用广泛采用的可部署项目。
Research with AI and ML technologies lives in a variety of settings with often asynchronous goals and timelines: academic labs and government organizations pursue open-ended research focusing on discoveries with long-term value, while research in industry is driven by commercial pursuits and hence focuses on short-term timelines and return on investment. The journey from research to product is often tacit or ad hoc, resulting in technology transition failures, further exacerbated when research and development is interorganizational and interdisciplinary. Even more, much of the ability to produce results remains locked in the private repositories and know-how of the individual researcher, slowing the impact on future research by others and contributing to the ML community's challenges in reproducibility. With research organizations focused on an exploding array of fields, opportunities for the handover and maturation of interdisciplinary research reduce. With these tensions, we see an emerging need to measure the correctness, impact, and relevance of research during its development to enable better collaboration, improved reproducibility, faster progress, and more trusted outcomes. We perform a case study of the Frontier Development Lab (FDL), an AI accelerator under a public-private partnership from NASA and ESA. FDL research follows principled practices that are grounded in responsible development, conduct, and dissemination of AI research, enabling FDL to churn successful interdisciplinary and interorganizational research projects, measured through NASA's Technology Readiness Levels. We also take a look at the SpaceML Open Source Research Program, which helps accelerate and transition FDL's research to deployable projects with wide spread adoption amongst citizen scientists.