K.-S. Csizi, A.E. Frackowiak, et al.
Biomicrofluidics
Artificial intelligence (AI) has seen transformative breakthroughs in the life sciences, expanding possibilities to interpret biological information at an unprecedented capacity. To maximize return on growing investments and accelerate progress, it is urgent to address long-standing research challenges arising from the rapid adoption of AI methods. We review the erosion of trust in AI outputs driven by poor reusability and reproducibility, and highlight their impact on environmental sustainability. Furthermore, we discuss the fragmented components of the AI ecosystem and lack of guiding pathways to support open and sustainable AI model development. In response, this Perspective introduces practical open and sustainable AI recommendations mapped to over 300 ecosystem components and provides guiding implementation pathways. Our work connects researchers with relevant AI resources, facilitating the implementation of sustainable, reusable and reproducible AI. Built upon community consensus and aligned to existing efforts, these outputs will aid future policy development and structured pathways for guiding AI implementation.
K.-S. Csizi, A.E. Frackowiak, et al.
Biomicrofluidics
Murtaza Zohair, Vidushi Sharma, et al.
npj Computational Materials
Maxwell Giammona, Vidushi Sharma, et al.
ACS Fall 2023
Seung Gu Kang, Jeff Weber, et al.
ACS Fall 2023