Katalog Plus
Bibliothek der Frankfurt UAS
Bald neuer Katalog: sichern Sie sich schon vorab Ihre persönlichen Merklisten im Nutzerkonto: Anleitung.
Dieses Ergebnis aus ERIC kann Gästen nicht angezeigt werden.  Login für vollen Zugriff.

Machine Learning and Gene Editing at the Helm of a Societal Evolution. RR-A2838-1

Title: Machine Learning and Gene Editing at the Helm of a Societal Evolution. RR-A2838-1
Language: English
Authors: Sana Zakaria; Tim Marler; Mark Cabling; Suzanne Genc; Artur Honich; Mann Virdee; Sam Stockwell; RAND Europe
Source: RAND Europe. 2023.
Availability: RAND Europe. Westbrook Centre, Milton Road, Cambridge CB4 1YG, United Kingdom. Tel: +44-1223-353-329; Fax: +44-1223-358-845; e-mail: reinfo@rand.org; Web site: http://www.rand.org/randeurope/
Peer Reviewed: Y
Page Count: 112
Publication Date: 2023
Document Type: Reports - Research
Descriptors: Artificial Intelligence; Genetics; Public Policy; Policy Formation; Foreign Countries; Biology; Information Technology; Regional Characteristics
Geographic Terms: China; European Union; United Kingdom; United States
DOI: 10.7249/RRA2838-1
Abstract: The integration of artificial intelligence (AI) and biotechnology, whilst in its infancy, presents significant opportunities and risks, and proactive policy is needed to manage these emerging technologies. Whilst AI continues to have significant and broad impact, its relevance and complexity magnify when integrated with other emerging technologies. The confluence of Machine Learning (ML), a subset of AI, with gene editing (GE) in particular can foster substantial benefits as well as daunting risks that range from ethics to national security. These complex technologies have implications for multiple sectors, ranging from agriculture and medicine to economic competition and national security. Consideration of technology advancements and policies in different geographic regions, and involvement of multiple organisations further confound this complexity. As the impact of ML and GE expands, forward looking policy is needed to mitigate risks and leverage opportunities. Thus, this study explores the technological and policy implications of the intersection of ML and GE, with a focus on the United States (US), the United Kingdom (UK), China, and the European Union (EU). Analysis of technical and policy developments over time and an assessment of their current state have informed policy recommendations that can help manage beneficial use of technology advancements and their convergence, which can be applied to other sectors. This report is intended for policymakers to prompt reflection on how to best approach the convergence of the two technologies. Technical practitioners may also find it valuable as a resource to consider the type of information and policy with which policy stakeholders engage.
Abstractor: ERIC
Entry Date: 2024
Accession Number: ED661958
Database: ERIC