Trade Liberalisation and Other Societal Values and Interests

2021 ◽  
pp. 106-146
2012 ◽  
Vol 2 (9) ◽  
pp. 99-100
Author(s):  
Shakti Kumar Shakti Kumar ◽  
Keyword(s):  

2021 ◽  
pp. 105477382110330
Author(s):  
Joy Davis ◽  
Sue Sinni ◽  
Stephen Maloney ◽  
Lorraine Walker

Patients are central to healthcare clinicians and organizations but often subsidiary to clinical expertise, knowledge, workplace processes, and culture. Shifting societal values, technology, and regulations have remoulded the patient-clinician relationship, augmenting the patient’s voice within the healthcare construct. Scaffolding this restructure is the global imperative to deliver person-centered care (PCC). The aim of the scoping review was to explore and map the intersection between patient feedback and strategies to improve the provision of PCC within acute hospitals in Australia. Database searches yielded 493 articles, with 16 studies meeting inclusion criteria. Integration of patient feedback varied from strategy design, through to multi-staged input throughout the initiative and beyond. Initiatives actioning patient feedback fell broadly into four categories: clinical practice, educational strategies, governance, and measurement. How clinicians can invite feedback and support patients to engage equally remains unclear, requiring further exploration of strategies to propel clinician-patient partnerships, scaffolded by hospital governance structures.


AI and Ethics ◽  
2021 ◽  
Author(s):  
Aimee van Wynsberghe

AbstractWhile there is a growing effort towards AI for Sustainability (e.g. towards the sustainable development goals) it is time to move beyond that and to address the sustainability of developing and using AI systems. In this paper I propose a definition of Sustainable AI; Sustainable AI is a movement to foster change in the entire lifecycle of AI products (i.e. idea generation, training, re-tuning, implementation, governance) towards greater ecological integrity and social justice. As such, Sustainable AI is focused on more than AI applications; rather, it addresses the whole sociotechnical system of AI. I have suggested here that Sustainable AI is not about how to sustain the development of AI per say but it is about how to develop AI that is compatible with sustaining environmental resources for current and future generations; economic models for societies; and societal values that are fundamental to a given society. I have articulated that the phrase Sustainable AI be understood as having two branches; AI for sustainability and sustainability of AI (e.g. reduction of carbon emissions and computing power). I propose that Sustainable AI take sustainable development at the core of its definition with three accompanying tensions between AI innovation and equitable resource distribution; inter and intra-generational justice; and, between environment, society, and economy. This paper is not meant to engage with each of the three pillars of sustainability (i.e. social, economic, environment), and as such the pillars of sustainable AI. Rather, this paper is meant to inspire the reader, the policy maker, the AI ethicist, the AI developer to connect with the environment—to remember that there are environmental costs to AI. Further, to direct funding towards sustainable methods of AI.


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