From sustainable to smart: Re-branding or re-assembling urban energy infrastructure?
نویسندگان
چکیده
منابع مشابه
Re-assembling the Urban
In this essay, I engage the L.A.–Chicago debate by repositioning both area-specific constraints and visual orders as intermediary variables. This leads the discussion to two considerations that in turn reposition the meaning of the familiar differences attributed to Los Angeles and Chicago. First, a focus on the particular implications of translocal processes for an area allows us to establish ...
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Background: The aim of this study was evaluation of developmental rate and Bax, Bcl-2 and ErbB4 genes expression following re-vitrification in compact and early blastocysts stages. Materials and Methods: 5-8 cell embryos were collected from female mature mice, 60-62 hours post hCG injection. The embryos were divided to five groups including: fresh, vitrified at 5-8 cells, vitrified at blastocys...
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Brian Kelly UKOLN University of Bath Bath, UK +44 1225 323943 [email protected] Andy Powell UKOLN University of Bath Bath, UK +44 1225 323933 [email protected] The Resource Discovery Network (RDN) has developed tools that allow educational institutions and other organizations to access and display the output from its Web services with their own branding and look-and-feel. This paper descri...
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One of the most popular uses of crowdsourcing is to provide training data for supervised machine learning algorithms. Since human annotators often make errors, requesters commonly ask multiple workers to label each example. But is this strategy always the most cost effective use of crowdsourced workers? We argue “No” — often classifiers can achieve higher accuracies when trained with noisy “uni...
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ژورنال
عنوان ژورنال: Geoforum
سال: 2019
ISSN: 0016-7185
DOI: 10.1016/j.geoforum.2019.02.012