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Internet-human infrastructures: Lessons from Havanas StreetNet

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 Added by Abigail Jacobs
 Publication date 2020
and research's language is English




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We propose a mixed-methods approach to understanding the human infrastructure underlying StreetNet (SNET), a distributed, community-run intranet that serves as the primary Internet in Havana, Cuba. We bridge ethnographic studies and the study of social networks and organizations to understand the way that power is embedded in the structure of Havanas SNET. By quantitatively and qualitatively unpacking the human infrastructure of SNET, this work reveals how distributed infrastructure necessarily embeds the structural aspects of inequality distributed within that infrastructure. While traditional technical measurements of networks reflect the social, organizational, spatial, and technical constraints that shape the resulting network, ethnographies can help uncover the texture and role of these hidden supporting relationships. By merging these perspectives, this work contributes to our understanding of network roles in growing and maintaining distributed infrastructures, revealing new approaches to understanding larger, more complex Internet-human infrastructures---including the Internet and the WWW.

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