Implications of Edge Computing for Static Site Generation
- URL: http://arxiv.org/abs/2309.05669v1
- Date: Fri, 8 Sep 2023 07:49:23 GMT
- Title: Implications of Edge Computing for Static Site Generation
- Authors: Juho Veps\"al\"ainen and Arto Hellas and Petri Vuorimaa
- Abstract summary: Edge computing represents a new option to extend the usefulness of SSG further by allowing the creation of dynamic sites on top of a static backdrop.
In this paper, we explore the impact of the recent developments in the edge computing space and consider its implications for SSG.
- Score: 2.671856791295011
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Static site generation (SSG) is a common technique in the web development
space to create performant websites that are easy to host. Numerous SSG tools
exist, and the approach has been complemented by newer approaches, such as
Jamstack, that extend its usability. Edge computing represents a new option to
extend the usefulness of SSG further by allowing the creation of dynamic sites
on top of a static backdrop, providing dynamic resources close to the user. In
this paper, we explore the impact of the recent developments in the edge
computing space and consider its implications for SSG.
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