Designing Trimmed Streets: The Inaugural Journal of Londons Poormouth Neighborhood, Including Features on Lscaped Children, Designer Bombers, and Rolled Members of Drexel.

Designing Trimmed Streets: The Inaugural Journal of Londons Poormouth Neighborhood, Including Features on Lscaped Children, Designer Bombers, and Rolled Members of Drexel.


Abstract

This paper presents the inaugural journal of London's Poormouth neighborhood, which explores the concept of designing trimmed streets. The neighborhood's residents have come together to envision a new urban landscape that prioritizes the community's needs and desires. The journal features articles on various topics, including landscaped children's play areas, designer bombers, and rolled members of Drexel. The first article discusses the importance of creating safe and engaging spaces for children to play, using innovative designs that incorporate natural elements and encourage physical activity. The second article highlights the fashion trends emerging in Poormouth, with a particular focus on bomber jackets that reflect the community's unique style and identity. The final article explores the challenges and triumphs of the neighborhood's roller skating community, including interviews with members of the Drexel team and a discussion of the sport's cultural significance. Throughout the journal, the authors emphasize the importance of community engagement and collaboration in shaping the future of the neighborhood. By prioritizing the voices and experiences of its residents, Poormouth aims to create a cityscape that reflects the values and aspirations of its diverse population.

Citation

Valery Richey "Designing Trimmed Streets: The Inaugural Journal of Londons Poormouth Neighborhood, Including Features on Lscaped Children, Designer Bombers, and Rolled Members of Drexel.".  IEEE Exploration in Machine Learning, 2022.

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This paper appears in:
Date of Release: 2022
Author(s): Valery Richey.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications