-
13:30
We are Felix, Georg, and Martin - each of us working professionally in different research and data areas, ranging from the future of mobility to computational fluid dynamics and machine learning. What unites us is our shared interest in quantitative traffic analyses. Building on earlier small-scale studies focused on individual cities, we set out to launch a project that captures shared bike system data across Europe - from regular bikes to e-bikes.
In our study, which led to an open-access scientific publication, we scraped shared bike data across Europe at a minute-by-minute level over many months, accumulating more than 43 million records. We analyze behavioural and systemic patterns to understand what makes a bike-sharing system useful and successful within a city. As such, this evidence-based research fits very well with the 39C3 Science track and the theme of "Power Cycles" as we dissect the complex energy and usage cycles that define urban mobility and sustainable futures for everyone. We bridge the gap between urban planning, socioeconomics, and technology by applying statistical modeling and engineering knowledge to a large-scale mined dataset. Join us to learn whether right-wing politics stall sustainable mobility, or which climate e-bikes feel most comfortable in!
We love going the extra mile and therefore provide a live, interactive demo that everyone can use to explore and understand traffic flows: dataviz.nefton.de. Therefore, attendees will be able to play with the data in a self-service way. We also provide all code on GitHub and the complete dataset on HuggingFace. And, of course, we will also discuss how both bike-sharing operators and our boss reacted when we told them about the dataset we already had collected (spoiler: lawyers were involved, yet it’s still available for downloads…).