talks
Data source:
https://csvconf.com/
0 rows
where abstract = "As we are becoming more and more digitized%2C we are creating and collecting more personal data than ever before%2C offering unprecedented chances for research. This potential wealth of data for research comes practical problems such as%3A How to merge data streams%3F And how can people responsibly share their personal information%3F In this talk we will explore how to enable responsible personal data sharing by giving individuals granular sharing options and how this can enable community science. Furthermore%2C we will also see how we can scale up personal data exploration from the n-of-one to an n-of-many-ones%2C using a JupyterHub setup built right into a community science platform." sorted by day
✎ View and edit SQL
This data as JSON
CREATE TABLE [talks] (
[title] TEXT,
[speaker] TEXT,
[time] TEXT,
[day] TEXT,
[room] TEXT,
[url] TEXT,
[datetime] TEXT,
[abstract] TEXT,
[image] TEXT
)