home / csvconf

talks

Data source: https://csvconf.com/

1 row where abstract = "As we are becoming more and more digitized, we are creating and collecting more personal data than ever before, offering unprecedented chances for research. This potential wealth of data for research comes practical problems such as: How to merge data streams? And how can people responsibly share their personal information? 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, we will also see how we can scale up personal data exploration from the n-of-one to an n-of-many-ones, using a JupyterHub setup built right into a community science platform." sorted by image descending

View and edit SQL

speaker

room

datetime

abstract

Link rowid title speaker time day room url datetime abstract image ▲
14 The n-of-many-ones: Fueling Community Science with Personal Data Bastian Greshake Tzovaras 1:30 PM May 8 2019 Main Sanctuary https://csvconf.com/speakers/#bastian-greshake-tzovaras 2019-05-08T13:30:00 As we are becoming more and more digitized, we are creating and collecting more personal data than ever before, offering unprecedented chances for research. This potential wealth of data for research comes practical problems such as: How to merge data streams? And how can people responsibly share their personal information? 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, we will also see how we can scale up personal data exploration from the n-of-one to an n-of-many-ones, using a JupyterHub setup built right into a community science platform. https://csvconf.com/img/speakers-2019/bgtzovaras.jpg

Advanced export

JSON shape: default, array, newline-delimited

CSV options:

CREATE TABLE [talks] (
   [title] TEXT,
   [speaker] TEXT,
   [time] TEXT,
   [day] TEXT,
   [room] TEXT,
   [url] TEXT,
   [datetime] TEXT,
   [abstract] TEXT,
   [image] TEXT
)
Powered by Datasette · Query took 6.559ms · Data source: https://csvconf.com/