The age of big data has seen a host of new techniques for analyzing large data sets. But before any of those techniques can be applied, the target data has to be aggregated, organized, and cleaned up.
That turns out to be a shockingly time-consuming task. In a 2016 survey, 80 data scientists told the company CrowdFlower that, on average, they spent 80 percent of their time collecting and organizing data and only 20 percent analyzing it.
An international team of computer scientists hopes to change that, with a new system called Data Civilizer, which automatically finds connections among many different data tables and allows users to perform database-style queries across all of them. The results of the queries can then be saved as new, orderly data sets that may draw information from dozens or even thousands of different tables.
To view full news, please click here.
In the Media
Congratulations to Ahmed Ali, Yifan Zhang and Fahim Dalvi for winning the prize of the “Best Audience Experience” category at the news hack hosted by SUMMA and BBC in London on 21-22 November with ...
This year CSAIL celebrates five years of collaboration with the Qatar Computing Research Institute (QCRI), an esteemed research institute that’s part of Hamad Bin Khalifa University in Doha. This ...
We offer an App Inventor Course in Arabic for students aged 13-15 and an Arduino Programming Course in English for students aged 14-18. Courses are free. Please register quickly as places are limited.
Children and teenagers have been given a rare chance to develop their computing skills with world-class computing scientists at the first summer computing camp conducted by the Qatar Computing ...
The Qatar Computing Research Institute’s new Creative Space, which conducts fun activities to teach children computing skills, has successfully held its first Open House event. About 100 children ...
QCRI Social Computing group's principal scientist achieves rare honor.
Chief scientist among only 43 scientists globally - and the only one from the Middle East - to be selected for the honor in 2017.