AI Should not Leave Structured Data Behind! - Towards Data Science

AI Should not Leave Structured Data Behind! - Towards Data Science

How AI can solve the notorious data cleaning and prep problems

10 mentions: @ihabilyas@bigdata@IsTheArchitect
Date: 2020/02/14 00:19

Referring Tweets

@bigdata Great overview of Holoclean, and the use of #MachineLearning for error detection and repair 👏 @ihabilyas t.co/03UlaArxpc
@IsTheArchitect Insightful read: A look at how #MachineLearning may be applied to the conditioning of structured datasets, which are sparse and can be characterised by heterogeneity of errors. Thanks to @ihabilyas. t.co/zoNjPPOSdf #ArtificailIntelligence #DataScience

Related Entries

Read more Graph neural networks: a review of methods and applications | the morning paper
0 users, 6 mentions 2019/02/08 06:00
Read more Applied NLP: Lessons from the Field • Peter Baumgartner
0 users, 6 mentions 2019/07/06 06:00
Read more Here’s what you need to look for in a model server to build ML-powered services – Anyscale
0 users, 2 mentions 2020/08/07 00:53
Read more Tools for scaling machine learning – The Data Exchange
0 users, 4 mentions 2020/08/20 13:30
Read more An intuitive overview of recent advances in automated reading comprehension, Part I – Gradient Flow
0 users, 2 mentions 2020/09/03 13:30