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Tweet round-up from #ICLR2020

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07 May 2020



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AIhub | Tweets round-up
Last week saw the International Conference on Learning Representations (ICLR 2020) go virtual. Over 5600 people, from 89 different countries, registered to participate. Here we provide a round-up of tweets from event participants, speakers and organisers.

All content from the conference now available for public viewing

On building the website

Praise for the format and for virtual conferences in general

A happy poster presenter

Getting ready to present

So much to see, so little time

Worthwhile attendance at a poster session

There were some very interesting keynote presentations

Talk on ViLBERT

From the workshop on NLP for African languages

An online gathering place

Knowledge graphs

Some thoughts on a virtual conference attendance

Taking notes on papers

On the value of adding a video to explain your work




Lucy Smith , Managing Editor for AIhub.
Lucy Smith , Managing Editor for AIhub.




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