A Collection of Conference & School Notes in Machine Learning ๐Ÿฆ„๐Ÿ“๐ŸŽ‰

Overview

A Collection of Conference & School Notes in Machine Learning

v-ml-notes-banner

In this repo I collect my visual conference & summer school sketch notes - to prevent things getting messy. Feel free to have a look and enjoy, @RobertTLange!

FAQs

  • Q: What tablet do you use? A: I use an iPad 12.9' with the new Apple Pencil. But you don't have to. There are many cheaper tablet which do the job and I have seen awesome handwritten notes.

  • Q: What apps do you use? A: I use notability for all the talk sketches and procreate for illustrations. But I have also heard many good things about GoodNotes. Have a look at my recent blogpost in which I discuss my personal Machine Learning Research-iPad setup.

  • Q: Any advice on how to take notes? A: Ask yourself what type of notes you are would like to come back to in a week, month, or year. Also have a look at Natalia Vรฉlez. Her sketches are awesome! And practice on talks by great speakers. A well structured talk is way easier to summarise.

  • Q: Is there a gallery of all your notes? A: Yes, there is! Check out the Web UI visual-ml-notes.

Finally, I also put together a couple of slides describing my favorite aspects and journey of collecting the notes ๐Ÿค—

Previously Sketched Events

Date Name Type Location Notes Program
20-12 NeurIPS Conference Virtual Click Click
20-07 MLSS Summer School Virtual Click Click
20-04 ICLR Conference Virtual Click Click
19-12 NeurIPS Conference Vancouver (Canada) Click Click
19-09 Bernstein Conference Berlin (Germany) Click Click
19-09 CCN Conference Berlin (Germany) Click Click
19-08 BMS Summer School Berlin (Germany) Click Click
19-07 EEML Summer School Bucharest (Romania) Click Click
19-06 RAAI Conference Bucharest (Romania) Click Click
19-06 FENS ENCODS PhD Symposium London (UK) Click Click
18-12 NeuRIPS Conference Montreal (Canada) Click Click
18-07 FENS Forum Conference Berlin (Germany) Click Click
17-08 ESSIR Summer School Barcelona (Spain) Click Click
17-08 DS^3 Summer School Paris (France) Click Click
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Comments
  • Note taking tools :)

    Note taking tools :)

    Hi Robert,

    Your notes are super great. I would like to ask, for the NeuRIPS, which tool(s) did you use to write the notes? Is it iPad Pro? If so, which app and writing stylus did you use? I am curious, would like to get one. Thanks :)

    opened by stenpiren 2
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