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by gensim_py on 2018-06-20 (UTC).

A serious bug in #doc2vec fixed, after 3 years :O https://t.co/KBlA0XbLru
New release will have faster convergence & better vectors. Huge thanks to Umang!

— Gensim (@gensim_py) June 20, 2018
by MSFTResearch on 2018-06-21 (UTC).

We're excited to announce the launch of Microsoft Research Open Data! This single, cloud-hosted location offers datasets representing many years of data curation and research efforts by Microsoft. Learn how it works: https://t.co/f4LhMxWlKF

— Microsoft Research (@MSFTResearch) June 21, 2018
research
by openminedorg on 2018-06-21 (UTC).

Here's a sneak peek at our new Federated Learning interfaces using @PyTorch and PySyft.

Try Federated Learning Using OpenMined: https://t.co/bSMgUZjgL1

Come Join our Slack: https://t.co/e1avrEWtIo pic.twitter.com/sHeQ2568gs

— OpenMined (@openminedorg) June 21, 2018
pytorch
by robinson_es on 2018-06-21 (UTC).

Check out the #rstats fable package from @robjhyndman, a replacement for forecast! Many improvements including integrating with tidyverse packages #nyhackr pic.twitter.com/59rHAbRX78

— Emily Robinson (@robinson_es) June 21, 2018
by gal_novik on 2018-06-22 (UTC).

Check out Distiller, our @PyTorch based package for neural network compression research at https://t.co/px4g8yCrjS https://t.co/Fews6mK3X6

— Gal Novik (@gal_novik) June 22, 2018
pytorchtool
by benhamner on 2018-06-22 (UTC).

We just launched a slick new preview and visualization for public data shared on Kaggle https://t.co/It6ycLshRw pic.twitter.com/CcgaZ3OHI0

— Ben Hamner (@benhamner) June 22, 2018
by ogrisel on 2018-06-22 (UTC).

joblib 0.12 is out with a better process pool management that does not crash openmp, more efficient dask interop and support for fast LZ4 compression in joblib.dump/load: https://t.co/3un2C15tPN

— Olivier Grisel (@ogrisel) June 22, 2018
by seb_ruder on 2018-06-22 (UTC).

Do you often find it cumbersome to track down the best datasets or the state-of-the-art for a particular task in NLP? I've created a resource (a GitHub repo) to make this easier. https://t.co/roV5pFzMQe

— Sebastian Ruder (@seb_ruder) June 22, 2018
nlp
by ml_review on 2018-06-23 (UTC).

Machine Learning Papers with Codehttps://t.co/Sfa9BXI4OO pic.twitter.com/76frkyB4ni

— ML Review (@ml_review) June 23, 2018
by dataandme on 2018-06-26 (UTC).

@thosjleeper's slopegraph package is pretty helpful…https://t.co/KsP9gfmdL4

— Mara Averick (@dataandme) June 26, 2018
dataviz
by dataandme on 2018-06-26 (UTC).

ICYMI, Charts à la @EdwardTufte in base, lattice & ggplot2 w/ code:
"Tufte in R" by @lukaszpiwek https://t.co/wfcSNAPsL2 #rstats #dataviz #infovis pic.twitter.com/X6Us6m3iSd

— Mara Averick (@dataandme) June 26, 2018
dataviz
by Emil_Hvitfeldt on 2018-06-27 (UTC).

My attempt to unify color palette usage in #rstats: paletteer! Access over 650 palettes from 27 packages using a simple interface 📦 https://t.co/XKUNqwdvOZ pic.twitter.com/60bV6czauK

— Emil Hvitfeldt (@Emil_Hvitfeldt) June 27, 2018
datavizrstats

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