PyData DC
@PyDataDC
DC chapter of @PyData. Find our meetups at http://meetup.com/PyDataDC
You might like
Thanks to all attendees, speakers, @PyData, @NumFOCUS, @CapitalOne, @ContinuumIO, and all the sponsors for making #PyDataDC2016 possible!
Videos from @PyDataDC are up!!! Check out the playlist here: bit.ly/2eqZmgq
Our second Saturday keynote, @rscohn2 & @pwang: "How Open Data Science Opens the World of Innovation"
Opening keynote @PyData with @postkxj: "Building a Data-Driven Dialogue: From Filling Potholes to Disrupting the Cycle of Incarceration"
"@pwang: thx to @CapitalOneLabs&@NumFOCUS for making @PyData #23 in DC possible&to dir Leah Silen for her steadfast stewardship since day 1"
Check out the @PyDataDC Diversity Luncheon speaker @RebeccaBilbro!! pydata.org/dc2016/schedul…
Any plans this weekend? We need a few volunteers for @PyDataDC! Email us at [email protected] if you're interested!
I'm so excited to go to @PyDataDC this weekend!!
@WomenDataSci has chosen to sponsor @priesterkc for @PyDataDC 2016. Congratulations @priesterkc !!!!!
Getting excited for @PyDataDC next weekend- Thanks @CapitalOne for hosting! Register here: bit.ly/2d09bNL
I'm also talking about Data Pipelines at @PyDataDC (pydata.org/dc2016/schedul…) so come join me there as well
#PyDataDC16 schedule is up! Which ones are you most looking forward to? bit.ly/2cngU8S #datadc @PyData
Don't forget to use #PyDataDC16 for tweets about the @PyData DC Conference! bit.ly/2cnh6oG
United States Trends
- 1. Gabe Vincent 2,901 posts
- 2. #AEWDynamite 17.1K posts
- 3. #VSFashionShow 511K posts
- 4. Angel Reese 44.5K posts
- 5. #Survivor49 3,195 posts
- 6. tzuyu 205K posts
- 7. Deport Harry Sisson 4,904 posts
- 8. #youtubedown 15.8K posts
- 9. #stlblues 1,520 posts
- 10. Quen 28.8K posts
- 11. George Kirby 2,266 posts
- 12. jihyo 166K posts
- 13. Darby 4,951 posts
- 14. Suarez 18K posts
- 15. Hofer 1,673 posts
- 16. Birdman 4,571 posts
- 17. Nazar 6,148 posts
- 18. Victoria's Secret 496K posts
- 19. Sabres 6,603 posts
- 20. Tusky 1,872 posts
Something went wrong.
Something went wrong.