DataFramed

Welcome to DataFramed, a weekly podcast exploring how artificial intelligence and data are changing the world around us. On this show, we invite data & AI leaders at the forefront of the data revolution to share their insights and experiences into how they lead the charge in this era of AI. Whether you're a beginner looking to gain insights into a career in data & AI, a practitioner needing to stay up-to-date on the latest tools and trends, or a leader looking to transform how your organization uses data & AI, there's something here for everyone. Join co-hosts Adel Nehme and Richie Cotton as they delve into the stories and ideas that are shaping the future of data. Subscribe to the show and tune in to the latest episode on the feed below.

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#44 Project Jupyter and Interactive Computing


In this episode of DataFramed, Hugo speaks with Brian Granger, co-founder and co-lead of Project Jupyter, physicist and co-creator of the Altair package for statistical visualization in Python.

They’ll speak about data science, interactive computing, open source software and Project Jupyter. With over 2.5 million public Jupyter notebooks on github alone, Project Jupyter is a force to be reckoned with. What is interactive computing and why is it important for data science work? What are all the the moving parts of the Jupyter ecosystem, from notebooks to JupyterLab to JupyterHub and binder and why are they so relevant as more and more institutions adopt open source software for interactive computing and data science? From Netflix running around 100,000 Jupyter notebook batch jobs a day to LIGO’s Nobel prize winning discovery of gravitational waves publishing all their results reproducibly using Notebooks, Project Jupyter is everywhere. 

Links from the show 

FROM THE INTERVIEW

  • Brian on Twitter 
  • Project Jupyter
  • Beyond Interactive: Notebook Innovation at Netflix (Ufford, Pacer, Seal, Kelley, Netflix Tech Blog)
  • Gravitational Wave Open Science Center (Tutorials)
  • JupyterCon YouTube Playlist
  • jupyterstream Github Repository

FROM THE SEGMENTS

Machines that Multi-Task (with Friederike Schüür of Fast Forward Labs)Part 1 at ~24:40

  • Brief Introduction to Multi-Task Learning (By Friederike Schüür)
  • Overview of Multi-Task Learning Use Cases (By Manny Moss)
  • Multi-Task Learning for the Segmentation of Building Footprints (Bischke et al., arXiv.org)
  • Multi-Task as Question Answering (McCann et al., arXiv.org)
  • The Salesforce Natural Language Decathlon: A Multitask Challenge for NLP 

Part 2 at ~44:00

  • Rich Caruana’s Awesome Overview of Multi-Task Learning and Why It Works
  • Sebastian’s Ruder’s Overview of Multi-Task Learning in Deep Neural Networks
  • Massively Multi-Task Network for Drug Discovery, 259 Tasks (!) (Ramsundar et al. arXiv.org)
  • Brief Overview of Multi-Task Learning with Video of Newsie, the Prototype (By Friederike Schüür)

 Original music and sounds by The Sticks.


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 October 15, 2018  1h5m