Beyond Linear Notebooks: Implementing Reactivity with IPython | Hex
Slides: https://www.datacouncil.ai/talks/beyond-linear-notebooks-implementing-reactivity-with-ipython?hsLang=en
ABOUT THE TALK:
Jupyter notebooks are ubiquitous in data science workflows today due to their power and flexibility. However, they do have some drawbacks, including the much discussed issues of hidden state and legibility of logic flow. To address these problems at Hex, we've augmented the IPython kernel to allow for reactive execution of both Python and SQL. This talk will discuss the pros and cons of the traditional IPython execution model versus a reactive model, as well as dive into our implementation of reactive notebooks under the hood.
ABOUT THE SPEAKER:
Caitlin Colgrove is the CTO of Hex Technologies, a collaborative data workspace for building and sharing data projects using SQL and Python. Caitlin has spent her career as a software engineer building data analytics tools, first at Palantir and then later at startups including Remix and Hex. As CTO her focus has expanded from purely technology to include growing and developing diverse and inclusive engineering teams.
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers. Make sure to subscribe to our channel for more videos, including DC_THURS, our series of live online interviews with leading data professionals from top open source projects and startups.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai/
Eventbrite: https://www.eventbrite.com/o/data-council-30357384520
Видео Beyond Linear Notebooks: Implementing Reactivity with IPython | Hex канала Data Council
ABOUT THE TALK:
Jupyter notebooks are ubiquitous in data science workflows today due to their power and flexibility. However, they do have some drawbacks, including the much discussed issues of hidden state and legibility of logic flow. To address these problems at Hex, we've augmented the IPython kernel to allow for reactive execution of both Python and SQL. This talk will discuss the pros and cons of the traditional IPython execution model versus a reactive model, as well as dive into our implementation of reactive notebooks under the hood.
ABOUT THE SPEAKER:
Caitlin Colgrove is the CTO of Hex Technologies, a collaborative data workspace for building and sharing data projects using SQL and Python. Caitlin has spent her career as a software engineer building data analytics tools, first at Palantir and then later at startups including Remix and Hex. As CTO her focus has expanded from purely technology to include growing and developing diverse and inclusive engineering teams.
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers. Make sure to subscribe to our channel for more videos, including DC_THURS, our series of live online interviews with leading data professionals from top open source projects and startups.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai/
Eventbrite: https://www.eventbrite.com/o/data-council-30357384520
Видео Beyond Linear Notebooks: Implementing Reactivity with IPython | Hex канала Data Council
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