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Details

We'd like to thank our generous hosts OVO Energy for providing the venue and also IBM for sponsorship of the pizza and refreshments.

Expect two 30-minute talks, plus two 5-minute lightning talks, plus community announcements.

NEW PRE MEETUP WORKSHOP

We are again running a free workshop on an "Intro to Recurrent Neural Networks" immediately before Tuesday's meetup at OVO Energy from 5pm-6:30pm. Pre-requisites and hard-core mathematics will be kept to a minimum to make it as accessible to all as possible.
Please register in advance on eventbrite and ensure you bring your laptop with the the various pre-requisites installed.
https://www.eventbrite.co.uk/e/intro-to-recurrent-neural-networks-tickets-52401888459

πŸ“Š TALKS

Enrico Rotundo on "JupyterLab & its extensions: towards a broad open source ecosystem"
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I’ll share some insights and ideas regarding JupyterLab and its modular architecture. This has been a major topic at JupyterCon 2018 and it’s deemed to enable unprecedented functionalities for the end users. Developers can now extend the system by writing widgets that implement new data science functionalities. Available extensions already added integrations with tools like git, matplotlib, GitHub and Latex. Shortly, there’ll be a complete ecosystem of open source extensions that'll redefine the user experience. I’ll share some ideas to better expose your extensions to the final users by solely relying on free and open source services. The talk is accessible to data scientists, developers and product owners that work with the Jupyter stack.

Bio : https://enricorotundo.github.io/pages/bio.html

Vaclav Pohoriljak on "Information Archeology"
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A definition of "information archeology"

  • Case studies:
  1. Banking
  2. Oracle vs ERP
  3. Cybersecurity
    Lessons learned and implications for Python

Vaclav Pohoriljak -, studied theoretical economy at Charles university in Prague, focusing on monetary policy, central bank independence and game theory. He then worked as IT professional in investment banking, TV manufacturing and the gaming industry. He applied financial (cost-revenue), game theoretical, econometrical and macro-modelling principles on dynamic IT world. He will explain how these principles enable good analysis, but require relevant data to make analysis accurate.

⚑️ LIGHTNING TALKS

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