Dave Stuart - Jupyter as an Enterprise “Do It Yourself” (DIY) Analytic Platform | JupyterCon 2020

JupyterCon · Intermediate ·📊 Data Analytics & Business Intelligence ·5y ago
Brief Summary Jupyter’s use as an Enterprise “Do It Yourself” Platform puts the power of analytic development and data science capability directly in the hands of the business analysts closest to the analytic challenges. This real world use-case describes the success as well as the cultural and technical challenges from growing a community of more than 12,000 Jupyter users within a single enterprise setting. Outline In this case study from inside the US Intelligence Community (IC), we details how Jupyter has empowered thousands of business analysts to create their own Do It Yourself (DIY) analytic solutions. Five years of concerted effort to evangelize Python and Jupyter within this large enterprise setting have netted tremendous gains. Through the right combination of outreach and training, alongside platform enhancements, business analysts finally find themselves on the same side of the wall as solutions development. Jupyter has empowered this community of analysts not traditionally steeped in technical disciplines like software engineering - to translate their tradecraft into code, making that tradecraft more reproducible and more efficient. But the story doesn't end there – a DIY analytics movement introduces new challenges, including an abundance and redundancy of solutions. With two thousand Python authors, and twelve thousand Jupyter users, this movement would fail under its own weight without significant efforts to manage, curate, sustain, and provide a corporate “path to production” for the hardest-hitting new capabilities. Our talk will describe this path to Jupyter adoption from the vantage point of the enabling team, what challenges we faced (anticipated and unanticipated), and how we overcame them to transform business analysis in the IC. We will detail the tools and approaches we have developed to manage, curate, and sustain crowd-sourced development of Jupyter notebook based analytics. We’ll look at the training paths used to introduce Python and J
Watch on YouTube ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Playlist

Uploads from JupyterCon · JupyterCon · 2 of 60

1 Interview   Joshua Patterson NVIDIA
Interview Joshua Patterson NVIDIA
JupyterCon
Dave Stuart - Jupyter as an Enterprise “Do It Yourself” (DIY) Analytic Platform | JupyterCon 2020
Dave Stuart - Jupyter as an Enterprise “Do It Yourself” (DIY) Analytic Platform | JupyterCon 2020
JupyterCon
3 Jeffrey Mew - Supercharge your Data Science workflow | JupyterCon 2020
Jeffrey Mew - Supercharge your Data Science workflow | JupyterCon 2020
JupyterCon
4 Michelle Ufford- Supercharging SQL Users with Jupyter Notebooks | JupyterCon 2020
Michelle Ufford- Supercharging SQL Users with Jupyter Notebooks | JupyterCon 2020
JupyterCon
5 Alan Yu - What we learned from introducing Jupyter Notebooks to the SQL community  | JupyterCon 2020
Alan Yu - What we learned from introducing Jupyter Notebooks to the SQL community | JupyterCon 2020
JupyterCon
6 Chris Holdgraf- 2i2c: sustaining open source through hosted Jupyter infrastructure | JupyterCon 2020
Chris Holdgraf- 2i2c: sustaining open source through hosted Jupyter infrastructure | JupyterCon 2020
JupyterCon
7 Yiwen Li - Intro to Elyra - an AI centric extension for JupyterLab | JupyterCon 2020
Yiwen Li - Intro to Elyra - an AI centric extension for JupyterLab | JupyterCon 2020
JupyterCon
8 Luciano Resende - What's new on Elyra - A set of AI centric JupyterLab extensions | JupyterCon 2020
Luciano Resende - What's new on Elyra - A set of AI centric JupyterLab extensions | JupyterCon 2020
JupyterCon
9 Alan Chin - Explore and Extend AI Pipeline Runtimes with Elyra and JupyterLab | JupyterCon 2020
Alan Chin - Explore and Extend AI Pipeline Runtimes with Elyra and JupyterLab | JupyterCon 2020
JupyterCon
10 Eduardo Blancas- Streamline your Data Science projects with Ploomber | JupyterCon 2020
Eduardo Blancas- Streamline your Data Science projects with Ploomber | JupyterCon 2020
JupyterCon
11 Thorin Tabor - Democratizing the accessibility of computational workflows | JupyterCon 2020
Thorin Tabor - Democratizing the accessibility of computational workflows | JupyterCon 2020
JupyterCon
12 Simon Willison- Using Datasette with Jupyter to publish your data | JupyterCon 2020
Simon Willison- Using Datasette with Jupyter to publish your data | JupyterCon 2020
JupyterCon
13 Brendan O'Brien - Using Qri (“query”) to fetch, query, combine and publish datasets.|JupyterCon 2020
Brendan O'Brien - Using Qri (“query”) to fetch, query, combine and publish datasets.|JupyterCon 2020
JupyterCon
14 Georgiana Dolocan - Putting the JupyterHub puzzle pieces together | JupyterCon 2020
Georgiana Dolocan - Putting the JupyterHub puzzle pieces together | JupyterCon 2020
JupyterCon
15 Yuvi Panda- Running nonjupyter applications on JupyterHub with jupyter-server-proxy| JupyterCon 2020
Yuvi Panda- Running nonjupyter applications on JupyterHub with jupyter-server-proxy| JupyterCon 2020
JupyterCon
16 Richard Wagner- The Streetwise Guide to JupyterHub Security | JupyterCon 2020
Richard Wagner- The Streetwise Guide to JupyterHub Security | JupyterCon 2020
JupyterCon
17 TamNguyen- Handling Custom Jupyter Data Sources | JupyterCon 2020
TamNguyen- Handling Custom Jupyter Data Sources | JupyterCon 2020
JupyterCon
18 Immanuel Bayer- ipyannotator - the infinitely hackable annotation framework  | JupyterCon 2020
Immanuel Bayer- ipyannotator - the infinitely hackable annotation framework | JupyterCon 2020
JupyterCon
19 Rebecca Kelly- A shared Python, R and Q  Jupyter Notebook - A Quant Sandbox Dream |JupyterCon 2020
Rebecca Kelly- A shared Python, R and Q Jupyter Notebook - A Quant Sandbox Dream |JupyterCon 2020
JupyterCon
20 Itay Dafna - Leap of faith: Transitioning from Excel to Jupyter-based applications | JupyterCon 2020
Itay Dafna - Leap of faith: Transitioning from Excel to Jupyter-based applications | JupyterCon 2020
JupyterCon
21 Damián Avila - Using the Jupyterverse to power MADS | JupyterCon 2020
Damián Avila - Using the Jupyterverse to power MADS | JupyterCon 2020
JupyterCon
22 Chiin Rui Tan- From Zero to Hero | JupyterCon 2020
Chiin Rui Tan- From Zero to Hero | JupyterCon 2020
JupyterCon
23 Firas Moosvi- Teaching an Active Learning class with Jupyter Book| JupyterCon 2020
Firas Moosvi- Teaching an Active Learning class with Jupyter Book| JupyterCon 2020
JupyterCon
24 Daniel Mietchen- Jupyter in the Wikimedia ecosystem | JupyterCon 2020
Daniel Mietchen- Jupyter in the Wikimedia ecosystem | JupyterCon 2020
JupyterCon
25 Qiusheng Wu- How Jupyter and geemap enable interactive mapping and analysis | JupyterCon 2020
Qiusheng Wu- How Jupyter and geemap enable interactive mapping and analysis | JupyterCon 2020
JupyterCon
26 Stephanie Juneau- Jupyterenabled astrophysical analysis for researchers and students|JupyterCon 2020
Stephanie Juneau- Jupyterenabled astrophysical analysis for researchers and students|JupyterCon 2020
JupyterCon
27 Denton Gentry- The Care and Feeding of JupyterHub for Climate Solution Models| JupyterCon 2020
Denton Gentry- The Care and Feeding of JupyterHub for Climate Solution Models| JupyterCon 2020
JupyterCon
28 Tingkai Liu- FlyBrainLab: Interactive Computing in the Connectomic/Synaptomic Era  | JupyterCon 2020
Tingkai Liu- FlyBrainLab: Interactive Computing in the Connectomic/Synaptomic Era | JupyterCon 2020
JupyterCon
29 Kunal Bhalla- A Notebook Style Guide| JupyterCon 2020
Kunal Bhalla- A Notebook Style Guide| JupyterCon 2020
JupyterCon
30 Julia Wagemann - How to avoid 'Death by Jupyter Notebooks' | JupyterCon 2020
Julia Wagemann - How to avoid 'Death by Jupyter Notebooks' | JupyterCon 2020
JupyterCon
31 David Pugh - Best practices for managing Jupyter-based data science  | JupyterCon 2020
David Pugh - Best practices for managing Jupyter-based data science | JupyterCon 2020
JupyterCon
32 Karla Spuldaro - Debugging notebooks and python scripts in JupyterLab | JupyterCon 2020
Karla Spuldaro - Debugging notebooks and python scripts in JupyterLab | JupyterCon 2020
JupyterCon
33 Shreyas Dalia - assert browserTest == True # Frontend Testing JupyterLab  | JupyterCon 2020
Shreyas Dalia - assert browserTest == True # Frontend Testing JupyterLab | JupyterCon 2020
JupyterCon
34 Chris Holdgraf - The new Jupyter Book stack | JupyterCon 2020
Chris Holdgraf - The new Jupyter Book stack | JupyterCon 2020
JupyterCon
35 Hamel Husain - Fastpages - A new, open source Jupyter notebook blogging system | JupyterCon 2020
Hamel Husain - Fastpages - A new, open source Jupyter notebook blogging system | JupyterCon 2020
JupyterCon
36 Marc Wouts - Jupytext: Jupyter Notebooks as Markdown Documents | JupyterCon 2020
Marc Wouts - Jupytext: Jupyter Notebooks as Markdown Documents | JupyterCon 2020
JupyterCon
37 Sheeba Samuel- ProvBook |JupyterCon 2020
Sheeba Samuel- ProvBook |JupyterCon 2020
JupyterCon
38 Philipp Rudiger - To Jupyter and back again | JupyterCon 2020
Philipp Rudiger - To Jupyter and back again | JupyterCon 2020
JupyterCon
39 Jacob Tomlinson - What is my GPU doing? | JupyterCon 2020
Jacob Tomlinson - What is my GPU doing? | JupyterCon 2020
JupyterCon
40 Afshin Darian - A visual debugger in Jupyter | JupyterCon 2020
Afshin Darian - A visual debugger in Jupyter | JupyterCon 2020
JupyterCon
41 Eric Charles - Jupyter Real Time Collaboration| JupyterCon 2020
Eric Charles - Jupyter Real Time Collaboration| JupyterCon 2020
JupyterCon
42 Devin Robison - Optimizing model performance | JupyterCon 2020
Devin Robison - Optimizing model performance | JupyterCon 2020
JupyterCon
43 Junhua zhao - PayPal Notebooks: ML & Data Science experience | JupyterCon 2020
Junhua zhao - PayPal Notebooks: ML & Data Science experience | JupyterCon 2020
JupyterCon
44 April Wang - Redesigning Notebooks for Better Collaboration | JupyterCon 2020
April Wang - Redesigning Notebooks for Better Collaboration | JupyterCon 2020
JupyterCon
45 Bryan Weber - Distributing and Collecting Jupyter Notebooks for Manual Grading| JupyterCon 2020
Bryan Weber - Distributing and Collecting Jupyter Notebooks for Manual Grading| JupyterCon 2020
JupyterCon
46 Georgiana Dolocan - The Littlest JupyterHub distribution | JupyterCon 2020
Georgiana Dolocan - The Littlest JupyterHub distribution | JupyterCon 2020
JupyterCon
47 Tim Metzler - Electronic Examination using Jupyter Notebook | JupyterCon 2020
Tim Metzler - Electronic Examination using Jupyter Notebook | JupyterCon 2020
JupyterCon
48 Blaine Mooers - Why develop a snippet library for Jupyter in your subject domain? | JupyterCon 2020
Blaine Mooers - Why develop a snippet library for Jupyter in your subject domain? | JupyterCon 2020
JupyterCon
49 Ryan Abernathey - Cloud Native Repositories for Big Scientific Data | JupyterCon 2020
Ryan Abernathey - Cloud Native Repositories for Big Scientific Data | JupyterCon 2020
JupyterCon
50 Tanya Rai - Introducing Bento: Jupyter Notebooks @ Facebook | JupyterCon 2020
Tanya Rai - Introducing Bento: Jupyter Notebooks @ Facebook | JupyterCon 2020
JupyterCon
51 Kenton McHenry - From Papers to Notebooks | JupyterCon 2020
Kenton McHenry - From Papers to Notebooks | JupyterCon 2020
JupyterCon
52 Ryan Herr - After model.fit, before you deploy| JupyterCon 2020
Ryan Herr - After model.fit, before you deploy| JupyterCon 2020
JupyterCon
53 Ana Ruvalcaba - Community building is a sustainability strategy | JupyterCon 2020
Ana Ruvalcaba - Community building is a sustainability strategy | JupyterCon 2020
JupyterCon
54 Martin Renou - Xeus: an ecosystem of Jupyter kernels | JupyterCon 2020
Martin Renou - Xeus: an ecosystem of Jupyter kernels | JupyterCon 2020
JupyterCon
55 Michael Wilson - Teaching teenagers to understand Dark Energy | JupyterCon 2020
Michael Wilson - Teaching teenagers to understand Dark Energy | JupyterCon 2020
JupyterCon
56 Davide De Marchi - Voilà dashboards for policy support | JupyterCon 2020
Davide De Marchi - Voilà dashboards for policy support | JupyterCon 2020
JupyterCon
57 Marcos Lopez Caniego - ESASky's JupyterLab widget| JupyterCon 2020
Marcos Lopez Caniego - ESASky's JupyterLab widget| JupyterCon 2020
JupyterCon
58 Praveen Kanamarlapud - Kernel Life Cycle Management | JupyterCon 2020
Praveen Kanamarlapud - Kernel Life Cycle Management | JupyterCon 2020
JupyterCon
59 Aaron Bray - Pulse Physiology Engine | JupyterCon 2020
Aaron Bray - Pulse Physiology Engine | JupyterCon 2020
JupyterCon
60 Aaron Watters - Using WebGL2 transform/feedback in Jupyter widgets | JupyterCon 2020
Aaron Watters - Using WebGL2 transform/feedback in Jupyter widgets | JupyterCon 2020
JupyterCon

Related AI Lessons

AI Data Analyst Course in Hyderabad | Master AI & Analytics with Quality Thought
Learn to master AI and analytics with a comprehensive data analyst course in Hyderabad
Medium · Programming
Excel untuk Data Analytics: Cara Mudah Mengolah Data untuk Pemula
Learn how to use Excel for data analytics and make sense of the vast amounts of data generated daily
Medium · Data Science
I Tried to Find Out How Close I Am to the CEO of Roblox. The Answer Was Three.
You can calculate your distance to a CEO on social media using graph theory, revealing surprising connectivity
Medium · Data Science
The Dying Symphony of Nature : How climate change silences Cultures, Species, and Nature.
Climate change affects not only species but also cultures and nature, leading to a loss of biodiversity and cultural heritage
Medium · Data Science
Up next
Sales Data Analysis and Dashboards in Excel
Coursera
Watch →