AdventuRes in Crafting a Data Science Career

🔮 + 💻 = 📊

Jasmine Dumas | @jasdumas | jasdumas.github.io

Thursday, March 30th, 2017

Hi Narragansett!

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More about my background in Biomedical Engineering

I learned about data science from the internet

The classic data science diagram from Drew Conway:

A updated (albeit oppinated) data science diagram from Mikhail Popov:

I'm so tired of all the hilariously wrong data science venn diagrams so I made what I think will be definitive one. pic.twitter.com/ELcPZi6atJ

— Mikhail Popov (@bearloga) March 3, 2017

“A rose by any other name would smell as sweet”

Discovering resources can be a challenge

Dipping my toe in the water…

Asking strangers for help through cold emailing?!

My first exposure to R programming was through shiny in 2014

Sometimes unpaid volunteer work does pays off…

Some of the results from participating in the Google Summer of Code

How to make a connection to the R community

Applying for jobs that utilize R

Does anyone want to hire me to spice up their data with science using #rstats?

I'm looking for a job! 😬

— Jasmine Dumas (@jasdumas) March 24, 2016

Every data science path is unique!

tl;dr: I love learning in a structured setting but I can learn best from doing applied data science in the workplace.

Starting from the ‘bottom’ is ok!

Advice that I wish I heard 2.5 years ago from myself:

Ultimately, technical skills (including statistical thinking), passion, and curiosity are key attributes of a productive data scientist and essential to collaborating with others!

Alright, on to the fun stuff … R:

R packages are a great way to combine code & documentation to share with others

What even is, beer analytics?

Finding beer datasets can be difficult

Necessity breeds innovation

Accessing beer statistics with the ttbbeer package

What even is, a landing page?

An example of a landing home page

wiki dash

Make landing pages for shiny apps with shinyLP

The End

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