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Nicole White

Data Scientist
Last active on Stack Overflow 6 days ago

I am a data scientist with several years of professional Python experience who enjoys solving novel problems with machine learning.

I am a data scientist with several years of professional Python experience who enjoys solving novel problems with machine learning.

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Open source Jul 2017 → Current (1 year, 2 months)

Deep Learning for Python

Deep Learning for Python

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Open source Jul 2015 → Current (3 years, 1 month)
Last commit on Nov 08, 17
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A Command Line Interface for Cypher.

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A Command Line Interface for Cypher.

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Open source May 2015 → Current (3 years, 4 months)

Build, display, and solve algebraic equations in JavaScript.

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Build, display, and solve algebraic equations in JavaScript.

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Open source May 2014 → Current (4 years, 4 months)

The Neo4j driver for R.

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The Neo4j driver for R.

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Position Jul 2016 → Feb 2018 (1 year, 8 months)
Data Scientist at Infer

I build predictive models to help our customers better understand which of their inbound leads are most likely to convert to a sale.

I also work on the machine learning infrastructure and research how our customers' data can be leveraged to build new predictive product offerings.

I build predictive models to help our customers better understand which of their inbound leads are most likely to convert to a sale.

I also work on the machine learning infrastructure and research how our customers' data can be leveraged to build new predictive product offerings.

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Position Jul 2014 → Jul 2016 (2 years, 1 month)
Data Scientist at Neo4j

I built and maintained a Flask application that exposed marketing, sales, support, product usage, and product feedback data to the rest of the team. This app was powered by a Neo4j database that I built and maintained, allowing for dashboards used across multiple departments along with internal tools for lead discovery.

The app also powers all of the analytics projects, including:

  • Live alerts when user retention drops below a certain threshold (via time series trend analysis)
  • Live predictions that an incoming lead will convert to a sale (via random forest classification trained over Marketo data)
  • Live predictions that a customer is nearing churn (via random forest classification trained over Zendesk data)

I built and maintained a Flask application that exposed marketing, sales, support, product usage, and product feedback data to the rest of the team. This app was powered by a Neo4j database that I built and maintained, allowing for dashboards used across multiple departments along with internal tools for lead discovery.

The app also powers all of the analytics projects, including:

  • Live alerts when user retention drops below a certain threshold (via time series trend analysis)
  • Live predictions that an incoming lead will convert to a sale (via random forest classification trained over Marketo data)
  • Live predictions that a customer is nearing churn (via random forest classification trained over Zendesk data)

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Blogs or videos Jul 2016

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Blogs or videos Apr 2016

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Blogs or videos Oct 2015

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Blogs or videos Oct 2015

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Blogs or videos May 2015

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Education 2013 → 2014
M.S. Analytics, University of Texas at Austin

Favorite Classes

  • Predictive Modeling
    • Generalized Linear Models
    • Classification Trees
    • Random Forests
  • Unsupervised Learning
    • Principal Component Analysis
    • Factor Analysis
    • Clustering

Awards

  • VIP’s Women in Technology Scholarship
  • Deloitte Tuition Award

Favorite Classes

  • Predictive Modeling
    • Generalized Linear Models
    • Classification Trees
    • Random Forests
  • Unsupervised Learning
    • Principal Component Analysis
    • Factor Analysis
    • Clustering

Awards

  • VIP’s Women in Technology Scholarship
  • Deloitte Tuition Award

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9
Top post Jul 2014

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Blogs or videos Jun 2014

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Education 2009 → 2013
B.S. Economics, Math, Louisiana State University

Favorite Classes

  • Econometrics I, II
  • Calculus I, II, III
  • Probability
  • Stochastic Processes
  • Linear Programming
  • Game Theory

Awards

  • LSU Tiger Athletic Foundation Scholarship
  • Outstanding Student in Econometrics
  • Hans Metcalf Memorial Award
  • University Medalist

Favorite Classes

  • Econometrics I, II
  • Calculus I, II, III
  • Probability
  • Stochastic Processes
  • Linear Programming
  • Game Theory

Awards

  • LSU Tiger Athletic Foundation Scholarship
  • Outstanding Student in Econometrics
  • Hans Metcalf Memorial Award
  • University Medalist

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Position May 2013 → Aug 2013 (4 months)
Data Engineer Intern at Acadian Consulting

Lawyers at Acadian used to spend days manually gathering data from Excel spreadsheets in preparation for upcoming depositions. I moved all of the data into a MySQL database and created a Flask app where the senior researchers could query for particular data without a working knowledge of SQL, reducing deposition prep time from days to minutes.

Lawyers at Acadian used to spend days manually gathering data from Excel spreadsheets in preparation for upcoming depositions. I moved all of the data into a MySQL database and created a Flask app where the senior researchers could query for particular data without a working knowledge of SQL, reducing deposition prep time from days to minutes.

Recommended reading

by R. Carter Hill, William E. Griffiths, Guay C. Lim

This is my go-to textbook when I need to freshen up on some statistics 101. I used it for two classes during my undergraduate studies at LSU and know the author personally. It's a fantastic read and sits on my desk at work.

This is my go-to textbook when I need to freshen up on some statistics 101. I used it for two classes during my undergraduate studies at LSU and know the author personally. It's a fantastic read and sits on my desk at work.

by George B. Dantzig, Mukund N. Thapa

I used this textbook at LSU for my optimization class. It can be dense in areas but I found myself reading beyond the necessary chapters: I made my final project in this class a presentation on chapter 7, one of the chapters we didn't get to but that added a lot of needed context around the previous concepts we had learned. I wish I could use more linear programming in my work.

I used this textbook at LSU for my optimization class. It can be dense in areas but I found myself reading beyond the necessary chapters: I made my final project in this class a presentation on chapter 7, one of the chapters we didn't get to but that added a lot of needed context around the previous concepts we had learned. I wish I could use more linear programming in my work.

by Max Kuhn, Kjell Johnson

I used this textbook in graduate school at UT Austin when we were learning advanced predictive modeling. The R code snippets in the book are extremely useful and there is an accompanying R package on CRAN. I had this book in PDF but eventually bought the print version so I could keep it on my desk at work.

I used this textbook in graduate school at UT Austin when we were learning advanced predictive modeling. The R code snippets in the book are extremely useful and there is an accompanying R package on CRAN. I had this book in PDF but eventually bought the print version so I could keep it on my desk at work.

by Saeed Ghahramani

I used this textbook in a probability class at LSU and still reference it to this day. It has great examples and explains probability distributions clearly. It almost tricked me into thinking I wanted to be an actuary.

I used this textbook in a probability class at LSU and still reference it to this day. It has great examples and explains probability distributions clearly. It almost tricked me into thinking I wanted to be an actuary.

Nicole White

San Mateo, CA, United States http://nicolewhite.github.io/

I am a data scientist with several years of professional Python experience who enjoys solving novel problems with machine learning.

Technical Skills

Likes: python machine-learning

Experience

Jul 2016 → Feb 2018 Data Scientist Infer
python, machine-learning, scikit-learn, git, r, postgresql, coffeescript, flask, keras

I build predictive models to help our customers better understand which of their inbound leads are most likely to convert to a sale.

I also work on the machine learning infrastructure and research how our customers' data can be leveraged to build new predictive product offerings.

Jul 2014 → Jul 2016 Data Scientist Neo4j
python, machine-learning, flask, javascript, html, twitter-bootstrap, git, r, cypher, neo4j

I built and maintained a Flask application that exposed marketing, sales, support, product usage, and product feedback data to the rest of the team. This app was powered by a Neo4j database that I built and maintained, allowing for dashboards used across multiple departments along with internal tools for lead discovery.

The app also powers all of the analytics projects, including:

  • Live alerts when user retention drops below a certain threshold (via time series trend analysis)
  • Live predictions that an incoming lead will convert to a sale (via random forest classification trained over Marketo data)
  • Live predictions that a customer is nearing churn (via random forest classification trained over Zendesk data)
May 2013 → Aug 2013 Data Engineer Intern Acadian Consulting
python, flask, mysql

Lawyers at Acadian used to spend days manually gathering data from Excel spreadsheets in preparation for upcoming depositions. I moved all of the data into a MySQL database and created a Flask app where the senior researchers could query for particular data without a working knowledge of SQL, reducing deposition prep time from days to minutes.

Education

2013 → 2014 M.S. Analytics University of Texas at Austin
python, r, sql

Favorite Classes

  • Predictive Modeling
    • Generalized Linear Models
    • Classification Trees
    • Random Forests
  • Unsupervised Learning
    • Principal Component Analysis
    • Factor Analysis
    • Clustering

Awards

  • VIP’s Women in Technology Scholarship
  • Deloitte Tuition Award
2009 → 2013 B.S. Economics, Math Louisiana State University
stata, r

Favorite Classes

  • Econometrics I, II
  • Calculus I, II, III
  • Probability
  • Stochastic Processes
  • Linear Programming
  • Game Theory

Awards

  • LSU Tiger Athletic Foundation Scholarship
  • Outstanding Student in Econometrics
  • Hans Metcalf Memorial Award
  • University Medalist

Projects & Interests

Oct 2013 → Current Stack Overflow https://stackoverflow.com/users/2848578/nicole-white
Written 143 answers. Active in cypher, neo4j, keras, python, graph-databases and 1 other tags.
Jul 2017 → Current Keras https://github.com/fchollet/keras

Deep Learning for Python

Jul 2015 → Current cycli https://github.com/nicolewhite/cycli
python

A Command Line Interface for Cypher.

Core maintainer.

May 2015 → Current algebra.js https://github.com/nicolewhite/algebra.js
javascript

Build, display, and solve algebraic equations in JavaScript.

Core maintainer.

May 2014 → Current RNeo4j https://github.com/nicolewhite/RNeo4j
r

The Neo4j driver for R.

Core maintainer.

Public Artifacts

Jul 2016 Codenames: Playing Spymaster with R https://nicolewhite.github.io/2016/07/19/spymaster.html
Apr 2016 Data Science and Recommendations with Neo4j https://www.youtube.com/watch?v=60E2WV4iwIg
Oct 2015 StarCraft with Neo4j https://www.youtube.com/watch?v=Ew_e6wxTzmw
Oct 2015 Improving My CLI's Autocomplete with Markov Chains http://nicolewhite.github.io/2015/10/05/improving-cycli-autocomplete-markov-chains.html
May 2015 How to Build a Python Web Application with Flask and Neo4j https://www.youtube.com/watch?v=ZMOHEh-caTc
May 2015 Understanding Waiting Times Between Events with the Poisson and Exponential Distributions http://nicolewhite.github.io/2015/05/23/understanding-waiting-times.html
Jun 2014 Find the Steady State Distribution of a Markov Process in R http://nicolewhite.github.io/2014/06/10/steady-state-transition-matrix.html

Readings

Principles of Econometrics R. Carter Hill, William E. Griffiths, Guay C. Lim http://www.amazon.com/Principles-Econometrics-R-Carter-Hill/dp/0470626739

This is my go-to textbook when I need to freshen up on some statistics 101. I used it for two classes during my undergraduate studies at LSU and know the author personally. It's a fantastic read and sits on my desk at work.

Linear Programming 1: Introduction (Springer Series in Operations Research and Financial Engineering) (v. 1) George B. Dantzig, Mukund N. Thapa http://www.amazon.com/Linear-Programming-Introduction-Operations-Engineering/dp/0387948333

I used this textbook at LSU for my optimization class. It can be dense in areas but I found myself reading beyond the necessary chapters: I made my final project in this class a presentation on chapter 7, one of the chapters we didn't get to but that added a lot of needed context around the previous concepts we had learned. I wish I could use more linear programming in my work.

Applied Predictive Modeling Max Kuhn, Kjell Johnson http://www.amazon.com/Applied-Predictive-Modeling-Max-Kuhn/dp/1461468485

I used this textbook in graduate school at UT Austin when we were learning advanced predictive modeling. The R code snippets in the book are extremely useful and there is an accompanying R package on CRAN. I had this book in PDF but eventually bought the print version so I could keep it on my desk at work.

Fundamentals of Probability, with Stochastic Processes (3rd Edition) Saeed Ghahramani http://www.amazon.com/Fundamentals-Probability-Stochastic-Processes-Edition/dp/0131453408

I used this textbook in a probability class at LSU and still reference it to this day. It has great examples and explains probability distributions clearly. It almost tricked me into thinking I wanted to be an actuary.