Andrew Conti

Full Stack Engineer
ustwo
10 % supérieurs Stack Overflowpour
20 % supérieurs Stack Overflowpour
30 % supérieurs Stack Overflowpour
gravatar
Vu sur Stack Overflow aujourd'hui

Focusing on virtual reality and web development, I'm making impactful digital products with startups, internal ventures, and companies like Google at ustwo.

• Unity3D, C#, Google Cardboard • Python, Django, Node.js, Express.js, html, Sass, JavaScript, TypeScript, and Angular2.

Github: github.com/agconti

Technologies

Les technologies que vous n'aimez pas

Expérience afficher tout

Full Stack Engineer
ustwo

juin 2015 – Actuel

Focusing on virtual reality and web development, I'm making impactful digital products with startups, internal ventures, and companies like Google.

• Unity3D, C#, Google Cardboard • Python, Django, Node.js, Express.js, html, Sass, JavaScript, TypeScript, and Angular2.

Lead Full Stack Engineer
Fueled

août 2014 – juin 2015

  • Developed cutting edge mobile applications using Python, Django, Node.js, Express.js, html, Sass, JavaScript, and Angular.js.
  • Managed a team of 4 developers.

Full Stack Developer
Fueled

septembre 2013 – juillet 2014

  • Developed the front and backends of beautiful and and intuitive web and iOS applications.
  • Consulted with clients and transformed, managed, and enhanced their ideas into lean and cutting edge agile development projects.
  • Technology stack:
    • Frontend: html, CSS, Sass, JavaScript, CoffeeScript, Angular.js, Backbone.js
    • Backend: Python, Django, Node.js, Express, Grunt.js, Pa

Full Stack Engineer
BuzzFeed

juillet 2014 – août 2014

Worked on the BuzzFeed Data Team focusing on a mission critical tool that managed and optimized the placement of BuzzFeed generated content for client's marketing campaigns.

  • Worked both sides of the stack using Python, Django, html, CSS, JavaScript, Require​​.js, Backbone.js, and D3.js
  • Created intuitive and informative data visualizations of campaign performance using D3.js
  • Started an internal movement to increase internal code quality and adhere to community and best practices.
  • Evaluated the quality of current projects and helped create the plan to rewrite them while still allowing development to move forward.

Full Stack Developer, Consultant
AGCONTI Consulting

septembre 2011 – septembre 2013

  • Clients from the Finance, Health Care, and Technology Industries.
  • Projects focus on data analytics, creating pricing models, and visualizing analysis results into easy to understand and intuitive user experiences.
  • Heavily used html, CSS, JavaScript, jQuery, Python, Django, and Git.

Formation

B.S. Economics
College of Charleston

2008 – 2012

Economics: 3.8/4.0 | Focus in Finance: 3.8/4.0 | Mandarin Chinese

  • Graduated Cum Laude May 2013
  • Economic Researcher focusing on Chinese IPOS at the Institute of Public Choice and Market Processes
  • President of the COFC Martial Arts Club

Stack Exchange afficher tout Dernière consultation le aujourd'hui

Open Source () afficher tout

GitHub, mai 2013 - Actuel; suivi par 169 personnes; forké 138 fois

A tutorial for Kaggle's Titanic: Machine Learning from Disaster competition. Demonstrates basic data munging, analysis, and visualization techniques. Shows examples of supervised and unsupervised machine learning techniques.

Project creator and maintainer.


GitHub, juin 2015 - Actuel; suivi par 65 personnes; forké 13 fois

For scaffolding REST apis for rapidly developing mobile products.

Project creator and maintainer.


GitHub, sept. 2015 - nov. 2015; suivi par 5 personnes

A cookiecutter for front end prototypes.

Project creator


GitHub, mai 2013 - juil. 2014; suivi par 7 personnes; forké 3 fois

A collection of statistical tools to aid Data Science competitors in Kaggle Competitions.

Project creator and maintainer.


GitHub, mai 2013 - juil. 2013; suivi par 16 personnes; forké 8 fois

This repository contains real trading examples explained and modeled in IPython Notebooks to generate discussion, feasible trading examples, and potential profit for the common man. Key words: {quantopian, zipline, python trading}

Project creator and maintainer.


GitHub, déc. 2014; suivi par 9 personnes

A basic example of testing node apps that use socket.io using mocha and chai

Project creator and maintainer.


GitHub, juin 2013 - oct. 2014; suivi par 5 personnes

An API for extracting tick data for US equities for ad-hoc analysis in Python with Pandas.

Project creator and maintainer.


GitHub, janv. 2015 - mars 2015

a minimalistic clock in d3.js

Project creator


GitHub, févr. 2015 - mars 2015

Another minimalistic clock in d3.js that mirrors the movement of the sun.

Project creator


4 de plus

Publications afficher tout

Blue Book for Bulldozers Quantitative Model

This IPython Notebook contains a quantitative pricing model created for Fast Iron in the Kaggle competition 'Blue Book for Bulldozers'. The model predicts the sale price of a particular piece of heavy equipment so that Fast Iron can create a 'Blue Book' to enable customers to valuate their heavy equipment fleet at auction. Here python is used as a medium to apply supervised and unsupervised machine learning techniques to explain 88.90% of the variance observed in the training set and score an RMSLE of 0.745 when predicting values on the test set. In this competition 590 data scientists created predictive models based on a 'training dataset', provided by Fast Iron, and then used those models to predict sale prices on a 'test set' to compete for a $10,000 dollar award for the team or individual with the most accurate model. The model and methods used for my entry, which scored in the upper 20%, is shown in BlueBook.ipynb.

GOOG VS AAPL Correlation Arb

his notebook contains an algorithm designed to profit off of the correlation between Apple's and Google's common stock in December 2012 to May 2012. It explores the process of developing the algorithm from conception to full maturation. The final algorithm returns 14.1% in only 128 trading days after commission fees and accounting for slippage.

Kaggle's Titanic: Machine Learning from Disaster Tutorial

A tutorial for Kaggle's Titanic: Machine Learning from Disaster competition. Demonstartes basic data munging, analysis, and visualization techniques. Shows examples of supervised and unsupervised machine learning techniques

Lectures afficher tout

Livres

Two Scoops of Django: Best Practices For Django 1.6

Two Scoops of Django

Best Practices For Django 1.6

Daniel Greenfeld, Audrey Roy


Machine Learning for Hackers

Machine Learning for Hackers

Drew Conway, John Myles White


Think Stats

Think Stats

Allen B. Downey


Articles et blogs

CSS-Tricks

CSS-Tricks

CSS-Tricks is a website about websites.

Product Hunt

Product Hunt

Product Hunt is a curation of the best new products, every day. Discover the latest mobile apps, websites, and technology products that everyone's talking about.

Outils

SublimeText, Atom