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Andrew Conti

New York, NY, United States

agconti.com

Premier 20 % Stack Overflow pour
Actuellement Lead Full Stack Developer chez Fueled.

I am a Lead Full Stack Developer at Fueled, where I focus on creating the back and front ends of beautiful and inventive iOS and web applications. I also have strong interests in data science, quantitative economic analysis, and creating pricing models. Outside of my development projects, I regularly conduct academic research and in my free time I enjoy soccer, rock climbing, martial arts, and constantly jam to rock and funk.

Front End: Angular.js, D3.js, JavaScript, CoffeeScript, Backbone.js, html, CSS, Sass

Back End: Python, Django, Node.js, Express, Heroku, Postgres, Redis, Grunt.js, Gulp.js, Git

Github: github.com/agconti

Technologies

Aversions :

Expérience (10) afficher tout

Lead Full Stack Developer, Fueled

août 2014 - Actuel

  • Developed cutting edge mobile applications using Python, Django, Node.js, Express.js, html, Sass, JavaScript, and Angular.js.
  • Managed a team of 4 developers.
  • Created team standards that outlined the process, workflows, and best practices to ensure the high quality development expected of Fueled
  • Started the Front To Back Initiative which allowed for cross department collaboration and discussion on enhancement of company process.

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, 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 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.

Financial Analyst & Developer , Polaris Investment Partners

janvier 2012 - décembre 2012

  • Performed back office functions and conducted fund analysis and individual investment analysis of potential hedge funds and commodity traders for review by senior staff.
  • Created a quantitative strategy backtesting program, an automated hurdle rate checker, and the programs and procedures to automate due diligence fillings in Excel VBA.

Researcher , The Initiative for Public Choice and Market Process

septembre 2011 - septembre 2013

  • Researched the quantitative differences between domestic and Chinese IPOs offered in the US and the link between those Chinese firms and financial fraud.
  • Created a quantitative IPO pricing model, collected data through programming autonomous data mining programs, and performed the econometric analysis for basis of the study.

Entrepreneur , Algorithmic Trading System Development

octobre 2011 - novembre 2012

  • Created a fully automated valuator, portfolio optimizer, and trader in Excel VBA. The system employs a long/short strategy, where continuous analysis of the entire NASDAQ, NYSE, and AMEX, is employed to exploit mispricings in the US equity markets.
  • Used my knowledge of HTML5 and CSS to create original API’s to extract data from Yahoo Finance.
  • Deployed system on an Amazon EC2 server running Windows Server 2008.

Blue Book Quantitative Model, Fast Iron

janvier 2013 - avril 2013

  • Created a predictive model for Fast Iron that allows its customers to valuate their entire heavy equipment fleet at auction.
  • Used python and the Pandas, NumPy, StatsModels, and Matplotlib libraries as a medium to apply machine learning techniques to achieve an R2 of 0.877.
  • Interested in my model? Please check out my presentation at github.com/agconti/AGC_BlueBook.

Financial Analyst, Jackson Financial Group

septembre 2011 - janvier 2012

Fund analysis: Conducted detailed portfolio analysis and allocation analysis of 108 top mutual funds, over-the-counter stocks, and domestic and foreign equities, and bonds as potential investments for clients.

Founder, President, Martial Arts Club at the College of Charleston

septembre 2010 - mai 2012

  • Founded and secured funding for the club, equipment donations, taught members, and grew club membership from 3 members to 35.
5 de plus

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

Stack Exchange afficher tout Dernière consultation aujourd'hui

Open Source (7) afficher tout

kaggle-titanic

GitHub, mai 2013 - oct. 2014; suivi par 43 personnes; forké 45 fois

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.


KaggleAux

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.

Creator, Sole contributor


agconti.com

GitHub, juil. 2013 - Actuel

my personal website.


trading

GitHub, mai 2013 - juil. 2013; suivi par 7 personnes; forké 2 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}


lime

GitHub, juin 2013 - oct. 2014; suivi par 4 personnes

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


BlueBook

GitHub, mai 2013 - juil. 2013; suivi par 2 personnes

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.


real-time-pages

GitHub, avr. 2014 - août 2014

Shows the top pages on Gizmodo.com and updates in realtime. Pure JavaScript and CSS.


2 de plus

Écrits 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

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.


Outils

SublimeText, Atom