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ds-projects's Introduction

Portfolio examples

Presentations about data science.

Mid-term project

Unsupervised learning report

  • Math lectures Part 1 Combine NLP with supervised and unsupervised learning to classify math lectures. By William Morgan.

Final capstone

  • Predicting Life Expectancy by Country by Trent Casillas. Using linear regression, mixed effect models, and clustering to predict and determine important factors for a country's life expectancy average.

  • Cover to Cover: A (not so) Novel Approach to Book Reccommendations by Mark Espina. The saying goes "Don't Judge a book by it's cover" But Why? Anyone who shops at a local bookstore is definitely paying attention to the covers. And from personal experience, it is a key determinant on whether I end up purchasing a book. First, I will discuss the pros and cons of applying Convolutional Neural Nets to Image Classification, attempting to predict genre labels. In the second half, I will be exploring the application of feature extraction with similarity models as the basis for an Image Content-based retrieval system, Cover-to-Cover.

  • Using machine learning to cluster and classify math lectures by Will Morgan. Using machine learning to cluster and classify math lectures.

  • Capstone_2016_us_elections by Emile Badran. In this capstone project, I process tweets from the leading Democratic (Hillary Clinton) and Republican (Donald Trump) candidates and key 2016 US election hashtags. I apply Natural Language Processing and Network Analysis techniques to find the key topics, and the most influential actors that have guided the public debate.

  • DNA Sequence detection with Genetically trained weights by Chistopher Sanchez

  • Assessing Gender Bias in Tech Job Descriptions by Tiffany French. After reading a report and infographic from the World Economic Forum about gender inequity in AI positions, I designed this project to use NLP techniques to assess for bias in job descriptions, that could ultimately lead to the gender inequity we see in hiring. I used web scraping techniques, LDA and PyLDAviz, as well as supervised techniques to gain understanding and identify future areas of research.

  • PyTrader: Algorithmic Trading and Time Series Predictions Using LSTM by Sohaib Khuram. After exploring the capabilitites of time series models through traditional ARIMA methods and LSTM neural networks, I decided to use these models to predict stock price direction and implement algoritmic trading strategies to see how accurate the results are. Using 4 separate strategies based on technical indicators, I was able to create an accurate model using LSTM that closely replicated trade signals around the original data. The strategies were then backtested on Quantopian to see how they performed on historical data.

Coursework repositories

  • Please fork this repo, add link and make a pull request to add your repo here.

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