Henrique's Portfolio

What do I do?

Graduated with a Bachelors of Science in Data Science and Bachelors of Liberal Arts in Economics, with a minor in statistics at Colorado State University.

Currently pursuing a Master of Computer Science at the Illinois institute of Technology

Skills

What I have learned so far:

  • Matlab
  • Machine Learning
  • R and Packages
  • Econometrics
  • Python and Packages
  • Data Wrangling
  • MySQL/PostgreSQL
  • Database Design
  • Numerical Analysis
  • C/C++
  • Tableau/PowerBi
  • Experiment Design
  • Deep Learning

Work Experience

Graduate Projects

Major League Soccer Database

In this project, I designed and implemented a database to store Major League Soccer Data. For the design process I used chen notation to create a diagram that was later implemented in a postgresql instance. Moreover, I added data to be able to test advanced queries such as OLAP,Triggers and Window functions. Finally, I used Python and tkinter to implement a Graphical User Interface (GUI) in which the user is able to perform C.R.U.D operations and advanced queries to explore the dataset.

Undergraduate Degree Projects

Statistical Machine Learning

In this class, my group worked on analyzing a heart disease data set to classify between patients with heart disease and patients without, we used a variety of method such as LDA, LASSO , KNN, Bagging, Random Forests, and Boosting. The best perfoming method Boosting reached an accuracy of 87.7%.

Econometrics

This project is a econometrics analysis of the video game market, it uses several variables such as critic rating, user rating, platform, and console on a multiple linear regression model in order to determine whether those variables influence video game sales.

Crypotcurrency Trading Automation

Used Python (PyTorch/Pandas), Reinforcement Learning, and Deep learning algorithms to train a cryptocurrency trading agent that can buy, sell, and hold cryptocurrencies. The agent successfully achieved profits in the test dataset.

Forecasting Cryptocurrency Prices

Papers that used and compared different time series forecasting methods such as Univariate models (ARIMA), Vector Autoregression models (VAR), and Vector Auto Correction models (VECM) to forecast cryptocurrencies prices using R and packages.

Principal Componenet Analysis of Brain MRI Images

In this project we used PCA to reduce the dimension of the MRI images, after we achived the Image reduction we used classifications methods to classify between tumor and non-tumor images.

Contact Me

For further inquiries, or if my resume is needed please contact me using linkedin or email.