Here you can find all 8 WorldQuant's Data Science Program projects along with my certification.
I'm exhilarated to share that I have completed WorldQuant's Data Science Program, a transformative journey that has broadened my skills and knowledge in data science! 🎓 ✨
Check my badge: https://www.credly.com/go/8ixHXgwMrfiOpTUfXMXXoA
Throughout the program, I worked on eight fascinating projects, each designed to enhance my understanding and practical application of key data science concepts. Let me provide a brief explanation of each project:
1- 𝗛𝗢𝗨𝗦𝗜𝗡𝗚 𝗜𝗡 𝗠𝗘𝗫𝗜𝗖𝗢: Learners use a dataset of 21,000 properties to determine if real estate prices are influenced more by property size or location. They import and clean data from a CSV file, build data visualizations, and examine the relationship between two variables using correlation.
2- 𝗔𝗣𝗔𝗥𝗧𝗠𝗘𝗡𝗧 𝗦𝗔𝗟𝗘𝗦 𝗜𝗡 𝗕𝗨𝗘𝗡𝗢𝗦 𝗔𝗜𝗥𝗘𝗦: Learners build a linear regression model to predict apartment prices in Argentina. They create a data pipeline to impute missing values, encode categorical features, and improve model performance by reducing overfitting.
3- 𝗔𝗜𝗥 𝗤𝗨𝗔𝗟𝗜𝗧𝗬 𝗜𝗡 𝗡𝗔𝗜𝗥𝗢𝗕𝗜: Learners build an ARMA time-series model to predict particulate matter levels in Kenya. They extract data from a MongoDB database using pymongo, and improve model performance through hyperparameter tuning.
4- 𝗘𝗔𝗥𝗧𝗛𝗤𝗨𝗔𝗞𝗘 𝗗𝗔𝗠𝗔𝗚𝗘 𝗜𝗡 𝗡𝗘𝗣𝗔𝗟: Learners build logistic regression and decision tree models to predict earthquake damage to buildings. They extract data from a SQLite database and reveal the biases in data that can lead to discrimination.
5- 𝗕𝗔𝗡𝗞𝗥𝗨𝗣𝗧𝗖𝗬 𝗜𝗡 𝗣𝗢𝗟𝗔𝗡𝗗: Learners build random forest and gradient boosting models to predict whether a company will go bankrupt. They navigate the Linux command line, address imbalanced data through resampling, and consider the impact of performance metrics precision and recall.
6- 𝗖𝗨𝗦𝗧𝗢𝗠𝗘𝗥 𝗦𝗘𝗚𝗠𝗘𝗡𝗧𝗔𝗧𝗜𝗢𝗡 𝗜𝗡 𝗧𝗛𝗘 𝗨𝗦: Learners build a k-means model to cluster US consumers into groups. They use principal component analysis (PCA) for data visualization and create an interactive dashboard with Plotly Dash.
7- 𝗔/𝗕 𝗧𝗘𝗦𝗧𝗜𝗡𝗚 𝗔𝗧 𝗪𝗢𝗥𝗟𝗗𝗤𝗨𝗔𝗡𝗧 𝗨𝗡𝗜𝗩𝗘𝗥𝗦𝗜𝗧𝗬: Learners conduct a chi-square test to determine if sending an email can increase program enrollment at WQU. They build custom Python classes to implement an ETL process, and they create an interactive data application following a three-tiered design pattern.
8- 𝗩𝗢𝗟𝗔𝗧𝗜𝗟𝗜𝗧𝗬 𝗙𝗢𝗥𝗘𝗖𝗔𝗦𝗧𝗜𝗡𝗚 𝗜𝗡 𝗜𝗡𝗗𝗜𝗔:Learners create a GARCH time series model to predict asset volatility. They acquire stock data through an API, clean and store it in an SQLite database, and build their API to serve model predictions.
I want to express my heartfelt gratitude to WorldQuant for providing an exceptional learning experience. The program's comprehensive curriculum and hands-on projects have equipped me with practical skills and a deep understanding of data science techniques.