ETL process which downloads, transforms, and loads Freddie Mac/Fannie Mae mortgage data
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Updated
Dec 13, 2017 - Python
ETL process which downloads, transforms, and loads Freddie Mac/Fannie Mae mortgage data
Resources for Open Risk Academy Course: "Processing US Agency Mortgage Data with Awk and Pandas - Part 1: Static Data"
Resources for Open Risk Academy Course: "Processing US Agency Mortgage Data with Awk and Pandas - Part 2: Performing Book"
Fairness Analysis in US Mortgage Lending with Machine Learning Algorithms
This is a capstone project for Microsoft Professional Programme in Data Science
End-to-end credit risk modeling system using Fannie Mae data, including training pipelines, persisted model artifacts, and a Streamlit-based loan scoring app.
A React component that enables users to calculate their mortgage payments, features data visualization.
An app under development and open for other parties to contribute.
In this study, we examine a sample of mortgage lending decision data from Boston in 1990 to determine whether race is associated with the outcome of a mortgage loan application.
Scalable ETL pipeline and Machine Learning model to predict mortgage defaults using Freddie Mac’s Single-Family Loan-Level Dataset. Migrated from a Pandas-based legacy system to a distributed PySpark architecture on Databricks to handle multi-gigabyte time-series performance data.
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