• Stars
    star
    31
  • Rank 820,005 (Top 17 %)
  • Language
    Jupyter Notebook
  • Created over 2 years ago
  • Updated 6 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Shows how to maximize order success and optimize revenue for our current product based on certain points in our software workflow. This helps identify where the opportunity is to create the biggest lift in revenue for the smallest lift in workflow completion metrics.

More Repositories

1

SQL-Query-Samples

This space includes sample SQL queries that have been adjusted and anonymized from the originals to maintain privacy. Included are queries on orders, products, software performance, order statuses, bank accounts, financial institutions, workflow fallout points, client reports, and more! It is a small snapshot of my work in SQL, but I chose these to share based on their simplicity and readability.
TSQL
12
star
2

Loan-Approval-Prediction-Random-Forest-Web-App

Web App and Random Forest - Loan Approval Prediction
Jupyter Notebook
11
star
3

SQL-Practice

9
star
4

Reports-Dashboards-Visualizations-PowerBI-KPIs-Metrics

Features sample reports, dashboards, metrics, and KPIs built in Power BI. Note: all data labels, number, names, graph axes, etc. have been either hidden or blacked out to maintain privacy. These are only to be viewed as samples of my visualization style and metric-building capabilities. The real ones with labels and numbers look even better! The real ones are also dynamic and filterable.
5
star
5

UGA-Football-HTML-Scrape-Clean-and-Vis

This project features an HTML scrape off of the UGA Football website (works as of 2022). The data consists of players, height, weight, hometown, and more. Throughout the data cleaning and transformation process, I appropriately deal with nulls, dups in a should-be-unique column, and string data that should be split into multiple columns. I create dictionaries, functions, and visualizations that help me understand the distribution and values of data. I finish it off with some visualizations that show BMI and weight class! I do not know anything about football or BMI, but I am able to show a story with my code and visuals.
Jupyter Notebook
3
star
6

Donor-Personas-k-means-clustering

As a team of volunteer data scientists, we cleaned and transformed a dataset from a nonprofit client containing donor demographics, behavior, and donations. Then we conducted a k-means clustering analysis to group donors which resulted in 3 significant clusters. I took these clusters and developed 3 donor personas based on their demographics and historical behaviors and presented them to the client and other Data Science and Analytics leaders in Atlanta.
3
star
7

credit-risk-model-using-statistics

Python
2
star
8

Loan-Limits-by-County

This project analyzes the 2022 Loan Limits by county. Definitions and background are included in the ReadMe and main document!
Jupyter Notebook
2
star
9

SnakeGamefromScratch

A classic snake arcade game from scratch built by various functions and design elements🐍
Racket
1
star
10

Chi-Squared-Test-Mortgage-JSON

The data has mortgage-level data and provides information on the borrower such as race/ethnicity, gender, and loan purpose. This analysis explores the data, makes transformations, and performs chi-squared tests on variables to see if there are relationships between them.
Jupyter Notebook
1
star