Efua Amoonua Afful, Phd
AeroLeads people directory · profile

Efua Amoonua Afful, Phd Email & Phone Number

Enterprise Analytics and Modeling - Quantitative Modeling - Manager at Fannie Mae
Location: Washington, District Of Columbia, United States 11 work roles 3 schools
1 work email found @fanniemae.com LinkedIn matched
✓ Verified May 2026 4 data sources Profile completeness 100%

Contact Signals · 1 work email

Work email e****@fanniemae.com
LinkedIn Profile matched
3 free lookups remaining · No credit card
Current company
Role
Enterprise Analytics and Modeling - Quantitative Modeling - Manager
Location
Washington, District Of Columbia, United States
Company size

Who is Efua Amoonua Afful, Phd? Overview

A concise factual answer block for searchers comparing this professional profile.

Quick answer

Efua Amoonua Afful, Phd is listed as Enterprise Analytics and Modeling - Quantitative Modeling - Manager at Fannie Mae, a company with 12699 employees, based in Washington, District Of Columbia, United States. AeroLeads shows a work email signal at fanniemae.com and a matched LinkedIn profile for Efua Amoonua Afful, Phd.

Efua Amoonua Afful, Phd previously worked as Enterprise Analytics & Modeling - Quantitative Modeling - Manager at Fannie Mae and Enterprise Analytics & Modeling - Quantitative Modeling - Lead Associate at Fannie Mae. Efua Amoonua Afful, Phd holds Doctor Of Philosophy, Economics from Howard University.

Company email context

Email format at Fannie Mae

This section adds company-level context without repeating Efua Amoonua Afful, Phd's masked contact details.

*@fanniemae.com
71% confidence

AeroLeads found 1 current-domain work email signal for Efua Amoonua Afful, Phd. Compare company email patterns before reaching out.

Profile bio

About Efua Amoonua Afful, Phd

More than 18 years of experience in academia and industry covering international economics, labor economics, development economics, macroeconomics, and financial economics.Experience managing application of mathematical, statistical, and econometric techniques to provide innovative, thorough, and practical solutions; guiding effective application of data mining and/or statistical techniques to develop analytic insights, sound hypotheses, and informed recommendations; assessing quality and risk of model methodologies, outputs, and processes; applying understanding of relevant business context to interpret model results, and monitor performance; creating an inclusive and productive team environment in a hybrid work model that fosters diversity, psychological safety, and innovation; and investing in the performance and development of employees.Areas of expertise include but are not limited to machine learning theory and practice, econometrics, forecasting, economic capital estimation, return-on-capital modeling, guarantee fee modeling, counterparty credit risk modeling, operational risk quantification, technology risk modeling, stress testing, model validation, programming (Python, R on AWS, SAS, EViews, Stata, SPSS, MATLAB, FAME) and automation.

Listed skills include Data Analysis, Research, Stata, Econometrics, and 22 others.

Current workplace

Efua Amoonua Afful, Phd's current company

Company context helps verify the profile and gives searchers a useful next step.

Fannie Mae
Fannie Mae
Enterprise Analytics and Modeling - Quantitative Modeling - Manager
Washington, DC, US
Website
Employees
12699
AeroLeads page
11 roles

Efua Amoonua Afful, Phd work experience

A career timeline built from the work history available for this profile.

Enterprise Analytics And Modeling - Quantitative Modeling - Manager

Washington, DC, US

Enterprise Analytics & Modeling - Quantitative Modeling - Manager

Current

Washington, District Of Columbia, US

May 2022 - Present

Enterprise Analytics & Modeling - Quantitative Modeling - Lead Associate

Washington, District Of Columbia, US

Sep 2020 - May 2022

Quantitative Modeler Iii

Washington, District Of Columbia, US

Sep 2019 - Aug 2020

Quantitative Modeler Ii

Washington, District Of Columbia, US

May 2017 - Aug 2019

Assistant Director-Economist

New York, NY, US

Dec 2014 - May 2017

Research Assistant/Teaching Assistant/Teaching Associate

Washington, DC, US

Aug 2008 - May 2012
3 education records

Efua Amoonua Afful, Phd education

Doctor Of Philosophy, Economics

Howard University

Master Of Arts, Economics

Alfred Lerner College Of Business & Economics At University Of Delaware

Bachelor Of Business Administration, Economics

Fox School Of Business At Temple University
FAQ

Frequently asked questions about Efua Amoonua Afful, Phd

Quick answers generated from the profile data available on this page.

What company does Efua Amoonua Afful, Phd work for?

Efua Amoonua Afful, Phd works for Fannie Mae.

What is Efua Amoonua Afful, Phd's role at Fannie Mae?

Efua Amoonua Afful, Phd is listed as Enterprise Analytics and Modeling - Quantitative Modeling - Manager at Fannie Mae.

What is Efua Amoonua Afful, Phd's email address?

AeroLeads has found 1 work email signal at @fanniemae.com for Efua Amoonua Afful, Phd at Fannie Mae.

Where is Efua Amoonua Afful, Phd based?

Efua Amoonua Afful, Phd is based in Washington, District Of Columbia, United States while working with Fannie Mae.

What companies has Efua Amoonua Afful, Phd worked for?

Efua Amoonua Afful, Phd has worked for Fannie Mae, Bowie State University, Moody'S Analytics, Kansas Department Of Labor, and Howard University.

How can I contact Efua Amoonua Afful, Phd?

You can use AeroLeads to view verified contact signals for Efua Amoonua Afful, Phd at Fannie Mae, including work email, phone, and LinkedIn data when available.

What schools did Efua Amoonua Afful, Phd attend?

Efua Amoonua Afful, Phd holds Doctor Of Philosophy, Economics from Howard University.

What skills is Efua Amoonua Afful, Phd known for?

Efua Amoonua Afful, Phd is listed with skills including Data Analysis, Research, Stata, Econometrics, Microsoft Excel, Spss, Economics, and Eviews.

Find 750M verified contacts

Search by job title, company, industry, location, and seniority. Export verified B2B contact data when you need it.