Predictive Models for Financial Risk is a short, practical course for financial analysts, interns, and early-career professionals who want to use supervised machine learning responsibly in finance. Many predictive models fail not because of poor algorithms, but because key workflow steps—data preparation, validation, or transparent communication—are skipped. In this course, you’ll learn how to follow a complete supervised learning workflow, from defining a predictive question to evaluating results. You’ll build and test a decision tree classifier in Python, apply it to financial data, and report accuracy and insights in clear business language. Through short videos, guided readings, and hands-on labs, you’ll practice turning financial datasets into transparent, data-driven risk assessments. The course concludes with a project where you train and evaluate your own model, communicate performance results, and reflect on fairness and trust in financial predictions.

Predictive Models for Financial Risk

Predictive Models for Financial Risk
This course is part of Quantitative Finance & Risk Modeling Specialization

Instructor: ansrsource instructors
Access provided by Axe Finance
Recommended experience
Skills you'll gain
- Responsible AI
- Predictive Analytics
- Business Communication
- Data Preprocessing
- Data Validation
- Supervised Learning
- Workflow Management
- Decision Tree Learning
- Applied Machine Learning
- Predictive Modeling
- Statistical Machine Learning
- Financial Data
- Data Ethics
- Financial Modeling
- Performance Reporting
- Risk Modeling
- Model Evaluation
Details to know

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March 2026
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There is 1 module in this course
Predictive Models for Financial Risk is a short, practical course for financial analysts, interns, and early-career professionals who want to use supervised machine learning responsibly in finance. Many predictive models fail not because of poor algorithms, but because key workflow steps—data preparation, validation, or transparent communication—are skipped. In this course, you’ll learn how to follow a complete supervised learning workflow, from defining a predictive question to evaluating results. You’ll build and test a decision tree classifier in Python, apply it to financial data, and report accuracy and insights in clear business language. Through short videos, guided readings, and hands-on labs, you’ll practice turning financial datasets into transparent, data-driven risk assessments. The course concludes with a project where you train and evaluate your own model, communicate performance results, and reflect on fairness and trust in financial predictions.
What's included
6 videos2 readings4 assignments
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Instructor

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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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