Math for Finance Professionals
Learn essential finance math skills with practical Excel exercises and real-world examples.
Follow short videos led by expert instructors and then practice what you’ve learned with interactive exercises in your browser.
or
By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.Learn essential finance math skills with practical Excel exercises and real-world examples.
Dive into the world of digital transformation and equip yourself to be an agent of change in a rapidly evolving digital landscape.
Learn about the challenges of monitoring machine learning models in production, including data and concept drift, and methods to address model degradation.
Solidify your decision science skills by designing data-informed frameworks and implementing efficient solutions.
Explore GDPR through real-world cases on data rights, breaches, and compliance challenges.
Learn about the difference between batching and streaming, scaling streaming systems, and real-world applications.
Learn key financial concepts such as capital investment, WACC, and shareholder value.
Master data fluency! Learn skills for individuals and organizations, understand behaviors, and build a data-fluent culture.
Unlock your datas potential by learning to detect and mitigate bias for precise analysis and reliable models.
Develop a better intuition for advanced probability, risk assessment, and simulation techniques to make data-driven business decisions with confidence.
Elevate decision-making skills with Decision Models, analysis methods, risk management, and optimization techniques.
Learn business valuation with real-world applications and case studies using discounted cash flows (DCF).
Learn how computers work, design efficient algorithms, and explore computational theory to solve real-world problems.
Explore a range of programming paradigms, including imperative and declarative, procedural, functional, and object-oriented programming.
Learn about MLOps, including the tools and practices needed for automating and scaling machine learning applications.