Learning Modern C++ for Finance: Foundations for Quantitative Programming
A lot of financial modeling has gravitated toward Python, R, and VBA, but many developers hit a wall with these languages when it comes to performance. This practical book demonstrates why C++ is still one of the dominant production-quality languages for financial applications and systems. Many programmers believe that C++ is too difficult to learn. Author Daniel Hanson demonstrates that this is no longer the case.

Financial programmers coming from Python or another interpreted language will discover how to leverage C++ abstractions that enable safer and quicker implementation of financial models. You'll also explore how popular open source libraries provide additional weapons for attacking mathematical problems. C++ programmers unfamiliar with financial applications will also benefit from this handy guide.

  • Learn C++ basics: syntax, inheritance, polymorphism, composition, STL containers, and algorithms
  • Dive into newer features and abstractions including functional programming using lambdas, task-based concurrency, and smart pointers
  • Employ common but nontrivial financial models in modern C++
  • Explore external open source math libraries, particularly Eigen and Boost
  • Implement basic numerical routines in modern C++
  • Understand best practices for writing clean and efficient code
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Learning Modern C++ for Finance: Foundations for Quantitative Programming
A lot of financial modeling has gravitated toward Python, R, and VBA, but many developers hit a wall with these languages when it comes to performance. This practical book demonstrates why C++ is still one of the dominant production-quality languages for financial applications and systems. Many programmers believe that C++ is too difficult to learn. Author Daniel Hanson demonstrates that this is no longer the case.

Financial programmers coming from Python or another interpreted language will discover how to leverage C++ abstractions that enable safer and quicker implementation of financial models. You'll also explore how popular open source libraries provide additional weapons for attacking mathematical problems. C++ programmers unfamiliar with financial applications will also benefit from this handy guide.

  • Learn C++ basics: syntax, inheritance, polymorphism, composition, STL containers, and algorithms
  • Dive into newer features and abstractions including functional programming using lambdas, task-based concurrency, and smart pointers
  • Employ common but nontrivial financial models in modern C++
  • Explore external open source math libraries, particularly Eigen and Boost
  • Implement basic numerical routines in modern C++
  • Understand best practices for writing clean and efficient code
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Learning Modern C++ for Finance: Foundations for Quantitative Programming

Learning Modern C++ for Finance: Foundations for Quantitative Programming

by Daniel Hanson
Learning Modern C++ for Finance: Foundations for Quantitative Programming

Learning Modern C++ for Finance: Foundations for Quantitative Programming

by Daniel Hanson

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Overview

A lot of financial modeling has gravitated toward Python, R, and VBA, but many developers hit a wall with these languages when it comes to performance. This practical book demonstrates why C++ is still one of the dominant production-quality languages for financial applications and systems. Many programmers believe that C++ is too difficult to learn. Author Daniel Hanson demonstrates that this is no longer the case.

Financial programmers coming from Python or another interpreted language will discover how to leverage C++ abstractions that enable safer and quicker implementation of financial models. You'll also explore how popular open source libraries provide additional weapons for attacking mathematical problems. C++ programmers unfamiliar with financial applications will also benefit from this handy guide.

  • Learn C++ basics: syntax, inheritance, polymorphism, composition, STL containers, and algorithms
  • Dive into newer features and abstractions including functional programming using lambdas, task-based concurrency, and smart pointers
  • Employ common but nontrivial financial models in modern C++
  • Explore external open source math libraries, particularly Eigen and Boost
  • Implement basic numerical routines in modern C++
  • Understand best practices for writing clean and efficient code

Product Details

ISBN-13: 9781098100803
Publisher: O'Reilly Media, Incorporated
Publication date: 12/10/2024
Pages: 428
Product dimensions: 6.90(w) x 9.00(h) x 0.90(d)

About the Author

Daniel Hanson spent over 20 years in quantitative development in finance, primarily with C++ implementation of option pricing and portfolio risk models, trading systems, and library development. He now holds a full-time lecturer position in the Department of Applied Mathematics at the University of Washington, teaching quantitative development courses in the Computational Finance & Risk Management (CFRM) undergraduate and graduate programs. Among the classes he teaches is graduate-level sequence in C++ for quantitative finance, ranging from an introductory level through advanced. He also mentors Google Summer of Code student projects involving mathematical model implementations in C++ and R.
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