Account
Orders
Advanced search
Foundations, Derivatives, and Computational Methods
Louise Reader
Read on Louise Reader App.
Learn to build robust, scalable financial models to position yourself as an expert in computational finance. At a time when the financial industry demands an increasingly complex and accurate mode, this book ensures you stay ahead of the curve by leveraging the latest advancements in programming to develop faster, more reliable, and maintainable financial software.
To begin, you’ll explore key features of C++23, object-oriented programming, and template-based design patterns critical for building reusable financial components. From there, dive into a range of numerical methods, including Monte Carlo simulations, binomial and trinomial trees, and finite difference schemes. Special attention is given to practical implementation details. Every chapter is designed to guide you step by step in transforming mathematical models into efficient, production-level C++ code. You will also learn to handle exotic derivatives, stochastic volatility, and jump-diffusion models, bridging the gap between theory and practice.
In the end, you’ll be equipped with the technical foundation and practical tools needed to design, implement, and analyze complex financial products. You will also be well-prepared to tackle the advanced interest rate and credit derivatives covered in further depth in De La Rosa’s Advanced Quantitative Finance with Modern C++.
What You Will Learn:
Who This Book is for:
Quantitative analysts, financial engineers, researchers, and advanced developers who seek to deepen their knowledge of derivative pricing and computational finance using modern C++. Also suited for graduate students in quantitative finance or applied mathematics who want to complement their theoretical studies with robust coding skills.
Les livres numériques peuvent être téléchargés depuis l'ebookstore Numilog ou directement depuis une tablette ou smartphone.
PDF : format reprenant la maquette originale du livre ; lecture recommandée sur ordinateur et tablette EPUB : format de texte repositionnable ; lecture sur tous supports (ordinateur, tablette, smartphone, liseuse)
DRM Adobe LCP
LCP DRM Adobe
This ebook is DRM protected.
LCP system provides a simplified access to ebooks: an activation key associated with your customer account allows you to open them immediately.
ebooks downloaded with LCP system can be read on:
Adobe DRM associates a file with a personal account (Adobe ID). Once your reading device is activated with your Adobe ID, your ebook can be opened with any compatible reading application.
ebooks downloaded with Adobe DRM can be read on:
mobile-and-tablet To check the compatibility with your devices,see help page
Aaron De la Rosa is a Senior Quantitative Analyst and Data Scientist with a strong background in programming, finance, and quantitative analysis. He holds an MSc in Finance and has extensive experience as a Senior Data Scientist. Aaron is proficient in Python, R, C++, and Matlab, and specializes in portfolio optimization, machine learning, deep learning, and algorithmic trading.
As a Quantitative Developer, he has expertise in market and credit risk, sentiment analysis, web scraping, natural language processing, and large language models. Aaron possesses comprehensive financial, quantitative, and modeling expertise, along with strong problem-solving abilities, excellent analytical skills, and broad financial experience.
He is a highly skilled, motivated, competent, and certified Quant with over eight years of experience in quantitative analysis and statistical modeling. Aaron is capable of providing accurate forecasts, optimizing investment portfolios, and developing projects using his knowledge of various programming languages.
Sign up to get our latest ebook recommendations and special offers