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Front Office Quantitative Software Engineer

BBVA Group
City of London
3 days ago
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facilitate the application for job offers with LinkedIn. If you wish to obtain more detailed information, please consult our .Front Office (FO) Quants team un QBS are responsible for the development of mathematical models and computational tools for pricing, risk management, and strategy optimization in financial markets. The team works closely with traders and structurers, providing real-time solutions to support decision-making. Their work combines quantitative modeling, high-performance programming (primarily in C++), and data analysis across multiple asset classes. Additionally, they ensure the efficient integration of models into trading and risk systems, guaranteeing accuracy and speed in high-demand environments.Our team plays a key role in shaping the architecture of valuation libraries, ensuring high performance and seamless integration into corporate systems. We specialize in high-performance computing, definequality standards for quantitative development, and establish best practices for software engineering. Collaborating closely with quants, we support projects across multiple asset classes. 5 years of experience 2. At least 5 years in a similar role (Front Office Quantitative Team), developing trading tools such as pricers, models, sensitivities, and reports, while actively interacting with trading desks**.4. Experience in multiplatform development (linux & window), continuous integration, and the software development lifecycle. Boost, Conan, Google Protocol Buffer, Gradle, cmake. Experience with cloud technologies and related frameworks (AWS, Azure).* Docker.* Experience with the Murex platform and Murex Flex API.* Python programming.* Designing sustainable architectures for Excel add-ins using .NET Framework.* Computational optimization using distributed computing, GPUs, vectorization, or other high-performance computing (HPC) techniques.* HPC Grid desirable IBM platform symphony.* Experience integrating trading tools with vendor solutions.Don’t miss any opportunity and... upload your CV! You will join our Talent Community so that we can send you future opportunities that match your profile.#
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