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Python Quantitative Developer Hungary Jobs (Hybrid work)

3 Job Offers

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DevOps Engineer with Application Support
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Hungary , Budapest
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Not provided
https://www.citi.com/ Logo
Citi
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Until further notice
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Senior Quantitative Analyst
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Hungary , Budapest
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https://www.citi.com/ Logo
Citi
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Markets Funding Structurer
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Hungary , Budapest
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https://www.citi.com/ Logo
Citi
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Explore the world of Python Quantitative Developer jobs, a dynamic and high-demand career path at the intersection of finance, mathematics, and sophisticated software engineering. Professionals in this role are the crucial architects who build the technological backbone for quantitative finance. They transform complex mathematical models into robust, efficient, and scalable software applications that drive critical financial decisions. If you are passionate about solving intricate problems with code and have a keen interest in financial markets, this profession offers a challenging and rewarding trajectory. A Python Quantitative Developer's primary mission is to bridge the gap between theoretical quantitative research and practical, production-ready systems. Their work typically involves the development and maintenance of in-house analytical libraries and core financial infrastructure. Common responsibilities include designing, implementing, and rigorously testing mathematical models for pricing a wide range of financial instruments, calculating risk metrics, and simulating market scenarios. They are heavily involved in optimizing code for performance, often dealing with high-frequency calculations and large-scale datasets. A significant part of their role also involves working on the underlying development infrastructure, which can include building distributed computing frameworks, creating testing suites, and developing web-based interfaces for other teams to interact with the models. Collaboration is key, as they frequently work alongside quantitative analysts (quants), traders, and IT teams to integrate these analytical libraries into the firm's broader risk management and trading systems. The typical skill set for these jobs is both deep and broad. Unsurprisingly, exceptional proficiency in Python programming is the non-negotiable foundation, with a strong emphasis on writing clean, testable, and maintainable code. Knowledge of scientific libraries like NumPy, SciPy, and pandas is standard. A solid understanding of software development principles, including version control (e.g., Git) and testing frameworks (e.g., pytest), is essential. Given the computational demands, experience with distributed computing concepts, parallel processing, and sometimes grid computing is highly valued. While not always mandatory, a strong academic background in a quantitative or computational field such as Computer Science, Mathematics, Physics, or Financial Engineering is typical. An understanding of core financial concepts—particularly derivatives pricing, various risk measures (such as Market Risk, Credit Risk, Counterparty Credit Risk), and exposure calculations—is a significant advantage. Furthermore, familiarity with database technologies (SQL, MongoDB) and web frameworks can be beneficial for building full-stack analytical tools. For those seeking Python Quantitative Developer jobs, success also hinges on possessing strong analytical and problem-solving abilities, meticulous attention to detail, and the capacity to thrive in a fast-paced, collaborative environment.

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