

BSc Financial Computing
About this course
Financial computing sits at the junction of three disciplines that have become inseparable in modern financial markets: quantitative finance, computer science and mathematics. The field emerged from the recognition that pricing complex financial instruments, managing risk and executing trading strategies at scale all require substantial computational power and algorithmic sophistication. Financial computing professionals build the models and systems that underlie derivatives pricing, portfolio optimisation, risk management platforms and algorithmic trading infrastructure. It is a technically demanding discipline with substantial intellectual depth. At the University of Liverpool, you will study this programme over three years full time, and the structure includes a year abroad, giving you exposure to financial computing and quantitative finance in an international academic context. Liverpool's location and links to the financial services industry provide a practical backdrop to the theoretical work. The typical entry tariff for this programme is around 120 UCAS points. You will study core mathematics including calculus, linear algebra, probability and statistics alongside programming, data structures and algorithms. As the programme develops, you will move into more specialist topics including stochastic processes, numerical methods for finance, financial derivatives, time series analysis and financial data modelling. You will work with programming languages commonly used in quantitative finance, developing the ability to implement and test financial models in code as well as to understand their mathematical foundations. The programme develops rigorous thinking about uncertainty, risk and the assumptions underlying quantitative models. Graduates of financial computing programmes are well placed for quantitative roles in investment banks, hedge funds, asset management firms, risk management functions and financial technology companies. Job titles commonly sought by graduates include quantitative analyst, financial software developer, risk analyst, data scientist in financial services and derivatives analyst. The combination of mathematical rigour and programming ability is particularly valued in quantitative trading and structured products. Actuarial careers, insurance analytics and regulatory risk functions also recruit from this background. Postgraduate study in mathematical finance, financial engineering or data science is a well-supported progression for those who want to develop specialist expertise.
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