Software Engineer

TradingHub
London
1 year ago
Applications closed

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Compensation: £Competitive (Financial Services) About TradingHub Founded in 2010, we have grown from a united vision shared between two people to a team of over 140 across London, Toronto, New York and Singapore. We have achieved scale by building the best-in-class surveillance tooling, where our analytics bring the front office risk mindset to the compliance function. Though we have developed in the trade surveillance arena, we have always been more than that. At heart, we are a finance-focused big data firm. Our goal is to continue creating the world’s leading financial markets analytics platform. The Role We are seeking a Software Engineer to develop sophisticated tooling used for model development and validation. You’ll collaborate with a team of engineers and quants to ensure we produce high quality and accurate models. The successful candidate should be able to illustrate a high attention to detail and ability to work with large and complicated systems. You will be expected to form a solid understanding of all our of models and processes. Responsibilities: Development of sophisticated tools used for model development & validation Maintain and improve QA & testing frameworks crucial for production stability Use of in-house big data language for large-scale analysis Deployment and optimisation of production models Provide front-line support for complex model & data related productions issues Requirements Main Skills/Competencies: Proficiency with C# or other OOP language such as Java or C++ Experience working with database technologies such as SQL, MySQL, Postgres etc. Experience developing tooling and processes to monitor and automate workflows Proven analytical skills & a high attention to detail Knowledge of or keen interest in financial markets Confidence to experiment with new ideas and technologies Benefits Life at TradingHub is a rewarding journey within a fast-growing company that thrives on innovation and collaboration. By combining the best of both tech and finance, we’re able to solve complex problems together and deliver meaningful results to our customers. Everybody has value to bring, and we welcome individuality as a key driving force behind our collective success. Rooted in everything that we do are our core values: Accountability, Ambition, Partnership and Trust. These provide the foundation for a sustainable workplace culture and the platform for you to harness your unique experience and become the best version of yourself. We believe in our people and invest in their growth, and together, we can sit on the right side of history. Employee benefits: Annual discretionary performance bonus Hybrid working policy flexible hours Aviva private medical insurance Unum dental cover Extended parental leave (up to 6 months of fully paid maternity leave) 25 days annual leave bank holidays Enhanced company pension plan Salary sacrifice scheme 5 days study leave towards professional qualifications Cycle to Work & Techscheme Death in service coverage Don’t tick every single requirement? Research shows that candidates from under-represented groups are less likely to apply unless they meet all the criteria. We are dedicated to building a diverse, equitable and inclusive workplace, so if this role excites you, please don't let our specification hold you back. Get in touch TradingHub is an equal opportunities employer. We do not discriminate based on race, religion, ethnic or national origins, sex (including pregnancy, childbirth, reproductive health decisions, or related medical conditions), sexual orientation, gender identity, gender expression, age, socio-economic background, responsibilities for dependants, physical or mental disability or other applicable legally protected characteristics. TradingHub selects candidates for interview based solely on their skills, experience and qualifications. We are committed to making our recruitment process accessible to all and we encourage candidates to inform us of any required adjustments. A full copy of our diversity, equity and inclusion policy will be made available to you upon request.

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