Asset & Wealth Management - London - Vice President - Software Engineering

Goldman Sachs
London
1 year ago
Applications closed

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What We Do

Read all the information about this opportunity carefully, then use the application button below to send your CV and application.At Goldman Sachs, our Engineers don’t just make things – we make things possible. Change the world by connecting people and capital with ideas. Solve the most challenging and pressing engineering problems for our clients. Join our engineering teams that build massively scalable software and systems, architect low latency infrastructure solutions, proactively guard against cyber threats, and leverage machine learning alongside financial engineering to continuously turn data into action. Create new businesses, transform finance, and explore a world of opportunity at the speed of markets.Goldman Sachs Asset Management Division:A career with Goldman Sachs is an opportunity to help clients across the globe realize their potential, while you discover your own. As part of one of the world’s leading asset managers with over $2 trillion in assets under supervision, you can expect to participate in exciting investment opportunities while collaborating with talented colleagues from all asset classes and regions and building meaningful relationships with your clients. Working in a culture that values integrity and transparency, you will be part of a diverse team that is passionate about our craft, our clients, and building sustainable success.Who We Look ForGoldman Sachs Engineers are innovators and problem-solvers, building solutions in risk management, big data, mobile and more. We look for creative collaborators who evolve, adapt to change and thrive in a fast-paced global environment.HOW YOU WILL FULFILL YOUR POTENTIALBe a major contributor to the build out of the ETF platform, including taking projects from beginning to end, from analysis, design, implementation, and go-live.Work with portfolio managers, traders, and operations to understand requirements for new ETF products, as well as to identify opportunities for efficiency improvements.Support product launches and ongoing ETF operations.SKILLS AND EXPERIENCE WE ARE LOOKING FOR5+ years of experience as a Software Engineer.A degree in Computer Science or related field.Experience with back-end service development in Java.Experience with front-end UI development with JavaScript and a major framework.Experience successfully collaborating directly with stakeholders to understand the product space, identify solutions, and finally deliver software products.Knowledge of asset management, particularly Equities, Fixed Income and ETFs is a big plus.Comfort with multi-tasking, a fast-paced environment, and managing multiple stakeholders.Experience working as part of a global team.Excellent written and spoken communication.

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