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Invite colleaguesSecurities market automation from standards to self-learning machines: Current state and future perspectives
Abstract
Over the last two decades, key aspects of the financial industry have been automated to a substantial degree. While most progress in automation has come from traditional technologies, recent advances in machine learning, artificial intelligence and robotics are likely to accelerate the pace. In such a context, Distributed Ledger Technologies, Robo-Advisors and cognitive tools are creating a foundation for solving major problems faced by the industry. This paper provides an overview of the capabilities and limitations of these technologies and the challenges that await market participants who want to embrace and implement them. It draws attention to the importance of collaboration, governance, standards and market practice harmonisation in order to successfully deploy these technologies in a multi-party, globalised network environment.
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Author's Biography
Jonathan Ehrenfeld is the Head of Securities Markets & FX at SWIFT. He joined SWIFT in 2011 to lead the development of SWIFT’s educational programme for the post-trade market reforms in France and Spain. Jonathan has more than eight years of experience in information management and architecture, data management and financial standards. Before joining SWIFT he was an assistant professor at the Université Libre de Bruxelles. Jonathan has a master’s degree in information science and communication technologies.