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Director, Quantitative Data Operations

Soteria Reinsurance Ltd.
City of London
1 month ago
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Director, Quantitative Data Operations page is loaded## Director, Quantitative Data Operationslocations: London, Great Britaintime type: Full timeposted on: Posted Todayjob requisition id: 2119124## ## Job Description:The Position:Quantitative Research and Investments (QRI) is seeking a highly motivated data expert in the domain of portfolio risk analytics to lead a Risk Platform Operations team responsible for ensuring that all vendor and internal portfolio risk analytics used for risk management and portfolio construction across Fidelity are delivered consistently, accurately and on a timely basis.The Risk Platform Operations team are the stewards of risk analytics data for Fidelity Asset Management. They focus on quality control of all data that feeds into portfolio risk analytics, including security factor exposures and proxies, factor returns and covariance matrices, fundamentals data, security T&Cs, and portfolio holdings. In this role, you will provide data expertise to portfolio and risk managers who use portfolio risk models and engineering teams which build production processes around them.This leader will mentor more junior members of the team, helping them gain the domain expertise necessary to root-cause daily issues effectively, work with internal and external data providers to resolve issues at source, answer investor questions, and develop automated systems for identifying data quality issues.The Value You Deliver: Contribute to the data model design and lead the management and stewardship of data assets used in risk management and portfolio construction Manage a quality services effort to respond to data quality issues in overnight feeds, enabling fast and seamless responses to upstream issues and insulating production and research from them, while building and tracking data quality KPIs Update and verify the multi factor risk model inputs and outputs before delivery to clients Enable Fidelity Asset Management’s access to accurate, timely and relevant portfolio risk analytics, working closely with key technology and business partners to correct data quality issues at source* Analyze systems, processes and data provider relationships to find efficiencies and improve accuracy and timeliness of reporting* Mentor junior analysts to help them grow their data domain, data operations and security modeling skill setsThe Skills You Bring:* Extensive experience with market risk models from vendors such as Barra, Axioma, Northfield, or Bloomberg* Highly analytical with the ability to quickly comprehend large data sets, develop and implement the right quality controls for these datasets* Highly proactive and self-motivated with the ability to meet objectives under minimal direction providing oversight and mentorship to junior team members* Experience in security, company, portfolio, and index-level information used in financial industry, including pricing for various security types (equities, bonds, derivatives) and construction of holdings* Experience in SQL, Python, Snowflake and / or Oracle and related tools and DQ frameworksThe Expertise You Have:* Bachelor’s degree (or higher) in mathematics, statistics, engineering, computer science, finance, or another quantitative field* 5+ years’ experience in global data operations and/or support teams in peer firm(s) with a demonstrable track record delivering the value described for this role* Experience with methods, tools, statistics, and best practices for autonomous and discretionary anomaly detection, and data quality workflow* Excellent written and verbal communication skills; experience working with technical, investment and senior leadership teams* Experience as a leader in a team environment, mentoring junior associates, ideating process improvements and influencing partner teams* Proven track record of working with complex data environments and associated technology and analytics infrastructure needed to support these environments* Demonstrated ability to root-cause data quality issues in complex environments and work with other teams and data providers to correct issues at source* Experience in creating automated processes to identify errors to ensure high quality of data to support the investment process* Experience in documenting essential procedures and calculations, and validating data* Investment Management business domain expertise across some combination of risk management, portfolio management, trading and investment operations**The Team:**The Risk Platform team is an integral part of the Quantitative Research and Investing (QRI) division in Asset Management. QRI is responsible for the management and development of quantitative investment strategies and solutions while providing high quality quantitative, data-driven support to Fidelity’s fundamental investment professionals, ensuring they have access to the most relevant data and advanced quantitative analysis.## ## Certifications:## ## Category:## Data Analytics and Insights
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