Director, Asset Management Risk

Fidelity Investments Inc.
London
11 months ago
Applications closed

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Job Description: The Team: Asset Management Risk, partof Fidelity’s Legal, Compliance and Risk organization (LRC) andaligned with Asset Management’s Compliance Risk and BusinessOperations Group (CRBO), provides direction to management andbusiness units by proactively identifying and monitoring risks toprotect the interests of the firm, clients, and associates. Toexecute this goal, Asset Management Risk is responsible foridentifying, analyzing, aggregating, and reporting on significantand emerging risks to assist management in improving their controlsand processes. The Position: The Asset Management Risk Directorsupports general risk oversight for the Equity, High Income, FixedIncome, QRI, FAMS and SAI investment teams. There will be a strongfocus on Alternative Product readiness, including Private Creditand Real Assets. This role will analyze data and controls toidentify and measure risks, perform targeted data-driven riskassessments, and use data visualization tools to develop executivelevel risk management reporting. To successfully execute theseresponsibilities, the candidate will have experience managingprojects and using influencing skills to achieve goals. The idealcandidate will have a demonstrated commitment and passion for riskmanagement and will be a critical thinker with strong analyticalskills who is able to prioritize and manage multiple projects anddeliver high-quality work. This role requires someone who is hardworking, results oriented and eager to learn. The Expertise YouHave: - Bachelor’s degree required - 10-15 years’ experience infinancial services - Executive level presentation skills (e.g.,PowerPoint) - Extensive project management experience - Deepunderstanding of global risk and compliance practices - In depthknowledge of data analysis techniques and visualization tools(e.g., Tableau), a plus - Experience with common data science tools& languages, a plus The Skills You Bring: - A self-starterskilled at operating autonomously to achieve results in a dynamicenvironment - Superb verbal and written communications skills -Strong data analysis skills (e.g., tools, strategies) with provenability to query / analyze large data sets and assess outcomes -Must thrive in a dynamic and fluid organization where prioritiesshift to respond to business needs - Enjoy sharing knowledge andexpertise - Customer focused; outstanding relationship managementand facilitation skills - Strong collaborator; able to develop andmaintain effective working relationships - Ability to partner withand influence others across the organization to achieve objectives- Ability to build executive level presentations / visualizationsThe Value You Deliver: - Partner with the Asset Management businessgroups to evaluate risks and controls associated with the launch ofnew products, new and changing regulations and new operationalrequirements - Actively perform proactive and targeted dataanalysis to identify risks - Independently assess the design andoperating effectiveness of controls - Strengthen real-time globalresiliency response - Confidently escalate / communicate concernswith management - Perform ad-hoc quality control reviews ofpresentations / reports to ensure integrity of materials - Promoteculture of experimentation to ensure continuously learningCertifications: Category: Risk #J-18808-Ljbffr

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