Analytics Portfolio Management Coordination VP | London, UK (Basé à London)

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Analytics Portfolio Management Coordination VP

JPMorgan Chase & Co. London, United Kingdom

Job Description

About J.P. Morgan
JPMorgan Chase & Co. (NYSE: JPM) is a leading global financial services firm with assets of $2.6 trillion and operations worldwide. The firm is a leader in investment banking, financial services for consumers and small business, commercial banking, financial transaction processing, and asset management. Information about JPMorgan Chase & Co. is available at www.jpmorganchase.com.

About Digital and Platform Services, Finance and Business Management, CDAO
Digital and Platform Services (D&PS) within the Commercial & Investment Bank (CIB) was created in September 2018 with the vision to create a commercial platform that can seamlessly deliver all of J.P. Morgan's capabilities to clients when and how they want it. The CIB Chief Data & Analytics Office (CIB CDAO) is a multi-disciplinary team tasked to enable the CIB of the future, powered by Data & Analytics.

Role Responsibilities:

  • Responsible for overseeing CIB CAO Book of Work governance including supporting the prioritization, management reporting, dashboards and analytics.
  • Support delivery of CIB analytics operating model in partnership with the in-business CAOs.
  • Create intuitive and interactive data visualizations to present complex information to stakeholders and ensure that data and analytics are available with high levels of accuracy to drive decisions and business outcomes for CIB.
  • Collaborate with cross-functional teams to identify and prioritize analytics projects that align with business objectives.
  • Manage key transformational analytics initiatives, enabling idea generation, prioritization & identifying reuse & scale opportunities.
  • Coordinate with stakeholders to gather requirements, define project scope, and establish success criteria.
  • Support coordination, collation and tracking of KPIs and costs/benefits.
  • Scope problems, identify major issues and actionable opportunities to design solutions.
  • Work with multiple teams across CDAO, Lines of Business and support functions to drive delivery, evaluate strategies and insights, alignment on priorities and data accuracy.

Qualifications:

  • Exceptional analytical and problem solving skills with ability to analyse large data sets and present conclusions concisely.
  • Able to deliver to conclusion multiple initiatives across a diverse group of partners.
  • Driven with a strategic and innovative mindset, curious and not afraid to challenge the status quo.
  • Able to switch between big picture and attention to detail, with a high tolerance to ambiguity.
  • Excellent oral and written communication and stakeholder management skills.
  • An ability to work in and navigate in large, complex organizations.
  • Prior experience in supporting AI/ML teams and managing large book of work.
  • Business management, project or product management experience preferred.
  • A superior command of PowerPoint and Excel, Tableau and Alteryx.

About Us
J.P. Morgan is a global leader in financial services, providing strategic advice and products to the world's most prominent corporations, governments, wealthy individuals and institutional investors. We strive to build trusted, long-term partnerships to help our clients achieve their business objectives.

We recognize that our people are our strength and the diverse talents they bring to our global workforce are directly linked to our success. We are an equal opportunity employer and place a high value on diversity and inclusion at our company.

About the Team
The Corporate & Investment Bank is a global leader across investment banking, wholesale payments, markets and securities services.

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