Global Head of External Data Vendor Management - London

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London
3 weeks ago
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Job DescriptionOliver Wyman is a global leader in management consulting. With offices in more than 70 cities across 30 countries, Oliver Wyman combines deep industry knowledge with specialized expertise in strategy, operations, risk management, and organization transformation. The firm has more than 7,000 professionals around the world who work with clients to optimize their business, improve their operations and risk profile, and accelerate their organizational performance to seize the most attractive opportunities.Please Note: Oliver Wyman/MMC operates a hybrid working policy and we will require the successful candidate to work from the London Baker Street office at least 60% of the time.The Opportunity Oliver Wyman is seeking a strategic leader to join our team as the Global Head of External Data Vendor Management.In this pivotal role, you will oversee and optimize our extensive portfolio of data and expert vendors, driving the strategic value derived from these partnerships to enhance our consulting services across various industries.Key Responsibilities: Strategic Vendor Management: Developing and implementing a comprehensive strategy for managing Oliver Wyman’s portfolio of external data vendors, ensuring alignment with our strategic objectives.Data Utilization and Value Maximization: Identifying and unlocking the value of vendor data sources to enhance consulting services and deliver actionable insights to clients.Technology and AI Integration: Staying abreast of emerging technologies and lead initiatives to integrate AI solutions, ensuring we remain at the forefront of innovation.Cost Management and Optimization: Analyzing spending patterns and vendor performance to identify opportunities for cost savings while implementing metrics to evaluate vendor ROI.Team Leadership and Development: Leading and mentoring a diverse team of professionals, fostering a culture of collaboration, continuous improvement, and professional development.Collaboration and Stakeholder Engagement: Interfacing with senior leadership to align data management strategies with broader organizational goals and represent Oliver Wyman in external forums.Who We Are Looking For: We’re keen to hear from individuals with proven experience in external data vendor management, vendor management, and strategic planning.Experience gained from within a consulting or professional services environment is preferred.You’ll have strong analytical skills with the ability to interpret complex data and generate actionable insights.You’ll bring demonstrated experience in managing teams and fostering a collaborative work environment.Excellent communication and interpersonal skills, with the ability to engage effectively with diverse stakeholders will be key strengths for you.Familiarity with AI technologies and their application in data management and analytics is expected.Bachelor’s degree in Data Science, Business Administration, Information Technology, or a related field; an advanced degree is a plus.Why Join Us? At Oliver Wyman, we are committed to creating a diverse and inclusive environment where everyone can thrive. We value collaboration, integrity, and excellence, and we encourage our team members to bring their authentic selves to work. Our culture promotes continuous learning and development, providing opportunities for growth and advancement within the firm.We offer competitive compensation, comprehensive benefits, and a flexible work environment that supports work-life balance. Join us in making a difference for our clients and communities while advancing your career in a supportive and innovative setting.Oliver Wyman is an equal opportunity employer. We celebrate and are committed to creating an inclusive environment for all employees. To learn more, please follow us on Facebook, LinkedIn or Twitter: OliverWyman.www.oliverwyman.com/careersMarsh& McLennan Companies and its Affiliates are EOE Minority//Disability/Vet/ / employers.#J-18808-Ljbffr

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