Business Continuity Manager

Brambles Holdings (UK) Limited
Stretford
1 month ago
Applications closed

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We are expanding our Business Continuity team, looking to bring in a BCM Business Continuity Manager. The role will support the global programme with programme management,administrative, change management and reporting activities with senior leadership visibility. Our global programs work across 60 countries and every region. The focus is implementing a Global BCM Framework and IT system aligned to ISO22301.The role will serve as a critical link between business needs and technology solutions by identifying, analysing, and documenting requirements. Youll ensure that the developed solutions are aligned with business objectives and delivers value while effectively managing stakeholder expectations.Key Responsibilities may include:Collaborate with a wide range of stakeholders to identify, analyse, document, and prioritize business, functional, and non-functional requirements, ensuring alignment with project goals.Lead feasibility studies and produce business models, business cases, usability requirements analysis, and evaluation to support strategic initiatives.Identify and raise issues that could impact the execution of strategic, operational, or project plans, providing timely recommendations for resolution.Communicate effectively with business stakeholders, project managers, product owners, systems analysts, developers, and quality assurance analysts to ensure requirements are clearly stated, understood, and actionable.Oversee end-user testing, tracking progress, and ensuring timely defect resolution to meet quality standards.Present complex technical information in an understandable way to both technical and non-technical audiences, simplifying complex ideas to facilitate decision-making.What youll need:Experience with ISO22301 and BCM frameworksDemonstrated experience in managing and influencing others, it is required to worktogether with other members from various regions and areas.Strong understanding of business metricsExperience in data analystStrong communication & Interpersonal skills (written, verbal, and presentation skills)TPBN1_UKTJ

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