Lead bus. analyst

Hcl Technologies
London
3 weeks ago
Applications closed

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About HCLTech HCLTech is a global technology company,spread across 60 countries, delivering industry-leadingcapabilities centered around digital, engineering, cloud and AI,powered by a broad portfolio of technology services and products.We work with clients across all major verticals, providing industrysolutions for Financial Services, Manufacturing, Life Sciences andHealthcare, Technology and Services, Telecom and Media, Retail andCPG, and Public Services. We are powered by our people, a global,diverse, multi-generational talent - representing 161 nationalitieswhose unique spark, perspective and boundless passion drive ourculture of proactive value creation and problem-solving. Ourpurpose is to bring together the best of technology and our peopleto supercharge progress for everyone, everywhere our clients,partners, their stakeholders, communities, and the planet. As acompany, we are deeply focused on accelerating our ESG agenda. Weare also creating technology-enabled sustainable solutions with andfor our clients and partners. We embed ESG imperatives into everyaspect of our business and ensure that the progress we superchargeis responsible, inclusive and beneficial to all our stakeholders inthe long term. We have committed to achieving net zero by 2040. Tolearn more about how we can supercharge progress for you, visitwww.hcltech.com Lead Business Analyst Job Summary The Lead BusinessAnalyst will play a key role in business analysis and agilemethodology at HCL. They will be responsible for driving andmanaging business analysis tasks, working closely with stakeholdersto gather requirements, and ensuring the successful delivery ofprojects within the agile framework. - Key Responsibilities 1. Leadand manage business analysis activities within the organization 2.Collaborate with stakeholders to gather, analyze, and documentbusiness requirements 3. Develop detailed project documentationincluding user stories, functional specifications, and acceptancecriteria 4. Work closely with the development team to ensure thatbusiness requirements are accurately translated into technicalsolutions 5. Facilitate communication between business stakeholdersand the project team 6. Conduct workshops, meetings, andpresentations to gather requirements and provide project updates 7.Utilize agile methodologies to support project delivery and ensurealignment with business goals 8. Identify areas for processimprovement and contribute to the development of best practices inbusiness analysis Skill Requirements 1. Strong understanding ofbusiness analysis principles and practices 2. Proficiency in agilemethodology and experience working in agile environments 3.Excellent communication and interpersonal skills to effectivelyengage with stakeholders at all levels 4. Ability to managemultiple priorities and stakeholders in a fast-paced environment 5.Analytical mindset with the ability to translate businessrequirements into technical solutions 6. Proven track record ofdelivering successful projects through effective business analysis7. Strong problem-solving skills and attention to detail 8.Certification in business analysis or agile methodology is a plusCertifications: CBAP (Certified Business Analysis Professional),PMIPBA (PMI Professional in Business Analysis)#J-18808-Ljbffr

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