Business Analyst - Data Migration - Qlik & Power BI

Worthing
1 week ago
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Business Analyst
Contract Length: 6 Months
Location: Worthing (hybrid Working - 1 -2 days onsite)
£450 Inside IR35 via umbrella

Are you a skilled Business Analyst with a passion for data and reporting? Our client is seeking a talented individual to join their team for a contract position focused on a critical data and report migration project. This role involves migrating reports from Qlik to Power BI, and we are looking for someone with strong experience in Business Intelligence (BI) reporting projects.

Key Responsibilities:

Collaborate with data analysts and business stakeholders to gather comprehensive requirements for data and reporting needs.
Develop a deep understanding of domain data sets and relevant business areas.
Partner with data analysts to create functional specifications for data ingestion, including data mapping, transformation logic, and ensuring data quality.
Support the implementation and testing of ETL pipelines, maintaining data integrity and aligning with business objectives.
Play a pivotal role in planning, User Acceptance Testing (UAT), and the rollout of migrated reports, while assisting with training and change management.
Assist the Project Manager in coordination activities throughout the project lifecycle.
Oversee the end-to-end delivery of reports, ensuring successful completion of the development life cycle.
Requirements:

Proven experience in data warehousing and reporting projects.
Strong understanding of SQL and data modelling concepts.
Familiarity with data warehousing principles and methodologies, including ETL processes and data integration techniques.
Hands-on experience with Microsoft Power BI is essential.
Experience working in both Scrum/Agile and Waterfall delivery environments.
A self-starter who thrives in ambiguous situations, with a keen attention to detail.
Exceptional analytical and problem-solving abilities.
Strong communication and stakeholder management skills, with the capability to translate business requirements into technical specifications for data warehouse and report development.If you are ready to take on this exciting challenge and have the relevant experience, we encourage you to apply today! Join our client's team and play a crucial role in driving their data transformation efforts.

How to Apply:
Please submit your CV along with a cover letter outlining your relevant experience and why you are the ideal candidate for this role. We look forward to hearing from you! Please note, only shortlisted candidates will be contacted.

Our client is an equal opportunity employer and values diversity in the workplace.

Adecco is a disability-confident employer. It is important to us that we run an inclusive and accessible recruitment process to support candidates of all backgrounds and all abilities to apply. Adecco is committed to building a supportive environment for you to explore the next steps in your career. If you require reasonable adjustments at any stage, please let us know and we will be happy to support you

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