Data Analyst

London
5 days ago
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Job Title: Data Analyst

Location: London
Role Type: Contract

Length: 4-6 months initial

About the Role
Our client is seeking a Data Analysts to join a major data migration programme This is a fantastic opportunity to work on a high-impact project that will shape the future of data management within the organisation.

Key Responsibilities

Gather and document requirements for requested data fields.
Perform data mapping between source and target systems.
Facilitate and participate in stakeholder workshops to clarify requirements and resolve queries, feeding into ETL development activities.
Produce clear, structured documentation to support delivery and ongoing use.
Use Excel for data analysis, validation, and reconciliation activities.
Use Jira to manage requirements, track tasks, and support delivery workflows.
Communicate effectively with stakeholders through workshops, discovery activities, and written outputs.
Conduct discrete discovery analysis to feed into backlog definitions and activities such as data governance.Essential Skills

Strong analytical skills with experience in data mapping and validation.
Excellent communication and stakeholder engagement abilities.
Proactive approach to problem-solving and requirement gathering.
Proficiency in Excel and familiarity with Jira.
Experience in large-scale data migration projects is highly desirable.
If you're ready to take on a challenging role, please provide an up-to-date CV for consideration and apply now

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