Delivering Trusted Environments
Lead Data Analyst
Location
United Kingdom
Posted
7 days ago
Salary
0
Seniority
Senior
Job Description
Lead Data Analyst
Aker Systems
• Lead the data and systems analysis activities within the project, identifying the business and technical requirements and acceptance criteria • Conduct data analysis activities to identify detailed requirements including business transformation mappings • Creating technical User Stories, including task breakdown and be able to explain them to the technical delivery team • Working with the Solution Architect to develop and document detailed User Stories for the project backlog – you will need to validate that the solution will meet the end user requirements • Working with the data consumers and internal teams to create data specifications including detailed data definitions & mappings • Taking the lead on running workshops and data supplier engagement • Formalising the results of data and systems analysis into structured documentation and obtain approval from the key stakeholders • Forming strong business relationships with suppliers and consumers of data • Building out patterns and processes that can be repeated • Managing the project backlog in Jira • Being part of the technical Agile scrum team – actively contributing to other activities including testing and validation of the end results
Job Requirements
- A Bachelor's degree or greater, ideally in Computer Science or a related field
- At least 5 years experience within a similar role - Technical Analyst or Data Analyst
- Experience of working in an Agile delivery team
- Experience communicating to a varied range of stakeholders across both technology and the business, building strong relationships
- Skilled in collecting and interpreting data, analysing results to identify patterns and trends in structured and unstructured data sets, RDBMS and Dimensional Data Models
- Manipulation, analysis and interpretation of complex data sets using SQL and analytical functions
- Experience of working with data orientated requirements, including a good understanding of data modelling, mapping and workflow
- Able to apply suitable analytical approaches to requirements discovery, documentation and solution delivery
- Experience running requirements workshops to elicit User Stories, Workflow Diagrams, etc
- Previous experience working in a technical capacity, as either a Systems Analyst or an MI/BI background would be advantageous
- Previous experience working within a data team on complex integration problems using public Cloud and messaging or streaming technology
Benefits
- 25 days holiday plus bank holidays
- Company paid medical insurance
- Life assurance
- Pension scheme
- Annual training allowance
- Wellbeing allowance
- Virtual GP
- Employee Assistance plan
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