Data Analyst (Integration -focused)

London
4 hours ago
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Data Analyst (Integration-Focused)

About the Role . Data integrations sit at the centre of a complex enterprise application landscape, moving critical information between systems such as CRM, learning platforms, finance and HR systems. When data flows effectively, operations run smoothly-when it doesn't, the impact is immediate and visible.

This role sits within an integration team but is firmly focused on data rather than development. The majority of integration issues are caused by problems in the underlying data. This position is responsible for investigating those issues-analysing data across systems, identifying root causes, and working with stakeholders to resolve them.

This is best suited to a data analyst with experience working in integrated environments.

Key Responsibilities

Analyse data across source and target systems to understand mapping and transformation logic

Investigate data discrepancies, failed integrations, and reconciliation issues

Identify root causes of data-related problems across multiple systems

Work with stakeholders to resolve data issues at source

Support ongoing monitoring and improvement of data quality and integration reliability

About You You are a data-focused professional who enjoys working with complex datasets and solving problems. You are comfortable interrogating data, identifying inconsistencies, and understanding how data should flow across systems. You will bring:

Strong SQL skills and experience working with relational databases (e.g. SQL Server, Oracle, MySQL)

Proven experience analysing and troubleshooting data issues across multiple systems

Understanding of data mapping, transformation logic, and reconciliation processes

Experience working in environments where data moves between systems (ETL / integrations exposure)

Strong analytical and problem-solving skills with a methodical approach

You are curious, detail-oriented, and persistent in tracking down issues.

What's Important for This Role

This is not a pure development role

Integration platform experience (e.g. Boomi) is helpful but not essential

The priority is strong hands-on data analysis capability

Candidates must have experience working in large, complex organisations with multiple systems and stakeholders

Strong communication skills are essential due to stakeholder interaction

About the Team You will be part of a specialist integration team responsible for ensuring reliable data flow across a large and complex system landscape. The team works across multiple platforms and collaborates with a wide range of stakeholders to maintain data integrity and system performance.

About the Organisation. This is a large, well-established organisation with a complex data environment and a strong focus on collaboration, innovation, and continuous improvement. The scale and diversity of systems create a technically challenging and rewarding environment.

Duration: 12-month fixed-term contract

Location: Hybrid working: London 2 days per week, onsite

Salary: £47800 pa generous Pension scheme/annual leave. Professional development opportunities

Additional Information : Onsite attendance is a key requirement for this role. Candidates must have the right to work (no sponsorship available). Experience in sectors such as large corporates, public sector, healthcare, finance, or education environments is advantageous.

To progress matters send your CV to Laura at

Services Advertised area those of an Employment Agency

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