Data Analyst - Integrations

Precise Placements
London
4 days ago
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Overview:

We are seeking a technically proficient Data Analyst to join our IT Department. This role will focus on API design and systems integrations, playing a vital part in enabling data-driven decision-making and ensuring seamless data exchange across internal and external platforms.

Key Responsibilities:

  • Design, document, and maintain APIs to facilitate secure and efficient data integration between systems.
  • Analyse and interpret complex datasets to support IT operations and strategic initiatives.
  • Create and maintain data dictionaries, business glossaries, and detailed documentation of data structures and relationships.
  • Define and document data lineage and transformations to ensure transparency and consistency.
  • Collaborate with developers, architects, and business analysts to define integration and reporting requirements.
  • Contribute to the development of dashboards and reporting tools using Power BI, Azure Foundry, and Fabric.
  • Ensure data quality, compliance, and governance across all integrations.
  • Support automation efforts by embedding APIs into existing workflows.
  • Work closely with vendors to design solutions aligned with architectural standards and best practices.

Key Skills & Experience:

  • Proven experience in a Data Analyst or similar technical role.
  • Strong hands-on experience with RESTful API design, documentation (Swagger/OpenAPI), and testing tools (e.g. Postman).
  • Proficiency in SQL and scripting languages such as Python or R.
  • Solid understanding of data modelling, ETL processes, and system integration.
  • Experience working with Azure and Microsoft data tools including Power BI, Azure Foundry, and Fabric.
  • Excellent communication skills and ability to engage effectively with technical and business stakeholders.
  • Degree in Computer Science, Information Systems, or a related discipline (or equivalent experience).

Personal Attributes:

  • Highly self-motivated and detail-oriented with strong analytical thinking.
  • Confident decision-maker with a consultative, solutions-focused approach.
  • Comfortable working in a collaborative, global team environment.
  • Passionate about emerging data technologies and continuous learning.
  • Willingness to occasionally travel internationally and work outside normal hours when required.

Why Join:

You’ll be part of a forward-thinking, inclusive global firm that values innovation, diversity, and collaboration. This is an opportunity to make a real impact within a high-performing team, helping shape the firm’s data strategy and integration landscape.

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