Senior Consultant_ Data Analyst_ UK

Infosys
Wakefield
3 weeks ago
Applications closed

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Job Description

Role – Azure Data Engineer


Technology – MS Fabric, Azure, PowerBI


Location – Leeds, UK


Compensation – Competitive (including bonus)


Overview

Today, the corporate landscape is dynamic, and the world ahead is full of possibilities! None of the amazing things we do at Infosys would be possible without an equally amazing culture, the environment where ideas can flourish and where you are empowered to move forward as far as your ideas will take you.


At Infosys, we assure that your career will never stand still, we will inspire you to build what’s next and we will navigate further together. Our journey of learnability, values and trusted relationships with our clients continue to be the cornerstones of our organization and these values are upheld only because of our people.


Your Role

As an Azure & Microsoft Fabric Lead Developer, you will lead the design and development of enterprise‑grade data pipelines, lakehouses, and analytics solutions using Azure Data Services and Microsoft Fabric for client program. You will be responsible for building scalable ingestion, transformation, governance, and reporting layers aligned to client standards, workforce analytics requirements, and Trust‑level data governance.


You will collaborate closely with architects, SMEs, BI developers, data engineers, platform teams, and external partners (Microsoft) to ensure high‑quality delivery of modern analytics platforms.


Required

  • Strong hands‑on expertise in Azure Data Factory, Azure Databricks, Azure Data Lake Storage Gen2, Azure SQL, Synapse.
  • Proven experience designing and developing solutions using Microsoft Fabric:

    • Lakehouse
    • Data Pipelines
    • Dataflows Gen2
    • Warehouse (SQL Endpoint)
    • OneLake governance


  • Ability to translate business requirements into technical architecture and detailed design.
  • Expertise in building scalable ingestion frameworks (batch/streaming) using ADF, Databricks or Fabric pipelines.
  • Strong programming skills in PySpark, SQL, Python.
  • Experience implementing medallion architecture, delta lakes, and metadata‑driven pipelines.
  • Hands‑on experience with DQ frameworks, validation rules and reconciliation logic.
  • Ability to integrate Azure/Fabric datasets with Power BI semantic models and dashboards.
  • Experience building reusable datasets for Client domains such as HR, Payroll, Workforce, Clinical, or Operational reporting.
  • Experience with CI/CD using Azure DevOps (Repos, Pipelines, Release Management).
  • Ability to work with data architects, platform teams and product owners to deliver high‑quality designs.

Preferred

  • Experience delivering technology programs within healthcare organizations in Data.
  • Experience delivering analytics in Microsoft Fabric for enterprise‑scale healthcare clients.
  • Experience with Fabric Admin Center, OneSecurity model, Capacity planning.

Certifications

  • DP-203 (Azure Data Engineer)
  • Fabric Analytics Engineer Associate
  • Azure Solutions Architect / Databricks certifications

Exposure to secure landing zones, data masking, PII handling, and access governance.


All aspects of employment at Infosys are based on merit, competence and performance. We are committed to embracing diversity and creating an inclusive environment for all employees. Infosys is proud to be an equal opportunity employer.


Work Location

Wakefield


Country

United Kingdom


State / Region / Province

West Yorkshire


Company

ITL UK


Interest Group

Infosys Limited


Role Designation

2015ASRCON Senior Consultant


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