Data Analytics Engineer

Manchester
1 month ago
Applications closed

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Job Title: Data Analytics Engineer
Location: Remote
Contract: Inside IR35
Hours/Duration: Full time, 5 days per week, 6 Month contract

The role of Data Analytics Engineer
Our client, who is an industry leader in workplace services, is looking for an experienced Data Analytics Engineer to join their existing Team as a contractor for a period of 6 months. This opportunity is to provide hands-on development of regional and global data solutions, including engineering and transformation. This role is to be worked remotely.

Key Responsibilities

To provide third-line support of data solutions for UK&I collaborating with regional and global teams where necessary.
To assist in the design, planning, and development aspects of product & project lifecycle ensuring compliance to the agreed framework, design patterns and standards
To act as a consultant to the business on the agreed data technologies available and advise on the most suitable for performance and robustness
Engage with stakeholders to gather data requirements, provide insights, and ensure the data infrastructure supports business needs.
Take initiative to ensure technical skills and specialisations are kept up to date
Creation and maintenance of specifications, operational procedures and frameworkAbout you
As a Data Analytics Engineer you should have a minimum of 5 years' experience working as a data professional, designing and building data solutions. You should also have the following skills:

Advanced proficiency in typical data tools such as SSMS, SSIS, Visual studio, TSQL, Fabric/PowerBI and ideally Azure Data Factory, Databricks & Dremio
Experience and excellent understanding of Data modelling (Facts/Dimensions) and their application, and medallion architecture and its application in data processing
Experience of data engineering and data transformation
Desirable: Understanding of the impact of data residency requirements and regulations, with the ability to implement compliant data solutions
Desirable: Knowledge of Microsoft 365 apps and associated integrations

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