Senior Data Engineer (Managed Services)

Coeo
Reading
1 week ago
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Job Title: Senior Data Engineer (Managed Services)

Location: Reading, UK (Hybrid)

Company: CoeoLtd

Overview

About the company:

Coeo are trusted data management and analytics experts, delivering technology strategy and support for business. The team have deep technical and commercial experience working with Microsoft Data Services to help our clients optimize their costs and maximize the benefits from their investments in these technologies. Coeo has been established for over 17 years and has offices in Reading, UK and Hyderabad, India. We are exclusively focused on Microsoft technologies. Our mission is to “help our clients predict their future” through the better use of data, technology, people, and processes. To do this our business has always focused on:

  • Data Managed Services
  • Data Platform Consultancy
  • Analytics Consultancy
  • Artificial Intelligence Consultancy
  • Adoption and Change Management

We supportand enhancea wide range ofData & Analytics solutions,sothe issues youencountercan beverydiverse, if you are as passionate aboutdataand Azure as we are, then theManagedServicesTeam might be the place for you!

Role and responsibilities

As a Senior Data Engineer in the Managed Services team, you’ll be working on:

  • Day to day monitoring & management of production Data & Analytics solutions
  • Troubleshooting and resolving incidents and problems
  • Developing and deploying minor enhancements to supported solutions
  • Dealing directly with end-users and customers
  • Developing and configuring internal tools to automate tasks

We’ll invest heavily in your on-going development through access to formal training, in-house development sessions, mentoring, and opportunities to attend external gatherings such as User Groups, and of course FabCon and SQL Bits. We cover the cost of study for Microsoft certification exams to make sure you reach your full potential, and you will have personal development time allocated to ensure you have time to learn.

Required Experience
  • Experience working in a Managed Service team supporting Azure based Production Data & Analytics ETL/integration solutions (Fabric, Databricks, Synapse, Data Factory, Function Apps, Power BI etc) against SLAs
  • Python, PySpark, Scala, Spark SQL
  • Ability to identify and investigate complex problems and implement resolutions
  • Direct contact with customers/end-users on the phone and by email
  • IT Service Desk (ServiceNow etc) experience
Desired Experience
  • .Net(C#), SQL (including SSAS, SSIS & SSRS)
  • ITILv3/v4 Foundation
  • Microsoft certifications (DP-203, DP-600 etc), Databricks certifications
  • Development of enhancements to data pipelines/notebooks & Power BI reports/models
  • Up to date technology, so collaboration has never been easier
  • Cutting edge technology projects – exciting goals ahead!
Diversity and Inclusion

Coeo is an equal opportunity employer which celebrates Diversity and has a commitment to inclusion. All applicants will be considered for employment with us without attention to age, race, color, religion, sex or sexual orientation, gender identity, national origin and disability.


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