Data Modeller

ADLIB Recruitment | B Corp™
Manchester
1 year ago
Applications closed

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Data Architect

Data Analyst / Modeller

Boutique Data Consultancy


Work on a really complex large scale infrastructure project

Gain further data modelling experience

Fully remote


This boutique data consultancy is working on one of the largest public sector infrastructure projects with a very complex data set up. They need someone with great communication skills and solid data modelling & analysis experience to help uncover the data lineage to help understand the complex data flows within the programme.


What you’ll be doing


On the initial project, you'll work with Consulting partners and the end client to and investigate core systems to understand how to get the data out of them and analyse that to help create an enterprise data model for the project. You’ll be speaking with key system owners and will need to reverse engineer data models & processes and learn how the data works across a number of key areas. You’ll then dig into that data and analyse it, as well as presenting key findings back to stakeholders. You’ll get the chance to work on other projects with other clients as well once this one is completed.


What experience you’ll need to apply


  • Experience working with complex data infrastructure
  • Excellent ability to gather technical requirements from stakeholders
  • Good understanding of data modelling & data lineage
  • Experience using Sparx/ERWIN or similar data modelling tools
  • Worked with complex and siloed data organisations
  • Experience of getting data from source systems
  • Data profiling, data quality or MDM experience


What you’ll get in return for your experience


A day rate of £400 - £450 dependent on experience. This is an inside IR35 contract with an initial duration of 5 months.


What’s next?


Please get in touch with an up to date CV today. Don’t hesitate to call / email to discuss the finer details.

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