Housing Data Engineer

Spencer Clarke Group
London
4 weeks ago
Create job alert

My client in Greater London are looking to appoint a talented Housing Data Engineer on a Contract basis.

We are looking for a Housing Data Specialist / Data Engineer to support the improvement, integrity, and effective use of housing data across the organisation. You will play a key role in reducing reliance on spreadsheets, improving data quality within NEC Housing, and enabling robust insight and reporting for the organisation.

What's on offer:

Salary: £500-£600 per day, Inside IR35*negotiable based on experience

*please submit your CV with the rate you require

Hybrid working
Contract type: Contract
Monday - Friday

About the role:

Based in Greater London (Hybrid):

Work with the corporate data team and housing services to cleanse and standardise housing data
Prepare and transform data for import into NEC Housing, ensuring accuracy, consistency, and alignment
Extract, manipulate, and validate data from NEC Housing to support operational and analytical needs
Engineer housing data to support business insight, performance monitoring, and BI reporting across the council.

About you:
You will have the following experiences:

Extensive experience in a similar role
Proven experience working with housing or service data, including data cleansing and transformation
Strong ability to extract and manipulate data, including experience with NEC Housing
Local Authority experience is essential

How to apply

Once your CV is received, if you are successful you will be contacted.
Due to the extremely high number of applications, it may not be possible to contact every applicant. As such, if you are not contacted please assume you have not been successful on this occasion.

About Spencer Clarke Group

Here at Spencer Clarke Group, we pride ourselves on connecting you with the best career opportunities; our experienced Consultants have extensive market knowledge and will also provide expert career advice along the way.

When you join us, you will receive:

Access to a wide range of temporary and permanent opportunities
Free DBS checks
Post Placement Aftercare
Loyalty reward scheme and regular competitions for our agency professionals

INDSCGMM

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