Snowflake Data Engineer - 12month FTC

iamproperty
Newcastle upon Tyne
4 days ago
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iamproperty Newcastle Upon Tyne, England, United Kingdom

We founded iamproperty to do the things no one else was doing, but we’ve grown because we have the best people. It’s our team who drive our success and help make our culture unique, creative, and filled with personality. With over half our staff working remotely, location is not an issue either. Hiring people from all over the country has enabled us to broaden our reach, further adding to our diverse mix of teammates.

We currently have over 700 talented members of staff who share one vision, working together to transform the property industry and helping our Partner Agents succeed! From CRM and auction to compliance, onboarding and conveyancing, our solutions work behind the scenes to give agents choice and control. We’re already working with over 6,000 UK Estate Agency branches to accelerate their success today, with a market leading ecosystem of solutions that ensures they have everything they need to manage their business, team and clients.

What can we offer you?
  • Private Counselling with a weekly confidential helpline available
  • Simplyhealth private healthcare plan
  • £150 Wellbeing Allowance per year
  • Working elsewhere policy (4 weeks per year)
  • Hybrid working
  • Buy and sell annual leave scheme (upto 3 days per year)
Key responsibilities
  • Design, build, and maintain robust data pipelines using Matillion and Snowflake.
  • Develop analytics-ready Snowflake data models following dimensional modelling best practices.
  • Implement and evolve a medallion architecture (bronze, silver, gold) with clear lineage and governance.
  • Optimise Snowflake performance and cost through clustering, warehouse sizing, query tuning, and workload management.
  • Build secure, resilient, well-tested pipelines with monitoring, alerting, and error handling.
  • Create datasets powering Looker dashboards, embedded analytics, and self-service reporting.
  • Translate analytics and business requirements into performant, reusable Snowflake models.
What are we looking for?
  • Previous experience in Data Engineering / Analytics Engineering on Snowflake platforms.
  • Strong hands-on experience with Matillion (or equivalent ETL/ELT tools) and advanced SQL.
  • Expertise in dimensional modelling, medallion architecture, and analytics-ready data design.
  • Experience with data quality, governance, and building high-impact data products.
  • Curious, proactive, and committed to continuous learning.
Next steps

We would love to hear from you if you are interested in this opportunity! Once you have clicked apply and submitted your application, if successful, a member of the Recruitment team will be in touch to chat more! We encourage people of all backgrounds, identities and abilities to apply. We are committed to creating an accessible and inclusive experience for all candidates, if you need any reasonable adjustments to support your application or interview process, just let us know how we can help! Thank you for the initial interest in joining iamproperty and we wish you luck moving forward in your application process!

Seniority level
  • Entry level
Employment type
  • Full-time
Job function
  • Information Technology


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