Snowflake Data Engineer

RED Global
Manchester
4 days ago
Create job alert
Snowflake Developer (Contract)

Location: Manchester – 4 days per week on‑site, 1 day remote.


Employment type: Contract


Seniority level: Mid‑Senior level


Skills and Responsibilities

  • Strong understanding of Cloud Computing concepts and platforms.
  • Extensive experience in data modeling, including Dimensional Data Models, Entity-Relationship (ER) Models, and Data Vault architecture.
  • Proficient in writing complex SQL queries for data extraction, transformation, and analysis.
  • In‑depth knowledge of Snowflake architecture, including its roles, dynamic tables, streams, tasks, and security policies.
  • Proven experience working on data‑centric projects and applications across diverse domains.
  • Hands‑on experience with GitLab for version control and CI/CD processes.
  • Proficient in Python for data processing, automation, and analytics.
  • Good understanding of Data Science and Machine Learning concepts and workflows.
  • Sound knowledge of Data Management and Data Governance practices.
  • Demonstrated experience in effectively managing product owners and stakeholders.
  • Excellent team player with a positive attitude, proactive mindset, and strong collaboration skills.
  • Self‑driven, adaptable, and eager to learn new technologies and concepts.

Contact

If this interests you, please send an up‑to‑date CV and we can discuss the role in more detail.


Feel free to forward this advert to anyone who might be interested.


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