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Snowflake Data Engineer

Kubrick
City of London
2 weeks ago
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Required Skill: Python; Snowflake; Snowflake Champion (Certified)


Location: Mansion House, Greater London, EC4, United Kingdom


Job Type: NA


Job Description / Summary

At Kubrick, we’re not just a consultancy - we’re building the next generation of Data and AI leaders. Since 2017, we’ve helped leading organisations harness the power of data, AI, and cloud, and now we’re looking for a Snowflake Data Engineer to join our growing team.


The Role: As a Snowflake Data Engineer, you’ll play a pivotal role in designing, developing, and deploying cutting-edge cloud data platforms and analytics solutions. You’ll combine hands-on engineering with technical leadership, shaping data strategies and delivering impactful, scalable solutions for our clients.


Responsibilities

  • Lead technical delivery on client projects, ensuring quality and scalability
  • Translate complex business requirements into robust Snowflake solutions
  • Build and optimize ELT pipelines with tools like dbt, Airflow, and Fivetran
  • Implement secure and efficient Snowflake environments with best-in-class practices
  • Collaborate with stakeholders to influence data strategy and architecture
  • Mentor and guide junior engineers while driving engineering excellence

What We’re Looking For / Qualifications

  • Proven experience in data engineering or analytics
  • Strong Snowflake expertise (or similar cloud data warehouses)
  • Solid SQL, ELT, and data modelling skills
  • Hands-on experience with Python and cloud platforms (AWS/Azure/GCP)
  • Familiarity with modern data pipelines, CI/CD, and version control
  • Strong communicator and problem solver with proven leadership experience

We Offer

  • Salary: c60k & bonus
  • Hybrid: 2-3 days a week in the office
  • Friendly and collaborative working environment
  • Access to upskilling opportunities and clear progression path
  • 25 days of annual leave
  • Highstreet discounts and Wellness Hub with confidential well-being and mental health support
  • Cycle to work scheme & eye-care vouchers

Diversity, Equity and Inclusion (DEI)

At Kubrick, we not only strive to bridge the skills-gap in data and technology, but we are also committed to playing a key role in improving diversity in the industry. To that effect, we welcome candidates from all backgrounds, and particularly encourage applications from groups currently underrepresented in the industry, including women, people from black and ethnic minority backgrounds, LGBTQ+ people, people with disability and those who are neurodivergent. We are committed to ensuring that all candidates have an equally positive experience, and equal chances for success regardless of any personal characteristics. Please speak to us if we can support you with any adjustments to our recruitment process. We’ve proudly partnered with Women in Data for over six years, providing a community platform for our female and non-binary consultants to upskill, access mentoring opportunities, and build their professional networks. Through this partnership, we’ve also supported mission-critical pro bono projects to improve lives through data and AI, including research into women’s health and safety


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