Snowflake DevOps Engineer - Fully Remote - £450/pd

City of London
2 months ago
Applications closed

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Snowflake DevOps Engineer - Fully Remote - £450/pd (Outside IR35)

Please note - this role is only open to applicants who are based in the UK with the unrestricted right to work in the UK. This organisation is not able to offer sponsorship.

About the Role

We are seeking an experienced Snowflake DevOps Engineer to join our team on a 6-month contract. This is a fully remote position, but candidates must be based in the UK and have unrestricted right to work in the UK.

You will play a key role in designing, implementing, and maintaining robust DevOps practices for Snowflake environments, leveraging Azure DevOps for Infrastructure as Code (IaC), networking, security, and containerisation.

Key Responsibilities

Build and maintain automated deployment pipelines for Snowflake using Azure DevOps.
Implement Infrastructure as Code (IaC) for scalable and secure environments.
Ensure best practices in networking and security within cloud-based data platforms.
Support containerisation strategies and integration with Snowflake.
Collaborate with cross-functional teams to deliver high-quality solutions.

Essential Skills & Experience

Proven experience as a DevOps Engineer with Snowflake.
Strong proficiency in Azure DevOps tools and practices.
Expertise in IaC, networking, and security within cloud environments.
Hands-on experience with containerisation technologies (e.g., Docker, Kubernetes).
Excellent problem-solving and communication skills.

Contract Details

Duration: 6 months
Rate: £450/day (Outside IR35)
Location: Fully remote (UK-based only)
Start Date: End of January 2026
Interview Process: Two stagesTo apply for this role please submit your CV or contact David Airey on (phone number removed) or at (url removed).

Tenth Revolution Group are the go-to recruiter for Data & AI roles in the UK offering more opportunities across the country than any other recruitment agency. We're the proud sponsor and supporter of SQLBits, Power Platform World Tour, and the London Fabric User Group. We are the global leaders in Data & AI recruitment

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