Release and Environments Manager

Milton Keynes
8 months ago
Applications closed

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Release and Environment Manager

SaaS / Salesforce / JIRA / IT Transformation Programme

£550 - £650/day | Outside IR35

6 Months (Rolling)

Milton Keynes - Initially Hybrid

We're partnering with a well-known insurance organisation to appoint a Contract Release and Environment Manager for a major IT transformation programme. This initiative marks the modernisation of over 20 years of legacy systems and infrastructure, an essential step in transitioning the business to a more agile, efficient, and future-ready operating model.

This is a greenfield opportunity as the programme is set to launch in the coming weeks. You'll take full ownership of building the environments and defining the release processes from the ground up. It's a dynamic, evolving role that requires a proactive mindset and a continuous improvement approach.

Key Technologies & Tools:

Salesforce platform (Admin, Developer, and Deployment tools)
Snowflake Data Cloud
Git, Bitbucket, GitHub
Jenkins, Azure DevOps, or GitLab CI/CD
Jira, Confluence
DataOps tools (e.g., dbt, Airflow) - DesirableThe Ideal Candidate:

Has previously built environments for large-scale IT transformation programmes
Brings hands-on experience with automation and process optimisation
Is highly proficient in JIRA
Has strong experience working within SaaS-based environments
Competent in the above technologiesIf this sounds like the right fit for you, please apply directly we'll be in touch with more details

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