DevOps Engineer

Bishopsgate
5 days ago
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We are looking to recruit a Python Airflow DevOps engineer ideally with experience of working in an AWS environment. 

Technically you must be an experienced Python developer who has practical experience of using Python and Airlfow. You will also need to be someone with excellent communication skills who can demonstrate a pragmatic and innovative approach to problem solving. This is an opportunity to work in an environment that uses AI and Machine Learning to develop complex models that can make a real difference to creating a safer environment and improving peoples lives. 

This is a remote contract outside IR35. You must be based in and authorised to work in the UK. 

Eligo Recruitment is acting as an Employment Business in relation to this vacancy. Eligo is proud to be an equal opportunity employer dedicated to fostering diversity and creating an inclusive and equitable environment for employees and applicants. We actively celebrate and embrace differences, including but not limited to race, colour, religion, sex, sexual orientation, gender identity, national origin, veteran status, and disability. We encourage applications from individuals of all backgrounds and experiences and all will be considered for employment without discrimination. At Eligo Recruitment diversity, equity and inclusion is integral to achieving our mission to ensure every workplace reflects the richness of human diversity

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