Application developer- Java/Bigdata/Snowflake

Farnborough
1 month ago
Applications closed

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Java Developer with SQL & GIT

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Job Description:

Java 2. Spring boot 3. Experience with one of UI technology
Expertise in key technologies to be leveraged by the team including Java, CI/CD technologies.
Experience in S3, Snowflake, Postgres
Experience working with containerization and orchestration platforms (Kubernetes/Openshift) and cloud providers like AWS, Azure, GCP or others.
Experience in key technologies to be leveraged by the team including Java, CI/CD technologies
Experience working with a variety of data platforms such as S3, Snowflake
Experience building and implementing API service architectures
Understanding of software testing principles and methodologies
Experience in high availability & scalability design, as well as performance monitoringGCS is acting as an Employment Business in relation to this vacancy

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