Oracle Java8 Scala Spring Data Engineer London £575d insideIR35

London
3 weeks ago
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Data Engineer with experience around Oracle, Java8, Scala, Spring, and Snowflake | Agile | Jira | Design Development and Testing of Data Pipelines | £575/day Inside IR35 working mainly remote (with 2 days in the office per month) | 6 month Contract | London/City (mainly remote - working 2 days in the London office per month).

Our client (a global firm) has a requirement for an experienced Data Engineer to work with them on a number of time-critical Data Platform Migration projects.

You'll have an excellent background in Oracle, Java 8, Spring and Scala, plus you'll have good experience working in Agile projects.

This role will be mainly remote - with travel to their London office required two days per month.

Data Engineer
Oracle
Java8
Scala
Spring
Agile

Please do send me your CV to start a conversation around this role.

£575/day Inside IR35. 6 month initial contract.

This role would be mainly remote with 2 days in the office each month.

Adecco acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers. The Adecco Group UK & Ireland is an Equal Opportunities Employer.

By applying for this role your details will be submitted to Adecco. Our Candidate Privacy Information Statement explains how we will use your information - please copy and paste the following link in to your browser

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