Big Data Developer - Python/Hadoop

Harvey Nash Careers
London
1 year ago
Applications closed

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Big Data Developer

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Big Data Developer - Python/Hadoop - Sought by leading investment bank based in London - Contract - Hybrid

inside IR35

Required Skills
Hand on and advanced coding skills in Python (over 3 years)
Advanced SQL development skills
Hands on experience with Unix/Linux scripting
Hands on experience in development & modelling experience using Big data tools like Scala, Spark, Impala & Hive
Experience with designing and building production data pipelines from ingestion to consumption within a hybrid big data architecture, using Python, Scala etc
Experience in Investment banking functions and datasets
Highly articulate, consultative, and confident in interactions with business users
Experience working within a collaborative environment where you partner with both users and colleagues

Nice to have Skills
Experience with reporting tools like Tableau ,Qlik etc
Good understanding of Investment Banking- Risk Domain

Please apply within for further detail

Matt Holmes - Harvey Nash


AMRT1_UKTJ

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