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Apache Hadoop Cloud Architect

AMS Deutsche Bank
London
11 months ago
Applications closed

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AMS is the world's leading provider of Talent Acquisition and Management Services. Our Contingent Workforce Solutions (CWS) service, partner with Deutsche Bank to support contingent recruitment processes.

On behalf of Deutsche Bank, we are looking for a Apache Hadoop Cloud Architect for a6 monthcontract based inLondon (3 days onsite/2 days working from home).

Deutsche Bank is a global banking business with strong roots in Germany and operations in over 70 countries. Their large but focused footprint gives an established position in Europe plus a significant presence in the Americas and Asia Pacific. There are four business divisions: the Corporate Bank, the Investment Bank, the Private Bank and the Asset Manager DWS. There are also a number of highly skilled functions performing key management tasks.

'Together we're sharing new perspectives and transforming what it means to be a bank.'

The Apache and Cloud Architect will be responsible for the end-to-end platform engineering and migration strategy for big data applications. The ideal candidate will have extensive hands-on experience with Apache Hadoop ecosystem, Open-Source Apache Projects, Kubernetes, and Security protocols. This role requires a senior proactive individual capable of working across global teams to resolve major blocker issues and support large scale migration for critical applications.

Key responsibilities

Architecting and Designing: Develop robust architectures and designs for big data platform and applications within the Apache Hadoop ecosystem. Building and Deploying: Implement and deploy big data platform and solutions on-premises and in hybrid cloud environments. Open-Source Engagement: Read, understand, and modify open-source code to implement bug fixes and perform upgrades. Security Architecture: Ensure all solutions adhere to security best practices andpliance requirements. Collaboration: Work directly with the Lead Architect and support cross-functional teams globally. Problem Solving: Address and resolve major blocker issues during application migration. Strategy Development: Contribute to defining the end-to-end platform engineering and application migration strategy.

Skills and Qualifications

Experience:

Proven experience in architecting, designing, building, and deploying big data platforms and applications using the Apache Hadoop ecosystem in hybrid cloud and private cloud scenarios.

Technical Skills:

Experience with hybrid cloud big data platform designs and deployments, especially in AWS, Azure, or Google Cloud Platform. Experience in large-scale data platform builds and application migrations. Expert knowledge of Apache Hadoop ecosystem and associated Apache projects (, HDFS, Hive, HBase, Spark, Ranger, Kafka, Yarn etc.). Proficiency in Kubernetes for container orchestration. Strong understanding of security practices within big data environments. Ability to read and modify open-source code. Experience with version upgrades of technology stacks.

Deutsche Bank's Values

Our values define the working environment we strive to create - diverse, supportive and weing of different views. We embrace a culture reflecting a variety of perspectives, insights and backgrounds to drive innovation. We build talented and diverse teams to drive business results and encourage our people to develop to their full potential. Talk to us about flexible work arrangements and other initiatives we offer.

We promote good working relationships and encourage high standards of conduct and work performance. We wee applications from talented people from all cultures, countries, races, genders, sexual orientations, disabilities, beliefs, and generations and aremitted to providing a working environment free from harassment, discrimination and retaliation.

This client will only accept workers operating via a PAYE engagement model.

AMS, a Recruitment Process Outsourcingpany, may in the delivery of some of its services be deemed to operate as an Employment Agency or an Employment Business.

Job ID DBK01464

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