Big Data Architect

Purview
Milton Keynes
4 days ago
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Purview Services was founded in 2010 with the mission to provide best-in-class IT consultancy services across the globe. We are a specialist IT consultancy offering services through our consultants/experts on a contingency basis in the UK, Europe.

Job Description

Location: Milton Keynes

Duration: Contract

Job Description

  • Experience in design and development of modern platform architecture within Banking and Financial services.
  • Experience in design and implementation of modern data platforms with hands on experience in – spark/Scala/Hortonworks/Ni-fi…etc.
  • Conceptualize, Design and Deliver Modern Data Architectures based on open source software which are scalable & high performing
  • Should have experience in at least 2 engagements dealing with analysis of enterprise applications and migration of existing workloads to a big data platforms.
  • Should have the ability to conduct workshops, engage the customer with high-levels of interpersonal and communication skillsand successfully handle multiple work streams across multiple engagements, meeting tight deadlines and shifting priorities
  • Drive, Plan and Develop roadmaps/blueprints and deliverables that help customers advance their Big Data capabilities, both with new solutions and migration of existing solutions
  • Determine needs and/or identify problem areas of our customers to Define roadmap, consumption costs, and migration plans to migrate on-premises applications to the new Big Data platform.
  • Must have worked as a lead / architect designing and developing modern data platform for the banking and financial services organizations. Should have hands-on development skills on the latest software and technologies – Spark/Scala/Hortonworks/Ni-fi/Elastic search…etc.

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