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Commercial Investment Bank - Lead Data Architect - Associate or Vice President

JPMorganChase
Greater London
1 day ago
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Job Description

Job Description

Job summary:

As a Lead Data Architect on the Markets Sales CDAO team in London, you will be responsible for defining data products and their attributes, analysing and restructuring existing data products, and ensuring high standards of data quality and accessibility while working in a dynamic environment. You will collaborate with both Sales users and technical and analytical teams. Your expertise will drive the success of our data initiatives, ensuring that data products meet customer needs and enable a variety of high priority analytics initiatives. If you have strong background in data engineering, quality assurance, and a passion for innovation, we invite you to join our team and make a significant impact.

Job Responsibilities

  • Collaborate closely with Quant Research and Technology on Sales data products design and strategy, delivering business value with data.
  • Automate data quality monitoring and data lineage registration.
  • Develop proof-of-concept data product prototypes.
  • Translate data consumer requirements into actionable development tasks.
  • Manage releases and track development timelines and milestones.
  • Prioritize feature requests and drive resolution of data quality issues.
  • Prioritize technology data tooling deliveries supporting Markets Sales.
  • Help data consumers to us...

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