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Senior Vice President - Business Intelligence & Data Management - Senior Data Analyst

The Bank of New York Mellon Corporation
Manchester
6 days ago
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Overview

We're seeking a future team member for the role of Senior Vice President - Business Intelligence & Data Management - Senior Data Analyst to join our team. This role is located in Manchester. In this role, you'll make an impact in the following ways:


Responsibilities

  • Oversee the development of internal datasets to create automated data workflows, dashboards/visualizations, and market intelligence for clients.
  • Work with business unit managers to define reporting and analytic goals.
  • Independently design automated workflows, data sets, and visualizations/dashboards to meet internal client needs.
  • Analyze, reconcile, troubleshoot, and review incoming and outgoing data to ensure accurate performance/output.

Qualifications

  • Strong background in Java, Spring Framework, and SQL, along with a deep understanding of DevOps processes and data analytics tools.
  • Experience in Spring Framework and proficiency with Spring Boot and Java 8 or higher.
  • Solid coding and troubleshooting experience on Web Services and RESTful API.
  • Strong SQL skills to work on relational databases.
  • Knowledge in data warehousing (Snowflake/Hadoop), data lakes, and pipelines is a plus.
  • Knowledge in various data analytics tools such as ThoughtSpot, Druid, and Superset.
  • Knowledge of Scrum and ability to work in a fast-paced environment.
  • Strong analytical skills and attention to detail.
  • Ability to learn and pick up new skills and to perform with minimal management supervision.
  • Strong verbal and written communication skills.
  • Strong experience in SDLC, DevOps processes - CI/CD tools, Git, etc.
  • Experience in the securities or financial services industry is a big plus.


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