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Data Engineer III- Python & AWS

JPMorganChase
Glasgow
5 days ago
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Data Engineer III - Python & AWS

JPMorgan Chase is looking for a highly motivated Data Engineer III to join our Platform Modernization team in Glasgow, Scotland.

Job Description

As a Software Engineer III at JPMorgan Chase within Asset and Wealth Management, you will be a seasoned member of an agile team that designs and delivers trusted, market‑leading technology products in a secure, stable, and scalable way. You will be responsible for carrying out critical technology solutions across multiple technical areas within various business functions in support of the firm’s business objectives.

Responsibilities
  • Work closely with business stakeholders in wealth management to deliver end‑to‑end solutions.
  • Collaborate as part of a co‑located or globally distributed team to achieve on‑time delivery of projects.
  • Own the full software development life cycle – requirement gathering, design, coding, deployment management, production issue management.
  • Adhere to best development standards such as TDD/BDD and CICD.
  • Deliver high‑quality code with 90%+ code coverage.
  • Build cloud native applications using private, public, and hybrid cloud technologies.
  • Learn finance domain to work closely with business stakeholders.
Required Qualifications
  • Formal training or certification in cloud concepts with proficient applied experience.
  • Software development experience using Python.
  • Experience with one or more database technologies such as Oracle, SQL Server, PostgreSQL.
  • Experience building REST APIs and AWS Lambda.
  • Experience in test‑driven development and testing frameworks.
  • Experience in one or more cloud technologies like Cloud Foundry and AWS.
  • Experience in one or more messaging technologies such as Kafka and IBM MQ.
  • Experience with data formats such as JSON and XML.
  • Experience in Agile development methodologies and CI/CD with Jenkins.
  • Strong interpersonal skills and a team‑building attitude.
  • Experience with distributed caches like GemFire, ehCache, Hazelcast.
  • Experience with version control tools such as SVN and GIT.
Preferred Qualifications
  • Experience in Wealth Management domain.
  • Experience with No‑SQL database technologies.
  • Knowledge of container technologies like Kubernetes and Docker.
  • Knowledge of building micro services.
  • Knowledge of monitoring tools such as Splunk and Dynatrace.
Seniority Level
  • Not Applicable
Employment Type
  • Full‑time
Job Function
  • Information Technology
EEO Statement

J.P. Morgan is an equal opportunity employer and places a high value on diversity and inclusion. We do not discriminate on the basis of any protected attribute. Reasonable accommodations are provided for applicants and employees with disabilities.


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