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Cloud Data Engineer – Python

Barclays
Glasgow
1 week ago
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Overview

Barclays – Cloud Data Engineer – Python (Glasgow, United Kingdom). You will be part of the Financial Metrics Reporting team within Private Bank, building, deploying, and maintaining data pipelines on cloud platforms, ensuring data quality, security, and scalability. You will collaborate with teams to deliver actionable insights.

Responsibilities
  • Development and delivery of high-quality software solutions using appropriate programming languages, frameworks, and tools. Ensure code is scalable, maintainable, and optimized for performance.
  • Design, develop, and maintain data pipelines and workflows in cloud environments.
  • Collaborate with product managers, designers, and engineers to define software requirements and align with business objectives.
  • Participate in code reviews and promote a culture of code quality and knowledge sharing.
  • Adhere to secure coding practices to mitigate vulnerabilities and protect data.
  • Implement effective unit testing to ensure code quality and reliability.
Qualifications and Skills
  • Strong proficiency in Python or Scala.
  • Experience with Apache Spark and big data processing frameworks.
  • Hands-on experience with AWS development, including services such as Lambda, Glue, Step Functions, IAM, Lake Formation, EventBridge, SNS, SQS, EC2, Security Groups, CloudFormation, RDS, and DynamoDB.
  • Desirable: Databricks, Delta Lake, MLflow, and streaming services (Kafka, MSK, Kinesis, Glue Streaming).
  • Experience in designing, building, and deploying data pipelines and workflows (Databricks preferred).
  • Knowledge of software engineering best practices (source control, build tools, TDD, GitLab).
Nice-to-have and Other
  • Experience with Databricks Delta Lake or MLflow.
  • Understanding of enterprise software development and the ability to work across teams and functions.
Location and Employment Type

This role is based in Glasgow. Employment type: Full-time.

Seniorities and Job Function
  • Seniority level: Associate
  • Job function: Information Technology
  • Industries: Banking and Financial Services
Notes

Referrals may increase interview chances. This description reflects the responsibilities and requirements for the role and does not include every duty that may be required.


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