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Role Overview
We are partnering with a leading financial institution on a strategic AML data transformation programme. We are seeking an experienced Senior Data Engineer to design, develop, and maintain scalable big data pipelines supporting mission-critical financial crime analytics and regulatory initiatives. The primary application platform is Quantexa within an enterprise banking environment.
Key Responsibilities
Design, develop, and maintain large-scale data pipelines using Hadoop and Spark.
Implement transformation, aggregation, and enrichment processes for AML analytics.
Deploy and optimize data solutions on OpenShift Container Platform (OCP).
Collaborate with DevOps teams to implement CI/CD pipelines and automation.
Ensure data governance, lineage, metadata management, and compliance standards.
Monitor and optimize performance of distributed data processing systems.
Implement logging, monitoring, and alerting mechanisms (Grafana, Prometheus, Splunk).
Provide technical leadership and mentor junior engineers.
Work closely with cross-functional banking stakeholders to translate business requirements into scalable data solutions.
Key Requirements
Bachelor's degree in Computer Science, Information Technology, or related field.
Minimum 6 years of experience in Data Engineering within enterprise environments.
Strong hands-on expertise in Hadoop ecosystem (HDFS, Hive, Spark, Cloudera).
Proficiency in Scala, Python, Java, and advanced SQL.
Experience with OpenShift (OCP) and Kubernetes-based container orchestration.
Strong knowledge of DevOps practices, CI/CD pipelines, Docker, Jenkins, Ansible.
Experience with job schedulers such as Control-M.
Banking or AML domain experience preferred.
Prior experience implementing or supporting Quantexa platform is highly advantageous.
Exposure to cloud platforms (AWS, Azure, GCP) is a plus.
Job ID: 144515213