Lead Software Engineer - Data Engineering

JPMorgan Chase & Co.
London
2 days ago
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Responsibilities & Qualifications

  • Architecture and implementation: Design and develop scalable and secure distributed architectures and solutions, focusing on data ingestion and processing — utilizing appropriate cloud native technologies and services.
  • Data pipeline development: Design, implement, and maintain data pipelines that efficiently collect, process, and store large volumes of data from various sources, ensuring data timeliness, quality, and completeness.
  • Security and compliance: Ensure that data solutions comply with relevant data residency and privacy regulations, and implement best practices for securing data at rest and in transit in compliance with financial regulations and firm‑wide policies. Programming: Comfortable with Python and at least one JVM language (Java/Kotlin/Scala) including sound testing and code review practices.
  • SQL expertise: Joins, aggregations, subqueries, window functions.
  • Data pipelines: Design, build, and optimise production ETL/ELT pipelines (batch + streaming) using a popular framework (Spark, Flink, Dataflow, etc).
  • Streaming: Hands‑on with Kafka (topics, keys, partitions, consumer groups) at‑least‑once semantics, and schema registry basics.
  • Warehousing/lakehouse: Data modelling, partitioning, clustering. Hands‑on with one of BigQuery, Snowflake, Databricks, etc, and cloud storage or HDFS.
  • Cloud: Production experience with at least one major cloud provider (GCP/AWS) using native data services and IAM basics. FinOps‑aware with cost‑effective design.
  • Reliability: Data quality checks, backfills, incorporating SLIs with observability and reporting.
  • Kafka Connect (sources/sinks), change data capture (CDC), and schema evolution strategies.
  • Orchestrators (Airflow/Dagster/Flyte/Prefect/Argo Workflows) and workflow patterns (dependencies, idempotency, retries, SLAs).
  • Lakehouse platforms and table formats (Delta/Iceberg/Hudi/Avro/Parquet) and time‑travel.
  • Security/RBAC, PII handling, and governance basics.

Certifications

AWS/GCP Certifications


About the Role

As a hands‑on Senior Lead Engineer at JPMorgan Chase within the International Consumer Bank, you are the heart of this venture, focused on getting smart ideas into the hands of our customers. You have a curious mindset, thrive in collaborative squads, and are passionate about new technology. By your nature, you are also solution‑oriented, commercially savvy and have a head for fintech. You thrive in working in tribes and squads that focus on specific products and projects — and depending on your strengths and interests, you'll have the opportunity to move between them.


Culture & Diversity

While we’re looking for professional skills, culture is just as important to us. We understand everyone’s unique — and that diversity of thought, experience, and background is what makes a good team, great. By bringing people with different points of view together, we can represent everyone and truly reflect the communities we serve. This way, there's scope for you to make a huge difference — on us as a company, and on our clients and business partners around the world.


About J.P. Morgan

J.P. Morgan is a global leader in financial services, providing strategic advice and products to the world’s most prominent corporations, governments, wealthy individuals and institutional investors. Our first‑class business in a first‑class way approach to serving clients drives everything we do. We strive to build trusted, long‑term partnerships to help our clients achieve their business objectives.


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