Sr. Lead Data Engineer

JPMorgan Chase JPMorgan Chase · Banking · LONDON, United Kingdom · Commercial & Investment Bank

Senior Lead Data Engineer at JPMorgan Chase focused on building and maintaining data pipelines for operational insights, reliability, risk, and cost observability. The role involves managing reporting and analytics, defining SLIs/SLOs, automating data products, and mentoring team members. It also requires using and validating enterprise-authorized AI capabilities within workflows.

What you'd actually do

  1. Change and release health - Track deployment frequency, change failure rate, lead time, and rollbacks; correlate changes to incidents/SLO impact; influence safer release practices.
  2. Capacity, performance, and scalability - Produce capacity forecasts, headroom and hotspot reporting; partner with engineering to validate scaling policies and performance budgets.
  3. FinOps and cost observability - Report spend by service/team/env; track unit economics (e.g., cost per transaction), rightsizing opportunities, commitment utilization, and tag compliance; highlight reliability–cost tradeoffs.
  4. Risk and controls compliance - Evidence guardrail adherence and control health (backup/restore posture, DR testing, patch/vulnerability closure, config drift); ensure metrics lineage and audit readiness.
  5. Uses enterprise-authorized AI capabilities within the work environment to accelerate data platform and design analysis and technical documentation, validating outputs and handling data according to sensitivity and security requirements.

Skills

Required

  • Formal training or certification on data engineering concepts and advanced applied experience in data analytics/BI/ operations analytics.
  • Strong SQL skills (CTEs, window functions, performance-aware querying).
  • Demonstrated experience using enterprise-authorized AI capabilities within the work environment to support data engineering workflows with strong validation habits and awareness of data sensitivity.
  • Ability to review and validate AI-assisted outputs (e.g., model and design summaries or validation recommendations) before use, escalating when uncertain and following data handling requirements.
  • Hands-on experience building dashboards in Tableau/Power BI/Looker (or similar).
  • Experience working with ITSM tools (e.g., ServiceNow or similar) and understanding incident/change/problem concepts.
  • Strong data storytelling skills; ability to translate operational findings into practical improvements.

Nice to have

  • Experience working with AWS and core concepts (accounts, regions, IAM, networking, compute/storage, tagging).
  • Python for analytics/automation (e.g., pandas) and building repeatable pipelines.
  • Experience with cloud data platforms (e.g., Snowflake/Redshift/BigQuery) and ELT tooling (e.g., dbt).

What the JD emphasized

  • uses enterprise-authorized AI capabilities within the work environment
  • Ability to review and validate AI-assisted outputs