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Lead Data Engineer - Data Modeling

Join us as we embark on a journey of collaboration and innovation, where your unique skills and talents will be valued and celebrated.

Together we will create a brighter future and make a meaningful difference.

As a Lead Data Engineer at JPMorganChase within the Enterprise Technology - CTO SRE & Support team, you are an integral part of an agile team that works to enhance, build, and deliver data collection, storage, access, and analytics solutions in a secure, stable, and scalable way.

As a core technical contributor, you are responsible for maintaining critical data pipelines and architectures across multiple technical areas within various business functions in support of the firm's business objectives.

You are a technical builder with strong data modeling instincts to build the data backbone for an operational learning capability in a complex support and SRE environment.

You will connect and model data from incidents, RCA outputs, problem records, support tickets, customer signals, and related telemetry to surface recurring patterns, identify systemic drivers, and produce actionable handoffs to prevention and readiness teams.

The role goes beyond dashboards: it requires workflow-aware data modeling, pragmatic delivery, and comfort working with heterogeneous, imperfect operational data.

Partnering closely with leaders across Support, SRE, and Engineering, you will deliver lightweight, durable data products that strengthen institutional learning, improve executive visibility, and enable proactive reliability improvements in a blameless, learning-oriented environment.

Success demands hands-on technical depth, comfort with ambiguity, and the judgment to start with minimally sufficient solutions that evolve through use.

Job responsibilities



* Design and implement a minimum viable data model that links incident, RCA, problem, ticketing, customer signals, and observability data for the review function.


* Build and maintain robust pipelines and transformations that expose repeat patterns, operational toil themes, and systemic issue categories across sources.


* Develop lightweight, workflow-supporting data products that turn operational events into actionable learning and clear handoffs for downstream owners.


* Partner with support, SRE, and operational leaders to define required data fields, taxonomies, classifications, and handoff structures that make review outputs actionable and measurable.


* Design mechanisms to distinguish one-off incidents from recurring classes of failure or avoidable demand, enabling detection of recurrence and informed prioritization.


* Establish practical data quality standards, field definitions, and lightweight governance (e.g., lineage, stewardship, access) for operational learning datasets across multiple sources.


* Safeguard blameless review practices by ensuring outputs promote learning and improvement rather than punitive reporting; embed blameless learning norms into data and...




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