Senior Lead Site Reliability Engineer - Ai/ml and Data Platforms

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

Senior Lead Site Reliability Engineer for an AI/ML and Data Platforms team, focusing on ensuring the reliability, scalability, and performance of data platforms and AI/ML workloads. The role involves defining non-functional requirements, implementing observability, and driving the adoption of AI-assisted reliability workflows within the SDLC and operational decisioning, while adhering to enterprise-authorized AI usage guidelines and data sensitivity requirements.

What you'd actually do

  1. Uses enterprise-authorized AI capabilities within the work environment to accelerate reliability design and operational decisioning (e.g., incident/post-incident analysis and requirements traceability), validating outputs and handling operational data according to sensitivity and security requirements
  2. Leads reuse-first adoption of AI-assisted reliability workflows across SDLC/toolchain practices (e.g., testing/validation automation and production readiness), ensuring traceability/auditability, resiliency, and security controls across application and data platform environments
  3. Creates and delivers high quality designs, roadmaps, and program charters alongside the engineering teams, including data platform and distributed systems initiatives
  4. Acts as a key resource and mentor for technologists in your area seeking advice on technical and business issues, and serves as a culture carrier and site reliability adoption champion for your team
  5. Collaborates with others to create and implement observability and reliability designs for complex systems and data platforms which are robust, stable, and do not incur additional toil or technical debt

Skills

Required

  • Formal training or certification on site reliability engineering concepts and 5+ years applied experience
  • Advanced understanding of site reliability culture and principles and a track record of demonstrating how to implement site reliability within applications, platforms, or large-scale data systems, including strong understanding of SLI/SLO/SLA and error budgets
  • Advanced knowledge and experience in observability such as white and black box monitoring, service level objectives, alerting, and telemetry collection across distributed and data platform environments, including tools such as Grafana, Dynatrace, Prometheus, Datadog, and Splunk
  • Demonstrated experience using enterprise-authorized AI capabilities within the work environment to improve reliability engineering workflows with strong validation habits and awareness of data sensitivity
  • Ability to set team practices for safe AI usage in operations (e.g., review/approval expectations and escalation paths) while maintaining resiliency, security, and auditability outcomes, ensuring compliance with risk controls and company-wide standards
  • Advanced knowledge of software applications and technical processes, including distributed systems, system design, resiliency, testing, operational stability, and disaster recovery, with considerable depth in one or more technical disciplines
  • Demonstrated ability to communicate data-based solutions with complex reporting and visualization methods and collaborate effectively across teams to drive incident resolution and improvements
  • Strong communication skills and a desire to mentor and educate others on site reliability engineering principles and practices while building strong cross-functional relationships

Nice to have

  • Experience with AWS platforms and managed data platforms such as Databricks, including platform administration and engineering support
  • Experience in building and managing data pipelines using Spark or similar distributed compute frameworks
  • Familiarity with big data ecosystem tools (e.g., Spark, Glue, MapReduce)
  • Knowledge of containerization (Docker, Kubernetes) and orchestration frameworks
  • Experience with CI/CD pipelines, automation frameworks, and infrastructure as code (e.g., Terraform)
  • Proficiency in Python or similar programming languages for automation and platform development
  • Familiarity with large-scale distributed systems and data processing environments

What the JD emphasized

  • enterprise-authorized AI capabilities
  • AI-assisted reliability workflows
  • safe AI usage in operations

Other signals

  • AI-assisted reliability workflows
  • enterprise-authorized AI capabilities
  • AI/ML and Data Platforms team