Principal Reliability Engineering - IE06JE
The Enterprise Data Services (EDS) organization is seeking a Principal Reliability Engineer (Principal RE) to serve as the senior technical authority responsible for the reliability, resilience, availability, and performance of all data platforms, cloud infrastructure, data products, and data pipelines across the enterprise data organization. This role sets the strategic vision for Reliability Engineering within EDS and leads the definition, implementation, and continuous evolution of RE practices, tooling, automation, observability frameworks, and AIOps/AIdriven operations.
As the Principal RE, you will influence architectural direction, lead largescale, crossorganizational technical initiatives, and drive a culture of engineering excellence, automationfirst operations, and proactive reliability improvement. You will partner closely with platform engineering, data engineering, security, architecture, and product teams to embed RE principles into every stage of the data product lifecycle.
This role will have a Hybrid work schedule, with the expectation of working in an office (Columbus, OH, Chicago, IL, Hartford, CT or Charlotte, NC) 3 days a week (Tuesday through Thursday).
Key Responsibilities
Enterprise Reliability Strategy & Leadership
- Work closely with the AVP, RE & Production Support, EDS defining the Reliability Engineering strategy for data platforms, data cloud environments, and data products.
- Establish longterm RE roadmaps, target operating models, and architectural patterns that scale with organizational growth.
- Serve as the highestlevel technical escalation point for systemic reliability issues, influencing executive stakeholders and engineering leaders.
Platform & Cloud Reliability (AWS, GCP, Snowflake, EMR, Hadoop, ETL/ELT)
- Leverage Enterprise provided standards and building blocks to Architect and evolve highly reliable, performant, and costefficient cloudbased platforms across AWS and GCP for all EDS services.
- Influence and work directly with Platform Solution Architecture on new product enablement, hyper automation (end to end blueprint automation).
- Oversee reliability controls and failsafe patterns for Snowflake, EMR, Hadoop/Spark clusters, container platforms (e.g., Kubernetes), and missioncritical data systems.
- Lead the creation and enforcement of SLO/SLI frameworks that span the entire data lifecycle.
AIEnabled Operations, AIOps & Intelligent Automation
- Develop and implement AIdriven automation for anomaly detection, alert correlation, autonomous remediation, and predictive capacity management.
- Leverage LLMs, prompt engineering, and cloudnative AI services (AWS Bedrock, SageMaker, Vertex AI) to build intelligent runbooks, advanced troubleshooting agents, and generativeAIenabled operational tooling.
- Champion the adoption of machine learningbased observability and reliability analytics.
EndtoEnd Observability & Operational Excellence
- Adopt and architect enterprisewide data observability frameworksincluding logging, metrics, tracing, distributed profiling, and event pipelinesfor all data platforms and pipelines.
- Establish goldstandard incident response patterns, postincident reviews, and continuous improvement processes.
- Drive elimination of toil across EDS, focusing on selfhealing systems, proactive detection, and autonomous operations.
Data Pipeline & Data Product Reliability
- Define RE best practices for modern data products, governed data pipelines, realtime/streaming systems, and operational analytics platforms.
- Ensure data quality, data timeliness, and SLAs for data products through automated checks, lineageinformed alerting, and pipeline reliability tooling.
- Partner with Data Engineering to embed resilience patterns (idempotency, checkpointing, replayability, disaster recovery) into pipeline architectures.
Engineering Standards, Governance & CrossOrg Influence
- Set and enforce standards for IaC, CI/CD, platform automation, reliability frameworks, operational readiness, and runbook quality across EDS.
- Provide technical leadership and mentorship to Staff/Senior Engineers in the RE team and Production Support teams, influencing engineering culture and helping grow RE capabilities across the organization.
- Represent Reliability Engineering in architectural reviews, enterprise governance forums, and executivelevel discussions.
Technical Experience
- 10+ years in one or more of the following areas: data, cloud, platform engineering, site/reliability engineering, or largescale distributed systems, with experience in leadership or technology leader roles.
- Proficiency with data or cloud platforms, including architectural patterns for resilience, networking, security, and distributed data infrastructure.
- Deep experience supporting or engineering platforms such as Snowflake, EMR, Hadoop/Spark, Data Integration, and cloudnative data ecosystems.
- Scripting and programming (preferably Python) for largescale automation, platform tooling, and reliability frameworks.
- Experience with InfrastructureasCode (Terraform, CloudFormation) and enterprise CI/CD.
Preferred Qualifications
- Experience in regulated or highly complex enterprise environments (financial services, insurance, healthcare).
- Prior experience as a Senior Staff Engineer, Engineering or Architecture leader with hands on experience, or similar senior technical role.
- Knowledge of data governance, metadata, lineage systems, and data quality engineering practices.
- Certifications in AWS, GCP, Kubernetes, or SRE/DevOps frameworks.
AI & AIOps
- Background applying machine learning to operationsanomaly detection, event correlation, predictive modeling, and automated remediation.
- Understand of AIenabled developer/operations tools using LLMs, prompt engineering, or cloud AI services for reliability improvements.
Observability & Platform Operations
- Expertise with enterprise observability stacks (Prometheus, Grafana, Datadog, Splunk, Dynatrace, OpenTelemetry).
- Ability to design and enforce advanced SLI/SLO frameworks across complex data ecosystems.
Leadership & CrossFunctional Influence
- Demonstrated ability to lead technical strategy at scale, influence senior engineering leaders, and set enterprisewide standards.
- Strong capability in mentoring engineers, providing architectural guidance, and fostering engineering excellence.
- Exceptional communication skills for interacting with executives, senior architects, product leaders, and engineering teams.
Candidate must be authorized to work in the US without company sponsorship.The company will not support the STEM OPT I-983 Training Plan endorsement for this position.
Compensation
The listed annualized base pay range is primarily based on analysis of similar positions in the external market. Actual base pay could vary and may be above or below the listed range based on factors including but not limited to performance, proficiency and demonstration of competencies required for the role. The base pay is just one component of The Hartfords total compensation package for employees. Other rewards may include short-term or annual bonuses, long-term incentives, and on-the-spot recognition. The annualized base pay range for this role is:
$152,800 - $229,200