Rocket Money offers a mobile app that helps people take back the control of their money and “live their best financial lives.” Formerly known as Truebill, the company has offer
Staff Data Infrastructure Engineer
Location
United States
Posted
4 days ago
Salary
$149K - $318K / year
Seniority
Lead
Job Description
Staff Data Infrastructure Engineer
Rocket Companies
Role Description Rocket is seeking a Staff Data Infrastructure Engineer to help shape the future of enterprise data infrastructure across Rocket and affiliated business platforms. This is a high impact technical leadership role for someone who brings deep expertise across cloud, systems, databases, and data platforms, and who wants to help modernize critical infrastructure, influence technical standards, and drive durable improvements across a complex enterprise environment. - Partner with technical program leadership to assess, modernize, and improve enterprise data infrastructure environments. - Lead technical discovery, dependency mapping, architecture reviews, migration readiness assessments, and operational readiness planning to identify technical gaps, operational risks, reliability concerns, compliance gaps, and modernization opportunities. - Define clear technical recommendations and practical roadmaps that improve reliability, security, scalability, observability, and operational maturity. - Partner with engineering teams to support migration and modernization efforts (involving on-premise infrastructure, AWS, Snowflake, and related enterprise data platforms) to move infrastructure and data platforms into a more predictable, measurable, and supportable state. - Establish standards and best practices for monitoring, alerting, logging, backup/recovery, patching, access controls, data movement, service ownership, and production support. - Provide senior technical judgment, mentorship, and hands-on leadership to help teams make durable improvements across complex infrastructure and data environments. Qualifications - 10+ years of experience in systems engineering, cloud engineering, data infrastructure, database engineering, platform engineering, or related infrastructure roles. - Expert-level experience with AWS and enterprise cloud infrastructure patterns. - Expert-level understanding of database and data platform technologies, including relational databases, data warehouses, distributed data systems, storage, backup/recovery, replication, performance, and operational support. - Experience with on-premise to cloud migration programs, including technical discovery, dependency mapping, migration planning, validation, cutover support, and operational readiness. - Strong understanding of observability, monitoring, alerting, logging, incident response, change management, resiliency, disaster recovery, and production operations. - Experience working with security, compliance, risk, audit, and infrastructure standards in enterprise environments. - Strong communication skills with the ability to explain complex technical findings, risks, tradeoffs, and recommendations to both technical and executive audiences. Requirements - Experience in financial services, mortgage, banking, lending, insurance, or other regulated enterprise environments. - Experience with data platform technologies such as Snowflake, Microsoft SQL Server, Oracle, Postgres, Redshift, Aurora, Cassandra, Kafka, or similar technologies. - Deep experience with AWS services and patterns including EC2, S3, IAM, VPC networking, FSx, CloudWatch, CloudTrail, KMS, backup/recovery, security logging, and enterprise account governance. - Experience leading or supporting multiple cloud migrations, data platform transformations, or large-scale infrastructure modernization efforts. - Experience with technical integration work related to mergers, acquisitions, or affiliated business environments. - Experience defining infrastructure standards, operational maturity models, platform governance mechanisms, or engineering best practices. - Experience with FinOps, cloud cost optimization, platform consolidation, or infrastructure efficiency programs. - Experience improving data access controls, data flow visibility, lineage, auditability, and operational controls across enterprise data platforms. Benefits - Health and well-being support for you and your family. - Peace of mind through various perks and health benefits. - Eligible team members receive an annual bonus, incentives, and other employment-related benefits including medical, dental, and vision benefits, 401K retirement plan, and paid-time off. Company Description Rocket is a Detroit-based company made up of businesses that provide simple, fast and trusted digital solutions for complex transactions. The name comes from our flagship business, now known as Rocket Mortgage®, which was founded in 1985. Today, we’re a publicly traded company involved in many different industries, including mortgages, fintech, real estate and more. We’re insistently different in how we look at the world and are committed to an inclusive workplace where every voice is heard.
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