Lead the Lakehouse Platform team building foundational data infrastructure for scientific AI. Own architecture, drive technical strategy, and manage 8+ engineers as a player-coach with deep hands-on contribution.
Salary not listed
On-site10+ YOEEngineering Management
About the role
Responsibilities
Architecture and Technical Strategy
Own and evolve the Lakehouse Platform and Infrastructure foundations including storage layer, catalog, Spark query engine, Databricks IaC, platform data pipelines, and releases
Lead the Lakehouse Developer Platform and DX supporting Tetraflows, Semantic services, and Data Resources
Evolve Lakehouse architecture across open table formats, partition strategies, schema evolution, governance, and API contracts
Design for durability: version coupling, artifact deployment safety, and protocol compatibility across platform releases
Collaborate with platform and infrastructure teams on integration contracts, data pipelines, shared execution roadmaps, and operational excellence standards
Engineering Execution
Own technical prioritization and delivery across a team of 8+ engineers; drive sprint-level execution and quarterly delivery commitments
Lead incident response and root-cause analysis for production issues; build systemic fixes
Make and defend build-vs-buy decisions for Lakehouse components
Establish engineering standards: testing practices, observability instrumentation, and release safety for data infrastructure
People and Team Development
Coach engineers at all levels with technical mentorship, growth plans, and direct performance feedback
Hire and develop senior ICs and tech leads; build team depth to reduce knowledge concentration risk
Model the builder culture: write code, ship internal tools, and set the bar for technical craft
AI-Forward Development
Champion AI-assisted development practices across the team
Identify opportunities to apply AI to data quality, schema inference, anomaly detection, and platform observability
Contribute to broader AI platform strategy from the Lakehouse data infrastructure layer
Requirements
Required
10+ years of engineering experience at top-tier technology organizations, with at least 4 years focused on data engineering or distributed systems at production scale
Expertise in Lakehouse technologies: Apache Spark, Delta Lake or Apache Iceberg, Databricks or equivalent distributed compute platform
Experience leading Data Engineering teams (6+ engineers) with direct accountability for strategy, execution, operational excellence, and people development
Strong command of distributed systems, cloud, and modern data stack: columnar and open table formats, query execution engines, partitioning strategies, metadata catalogs, decoupled storage and compute
Track record of building, shipping, and operating Tier 1 production data platforms
Cloud-native fluency: AWS, GCP, or Azure; containerization; Infrastructure-as-Code (Terraform or equivalent)
Clear written and verbal communication for presenting architectural decisions to technical and non-technical stakeholders
Strong Advantage
Experience in regulated industries (life sciences, healthcare, financial services) with data governance and auditability requirements
Familiarity with scientific data pipelines, analysis, or instrument data pipelines
Real-time or near-real-time streaming experience (Kafka, Apache Flink, or equivalent)
Exposure to AI/ML workflows over Lakehouse data: feature stores, ML pipelines, or vector search infrastructure
Prior career arc as a senior IC (Staff+ / Principal Engineer) before moving into engineering leadership
Compensation and Benefits
Competitive compensation
Stock options in VC-backed Series C company
100% employer-paid benefits for eligible employees and immediate family members
Hands-on Director of Software Engineering leading Java teams to build enterprise SaaS/PaaS distributed cloud applications. Drives AI adoption across SDLC, SRE improvements, agile processes, team mentoring, and direct customer collaboration for product innovation.
Salary not listed
Hybrid10+ YOEEngineering Management
Head of Platform Engineering
FieldguideSan Francisco, CA
Lead Fieldguide's Platform org (infrastructure, agentic engineering, SRE) as a hands-on leader. Own multi-region/FedRAMP deployments, reliability practices, internal agentic platforms, and enterprise options while partnering with CTO and GTM teams. Requires deep platform leadership experience at growth-stage companies.
315k – 345k/yr
Hybrid8+ YOEEngineering Management
Director, Field Engineering
DatabricksGeorgia +4
Lead a team of pre-sales managers and solutions architects in the Financial Services vertical to acquire new enterprise customers and drive Data & AI adoption with Databricks. Requires 10+ years leadership experience including 3+ years of second-line management of 30+ person teams, plus proven high-growth enterprise pre-sales success.
218k – 300k/yr
On-site10+ YOEEngineering Management
Director of Engineering, GRC Program Orchestration
VantaUnited States
Lead and grow engineering teams focused on maturing Vanta's Governance, Risk, and Compliance (GRC) product for enterprise customers. Drive technical strategy, innovation, team building, and cross-functional partnerships in a high-growth environment.
321k – 378k/yr
Remote7+ YOEEngineering Management
Senior Director, Engineering
OloNew York, NY
Senior Director of Engineering responsible for managing multiple engineering teams, aligning technical execution with product and business strategy, driving architectural decisions, process improvements, and risk management for scalable cloud platforms.