Jobs · Information Technology

AVP, Data Platform Engineering

The Hartford · Hartford, CT · 3 days ago
RemoteRemoteInformation Technology$178k–$266k/yrFull-time

Responsibilities

  • Define and execute a multi-year strategy for enterprise data platforms, analytics enablement, AI-ready data capabilities, data integration services, Third-Party Data capabilities, and platform modernization aligned to business and technology priorities.
  • Serve as the senior technical leader for enterprise data platforms, providing architecture guidance, engineering direction, and technology decision-making across data, analytics, AI-enabled capabilities, and external data ecosystems.
  • Partner with Architecture, Product, AI & Analytics, Cybersecurity, Data Governance, Procurement, Risk, Legal, and business leaders to define platform roadmaps, service offerings, adoption plans, and measurable outcomes.
  • Lead organizational transformation initiatives that improve engineering maturity, operational effectiveness, delivery speed, and team capabilities.
  • Build, mentor, and develop high-performing engineering leaders and teams through coaching, talent development, succession planning, and organizational design.
  • Foster a culture of innovation, accountability, technical excellence, collaboration, and continuous improvement.
  • Serve as a trusted advisor to senior technology and business leaders on platform modernization, AI enablement, Third-Party Data capabilities, emerging technologies, and enterprise data investments.
  • Lead engineering teams responsible for enterprise data platforms and services, including Snowflake, Spark, Google BigQuery, Dataproc, Dataflow, Informatica IDMC, and related cloud-native data engineering capabilities.
  • Drive modernization of enterprise data platform capabilities through cloud adoption, platform rationalization, legacy migration, automation, and scalable engineering practices.
  • Establish engineering standards and best practices for platform architecture, data ingestion, orchestration, transformation, observability, reliability, performance optimization, security, automation, and cost management.
  • Improve engineering productivity through platform standardization, self-service capabilities, reusable engineering patterns, CI/CD adoption, infrastructure-as-code practices, and modern software engineering approaches.
  • Ensure enterprise data platforms are designed and operated for scalability, resilience, security, compliance, and operational excellence.
  • Lead the operationalization of new and evolving platform capabilities and services across the enterprise data ecosystem.
  • Enable enterprise analytics and business intelligence capabilities through platforms such as Tableau and ThoughtSpot, emphasizing trusted datasets, reusable data products, governed data access, semantic modeling, and self-service analytics.
  • Partner with analytics and business teams to deliver scalable, trusted, and business-aligned insights.
  • Drive modernization of analytics capabilities to improve data accessibility, business adoption, governance, performance, and user experience.
  • Lead the engineering strategy and platform capabilities that support AI-ready enterprise data platforms and services.
  • Build and scale foundational capabilities supporting semantic layers, ontology frameworks, knowledge graphs, contextual metadata, and trusted business definitions.
  • Partner with AI and analytics leaders to ensure enterprise platforms support emerging AI use cases and future AI initiatives.
  • Support integration of technologies and capabilities such as Snowflake Cortex, Gemini Enterprise integrations with BigQuery, vector search technologies, Retrieval-Augmented Generation (RAG) architectures, and AI/ML platform interoperability.
  • Ensure AI-enabling data capabilities are governed, scalable, secure, reusable, and aligned with enterprise architecture and governance standards.
  • Lead teams responsible for enterprise data integration, ingestion, API enablement, Third-Party Data services, and data movement capabilities across internal and external data ecosystems.
  • Serve as the executive leader for Third-Party Data platform capabilities, partnering with business stakeholders, data consumers, and strategic vendors to enable enterprise access to external data assets and services.
  • Establish and evolve modern data acquisition patterns, onboarding frameworks, integration standards, and underlying technologies that support scalable and secure Third-Party Data consumption across the enterprise.
  • Drive enterprise capabilities supporting external data onboarding, ingestion, governance, compliance, lineage, quality, metadata management, and operational support.
  • Partner with business leaders and strategic vendors to prioritize Third-Party Data initiatives and ensure platform capabilities align with enterprise data needs and business objectives.
  • Lead collaboration across technology, legal, risk, procurement, governance, and business stakeholders to ensure Third-Party Data solutions meet enterprise standards for compliance, security, and operational excellence.
  • Champion adoption of modern Third-Party Data capabilities, frameworks, and reusable integration patterns across the enterprise.
  • Translate stakeholder requirements into actionable platform, integration, and data engineering priorities.
  • Lead distributed engineering teams across multiple geographies and delivery models, including global partners and support organizations.
  • Influence teams and stakeholders across organizational boundaries, including groups that do not directly report into the organization.
  • Partner effectively with global engineering, support, and delivery organizations to drive alignment, accountability, and execution.
  • Establish operating models and delivery practices that support collaboration across employees, contractors, and global teams.

    Qualifications

    • 12+ years of experience in data platform engineering, data architecture, cloud data platforms, analytics technologies, infrastructure engineering, or related disciplines, with a proven track record of leadership in complex enterprise environments.
    • Deep engineering leadership experience building, operating, and modernizing enterprise-scale data platforms, including Snowflake, Spark, Google BigQuery, Dataproc, Dataflow, Informatica IDMC, and comparable cloud-native technologies.
    • Strong understanding of data platform engineering practices, including platform architecture, ingestion, orchestration, transformation, observability, reliability, automation, performance tuning, cost management, security, and operational support.
    • Hands-on engineering background with the technical depth to guide architecture decisions, evaluate engineering tradeoffs, influence technology strategy, and provide credible leadership to architects and engineers.
    • Demonstrated success leading platform modernization, cloud transformation, engineering maturity improvements, and organizational change initiatives.
    • Experience leading enterprise Third-Party Data capabilities, including external data acquisition, vendor-enabled data services, onboarding frameworks, governance, compliance, and operational management.
    • Demonstrated success partnering with business stakeholders, strategic vendors, and cross-functional teams to deliver solutions leveraging external data assets and services.
    • Strong understanding of Third-Party Data lifecycle management, including acquisition, integration, governance, quality, lineage, compliance, risk management, and enterprise consumption patterns.
    • Experience with modern analytics and business intelligence platforms such as Tableau and ThoughtSpot, including self-service analytics, semantic modeling, dashboard modernization, and business user enablement.
    • Strong understanding of AI-enabled data ecosystems, including Snowflake Cortex, Gemini Enterprise integrations with BigQuery, conversational analytics, Chat with Data, Agentic Analytics, vector search technologies, AI/ML integration patterns, and Retrieval-Augmented Generation (RAG) architectures.
    • Experience supporting or implementing semantic layers, ontology-driven solutions, knowledge graphs, contextual metadata, metrics layers, and AI-ready enterprise knowledge models.
    • Experience building or modernizing enterprise Third-Party Data platforms, acquisition frameworks, vendor data ecosystems, and external data enablement capabilities.
    • Experience with enterprise data integration, API enablement, Informatica, master data management, and large-scale data ecosystems.
    • Experience leading distributed or global engineering teams.
    • Strong knowledge of data governance, cybersecurity, privacy, compliance, data quality, lineage, metadata management, and risk management practices.
    • Experience within insurance, financial services, or other highly regulated industries.
    • Bachelor's degree in Computer Science, Data Science, Information Systems, Engineering, Business Administration, or a related quantitative field.

Similar jobs