Job Closed
This listing is no longer active.
Connecting the Organic Fresh Produce Community Through Information, Education and Live Events.
Director, IT Integration – Data Architecture
Location
United States
Posted
86 days ago
Salary
0
Seniority
Lead
Job Description
Director, IT Integration – Data Architecture
Organic Produce Network
• responsible for the end-to-end design, delivery, governance, and modernization of Orgain’s enterprise integration ecosystem and data architecture • focuses on data engineering, metadata and lineage, data governance, master data management, and scalable enterprise data platform capabilities • define, build, and govern enterprise application portfolio integrations (MS Fabric, APIs, middleware, database replication, secure file interchange) • own the enterprise data platform architecture (lake, warehouse, semantic/subject layers) • lead enterprise-wide IT programs, including digital supply chain and data platform initiatives • implement metadata, lineage, catalog, and data governance frameworks to ensure trusted, discoverable, and compliant data • establish master/reference data management foundations with clear stewardship, quality controls, and ownership • direct partner and vendor delivery; set standards for quality, documentation, technical design, and knowledge transfer • collaborate with the Business Intelligence team to ensure data models are ready for consumption while maintaining strict below-the-line boundaries • lead complex multi-workstream technology delivery initiatives, coordinating across IT, Finance, eCommerce, Supply Chain, and external partners • maintain integration service catalog and blueprint; enforce secure, durable, and governed integration practices • design durable standard models and schemas optimized for analytics, operational reporting, and cross-application interoperability • implement data quality management processes including validation, profiling, reconciliation, and automated monitoring • define versioning and release/change management standards for data and integration components • set individual goals for improving and expanding on everyday job functions, as well as on the greater social and environmental aspects of your work • help enhance Orgain’s social and environmental impact • coach/lead and provide interpersonal relationship development for all direct reports.
Job Requirements
- 10+ years of experience delivering enterprise integration and application and data platform capabilities in complex multi-system environments
- 10+ years of experience implementing structured MSP vendor management, technology governance frameworks, and enterprise technology integrations
- Demonstrated experience establishing integration standards, data governance, metadata/lineage frameworks, and MDM foundations
- Proven leadership driving application portfolio optimization and data platform modernization initiatives
- Strong grounding in Azure and/or AWS cloud architecture
- Experience leading cross-functional delivery including vendor management, technical program leadership, risk/issue management, and stabilization
- Strong communication and stakeholder alignment skills; ability to influence without authority
- Background in enterprise application governance, lifecycle planning, and digital enablement
- Certification in cloud platforms, Lean Six Sigma, data governance, or change management are a plus
Benefits
- access to various opportunities for learning and development
- chance to expand your skills in a fast-paced and innovative industry
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Architect, design, and maintain robust, scalable data pipelines and infrastructures for geospatial and big data applications maintaining a focus on performance and the ultimate end-user product experience. • Lead the development and optimization of ETL processes for ingesting, cleaning, transforming, and storing large volumes of geospatial and tabular data. • Design, build, and interact with API-driven, service-to-service web services (using FastAPI, Litestar, Flask, etc.) to enable integration across a suite of products. • Collaborate with backend and platform engineers to ensure secure, reliable, and scalable service-to-service communication. • Translate complex analytics and business questions into actionable, production-grade data solutions. • Collaborate closely with data scientists, analysts, and business stakeholders to deliver high-impact data products. • Drive the adoption and optimization of cloud-based data solutions (e.g., GCP, AWS, Azure). • Ensure data quality, integrity, and security across all stages of the data lifecycle. • Mentor and provide technical guidance to junior data engineers and team members. • Communicate technical details and insights clearly to both technical and non-technical audiences, including leadership. • Proactively recommend and implement improvements to existing data infrastructure and software programs. • Stay current with industry trends and emerging technologies in geospatial data engineering.
Data Engineer
Grant Street GroupGrant Street Group is a privately-held computer software company that serves government agencies, including municipalities, school districts, state bureaus, and regional city and c
• Build and support high performance data solutions • Monitoring and responding to our growing network of tools • Facing and overcoming complex technical challenges
• Define and evolve the data architecture and integrations, with a focus on cloud cost efficiency (FinOps). • Conduct technical analyses of the current environment (Azure), identifying inefficiencies, bottlenecks, and opportunities for optimization. • Lead the strategy to migrate ETL pipelines from Azure Data Factory to GCP, ensuring performance, scalability, and cost reduction. • Work directly on building and evolving data pipelines, supporting the team in technical decisions and implementations. • Perform root cause analysis (RCA) for performance, cost, and availability issues, proposing structural solutions. • Define standards for data ingestion, processing, and consumption, balancing cost, performance, and complexity. • Define the target data architecture focused on cost reduction and cloud resource optimization. • Ensure the correct selection of technologies and approaches (batch vs streaming, relational vs non-relational, caching, etc.). • Lead and provide technical support for migrating ETLs to GCP (e.g., Dataflow, Composer, BigQuery, etc.). • Work hands-on reviewing and optimizing pipelines, queries, and jobs. • Work closely with the engineering team to ensure consistent and sustainable technical execution. • Define and monitor efficiency indicators (cost per pipeline, resource consumption, performance). • Document architectural decisions and build a reusable knowledge base. • Support technical prioritization with Delivery and Product, considering financial and operational impact.
• Desenvolver, manter e evoluir pipelines de dados com foco em eficiência, escalabilidade e otimização de custos em cloud. • Atuar na migração de ETLs do Azure Data Factory para GCP, implementando pipelines modernos e performáticos. • Executar análises técnicas do ambiente atual, identificando gargalos, desperdícios de recursos e oportunidades de melhoria. • Apoiar na implementação de soluções para redução de custo (FinOps), incluindo otimização de jobs, queries e uso de infraestrutura. • Realizar análise de causa raiz (RCA) de falhas, lentidão ou alto consumo de recursos. • Trabalhar em conjunto com Arquitetura para garantir aderência aos padrões definidos. • Construir e manter pipelines de ingestão, transformação e disponibilização de dados. • Implementar fluxos de dados em GCP (Dataflow, BigQuery, Pub/Sub, Composer/Airflow, etc.). • Refatorar pipelines existentes visando melhoria de performance e redução de custo. • Monitorar e otimizar jobs, garantindo eficiência no consumo de recursos. • Atuar na migração de pipelines do Azure Data Factory para GCP, garantindo continuidade operacional. • Implementar boas práticas de versionamento, testes e qualidade de dados. • Apoiar na definição de estratégias de processamento (batch vs streaming, incremental vs full load). • Colaborar com times de backend e arquitetura na integração com APIs e sistemas consumidores.



