Your tree & greenery experts.
Head of Architecture, Integration, and Data Engineering
Location
United States
Posted
7 days ago
Salary
$175K - $220K / year
Seniority
Lead
Job Description
Head of Architecture, Integration, and Data Engineering
SavATree
• Define enterprise architecture strategy across enterprise applications, integrations, APIs, Azure cloud platforms, enterprise data, analytics, automation, and AI enablement. • Establish scalable architecture patterns enabling digital customer and employee experiences across CRM, web, mobile, communications, and operational platforms. • Define enterprise engineering and platform standards across APIs, integrations, cloud services, observability, reusable services, technical design patterns, and platform reliability. • Promote reusable enterprise capabilities and scalable platform approaches that accelerate delivery and reduce technical fragmentation. • Serve as a trusted advisor to business and technology leadership on enterprise technology direction, modernization priorities, and technical investment decisions. • Own and evolve enterprise integration and platform strategy including APIs, middleware, orchestration, interoperability, and event-driven architecture. • Guide architecture and engineering direction across Microsoft Dynamics 365 (CE/F&O preferred), ERP, CRM, operational systems, digital platforms, and third-party ecosystems. • Improve observability, resiliency, monitoring, supportability, and enterprise reliability. • Guide modernization of legacy systems and synchronization approaches into scalable, maintainable cloud-native patterns. • Partner with Digital Solution Delivery, ERP, and Infrastructure leaders to enable scalable digital experiences through reusable enterprise services and shared data models. • Establish pragmatic enterprise data governance practices that improve trust, quality, consistency, accessibility, and usability of enterprise data without creating unnecessary bureaucracy. • Enable trusted enterprise data, analytics, automation, and AI-ready architectures leveraging Microsoft Fabric, Snowflake, Databricks, and Azure data services.
Job Requirements
- 10+ years of progressive experience across enterprise architecture, software engineering, platform engineering, integration engineering, cloud technologies, or enterprise technology delivery.
- Experience operating as a principal architect, enterprise platform leader, or equivalent senior technical leadership role.
- Deep experience with Microsoft Azure cloud architecture and services including identity, platform scalability, enterprise integration, observability, and security.
- Strong experience with Microsoft Dynamics 365 ecosystem (CE and/or F&O preferred), ERP/CRM integration patterns, and enterprise modernization.
- Experience enabling digital backbones including APIs, customer and employee experiences, CRM ecosystems, workflow orchestration, identity, customer data, omnichannel connectivity, and reusable enterprise services.
- Strong expertise across enterprise architecture, platform engineering, APIs, middleware, event-driven architecture, cloud-native systems, and enterprise interoperability.
- Experience with modern data platforms including Microsoft Fabric, Snowflake, Databricks, Azure Data Services, analytics enablement, and AI-ready architectures.
- Comfortable operating in lean, fast-moving environments requiring both strategic leadership and hands-on technical execution.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Data Architect
Onyx Government ServicesSDVOSB, Systems Integrator to Federal Civilian Agencies, the Intelligence Community, and Department. of Defense.
• Develop and maintain enterprise data and analytics strategy documents, roadmaps, and improvement plans (including POA&Ms) for DLA J6TF • Design and support an enterprise data governance framework — governance structure documentation, data ownership assignments, data stewardship roles, and operating procedures • Manage metadata per DoD standards, including DoD Metadata Registry (DoD 8320 series) and Net-centric Enterprise Services requirements • Provide architecture recommendations for DLA analytical platforms — data ingestion, storage, processing, and delivery layers • Support enhancement of DLA's Enterprise Data Warehouse (EDW) — logical and physical schema design, data source integration, and analytical layer development • Develop data dictionaries, data inventories, and data lineage documentation across DLA's multi-system enterprise environment • Identify and register authoritative data sources across DLA data domains; document authoritative source designations per governance policy • Conduct data quality assessments — profile source data, document quality issues, and produce remediation recommendations • Support data governance working groups and data stewardship council activities — facilitation, briefings, and deliverable preparation • Develop and maintain artifacts including logical data models, conceptual data models, metadata management plans, and enterprise architecture alignment documents • Prepare monthly progress reports, IPR briefing charts, and deliverables for COR review
Data Engineer
DynataThe world’s largest first-party data company for insights, activation & measurement
• Create and maintain optimal data pipeline architecture • Assemble large, complex data sets that meet functional / non-functional business requirements • Design and implement data application components • Work with data and analytics experts to strive for greater functionality in our data systems • Develop and direct security procedures and safeguards to reduce the risk of outside breaches and protect sensitive information
• Serve as the primary technical lead and escalation point for enterprise data engineering initiatives. • Bridge business requirements, architectural standards, and engineering implementation. • Partner with business analysts, architects, BI teams, DevOps, and data engineers to support successful solution delivery. • Interpret and clarify technical implementation requirements for data engineering teams. • Guide implementation decisions across Databricks pipelines, transformations, and data models. • Review engineering implementations for consistency, scalability, maintainability, and alignment to standards. • Support troubleshooting and root cause analysis for data quality issues, failed pipelines, performance concerns, and production defects. • Act as L1/L2 support lead for enterprise data platform operational issues. • Perform lineage and downstream impact analysis for data model and pipeline changes. • Guide implementation of reusable engineering patterns, medallion architecture, and gold-layer datasets. • Coordinate defect triage, release support, deployment validation, and production stabilization activities. • Support adoption of engineering standards, CI/CD processes, governance controls, and operational best practices. • Mentor and guide data engineers on technical implementation approaches and enterprise standards. • Drive consistency across engineering teams, platforms, and data products. • Document technical patterns, implementation standards, operational procedures, and support processes.
• Responsible for understanding, preparing, transforming, loading, and validating data migrated from the legacy system to the new model. • Map entities, fields, and relationships of the current model, including user, subscription, dependent, and payment where applicable to the scope. • Perform AS IS → TO BE mapping, identifying gaps, inconsistencies, duplicates, and required rules for the new data model. • Define and execute processes for extraction, cleansing, normalization, transformation, and loading of legacy Filó data. • Create import scripts, integrity controls, execution logs, volume validations, and data reconciliation. • Support modeling of the partner, company, beneficiary, dependents, offers, and subscriptions hierarchy. • Participate in cutover strategy, data freeze, migration window, and rollback planning.




