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Streamlining your Medicaid process to maximize your impact on students.
Data Architect
Location
Texas
Posted
105 days ago
Salary
$112K - $125K / year
Seniority
Senior
Job Description
Data Architect
MSB Consulting - Medicaid to Schools
• Define and maintain enterprise-wide logical and physical data models • Establish and enforce scalable data standards and governance policies • Ensure our data platform is reliable, high-performing, and built for growth • Align data architecture with long-term business and product strategy • Design and refine conceptual, logical, and physical data models • Optimize database schemas for performance, maintainability, and scalability • Lead strategic database refactoring and modernization initiatives • Architect secure, cloud-native data solutions, with a strong emphasis on Azure • Design high-availability, disaster recovery, and resilience strategies • Guide the evolution of our modern data ecosystem • Design and oversee resilient ETL/ELT pipelines for ingestion and transformation • Establish standards for API integrations and data exchange • Ensure reliable capture, processing, and distribution of enterprise data • Implement comprehensive data governance frameworks • Define and enforce role-based access controls and data security standards • Ensure compliance with regulatory requirements such as HIPAA, FERPA, and SOC 2 • Establish audit logging and traceability practices to protect data integrity • Partner closely with Product and Engineering teams to support new feature development • Provide technical leadership and architectural direction to data engineers and developers • Conduct architecture reviews and approve data design specifications • Mentor team members on best practices in data architecture and governance
Job Requirements
- Minimum of 3+ years of hands-on experience in data architecture or data engineering
- Deep expertise in relational database systems (e.g., SQL Server)
- Demonstrated experience designing and implementing enterprise-level data models
- Hands-on experience architecting solutions in major cloud platforms (Azure strongly preferred)
- Experience designing complex ETL/ELT processes
- Working knowledge of formal data governance frameworks
- Experience supporting regulatory compliance environments (HIPAA, FERPA, SOC 2 or similar)
Benefits
- MSB School Services covers 100% of the premium for two employee-only medical plan options
- 100% of employee-only dental and vision coverage
- Employee Assistance Program (EAP)
- Telemedicine
- 10+ paid holidays per year
- Unlimited Paid Time Off
- Life & Disability insurance
- 401K, 3% Employer Match
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Geospatial Data Platform + Label Ops Engineer
SkyFiSkyFi is an equal-opportunity employer that values and encourages workplace diversity.
This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description As a Geospatial Data Platform / Label Ops Engineer on the AI/Advanced Engineering team, you’ll own the imagery and labeling data plane behind SkyFi’s near-real-time satellite analytics, making diverse partner imagery fast to ingest, consistent to use, and reproducible end-to-end. You’ll build and operate scalable pipelines to normalize and catalog imagery across many sensors/providers, deliver high-performance tiling/chipping and retrieval services for training and inference, and implement dataset + label versioning and lineage so every model output and evaluation result can be traced back to the exact data used. You’ll define and maintain our labeling pipeline with QA/adjudication and auditability. Working closely with CV and runtime owners, you’ll ship self-serve data products that speed up iteration and improve accuracy. This is a high ownership position where you’ll be a cornerstone member of a team that is empowering the future of Geospatial AI. Qualifications - Demonstrated experience building geospatial imagery pipelines at scale (raster workflows, tiling/chipping, handling heterogeneous sensors/metadata). - Strong data engineering fundamentals: idempotency, backfills, observability, SLAs, schema evolution, and production reliability. - Experience building internal data APIs/SDKs and treating data as a product. - Hands-on experience with labeling workflows or data QA at scale (vendor coordination, task design, QA/adjudication mechanics). - Ability to collaborate tightly with CV/eval owners to translate failure modes into actionable data/labeling pipelines. Requirements - Own the imagery data plane: ingest, normalize, catalog, and serve imagery + metadata across diverse sources for near-real-time and batch workloads. - Build and operate tiling/chipping + retrieval services optimized for training and NRT inference (spatial/temporal indexing, caching, precompute, and latency SLAs). - Implement dataset and label versioning + lineage so every model run / evaluation can be reproduced. - Build and run label ops workflows: task generation, QA, adjudication, gold-check insertion, audit-ability, throughput tracking. - Create data products for internal consumers (APIs/services) that let CV engineers self-serve imagery chips, labels, and eval sets. - Build robust backfill/reprocessing pipelines (idempotent, observable, safe incremental recompute) to support new analytics and changing requirements. - Establish data health monitoring (freshness, completeness, corruption, sensor distribution drift, metadata validation) with alerts and dashboards. - Partner with evaluation and runtime owners to close the loop of failure buckets -> labeling requests -> dataset versions -> retraining/eval. - Partner with computer vision researchers to define image and label strategies for new projects. - Responsible for making sure everyone has the images/data/labels they need. Benefits - Be well compensated. Possibility for equity. - Receive best-in-class benefits, including premium medical, dental, and vision coverage and 20 days paid time off. - Play a critical role in building a market-changing product in the exciting realm of Space. - Thrive in a fast-paced, dynamic environment that rewards initiative, innovation, and getting things done. Salary Band $180,000–$220,000 USD base salary
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• Design, implement, and optimize data engineering architectures and processes, ensuring scalability, security, and efficiency. • Develop and implement data engineering solutions in Azure environments (Data Factory, Synapse Analytics, Databricks, Data Lake, SQL Database). • Build high-performance, reliable data pipelines (ETL/ELT). • Work on data modeling, system integration, and information governance. • Ensure best practices for performance, security, and scalability. • Collaborate with multidisciplinary teams and international stakeholders. • Participate in meetings and presentations in advanced English.



