Data Architect

Cynet systems Inc
Richmond
4 days ago
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Job Description:



  • The Enterprise Architect will lead the design and implementation of enterprise data platforms using Microsoft Fabric.
  • This role is responsible for defining data architecture standards, enabling scalable analytics platforms, and driving enterprise data strategy aligned with business needs.

Responsibilities:
Architecture And Solution Design:

  • Architect and implement enterprise data platforms using Microsoft Fabric, including Lakehouse, Data Warehouse, Real-Time Analytics, and Data Science workloads.
  • Define and maintain technical architecture standards across ingestion, transformation, storage, and consumption layers.
  • Design scalable medallion architecture using Fabric Lakehouse and Delta Lake.
  • Develop data governance, lineage, catalog, and data quality frameworks using Microsoft Purview and Fabric governance capabilities.
  • Create reusable frameworks, templates, and accelerators for data engineering teams.

Data Engineering And Development:

  • Lead development of robust data pipelines using Data Factory, Synapse Data Engineering, Notebooks, and Spark within Microsoft Fabric.
  • Implement ETL and ELT pipelines from SaaS platforms, databases, APIs, and real-time streaming sources.
  • Optimize data models for analytics workloads using Power BI Direct Lake, Lakehouse shortcuts, and Warehouse modeling.
  • Apply performance tuning across compute, storage, queries, and data pipelines.

Strategy And Leadership:

  • Define enterprise data strategy aligned with business and analytics objectives.
  • Lead technical reviews, design workshops, and architecture governance forums.
  • Mentor data engineers, analysts, and business users on Microsoft Fabric best practices.
  • Evaluate new Microsoft Fabric capabilities and recommend enterprise adoption strategies.

Security And Compliance:

  • Ensure security and access controls across workspaces, domains, OneLake, and data warehouses.
  • Implement data privacy, retention, lineage, and compliance architectures.
  • Collaborate with cloud security and infrastructure teams to ensure secure deployments.

Requirement/Must Have:

  • Strong expertise in Microsoft Fabric including OneLake, Lakehouse, Data Factory pipelines, Synapse Data Engineering, Data Warehousing, and Real-Time Analytics.
  • Hands‑on experience with Power BI Direct Lake and semantic modeling.
  • Proficiency in Python, SQL, PySpark, and Apache Spark.
  • Strong understanding of Delta Lake and ACID Lakehouse principles.
  • Experience designing modern data architectures including Lakehouse, Medallion, and Data Mesh.
  • Solid knowledge of data governance, metadata management, and cloud architecture with preference for Azure.

Experience:

  • 8–12+ years of experience in data engineering.
  • 3+ years of experience in data architecture roles.
  • Experience supporting enterprise‑scale analytics and data platforms.

Skills:

  • Microsoft Fabric architecture and implementation.
  • Data engineering and pipeline development.
  • Cloud‑native analytics platforms.
  • Data governance and security.
  • Performance tuning and optimization.

Should Have:

  • Microsoft Fabric certifications or Azure Data Engineering certifications.
  • Experience migrating legacy analytics platforms such as SSIS, SSAS, ADF, or Synapse to Microsoft Fabric.
  • Exposure to multi‑region cloud environments and enterprise‑scale data platforms.
  • Experience leading architecture review boards or technical design authority groups.

Qualification And Education:

  • Bachelor’s degree in Computer Science, Engineering, or related field, or equivalent work experience.


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