Data Architect - II

Ampcus Inc
Richmond
4 days ago
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Job Title

Data Architect – II


Location

Richmond, VA


Job Description

  • Responsible for the overall design of the enterprise-wide data/information architecture, which maps to the enterprise architecture and balances the need for access against security and performance requirements.
  • Knowledgeable in most aspects of designing and constructing data architectures, operational data stores, and data marts.
  • Focus on enterprise-wide data modeling and database design. Defines data/information architecture standards, policies and procedures for the organization, structure, attributes and nomenclature of data elements, and applies accepted data content standards to technology projects.
  • Facilitates consistent business analysis, data acquisition and access analysis and design, Database Management Systems optimization, archiving and recovery strategy, load strategy design and implementation, security and change management at the enterprise level.
  • Translates strategic requirements into a usable enterprise information architecture, which may include an enterprise data model, associated metamodel, common business vocabulary, ontologies and taxonomies to be used to guide enterprise solution development and achieve consistency of information assets across the application portfolio.
  • Develops a metadata management and repository strategy to manage all enterprise information architecture project artifacts.
  • Ensure existing data/information assets are identified, stewarded and leveraged across the enterprise.
  • Requires an understanding of emerging regulatory issues (e.g., consumer privacy laws, outsourced data and specific industry guidelines such as HIPAA) to develop internal and external checks and controls to ensure proper governance, security and quality of information assets.

About the Role

  • We are seeking an experienced Solutions Architect to design and implement enterprise-level data architecture solutions that align with our business objectives.
  • In this critical role, you'll translate business requirements into technical specifications and create scalable, efficient data ecosystems that drive insights and innovation.

Key Responsibilities

  • Design comprehensive data architectures that support business intelligence, analytics, and data science initiatives.
  • Create detailed technical specifications for data storage, processing, and retrieval systems.
  • Develop data models, schemas, and integration patterns that enable seamless data flow across the organization.
  • Collaborate with stakeholders to understand business requirements and translate them into technical solutions.
  • Evaluate and recommend appropriate technologies for data warehousing, ETL/ELT, and analytics platforms.
  • Implement data governance frameworks and ensure compliance with policies.
  • Lead proof-of-concept initiatives to validate architectural approaches.
  • Mentor junior team members and provide technical guidance to development teams.
  • Create documentation for data architecture components, processes, and standards.
  • Stay current with emerging technologies and industry best practices.

Required Qualifications

  • Bachelor’s degree in computer science, Information Systems, or related field (master’s preferred).
  • 7 years of experience in data architecture, data engineering, or related roles.
  • Proven track record designing and implementing enterprise data solutions.
  • Expert knowledge of data modeling techniques (dimensional, relational, NoSQL).
  • Strong experience with cloud data platforms (AWS specifically).
  • Proficiency in data integration patterns and ETL/ELT methodologies.
  • Experience with data mesh architecture.
  • Working knowledge of big data technologies (Hadoop, Spark, Kafka, etc.).
  • Familiarity with business intelligence and analytics tools.
  • Strong understanding of data governance principles.

Preferred Skills & Experience

  • Experience with real-time data processing architectures.
  • Knowledge of machine learning workflows and MLOps.
  • Certifications in relevant cloud platforms or data technologies.
  • Experience with data mesh or data fabric architectures.
  • Experience with DataOps and CI/CD for data pipelines.

Ampcus is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, age, protected veterans or individuals with disabilities.


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