Sr. Data Architect - Databricks

  • Posted 16 hours ago | Updated 2 hours ago

Overview

Remote
Full Time
25% Travel

Skills

Databricks
Insurance
Modeling
Scalability
Product Development
Analytical Skill
Use Cases
Collaboration
Business Intelligence
Documentation
Data Quality
Regulatory Compliance
Thought Leadership
Data Architecture
Mentorship
Data Modeling
Dimensional Modeling
Data Warehouse
Cloud Computing
Amazon Web Services
Microsoft Azure
Google Cloud
Google Cloud Platform
SQL
Extract
Transform
Load
ELT
Meta-data Management
Data Governance

Job Details

Role : Sr. Data Architect - Databricks

Key Skills: Databricks, Azure, Data vault, Data modeling and commercial insurance knowledge; Able to guide jr. data modeler

Domain Needed: P&C OR L&A Insurance

Role Type: Full Time Permanent

Location: Remote- EST Time + Travel

Primary Objective - Design and implement standardized, modular data models that can be adapted across multiple Operating Entities (OEs) in client, leveraging best practices from various modeling methodologies (Data Vault, Kimball, etc.) to deliver curated, reusable "data products" for business use cases.

Key Responsibilities
Data Modeling Strategy - Develop and maintain enterprise-level data modeling standards based on Data Vault 2.0 principles. Harmonize methodologies (Data Vault, Kimball, Inmon) to create a unified modeling approach.
Reusable Model Design - Create "off-the-shelf" data model templates that can be customized for different OEs. Ensure scalability and flexibility for diverse business domains.
Data Product Development - Design curated datasets (data products) for specific analytical and operational use cases. Collaborate with business stakeholders to define requirements and ensure alignment with data governance.
Architecture & Integration - Work closely with data engineers and solution architects to implement models in cloud/on-prem platforms. Ensure integration with existing data pipelines, ETL/ELT processes, and BI tools.
Governance & Standards - Establish metadata management, lineage tracking, and documentation standards. Promote data quality, consistency, and compliance across all OEs.
Thought Leadership - Act as a subject matter expert for Data Vault 2.0 and modern data architecture. Mentor teams on best practices and emerging trends in data modeling.

Required Skills
Expertise in Data Vault 2.0 methodology and tools. Strong knowledge of dimensional modeling (Kimball) and normalized approaches (Inmon). Experience with data warehousing, data lakehouse architectures, and cloud platforms (AWS, Azure, Google Cloud Platform). Proficiency in SQL, ETL/ELT tools, and metadata management. Familiarity with data governance frameworks and data product concepts.

Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.