ITMC Systems, Inc

Databricks Architect

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Databricks Architect in Cincinnati, OH (Hybrid 3 days), offering a contract position. Requires 5+ years of Data Engineering experience, proficiency in Azure Databricks, Spark, Python, SQL, Terraform, and CI/CD practices.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
Unknown
-
🗓️ - Date
March 11, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
Hybrid
-
📄 - Contract
Unknown
-
🔒 - Security
Unknown
-
📍 - Location detailed
Cincinnati, OH
-
🧠 - Skills detailed
#DataOps #Azure #Deployment #Data Strategy #Cloud #Monitoring #Automation #Strategy #Version Control #Data Security #PySpark #Data Catalog #SQL (Structured Query Language) #Azure Databricks #Scala #Python #Delta Lake #Security #Infrastructure as Code (IaC) #Terraform #Distributed Computing #Data Governance #GitHub #Spark (Apache Spark) #Data Engineering #Data Pipeline #Databricks #Azure cloud #GIT
Role description
Job Title: Databricks Architect Location: Cincinnati, OH (Hybrid 3 days) Job Type: Contract Position Responsibilities: The team is seeking a Data Engineer experienced in implementing modern data solutions in Azure, with strong hands-on skills in Databricks, Spark, Python, and cloud-based Data-Ops practices. The Data Engineer will analyze, design, and develop data products, pipelines, and information architecture deliverables, focusing on data as an enterprise asset. This role also supports cloud infrastructure automation and CI/CD using Terraform, GitHub, and GitHub Actions to deliver scalable, reliable, and secure data solutions. Requirements: 5+ years of experience as a Data Engineer Hands-on experience with Azure Databricks, Spark, and Python Experience with Delta Live Tables (DLT) or Databricks SQL Strong SQL and database background Experience with Azure Functions, messaging services, or orchestration tools Familiarity with data governance, lineage, or cataloging tools (e.g., Purview, Unity Catalog) Experience monitoring and optimizing Databricks clusters or workflows Experience working with Azure cloud data services and understanding how they integrate with Databricks and enterprise data platforms Experience with Terraform for cloud infrastructure provisioning Experience with GitHub and GitHub Actions for version control and CI/CD automation Strong understanding of distributed computing concepts (partitions, joins, shuffles, cluster behavior) Familiarity with SDLC and modern engineering practices Ability to balance multiple priorities, work independently, and stay organized Key Responsibilities Analyze, design, and develop enterprise data solutions with a focus on Azure, Databricks, Spark, Python, and SQL Develop, optimize, and maintain Spark/PySpark data pipelines, including managing performance issues such as data skew, partitioning, caching, and shuffle optimization Build and support Delta Lake tables and data models for analytical and operational use cases Apply reusable design patterns, data standards, and architecture guidelines across the enterprise, including collaboration with 84.51° when needed Use Terraform to provision and manage cloud and Databricks resources, supporting Infrastructure as Code (IaC) practices Implement and maintain CI/CD workflows using GitHub and GitHub Actions for source control, testing, and pipeline deployment Manage Git-based workflows for Databricks notebooks, jobs, and data engineering artifacts Troubleshoot failures and improve reliability across Databricks jobs, clusters, and data pipelines Apply cloud computing skills to deploy fixes, upgrades, and enhancements in Azure environments Work closely with engineering teams to enhance tools, systems, development processes, and data security Participate in the development and communication of data strategy, standards, and roadmaps Draft architectural diagrams, interface specifications, and other design documents Promote the reuse of data assets and contribute to enterprise data catalog practices Deliver timely and effective support and communication to stakeholders and end users • Mentor team members on data engineering principles, best practices, and emerging technologies