Overview
Skills
Job Details
Data Platform Engineer: Cloud Ops + Data Ops - 4 + months - Hybrid work weekly 3 days onsite
Requisition Name: IoT-AUTO-Data Platform Engineer: Cloud Ops + Data Ops
Start Date: 12/15/2025
Duration: 15 Weeks
Services Location: TX/Plano
Hybrid work weekly 3 days onsite
Description Of Services:
Role Summary As a Data Platform Engineer, you will be responsible for the design, development, and maintenance of our high-scale, cloud-based data platform, treating data as a strategic product. You will lead the implementation of robust, optimized data pipelines using PySpark and the Databricks Unified Analytics Platform leveraging its full ecosystem for Data Engineering, Data Science, and ML workflows. You will also establish best-in-class DevOps practices using CI/CD and GitHub Actions to ensure automated deployment and reliability. This role demands expertise in large-scale data processing and a commitment to modern, scalable data engineering and AWS cloud infrastructure practices. Key Responsibilities 1. Platform Development: Design, build, and maintain scalable, efficient, and reliable ETL/ELT data pipelines to support data ingestion, transformation, and integration across diverse sources. 2. Big Data Implementation: Serve as the subject matter expert for the Databricks environment, developing high-performance data transformation logic primarily using PySpark and Python. This includes utilizing Delta Live Tables (DLT) for declarative pipeline construction and ensuring governance through Unity Catalog. 3. Cloud Infrastructure Management: Configure, maintain, and secure the underlying AWS cloud infrastructure required to run the Databricks platform, including virtual private clouds (VPCs), network endpoints, storage (S3), and cross-account access mechanisms. 4. DevOps & Automation (CI/CD): Own and enforce Continuous Integration/Continuous Deployment (CI/CD) practices for the data platform. Specifically, design and implement automated deployment workflows using GitHub Actions and modern infrastructure-as-code concepts to deploy Databricks assets (Notebooks, Jobs, DLT Pipelines, and Repos). 5. Data Quality & Testing: Design and implement automated unit, integration, and performance testing frameworks to ensure data quality, reliability, and compliance with architectural standards. 6. Performance Optimization: Optimize data workflows and cluster configurations for performance, cost efficiency, and scalability across massive datasets. 7. Technical Leadership: Provide technical guidance on data principles, patterns, and best practices (e.g., Medallion Architecture, ACID compliance) to promote team capabilities and maturity. This includes leveraging Databricks SQL for high-performance analytics. 8. Documentation & Review: Draft and review architectural diagrams, design documents, and interface specifications to ensure clear communication of data solutions and technical requirements. Required Qualifications Experience: 5+ years of professional experience in Data Engineering, focusing on building scalable data platforms and production pipelines. Big Data Expertise: Minimum 3+ years of hands-on experience developing, deploying, and optimizing solutions within the Databricks ecosystem. Deep expertise required in: o Delta Lake (ACID transactions, time travel, optimization). o Unity Catalog (data governance, access control, metadata management). o Delta Live Tables (DLT) (declarative pipeline development). o Databricks Workspaces, Repos, and Jobs. o Databricks SQL for analytics and warehouse operations. AWS Infrastructure & Security: Proven, hands-on experience (3+ years) with core AWS services and infrastructure components, including: o Networking: Configuring and securing VPCs, VPC Endpoints, Subnets, and Route Tables for private connectivity. o Security & Access: Defining and managing IAM Roles and Policies for secure cross-account access and least privilege access to data. o Storage: Deep knowledge of Amazon S3 for data lake implementation and governance. Programming: Expert proficiency (4+ years) in Python for data manipulation, scripting, and pipeline development. Spark & SQL: Deep understanding of distributed computing and extensive experience (3+ years) with PySparkand advanced SQL for complex data transformation and querying. DevOps & CI/CD: Proven experience (2+ years) designing and implementing CI/CD pipelines, including proficiency with GitHub Actions or similar tools (e.g., GitLab CI, Jenkins) for automated testing and deployment. Data Concepts: Full understanding of ETL/ELT, Data Warehousing, and Data Lake concepts. Methodology: Strong grasp of Agile principles (Scrum). Version Control: Proficiency with Git for version control. Preferred Qualifications AWS Data Ecosystem Experience: Familiarity and experience with AWS cloud-native data services, such as AWS Glue, Amazon Athena, Amazon Redshift, Amazon RDS, and Amazon DynamoDB. Knowledge of real-time or near-real-time streaming technologies (e.g., Kafka, Spark Structured Streaming). Experience in developing feature engineering pipelines for machine learning (ML) consumption. Background in performance tuning and capacity planning for large Spark clusters.
Deliverables:
-Process Flows -Mentor and Knowledge transfer to client project team members -Participate as primary, co and/or contributing author on any and all project deliverables associated with their assigned areas of responsibility -Participate in data conversion and data maintenance -Provide best practice and industry specific solutions -Advise on and provide alternative (out of the box) solutions -Provide thought leadership as well as hands on technical configuration/development as needed. -Participate as a team member of the team -Perform other duties as assigned.