Data Engineer Lead

Georgia IT Inc.
Charlotte, United States of America
26 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Charlotte, United States of America

Tech stack

Azure
Cloud Database
Code Review
Continuous Integration
Data Architecture
Data Cleansing
Information Engineering
Data Governance
ETL
Software Debugging
Software Design Patterns
DevOps
Distributed Computing Environment
Hive
SQL Azure
Operational Databases
Azure DevOps Pipelines
Azure
SQL Databases
Data Streaming
Data Ingestion
Azure
Autoscaling
GIT
Data Lake
PySpark
Git Flow
Kafka
Azure
Data Pipelines
Serverless Computing
Key Vault
Databricks

Job description

We are looking for an experienced Azure Databricks Engineer with strong expertise in cloud-based data engineering, ETL development, and distributed data processing. The ideal candidate should have solid hands-on experience with PySpark, Delta Lake, Azure Data Factory, and building scalable data pipelines on Azure.

The engineer will work closely with business, Data Architects, and cross-functional teams to design, develop, and optimize data pipelines for enterprise-grade analytics and reporting.

Key Responsibilities

Data Engineering & Pipeline Development

Design, develop, and optimize ETL/ELT pipelines using Azure Databricks (PySpark). Build scalable data ingestion workflows from various structured and unstructured sources. Implement transformation logic, data cleansing, enrichment, and validation frameworks. Work with Delta Lake to build medallion architecture (Bronze/Silver/Gold layers). Develop reusable Databricks notebooks and jobs for production data workflows. Azure Cloud & Integration

Build and orchestrate pipelines using Azure Data Factory (ADF). Integrate Databricks with other Azure services-ADLS, Azure SQL, Event Hub, Key Vault, Synapse. Optimize compute environments (clusters, pools, autoscaling). Implement DevOps processes using Git, CICD, Azure DevOps. Performance, Quality & Governance

Optimize PySpark jobs for performance and cost efficiency. Implement best practices for data governance, security, and access control. Troubleshoot production issues and perform root-cause analysis. Conduct code reviews ensuring coding standards and data quality. Collaboration & Documentation

Work with Data Architects to define architecture and design patterns. Prepare technical documents, solution diagrams, and runbooks. Collaborate with business stakeholders to understand requirements and translate them into technical solutions.

Mandatory Skills

Azure Databricks - notebooks, jobs, workflows, Delta Lake. PySpark - dataframes, Spark SQL, optimization & debugging. Azure Data Factory (ADF) - triggers, pipelines, integration runtime. Data Lake Storage (ADLS Gen2) - folder structures, partitioning, security. CI/CD - Git (branching strategies), Azure DevOps pipelines. SQL - strong proficiency in writing optimized queries.

Good-to-Have Skills

Azure Synapse Analytics Azure Event Hub / Kafka Azure Functions DataBricks REST APIs Streaming pipelines (Structured Streaming)

Requirements

Experience with data modelling Knowledge of Lakehouse architecture

Behavioral & Soft Skills

Strong analytical and problem-solving skills. Ability to work independently and in cross-functional teams. Good communication skills for stakeholder interaction. Comfortable working in Agile/Scrum models.

Apply for this position