Data Engineer providing technical support and delivering analytics solutions at Elder Research. Collaborating with teams and optimizing data pipelines in Azure environments.
Responsibilities
Data Engineering & Analysis: Develop, optimize, and maintain scalable data pipelines and systems in Azure environments
Analyze large, complex datasets to extract insights and support business decision-making
Create detailed and visually appealing reports and dashboards using R, Python, SQL, and Power BI
Collaboration & Consulting: Work closely with software developers, cloud engineers, architects, business leaders, and power users to understand requirements and deliver tailored solutions
Act as a subject-matter expert in data engineering and provide guidance on best practices
Translate complex technical concepts into actionable business insights for stakeholders
Azure Expertise: Leverage Azure services such as Azure Data Factory, Azure Synapse Analytics, Azure Databricks, Azure SQL Database, and Azure Blob Storage for data solutions
Ensure data architecture is aligned with industry standards and optimized for performance in cloud environments
SDLC Proficiency: Follow and advocate for SDLC best practices in data engineering projects
Collaborate with software development teams to ensure seamless integration of data solutions into applications
Requirements
Experience: 5-8 years in data engineering, analytics, or related fields, with a focus on Azure environments
Education: Bachelors degree in Computer Science, Data Science, Engineering, or a related field (Masters degree preferred)
Technical Skills: Advanced expertise in Python; experience with R is a plus
Data Tools: Proficient in SQL, Power BI, and Azure-native data tools
Azure Knowledge: Strong understanding of Azure services, including data integration, storage, and analytics solutions
SDLC Knowledge: Proven track record of delivering data solutions following SDLC methodologies
Consultative Skills: Strong client-facing experience with excellent communication and presentation abilities
Due to Customer requirements Candidates must be US Citizens or Permanent Residents of the United States of America
Benefits
Competitive Salary and Benefits
Important Work / Make a Difference supporting U.S. national security
Job Stability: Elder Research is not a typical government contractor, we hire you for a career not just a contract
People-Focused Culture: we prioritize work-life-balance and provide a supportive, positive, and collaborative work environment as well as opportunities for professional growth and advancement
Senior Data Engineer designing and building data warehouse solutions with Snowflake for a fintech company. Collaborating with cross - functional teams to facilitate data insights and analytics.
Data Engineer developing and maintaining data pipelines and applications at EvidenceCare. Collaborating across teams to generate actionable insights from healthcare data for better decision - making.
Data Engineer managing and expanding enterprise business intelligence and data platform. Focusing on Tableau development and administration with a strong engineering background.
Lead Data Engineer overseeing engineers and advancing the data platform at American Family Insurance. Creating tools and infrastructure to empower teams across the company.
Data Architect designing end - to - end Snowflake data solutions and collaborating with technical stakeholders at Emerson. Supporting the realization of Data and Digitalization Strategy.
Manager of Data Engineering leading data assets and infrastructure initiatives at CLA. Collaborating with teams to enforce data quality standards and drive integration efforts.
Data Engineer building modern Data Lake architecture on AWS and implementing scalable ETL/ELT pipelines. Collaborating across teams for analytics and reporting on gaming platforms.
Chief Data Engineer leading Scania’s Commercial Data Engineering team for growing sustainable transport solutions. Focused on data products and pipelines for BI, analytics, and AI.
Entry - Level Data Engineer at GM, focusing on building large scale data platforms in cloud environments. Collaborating with data engineers and scientists while migrating systems to cloud solutions.