Logo for Intrado Life & Safety

Staff Data Engineer

Roles & Responsibilities

  • 10+ years of progressive experience in Data Engineering, focusing on designing and building cloud infrastructure and high-volume data movement
  • Deep expertise architecting the Azure Data Stack (Azure Data Factory, Azure Data Lake Storage, Databricks)
  • Proven ability to build robust, scalable ELT/ETL pipelines using Azure Data Factory and Databricks
  • Expert-level proficiency in Python and Apache Spark for distributed data processing

Requirements:

  • Design and implement the core architecture for the company's data ecosystem for business analytics, including end-to-end data flow from source systems to visualizations
  • Build robust Azure Data Factory pipelines to ingest data from Source A systems (Salesforce, ServiceNow, D365) to Sink B (Azure Data Lake)
  • Set technical standards for CI/CD, version control, and data quality testing at the ingestion level (governance)
  • Ensure the raw and bronze data layers are available and up to date, minimizing downtime (system reliability)

Job description

About Us:

Intrado is dedicated to saving lives and protecting communities, helping them prepare for, respond to, and recover from critical events. Our cutting-edge company strives to become the most trusted, data-centric emergency services partner by uniting fragmented communications into actionable intelligence for first responders. At Intrado, all of our work truly matters. 

Responsibilities:

Position Overview:

We looking for an exceptional Staff Data Engineer to build the highperformance foundation that powers our company’s internal business analytics. In this pivotal role, you will partner with a newly hired Staff Analytics Engineer to design and build the end-toend delivery of our data ecosystem, ensuring that our leadership team has the timely, actionable insights they need to make informed decisions.

 

You will be responsible for building “the plumbing” of this data ecosystem, including the ingestion of data from diverse sources into our Azure data lake, transformation of data in Databricks, and delivery of gold layer data to visualization tools. You will enable the seamless flow of financial and operational data from source systems to decision-makers, eliminating the technical bottlenecks that delay critical business insights.

 

This is a demanding role in a results-oriented environment with high expectations for agency, speed, and ownership.

 

Key Responsibilities

  • Infrastructure Architecture: Design and implement the core architecture for the company’s data ecosystem that will be used for business analytics. This includes the end-to-end architecture from the data in source systems to delivery in visualizations.
  • High-Scale Ingestion: Build robust Azure Data Factory pipelines to pull data from disparate "Source A" systems (Salesforce, ServiceNow, D365) to "Sink B" (Azure data lake).
  • Standards & Governance: Set the technical standards for the Business Operations engineering team. You will define how the team handles CI/CD, version control, and data quality testing at the ingestion level.
  • System Reliability: Ensure the raw and bronze data layers are available and up to date, minimizing downtime.

 

Required Qualifications

  • Experience: 10+ years of progressive experience in Data Engineering, with a specific focus on designing and building cloud infrastructure and high-volume data movement.
  • Cloud Infrastructure Architecture: Deep expertise in architecting the Azure Data Stack (Azure Data Factory, Azure Data Lake Storage, Databricks).
  • High-Scale Data Ingestion: Proven ability to build robust, scalable ELT/ETL pipelines using Azure Data Factory and Databricks.
  • Advanced Python & Spark: Expert-level proficiency in Python and Apache Spark for distributed data processing.
  • Governance & Security: Experience implementing enterprise-grade data governance, and data lineage.
  • DevOps & CI/CD: Strong experience implementing CI/CD pipelines (Azure DevOps or GitHub Actions) for data infrastructure.
  • LLM Application: Experience leveraging LLMs and AI-assisted development tools to accelerate data engineering workflows, improve code quality, and automate repetitive technical tasks.
  • Education: Bachelor’s degree in Computer Science, Software Engineering, Data Engineering, or a closely related technical discipline.

 

Preferred Qualifications

  • Master’s or equivalent in Computer Science, Engineering, or Cloud/Data Systems
  • Prior experience working in a technology company or SaaS environment
Total Rewards:

Want to love where you work? At Intrado, we offer a comprehensive benefits package that includes what you’d expect (medical, dental, vision, life and disability coverage, paid time off, a 401(k) retirement plan, and several that go above and beyond – paid parental leave, access to a robust library of personal and professional training resources, employee discounts, critical illness, hospital indemnity, access to legal support, pet insurance, identity theft protection, an EAP (Employee Assistance Program) that includes free mental health resources/support, and more! Apply today to join us in work worth doing

 

The starting salary is anticipated between $200,000 and $220,000 and will be commensurate with experience.  

 

Intrado is an Equal Opportunity Employer – Veterans/Disabled and Other Protected Categories. Our Company welcomes and encourages applications of individuals with disabilities. Accommodations are available on request for candidates taking part in all aspects of the selection process. Intrado maintains a Drug Free Workplace.

Data Engineer Related jobs

Other jobs at Intrado Life & Safety

We help you get seen. Not ignored.

We help you get seen faster — by the right people.

🚀

Auto-Apply

We apply for you — automatically and instantly.

Save time, skip forms, and stay on top of every opportunity. Because you can't get seen if you're not in the race.

AI Match Feedback

Know your real match before you apply.

Get a detailed AI assessment of your profile against each job posting. Because getting seen starts with passing the filters.

Upgrade to Premium. Apply smarter and get noticed.

Upgrade to Premium

Join thousands of professionals who got noticed and hired faster.