Senior Data Engineer

QGendaAtlanta, GA
25dHybrid

About The Position

As a Senior Data Engineer, you will design, build, and optimize the data platform, including pipelines, models, and infrastructure that power analytics, reporting, and data-driven decision making across the QGenda product lines. You will serve as a technical leader with the team, contributing to architectural direction, driving best practices, and supporting complex data initiatives. This role requires deep technical expertise, strong cross-functional collaboration, and the ability to deliver scalable, high-performing data systems that meet evolving business needs.

Requirements

  • Exceptional analytical, problem solving, and debugging skills
  • Strong communication with the ability to simplify and articulate technical concepts
  • Ability to work collaboratively, influence architecture, and take ownership of deliverables
  • Commitment to quality, reliability, and continuous improvement
  • 5-7+ years in data engineering/analytics engineering, or related field
  • Bachelor’s degree specializing in computing, data engineering, or related discipline
  • Expertise in distributed data processing, data modeling, and performance tuning
  • Experience with modern data stack components, such as:
  • Cloud: AWS/GCP/Azure
  • Warehouses: Snowflake, Redshift, BigQuery, etc.
  • Orchestration & Transformation: Matillion, dbt, etc.
  • Observability: data lineage/monitoring tools
  • BI: Looker, Tableau, Power BI, etc.
  • DevOps: Git, CI/CD, Terraform/CloudFormation

Nice To Haves

  • Experience preparing datasets and data structures for AI/ML use cases, including NLP-driven analytics

Responsibilities

  • Deliver High-Quality, Scalable Data Engineering Solutions
  • Architect, develop, test, and maintain ELT/ETL pipelines and data workflows supporting high-volume analytics
  • Implement advanced data processing solutions and observability techniques to ensure data is accurate, fresh, and reliable
  • Design and refine data models and semantic layers that support analytical self-service and advanced reporting.
  • Strengthen Data Engineering Practices and Technical Standards
  • Translate complex business and analytics requirements into efficient, scalable data solutions
  • Apply best practices for version control, documentation, CI/CD, Infrastructure as Code, and data governance
  • Participate in code reviews, identify opportunities for architectural improvement,, and contribute to continuous improvement efforts
  • Collaborate Across Teams
  • Partner with data engineers, DBAs, managers, and business stakeholders to deliver high-impact data products
  • Provide technical guidance, informal mentorship, and support to other engineers in order to elevate team capabilities
  • Communicate technical decisions, risks, and recommendations to both technical and non-technical audiences
  • Drive Technical Excellence
  • Optimize data pipelines and warehouse performance for speed, cost, and scalability
  • Evaluate, prototype, and influence adoption of new tools, frameworks, and architectural patterns that enhance the data platform
  • Contribute to data observability, incident response, and root-cause analysis for complex data issues
  • Design and deliver AI-ready data products, ensuring data structures, metadata, and pipelines are suitable for natural language processing, predictive analytics, and other AI-driven capabilities

Benefits

  • Fully company-paid options for medical (both in-person and virtual), dental and vision insurance
  • Generous paid time off (PTO) policy to enjoy periods of uninterrupted rest and relaxation for a healthy work/life balance
  • Paid parental leave for birth, adoption or permanent placement
  • 401(k) with company match
  • Options to work in a hybrid-working model or remotely from home, depending on the position
  • Annual Costco membership, cell phone stipend, commuter benefits, in-office perks and more
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service