Dynatron Software

Sr. Data Engineer

Dynatron Software · Richardson, Texas, United States

Software Development · 201-500 employees

Yesterday
Remote Senior (5-10 yrs) Full-time United States
Log in to apply, save this posting, or score it against your profile with AI.

About the role

Lead the construction and optimization of robust data pipelines to power real-time analytics, AI/ML initiatives, and enterprise reporting. Own end-to-end data validation and quality assurance while mentoring junior engineers in coding best practices.

What they look for

Python PySpark SQL AWS Snowflake Databricks AWS Glue AWS Kinesis Kafka Data Modeling ETL/ELT Data Validation AWS S3 Medallion Architecture Dimensional Modeling

Requirements

Requires 6-8+ years of data engineering experience with expert-level proficiency in Python, PySpark, and SQL. Must have deep hands-on experience with Snowflake or Databricks within an AWS ecosystem and a proven track record with streaming applications.

Benefits

Competitive Base Salary Equity Incentive Plan Health Insurance Dental Insurance Vision Insurance Employer-paid Disability Insurance Life Insurance 401(k) With Company Match Flexible Vacation Policy 11 Paid Holidays Professional Development Opportunities

Full description

About Dynatron

Dynatron is transforming the automotive service industry with intelligent SaaS solutions that drive measurable results for thousands of dealership service departments. Our proprietary analytics, automation, and AI-powered workflows empower service leaders to improve profitability, elevate customer satisfaction, and operate with greater efficiency. With accelerating growth, expanding product innovation, and increasing market demand, we are scaling quickly and data is a critical driver of what comes next.

The Opportunity

Dynatron is seeking a highly skilled Senior Data Engineer to join our growing data team. While our architects define the blueprint, you will be the lead craftsman responsible for building, optimizing, and maintaining the robust data pipelines that power our real-time analytics, AI/ML initiatives, and enterprise reporting. You are a hands-on expert in AWS and modern cloud data stacks, specifically Snowflake or Databricks, and possess the engineering rigor to build scalable, production-grade data ecosystems.

What You’ll Do

Pipeline Development & AWS Data Lake Engineering

  • Build and maintain complex data pipelines using AWS Glue, Step Functions, or Databricks Workflows.
  • Implement modular data structures using advanced modeling techniques such as Medallion Architecture and Dimensional Modeling.
  • Manage scalable data storage solutions using AWS S3 as the primary landing zone and data lake foundation.
  • Optimize storage formats (Delta, Iceberg, Parquet) and compute performance to ensure high-throughput and cost-effective processing.
  • Build decoupled, event-driven architectures using AWS SNS and SQS to handle high-throughput messaging between data services.

Real-Time Data Streaming & Ingestion• Develop and deploy real-time ingestion pipelines using AWS Kinesis or Kafka.

  • Implement Change Data Capture (CDC) via tools like Debezium or Fivetran to support low-latency operational analytics.

Core Data Quality & Automated Validation (QA Ownership)• Own end-to-end data validation and QA by building automated data quality checks directly into the ETL/ELT pipelines.

  • Enforce strict data contracts and schema evolution guidelines to maintain high data quality and integrity across domains.
  • Implement proactive alerting and observability to catch data drift, pipeline anomalies, and quality drops before they impact downstream users.

Engineering for ML/AI• Engineer ML-ready datasets and manage Feature Stores to support the Data Science team.

  • Operationalize ML workflows, integrating with services like Snowflake Cortex, Databricks AI, or AWS Bedrock.

Technical Leadership & Collaboration• Mentor junior engineers in coding best practices, SQL optimization, and Python development.

  • Collaborate closely with Product and ML teams to translate architectural designs into functional code.

Required Qualifications• Experience: 6-8+ years of experience in data engineering with a focus on large-scale distributed systems.

  • Core Languages: Expert-level Python and PySpark with Strong SQL skills.
  • Platforms: Deep hands-on experience with Snowflake or Databricks, built natively within an AWS ecosystem.
  • Streaming: Proven track record building streaming applications using Kinesis or Kafka.
  • Data Validation: Demonstrated experience implementing automated testing frameworks, data profiling, and pipeline validation (owning the QA of your own pipelines).
  • Soft Skills: Strong documentation habits (playbooks, technical specs) and an ownership mindset.
  • Certifications (Nice-to-Have): Relevant IT professional certifications, such as SnowPro Core, Databricks Certified Data Engineer Professional, or AWS Certified Data Engineer.

Collaboration & Ownership

  • Strong communication skills with the ability to explain technical concepts clearly to technical and non-technical stakeholders.
  • Collaborative mindset with the ability to partner effectively across Product, Engineering, Analytics, ML, and leadership teams.
  • High standards for quality, maintainability, performance, and operational discipline.
  • Strong ownership mindset with the ability to move quickly, solve problems thoughtfully, 

What Success Looks Like

This role rewards data engineers who:

  • Build scalable, reliable, and secure data systems that support real business outcomes.
  • Operate with urgency, ownership, and strong engineering discipline.
  • Think beyond individual pipelines to improve platform quality, observability, and long-term maintainability.
  • Help Dynatron turn trusted data into smarter products, better decisions, and stronger customer outcomes and follow through reliably.
  • Partner effectively across technical and business teams.

Compensation & Benefits• Competitive base salary

  • Participation in Dynatron’s Equity Incentive Plan
  • Comprehensive health, dental, and vision insurance
  • Employer-paid disability and life insurance
  • 401(k) with competitive company match
  • Flexible vacation policy and 11 paid holidays
  • Remote-first culture
  • Ongoing professional development opportunities

Why Dynatron

  • Opportunity to build and scale the data foundation of a growing, AI-enabled SaaS company.
  • High-impact role supporting real-time analytics, machine learning, enterprise reporting, and product innovation.
  • Close partnership across Data, Product, Engineering, Analytics, and business leadership.
  • Values-driven culture built on accountability, urgency, and delivering measurable results.
  • Remote-first environment offering flexibility, autonomy, and trust.