Role overview

Sr. Data Engineer

Requirements and responsibilities

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Work Hours & Collaboration Expectations

  • 9:00 AM – 2:00 PM EST
  • 8:00 AM – 1:00 PM CST
  • 7:00 AM – 12:00 PM MST
  • 6:00 AM – 11:00 AM PST

What You’ll DoPipeline 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.

What You’ll DoPipeline Development & AWS Data Lake Engineering

  • 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.

What You’ll DoPipeline Development & AWS Data Lake Engineering

  • 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.

What You’ll DoPipeline Development & AWS Data Lake Engineering

  • 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.

What You’ll DoPipeline Development & AWS Data Lake Engineering

  • 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.

What You’ll DoPipeline Development & AWS Data Lake Engineering

  • 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,

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.
  • Partner effectively across technical and business teams.

This role rewards data engineers who:

  • Help Dynatron turn trusted data into smarter products, better decisions, and stronger customer outcomes.and follow through reliably.

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.
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Browse stack
FocusSenior Data EngineerRole area
Seniority signalSeniorCandidate level
StackAWS, Python, SnowflakePrimary skills
Location1 accepted countryEligibility

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