Full-Time

Data Engineer 1

Posted on 6/13/2026

University of Texas at Austin

University of Texas at Austin

Compensation Overview

$71.1k/yr

Company Does Not Provide H1B Sponsorship

Austin, TX, USA

In Person

Category
Data & Analytics (1)
Required Skills
Dynamodb
Data Lake
Microsoft Azure
Redshift
Python
NoSQL
BigQuery
Apache Spark
SQL
Apache Kafka
Java
ETL
AWS
Scala
Hadoop
C/C++
Data Governance
DevOps
Snowflake
Google Cloud Platform
Requirements
  • Requires a Bachelor's Degree in Computer Science, Information Systems, Engineering, Statistics, or a related field with at least 2 year(s) of experience in data engineering, architecture, or ETL development.
  • Proficiency with big data tools (e.g., Hadoop, Spark, Kafka).
  • Experience with both SQL and NoSQL databases.
  • Skilled in data pipeline and workflow management tools.
  • Familiarity with AWS services, such as EC2, EMR, RDS, Redshift, Glue, DynamoDB.
  • Programming/scripting experience in Python, Java, C++, Scala, or similar.
  • Relevant education and experience may be substituted as appropriate.
Responsibilities
  • Designs and Maintains Data Pipelines: Creates and maintains optimal data pipeline architecture for structured and unstructured healthcare data.
  • Assembles large, complex data sets that meet functional and non-functional business requirements.
  • Builds scalable ETL/ELT pipelines using SQL and AWS big data technologies.
  • Optimizes pipeline performance for latency, throughput, and fault tolerance.
  • Ensures pipelines comply with HIPAA and other regulatory standards.
  • Develops and Manages Data Infrastructure: Builds infrastructure for optimal extraction, transformation, and loading of data from diverse sources.
  • Creates and maintains data lakes, warehouses, and marts using platforms like Snowflake, Redshift, or BigQuery.
  • Configures cloud-based storage and compute environments (AWS, Azure, GCP).
  • Implements schema design, indexing, and partitioning strategies.
  • Ensures high availability and disaster recovery protocols.
  • Enables Analytics and Data Science: Creates data tools for analytics and data science teams to build and optimize data products.
  • Develops reusable components for reporting and dashboarding tools.
  • Builds data models and views for use by analysts and data scientists.
  • Enables self-service analytics through curated datasets.
  • Collaborates with stakeholders to define KPIs and metrics.
  • Improves Internal Processes and Scalability: Identifies, designs, and implements internal process improvements.
  • Automates manual processes and optimizes data delivery.
  • Re-designs infrastructure for greater scalability and performance.
  • Refactors legacy systems for maintainability.
  • Implements CI/CD pipelines for data workflows.
  • Collaborates Across Teams: Works with stakeholders including Executive, Product, Data, and Design teams to support data infrastructure needs.
  • Translates business requirements into technical specifications.
  • Provides mentorship to junior data engineers.
  • Communicates technical concepts to non-technical stakeholders.
  • Supports cross-functional initiatives and agile squads.
  • Ensures Data Governance and Security: Keeps data separate and secure, following all relevant data governance and security protocols.
  • Implements data validation, anomaly detection, and cleansing routines.
  • Collaborates with data governance teams to enforce policies.
  • Audits data for completeness, accuracy, and timeliness.
  • Supports data stewardship and master data management initiatives.
  • Marginal or Periodic Functions: Conducts training sessions for analysts and clinical staff on data tools.
  • Participates in vendor evaluations and proof-of-concept projects.
  • Supports data integration for mergers, acquisitions, or new service lines.
  • Assists in disaster recovery drills and business continuity planning.
  • Contributes to grant proposals or research initiatives requiring data support.
  • Performs related duties as required.
Desired Qualifications
  • Master's Degree in Data Engineering, Computer Science, or related field with at least 5 year(s) of experience in healthcare data engineering or analytics.
  • Advanced SQL skills and hands-on relational database work.
  • Expertise in building and optimizing big data pipelines using Python.
  • Experience managing data transformation, metadata, dependencies, and workload orchestration.
  • Understanding of message queuing, stream processing, and scalable data storage systems.
  • Strong project management skills.
  • AWS Certified Data Analytics
  • Certified Health Data Analyst (CHDA)
  • Project Management Professional (PMP)
University of Texas at Austin

University of Texas at Austin

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