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Intern Databricks Data Engineer Jobs in Portland, OR

... Databricks Certified Data Engineer / Data Analyst / ML Travel Requirements Up to 80% Job Posting End Date The salary range for this position is: $99,000 - $232,000. Actual compensation within the ...

Use Databricks Catalog for Data Governance and Lineage Tracking; Real-time Change Data Capture ... data engineering from ingestion, transformation, and consumption in addition to designing and ...

Senior Data Architect

Beaverton, OR ยท On-site

$70 - $93.75/hr

... Databricks, Snowflake and Hive bigdata implementations to support data, BI Analytics and AI/ML ... Work with engineering squads to create physical data designs and business rule implementation

You will partner closely with data engineers and data scientists to improve data reliability ... Familiar with VSCode and Databricks Ideally Ability to interpret telemetry and pipeline outputs in ...

Module Engineering Undergraduate Intern

Hillsboro, OR ยท On-site

$18.25 - $23.75/hr

As an intern, learns and applies knowledge, builds skills, and explores future career opportunities ... Chemistry, Data Science, Math, Statistics, Computer Engineering, or Computer Science Preferred ...

As a Data Scientist, your primary role will be to develop custom fraud detection, credit risk ... Hands on experience with Python, Spark SQL, XGBoost, and Databricks a plus * Strong Programming ...

As a Data Scientist, your primary role will be to develop custom fraud detection, credit risk ... Hands on experience with Python, Spark SQL, XGBoost, and Databricks a plus * Strong Programming ...

As a Data Scientist, your primary role will be to develop custom fraud detection, credit risk ... Hands on experience with Python, Spark SQL, XGBoost, and Databricks a plus * Strong Programming ...

As a Data Scientist, your primary role will be to develop custom fraud detection, credit risk ... Hands on experience with Python, Spark SQL, XGBoost, and Databricks a plus * Strong Programming ...

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Intern Databricks Data Engineer information

See Portland, OR salary details

$14

$26

$41

How much do intern databricks data engineer jobs pay per hour?

As of Jul 18, 2026, the average hourly pay for intern databricks data engineer in Portland, OR is $26.95, according to ZipRecruiter salary data. Most workers in this role earn between $21.92 and $30.58 per hour, depending on experience, location, and employer.

What is the difference between Intern Databricks Data Engineer vs Intern Data Analyst?

AspectIntern Databricks Data EngineerIntern Data Analyst
Required SkillsSQL, Python, Spark, Databricks platformExcel, SQL, data visualization tools
Work EnvironmentData engineering teams, cloud platformsBusiness intelligence teams, reporting environments
Industry UsageTech, finance, healthcareRetail, marketing, finance

Intern Databricks Data Engineers focus on building data pipelines and managing large-scale data workflows using Databricks and Spark, while Intern Data Analysts primarily analyze data and create reports. Both roles require SQL and basic programming skills, but Data Engineers need more technical expertise in data infrastructure, whereas Data Analysts focus on interpreting data for business insights.

What are the most commonly searched types of Databricks Data Engineer jobs in Portland, OR? The most popular types of Databricks Data Engineer jobs in Portland, OR are:
What are popular job titles related to Intern Databricks Data Engineer jobs in Portland, OR? For Intern Databricks Data Engineer jobs in Portland, OR, the most frequently searched job titles are:
What job categories do people searching Intern Databricks Data Engineer jobs in Portland, OR look for? The top searched job categories for Intern Databricks Data Engineer jobs in Portland, OR are:
Infographic showing various Intern Databricks Data Engineer job openings in Portland, OR as of July 2026, with employment types broken down into 71% Full Time, 8% Temporary, and 21% Contract. Highlights an 86% In-person, and 14% Remote job distribution, with an average salary of $56,065 per year, or $27 per hour.

Associate Director, Data Engineering (Remote)

Monks

Portland, OR โ€ข On-site, Remote

$121K - $145K/yr

Other

Posted 9 days ago


Job description

About the Role

.Monks is a digital-first marketing and advertising services company connecting the dots across content, data & digital media and technology services. Inspired by the connectivity and flexibility of technology APIs, .Monks' single-P&L model offers brands seamless access to a nearly 6,000-strong team of digital talent organized across 57 talent hubs in 33 countries.ย 

With us, you'll find a diverse group of colleagues with different backgrounds and perspectives. We believe everyone has something of value to offer, and that sustaining a truly diverse, equitable and inclusive workplace begins with fostering an environment where people can be themselves, authentically, every day. We want to build something with the potential to change the heart of our industry, and we'd love to include your unique perspective.

Media Analytics

As .Monks continues to expand our Global Enterprise Analytics capabilities, we are looking for a forward-deployed data engineer to serve as a high-exposure individual contributor embedded directly within our client's business. In this role, your primary responsibility will be building, maintaining, and scaling production-level data pipelines and infrastructure within the client's ecosystem. You will architect robust data engineering solutions and write production-level code to ensure data integrity and scalability. While this is an engineering-first role, you will also work with the Data Science team to assist in their application of statistical modeling and machine learning to help turn raw data into actionable business decisions. This position requires a unique combination of deep technical engineering expertise and the business acumen to drive services development from within the client's business.

Responsibilities:
  • Design, build, and maintain scalable, reliable, and automated data pipelines using SQL, Python, and Databricks to support enterprise analytics.
  • Architect and optimize robust data models and infrastructure to ensure high data quality, integrity, and accessibility across the client's ecosystem.
  • Partner closely with the Data Science team to operationalize their work, deploying statistical and machine learning models into production environments using DataOps best practices.
  • Identify, design, and implement internal process improvements, including automating manual data processes and optimizing data delivery for scalability.
  • Collaborate with cross-functional teams to identify business problems, gather requirements, identify data sources, and provide data-driven solutions.
The Ideal Candidate

You are a Data Engineer who approaches data engineering as a software engineering discipline. You have experience building reliable, scalable, and maintainable data platforms using modern cloud-native technologies and engineering best practices. You are a proactive problem-solver who thrives in ambiguity. You take ownership of the full development lifecycle, are driven to understand the broader environment you work in, and actively identify and solve technical challenges (such as data inconsistencies or pipeline optimizations) without being prompted. You are a strong communicator and effectively kick-start your projects, seeking in-process guidance rather than waiting for project deadlines.

Requirements:

We are looking for someone who is experienced and familiar with the following tools:

  • Strong experience designing and building scalable data pipelines using modern cloud data platforms.
  • Solid understanding of modern data architecture, including ELT, data lakes/lakehouses, data warehouses, and metadata-driven frameworks.
  • Experience applying software engineering best practices to data development, including:
    • Version control (Git)
    • Code reviews and pull request workflows
    • Modular, reusable, and testable code
    • CI/CD pipelines
    • Automated testing (unit, integration, and data quality tests)
    • Infrastructure as Code
  • Proficiency in Python and SQL, with a focus on clean, maintainable, and well-tested code.
  • Experience with orchestration frameworks and workflow automation.
  • Familiarity with data modeling, data governance, lineage, observability, and monitoring.
  • Experience working in Agile teams and collaborating across engineering, analytics, and business stakeholders.
  • Ability to design metadata-driven and configuration-driven solutions instead of hard-coded implementations.
The essentials:
  • A Bachelor's or Master's degree in Computer Science, Statistics, Applied Mathematics, or a related quantitative field (or equivalent practical experience)
  • 5+ years of experience in data engineering, data warehousing, or building data infrastructure for marketing and business applications
  • Hands-on experience working with common ETL tools
  • Expertise across programmatic display, video, native, and ad serving technology, as well as digital advertising reporting, measurement, and attribution tools
  • Adept to agile methodologies and well-versed in applying DataOps methods to the construction of pipelines and delivery
  • Demonstrated ability to effectively operate both independently and in a team environment
  • Experience in the client/consulting workplace and capable of reprioritization based on evolving client needs
  • Added Bonus: You have expertise in designing and deploying AI workflows directly into a client's business environment

At Monks, we believe in fostering an environment where a diversity of perspectives can thrive. We proactively work to design hiring processes that promote equity and inclusion while mitigating bias. We celebrate diversity and are committed to building a team that reflects the communities we serve. We welcome and encourage qualified applicants, from all backgrounds, who are excited to contribute to our mission. ย 

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