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Remote Analytics Engineer Jobs in Oregon (NOW HIRING)

Analytics Engineer

OR · On-site +1

$140K - $170K/yr

US Remote Reports To: Director of Data and Analytics Salary Range: $140,000-$170,000 Position Summary: The Analytics Engineer sits at the heart of IEM's modern data stack, turning raw source data ...

How This Role Makes a Difference The Enterprise Performance Analytics Engineer will support the ... Remote within the United States. This role requires 100% of work to be performed in a remote office ...

Lead GTM Analytics Engineer

OR · Remote

$160K - $170K/yr

The Lead GTM Analytics Engineer owns the data model that powers Valimail's go-to-market execution ... Remote First Company, you can work anywhere within the US * Unlimited and flexible PTO. We believe ...

Senior Data Analytics Engineer

OR · On-site +1

$130K - $175K/yr

We are seeking an innovative Senior Data Engineer to join our Startup AI and Data Analytics ... Join our Remote-First Global Work Community: WorkWave provides an innovative and dynamic remote ...

Senior Data Analytics Engineer

OR · On-site +1

$130K - $175K/yr

We are seeking an innovative Senior Data Engineer to join our Startup AI and Data Analytics ... Join our Remote-First Global Work Community: WorkWave provides an innovative and dynamic remote ...

Founded by The Allstate Corporation in 2016, Arity is a fully remote data and analytics company ... You will lead a team of data and infrastructure engineers in the overall delivery of data solutions ...

Software Engineer (US-Remote) ID: 1191 Location: US-Remote or Marlton, NJ area Description A ... Utilize AI-assisted development tools (e.g., LLM coding assistants, code analysis tools) to enhance ...

Senior Data Engineer

$105K - $150K/yr

SKILLS & COMPETENCIES Coach and mentor the Analytics Engineering team: guiding, planning, and ... Work Environment Remote Travel may be required up to 15% locally or nationally Pay Transparency ...

This is a remote opportunity and we would be interested in applicants from USA time zones only at ... calendars, analytics tools) * Architect data flows for retrieval-augmented generation (RAG ...

This is a remote opportunity and we are looking for candidates from the U.S. The Opportunity ... calendars, analytics tools) * Architect data flows for retrieval-augmented generation (RAG ...

This position is remote-friendly. Position Overview: We are building a data-driven understanding of how our engineering organization operates, and we're looking for a Data Analyst focused on ...

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Remote Analytics Engineer information

What is a Remote Analytics Engineer job?

A Remote Analytics Engineer is responsible for designing, building, and maintaining the data infrastructure that enables data-driven decision-making. They work with data pipelines, ETL processes, and data warehouses to ensure accurate and efficient data flow. This role typically requires expertise in SQL, Python, and data modeling, as well as experience with cloud platforms and analytics tools. Since the position is remote, strong communication and collaboration skills are essential for working with distributed teams.

What are the key skills and qualifications needed to thrive in the Remote Analytics Engineer position, and why are they important?

To thrive as a Remote Analytics Engineer, you should have a strong background in data analysis, data engineering, and statistical modeling, usually supported by a degree in computer science, statistics, or a related field. Expertise in tools like SQL, Python, R, cloud platforms (such as AWS or Google Cloud), and experience with data visualization tools or certifications (e.g., Google Data Analytics) are typically required. Excellent communication, problem-solving abilities, and self-motivation are vital soft skills for effective remote collaboration and delivering analytical insights. These competencies ensure you can manage complex data pipelines, work seamlessly with distributed teams, and provide actionable results that support business decisions.

What are the main challenges faced by Remote Analytics Engineers, and how are they overcome?

Remote Analytics Engineers often encounter challenges such as coordinating across different time zones, maintaining clear communication with team members, and managing large datasets securely from a distance. These are typically addressed by leveraging collaboration tools (like Slack, Jira, or Zoom), following best practices in data security, and setting consistent check-in routines with the team. Additionally, remote engineers often use robust documentation and automated workflows to ensure data quality and project transparency. Building strong relationships and staying proactive in communication helps pave the way for successful collaboration and project delivery.
What are the most commonly searched types of Analytics Engineer jobs in Oregon? The most popular types of Analytics Engineer jobs in Oregon are:
What job categories do people searching Remote Analytics Engineer jobs in Oregon look for? The top searched job categories for Remote Analytics Engineer jobs in Oregon are:
What cities in Oregon are hiring for Remote Analytics Engineer jobs? Cities in Oregon with the most Remote Analytics Engineer job openings:
Infographic showing various Remote Analytics Engineer job openings in Oregon as of May 2026, with employment types broken down into 9% Internship, 82% Full Time, and 9% Part Time. Highlights an 100% Remote job distribution.

$140K - $170K/yr

Other

Posted 16 days ago


Job description

Location: US Remote

Reports To: Director of Data and Analytics

Salary Range: $140,000-$170,000

Position Summary:

The Analytics Engineer sits at the heart of IEM's modern data stack, turning raw source data into the clean, well-modeled, business-ready datasets that power Tableau dashboards, executive decisions, and self-service analytics across Finance, Production, Supply Chain, and Engineering. Working primarily in dbt and Snowflake, you own the transformation layer between ingestion and the BI surface: staging models, intermediate logic, dimensional models, tests, and documentation. This is a hands-on individual contributor role with real ownership of production data models and a clear path into senior and principal analytics engineering as the team grows.

Key Responsibilities:

Ideal Candidate Profile 

You have 4 to 6 years of experience building production analytics models in cloud environments, with strong dbt and SQL fundamentals and meaningful Snowflake exposure. You think in grain, keys, and tests before you think in dashboards. You write clean, documented, peer-reviewed code and pride yourself on the readability of your YAML. You partner naturally with business stakeholders, translating fuzzy operational questions into well-shaped datasets and surfacing the questions behind the questions. You are comfortable working alongside data engineers on ingestion, with BI developers on consumption, and with finance and operations leaders on definitions. You are excited about AI's role in modern analytics work and already use AI coding assistants and agents as a daily multiplier for SQL, dbt, testing, and documentation.

  • dbt Transformation Models: Design, build, test, and document dbt models that turn raw Snowflake data into clean, reliable, analytics-ready datasets across Finance, Production, Supply Chain, and Engineering 
  • Dimensional Modeling: Build conformed dimensions, fact tables, and reporting models that balance performance, maintainability, and business user accessibility for Tableau dashboards and ad-hoc analysis 
  • Data Quality: Author and maintain dbt tests, monitor freshness, investigate data quality issues end-to-end, and own resolution through to root cause 
  • Business Partnership: Partner with cross-functional stakeholders and the Business Intelligence team (Finance, Production, Supply Chain, Engineering) to translate operational needs into scalable data models and reliable metrics. 
  • Semantic Consistency: Establish and document standardized metric definitions and reusable data models to ensure consistency, accuracy, and alignment across all reporting. 
  • Documentation: Maintain clear model descriptions, column-level documentation, and lineage notes that the team and downstream BI developers actually use 
  • Engineering Standards: Participate in code reviews, follow Git workflows and CI/CD practices, and contribute to evolving the team's modeling conventions and deployment standards 
  • Source Integration: Partner with the data engineering function on Fivetran and custom ingestion to ensure raw data lands in shapes that downstream models can rely on 
  • BI Enablement: Collaborate with BI developers and analysts to structure datasets for optimal Tableau performance and effective self-service analytics. 
  • AI-Assisted Development: Use AI coding assistants and agent-based tools to accelerate model development, test generation, refactoring, and documentation. Manage AI agents as part of your daily workflow to increase throughput and quality 
  • Continuous Learning: Stay current with the modern data stack and analytics engineering practices, bringing ideas back to the team and helping raise the bar over time 

Qualifications:

  • Bachelor's degree in Computer Science, Information Systems, Data Science, Engineering, or a related field (or equivalent experience), with 4-6 years of experience in analytics engineering, data engineering, or BI development, including ownership of production data models  
  • Strong SQL skills with experience in data transformation, complex querying, and performance optimization on large datasets  
  • Hands-on experience with dbt, including incremental models, tests, macros, snapshots, and documentation  
  • Experience working with Snowflake or a comparable cloud data warehouse, along with familiarity with ELT tools (e.g., Fivetran)  
  • Solid understanding of dimensional modeling (grain, surrogate keys, slowly changing dimensions, star schemas)  
  • Working knowledge of Python for data processing, scripting, or lightweight integrations  
  • Familiarity with Tableau or similar BI tools, with an understanding of how data structure impacts performance  
  • Experience with Git and modern development practices, including code reviews and CI/CD workflows  
  • Strong communication skills, with the ability to translate technical concepts for business stakeholders and gather requirements effectively  
  • A collaborative team player who is open to training, mentoring, and working closely with non-technical stakeholders 
  • Self-motivated and able to work independently while collaborating across distributed teams  
  • Experience leveraging AI coding assistants (e.g., Copilot, Claude) to support analytics engineering tasks such as SQL development, dbt modeling, testing, and documentation 

Preferred Qualifications 

  • Experience with manufacturing, construction, or project-based systems (e.g., Procore, ERP platforms like Infor, SAP, Oracle)  
  • Familiarity with semantic layers, metrics frameworks, or data cataloging and lineage tools 

Location 

Fully remote within the United States. May require up to 10% travel to IEM facilities for team collaboration, project kickoffs, and stakeholder meetings.