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Environmental Data Science Jobs in Oregon (NOW HIRING)

As Vice President of Data Science, you will lead and grow our in-house data science team. This team ... practices (Python, data platforms, cloud-native environments, APIs, ML Ops tooling)

Description We're seeking an exceptional, hands-on Data Scientist with deep expertise in data ... Track record of cross-functional collaboration in a large enterprise environment * Ability to work ...

OR

$85K/yr

As Manager I, Data Science, you will work with a team of analysts, data scientists, and engineers ... Inroads offers a friendly work environment and competitive compensation and benefits package ...

... science systems across multiple SaaS products with end-to-end influence, emphasizing applied problem solving, data investigation, and system improvement. If you thrive in a fast-paced environment and ...

... science systems across multiple SaaS products with end-to-end influence, emphasizing applied problem solving, data investigation, and system improvement. If you thrive in a fast-paced environment and ...

OR · On-site

Experience working with large datasets and distributed data processing environments. * Proficiency in Python, SQL, and common data science and machine learning frameworks. * Experience communicating ...

AI Data Science Engineer III Our Deloitte Human Capital team transforms technology platforms ... Ability to manage and prioritize multiple tasks in a fast-paced and dynamic environment * Strong ...

... and frontline environments. Our mission is to make the lives of blue-collar workers easier ... Lead advanced data science initiatives, including predictive modeling, segmentation, and ...

Partner with Engineering and Data Science to define requirements for secure, scalable, compliant RWD infrastructure and analytic environments. * Ensure data quality, interoperability, and governance ...

OR · On-site

MS/Ph.D in Data Science, Statistics, Applied Mathematics, Engineering, or similar quantitative ... environments. * Generative AI & Agents: * Demonstrated experience applying Generative AI to real ...

OR · On-site

... environment and make a difference. If this is your profile, we want to hear from you. We are ... Acting as the primary data science representative to global regulatory authorities, this individual ...

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Environmental Data Science information

See Oregon salary details

$39.6K

$129.8K

$207.8K

How much do environmental data science jobs pay per year?

As of Jun 15, 2026, the average yearly pay for environmental data science in Oregon is $129,770.00, according to ZipRecruiter salary data. Most workers in this role earn between $104,100.00 and $143,800.00 per year, depending on experience, location, and employer.

What does an environmental data scientist do?

An environmental data scientist analyzes environmental data to identify patterns, assess environmental risks, and support decision-making. They use statistical tools, programming languages like Python or R, and GIS software to interpret data related to climate, pollution, and natural resources, often working in research or consulting settings.

Can data scientists make $300k?

Environmental data scientists can potentially earn $300,000 or more at senior levels or in specialized roles, especially with extensive experience, advanced skills in machine learning, and working in high-demand industries or organizations. However, such salaries are typically achieved through seniority, leadership positions, or in regions with higher compensation standards.

What is Environmental Data Science?

Environmental Data Science is an interdisciplinary field that uses statistical, computational, and analytical techniques to collect, analyze, and interpret large sets of data related to the environment. Professionals in this field work on issues like climate change, pollution, biodiversity, and natural resource management by extracting meaningful insights from complex environmental datasets. Their work supports decision-making for policy, conservation, and sustainability initiatives. Environmental data scientists often collaborate with ecologists, geographers, and policymakers to address environmental challenges using data-driven approaches.

Is 40 too late for data science?

Environmental Data Science is a field that values skills and experience over age, and many professionals transition into it later in their careers. Gaining relevant knowledge in programming, statistics, and environmental science can be achieved at any age, and employers often prioritize expertise and problem-solving ability over age-related factors.

What are some common challenges faced by environmental data scientists when working with real-world datasets?

Environmental data scientists often encounter challenges such as incomplete or inconsistent data, varying data formats, and the need to integrate information from multiple sources like sensors, satellites, and field observations. Addressing missing values, data quality issues, and ensuring proper geospatial alignment can be time-consuming but is essential for producing reliable analyses. Collaboration with domain experts and stakeholders is frequently required to interpret findings and ensure that the results are actionable for environmental policy or management decisions.

What is the difference between Environmental Data Science vs Environmental Data Analyst?

AspectEnvironmental Data ScienceEnvironmental Data Analyst
Required CredentialsTypically requires a degree in data science, environmental science, or related fields; often includes programming and statistical certificationsUsually requires a degree in environmental science, geography, or related fields; may include basic data analysis certifications
Work EnvironmentResearch labs, data centers, environmental agencies, or consulting firmsEnvironmental agencies, research organizations, or consulting firms
Employer & Industry UsageUsed in environmental research, climate modeling, and policy analysisUsed in environmental monitoring, reporting, and data interpretation

Environmental Data Science focuses on developing models and algorithms to analyze complex environmental data, often requiring advanced programming skills. In contrast, Environmental Data Analysts primarily interpret and visualize environmental data to support decision-making. Both roles are vital but differ in technical depth and scope.

What is the highest paying environmental science job?

Environmental Data Science roles such as senior environmental data scientists or environmental analytics managers tend to have the highest salaries in the field, often exceeding $100,000 annually. These positions typically require advanced skills in data analysis, programming, and environmental modeling, and may involve leadership responsibilities or specialized expertise in areas like climate modeling or sustainability analytics.

What are the key skills and qualifications needed to thrive as an Environmental Data Scientist, and why are they important?

To thrive as an Environmental Data Scientist, you need strong quantitative skills, expertise in environmental science, and a relevant degree in data science, statistics, or a related field. Familiarity with data analysis tools such as Python, R, GIS software, and experience with large datasets or machine learning techniques is typical. Exceptional problem-solving abilities, communication skills, and attention to detail set top performers apart in this field. These competencies are crucial for effectively interpreting complex environmental data, informing policy, and driving impactful sustainability initiatives.
What are the most commonly searched types of Environmental Data Science jobs in Oregon? The most popular types of Environmental Data Science jobs in Oregon are:
What are popular job titles related to Environmental Data Science jobs in Oregon? For Environmental Data Science jobs in Oregon, the most frequently searched job titles are:
What job categories do people searching Environmental Data Science jobs in Oregon look for? The top searched job categories for Environmental Data Science jobs in Oregon are:
What cities in Oregon are hiring for Environmental Data Science jobs? Cities in Oregon with the most Environmental Data Science job openings:
Vice President, Data Science

Other

Posted 23 days ago


Job description

As Vice President of Data Science, you will lead and grow our in-house data science team. This team is responsible for research, experimentation, data collection and curation, and data analysis that contributes to the performance of Five9's AI products. Tasks include evaluation of and selection of AI agent architectural frameworks, evaluation and comparison of LLM models across commercial and open source choices, model fine-tuning for dedicated tasks, prompt engineering, prompt structure and design, and composite model definitions and evaluations. The scale of Five9 provides a wealth of data that data science team has access to. The data science team is very much applied - their work directly makes its way into real products providing direct customer benefit. 

As lead of this team, you will take complete ownership of the technical and operational direction of the organization, including growing to team to meet increased demand for its capabilities. 

Key Responsibilities:

  • Technical Direction Setting: As an expert in the leading edge of AI and data science, you will direct the team on the methodologies, practices, algorithms, experiments and processes they perform.
  • Hands On: You are expected to also be hands on, not just a manger, and be directly responsible for some amount of the technical work in addition to directing the team.
  • Organizational Growth: You will be tasked with  growing the team, and ensuring we have the right talent to accomplish our goals.
  • Collaborator and Spokesperson: You will act as an internal and external spokesperson for data science, and collaborate with stakeholders across the company. Internally, you will be expected to meet with product managers, executives and estaff, and be able to converse effectively with them. You will also occasionally meet with customers to understand how Five9 products, and the data science behind them, impacts the customers. You are expected to participate in industry activities, including publication of blog posts and papers, along with participation in AI conferences. 

Technical Expertise:

  • 12+ years experience in data science or AI applied research, ideally at a best-in-class applied research organization.
  • Deep Expertise in Modern AI/ML
    • Extensive hands-on experience with LLMs, agentic architectures, retrieval-augmented systems, transformers, and composite model pipelines.
    • Strong understanding of commercial and open-source model ecosystems (e.g., OpenAI, Anthropic, Google, Meta, Mistral), including evaluation, benchmarking, and tradeoff analysis.
  • Model Development & Optimization
    • Proven ability to perform fine-tuning, supervised/unsupervised training, prompt engineering, prompt optimization, and model orchestration for real-world use cases.
    • Experience designing evaluation frameworks, experiment methodologies, and robust model comparison workflows.
  • Data Engineering & Curation
    • Expertise in large-scale data collection, labeling, cleaning, and curation pipelines, preferably with conversational or unstructured text data.
    • Familiarity with tools and techniques for data quality assessment, dataset versioning, and data governance.
  • Applied Data Science & Analytics
    • Strong proficiency in statistical analysis, A/B experimentation, causal inference, and performance measurement.
    • Demonstrated success turning data insights into product improvements that drive measurable business outcomes.
  • Software Development & Systems Thinking
    • Ability to work with engineering teams using modern software practices (Python, data platforms, cloud-native environments, APIs, ML Ops tooling).
    • Understanding of production ML systems, deployment patterns, monitoring, and safety/guardrail design. 

People & Collaboration Skills:

  • Cross-Functional Partnering
    • Ability to collaborate effectively with product managers, engineering leaders, UX, and GTM teams to translate business needs into data science strategies.
    • Adept at explaining complex technical concepts to executives, customers, and non-technical stakeholders.
  • Communication & Storytelling
    • Exceptional written and verbal communication skills, including ability to publish thought leadership (papers, blog posts) and present at conferences.
  • Team Development & Mentorship
    • Passion for mentoring senior and junior data scientists, fostering technical excellence, and building a culture of experimentation and rigorous thinking.
  • Customer Empathy
    • Experience engaging directly with customers to understand their needs, gather feedback, and translate insights into product or model improvements.

Leadership & Strategic Skills:

  • Vision Setting & Direction
    • Ability to define the data science strategy for AI Agents and customer experience products, aligning with corporate priorities and market opportunities.
  • Hands-On Leadership
    • Comfortable being an active contributor-writing code, running experiments, reviewing research-while simultaneously guiding the team's overall direction.
  • Organizational Scaling
    • Experience hiring, scaling, and structuring high-performing data science teams across multiple geographies.
  • Operational Excellence
    • Ability to build processes for experimentation, model evaluation, data quality management, and continuous delivery of data science innovation into product.
  • Executive Presence & Influence
    • Skilled at influencing E-staff and senior leadership, defending technical decisions, shaping product strategy, and representing data science internally and externally.
  • Ethics, Safety & Risk Awareness
    • Deep understanding of responsible AI principles, privacy considerations, and model safety, including evaluating risks when operating at enterprise scale.

Educational Requirements:

Advanced degree in a quantitative or technical field, such as:

  • Ph.D. in Computer Science, Machine Learning, Artificial Intelligence, Statistics, Applied Mathematics, Electrical Engineering, Computational Linguistics, or a related field.
  • Master's degree in one of the above fields with significant applied industry experience in AI/ML leadership roles.