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Full Time Data Science Sustainability Jobs (NOW HIRING)

Arcadis is looking for a full-time Data Management Consultant to join our Water Planning Team! This ... S. or Ph.D. in Data Science, Computer Science, Engineering, Management Information Systems ...

... full-time Data Scientist to join our team in support of our government customer, U.S. Special ... Master's or doctoral degree in quantitative science, social science, or a related discipline

This role lives at the intersection of data science and data strategy. You're equally comfortable ... environment Sustainment offers a competitive benefits package for full time employees including ...

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Sustainability Analyst

Los Angeles, CA · Remote

$129K - $148K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

... full-time Data Scientist to join our team in support of our government customer, U.S. Special ... Bachelor's degree in quantitative science, social science, or a related discipline * Proficiency ...

... that support sustainable growth * Evaluate and improve the tools, processes, metrics and ... Coterie has excellent benefits for all full-time employees. We offer the following: * 100% remote

Sustainability Analyst

Houston, TX · Remote

$115K - $131K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

Sustainability Analyst

Atlanta, GA · Remote

$115K - $132K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

Sustainability Analyst

Tampa, FL · Remote

$113K - $130K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

Sustainability Analyst

Columbus, OH · Remote

$116K - $133K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

Sustainability Analyst

Denver, CO · Remote

$124K - $142K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

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Plano, TX · Remote

$115K - $132K/yr

... Science, Sustainability, or related field * 0 - 3 years practical experience * Demonstrated experience analyzing and managing sustainability or environmental performance data * High proficiency in ...

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Full Time Data Science Sustainability information

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$37.5K

$122.7K

$196.5K

How much do full time data science sustainability jobs pay per year?

As of Jun 11, 2026, the average yearly pay for full time data science sustainability in the United States is $122,738.00, according to ZipRecruiter salary data. Most workers in this role earn between $98,500.00 and $136,000.00 per year, depending on experience, location, and employer.

What is the difference between Full Time Data Science Sustainability vs Full Time Data Analyst Sustainability?

AspectFull Time Data Science SustainabilityFull Time Data Analyst Sustainability
Required CredentialsBachelor's or Master's in Data Science, Statistics, or related fields; knowledge of programming languages like Python or RBachelor's degree in Data Analysis, Statistics, or related fields; proficiency in Excel, SQL, and data visualization tools
Work EnvironmentCollaborative teams, research-focused, often in tech, consulting, or sustainability sectorsBusiness units, reporting teams, often in corporate or environmental organizations
Employer & Industry UsageTech companies, consulting firms, environmental agenciesCorporations, government agencies, NGOs focused on sustainability

Full Time Data Science Sustainability roles focus on advanced data modeling, machine learning, and predictive analytics to support sustainability initiatives. In contrast, Full Time Data Analyst Sustainability positions emphasize data collection, reporting, and visualization to inform sustainability strategies. Both roles require strong analytical skills but differ in technical depth and scope.

More about Full Time Data Science Sustainability jobs
What cities are hiring for Full Time Data Science Sustainability jobs? Cities with the most Full Time Data Science Sustainability job openings:
What are the most commonly searched types of Data Science Sustainability jobs? The most popular types of Data Science Sustainability jobs are:
What job categories do people searching Full Time Data Science Sustainability jobs look for? The top searched job categories for Full Time Data Science Sustainability jobs are:
Infographic showing various Full Time Data Science Sustainability job openings in the United States as of June 2026, with employment types broken down into 82% Full Time, 15% Part Time, and 3% Contract. Highlights an 95% Physical, 1% Hybrid, and 4% Remote job distribution, with an average salary of $122,738 per year, or $59 per hour.
Senior Engineer, Data Science

Senior Engineer, Data Science

Continental Resources

Oklahoma City, OK

Full-time

Posted 23 days ago


Job description

Job Summary

The Senior Engineer, Data Science is a hands-on technical role who designs, builds, and operationalizes advanced analytics and Artificial Intelligence/Machine Learning solutions that drive measurable value across subsurface, drilling and completions, production operations, HSE, and commercial functions at Continental Resources. This role partners with multidisciplinary stakeholders to translate business problems into data-driven solutions, develop robust models and pipelines, and deploy them to production with strong Machine Learning Ops and governance practices. The ideal candidate combines a Master of Science in Data Science with strong applied analytics capability, solid data engineering skills, and practical oil and gas domain experience comparable to a seasoned upstream engineering background.

Duties and Responsibilities

  • Leads the design, development, and deployment of Artificial Intelligence/Machine Learning solutions for upstream subsurface and well operations, including physics-informed and hybrid modeling approaches for reservoir, drilling, and production optimization.
  • Builds advanced Artificial Intelligence/Machine Learning solutions for commercial analytics use cases such as pricing, supply chain, marketing, and trading to improve profitability and decision speed.
  • Executes complex AI initiatives from ideation and discovery through model development, deployment, and sustainment as part of integrated, enterprise-level teams.
  • Architects and implements reliable data pipelines and features using modern data platforms (e.g., Databricks, cloud services), ensuring data quality, lineage, and performance for analytics workloads.
  • Applies Machine Learning Ops best practices to automate training, testing, deployment, monitoring, and model lifecycle management at scale in production environments.
  • Translates complex business problems into analytical approaches with clear hypotheses, success criteria, and measurable outcomes across upstream and commercial domains.
  • Develops and delivers communications that convey a clear understanding of technical concepts, model results, and business implications to diverse technical and non-technical audiences.
  • Builds strong partnerships and cross-functional relationships with geoscience, engineering, operations, commercial, IT, and leadership stakeholders to drive adoption and sustain business impact.
  • Gains the confidence and trust of others through honesty, integrity, and follow-through while championing responsible and secure use of data and AI.
  • Actively seeks new ways to grow and be challenged by staying current on emerging Artificial Intelligence/Machine Learning, generative AI, optimization, and computational techniques relevant to energy and integrating them where they add value.
  • Other duties as assigned.

Skills and Competencies

  • Collaborates- Building partnerships and working collaboratively with others to meet shared objectives.
  • Action oriented- Taking on new opportunities and tough challenges with a sense of urgency, high energy, and enthusiasm.
  • Drives results- Consistently achieving results, even under tough circumstances.
  • Self-development- Actively seeking new ways to grow and be challenged using both formal and informal development channels.
  • Nimble learning- Actively learning through experimentation when tackling new problems, using both successes and failures as learning fodder.
  • Situational adaptability- Adapting approach and demeanor in real time to match the shifting demands of different situations.
  • Instills trust- Gaining the confidence and trust of others through honesty, integrity, and authenticity.

Required Qualifications

  • Bachelor of Science in Petroleum, Mechanical, Chemical, or related Engineering discipline from an accredited college or university and Master of Science in Data Science, or a closely related data science or analytics field, from an accredited college or university.
  • Minimum five (5) years of hands-on experience delivering production-grade data science/Machine Learning solutions, including end-to-end lifecycle from discovery to deployment and sustainment.
  • Proficiency in Python and SQL; experience with Machine Learning frameworks and tooling (e.g., scikit-learn, PyTorch/TensorFlow), and data platforms such as Databricks and cloud services.
  • Experience building and maintaining data pipelines and features and applying Machine Learning Ops practices for model deployment and monitoring in enterprise environments.
  • Demonstrated ability to partner with technical and business domains in energy, including upstream subsurface, drilling/completions, production operations, and/or commercial analytics such as pricing, supply chain, marketing, or trading.
  • An acceptable pre-employment background and drug test.

Preferred Qualifications

  • Oil and gas industry experience, particularly in upstream engineering, subsurface, drilling and completions, production operations, or commercial energy analytics.
  • Background in computational sciences, optimization, or high-performance computing for engineering applications.
  • Familiarity with enterprise data governance, security, and responsible AI practices in regulated environments.
  • Five (5) or more years of combined oil and gas engineering/domain experience and applied data science experience.

Physical Requirements and Working Conditions

  • Requires prolonged sitting, some bending and stooping.
  • Occasional lifting up to 25 pounds.
  • Manual dexterity sufficient to operate a computer keyboard and calculator.

Continental Resources, Inc. provides equal employment opportunities and access for all applicants and employees without regard to race, color, religion, sex (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, national origin, age, disability, genetic information, veteran status, or any other category protected by law.