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Remote Data Optimization Jobs in Houston, TX (NOW HIRING)

Modeling Scientist

Houston, TX · On-site +1

$100K - $160K/yr

Remote Base Salary Range : $100k - $160k base salary The Modeling Scientist is responsible for ... optimization * Apply probabilistic methods to integrate data, models, and uncertainty across ...

... manual intervention for optimal efficiency and precision. * Collaborate closely with key ... Ensure data quality and reporting data integrity. * Coordinate with other database stakeholder to ...

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Remote Data Optimization information

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How much do remote data optimization jobs pay per hour?

As of Jul 17, 2026, the average hourly pay for remote data optimization in Houston, TX is $54.25, according to ZipRecruiter salary data. Most workers in this role earn between $44.52 and $64.28 per hour, depending on experience, location, and employer.

What is a Remote Data Optimization specialist?

A Remote Data Optimization specialist is a professional who works remotely to analyze, refine, and improve data systems and processes for organizations. Their main goal is to enhance the efficiency, accuracy, and usability of data, often by cleaning datasets, streamlining data flows, and implementing best practices for data management. They may use various tools and techniques to ensure data integrity and improve how data is stored, accessed, and utilized. These specialists often collaborate with data analysts, engineers, and business teams to support data-driven decision-making.

What is a data optimization job example?

A data optimization job involves analyzing and improving data quality, structure, and storage to enhance efficiency and accuracy. For example, optimizing database queries or cleaning large datasets using tools like SQL or Python helps organizations make better data-driven decisions.

What is the highest paying job in data?

In data-related fields, roles such as Chief Data Officer, Data Science Director, and Machine Learning Engineer tend to have the highest salaries, often exceeding six figures annually. These positions typically require advanced skills in data analysis, machine learning, and leadership, along with relevant certifications and experience.

What are some common challenges faced by professionals in remote data optimization roles, and how can they be addressed?

Remote data optimization professionals often encounter challenges such as coordinating with distributed teams, ensuring data accuracy across different systems, and managing time effectively without in-person supervision. To address these, it's important to establish clear communication channels, use collaborative tools for data sharing and project tracking, and set regular check-ins with team members. Additionally, staying updated on best practices and automation tools can help streamline workflows and enhance data quality, making remote work more efficient and productive.

Is it possible to get a remote job as a data analyst?

Yes, remote data analyst positions are widely available across various industries. These roles typically require skills in data analysis tools like Excel, SQL, or Python, and often involve working with cloud-based platforms or collaboration tools. Many companies offer remote work options for data analysts, especially with experience in data visualization and reporting.

Is 40 too late for data science?

Remote Data Optimization roles often value skills and experience over age, and many professionals transition into data science later in their careers. Learning relevant tools like Python, SQL, and machine learning can help, and continuous education or certifications can improve job prospects regardless of age.

What are the key skills and qualifications needed to thrive as a Remote Data Optimization Specialist, and why are they important?

To excel as a Remote Data Optimization Specialist, you need a solid background in data analysis, strong proficiency in statistics, and experience with optimization techniques, typically supported by a degree in data science, mathematics, or a related field. Familiarity with data visualization tools (like Tableau or Power BI), programming languages (such as Python or R), and database systems is commonly required. Strong problem-solving abilities, attention to detail, and effective communication skills set top performers apart in this role. These competencies are vital for translating complex data into actionable insights and driving efficiency improvements from a remote environment.

What is the difference between Remote Data Optimization vs Remote Data Analyst?

AspectRemote Data OptimizationRemote Data Analyst
Primary FocusImproving data storage, retrieval, and processing efficiencyAnalyzing data to identify trends and generate reports
Required SkillsData management, database tuning, scriptingData analysis, visualization, statistical skills
CertificationsDatabase certifications, data management credentialsData analysis certifications, SQL proficiency
Work EnvironmentTechnical teams, IT departments, data warehousesBusiness units, marketing, finance teams

Remote Data Optimization specialists focus on enhancing data systems' performance, while Remote Data Analysts interpret data to support decision-making. Both roles require strong technical skills, but their core responsibilities differ significantly, making them distinct career paths within data management and analysis.

What are popular job titles related to Remote Data Optimization jobs in Houston, TX? For Remote Data Optimization jobs in Houston, TX, the most frequently searched job titles are:
What cities near Houston, TX are hiring for Remote Data Optimization jobs? Cities near Houston, TX with the most Remote Data Optimization job openings:

Modeling Scientist

Arva Intelligence

Houston, TX • On-site, Remote

$100K - $160K/yr

Other

Posted 4 hours ago


Job description

Job Title:                          Modeling Scientist (Uncertainty Quantification)

Department:                     Modeling & Analytics

Reports to:                       Lead Modeling Scientist

Location:                          Remote

Base Salary Range:        $100k - $160k base salary

The Modeling Scientist is responsible for improving model traceability, uncertainty quantification, and predictive trustworthiness in Arva's ecosystem model predictions. This role is central to advancing Arva's monitoring, reporting, and verification platform for greenhouse gas emission reductions and removals.

Working at the intersection of statistics, machine learning, and process-based ecosystem modeling, this role works closely with ecosystem modelers and data engineers to design robust model traceability and uncertainty frameworks that support transparent, decision-ready outputs for customers, partners, and environmental markets. The Modeling Scientist plays a critical role in translating scientific rigor into real-world impact through credible, auditable modeling systems.

Primary Job Responsibilities

Uncertainty Quantification and Model Evaluation

  • Generate and apply model traceability framework for ecosystem and biogeochemical models to enable rigorous model testing and improvements
  • Design and implement uncertainty quantification framework for the models, including parameter, structural, aleatory, and epistemic uncertainties
  • Apply sensitivity analysis, multivariate testing, and cross-validation to evaluate model robustness and generalizability across space and time
  • Quantify and communicate model confidence, uncertainty bounds, and performance metrics

Statistical and Probabilistic Modeling

  • Develop hierarchical and Bayesian approaches to support distributed and iterative model optimization
  • Apply probabilistic methods to integrate data, models, and uncertainty across scenarios
  • Analyze model outputs to diagnose limitations and inform model improvement strategies

Machine Learning and Model Integration

  • Integrate machine learning techniques with process-based or mechanistic models to improve predictive performance and scalability
  • Partner with data engineers to implement reproducible, scalable modeling pipelines
  • Contribute to the design of model evaluation and optimization workflows

Scientific Communication and Documentation

  • Communicate uncertainty, confidence intervals, and model performance clearly to internal teams and external stakeholders
  • Contribute to scientific reports, transparent model documentation, and peer-reviewed publications as appropriate
  • Support defensible, auditable model outputs suitable for regulatory and credit market review

Key Competencies / Requirements

  • 5+ years demonstrated experience in uncertainty quantification, probabilistic modeling, and data model integration
  • Advanced proficiency in Python and scientific computing, with experience building reproducible modeling pipelines
  • Strong software engineering practices, including writing modular, testable, and well-documented code
  • Deep commitment to scientific rigor, transparency, and integrity
  • Experience integrating machine learning with process-based or mechanistic models preferred
  • Familiarity with ecosystem or Earth system models such as DayCent or CESM preferred
  • Familiarity with cloud platforms and data systems, including AWS and relational or spatial databases, preferred
  • Master's or PhD degree or equivalent experience in Statistics, Applied Mathematics, Environmental Science, Earth System Science, Biology, or a related quantitative field

Responsibilities:

  • Generate and apply a model traceability framework for ecosystem and biogeochemical models to enable rigorous model testing and improvements.
  • Design and implement an uncertainty quantification framework, including parameter, structural, aleatory, and epistemic uncertainties.
  • Apply sensitivity analysis, multivariate testing, and cross-validation to evaluate model robustness and generalizability.
  • Quantify and communicate model confidence, uncertainty bounds, and performance metrics.
  • Develop hierarchical and Bayesian approaches for distributed and iterative model optimization.
  • Apply probabilistic methods to integrate data, models, and uncertainty across scenarios.
  • Analyze model outputs to diagnose limitations and inform model improvement strategies.
  • Integrate machine learning techniques with process-based models to improve predictive performance.
  • Partner with data engineers to implement reproducible, scalable modeling pipelines.
  • Contribute to the design of model evaluation and optimization workflows.
  • Communicate uncertainty, confidence intervals, and model performance clearly to stakeholders.
  • Contribute to scientific reports, model documentation, and peer-reviewed publications.
  • Support defensible, auditable model outputs for regulatory and credit market review.

 Employment Eligibility

Only applicants currently, and in the future, eligible to work in the United States will be considered for this position. 

Summary: The Modeling Scientist is responsible for enhancing model traceability, uncertainty quantification, and predictive trustworthiness within Arva's ecosystem model predictions. This role is pivotal in advancing Arva's platform for monitoring, reporting, and verifying greenhouse gas emission reductions and removals. Collaborating at the intersection of statistics, machine learning, and process-based ecosystem modeling, the Modeling Scientist ensures robust model traceability and uncertainty frameworks, delivering transparent, decision-ready outcomes for customers, partners, and environmental markets.