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Modeling Scientist

Arva Intelligence · Houston, Texas · Remote · Active · $100,000–$160,000 / year · Greenhouse

Job facts

FieldValue
CompanyArva Intelligence
TitleModeling Scientist
Normalized title-
Department / teamResearch and Innovation
LocationHouston, TX, United States
Work modelRemote / Remote
Employment type-
Salary$100,000–$160,000 / year
Statusactive
ATS providerGreenhouse
Posted / first seen2026-06-17 / 2026-06-18
Changed / last seen2026-06-18 / 2026-06-23

Related slices

PageWhat it containsOpen
Company jobsActive postings from Arva Intelligence.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through Greenhouse.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in Houston.Open
Department jobsActive postings in Research and Innovation.Open
Work model jobsActive Remote postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyArva Intelligence
Source0bf34f3a-a7c8-4f1e-af0b-6b7580a9dca1
ATS providerGreenhouse

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.

Full job record

Job ID1bb6e5c863c9674ada5a2aa006421fe2d2ea7469
Org IDf06fbd7c-6a07-4004-a76b-9d42f3eb0880
Source ID0bf34f3a-a7c8-4f1e-af0b-6b7580a9dca1
Board ID0bf34f3a-a7c8-4f1e-af0b-6b7580a9dca1
Providergreenhouse
Provider Job Key5255587008
TitleModeling Scientist
Normalized Title
Statusactive
Activeyes
Location TextHouston, Texas
DepartmentResearch and Innovation
Team
Employment Type
Workplace Typeremote
Remote Policyremote
CountryUnited States
RegionTX
CityHouston
Salary RawSalary Range : $100k - $160k base salary The Modeling Scientist is responsible for improving model traceabil
Salary Min100,000
Salary Max160,000
Salary CurrencyUSD
Salary Periodyear
Source URLhttps://job-boards.greenhouse.io/arvaintelligence/jobs/5255587008
Apply URLhttps://job-boards.greenhouse.io/arvaintelligence/jobs/5255587008
First Seen At2026-06-18 07:31:58Z
Last Seen At2026-06-23 07:32:03Z
Last Checked At2026-06-23 07:32:03Z
Last Changed At2026-06-18 07:31:58Z
Inactive At
Source Posted At2026-06-17 18:28:19Z
Source Updated At2026-06-17 18:28:19Z
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=greenhouse/board=arvaintelligence/date=2026-06-23/2026-06-23T07-32-03-389Z-23ef3e5473bf8e796777b23cf742f79311c50a27580defc9c1002310421a60d5.json
Event Fields
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Parsed Structured
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Extensions
{}
Native Structured
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