Job Closed
This listing is no longer active.
The world's leading location platform company
Lead Data Scientist
Location
United States
Posted
7 days ago
Salary
$160K - $170K / year
Seniority
Senior
Job Description
Lead Data Scientist
HERE Technologies
• Own the evaluation framework and quality strategy for advanced AI and vision systems • Define pass/fail metrics for output quality, structural fidelity, temporal consistency, label quality, robustness, and operational repeatability • Own data and validation strategy for improving model quality and downstream usefulness • Lead artifact auditing, failure taxonomy development, release-quality reporting, and evidence-based prioritization • Measure whether outputs are suitable for perception, mapping, generative AI, and customer-facing use cases • Partner with model, simulation, and platform owners to drive quality improvements and production-readiness decisions • Build and evolve metric suites for output quality, fidelity, repeatability, and downstream usefulness • Define human-review protocols and product acceptance thresholds for complex AI systems • Evaluate whether outputs preserve the structure, semantics, and consistency expected by downstream applications • Translate evaluation findings into data strategy, experiment priorities, and applied modeling opportunities • Help define dataset design, validation slices, and quality-improvement loops across the product • Create experiment and release reports that turn technical output into clear product decisions • Help prioritize what the team should fix next based on evidence rather than intuition • Establish evaluation foundations that remain useful across future AI, perception, and mapping capabilities
Job Requirements
- Strong background in applied machine learning, computer vision, synthetic-data evaluation, or perception-system validation
- Experience designing metrics and evaluation frameworks for generative, simulation, or perception systems
- Experience connecting model behavior, data quality, and product outcomes in ambiguous AI systems
- Ability to translate research-quality experiments into practical engineering and release decisions
- Strong analytical judgment and clear written communication
- Comfort owning both strategy and execution in a small team
- Master’s or PhD in Computer Science, AI, Machine Learning, or related field
- 5-8 years of experience in deep learning, computer vision, or multimodal AI.
Benefits
- health (Medical/Dental/Vision) insurance
- retirement savings plans
- paid time off & leave policies
Related Guides
Related Categories
Related Job Pages
More Data Scientist Jobs
• O(a) Cientista de Dados I atuará no desenvolvimento de soluções analíticas e projetos de dados, apoiando a construção de modelos estatísticos e de machine learning que contribuam para a tomada de decisão do negócio. • Em parceria com profissionais mais experientes da equipe, será responsável por apoiar etapas como coleta, tratamento e exploração de dados, validação de informações, análise de resultados e acompanhamento do desempenho dos modelos desenvolvidos. • O desafio é atuar em um ambiente dinâmico, contribuindo para a evolução da cultura data-driven e para a geração de valor por meio de análises e soluções baseadas em dados.
• Desenvolver análises exploratórias, modelagens estatísticas e modelos de machine learning para apoiar decisões de negócio. • Construir, validar, monitorar e documentar modelos preditivos, prescritivos e/ou de segmentação conforme necessidade das áreas parceiras. • Traduzir problemas de negócio em hipóteses analíticas, métricas, experimentos e soluções baseadas em dados. • Preparar, tratar e integrar bases de dados estruturadas e não estruturadas, garantindo qualidade, rastreabilidade e reprodutibilidade das análises. • Comunicar resultados técnicos de forma clara para públicos de negócio, com recomendações acionáveis e mensuração de impacto. • Atuar em parceria com times de engenharia, produto, negócio e tecnologia para colocar soluções analíticas em produção quando aplicável. • Contribuir para boas práticas de versionamento, documentação, governança, ética no uso de dados e melhoria contínua dos processos analíticos.
Role Description Red Pulley Technology Solutions, Inc. is seeking a Health IT Data Scientist II to support the ICE Health Service Corps (IHSC) Health Information Technology Unit (HITU) Enterprise Health IT Staffing and Professional Services Support program. This role applies statistical, predictive, and exploratory analytic techniques to complex healthcare and operational data to generate insights that inform strategic planning, performance monitoring, and evidence-based decision-making. All development, configuration, and implementation activities performed by this role are conducted within authorized Government-managed platforms and environments, subject to Government oversight, direction, and approval, with written authorization required prior to deployment to production environments. This position follows a remote delivery model supporting IHSC/HITU, consistent with current program operations. - Location: Washington, DC Metro Area (Remote) - Clearance: Public Trust - Preliminary and Complete Fitness Determination Required - Employment Type: Full-Time - Status: Contingent Upon Contract Award Qualifications - Advanced degree or equivalent experience in Data Science, Statistics, or a related quantitative field - Advanced expertise applying statistical, predictive, and exploratory analytics to healthcare and operational data - Experience designing and implementing data models, forecasts, and analytic methodologies - Strong knowledge of healthcare data domains, including utilization, cost, quality, and performance metrics - Experience conducting cost modeling, trend analysis, and scenario forecasting - Skill in communicating complex analytic findings through reports, dashboards, and executive briefings Requirements - Experience collaborating with Data Engineers to operationalize and scale analytic models - Experience developing repeatable analytic frameworks and methodologies for enterprise use - Familiarity with federal healthcare data governance, privacy, and security requirements - Experience supporting high-priority, time-sensitive analytical requests for senior leadership Key Responsibilities - Design and execute advanced data analysis, predictive models, and statistical methodologies using healthcare and operational data - Perform cost modeling, utilization analysis, trend analysis, and forecasting to support strategic planning - Collaborate with Data Engineers to operate analytic models and ensure scalability - Develop repeatable analytic frameworks and methodologies for enterprise use - Validate data sources, analytic assumptions, and model outputs to ensure accuracy and reliability - Translate analytic results into actionable insights through reports, dashboards, and executive briefings - Support leadership requests for high-priority, time-sensitive analyses - Document analytic methodologies, assumptions, and limitations Benefits - Competitive compensation aligned with experience and market conditions - 401(k) retirement plan with company matching to support long-term financial security - Comprehensive health coverage, including medical, dental, and vision insurance - Health Savings Account (HSA) and Flexible Spending Account (FSA) options - Life insurance coverage for added peace of mind - Generous paid time off (PTO) to support work-life balance - Parental leave for growing families - Professional development assistance, including training and certification support - Tuition reimbursement to encourage continued education and career advancement
Senior Product Manager, ROI Reporting, Data
DatavantConnecting the world’s health data to improve patient outcomes.
• Learning all about the core business of information exchange / release of information in healthcare • Diving deep with customers, sales, customer success, operations, product, data engineering, and business intelligence teams on key reporting, analytics, and productivity measurement needs • Developing a clear understanding of Datavant’s internal and customer-facing reporting experiences, including Healthsource, Provider Console, and other downstream applications where users consume reporting insights • Partnering with Data Engineering and Business Intelligence to clarify the operating model for reporting and data products, including how user needs become data requirements, reporting deliverables, dashboard experiences, and roadmap priorities • Creating and socializing a reporting and data product roadmap that balances customer reporting needs, internal operations needs, dashboard user experience improvements, and Healthsource productivity instrumentation • Identifying quick-win improvements to existing reporting experiences that help customers and internal teams better understand performance, productivity, status, and opportunities for improvement • Defining success metrics for reporting adoption, user satisfaction, data quality, dashboard usability, and operational productivity insights


