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Data Science Research Assistant Remote Jobs in Virginia

Data Scientist Workplace: Washington DC Metro Area - Remote (candidates MUST BE located in the ... science, computer science, operations research or other closely related other quantitative or ...

Data Scientist Workplace: Washington DC Metro Area - Remote (candidates MUST BE located in the ... science, computer science, operations research or other closely related other quantitative or ...

Data Scientist

Arlington, VA ยท On-site +1

... NONE Remote Type Hybrid Time Type Full time Description & Requirements Elder Research Inc., a ... Lead Data Science Initiatives: Dive deep into complex and often nebulous requirements, applying ...

Data Science Manager

VA ยท On-site +1

This is a remote role. Essential Duties and Responsibilities: - Oversee the ongoing developments ... - Assist with special projects, trend analysis, and problem-solving. Provide support to ...

About the Role As the Head of Data Science, you will lead the strategic direction of data science ... remote-friendly work environment. About Mission Lane: Founded in December 2018, Mission Lane is a ...

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Data Science Research Assistant Remote information

What are the key skills and qualifications needed to thrive as a Data Science Research Assistant (Remote), and why are they important?

To thrive as a Data Science Research Assistant (Remote), a solid background in statistics, programming (Python or R), and data analysis, often supported by relevant coursework or a degree, is essential. Familiarity with data visualization tools (e.g., Tableau), databases (SQL), and platforms like Jupyter Notebook, as well as experience with machine learning libraries, is typically required. Strong problem-solving abilities, attention to detail, self-motivation, and effective remote communication skills make candidates stand out. These competencies are crucial for managing complex data tasks, collaborating with team members virtually, and delivering reliable analytical insights.

What are common challenges faced by remote Data Science Research Assistants, and how can they be addressed?

Remote Data Science Research Assistants often encounter challenges such as maintaining clear communication with team members, managing time across different projects, and accessing necessary datasets or computing resources. Overcoming these hurdles typically involves leveraging collaboration tools like Slack or Zoom for regular check-ins, setting clear expectations with supervisors on deliverables, and ensuring secure, remote access to data and software. Proactively seeking feedback and participating in virtual team meetings can help foster a sense of connection and keep projects on track.

What are Data Science Research Assistants (Remote)?

A Data Science Research Assistant (Remote) is a professional who supports data scientists and research teams by collecting, cleaning, analyzing, and visualizing data, often from a remote location. Their responsibilities may include assisting with experiment design, performing statistical analyses, preparing datasets, creating reports, and helping to develop or test machine learning models. Working remotely, they utilize collaboration tools and cloud platforms to work efficiently with distributed teams. This role is ideal for individuals with strong analytical skills, programming knowledge (such as Python or R), and an interest in research and data-driven problem solving.

What is the difference between Data Science Research Assistant Remote vs Data Analyst Remote?

AspectData Science Research Assistant RemoteData Analyst Remote
Required CredentialsBachelor's or Master's in Data Science, Statistics, or related fieldBachelor's or Master's in Data Analysis, Statistics, or related field
Work EnvironmentRemote research projects, academic or research institutionsRemote data interpretation and reporting for various industries
Employer & Industry UsageUniversities, research labs, tech companiesBusiness, finance, healthcare, marketing

While both roles involve working with data remotely, Data Science Research Assistants focus on research projects, often in academic or research settings, requiring a strong foundation in data science and statistics. Data Analysts typically analyze and interpret data for business insights across various industries. The roles share similar credentials but differ in their primary focus and work environment.

What are popular job titles related to Data Science Research Assistant Remote jobs in Virginia? For Data Science Research Assistant Remote jobs in Virginia, the most frequently searched job titles are:
What job categories do people searching Data Science Research Assistant Remote jobs in Virginia look for? The top searched job categories for Data Science Research Assistant Remote jobs in Virginia are:
What cities in Virginia are hiring for Data Science Research Assistant Remote jobs? Cities in Virginia with the most Data Science Research Assistant Remote job openings:
Data Science & Research Engineer ML Ops & Research Integration (Contract)

Data Science & Research Engineer ML Ops & Research Integration (Contract)

TalentBurst, Inc.

Fairfax, VA โ€ข Remote

$209.50K/yr

Full-time

Medical, Dental, Vision, Retirement

Posted 29 days ago


Job description


Data Science & Research Engineer โ€“ ML Ops & Research Integration (Contract)
100% Remote
8 Months

Job Summary:
Senior BI/analytics engineering role supporting predictive model delivery and research integrations. The role blends a Senior BI Developer profile with modern toolingโ€”building governed data products on Databricks, developing DBT transformation layers, and delivering Power BI semantic models/dashboardsโ€”alongside reusable integration components for ML Ops workflows. Work is focused on development-stage build and initial validation required for controlled go-live.
Key Responsibilities:
Develop and enhance data/analytics products that operationalize model inputs/outputs using DBT and Databricks (notebooks/jobs, Delta patterns).
Develop and enhance data/analytics products that operationalize model inputs/outputs using DBT and Databricks (notebooks/jobs, Delta patterns).
Build Power BI datasets/semantic models and dashboards tied to approved deliverables; implement refresh, security, and performance best practices.
Deliver predictive model and integration enhancements (Python/SQL) as part of defined build scope; support initial validation/testing evidence.
Align models for ingestion into Signal1 when applicable (outputs/metadata/versioning) and coordinate ingestion requirements with Signal1.
Build monitoring enablement as part of defined enhancements (monitor definitions, thresholds, alerting hooks, baseline calculations) and complete initial validation/sign-off.
Build or enhance ML Ops workflows (deployment automation, reproducible pipelines) and provide initial validation/testing required for release readiness.
Develop APIs and connectors for research platforms and datasets as reusable integration assets.
Produce technical documentation (interfaces, pipeline specs, metric definitions, deployment notes) supporting traceability and controlled release.
Deliver predictive model and integration enhancements (Python/SQL) as part of defined build scope; support initial validation/testing evidence.
Build or enhance ML Ops workflows (deployment automation, reproducible pipelines) and provide initial validation/testing required for release readiness.
Develop APIs and connectors for research platforms and datasets as reusable integration assets.
Produce technical documentation (interfaces, pipeline specs, metric definitions, deployment notes) supporting traceability and controlled release.
Build or enhance ML Ops workflows (deployment automation, reproducible pipelines, connector patterns) and provide initial validation/testing evidence.
Develop APIs and connectors to integrate research platforms and datasets as reusable assets.
Partner with Data Science and platform owners to ensure integration designs meet
governance, security, and release readiness requirements.
Produce technical documentation (interface definitions, pipeline specs, deployment notes) supporting traceability and controlled release.
Required Qualifications:
5 years of experience delivering BI/analytics solutions and/or data engineering pipelines in production.
Strong Python and SQL skills; experience building reliable, testable data transformations.
Hands-on experience with Databricks (notebooks/jobs) and Lakehouse concepts (e.g., Delta).
Hands-on experience with DBT (models, tests, documentation) and governed transformation patterns.
Hands-on experience with Power BI (semantic models/datasets, dashboard development, refresh/security patterns).
Experience with version control, code review, and CI/CD-aligned development practices.
Strong Python skills and comfort working with APIs and data services.
Solid SQL skills and experience validating data outputs against acceptance criteria.
Experience with version control, code review, and CI/CD-aligned development practices.
Preferred Qualifications:
Experience with ML lifecycle or analytics governance (feature store concepts, model monitoring inputs, KPI catalogs).
Experience integrating with managed ML platforms (e.g., DataRobot) or similar deployment environments.
Experience designing APIs/integration patterns in enterprise environments.
Familiarity with regulated or governed environments requiring documentation and change control.
Experience integrating with managed ML platforms (e.g., DataRobot) or similar model deployment environments.
Familiarity with data governance and controlled release processes in enterprise settings.
Deliverables / Success Measures:
Delivered Databricks/DBT data products aligned to scope; Power BI semantic models/dashboards delivered with documentation and security patterns; reusable APIs/connectors for research integrations; initial validation/testing evidence supporting go-live; reduced cycle time for model and research integrations.
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Why TalentBurst?
At TalentBurst, we deliver more than talent, we deliver outcomes. We partner with you to move quickly and connect you to opportunities aligned with your skills and long term growth.

Backed by precision, transparency, and results, we connect top talent with leading organizations through trusted partnerships.

We offer competitive compensation and comprehensive benefits, including medical, dental, vision, and retirement options.

TalentBurst is an equal opportunity employer committed to an inclusive and diverse workforce.

Company Description

Founded in 2002 by three former Monster.com executives; TalentBurst is an award-winning full-service Staffing Firm working directly with Fortune 500 companies in the US and Canada. We specialize in Contract and Contract to Permanent roles across many industries and have direct/contractual relationships with all our clients. Please visit our website www.talentburst.com or come meet us at our offices in Natick, MA, Miami, FL, Christiansburg, VA, Vineland, NJ, Houston, TX & downtown San Francisco, CA

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About TalentBurst

Sourced by ZipRecruiter

TalentBurst is a leading provider of Information Technology and Engineering staffing solutions based in Natick, Massachusetts, US. An industry veteran with two decades of experience in their portfolio, the company's services range from IT consulting, life sciences, HR solutions, payroll services, and more. TalentBurst was founded with a mission to provide world-class, global staffing services to clients of all sizes. They strive to provide unmatched quality and service to their clients, which has earned them the reputation of being a highly respected and trusted staffing firm.

Industry

Recruiting and staffing services

Company size

51 - 200 Employees

Headquarters location

Natick, MA, US

Year founded

2002

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