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Remote Applied Scientist Machine Learning Jobs in Washington

Posting Type Remote/Hybrid Job Overview WHO WE ARE Relativity is a leading legal data intelligence ... Select the appropriate modeling approach for each problem, ranging from classical machine learning ...

Posting Type Remote/Hybrid Job Overview WHO WE ARE Relativity is a leading legal data intelligence ... Select the appropriate modeling approach for each problem, ranging from classical machine learning ...

Data Scientist Workplace: Washington DC Metro Area - Remote (candidates MUST BE located in the ... machine learning. * Must have a Advanced Degree (Master s or PhD) in Statistics, Applied ...

Data Scientist Workplace: Washington DC Metro Area - Remote (candidates MUST BE located in the ... machine learning. * Must have a Advanced Degree (Master s or PhD) in Statistics, Applied ...

Data Scientist (AI)

Washington, DC ยท Remote

$125K - $190K/yr

AI Data Scientist REMOTE US Citizen What You Will Need: * Bachelor's or Master's degree in Data ... Solid experience in data science, machine learning, or applied analytics roles * Experience ...

Machine Learning Engineer

Mclean, VA ยท On-site +1

$115K - $150K/yr

Overview We are looking for seasoned Machine Learning Engineer to work with our existing team of Data Scientists and Engineers to use AI/ML technology in supporting Federal use cases. We are looking ...

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Remote Applied Scientist Machine Learning information

What are the key skills and qualifications needed to thrive as a Remote Applied Scientist in Machine Learning, and why are they important?

To thrive as a Remote Applied Scientist in Machine Learning, you need a strong background in mathematics, statistics, and computer science, often supported by an advanced degree and experience in ML algorithm development. Familiarity with programming languages like Python or R, machine learning frameworks such as TensorFlow or PyTorch, and tools for data processing and cloud computing is essential. Exceptional problem-solving ability, communication, and self-motivation are key soft skills for collaborating remotely and driving projects forward. These skills ensure you can independently design, implement, and communicate impactful machine learning solutions in a distributed work environment.

What can I expect in terms of collaboration and communication when working as a Remote Applied Scientist in Machine Learning?

As a Remote Applied Scientist in Machine Learning, you will frequently collaborate with cross-functional teams, including data engineers, product managers, and software developers. Communication typically takes place via video calls, chat platforms, and shared documentation, so strong written and verbal communication skills are essential. You may participate in regular virtual stand-ups, sprint planning, and code reviews to align on project goals and share progress. Remote work environments emphasize proactive communication and self-management to ensure seamless teamwork and project delivery.

What does a Remote Applied Scientist in Machine Learning do?

A Remote Applied Scientist in Machine Learning develops and implements machine learning models to solve real-world problems, often from a location outside of a traditional office. Their work involves analyzing large datasets, designing algorithms, and collaborating with teams to deploy scalable solutions. They may also conduct experiments to improve model performance and stay up to date with the latest research in the field. Communication and documentation are important, as they often work with cross-functional teams remotely.
What cities in Washington are hiring for Remote Applied Scientist Machine Learning jobs? Cities in Washington with the most Remote Applied Scientist Machine Learning job openings:
Principal Applied Scientist

Principal Applied Scientist

Relativity

Washington, DC โ€ข On-site, Remote

Full-time

Medical, Retirement

Posted 23 days ago


Job description

Posting Type

Remote/Hybrid

Job Overview

WHO WE ARE
Relativity is a leading legal data intelligence company building technology that helps users organize data, discover the truth, and act on it with confidence. Our AI-powered, cloud platform, RelativityOne, transforms massive volumes of complex information into actionable insights for litigation, investigations, regulatory inquiries, data breach responses, and other highstakes legal work where accuracy, trust, and defensibility are essential.
Relativity aiR is redefining document review through agentic AI systems that reason, cite their decisions, and scale across millions of documents. These systems automate complex legal workflows while keeping humans in the loop, enabling legal professionals to focus on what matters most.
WHAT WE DO
At Relativity, we are building a worldclass Applied Science organization focused on pushing the boundaries of intelligent systems in one of the most demanding and consequential domains: the legal system.
Applied Science Team
The Applied Science team sits at the core of Relativity's AI development. We are responsible for designing, validating, and operating the intelligent systems behind Relativity aiR. Our work goes far beyond simple model integrations. We build agentic systems that reason over documents, validate decisions statistically, remain auditable and defensible, and operate reliably at massive scale. Trust, reliability, and responsibility are foundational to everything we build.
Our team values curiosity, experimentation, rigor, and collaboration. We move quickly, validate assumptions with evidence, and simplify aggressively to deliver systems that are safe, reliable, and impactful in production.

Job Description and Requirements

ABOUT THE ROLE

As a Principal Applied Scientist, Reliability, you will lead the design and validation of intelligent systems that customers can trust in highstakes legal workflows. You will operate endtoend: understanding the problem space, designing solutions, validating them statistically, and bringing them to production in partnership with engineering, product, and customerfacing teams.

This role is ideal for an experienced applied scientist who thrives at the intersection of modeling, experimentation, and realworld system reliability, and who is motivated by building AI systems that are not only powerful, but also defensible, interpretable, and safe by design.

WHAT YOU'LL DO

  • Write productionquality code that solves real customer problems and scales cleanly, with systems designed to be easy to ship, operate, and maintain
  • Collaborate closely with fellow Applied Scientists as well as Engineers, Product Managers, Designers, and Customers
  • Design and execute statistically sound experiments and automate them into reusable benchmarks and evaluation frameworks
  • Rapidly prototype AI and MLpowered solutions and mature them into reliable, scalable production models
  • Select the appropriate modeling approach for each problem, ranging from classical machine learning techniques to frontier large language models
  • Validate model behavior rigorously using evidence, metrics, and experimentation, remaining open to changing course when the data demands it
  • Contribute to building intelligent systems that reason, cite their decisions, and operate defensibly at scale
  • Help push the boundaries of agentic AI while ensuring systems remain auditable, reliable, and responsible

WHAT WE'RE LOOKING FOR

  • 8+ years of professional experience in applied science, machine learning, or a closely related field
  • Master's or Ph.D. in Computer Science, Statistics, Applied Mathematics, or a related quantitative discipline, or equivalent professional experience
  • Proven ability to move quickly from prototype to production, simplifying complex ideas into robust systems
  • Experience reading, validating, and applying research with a healthy level of skepticism
  • Experience across a wide range of modeling techniques, from classical machine learning to largescale generative models
  • Familiarity with modern MLOps tooling and practices, including containers, workflow orchestration, deployment patterns, telemetry, and experimentation systems
  • Strong Python programming skills and experience with common data and ML libraries such as numpy, PyTorch, scikitlearn, and PySpark
  • Strong communication skills, with the ability to explain complex technical concepts clearly to both technical and nontechnical audiences
  • Endtoend ownership mindset, with the ability to understand new problem spaces, design solutions, and bring them to market alongside engineering, product, and support partners
  • A collaborative, curious, and adaptable approach, with comfort leading, questioning assumptions, and learning from failure

WHY WE COULD BE A GREAT FIT

HighImpact Problems

  • Work on intelligent systems that operate in one of the most highstakes domains, where trust, reliability, and defensibility truly matter.

Agentic AI at Scale

  • Build and extend AI systems that reason across millions of documents, cite their decisions, and automate complex legal workflows.

Scientific Rigor and RealWorld Impact

  • Apply deep experimentation and statistical validation to systems that ship to real customers and influence real outcomes.

Leadership and Growth

  • Lead technically while continuously learning in a thoughtful, supportive, and intellectually rich Applied Science organization.

Collaborative Culture

  • Join a team that values kindness, curiosity, technical excellence, and shared ownership of outcomes.

Compensation and Benefits

  • Competitive compensation, health and retirement programs, discretionary time off (DTO), parental leave for primary and secondary caregivers, companywide breaks, wellness resources, and an equity program.

Relativity is committed to competitive, fair, and equitable compensation practices.

This position is eligible for total compensation which includes a competitive base salary, an annual performance bonus, and long-term incentives.

The expected salary range for this role is between following values:

$224,000 and $336,000

The final offered salary will be based on several factors, including but not limited to the candidate's depth of experience, skill set, qualifications, and internal pay equity. Hiring at the top end of the range would not be typical, to allow for future meaningful salary growth in this position.

Required Skills:

Algorithms, Data Analysis, Machine Learning (ML), Natural Language, Python (Programming Language), Reinforcement Learning, Researching, Scientific Writing, Statistical Models, Technical Leadership