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Ai Data Rater Jobs in Washington (NOW HIRING)

Senior Data AI Engineer

Alexandria, VA · On-site +1

$103K - $140K/yr

Implement data quality monitoring and dashboards for ingestion success rates, validation outcomes ... AI / LLM: OpenAI API or Government-approved hosted endpoint, function calling, scoped retrieval ...

Senior Data AI Engineer

Alexandria, VA · Remote

$108K - $147K/yr

Implement data quality monitoring and dashboards for ingestion success rates, validation outcomes ... AI / LLM: OpenAI API or Government-approved hosted endpoint, function calling, scoped retrieval ...

Data Science Manager

Columbia, MD · On-site

$125K - $160K/yr

Conduct A/B tests to improve campaign performance measure campaign effectiveness, and increase engagement and conversion rates. AI & Generative AI Collaboration In addition to traditional data ...

Conduct A/B tests to improve campaign performance measure campaign effectiveness, and increase engagement and conversion rates. AI & Generative AI Collaboration In addition to traditional data ...

Conduct A/B tests to improve campaign performance measure campaign effectiveness, and increase engagement and conversion rates. AI & Generative AI Collaboration In addition to traditional data ...

Data Architect

Washington, DC · On-site

$72.25 - $92.75/hr

... ratings high and viewers wowed. What does a good time look like to you Hanging out on the reddit big data feeds and chatting about the latest advances in machine learning and AI. And of course, you ...

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Ai Data Rater information

What is an AI Data Rater job?

An AI Data Rater evaluates and rates AI-generated content, such as search engine results, chat responses, or recommendations, to improve machine learning models. They follow specific guidelines to assess relevance, accuracy, and quality. This role helps refine AI systems by providing valuable feedback to enhance their performance. It typically requires strong analytical skills, attention to detail, and familiarity with the subject matter being rated.

What are the key skills and qualifications needed to thrive in the Ai Data Rater position, and why are they important?

To succeed as an AI Data Rater, you need strong analytical skills, attention to detail, and proficiency in evaluating data quality, typically requiring at least a high school diploma or equivalent. Familiarity with computer systems, web browsers, and proprietary rating platforms is often necessary, and training in data privacy or AI guidelines is sometimes provided. Excellent time management, adaptability, and effective written communication help candidates stand out in this largely remote and independent role. These skills ensure accurate data evaluations, support AI improvement, and enable consistent, high-quality performance.

What are some typical daily responsibilities for an AI Data Rater?

As an AI Data Rater, your main responsibilities include reviewing and evaluating various types of data—such as search queries, images, or social media content—according to detailed guidelines provided by your employer. You will typically work independently, using specialized tools or web-based platforms to rate data quality, relevance, or appropriateness. Attention to detail and consistency are important, as your feedback directly impacts the effectiveness of AI systems. Depending on the employer, you may also participate in training sessions or occasional team meetings to stay updated on the latest guidelines or project requirements.

What are the most commonly searched types of Ai Data Rater jobs in Washington? The most popular types of Ai Data Rater jobs in Washington are:
What are popular job titles related to Ai Data Rater jobs in Washington? For Ai Data Rater jobs in Washington, the most frequently searched job titles are:
What cities in Washington are hiring for Ai Data Rater jobs? Cities in Washington with the most Ai Data Rater job openings:

Senior Data AI Engineer

IntelliTech

Alexandria, VA • On-site, Remote

$103K - $140K/yr

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 8 days ago


Job description

Location: Remote
Clearance: Active DoD Secret clearance required
Employment Type: Full-Time (W-2)
Citizenship: U.S. Citizenship required
IntelliTech is seeking a Senior Data / AI Engineer to support a Department of War program focused on operationalizing a Government-owned digital twin application for ammunition industrial base readiness. The platform is a supply chain simulation solution built on Python, FastAPI, and React that enables analysts to model production timelines, identify bottlenecks, assess supply chain risk, and evaluate surge and modernization scenarios.
This role will own the data lifecycle end-to-end-from raw file ingestion through validation, normalization, versioning, and delivery of run-ready artifacts to the simulation engine. The engineer will also help design and implement the AI-enabled decision-support layer, supporting natural-language analysis of scenario outputs, automated comparison and briefing generation, and guided scenario creation.
This is a hands-on role on a lean, senior team. The ideal candidate is comfortable writing production code daily, designing scalable data pipelines, and working directly with Government analysts and data stakeholders to deliver mission-focused solutions.Key ResponsibilitiesData Ingestion and Automation
  • Design and implement governed ingestion pipelines for complex defense supply chain datasets, including Bills of Materials (BOM), demand and order backlogs, facility and production line capacity, supplier risk, and acquisition planning data.
  • Build validation services that enforce schema conformance, referential integrity across linked datasets, circular reference detection, and business-rule validation with actionable row- and column-level feedback.
  • Implement raw data preservation in object storage such as Amazon S3, including metadata capture for source type, upload timestamp, uploader identity, file checksum, and dataset version.
  • Develop canonical data transformation workflows that convert validated source inputs into normalized, run-ready artifacts aligned to the simulation engine's entity model.
  • Implement dataset versioning and lineage tracking so each scenario run is tied to explicit input versions and assumptions.
Automated Data Refresh
  • Work with Government stakeholders and source-system owners to identify, prioritize, and implement automated or semi-automated data refresh paths.
  • Participate in Technical Exchange Meetings (TEMs) to help define data contracts, including source format, semantics, refresh cadence, and validation requirements.
  • Implement approved connection patterns such as scheduled file landing, secure file exchange (SFTP), API-based retrieval, and cloud-to-cloud transfer mechanisms.
  • Maintain hardened controlled upload workflows in parallel so mission operations are not dependent solely on external integrations or approvals.
AI-Enabled Decision Support
  • Build the AI integration layer within the FastAPI backend to broker access to Government-approved hosted LLM endpoints.
  • Implement scoped retrieval logic that constrains AI context to approved run artifacts, simulation outputs, and post-processed analytics.
  • Develop natural-language Q&A capabilities that allow analysts to query scenario results such as bottlenecks, supplier risks, and differences between runs.
  • Build guided scenario generation workflows that translate analyst intent into structured JSON scenario configurations for user review and approval before execution.
  • Implement AI-assisted comparison summaries and brief-ready output generation.
  • Enable function calling and tool-use patterns so the model can dynamically query backend APIs for scenario comparison, bottleneck analysis, production planning, and supply chain risk.
  • Ensure all AI interactions are audit-logged, role-scoped, and grounded in explicit scenario artifacts.
Deterministic Analytics and Reporting
  • Extend existing comparison capabilities to generate structured side-by-side scenario outputs with standardized metrics and deltas.
  • Build reusable templates for brief-ready outputs that reduce analyst time-to-brief.
  • Generate reproducible comparison artifacts and store them as part of the scenario run record.
Data Quality and Performance
  • Implement data quality monitoring and dashboards for ingestion success rates, validation outcomes, and overall pipeline health.
  • Optimize data preparation and post-processing workflows to reduce end-to-end scenario runtime.
  • Design and implement version-bounded caching strategies for validated inputs, normalized data products, and reusable post-processing summaries.
Required Qualifications
  • Bachelor's degree in Computer Science, Data Science, Engineering, Information Systems, or a related technical discipline and 8+ years of relevant experience; or Master's degree in a related field and 6+ years of relevant experience.
  • Active DoD Secret clearance.
  • 7+ years of professional experience in data engineering or data / AI engineering roles.
  • Strong hands-on Python development experience, including Pandas, NumPy, ETL/ELT design, data pipeline development, and asynchronous programming patterns.
  • Experience building data validation and quality frameworks, including schema enforcement, referential integrity, data contracts, and validation feedback mechanisms.
  • Experience integrating LLM APIs such as OpenAI, Anthropic, or equivalent platforms, including function calling, tool use, scoped retrieval, and prompt engineering for structured outputs.
  • Experience with MongoDB or other document-oriented databases, including data modeling and aggregation pipelines for analytics workloads.
  • Experience with Amazon S3 or other cloud object storage services, including raw, normalized, and curated data layering approaches.
  • Experience supporting DoD or federal Government programs.
  • Strong communication skills and the ability to work directly with technical and non-technical stakeholders in mission environments.
Preferred Qualifications
  • Experience with defense supply chain, logistics, manufacturing, or industrial base data.
  • Familiarity with Databricks, data mesh, or medallion architecture patterns such as bronze/silver/gold.
  • Familiarity with SimPy or discrete-event simulation data inputs and outputs.
  • Experience with Advana, WDP (War Data Platform), or other DoD enterprise data platforms.
  • Experience establishing data-sharing agreements and supporting Technical Exchange Meetings with Government source-system owners.
  • Knowledge of munitions-related data structures such as NIIN, CAGE, Bill of Material hierarchies, and production line capacity models.
  • Experience with Redis or other caching layers supporting analytics applications.
  • Experience with FastAPI or Flask backend development.
  • Prior experience supporting Army Cloud Environments
Tech Stack
  • Data Engineering: Python 3.11+, Pandas, NumPy
  • Backend: FastAPI, Motor (async MongoDB)
  • AI / LLM: OpenAI API or Government-approved hosted endpoint, function calling, scoped retrieval, prompt engineering
  • Database: MongoDB / Amazon DocumentDB /
  • Storage: Amazon S3
  • Cache: Redis / Amazon ElastiCache
  • Data Formats: Excel (.xlsx), JSON, CSV, SFTP, REST / SOAP APIs
  • Observability: Pipeline instrumentation, logging, and data quality metrics
Interview Process
Video interview required and may include a technical assessment.
Candidates should be prepared to discuss:
  • their hands-on experience building data pipelines, validation frameworks, and AI-enabled backend services
  • examples of systems or applications they have built from scratch
  • how they have handled data quality, lineage, and reproducibility in production environments
  • their experience integrating LLMs, retrieval workflows, and backend APIs into operational use cases
  • their work with large-scale or mission-critical federal datasets and analytics platforms
  • their availability to support periodic on-site work in the Washington, DC Metro Area or other Government locations as needed
Compensation and Benefits
IntelliTech is committed to fair and equitable compensation practices. The salary range for this position is $150,000 - $200,000. Actual compensation packages are based on several factors unique to each candidate, including but not limited to job-related skills, depth of experience, relevant certifications and training, and specific work location. Based on these factors, IntelliTech utilizes the full width of the salary range.
IntelliTech provides a comprehensive benefits package designed to support employees' well-being and professional growth, including health insurance, dental insurance, and vision insurance, a 401(k), paid time off, professional development opportunities, and flexible work arrangements to support work-life balance.About IntelliTech
IntelliTech is a dynamic and forward-thinking small business specializing in Full Stack Engineering, Data Analytics, Cloud Solutions, and DevSecOps services. Our mission is to empower government and commercial clients to solve complex technical challenges through practical, innovative, and mission-focused engineering solutions.Equal Opportunity Employer
At IntelliTech, we are committed to building a diverse and inclusive workplace. We believe that a variety of perspectives and backgrounds leads to stronger teams and better solutions. IntelliTech is an Equal Opportunity Employer and does not discriminate on the basis of race, religion, gender, age, disability, or veteran status. We encourage all qualified candidates to apply.