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Ai Alignment Jobs in Silver Spring, MD (NOW HIRING)

This role will ensure alignment with federal AI policy, ethical AI standards, and risk management frameworks. This position plays a critical role in helping organizations deploy AI responsibly ...

Generative AI Strategist

Mclean, VA

$122K - $158K/yr

Join us in driving strategic alignment, fostering collaborative engagement, and leading sales initiatives to deliver tangible business value through cutting-edge generative AI solutions. If you ...

Lead AI Integration Engineer

Herndon, VA ยท On-site

$105K - $138K/yr

Drove end-to-end technical integration, requirements alignment, architecture coordination, and deployment execution to ensure scalable, secure, and mission-aligned AI solutions across the enterprise.

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Ai Alignment information

See Silver Spring, MD salary details

$92.5K

$103.4K

$112.2K

How much do ai alignment jobs pay per year?

As of Jun 12, 2026, the average yearly pay for ai alignment in Silver Spring, MD is $103,377.00, according to ZipRecruiter salary data. Most workers in this role earn between $98,200.00 and $108,500.00 per year, depending on experience, location, and employer.

How difficult is AI alignment?

AI alignment is a complex field within AI safety that involves ensuring artificial intelligence systems behave as intended. It requires interdisciplinary knowledge, including machine learning, ethics, and formal verification, and often involves research, experimentation, and collaboration among experts. The difficulty varies depending on the specific goals and the level of AI sophistication involved.

What is AI alignment?

AI alignment refers to the process of ensuring that artificial intelligence systems act in ways that are aligned with human values, intentions, and ethical standards. This field focuses on designing AI models that not only achieve their objectives but also do so safely and beneficially for humanity. As AI systems become more advanced, alignment becomes increasingly important to prevent unintended consequences or harmful behaviors. Researchers in AI alignment work on technical solutions, such as value learning and interpretability, as well as broader ethical and policy considerations.

What is the difference between Ai Alignment vs Data Scientist?

AspectAi AlignmentData Scientist
Required CredentialsAdvanced degrees in AI, Machine Learning, or related fieldsDegree in Data Science, Statistics, Computer Science, or related fields
Work EnvironmentResearch labs, AI development companies, tech firmsTech companies, finance, healthcare, consulting firms
Industry UsageFocuses on ensuring AI systems behave as intendedAnalyzes data to extract insights and build predictive models

While both roles involve advanced technical skills, Ai Alignment specialists focus on aligning AI systems with human values and safety, whereas Data Scientists analyze data to inform business decisions. The roles often overlap in AI research environments but serve different primary objectives.

How to get into AI alignment research?

To pursue AI alignment research, individuals typically need a strong background in computer science, mathematics, or related fields, often demonstrated through advanced degrees such as a master's or Ph.D. in AI, machine learning, or ethics. Gaining experience with programming, machine learning frameworks, and research methodologies is essential, along with staying informed about current AI safety and alignment literature. Building a portfolio of research projects or publications can also improve prospects in this specialized field.

What are some common challenges faced by professionals working in AI alignment roles?

Professionals in AI alignment roles often encounter the challenge of translating complex ethical principles and human values into machine-understandable objectives. Balancing technical constraints with theoretical considerations requires close collaboration with cross-functional teams, including ethicists, engineers, and product managers. Additionally, the rapidly evolving landscape of artificial intelligence demands continuous learning to stay current with new alignment techniques and research findings. Navigating these challenges can be intellectually stimulating and offers significant opportunities for interdisciplinary growth.

What are the key skills and qualifications needed to thrive as an AI Alignment Specialist, and why are they important?

To thrive as an AI Alignment Specialist, you need a strong background in computer science, mathematics, and machine learning, often evidenced by an advanced degree in a related field. Familiarity with technical tools such as Python, TensorFlow, PyTorch, and formal verification systems is typically required, along with understanding of AI safety principles. Analytical thinking, ethical reasoning, and effective communication are crucial soft skills for success in this role. These skills ensure that AI systems are developed safely, ethically, and in alignment with human values, which is essential for mitigating risks associated with advanced AI.

What jobs align with AI?

Jobs that align with AI include roles such as AI researcher, machine learning engineer, data scientist, and AI software developer. These positions typically require skills in programming, statistics, and understanding of AI frameworks like TensorFlow or PyTorch, and often involve working in tech companies, research institutions, or startups focused on AI development.

What is a $900,000 AI job?

A $900,000 AI job typically refers to a high-level position in artificial intelligence, such as AI research director, senior machine learning engineer, or AI product executive, often requiring advanced skills, extensive experience, and sometimes security clearances. These roles usually involve leading complex projects, developing innovative algorithms, and working with cutting-edge tools and frameworks, with compensation reflecting the expertise and impact involved.
What are popular job titles related to Ai Alignment jobs in Silver Spring, MD? For Ai Alignment jobs in Silver Spring, MD, the most frequently searched job titles are:
What job categories do people searching Ai Alignment jobs in Silver Spring, MD look for? The top searched job categories for Ai Alignment jobs in Silver Spring, MD are:
What cities near Silver Spring, MD are hiring for Ai Alignment jobs? Cities near Silver Spring, MD with the most Ai Alignment job openings:
Infographic showing various Ai Alignment job openings in Silver Spring, MD as of June 2026, with employment types broken down into 46% Full Time, 13% Part Time, 10% Temporary, and 31% Contract. Highlights an 62% In-person, and 38% Remote job distribution, with an average salary of $103,377 per year, or $49.7 per hour.
AI Alignment Fellow

AI Alignment Fellow

National Fair Housing Alliance

Washington, DC โ€ข On-site

$55K - $75K/yr

Temporary

Posted 29 days ago


Job description

About National Fair Housing Allianceย 

The National Fair Housing Alliance (NFHA) leads the fair housing movement and is the nation's only national organization exclusively dedicated toย eliminatingย all forms of housing discrimination and ensuringย equitableย housing opportunities for all people and communities. We have a diverse, experienced, mission-driven, and impactful team that has developed equity-based policies at the federal, state, and local levels to expand fair housing opportunities; brought precedent-setting litigation to eliminate some of the most heinous forms of housing discrimination; conducted groundbreaking research to promote equitable solutions; and invested millions of dollars in underserved communities. We have solid relationships, built on trust, with national, regional, and local organizations, and we effectively draw upon these connections to reach vital goals. We are game changers that millions of people rely upon to advance fair housing.ย 

Where you live matters. It affects every aspect of your life andย determinesย whether you have access to the options and opportunities we all need to thrive. Yet despite important existing federal laws, more than 4 million acts of housing discrimination occur in the U.S. each year, and housing inequalityย remainsย stubbornly entrenched. That is whyโ€”through its education and outreach, member services, public policy, advocacy, housing and community development, responsible AI, enforcement, and consulting and compliance programsโ€”NFHA is dismantling longstanding barriers to equity, rooting out bias, and building diverse, inclusive, well-resourced communities.
Position Summary

The AI Alignment Fellow will advance original mathematical and computational research at the intersection of algorithmic fairness, civil rights law, and AI governance. This fellowship directly addresses a foundational challenge in responsible machine learning: the structural tension between individual fairness and group fairness in automated decision-making systems. Situated within the Responsible AI Labย of the National Fair Housing Alliance, the Fellow will contribute toย investigatingย a unified theoretical framework โ€” grounded in Lipschitz continuityย constraints andย distributional parity conditions โ€” capable of characterizing when individualized least discriminatory alternatives (iLDA) imply or are implied by group-level fairness guarantees, and deriving tight bounds on the mappings between these two regimes.ย 

The Fellow willย leverageย large language models and AI-assisted research tools to accelerate formal mathematical inquiry, conduct comparative legal and policy analysis, and translate technical findings into accessible policy recommendations for civil rights practitioners, regulators, and technology developers. This is an intellectually ambitious role for a researcher who combines rigorous quantitative training with a commitment to computational justice. The Fellow will work in close collaboration withย other teams, includingย Legalย and Public Policy teams, and will be expected to contribute to peer-reviewed scholarship, public-facing technical reports, and stakeholder engagement activities that advance NFHAโ€™s mission ofย eliminatingย housing discrimination through responsible AI oversight.ย 

This fellowship position will report to the Chief AI Officer at NFHA, working full-time for a period of eight (8) weeks and expected to work in our DC Office on Pennsylvania Avenue on Mondays and Thursdays and may work remotely the remaining days of each week.

Essential Job Functionsย 

Consultation

  • Collaborate with NFHA program staff, legal counsel, and external civil rights partners toย identifyย high-priority algorithmic fairness problems in housing, lending, and related domains where the individual/group fairness tension has material legal or policy implications.ย 

  • Advise internal teams and external stakeholders on the technical implications of competing fairness definitions, translating mathematical distinctions โ€” such as the difference between demographic parity and equalized odds โ€” into operationally relevant guidance for non-technical audiences.ย 

  • Engage with peer researchers, policy advocates, and regulatory bodies toย representย the Responsible AI Labโ€™s research agenda, including participation in working groups, expert panels, and interagency consultations on AI accountability standards.ย 

  • Support the Chief AI Officer in providing technical input to organizational partners deploying or auditing algorithmic systems in high-stakes civil rights contexts, including reviewing fairnessย auditsย and offering structured recommendations grounded in the Labโ€™s research findings.ย 

AI-Driven Mathematical Researchย ย 

  • Employ AI-assisted research environments โ€” including large language models, automated proof assistants, and symbolic computation tools โ€” to investigate the conditions under which the set of individually fair mechanisms is a subset of, equivalent to, or disjoint from the set of group-fair mechanisms, and to derive or verify formal proofs of these inclusion relationships.ย 

  • Develop and analyze tight functional bounds for the mappings that translate between individual fairness Lipschitz parameters and group fairness tolerance parameters across a range of metric space geometries, distributional assumptions, and subgroup family structures.ย 

  • Investigate extensions of the core research problem to multi-attribute protected classes, intersectional subgroup families, and randomized mechanism settings, using AI tools to explore the combinatorial complexity of these configurations andย identifyย tractable boundary conditions.ย 

AI-Driven Law and Policy Research

  • Use AI-assisted legal research tools to systematically analyze how U.S. anti-discrimination law โ€” including Fair Housing Act disparate impact doctrine, Equal Credit Opportunity Act standards, and Title VII jurisprudence โ€” maps onto individual versus group fairness paradigms, identifying doctrinal gaps where current legal frameworks fail to account for the mathematical tension addressed in the research problem.ย 

  • Conduct comparative policy analysis across domestic and international AI governance frameworks โ€” including the EU AI Act, CFPB guidance on algorithmic lending, and emerging federal AI risk management standards โ€” to assess how fairness definition choices are operationalized in regulatory compliance requirements and what implications formal mathematical findings carry for those frameworks.ย 

  • Develop policy translation documents thatย renderย formal research findings in terms directly usable by civil rights enforcement agencies, fair lending compliance officers, and legislative staff engaged in algorithmic accountability rulemaking.ย 

  • Monitor and synthesize emerging litigation, regulatory enforcement actions, and legislative developments related to algorithmic discrimination, using AI tools toย maintainย a structured knowledge base that informs both the Labโ€™s research agenda and NFHAโ€™s advocacy and enforcement activities.ย 

Documentation & Communication

  • Co-authorย aย peer-reviewed paper,ย oneย technical reports, andย aย white paper documenting research findings on the structural relationship between individual and group fairness, ensuring that all written products meet the standards of the algorithmic fairness, machine learning, and legal scholarship literatures asย appropriate.ย 

  • Produce accessible summaries, policy briefs, and public-facing communications that translate core mathematical findings for civil rights advocates, journalists, and policymakers, ensuring NFHAโ€™s research is legible and actionable for audiences without formal mathematical training.ย 

  • Maintain rigorous documentation of AI-assisted research workflows โ€” including prompting strategies, tool configurations, verification protocols, and reproducibility procedures โ€” to support research integrity standards and to contribute to the Labโ€™s developing best practices for responsible use of AI in formal mathematical inquiry.ย 

  • Present research findings at academic conferences, practitioner convenings, and policy forums,ย representingย the Responsible AI Labโ€™s work to diverse audiences and contributing to the public discourse on computational justice, fair lending, and algorithmic accountability.ย 

Qualifications and Competenciesย 

  • Doctoral degree in progress or conferred inย Physics,ย Mathematics, Statistics, Computer Science, Operations Research, or a closely related quantitative discipline; candidates with a masterโ€™s degree andย demonstratedย research experience in algorithmic fairness or formal machine learning theory will be considered.ย 

  • Demonstrated familiarity with algorithmic fairness literature, including working knowledge of group fairness criteria (demographic parity, equalized odds, calibration) and individual fairness formulations grounded in metric spaces and Lipschitz continuity.ย 

  • Prior exposure to or coursework in U.S. civil rights law,ย anti-discrimination frameworks, or AI governance policy is strongly preferred; experience working in or with civil rights organizations, regulatory bodies, or public interest technology contexts is a significant asset.ย 

  • Evidence of research productivityย appropriate toย career stage, such as peer-reviewed publications, conference presentations, thesis work, or technical reportsย demonstratingย the ability to produce original scholarship at the intersection of formal mathematical analysis and applied sociotechnical problems.ย 

  • Proficiencyย in formal mathematical reasoning and proof construction, including measure theory, probability theory, metric space topology, and optimization, with the capacity to formalize and rigorously analyze fairness constraints of the type specified in the research problem statement.ย 

  • Practical experience with AI-assisted research tools, including large language models used for literature synthesis, proof exploration, and code generation, as well as familiarity with symbolic computation environments such as Mathematica,ย SageMath, or equivalent platforms.ย 

  • Programmingย proficiencyย in Python and/or R for statistical analysis, simulation, and implementation of algorithmic fairness methods; familiarity with fairness toolkits such asย Fairlearn, AIF360, or equivalent libraries is preferred.ย 

  • Ability to use AI-driven legal and policy research tools to systematically analyze regulatory texts, case law, and governance frameworks, and to synthesize findings across legal and technical literatures in an intellectually rigorous and citable manner.ย 

  • Exceptional written and oral communication skills, including the demonstrated ability to translate highly technical mathematical content into clear,ย accurate, and compelling language for legal, policy, and advocacy audiences without sacrificing analytical precision.ย 

  • Strong collaborative orientation and interpersonal effectiveness in cross-disciplinary environments, with the capacity to work productively alongside legal staff, civil rights advocates, data scientists, and senior organizational leadership in pursuit of shared research and missionย objectives.ย 

  • Intellectual humility and rigorous epistemic standards, including a commitment to acknowledging the limits of AI-assisted research outputs, verifying formally derived results through independent analysis, andย maintainingย transparent documentation of methods and assumptions.ย 

  • Deep personal commitment to equity, civil rights, and computational justice, with the professional maturity to engage responsibly with research that has direct implications for the protection of legally and historically marginalized communities in automated decision-making contexts.ย 

Compensation and Benefitsย 

The compensation for this role is $10,000 for the duration of the 8-week fellowship.
This fellowship does not include any additional benefits or leave accrual.

How to Applyย 

Interested applicants need toย submitย aย resumeย andย cover letter.ย Applications will be accepted until the position is filled.ย Please no phone calls and incomplete applications will not be considered.ย 
The earliest start date for this position is Monday, July 6, 2026.

Affirmative Action / Equal Employment Opportunity Statementย 

NFHA values and encourages diversity in its workforce. NFHA supports affirmative action and is dedicated to promoting equal employment opportunities. NFHA does not discriminate on the basis of race, color, religion, national origin, ancestry, citizenship, sex, age, marital status, personal appearance, sexual orientation, family responsibilities, disability, matriculation, political affiliation, or any other category or characteristic protected by the laws of the United States or the District of Columbia.

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