Machine Learning Government Contracts
The federal government is investing billions in artificial intelligence and machine learning across defense, intelligence, and civilian agencies. From autonomous systems to predictive analytics, Machine Learning contracts represent the fastest-growing technology segment in federal procurement.
100M+ government records · 110+ gov/news sources · Synced from live federal sources
Federal Intelligence Strategy & Executive Orders
The federal approach to intelligence is shaped by executive orders, OMB guidance, and agency-specific strategies that create both requirements and opportunities for contractors.
Executive Order 14110: Safe, Secure, and Trustworthy Intelligence
Signed in October 2023, EO 14110 is the most comprehensive federal intelligence directive to date. It establishes requirements across safety testing, privacy protection, equity, civil rights, consumer protection, innovation, competition, and government use of intelligence. For contractors, the order creates significant new opportunities in several areas:
- • intelligence safety evaluation and red-teaming services for foundation models
- • Development of intelligence risk management frameworks aligned with NIST Intelligence RMF
- • Privacy-preserving machine learning and synthetic data generation
- • intelligence workforce training and education programs
- • Bias testing, algorithmic auditing, and equity assessments
- • intelligence-powered government service delivery modernization
From JAIC to CDAO: The DoD Intelligence Transformation
The Joint Artificial Intelligence Center (JAIC), established in 2018, was the DoD's initial attempt to centralize intelligence adoption. In 2022, JAIC was absorbed into the newly created Chief Digital and Artificial Intelligence Office (CDAO), which consolidated the roles of the former Chief Data Officer, JAIC, Defense Digital Service, and Advana analytics platform under a single executive.
The CDAO now oversees all DoD data, analytics, and intelligence initiatives with a mission to accelerate intelligence adoption at scale. Key programs include the Combined Joint All-Domain Command and Control (CJADC2), Project Maven (now Global Information Dominance Experiments), and the Responsible intelligence toolkit. Contractors supporting CDAO initiatives must demonstrate expertise in MLOps, responsible intelligence practices, and the ability to deploy models in tactical edge environments.
Responsible Intelligence Requirements
Federal agencies increasingly require contractors to demonstrate responsible intelligence practices. The DoD's intelligence ethical principles and NIST Intelligence Risk Management Framework shape contract requirements.
DoD Intelligence Ethical Principles
- Responsible: Human judgment in intelligence development and deployment decisions
- Equitable: Deliberate steps to minimize unintended bias
- Traceable: Transparent and auditable methodologies and data sources
- Reliable: Well-defined use cases with safety testing and monitoring
- Governable: Ability to detect and disengage systems causing unintended harm
NIST Intelligence Risk Management Framework
The NIST Intelligence RMF (NIST 100-1) provides a voluntary framework that agencies are increasingly mandating in contract requirements. It organizes intelligence risk management into four functions:
- Govern: Cultivate a culture of risk management
- Map: Contextualize risks of intelligence systems
- Measure: Analyze, assess, and track identified risks
- Manage: Prioritize and act upon risks
Key Agencies for Machine Learning Contracts
Department of Defense
The largest government intelligence buyer through CDAO, DARPA, service-specific intelligence programs, and combatant commands. Focus areas include autonomous systems, predictive maintenance, ISR analysis, and decision support tools for command and control.
Department of Homeland Security
Machine Learning for border surveillance, threat detection, immigration processing, and cybersecurity. S&T Directorate funds intelligence research while CBP, ICE, and TSA deploy operational intelligence systems for screening, anomaly detection, and identity verification.
Department of Veterans Affairs
Intelligence for clinical decision support, suicide prevention, claims processing acceleration, medical imaging analysis, and patient scheduling optimization. VA's National Intelligence Institute (NAII) coordinates intelligence adoption across the largest integrated healthcare system.
NASA
Machine Learning for autonomous spacecraft operations, Earth observation data analysis, materials discovery, air traffic management, and scientific research. NASA's intelligence initiatives span from planetary exploration rovers to climate modeling and aviation safety systems.
Machine Learning Use Cases Across Government
Federal agencies have identified over 700 active intelligence use cases. These represent concrete contracting opportunities across multiple domains and technical disciplines.
Natural Language Processing
Document classification, contract analysis, chatbots for citizen services, regulatory compliance review, and automated FOIA processing.
Computer Vision
Satellite imagery analysis, medical imaging diagnostics, facial recognition, quality inspection, and infrastructure monitoring from aerial and ground sensors.
Predictive Analytics
Equipment failure prediction, fraud detection, disease outbreak forecasting, weather modeling, and supply chain optimization.
Autonomous Systems
Unmanned aerial vehicles, autonomous ground vehicles, robotic process automation, and autonomous inspection systems for hazardous environments.
Cybersecurity Intelligence
Threat detection and response, anomaly detection in network traffic, automated vulnerability assessment, and intelligence-powered security orchestration.
Decision Support
Command and control systems, resource allocation optimization, risk assessment tools, and intelligence-augmented analysis for national security.
Common NAICS Codes for Machine Learning
Machine Learning research, algorithm development, data science research, and autonomous systems R&D.
Machine Learning application development, model training pipelines, MLOps platforms, and custom intelligence solutions.
Market Intelligence — AI & Machine Learning
Records by Type
Set-Aside Distribution
Monthly Activity (Last 12 Months)
Recent AI & Machine Learning Opportunities
Investigate Artificial Intelligence/machine Learning to Improve Supply Chain Management
Artificial Intelligence/ Machine Learning SBIR Phase III
System-Wide Test and Evaluation and Applied Artificial Intelligence/Machine Learning
Transforming Energy Through Computational Excellence: Artificial Intelligence and Machine Learning
Exploring Advanced Computational Tools and Techniques with Artificial Intelligence and Machine Learning in Operating Nuclear Plants
Domain Aware Techniques in AI: A Survey
LDRD 18A12-088 , Thermomechanical Processing of Titanium Alloys for Improved Ballistic Performance
Improving Reliability of Large Language Models for Nuclear Power Plant Diagnostics Technical Presentation
Risk-informed Graded Approach for Reliability and Performance Assessment of Machine Learning and Artificial Intelligence for Advanced Condition...
Travel: NSF Student Travel Grant for 2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Conference: NSF Student Travel Grant for 2026 IEEE International Conference on Computer Communications (INFOCOM)
MHD, disruptions and control physics: Chapter 4 of the special issue: on the path to tokamak burning plasma operation
Conference: Nonlinear Partial Differential Equations and Stochastic Methods Workshop
Optimization of Mitigating System Performance Index to Improve Nuclear Power Plant Safety and Efficiency
Bridge2AI:Salutogenesis Data Generation Project
Quantitative Insight to Fission Gas Pores Distribution in Irradiated Annular U-10Zr Metallic Fuel Using Machine Learning
From Chaos to Clarity: Autonomous Materials Discovery for Extreme Environments
In Silico Chemical Experiments in the Age of AI: From Quantum Chemistry to Machine Learning and Back
2026 Sleep Regulation and Function Gordon Research Conference and Gordon Research Seminar
Machine Learning for Autonomous Drones Operations
Securing Anomaly Detection for Process-Based Time Series
CAREER: Trustworthy AI-Native Network Autonomy in Open Radio Access Networks
Collaborative Research: IMR: MM-1B: Privacy-Preserving Data Sharing for Mobile Internet Measurement and Traffic Analytics
Integrating Multi-Omics to Uncover Shared Mechanisms Linking Physical Frailty and Alzheimer's Disease: Inflammation and Relevant Pathways
Flexible AI Models for Grid Resilience
Integrating Conversational Artificial Intelligence Systems into Science Gateways
Risk-informed Graded Approach for Reliability and Performance Assessment for Advanced Condition Monitoring Techniques
Collaborative Research: CBET-EPSRC: Investigation of Coherent Structures in Elastic and Elasto-inertial Turbulence
Accelerated Machine Learning for High Energy Physics
CAREER: Distributed Intelligence in Future Wireless Networks: From System-Aware Learning to System-Learning Co-designs
CAREER: Foundations of Scalable and Resilient Distributed Real-Time Decision Making in Open Multi-Agent Systems
A Survey of Proposed Standards and Regulations for Artificial Intelligence
Fuel Cell Inverter Transition Between Modes of Operation (Grid-Forming and Grid-Following)
Using HPC for AI/ML
Designing and Utilizing Material Acceleration Platforms: Need for Workforce Development
Resimulation-based self-supervised learning for pretraining physics foundation models
Can We Use Machine Learning to Control Nuclear Power Plants?
Revolutionizing Energy Storage: AI, Automation, and Advanced Modeling as Catalysts for Next-Generation Breakthroughs
Predicting Li-ion Battery Performance for Impurity-doped NMC Cathodes Using Deep Learning
CAREER: Identification of causal relationships between epigenetic regulation, gene expression, and phenotypic diversity within and across generations...
Honing Precision Medicine for Type 2 Diabetes in the Veteran Population
Conference: North American Gender Summit 24 and the Roadmap for Action 2.0
Explainable machine-learning tools for predictive maintenance of circulating water systems in nuclear power plants
Jet classification using high-level features from anatomy of top jets
Monitoring river flow status using low-cost wildlife camera and image segmentation artificial intelligence
GEM: AI-Based Discovery of the Governing Equations Describing the Geospace Environment
Addressing bias in bagging and boosting regression models
Application of Machine Learning to Multigroup Microscopic Cross Sections
Mixed-Precision S/DGEMM Using the TF32 and TF64 Frameworks on Low-Precision AI Tensor Cores
Twenty Years and Counting—Where are they? Practical Recommendations for Commercializing AI/ML for Intrusion Detection in the Nuclear Industry
All Records
Investigate Artificial Intelligence/machine Learning to Improve Supply Chain Management
Artificial Intelligence/ Machine Learning SBIR Phase III
System-Wide Test and Evaluation and Applied Artificial Intelligence/Machine Learning
Transforming Energy Through Computational Excellence: Artificial Intelligence and Machine Learning
Exploring Advanced Computational Tools and Techniques with Artificial Intelligence and Machine Learning in Operating Nuclear Plants
Domain Aware Techniques in AI: A Survey
LDRD 18A12-088 , Thermomechanical Processing of Titanium Alloys for Improved Ballistic Performance
Improving Reliability of Large Language Models for Nuclear Power Plant Diagnostics Technical Presentation
Risk-informed Graded Approach for Reliability and Performance Assessment of Machine Learning and Artificial Intelligence for Advanced Condition...
Travel: NSF Student Travel Grant for 2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Conference: NSF Student Travel Grant for 2026 IEEE International Conference on Computer Communications (INFOCOM)
MHD, disruptions and control physics: Chapter 4 of the special issue: on the path to tokamak burning plasma operation
Conference: Nonlinear Partial Differential Equations and Stochastic Methods Workshop
Optimization of Mitigating System Performance Index to Improve Nuclear Power Plant Safety and Efficiency
Bridge2AI:Salutogenesis Data Generation Project
Quantitative Insight to Fission Gas Pores Distribution in Irradiated Annular U-10Zr Metallic Fuel Using Machine Learning
From Chaos to Clarity: Autonomous Materials Discovery for Extreme Environments
In Silico Chemical Experiments in the Age of AI: From Quantum Chemistry to Machine Learning and Back
2026 Sleep Regulation and Function Gordon Research Conference and Gordon Research Seminar
Machine Learning for Autonomous Drones Operations
Securing Anomaly Detection for Process-Based Time Series
CAREER: Trustworthy AI-Native Network Autonomy in Open Radio Access Networks
Collaborative Research: IMR: MM-1B: Privacy-Preserving Data Sharing for Mobile Internet Measurement and Traffic Analytics
Integrating Multi-Omics to Uncover Shared Mechanisms Linking Physical Frailty and Alzheimer's Disease: Inflammation and Relevant Pathways
Flexible AI Models for Grid Resilience
Integrating Conversational Artificial Intelligence Systems into Science Gateways
Risk-informed Graded Approach for Reliability and Performance Assessment for Advanced Condition Monitoring Techniques
Collaborative Research: CBET-EPSRC: Investigation of Coherent Structures in Elastic and Elasto-inertial Turbulence
Accelerated Machine Learning for High Energy Physics
CAREER: Distributed Intelligence in Future Wireless Networks: From System-Aware Learning to System-Learning Co-designs
CAREER: Foundations of Scalable and Resilient Distributed Real-Time Decision Making in Open Multi-Agent Systems
A Survey of Proposed Standards and Regulations for Artificial Intelligence
Fuel Cell Inverter Transition Between Modes of Operation (Grid-Forming and Grid-Following)
Using HPC for AI/ML
Designing and Utilizing Material Acceleration Platforms: Need for Workforce Development
Resimulation-based self-supervised learning for pretraining physics foundation models
Can We Use Machine Learning to Control Nuclear Power Plants?
Revolutionizing Energy Storage: AI, Automation, and Advanced Modeling as Catalysts for Next-Generation Breakthroughs
Predicting Li-ion Battery Performance for Impurity-doped NMC Cathodes Using Deep Learning
CAREER: Identification of causal relationships between epigenetic regulation, gene expression, and phenotypic diversity within and across generations...
Honing Precision Medicine for Type 2 Diabetes in the Veteran Population
Conference: North American Gender Summit 24 and the Roadmap for Action 2.0
Explainable machine-learning tools for predictive maintenance of circulating water systems in nuclear power plants
Jet classification using high-level features from anatomy of top jets
Monitoring river flow status using low-cost wildlife camera and image segmentation artificial intelligence
GEM: AI-Based Discovery of the Governing Equations Describing the Geospace Environment
Addressing bias in bagging and boosting regression models
Application of Machine Learning to Multigroup Microscopic Cross Sections
Mixed-Precision S/DGEMM Using the TF32 and TF64 Frameworks on Low-Precision AI Tensor Cores
Twenty Years and Counting—Where are they? Practical Recommendations for Commercializing AI/ML for Intrusion Detection in the Nuclear Industry
Investigate Artificial Intelligence/machine Learning to Improve Supply Chain Management
Artificial Intelligence/ Machine Learning SBIR Phase III
System-Wide Test and Evaluation and Applied Artificial Intelligence/Machine Learning
Transforming Energy Through Computational Excellence: Artificial Intelligence and Machine Learning
Exploring Advanced Computational Tools and Techniques with Artificial Intelligence and Machine Learning in Operating Nuclear Plants
Domain Aware Techniques in AI: A Survey
LDRD 18A12-088 , Thermomechanical Processing of Titanium Alloys for Improved Ballistic Performance
Improving Reliability of Large Language Models for Nuclear Power Plant Diagnostics Technical Presentation
Risk-informed Graded Approach for Reliability and Performance Assessment of Machine Learning and Artificial Intelligence for Advanced Condition...
Travel: NSF Student Travel Grant for 2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Conference: NSF Student Travel Grant for 2026 IEEE International Conference on Computer Communications (INFOCOM)
MHD, disruptions and control physics: Chapter 4 of the special issue: on the path to tokamak burning plasma operation
Conference: Nonlinear Partial Differential Equations and Stochastic Methods Workshop
Optimization of Mitigating System Performance Index to Improve Nuclear Power Plant Safety and Efficiency
Bridge2AI:Salutogenesis Data Generation Project
Quantitative Insight to Fission Gas Pores Distribution in Irradiated Annular U-10Zr Metallic Fuel Using Machine Learning
From Chaos to Clarity: Autonomous Materials Discovery for Extreme Environments
In Silico Chemical Experiments in the Age of AI: From Quantum Chemistry to Machine Learning and Back
2026 Sleep Regulation and Function Gordon Research Conference and Gordon Research Seminar
Machine Learning for Autonomous Drones Operations
Securing Anomaly Detection for Process-Based Time Series
CAREER: Trustworthy AI-Native Network Autonomy in Open Radio Access Networks
Collaborative Research: IMR: MM-1B: Privacy-Preserving Data Sharing for Mobile Internet Measurement and Traffic Analytics
Integrating Multi-Omics to Uncover Shared Mechanisms Linking Physical Frailty and Alzheimer's Disease: Inflammation and Relevant Pathways
Flexible AI Models for Grid Resilience
Integrating Conversational Artificial Intelligence Systems into Science Gateways
Risk-informed Graded Approach for Reliability and Performance Assessment for Advanced Condition Monitoring Techniques
Collaborative Research: CBET-EPSRC: Investigation of Coherent Structures in Elastic and Elasto-inertial Turbulence
Accelerated Machine Learning for High Energy Physics
CAREER: Distributed Intelligence in Future Wireless Networks: From System-Aware Learning to System-Learning Co-designs
CAREER: Foundations of Scalable and Resilient Distributed Real-Time Decision Making in Open Multi-Agent Systems
A Survey of Proposed Standards and Regulations for Artificial Intelligence
Fuel Cell Inverter Transition Between Modes of Operation (Grid-Forming and Grid-Following)
Using HPC for AI/ML
Designing and Utilizing Material Acceleration Platforms: Need for Workforce Development
Resimulation-based self-supervised learning for pretraining physics foundation models
Can We Use Machine Learning to Control Nuclear Power Plants?
Revolutionizing Energy Storage: AI, Automation, and Advanced Modeling as Catalysts for Next-Generation Breakthroughs
Predicting Li-ion Battery Performance for Impurity-doped NMC Cathodes Using Deep Learning
CAREER: Identification of causal relationships between epigenetic regulation, gene expression, and phenotypic diversity within and across generations...
Honing Precision Medicine for Type 2 Diabetes in the Veteran Population
Conference: North American Gender Summit 24 and the Roadmap for Action 2.0
Explainable machine-learning tools for predictive maintenance of circulating water systems in nuclear power plants
Jet classification using high-level features from anatomy of top jets
Monitoring river flow status using low-cost wildlife camera and image segmentation artificial intelligence
GEM: AI-Based Discovery of the Governing Equations Describing the Geospace Environment
Addressing bias in bagging and boosting regression models
Application of Machine Learning to Multigroup Microscopic Cross Sections
Mixed-Precision S/DGEMM Using the TF32 and TF64 Frameworks on Low-Precision AI Tensor Cores
Twenty Years and Counting—Where are they? Practical Recommendations for Commercializing AI/ML for Intrusion Detection in the Nuclear Industry
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