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Request for Information (RFI) for GEOINT AI/ML Algorithm Orchestration Framework
Contract Overview
Solicitation details, issuing organization, response deadlines, documents, and interested companies for this government contract opportunity.
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AI Contract Overview
The Department of Defense, through the Air Force Life Cycle Management Center's C2ISR Division, is seeking information from prime contractors about their capabilities in supporting site functions and logistics sustainment related to Global Network Systems, specifically focusing on algorithm management for geospatial intelligence (GEOINT) applications. This Request for Information (RFI) aims to gather knowledge on contractors' experience with advanced AI/ML algorithm orchestration frameworks, exploitation applications involving electro-optical and synthetic aperture radar imagery, cloud-based GEOINT algorithm storefronts and repositories, and the integration of these systems with existing geospatial processing capabilities. The request highlights the need for personnel skilled in higher-level integration and orchestration, capable of managing workflows and algorithm invocation processes critical to processing geospatial data. Respondents are asked to provide detailed capability statements addressing multiple aspects, including modular design and open architecture approaches, experience with AI/ML exploitation applications for imagery, cloud-hosted GEOINT products with attention to DoD security accreditations, and technical test support for both hardware and cloud environments. Additional areas of interest include digital interface expertise aligned with military standards, teaming arrangements with integration partners, production capacity for large-scale machine learning imagery processing, and processes for obtaining necessary security clearances. Responses are due electronically by June 3, 2026, and should focus on prime contractor capabilities, with subcontractor information included only through the prime. This RFI is solely for information gathering and planning; it does not represent a contract offer or solicitation for proposals.
General Info
Agency
NAICS
Place of Performance
Hanscom AFB, MA, USASet-Aside
Timeline
Submission Closed
Organization & Contact Information
Full Description
The Air Force Life Cycle Management Center (AFLCMC) Command and Control Intelligence, Surveillance and Reconnaissance (C2ISR) Division requires site support functions and logistics sustainment necessary to maintain capabilities for Global Network Systems. Through this requirement, the Government is seeking individuals with strong background and experience with algorithm management. These individuals must be able to perform higher integration and orchestration functions in the management and oversight of the architecture, its systems and programs. They must also possess an exceptional understanding of the fundamental principles of algorithm invocation and workflows for processing against geospatial imagery and integrating algorithm marketplace systems with existing complex geospatial processing capabilities.
THIS IS A REQUEST FOR INFORMATION (RFI) ONLY. This RFI is issued solely for information and planning purposes - it does not constitute a Request for Proposal (RFP) or a promise to issue an RFP in the future. This RFI does not commit the Government to contract for any service whatsoever. Further, the Air Force is not at this time seeking proposals and will not accept unsolicited proposals. Responders are advised that the U.S. Government will not pay for any information or administrative costs incurred in response to this RFI; all costs associated with responding to this RFI will be solely at the interested party's expense. Not responding to this RFI does not preclude participation in any future RFP, if any is issued.
Interested parties are requested to respond to this RFI by providing a company capability statement pertaining to the below areas of expertise. ONLY prime contractors shall complete a capability statement; however, prime contractors are able to include information provided by their subcontractors in their response. Capability statements shall not exceed 20 pages in length and must address the following:
a. GEOINT AI/ML Algorithm Orchestration Framework
Please describe your experience with modular design and open architecture approaches for integrating, testing, and hosting advanced algorithms and cataloging data in support of GEOINT exploitation. Detail experience handling the ingest of GEOINT products (imagery, geoJSONs, etc.) or data from external sources and performing automatic tasking, workflow management, or algorithm retraining/implementation accordingly. Include information on your experience with machine learning algorithm orchestration or algorithm repository implementations and other similar system-of-systems-based approaches.
b. GEOINT AI/ML Exploitation Applications
Highlight specific experience and discuss current/past projects involving any or all of the following:
- Exploitation of electro-optical (EO) and synthetic aperture radar (SAR) imagery
- Automatic target recognition (ATR) in EO/SAR imagery via AI/ML algorithms
- Point clouds and or 3D/4D generating volumes from EO/SAR imagery
- Synthetic target/object (CAD model) insertion into EO/SAR imagery
c. GEOINT AI/ML Algorithm Storefront & Repository Integration
Discuss your familiarity and any current or past projects hosting/supporting GEOINT or geospatial products, applications, or exploitation capabilities in a cloud-based environment. Highlight relevant experience with Air Force/DoD security accreditation of such environments and or the products that go in them. Provide information on your aptitude with Amazon Web Services, DAF Cloudworks, or other similar cloud-based services.
d. Test Support Capacity Detail your test support capabilities, including technical support for testing and integration of software applications into both on premise hardware and cloud-based environments. Include estimates on your ability to travel and support monthly Agile software release cycles at 3 different CONUS locations.
e. Digital Interface Capabilities Describe your experience and capabilities with digital interfaces, specifically citing standards such as MIL-STD-1760 or Built-In-Test (BIT) functionalities.
f. Modular Design Attributes and Open Architecture Detail any modular design approaches or open architecture protocols used within your solutions. Explain the benefits and flexibility these design attributes bring to the end-users.
g. Teaming Arrangements or Integration Partners List any teaming arrangements or integration partners that are part of your project implementations. Provide details on joint ventures or partnerships that enhance your project's success.
h. Production Capacity and Scale-Up Timeline Estimates Provide estimates of your production capacity to meet the scale required for large scale machine learning imagery processing implementations on government hardware. Include timeline estimates for scaling up production to meet demand.
i. Ability to Obtain/Maintain Clearances Describe your company's capability and processes to obtain new clearances (both for the company and for individual employees) as needed to support potential future work related to this Imagery Post Processing Capability. Include an estimated timeframe to obtain necessary clearances, if required.
Responses must be submitted electronically to Jared Duhaime, jared.duhaime.1@us.af.mil nolater than June 3, 2026, 5:00 PM EST. Proprietary information, if any, should be minimized and MUST BE CLEARLY MARKED. To aid the Government, please segregate proprietary information. Please be advised that all submissions become Government property and will not be returned. Verbal questions will NOT be accepted. Questions will be answered through email. The Government does not guarantee that questions received after June 3, 2026 will be answered.
cc: AFLCMC/ C3IWK (Jared I. Hines, jared.hines.1@us.af.mil; Sarah Mcdonough, sarah.mcdonough.2@us.af.mil; Marcel Bedard, marcel.bedard.ctr@us.af.mil; Timothy Lee, timothy.lee.15.ctr@us.af.mil)
