

We are no longer accepting white papers. SBIR submissions are now limited to those eligible through the xTech competition.
IMPORTANT: xTechIgnite will be used to identify small business concerns that meet the criteria for award. Winners selected from the xTechIgnite prize competition will be the only firms eligible to submit an SBIR proposal under any of the topics listed above. Proposals submitted to the topics listed above by nonwinners of the xTechIgnite competition will not be evaluated. See the full xTechIgnite competition RFI here: https://www.xtech.army.mil/competition/xtechignite/.
The white paper submission deadline for xTechIgnite is March 12, 2025. White papers must be submitted by following instructions provided at the xTechIgnite link above. NOTE: white papers are NOT submitted to DSIP. Small business concerns that do not submit a concept white paper to the xTechIgnite competition before the March 12, 2025 deadline will be ineligible to compete or submit a full SBIR proposal to DSIP.
Objective
The objective of this topic is to create a realistic modeling and simulation environment using Generative AI for NGC2, the Army’s new approach to a data-centric C2 architecture.
Description
GenAI would be used to create realistic tactical data streams to create a diverse set of scenarios representing current threat, blue force, and logistics Command and Control and maneuver operations. The environment should reflect a realistic tactical network (DDIL environment) with multiple data access and delivery demands in real time. The generated data would be at scale and based on realistic models (e.g. tracks should be following likely routes/roads based on local terrain at a realistic pace and elevation vs randomly placed on a map at a random time and space).
Another objective is the use AI (or some other technique) to simulate limited bandwidth as data is ‘exchanged’ from producer to consumer to model a DDIL environment that logically aligns to the scenario fed by the GenAI data.
The Army’s Next Gen Command and Control program is a large part of the effort to modernize the Army’s network. It will provide commanders with the adaptive C2 architecture needed to make rapid decisions in a contested environment. NGC2 is the Army’s joint effort with industry to build a “data-centric” command and control system enabled through network transport. The goal is to recreate the service’s enterprise data architecture and renew its operational software framework.
IMPORTANT: A prize competition, xTechIgnite, will be used to identify small business concerns that meet the criteria for award for this topic. Winners selected from the xTechIgnite prize competition will be the only firms eligible to submit a SBIR proposal under this topic. All other proposals will not be evaluated. See the full xTechIgnite competition details here: https://www.xtech.army.mil/competition/xtechignite/.
Phase I
This topic is only accepting Phase I proposals for a cost up to $250,000 for a 6-month period of performance. Firms should expect to deliver a feasibility study around producing software that when run, creates and exposes an API that delivers tactically relevant data at scale following a logical scenario given near peer threat behavior today.
Ideally, users should be able to toggle features to affect the volume and or velocity of the data generated and the ability to artificially interrupt the data or lose packets to simulate a DDIL environment or the loss of network transport. The study should address deployment options and impacts of the software being used in both a LAN and cloud environments.
Phase II
This phase will involve extensive testing and iteration to ensure the AI models meet performance, accuracy, and security standards. Firms will also collaborate closely with Project Linchpin to access operational data at the and onboard their solutions onto the Impact Level 5 (IL5) environment. By the end of Phase II, the expectation is to deliver a well-defined, functional prototype that demonstrates the AI technology’s effectiveness.
Firms will produce and deliver software that when run, creates and exposes an API that delivers tactically relevant data at scale following a logical scenario given near peer threat behavior today. The application should allow users to toggle features to affect the volume and or velocity of the data being generated and the ability to artificially interrupt the data flow or lose packets to simulate a DDIL environment or the loss of network transport. Users should be able to define the data types, data fields, size, and other data attributes as desired or simply allow the software to ‘decide’ the generated data ontologies.
Phase III
GenAI has many commercial use cases. It applies in all big data industries like healthcare, social media, advertising, and investing.
Submission Information
For more information, and to submit your full proposal package, visit the DSIP Portal.
SBIR|STTR Help Desk: usarmy.sbirsttr@army.mil
References:
We are no longer accepting white papers. SBIR submissions are now limited to those eligible through the xTech competition.
IMPORTANT: xTechIgnite will be used to identify small business concerns that meet the criteria for award. Winners selected from the xTechIgnite prize competition will be the only firms eligible to submit an SBIR proposal under any of the topics listed above. Proposals submitted to the topics listed above by nonwinners of the xTechIgnite competition will not be evaluated. See the full xTechIgnite competition RFI here: https://www.xtech.army.mil/competition/xtechignite/.
The white paper submission deadline for xTechIgnite is March 12, 2025. White papers must be submitted by following instructions provided at the xTechIgnite link above. NOTE: white papers are NOT submitted to DSIP. Small business concerns that do not submit a concept white paper to the xTechIgnite competition before the March 12, 2025 deadline will be ineligible to compete or submit a full SBIR proposal to DSIP.
Objective
The objective of this topic is to create a realistic modeling and simulation environment using Generative AI for NGC2, the Army’s new approach to a data-centric C2 architecture.
Description
GenAI would be used to create realistic tactical data streams to create a diverse set of scenarios representing current threat, blue force, and logistics Command and Control and maneuver operations. The environment should reflect a realistic tactical network (DDIL environment) with multiple data access and delivery demands in real time. The generated data would be at scale and based on realistic models (e.g. tracks should be following likely routes/roads based on local terrain at a realistic pace and elevation vs randomly placed on a map at a random time and space).
Another objective is the use AI (or some other technique) to simulate limited bandwidth as data is ‘exchanged’ from producer to consumer to model a DDIL environment that logically aligns to the scenario fed by the GenAI data.
The Army’s Next Gen Command and Control program is a large part of the effort to modernize the Army’s network. It will provide commanders with the adaptive C2 architecture needed to make rapid decisions in a contested environment. NGC2 is the Army’s joint effort with industry to build a “data-centric” command and control system enabled through network transport. The goal is to recreate the service’s enterprise data architecture and renew its operational software framework.
IMPORTANT: A prize competition, xTechIgnite, will be used to identify small business concerns that meet the criteria for award for this topic. Winners selected from the xTechIgnite prize competition will be the only firms eligible to submit a SBIR proposal under this topic. All other proposals will not be evaluated. See the full xTechIgnite competition details here: https://www.xtech.army.mil/competition/xtechignite/.
Phase I
This topic is only accepting Phase I proposals for a cost up to $250,000 for a 6-month period of performance. Firms should expect to deliver a feasibility study around producing software that when run, creates and exposes an API that delivers tactically relevant data at scale following a logical scenario given near peer threat behavior today.
Ideally, users should be able to toggle features to affect the volume and or velocity of the data generated and the ability to artificially interrupt the data or lose packets to simulate a DDIL environment or the loss of network transport. The study should address deployment options and impacts of the software being used in both a LAN and cloud environments.
Phase II
This phase will involve extensive testing and iteration to ensure the AI models meet performance, accuracy, and security standards. Firms will also collaborate closely with Project Linchpin to access operational data at the and onboard their solutions onto the Impact Level 5 (IL5) environment. By the end of Phase II, the expectation is to deliver a well-defined, functional prototype that demonstrates the AI technology’s effectiveness.
Firms will produce and deliver software that when run, creates and exposes an API that delivers tactically relevant data at scale following a logical scenario given near peer threat behavior today. The application should allow users to toggle features to affect the volume and or velocity of the data being generated and the ability to artificially interrupt the data flow or lose packets to simulate a DDIL environment or the loss of network transport. Users should be able to define the data types, data fields, size, and other data attributes as desired or simply allow the software to ‘decide’ the generated data ontologies.
Phase III
GenAI has many commercial use cases. It applies in all big data industries like healthcare, social media, advertising, and investing.
Submission Information
For more information, and to submit your full proposal package, visit the DSIP Portal.
SBIR|STTR Help Desk: usarmy.sbirsttr@army.mil
References: