HQ086024C7603
Definitive Contract
Overview
Government Description
SBIR/STTR phase II R&D Artificial Intelligence-Based Recommender For Model-Based Systems Engineering (ARMS)
Awardee
Awarding / Funding Agency
PSC
Place of Performance
Gaithersburg, MD 20878 United States
Pricing
Cost Plus Fixed Fee
Set Aside
Small Business Set Aside - Total (SBA)
Extent Competed
Full And Open Competition After Exclusion Of Sources
Est. Average FTE
3
Related Opportunity
None
Nexcepta was awarded
Definitive Contract HQ086024C7603 (HQ0860-24-C-7603)
for Sbir/Sttr Phase Ii R&D Artificial Intelligence-Based Recommender For Model-Based Systems Engineering (ARMS)
worth up to $1,467,074
by Missile Defense Agency
in January 2024.
The contract
has a duration of 2 years and
was awarded
through SBIR Topic Recommendation Technology for Digital Engineering Artifacts
with a Small Business Total set aside
with
NAICS 541715 and
PSC AC13
via direct negotiation acquisition procedures with 1 bid received.
SBIR Details
Research Type
Small Technology Transfer Research Program (STTR) Phase II
Title
Artificial Intelligence-based Recommender for Model-Based Systems Engineering (ARMS)
Related Solicitation
Abstract
Recommender systems provide information filtering and retrieval capabilities that utilize various sources of data to infer end-user interests and predict their preferences for a given set of items, with the purpose of offering a typically prioritized list of potentially interesting items. Recommender systems are widely used by commercial applications such as music and video broadcasting platforms, e-commerce sites and social networks, and they have started finding applications in assisting engineering efforts. Specifically, recommender systems can be used in Model Based Systems Engineering (MBSE) applications that focus on creating and exploiting domain models as the primary means of information exchange between engineers, rather than on document-based information exchange. As systems are becoming increasingly complex and interconnected, the document-based artifacts are becoming more challenging to manage. Systems Engineering typically depends on the use of models to address concerns from various domains (e.g., mechanical, optical, and control systems). Due to the large amounts of artifacts and data (e.g., engineering analysis, test, Modeling and Simulation (M&S), and production and fielding data), it is almost infeasible for system engineers to continuously monitor and access all the artifacts, tools, and software components. Thus, an automated software solution to assist fast and accurate information retrieval is much needed for MBSE applications. To address this critical need, we propose Artificial Intelligence-based Recommender System (ARMS) for MBSE assistance. Approved for Public Release | 24-MDA-11673 (8 Jan 24)
Research Objective
The goal of phase II is to continue the R&D efforts initiated in Phase I. Funding is based on the results achieved in Phase I and the scientific and technical merit and commercial potential of the project proposed in Phase II. STTRs are completed in conjunction with a research institution.
Partnered Research Institution
George Mason University
Topic Code
MDA22-T002
Agency Tracking Number
B2-3342
Solicitation Number
22.B
Contact
Mda S Pmo
Status
(Complete)
Last Modified 5/9/25
Period of Performance
1/24/24
Start Date
1/23/26
Current End Date
1/23/26
Potential End Date
Obligations
$1.5M
Total Obligated
$1.5M
Current Award
$1.5M
Potential Award
Award Hierarchy
Definitive Contract
HQ086024C7603
Subcontracts
Activity Timeline
Transaction History
Modifications to HQ086024C7603
People
Suggested agency contacts for HQ086024C7603
Competition
Number of Bidders
1
Solicitation Procedures
Negotiated Proposal/Quote
Evaluated Preference
None
Commercial Item Acquisition
Commercial Item Procedures Not Used
Simplified Procedures for Commercial Items
No
Other Categorizations
Subcontracting Plan
Plan Not Required
Cost Accounting Standards
Exempt
Business Size Determination
Small Business
Defense Program
DoD Claimant Code
None
IT Commercial Item Category
Not Applicable
Awardee UEI
GKQPK2E8N4Z6
Awardee CAGE
9BEN1
Agency Detail
Awarding Office
HQ0860 MISSILE DEFENSE AGENCY (MDA)
Funding Office
HQ0147
Created By
andrea.mitchell.hq0860@mda.mil
Last Modified By
andrea.mitchell.hq0860@mda.mil
Approved By
andrea.mitchell.hq0860@mda.mil
Legislative
Legislative Mandates
None Applicable
Performance District
MD-06
Senators
Benjamin Cardin
Chris Van Hollen
Chris Van Hollen
Representative
David Trone
Modified: 5/9/25