In March, the secretary of protection directed the Division of Protection (DoD) to undertake the Software program Acquisition Pathway (SWP) to speed up the event and deployment of capabilities to the warfighter. The directive to default to the SWP arrives at a time when DoD missions more and more depend on software program and the associated applied sciences of cybersecurity and synthetic intelligence (AI)—all of that are focus areas on the SEI. These technical areas develop in significance as nationwide safety and protection organizations require enhanced capabilities to guard a broader vary of targets in opposition to extra refined and adept threats.
On this put up, I’ll spotlight the methods by which our analysis and improvement help DoD’s use of contemporary software program practices at every section of the software program improvement and operation lifecycle.
The SEI and the Software program Acquisition Pathway
The SEI’s depth of expertise with data-driven strategies, strategies, and approaches; software program engineering; and acquisition science catalyzed our work on the SWP.
Part 255 of the FY2020 Nationwide Protection Authorization Act (NDAA) referred to as on the DoD to orient its software program actions in analysis, improvement, testing, and acquisition towards fashionable software program engineering practices described in two research that SEI additionally contributed to: the Protection Innovation Board’s 2019 Software program Acquisition and Practices (SWAP) and the Protection Science Board Activity Power’s 2018 Design and Acquisition of Software program for Protection Programs.
As a part of our SWP work, the SEI labored hand-in-hand with stakeholders throughout the DoD and the protection industrial base within the iterative improvement, testing, and updating of the coverage and supporting instruments and assets. As referred to as for within the coverage doc DoDI 5000.87, DoD applications are to emphasise risk-based cybersecurity all through the lifecycle, counting on fashionable software program practices together with DevSecOps. Cybersecurity and DevSecOps kind a basis on which these applications can incorporate new AI applied sciences extra securely.
For the reason that SEI’s inception as a federally funded analysis and improvement heart (FFRDC), we’ve labored with academia, authorities, and trade to conduct analysis and assist DoD applications apply these important instruments, strategies, practices, and insurance policies. The SEI prioritizes improvement of strategies to help steady, resilient, and well timed deployment of software program functionality for the warfighter whereas guaranteeing that software program system efficiency and safety usually are not compromised in mission-critical settings.
SEI Affect on Modernizing DoD Software program Improvement
Over the past decade, the DoD has been incorporating rules and practices that promote steady, iterative deployment of software program functionality. One such initiative was the event of the 250-plus member Agile Collaboration Group. Members share classes discovered to assist DoD practitioners extra readily profit from utilizing Agile strategies of their larger-scale programs. When the group started in 2012, it centered on overcoming adoption challenges round Agile. In 2017, it expanded into DevSecOps analysis, improvement, and discipline engagement.
In 2024 the SEI performed a examine analyzing the state of DevSecOps within the DoD, the outcomes of which have been lately launched by the DoD Chief Info Officer (CIO). The examine discovered that whereas sure applications have had success adopting DevSecOps practices, the DoD nonetheless must implement these successes at scale. The examine holds partly that
- Investing in DoD software program factories is vital to securing our future functionality.
- DevSecOps is a key technique to speed up supply time.
- Success rests on reimagining a mission-ready DevSecOps workforce.
- Robust management dedicated to creatively driving options is vital to overcoming boundaries.
The DevSecOps examine additionally acknowledges that it’s essential to align these practices with the mission.
To a major diploma, the efficient use of contemporary software program practices rests on recognizing the strategic worth of knowledge that’s now out there to the DoD in more and more huge quantities. To offer DoD analysts better visibility into DevSecOps pipeline knowledge, the SEI lately launched Polar, an answer to the restrictions of conventional batch knowledge processing. Polar offers visibility into the present state of a company’s DevSecOps infrastructure, permitting for the whole lot of the info to be engaged for knowledgeable choice making. The Polar framework, which will be downloaded from the SEI’s GitHub web site, helps DevSecOps organizations monitor and achieve insights into safety elements and handle the challenges posed by constructing complicated software program programs in extremely regulated environments.
DoD program leaders should more and more handle all the software program improvement functionality. This accountability typically means dealing successfully with the technical debt that may accumulate in getting old programs in addition to that which might accumulate in fast, iterative improvement. The SEI has been a pioneer in creating and making use of technical debt administration practices in complicated programs for nationwide safety and protection. Starting in 2010, the SEI challenged the software program engineering analysis group to search out methods to handle technical debt and convened annual workshops on the subject. These workshops produced case research, empirical outcomes from making use of strategies, and comparisons of instruments shared by the SEI and the software program group in lots of of publications within the Affiliation for Computing Equipment (ACM) and IEEE digital libraries. In 2018, the SEI’s group efforts resulted within the first worldwide convention on the topic, TechDebt. The eighth TechDebt convention was held in April 2025.
The SEI additionally led by way of ground-breaking analysis on the subject. An early paper on the subject, In Search of a Metric for Managing Architectural Debt, authored by SEI and College of British Columbia researchers, acquired the Most Influential Paper Award for its lasting affect on software program structure analysis and apply on the 2022 IEEE Worldwide Convention on Software program Structure. The SEI’s experience in technical debt R&D is the explanation that the DoD commissioned a group of our software program improvement specialists to write down a report addressing the NDAA 2022 Part 835 mandate, delivered to Congress in December 2023.
The SEI has used its position to allow the DoD’s efficient use of contemporary software program engineering practices in different methods, as effectively, together with instruments to
SEI Affect on Modernizing DoD Software program in Operation
A core tenet of the SEI’s mission is to allow the DoD to quickly deploy resilient software program capabilities. To do that, they want the proper tooling to make use of fashionable software program practices and the means to guarantee system efficiency.
To facilitate DevSecOps use with large-scale programs, the SEI created the Platform-Unbiased Mannequin (PIM)—out there on the SEI’s GitHub web site—to explain a DevSecOps pipeline on the highest stage: necessities, the product improvement lifecycle course of, and the organizational roles wanted to provide software program. Since its launch, a cross-disciplinary SEI group has enhanced the PIM by incorporating menace situations: assault kind, actors, results, and pipeline property for defense. The ensuing upgraded instruments can be utilized to create safer processes and pipelines or spot safety weaknesses in present ones. When the pipeline is safer, so too is the software program it produces.
To enhance software program danger evaluation, SEI researchers and power builders lately launched an open-source software that streamlines and automates high quality assurance testing and evaluation, Silent Sentinel. This software offers a repeatable, constant course of to offer system stakeholders a sensible evaluation of how an utility will have an effect on their deployment surroundings.
Steady supply of software program functionality additionally signifies that programs utilizing these capabilities want steady assurance of security, safety, and different qualities. In ongoing work, the SEI is looking for to cut back the effort and time required to re-assure giant programs. This notion of system assurance extends past safety to embody a number of architecturally important considerations, together with efficiency, modifiability, security, and reliability.
SEI Affect on AI System Assurance
The world, and definitely the DoD’s expertise surroundings, is changing into more and more AI-augmented. When AI programs for nationwide safety fail in improvement or operation, they trigger critical, real-world penalties. Sadly, there are few accepted finest practices for testing AI programs because of the challenges of correctly defining necessities and evaluating standards.
In 2023, the Workplace of the Underneath Secretary of Protection for Analysis and Engineering (OUSD(R&E)) and the SEI launched a middle geared toward establishing strategies for assuring trustworthiness in AI programs with emphasis on interplay between people and autonomous programs. The Middle for Calibrated Belief Measurement and Analysis (CaTE) goals to assist the DoD be certain that AI programs are protected, dependable, and reliable earlier than being fielded to operators in vital conditions.
Additional, as detailed in a current weblog put up and podcast, a gaggle of SEI software program and AI specialists lately launched Machine Studying Take a look at and Analysis (MLTE), a brand new course of and power collectively developed by the SEI and the Military AI Integration Middle (AI2C) to create safer, extra dependable ML programs. MLTE addresses three issues widespread within the ML mannequin improvement course of which are boundaries to efficient check and analysis processes.
- Communication boundaries between product improvement group members. Workforce members are sometimes siloed throughout organizations, resulting in issues in gathering ML mannequin necessities cognizant of the system context and speaking ML mannequin analysis outcomes.
- Documentation issues for ML mannequin necessities. Eliciting and documenting ML mannequin necessities is commonly a problem for organizations, and documentation for ML system necessities is commonly lacking or of low high quality.
- Requirement analysis. Even when necessities are correctly outlined and documented, there is no such thing as a ML-specific methodology to help their implementation, testing, and analysis.
Broadening our perspective to AI danger administration, we explored the way to conceptualize fashionable AI danger administration frameworks (RMFs) analogous to these for cyber danger. This work illustrates the broad scope of challenges that AI Engineering practices should handle, together with software program engineering and cybersecurity concerns. A current SEI weblog put up famous this:
We should think about, in different phrases, the conduct of a system or an related workflow underneath each anticipated and sudden inputs, the place these inputs could also be significantly problematic for the system. It’s difficult, nevertheless, even to border the query of the way to specify behaviors for anticipated inputs that aren’t precisely matched within the coaching set. A human observer might have an intuitive notion of similarity of latest inputs with coaching inputs, however there is no such thing as a assurance that this aligns with the precise that includes—the salient parameter values—inner to a educated neural community.
SEI analysis groups additionally noticed the necessity for an AI safety response group analogous to pc safety response. An knowledgeable and motivated attacker might intentionally manipulate operational inputs, coaching knowledge, and different elements of the system improvement course of to create circumstances that impair appropriate operation of an AI system. To deal with this want, the SEI launched the first-of-its form AI Safety Incident Response Workforce (AISIRT).
To guarantee that future AI programs might be strong, safe, scalable, and able to serving warfighter wants, the SEI has been main the initiative to advance the self-discipline of AI Engineering. This emergent self-discipline will allow practitioners to focus R&D efforts in AI on creating instruments, programs, and processes for nationwide safety contexts.
SEI Affect on Software program Acquisition Safety
Just about all services {that a} DoD program acquires are supported by or combine with info expertise that features third-party parts or companies. Practices vital to monitoring and managing these dangers will be scattered, leading to inconsistencies, gaps, and gradual response to disruptions. To deal with these points, SEI researchers created the Acquisition Safety Framework (ASF), which offers the DoD with a roadmap for constructing safety and resilience right into a system moderately than bolting them on after deployment. The ASF promotes higher communication and knowledge sharing throughout all program and provider groups to coordinate their administration of engineering and provide chain dangers. On this manner, the ASF helps applications match threats in a dynamic surroundings with the fast evolution of wanted software program capabilities.
As well as, in early 2020 the SEI partnered with Johns Hopkins College Utilized Physics Laboratory (APL), a college affiliated analysis heart, to launch the preliminary model of the cybersecurity maturity mannequin on the coronary heart of the Cybersecurity Maturity Mannequin Certification (CMMC) program. CMMC offers the DoD Workplace of the Underneath Secretary of Protection for Acquisition and Sustainment (OUSD(A&S)) with a strong software to enhance risk-informed choices and contractor safety within the protection industrial base provide chain.
SEI Affect on the Way forward for Software program Engineering Analysis
An necessary a part of the SEI mission is to anticipate each challenges and alternatives in its three mission areas: software program engineering, cybersecurity, and AI. To develop an agenda for the following decade of software program engineering analysis, the SEI introduced collectively an advisory board of visionaries and senior thought leaders to develop an agenda for the following decade of software program engineering analysis. This effort led to the 2021 publication, Architecting the Way forward for Software program Engineering: A Nationwide Agenda for Software program Engineering Analysis and Improvement. The examine is a catalyst for analysis and improvement at Carnegie Mellon College and the SEI in areas similar to AI-augmented software program improvement, the assurance of constantly evolving software program programs, and engineering AI-enabled software program programs.
That SEI-led examine is influencing the DoD software program ecosystem and frightening follow-on actions. As an illustration, in 2023 the SEI and the Networking and Info Know-how Analysis and Improvement (NITRD) program organized and hosted the U.S. Management in Software program Engineering and AI Engineering workshop; see the workshop’s government abstract. As well as, we labored with the Nationwide Protection Industrial Affiliation’s Rising Applied sciences Institute (NDIA ETI) to supply suggestions for the DoD because it shapes its software program modernization actions and analysis portfolio. Additional, the SEI is partnering with the software program engineering and AI communities to implement the suggestions of the analysis agenda. The SEI partnered with the Federal Aviation Administration and Vanderbilt College to convene two workshops in 2024 to handle the reassurance of constantly evolving software program programs, one of many examine’s areas of focus. SEI researchers together with leaders from the software program engineering group might be main a workshop to handle how AI may remodel end-to-end software program improvement workflows within the 2025 Worldwide Workshop on Envisioning the AI-Augmented Software program Improvement Lifecycle, collocated with the ACM Worldwide Convention on the Foundations on Software program Engineering.
The SEI: Persistent Concentrate on Software program Modernization
By the SEI Weblog and our podcast collection, we spotlight the work of our researchers to assist the DoD make software program a strategic benefit by way of integrating our area experience in AI, cybersecurity, and software program. To assist the DoD ship resilient software program functionality on the velocity of relevance, the SEI researches complicated engineering issues; creates, prototypes, and refines revolutionary applied sciences; and transitions maturing options into apply to advertise DoD mission success.