The twelve foundational practices for decision makers describe the groundwork for turning AI capability into mission value.
Metcalf, R., and Churilla, M., 2026: Data Poisoning in AI Models: The Case for Chain of Custody Controls. Carnegie Mellon University, Software Engineering Institute's ...
Ozkaya, I., and Schmidt, D., 2024: Generative AI and Software Engineering Education. Carnegie Mellon University, Software Engineering Institute's Insights (blog ...
This brochure provides an overview of Crucible, which provides AI-powered, open source cyber ranges for operations in the information environment. Crucible aims to be both simple and powerful, highly ...
The core ideas of the SEI's AI Engineering: 11 Foundational Practices have remained relevant since its publication in 2019, but the practice of building, using, and deploying AI has changed ...
Since our foundation in 1984, we have helped the Department of War (DoW), government agencies, and private industry meet mission goals and gain strategic advantage by innovating and advancing the ...
Bernaciak, C., and Ross, D., 2022: How Easy Is It to Make and Detect a Deepfake?. Carnegie Mellon University, Software Engineering Institute's Insights (blog ...
The Architecture Tradeoff Analysis Method (ATAM) is a method for evaluating software architectures relative to quality attribute goals. ATAM evaluations expose architectural risks that potentially ...
Shevchenko, N., 2020: An Introduction to Model-Based Systems Engineering (MBSE). Carnegie Mellon University, Software Engineering Institute's Insights (blog ...
Wassermann, G., and Svoboda, D., 2023: Rust Vulnerability Analysis and Maturity Challenges. Carnegie Mellon University, Software Engineering Institute's Insights ...
This document describes the activities and practices in which an organization must be competent before it can benefit from fielding a product line of software systems. A product line is a set of ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results