Agentic Pipelines in Embedded Software Engineering: Emerging Practices and Challenges
- URL: http://arxiv.org/abs/2601.10220v1
- Date: Thu, 15 Jan 2026 09:30:46 GMT
- Title: Agentic Pipelines in Embedded Software Engineering: Emerging Practices and Challenges
- Authors: Simin Sun, Miroslaw Staron,
- Abstract summary: A new transformation is underway in software engineering, driven by the rapid adoption of generative AI in development.<n>For embedded software engineering organizations, however, this marks their first experience integrating AI into safety-critical and resource-constrained environments.<n>The strict demands for determinism, reliability, and traceability pose unique challenges for adopting generative technologies.
- Score: 2.0769172070951067
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A new transformation is underway in software engineering, driven by the rapid adoption of generative AI in development workflows. Similar to how version control systems once automated manual coordination, AI tools are now beginning to automate many aspects of programming. For embedded software engineering organizations, however, this marks their first experience integrating AI into safety-critical and resource-constrained environments. The strict demands for determinism, reliability, and traceability pose unique challenges for adopting generative technologies. In this paper, we present findings from a qualitative study with ten senior experts from four companies who are evaluating generative AI-augmented development for embedded software. Through semi-structured focus group interviews and structured brainstorming sessions, we identified eleven emerging practices and fourteen challenges related to the orchestration, responsible governance, and sustainable adoption of generative AI tools. Our results show how embedded software engineering teams are rethinking workflows, roles, and toolchains to enable a sustainable transition toward agentic pipelines and generative AI-augmented development.
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