DUCTILE: Agentic LLM Orchestration of Engineering Analysis in Product Development Practice
arXiv cs.AI / 3/12/2026
💬 OpinionDeveloper Stack & InfrastructureIdeas & Deep AnalysisTools & Practical UsageModels & Research
Key Points
- DUCTILE presents a framework for agentic automation that coordinates tools and documents via an LLM while keeping final judgment under engineer supervision.
- It separates adaptive orchestration (the LLM) from deterministic tool execution, enabling engineers to supervise and exercise final judgment.
- The approach is demonstrated in an aerospace manufacturing context, where the agent handles input deviations in format, units, naming conventions and methodology that would disrupt traditional scripted pipelines.
- Evaluation shows correct, methodologically compliant results across repeated runs, and the paper discusses practical implications for engineering practice, including shifts in work nature and the potential supervisory burden.
Related Articles

Interactive Web Visualization of GPT-2
Reddit r/artificial
Stop Treating AI Interview Fraud Like a Proctoring Problem
Dev.to

From infrastructure to AI: how Alibaba Cloud powers the global ambitions of Chinese companies
SCMP Tech
[R] Causal self-attention as a probabilistic model over embeddings
Reddit r/MachineLearning
The 5 software development trends that actually matter in 2026 (and what they mean for your startup)
Dev.to