Quality-Driven Agentic Reasoning for LLM-Assisted Software Design: Questions-of-Thoughts (QoT) as a Time-Series Self-QA Chain
arXiv cs.AI / 3/13/2026
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Key Points
- Introduces Questions-of-Thoughts (QoT), a quality-driven inference-time scaffold that turns a user goal into an ordered sequence of engineering steps and stepwise self-questioning to verify constraints and reduce omission errors.
- Uses a time-series self-QA chain to stabilize subsequent design decisions and maintain a lightweight reasoning record across backend engineering tasks.
- Evaluates QoT across API Design, Data Communication, and File Systems using an ISO/IEC-inspired quality rubric (Scalability, Completeness, Modularity, Security), showing capacity-dependent improvements for larger models and more complex domains with some trade-offs for smaller models.
- Releases an open artifact (prompts, scoring guidelines, raw generations, and reproducible scripts) to support applied AI and data analytics research.
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