Can We Trust LLMs on Memristors? Diving into Reasoning Ability under Non-Ideality
arXiv cs.CL / 3/17/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper analyzes the impact of memristor non-idealities in analog compute-in-memory architectures on LLM reasoning, finding significant degradation that varies across benchmarks.
- It assesses three training-free strategies—thinking mode, in-context learning, and module redundancy—to improve robustness without retraining.
- The study finds that shallow layer redundancy is particularly effective for robustness, thinking mode performs better under low noise but degrades with higher noise, and in-context learning reduces output length with a small performance trade-off.
- These results offer practical guidelines for deploying energy-efficient memristor-based LLMs and inform hardware-software co-design decisions.
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