Benchmarking Generative AI Against Bayesian Optimization for Constrained Multi-Objective Inverse Design
Muhammad Bilal Awan, Abdul Razzaq, Abdul Shahid

TL;DR
This study compares Large Language Models and Bayesian Optimization for constrained multi-objective inverse design, finding that while BO guarantees convergence, fine-tuned LLMs offer promising, faster alternatives with competitive performance.
Contribution
The paper provides a comprehensive benchmark comparing LLMs and Bayesian Optimization in inverse design, highlighting the potential of LLMs as efficient alternatives.
Findings
BoTorch qEHVI achieved perfect convergence (GD=0.0).
WizardMath-7B LLM achieved GD=1.21, outperforming traditional BO.
Fine-tuned LLMs are promising, fast optimization tools.
Abstract
This paper investigates the performance of Large Language Models (LLMs) as generative optimizers for solving constrained multi-objective regression tasks, specifically within the challenging domain of inverse design (property-to-structure mapping). This problem, critical to materials informatics, demands finding complex, feasible input vectors that lie on the Pareto optimal front. While LLMs have demonstrated universal effectiveness across generative and reasoning tasks, their utility in constrained, continuous, high-dimensional numerical spaces tasks they weren't explicitly architected for remains an open research question. We conducted a rigorous comparative study between established Bayesian Optimization (BO) frameworks and a suite of fine-tuned LLMs and BERT models. For BO, we benchmarked the foundational BoTorch Ax implementation against the state-of-the-art q-Expected Hypervolume…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Multi-Objective Optimization Algorithms · Generative Adversarial Networks and Image Synthesis
