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arxiv: 2505.04137 · v1 · pith:4GO3BKWEnew · submitted 2025-05-07 · 💻 cs.MS · math.OC

optHIM: Hybrid Iterative Methods for Continuous Optimization in PyTorch

classification 💻 cs.MS math.OC
keywords opthimoptimizationpytorchcontinuousmethodsadvancedaimsalgorithms
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We introduce optHIM, an open-source library of continuous unconstrained optimization algorithms implemented in PyTorch for both CPU and GPU. By leveraging PyTorch's autograd, optHIM seamlessly integrates function, gradient, and Hessian information into flexible line-search and trust-region methods. We evaluate eleven state-of-the-art variants on benchmark problems spanning convex and non-convex landscapes. Through a suite of quantitative metrics and qualitative analyses, we demonstrate each method's strengths and trade-offs. optHIM aims to democratize advanced optimization by providing a transparent, extensible, and efficient framework for research and education.

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