#Bayesian Optimization
keras-tuner
KerasTuner offers a user-friendly, scalable solution for hyperparameter optimization in TensorFlow models, supporting Python 3.8+ and TensorFlow 2.0+. With algorithms like Bayesian Optimization, Hyperband, and Random Search, it integrates easily, allowing customization and experimentation. Ideal for enhancing machine learning models.
HEBO
HEBO is an innovative Bayesian optimization library by Huawei Noah's Ark Lab, crafted for a wide range of applications. As a notable participant in the NeurIPS 2020 Black-Box Optimization Challenge, it efficiently optimizes complex functions using heteroscedastic evolutionary methods. This library offers a flexible framework that simplifies implementation and integration into existing workflows, making it a valuable resource for researchers and developers in Bayesian optimization.
OCTIS
Simplify topic modeling with OCTIS by leveraging Bayesian Optimization for hyperparameter tuning. Users can preprocess datasets, utilize diverse models, and evaluate results effectively, supported by extensive tutorials and a user-friendly Python library. Ideal for both beginners and experts seeking efficient topic modeling.
arxiv-daily
Stay informed about cutting-edge developments in 3D vision and point cloud applications. Gain insights into topics such as model parameter estimation, innovative methods for 3D grounding, and advancements in quantum chemistry using Gaussian orbitals. Learn how recent studies are enhancing Bayesian optimization and sound event localization. Discover impactful breakthroughs in surface reconstruction and the stability of nonlinear systems, focusing on their practical implications for AI, quantum science, and computational geometry.
bocoel
Learn how Bayesian optimization efficiently evaluates large language models by selecting optimal sample subsets, significantly reducing computational costs, and enhancing accuracy with fewer dataset samples. Compatible with popular models like GPT2 and LLAMA through Huggingface, it's ideal for researchers managing high computational requirements with limited resources.
botorch
BoTorch provides a sophisticated platform for Bayesian Optimization, using PyTorch for modular and scalable solutions. It integrates seamlessly with GPyTorch for advanced probabilistic modeling. Ideal for researchers and AI experts, it supports Monte Carlo-based tasks via the reparameterization trick. Designed as a low-level API, it complements Ax, making it accessible for end-users seeking advanced optimization methods. Access the latest developments on GitHub for ongoing innovation.
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