himkt/optuna-allennlp

🚀 A demonstration of hyperparameter optimization using Optuna for models implemented with AllenNLP.

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This tool helps machine learning engineers and researchers automatically find the best settings for their natural language processing (NLP) models built with AllenNLP. You provide your AllenNLP model configuration, and it outputs the optimal hyperparameters that yield the best performance for tasks like text classification or sentiment analysis. It's designed for individuals developing and refining NLP models.

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Use this if you are an NLP engineer or researcher who wants to automate the process of finding the best hyperparameters for your AllenNLP models to achieve superior performance.

Not ideal if you are not working with AllenNLP models or if you prefer manual hyperparameter tuning.

natural-language-processing machine-learning-engineering model-optimization deep-learning-research
No License Stale 6m No Package No Dependents
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Nov 28, 2020

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