Hypernets
AutoML framework
An automated machine learning framework that simplifies the development of end-to-end AutoML toolkits in specific domains.
A General Automated Machine Learning framework to simplify the development of End-to-end AutoML toolkits in specific domains.
267 stars
19 watching
40 forks
Language: Python
last commit: 7 months ago
Linked from 2 awesome lists
autodlautomlenasevolutionary-algorithmshyperparameter-optimizationhyperparameter-tuningkerasmctsmonte-carlo-tree-searchnasnasnetneural-architecture-searchreinforcement-learning
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