Artificial Intelligence Club

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Presentation transcript:

Artificial Intelligence Club Michael & Scott

Start User Name AIM COMP RESOURCES

THE AIMs OF THIS ECA Evaluation Learn about programming Learn about the theories of AI NP/NP hard Test hypothesis data cleaning imbalance data accuracy / TPR / FNR ROC curve loss python foundation array 101 array pro numpy matplotlib scikit-learn tensorflow Classifier Naïve Bayes Decision tree -> random forest KNN support vector machine Neural Network Optimization gradient descend particle swarm optimization reinforced learning Simulate Anneal

Competitions Hackerrank

Resources Club website Linzexinmasterchief.github.io Wechat group internet github stackoverflow

Wish we could all have a good time together { } Wish we could all have a good time together