2021 Amirkabir Artificial Intelligence Competitions (AAIC): Challenge of forecasting daily internet usage of MCI subscribers
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Updated
Jun 12, 2022 - Jupyter Notebook
2021 Amirkabir Artificial Intelligence Competitions (AAIC): Challenge of forecasting daily internet usage of MCI subscribers
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Machine learning classification model with streamlit deployment.
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Sentiment140 dataset with 1.6 million tweets
Crystal Scoring API for PMML
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Telecom customer churn example with h2o
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