Click on each picture to find out about it on X. Forecast Interval Coverage as a Performance MetricNature of missing dataImbalanced dataAdvantages of ProphetSimple Exponential SmoothingAdvantages of RNNsTime Series models classificationModel doesn't behave well with real dataARIMA modelsForecast BiasPrediction Direction AccuracyTriple Exponential SmoothingMissing data is a problemSteps in DS projectHandle Missing ValuesTime biasBox-Jenkins methodologyClean your time series dataFeature selectionGranger causalitySources of Missing dataArchitecture of RNNsReframe Time Series data into Supervised Learning Feature scalingSMOTE for imbalanced dataWhat kind of Time Series model is Prophet?When not to use Prophet?MinMax ScalingBest scenarios for ProphetIntroduction to RNNsTest for Granger causality2D graphsRecurrent Neural NetworksExample of nature of missing dataDouble Exponential SmoothingTime Series with XGBoostHow to address imbalanced data?Why should you split your datasetSelect your Time Series model . . . . . . . . . . . . . . . . Follow me on X