Click on each picture to find out about it on X. Double Exponential SmoothingAdvantages of RNNsMissing data is a problemForecast Interval Coverage as a Performance MetricHandle Missing ValuesSources of Missing dataGranger causalityBox-Jenkins methodologySMOTE for imbalanced dataExample of nature of missing dataNature of missing dataTime Series with XGBoostTest for Granger causality2D graphsImbalanced dataBest scenarios for ProphetReframe Time Series data into Supervised Learning Steps in DS projectWhen not to use Prophet?Clean your time series dataWhy should you split your datasetTime Series models classificationTriple Exponential SmoothingARIMA modelsFeature scalingWhat kind of Time Series model is Prophet?Forecast BiasMinMax ScalingModel doesn't behave well with real dataRecurrent Neural NetworksArchitecture of RNNsFeature selectionHow to address imbalanced data?Advantages of ProphetIntroduction to RNNsSelect your Time Series modelPrediction Direction AccuracyTime biasSimple Exponential Smoothing . . . . . . . . . . . . . . . . Follow me on X