Click on each picture to find out about it on X. Feature selectionForecast BiasNature of missing dataHandle Missing ValuesSimple Exponential SmoothingTime Series models classificationModel doesn't behave well with real dataRecurrent Neural NetworksArchitecture of RNNsTime biasSources of Missing dataSteps in DS projectTime Series with XGBoostSMOTE for imbalanced dataMissing data is a problemTest for Granger causalityClean your time series dataMinMax ScalingReframe Time Series data into Supervised Learning Introduction to RNNsSelect your Time Series modelARIMA modelsHow to address imbalanced data?Imbalanced dataAdvantages of ProphetWhen not to use Prophet?Best scenarios for Prophet2D graphsPrediction Direction AccuracyAdvantages of RNNsDouble Exponential SmoothingExample of nature of missing dataFeature scalingTriple Exponential SmoothingGranger causalityForecast Interval Coverage as a Performance MetricBox-Jenkins methodologyWhy should you split your datasetWhat kind of Time Series model is Prophet? . . . . . . . . . . . . . . . . Follow me on X