Preparing and visualizing the data
Accurate data preparation is key to building effective machine learning models. Now it's time to apply the skills you've learned.
Your data needs three columns for the statsforecast library:
unique_id: series IDds: series timestampy: series values
Apply the necessary steps to clean and reformat your data for time series forecasting. The dataset has been preloaded as ts, and pandas is imported as pd.
Este ejercicio forma parte del curso
Designing Forecasting Pipelines for Production
Ejercicio interactivo práctico
Prueba este ejercicio y completa el código de muestra.
# Convert the period column to datetime and sort the data by period
ts["____"] = pd.____(ts["period"])
ts = ts.____("period")