This practical, hands-on course equips learners with the skills to analyze, build, and evaluate sales forecasting models using advanced time series techniques in Python. Designed for learners with foundational Python skills, the course progresses from preprocessing raw time series data to implementing complex forecasting models including SARIMA and Facebook Prophet.



Python: Apply & Evaluate Sales Forecasting with Time Series
This course is part of Python for Data Science: Real Projects & Analytics Specialization

Instructor: EDUCBA
Access provided by Somaiya Vidyavihar University
What you'll learn
Preprocess and decompose time series data to uncover patterns and trends.
Build and evaluate SARIMA models for robust sales forecasting in Python.
Apply Prophet to model trend, seasonality, and holidays for accurate forecasts.
Skills you'll gain
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8 assignments
August 2025
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There are 2 modules in this course
This module introduces learners to the foundational steps of time series analysis for sales forecasting, including data preprocessing, feature engineering, and visualization. Through hands-on demonstrations and practical examples, learners will clean, structure, and transform raw time series data, create meaningful features such as lags and time components, and visualize essential components like trend and seasonality. The focus is on preparing data effectively to ensure high-quality input for modeling and forecasting in future modules.
What's included
8 videos4 assignments
This module guides learners through the process of building, evaluating, and comparing forecasting models using Python. It begins with the training and statistical evaluation of SARIMA models, followed by a practical comparison of time series forecasts across multiple datasets. The module then introduces the Prophet library, showing how to install, configure, and implement forecasts using Prophet’s built-in support for trends, seasonality, and holidays. Learners will visualize predictions and assess model accuracy to inform data-driven decisions.
What's included
9 videos4 assignments
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