A chain of stores, 10 different stores and 50 different requests a 3-month demand forecast for its product.

Overview

Demand-Forecasting

  • Business Problem

A chain of stores, 10 different stores and 50 different requests a 3-month demand forecast for its product.

image

  • Dataset Story

This dataset is presented to test different time series techniques.

Information of 10 different stores and 50 different products in 5-year data of a chain of stores is located.

  • Variables

date – Date of sales data

~No holiday effects or store closures

Store – Store ID

~Unique number for each store.

Item - Item ID

Unique number for each product.

Sales – Number of products sold,

~The number of products sold from a particular store on a given date

  • Task

  • Relevant store using the following time series and machine learning techniques

  • Create a 3-month demand forecasting model for the chain.

Random Noise

Lag/Shifted Features

Rolling Mean Features

Exponentially Weighted Mean Features

Custom Cost Function (SMAPE)

Model Validation with LightGBM

Owner
Ayşe Nur Türkaslan
I continue my studies in the field of Data Science and Artificial Intelligence. I want to turn my efforts into a contribution using Github
Ayşe Nur Türkaslan
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