A simple Market Basket Analysis that uses the apriori algorithm to find affinities between retail products
-
Updated
Oct 31, 2018 - R
A simple Market Basket Analysis that uses the apriori algorithm to find affinities between retail products
Retail Sales Forecasting and Monitoring project offers real-time analysis and forecasts for retail sales.
A machine learning solution to forecast sales for Rossmann Pharmaceuticals' stores across various cities six weeks in advance. Factors like promotions, competition, holidays, seasonality, and locality are considered for accurate predictions.
A repository focusing on implementing Market Basket Analysis using the Apriori Algorithm in Python, providing insights into customer purchasing behaviour.
An interactive dashboard for visualizing and analyzing retail sales and profits using various data visualization techniques.
Generating point forecasts for future daily sales based on historical sales data.
This project predicts sales for Big Mart 🛒📈 using machine learning algorithms. By analyzing various factors such as product attributes, store location, and customer demographics, it aims to provide accurate sales forecasts to enhance inventory management and strategic planning.
Predict Big Mart sales using XGBoost Regressor. Learn data preprocessing, EDA, and model evaluation in Python.
• Analyzed Retail Stored Data To Identify Behavioral Patterns. Generated Reports Using SQL Queries.• Analyzed KPIs Like Total Revenue, User Counts, Login Counts etc. For Year 2021 and 2022. • Created Dynamic Dashboard With Interactive Graphs Using Excel. • Techstack : Excel | SQL | Power Point
Uncover insights, trends, and patterns within the retail data. Harness the power of data analytics to optimize inventory management, understand customer preferences, and drive strategic decision-making
This project includes two Power BI dashboards for analyzing cost reduction and inventory management in the apparel industry. It helps optimize costs, improve inventory turnover, and support supplier negotiations.
Add a description, image, and links to the retailanalytics topic page so that developers can more easily learn about it.
To associate your repository with the retailanalytics topic, visit your repo's landing page and select "manage topics."