Retail Sales Forecasting and Monitoring project offers real-time analysis and forecasts for retail sales.
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Updated
Jul 16, 2023 - Jupyter Notebook
Retail Sales Forecasting and Monitoring project offers real-time analysis and forecasts for retail sales.
A simple Market Basket Analysis that uses the apriori algorithm to find affinities between retail products
A repository focusing on implementing Market Basket Analysis using the Apriori Algorithm in Python, providing insights into customer purchasing behaviour.
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.
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.
End-to-End Retail Customer Churn Prediction using Gradient Boosting and Streamlit. This repository showcases a comprehensive data science workflow, from feature engineering with RFM to building a Gradient Boosting model and deploying an interactive dashboard for actionable customer retention insights.
Analysis and feature engineering of the Online Retail Transactions dataset to uncover customer behaviour, product trends, and optimise pricing. Includes interactive dashboards for actionable insights.
MavenProfitPulse: Data-driven analysis of Maven Toys & Games to boost sales, profitability, and inventory using Pandas. Uncovers trends in performance, demand, and efficiency with actionable insights.
Retail Sales Analytics & Business Intelligence System using Power BI, Python, DAX, and Excel
Linear programming model to optimize product mix decisions in a retail setting, implemented in R with cost and capacity constraints.
Power BI dashboards analyzing retail data for revenue trends, top customers, and regional demand. Completed as part of the TCS Forage Data Analytics virtual experience.
Forecasting of retail sales data for a brick-and-mortar store. The focus is on exploring time series characteristics, building ARIMA and SARIMAX models, and selecting the optimal model based on AIC and RMSE metrics. The project provides insights into trends, seasonality, and prediction accuracy for business decision-making.
Generating point forecasts for future daily sales based on historical sales data.
Interactive Power BI dashboard analyzing Blinkit grocery sales across outlets, item types, and locations | DAX | Power Query | ETL
• 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
An interactive dashboard for visualizing and analyzing retail sales and profits using various data visualization techniques.
End-to-end sales analytics project using SQL, Power BI, and Python. Extracted customer insights, product trends, and revenue performance through interactive dashboards and KPI-driven reporting.
Predict Big Mart sales using XGBoost Regressor. Learn data preprocessing, EDA, and model evaluation in Python.
End-to-end Rossmann weekly sales forecasting using XGBoost + SHAP explainability
An end-to-end data analytics project using Python, SQL, Power BI, and AI to transform Superstore data into actionable business and talent insights.
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