maj34/Analysis-Programming-Project
[ 전공 프로젝트: 분석 프로그래밍 ] L사의 고객 세분화를 통한 맞춤형 상품 추천
This project helps retail businesses understand their customers better and recommend personalized products. It takes raw customer transaction data, online browsing logs, and product information to identify distinct customer groups and suggest relevant items. Retail strategists, marketing managers, and business analysts can use this to enhance customer engagement and sales.
No commits in the last 6 months.
Use this if you need to segment your customer base and provide tailored product recommendations to improve sales and customer loyalty.
Not ideal if you have very small datasets or require real-time, highly dynamic recommendation adjustments for individual users.
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Jan 19, 2023
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