베트남
호치민 투덕시 타오디엔 구 보 응우옌 지알 67-69 2층
+84 339 737 017
한국
서울 관악구 남부순환로 1843
+82 10 9919 6919
This project involved building a data pipeline that scrapes product and sales data from major Korean e-commerce platforms like Coupang, Naver Store, and Today’s House. The data was transformed and delivered to an interactive dashboard, while optimizing query performance, achieving a significant 300% speed improvement.
The main challenge was optimizing the query performance of the original system, which led to delays in processing large datasets. Additionally, integrating data from multiple e-commerce platforms and ensuring the accuracy of data collection required careful planning.
We selected scraping methods best suited for each platform (API, cookies, Selenium), then optimized inefficient SQL queries and implemented indexing to significantly enhance performance. We also worked on automating the ETL pipeline for scalability.
Tech stacks
The optimized data pipeline now handles large datasets more efficiently, improving processing speeds by 300%. With regular and reliable data scraping, the team can now leverage up-to-date insights and make data-driven decisions in real time.