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Journal : INTECOMS: Journal of Information Technology and Computer Science

DESIGNING A DATA WAREHOUSE TO OPTIMIZE THE HOTEL BOOKING MONITORING DASHBOARD Hutagaol, Alice Shizuka; Beng, Jap Tji; Wasino, Wasino; Tiatri, Sri; Lunzaga, Ele; Salsabila, Tasya Mulia; Nurkholiza, Rahmiyana
INTECOMS: Journal of Information Technology and Computer Science Vol. 8 No. 5 (2025): INTECOMS: Journal of Information Technology and Computer Science
Publisher : Institut Penelitian Matematika, Komputer, Keperawatan, Pendidikan dan Ekonomi (IPM2KPE)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.31539/rr4rhx45

Abstract

In the rapidly growing tourism industry, efficient data management is crucial for strategic decision-making. This study focuses on the design and implementation of a data warehouse to optimize the monitoring dashboard for hotel bookings on an application X, an online hotel booking platform, a product of PT. XYZ. Along with the increase in volume and complexity of booking transaction data, there is an urgent need for an efficient data management system that can provide insights quickly and accurately. To address this, the study uses Kimball's Nine-Step Methodology and implements a star schema, which simplifies complex data relationships and improves query performance. The ETL (Extract, Transform, Load) process is applied to ensure accurate extraction, transformation, and loading of data from operational systems into the data warehouse, thereby guaranteeing consistency and accuracy for analysis. Tools such as SQL Server Management Studio 2022, Visual Studio 2019, and SQL programming were used to develop the data warehouse and the star schema. The results of the study show that the star schema, with a central fact table and surrounding dimension tables, effectively optimizes data processing and query speed. The system is scalable, allowing for future expansion without significant changes, and provides a robust platform for business intelligence. Recommendations include developing dimension analysis, optimizing the ETL process, and integrating predictive analytics to enhance decision-making. Overall, this study provides a structured data warehouse design that significantly improves PT. XYZ's ability to process, analyze, and visualize hotel booking data for strategic decision-making. Keywords: Data Warehouse, Extract Transform Load (ETL), Dashboard, Nine-Step Kimball, SQL.
DESIGNING A DATA MART FOR OPTIMIZING CLOTHING SALES AT C STORE Limbor, Ellen Gabriel; Beng, Jap Tji; Arisandi, Desi; Tiatri, Sri; Nurkholiza, Rahmiyana; Salsabila, Tasya Mulia; Dinatha, Vienchenzia Oeyta Dwitama
INTECOMS: Journal of Information Technology and Computer Science Vol. 8 No. 5 (2025): INTECOMS: Journal of Information Technology and Computer Science
Publisher : Institut Penelitian Matematika, Komputer, Keperawatan, Pendidikan dan Ekonomi (IPM2KPE)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.31539/7k3f3443

Abstract

Data plays a crucial role in supporting strategic decision-making, particularly in the retail sector like C Store. To enhance sales performance and understand purchasing trends, an effective system such as a data mart is needed. This study aims to design a data mart that can be used to analyze sales data at C Store to support data-driven decision-making. The methodology used is the nine-step Kimball approach in data mart design. The ETL (Extract, Transform, Load) process is used to manage sales transaction data collected from the period of 2021 to 2024. The result of this study is a data mart with a star schema, consisting of fact and dimension tables, enabling the analysis of sales performance based on product categories and time. The implementation of this data mart is expected to assist C Store in managing data efficiently, supporting strategic decision-making, and improving business operational effectiveness. Keywords: Data Mart, Kimball's Nine-Step Process, Clothing Sales.
DATA MART DESIGN FOR Y CLOTHING STORE SALES Wijaya, Angeline Carolina; Beng, Jap Tji; Arisandi, Desi; Tiatri, Sri; Dinatha, Vienchenzia Oeyta Dwitama; Nurkholiza, Rahmiyana; Sefira, Fasia Meta
INTECOMS: Journal of Information Technology and Computer Science Vol. 8 No. 5 (2025): INTECOMS: Journal of Information Technology and Computer Science
Publisher : Institut Penelitian Matematika, Komputer, Keperawatan, Pendidikan dan Ekonomi (IPM2KPE)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.31539/qr7rg481

Abstract

The data mart design for Y Clothing store aims to integrate scattered sales data to simplify analysis and speed up business decision making. Using the Kimball Nine-Step method and ETL process, sales transaction data from 2019 to 2023 is managed in a star schema. As a result, these data marts enable faster and more accurate analysis, identifying customer purchasing patterns, sales trends and promotional effectiveness. Implementation of this data mart increased inventory management efficiency by 15% and reduced sales report generation time from hours to minutes. However, challenges such as significant resource allocation for initial implementation and a learning curve for employees slowed down the maximum benefit gain somewhat. However, overall, these data marts contribute greatly to improved business decisions and more effective sales strategies. Keywords: Data Mart, Y Clothing Store, Kimball Nine-Step Method, ETL Process, Star Schema.
DESIGN OF A DATA WAREHOUSE FOR CUSTOMER SEGMENTATION PREDICTION AT PT X Lawrence, Valerie; Beng, Jap Tji; Wasino, Wasino; Tiatri, Sri; Nurkholiza, Rahmiyana; Salsabila, Tasya Mulia; Sefira, Fasia Meta
INTECOMS: Journal of Information Technology and Computer Science Vol. 8 No. 5 (2025): INTECOMS: Journal of Information Technology and Computer Science
Publisher : Institut Penelitian Matematika, Komputer, Keperawatan, Pendidikan dan Ekonomi (IPM2KPE)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.31539/he6dx426

Abstract

With the rapid growth of the tourism industry, particularly within the hotel and airline sectors, understanding customer behavior and segmentation has become crucial for driving strategic decisions. However, customer segmentation in these sectors often faces challenges due to the complexity of transactional data and varying service demands. This study addresses these challenges by designing a data warehouse using a Star Schema architecture, aimed at integrating hotel and airline booking data from 2023 to 2024. The methodology follows the Nine-Step Kimball approach, coupled with the Extract, Transform, Load (ETL) process, to transform transactional data from OLTP systems into a format suitable for Online Analytical Processing (OLAP). The data warehouse features fact and dimension tables that support in-depth analysis of customer segments, booking trends, and performance across service categories and time periods. Key findings show that the data warehouse significantly improves the ability to segment customers based on booking behavior, seasonality, and service preferences, leading to more effective decision-making. This integrated system provides a robust foundation for data-driven strategies, allowing businesses in the tourism industry to optimize customer targeting, improve service offerings, and enhance operational efficiency. Keywords: Data Warehouse, Star Schema, ETL, Hotel Booking, Flight
Co-Authors Afendi, Jelien Andy Surya Putra, Andy Surya Angelia, Mikha Anisa Husnul Khotimah Anugrah, Chitta Aprilia Putri, Sherly Amanda Arumsari, Chysanti Audy, Ervina Aufa, Rahmatul Ayesha Desfitrianie Caroline, Gabriella Dinna Darmawan, Natalia W. Davira S, Carelene Denilson, Hody Desi Arisandi Dewi, Fransisca I.R. Dewi, Tita Tri Utami Dhiyaashafa, Keisya Azzura Dinatha, Vienchenzia Oeyta Dwitama Ery Dewayani Febriani, Oki Kartika FELICIA Fransisca I. R. Dewi Graciela, Evelyn Gregorio, Keanen Handayani, Ani Hannandira, Rosa Hanuna, Fatimah Harsoyo, Tania Talitha Heni Mularsih Hervanny Zisli Hutagaol, Alice Shizuka Irene, Joe Iriani R. Dewi, Fransisca Jap Tji Beng Jap, Bernard Amadeus Jaya Juliana, Sarah Gracyntia Junisah, Bunga Ayu Kurnia, Angelica Nathania Larasati, Kirey Lawrence, Valerie Liesera, Novita Limbor, Ellen Gabriel Lunzaga, Ele Lusiana, Fenny Mar'at, Samsunuwiyati Mar’at, Samsunuwijati Mar’at, Samsunuwiyati Margareta Margareth Natalia Mei Ie Merdiasi, Danella Michelle Friscilia Naomi Sutikno, Naomi Nisa, Adilatun Nivia, Nivia Norita Margareth Berta, Norita Margareth Nugraheni, Angelia Prasastha Widi Nurkholiza, Rahmiyana Oeyta, Vienchenzia Pamela Hendra Heng Panatra, Valeria Pandumpi, Shania Krisan Pertama Henerges, Anakita Prasetyo, Sylvia Rosiana Putri, Handyta Tiara Putri, Herviana Haruko Tadia Putri, Monica Tri Putri, Najwa Nabila Rigusha Putriadi, Harvi Wahyu Rahmah Hastuti Rahmiyana Nurkholizah Riana Sahrani Salsabila, Tasya Mulia Sania Alikha Rahmadira Latupono Santi Yudhistira Saputra, Mikhael Adam Saraswati, Laksmiari Sefira, Fasia Meta Shalsa Dea Purnama Shantya Viratama, Dwi Nurmatin Sharon, Michelle Silky Goswara Soemiarti Patmonodewo Stephanie Stephanie Sucitra, Eric Sugeng Astanggo Suzanna Juwita, Suzanna Tarigan, Julia Rostaulina Tasya Mulia Salsabila Tji Beng, Jap Tucunan, Byosvelma Michelle Blessya Vincent Suryawidjaja Wasino Wasino Widiastuti, Niken Wijaya, Angeline Carolina Wijaya, Yohannes Yulindasari, Adelia Yuniawati, Elisa Ika Zahra Shafira ZAHRO, TIARA Zheng, Margareta