cover
Contact Name
Wandi Syahindra
Contact Email
wandi.syahindra@iaincurup.ac.id
Phone
+6285268383345
Journal Mail Official
arcitech.journal@iaincurup.ac.id
Editorial Address
Jl. Dr. AK Gani No. 01 Curup, Rejang Lebong Bengkulu Indonesia
Location
Kab. rejang lebong,
Bengkulu
INDONESIA
Arcitech: Journal of Computer Science and Artificial Intelligence
ISSN : 29623669     EISSN : 29622360     DOI : http://dx.doi.org/10.29240/arcitech
Core Subject : Science,
Arcitech: Journal of Computer Science and Artificial Intelligence, is an Open Access and peer-reviewed journal published by the State Islamic Institute (IAIN) Curup. This journal focuses on the field of computer science and artificial intelligence covering all aspects of information technology, computer science, computer engineering, information systems, Software Engineering and its development, software engineering Computer networks, IoT, security systems, Simulation Modeling and Applied Computing, Computing High Performance, Image and speech processing, big data and data mining, and artificial intelligence. The journal is published by Institut Agama Islam Negeri (IAIN) Curup, online and printed twice a year, in June and December.
Articles 5 Documents
Search results for , issue "Vol. 4 No. 2 (2024): December 2024" : 5 Documents clear
Predicting Early Childhood Readiness to Enter Elementary School Using the Naive Bayes Classification Puspitorini, Sukma; Kahar, Novhirtamely; Kartika, Ikah
Arcitech: Journal of Computer Science and Artificial Intelligence Vol. 4 No. 2 (2024): December 2024
Publisher : Institut Agama Islam Negeri (IAIN) Curup

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.29240/arcitech.v4i2.11635

Abstract

This study aims to examine the readiness and maturity of early childhood in entering elementary school using the Naïve Bayes method. This analysis involves variables such as gender, age, aspects of physical-motor, cognitive, social-emotional development, and literacy skills which include reading, writing, arithmetic, and children's level of independence. The readiness category is classified into two classes, namely "ready" and "not ready". This prediction model is designed to provide a comprehensive understanding of the factors that affect the classification results, so that the evaluation process can be carried out in a transparent, objective, and data-driven manner. This research is expected to be a reference for other educational institutions in implementing a similar model to evaluate student readiness systematically. By adjusting variables and data according to local needs, this model has the potential to support more accurate and standardized decision-making, as well as improve the quality of early childhood preparation in entering formal education. The results show that the Naïve Bayes method is able to achieve an accuracy level of 93.33%, confirming its effectiveness in identifying early childhood readiness optimally.
Pengembangan Sistem Informasi Penjualan Online Untuk Produk Lokal Papua: Pendekatan Waterfall Petrus, Risma; Mardewi; Marhaba, Melvi
Arcitech: Journal of Computer Science and Artificial Intelligence Vol. 4 No. 2 (2024): December 2024
Publisher : Institut Agama Islam Negeri (IAIN) Curup

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.29240/arcitech.v4i2.11835

Abstract

Micro, small and medium enterprises are part of the business that has an important role in the national economy. Currently, MSMEs through government programs continue to be attempted to be run in all regions in Indonesia. One of the regions that is involved in running the MSME program is the Papua region. The purpose of the research conducted is to design a sales system for local Papuan products that can improve the economy in the Papua region from the crafts of the people in the Papua region using an online-based sales concept. The system development method used is the waterfall method which begins with the stages of needs analysis, system design, implementation, testing and maintenance. The results of the research obtained from this study are to promote local Papuan-style products from the eastern region using a website so that they can be reached by all groups. Through this research, it is obtained that by using a seller system, it makes it easier for business actors in the Papua region to market their products and through this system, they can introduce local Papuan products to a wider market, increase competitiveness and ultimately encourage the local economy, and be useful for research in the field of information technology which can then carry the diversity of local wisdom products.
Decision Support System for Plantation Land Suitability Assessment Using A Combination of AHP (Analytical Hierarchy Process) and Profile Matching Method Sahputra, Ilham; Fitria, Rahma; Sukia, Sukia
Arcitech: Journal of Computer Science and Artificial Intelligence Vol. 4 No. 2 (2024): December 2024
Publisher : Institut Agama Islam Negeri (IAIN) Curup

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.29240/arcitech.v4i2.11957

Abstract

Determining the suitability of plantation land is a crucial factor in enhancing productivity and sustainability in the agricultural sector. However, existing studies often lack comprehensive approaches that integrate both the prioritization of criteria and precise evaluation of land suitability. This study addresses this gap by developing a decision support system (DSS) for plantation land suitability using a combination of the Profile Matching and Analytic Hierarchy Process (AHP) methods. The AHP method is employed to assign weights to various criteria based on their relative importance, while the Profile Matching method evaluates land suitability based on the generated profiles.  The results indicate that this integrated approach provides accurate and detailed land suitability recommendations. Specifically, Buket Rata land is suitable for Clove (preference score: 3.821), Oil Palm, and Tea (3.596); Reulet land is suitable for Cocoa (3.22) and Coconut (3.16); Geulanggang Kulam land is suitable for Clove (3.41), Cocoa (3.35), and Oil Palm (3.29); Sawang land is suitable for Clove (3.41), Oil Palm (3.17), and Cocoa (2.99); and Pesisir Laut land is suitable for Sugarcane (3.353) and Clove (3.173). This DSS not only aids decision-makers in optimizing land use and managing sustainable plantations but also contributes to the broader field of agricultural decision-making by demonstrating the effectiveness of combining AHP and Profile Matching methods.
Sistem Informasi Pendeteksi Penyakit Pada Kucing Dengan Metode Backward Chaining Karnila, Sri; Darmawan, Algifari
Arcitech: Journal of Computer Science and Artificial Intelligence Vol. 4 No. 2 (2024): December 2024
Publisher : Institut Agama Islam Negeri (IAIN) Curup

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.29240/arcitech.v4i2.12033

Abstract

Cats are a popular pet in Indonesia, with a significant increase in the number of owners. However, difficulties in recognizing early symptoms of diseases often lead to delayed treatment and worsen the health condition of the cats. The purpose of this study is to design a web-based information system that can help detect diseases in cats earlier. The research methodology employs Backward Chaining to detect cat diseases at an early stage. The process begins with collecting symptoms from users, matching these symptoms against a database, and backtracking to determine the likely diseases. Black box testing shows that the system functions well, while validation with entered case data indicates that the Backward Chaining method is successful in providing relevant initial action recommendations. Unlike previous studies, which generally only developed systems based on symptom lists without deep inferential capabilities, this research fills a gap by integrating a more systematic backtracking mechanism through the Backward Chaining method. This approach allows the system to deliver more accurate and specific diagnoses based on a combination of symptoms.
Penerapan Predictive Analytics untuk Analisis Faktor-faktor yang Mempengaruhi Performa Akademik Siswa Yanuarini Nur Sukmaningtyas; Makhfuddin Akbar, Ronny; Rohma Utami Asyafiiyah, Gita
Arcitech: Journal of Computer Science and Artificial Intelligence Vol. 4 No. 2 (2024): December 2024
Publisher : Institut Agama Islam Negeri (IAIN) Curup

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.29240/arcitech.v4i2.12048

Abstract

Education in Indonesia currently faces several challenges, particularly the inequality of educational facilities in rural areas, leading to lower academic achievement compared to urban students. This study differs from previous research that focused solely on machine learning with academic data. Using a data-driven predictive analytics approach, the research aims to analyze factors influencing student academic performance, such as study hours, sleep hours, previous scores, and extracurricular involvement. Several machine learning algorithms including Linear Regression, Support Vector Regression (SVR), Random Forest, K-Nearest Neighbors (KNN), and XGBoost were employed to build the prediction model. The results indicated a significant correlation of 0.92 between previous scores and academic performance. Among the five algorithms, the XGBoost model demonstrated superior performance compared to the others. This highlights the effectiveness of the XGBoost model in predicting factors that affect students' academic performance and its potential as a tool for educators to develop more effective learning strategies, ultimately aiming to enhance students' academic achievements significantly.

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