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PENERAPAN METODE LINEAR PROGRAMING UNTUK MEMAKSIMALKAN KEUNTUNGAN PENJUALAN BERBASIS QM FOR WINDOWS : ( Studi Kasus : Warung Lalapan Sri Ayu) Muh. Arya Rafandi; David Oni Apaseray; Zulfahmi AS; Muhammad Akbar Maulana
HUMANITIS: Jurnal Homaniora, Sosial dan Bisnis Vol. 3 No. 6 (2025): Juni
Publisher : ADISAM PUBLISHER

Show Abstract | Download Original | Original Source | Check in Google Scholar

Abstract

Small and Medium-sized Enterprises (SMEs), or Usaha Kecil dan Menengah (UKM) in Indonesian, in the culinary sector, especially traditional Indonesian eateries (warung lalapan), often face production optimization challenges amidst resource limitations. This study aims to analyze the optimal production combination of chicken and duck lalapan portions to maximize daily profit at Warung Lalapan Sri Ayu. The Linear Programming method with a graphical approach was used, utilizing the warung's daily operational data. Results indicate that the optimal production is 15 portions of Duck Lalapan and 0 portions of Chicken Lalapan per day, yielding a profit of Rp 150,000 per day. Work time constraint was identified as the primary limiting factor, while the production cost constraint was non-binding. It is concluded that Warung Lalapan Sri Ayu should focus its strategy on Duck Lalapan and strive to increase work time capacity to enhance potential profits, utilizing the remaining budget for strategic development.
Penerapan Haar Cascade Classifier Dalam Mendeteksi Kelainan Mata Pada Anak Menggunakan OpenCV Giesta Rahguna Putri; Muhammad Akbar Maulana
Jurnal Ilmiah Dan Karya Mahasiswa Vol. 1 No. 4 (2023): AGUSTUS : JURNAL ILMIAH DAN KARYA MAHASISWA
Publisher : Institut Teknologi dan Bisnis (ITB) Semarang

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54066/jikma.v1i4.511

Abstract

Eye disorders in children need early detection to prevent serious health problems. However, eye examinations at healthcare centers are currently limited. OpenCV is an image processing library that can detect eye disorders such as strabismus and crossed eyes. Research shows that OpenCV aids in the early detection of eye disorders in children at healthcare centers. Haar Cascade Classifier is an image processing technique used to detect specific objects. It can accurately detect faces under various lighting and background conditions. It serves as an effective alternative for object detection in digital images.
The Development of the Urung Senembah Kingdom and Its Legacy in Patumbak, 1620-2023: Perkembangan Kerajaan Urung Senembah dan Peninggalannya Di Patumbak, 1620-2023 Muhammad Akbar Maulana; Jufri Naldo
Santhet: (Jurnal Sejarah, Pendidikan Dan Humaniora) Vol 8 No 1 (2024): Santhet : Jurnal Sejarah, Pendidikan, dan Humaniora
Publisher : Proram studi pendidikan Sejarah Fakultas Keguruan Dan Ilmu Pendidikan Universaitas PGRI Banyuwangi

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.36526/santhet.v8i1.3584

Abstract

This research aims to study the history of the development of the Urung Senembah kingdom in Patumbak from 1620 to 2023, with a focus on the development of the kingdom, history and Islam. This research uses historical research methods in four steps: heuristics, criticism, interpretation, and historiography. Data was collected from relevant archives, books, articles and reports. This research focuses on the Urung Senembah kingdom, which was founded by the Barus family and had authority over the Deli and Serdang Sultanates. The territory of this kingdom stretches from the Seruai River to thelumai River. This research uses primary and secondary sources, including history books, government reports, and contemporary documents. This study aims to complete research on the Urung Senembah kingdom and its significance in the history of Patumbak.
YOLOV8 DETECTION FOR STUDENT DRESS CODE COMPLIANCE USING COMPUTER VISION Geraldo Tan; Agung Saputra; Richardo Renzo Chandra; Radja Ardjuna Rithaudin Pua; Muhammad Akbar Maulana
JURTEKSI (jurnal Teknologi dan Sistem Informasi) Vol. 12 No. 1 (2025): Desember 2025
Publisher : Lembaga Penelitian dan Pengabdian Kepada Masyarakat (LPPM) STMIK Royal Kisaran

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33330/jurteksi.v12i1.4350

Abstract

Abstract: The implementation of dress code regulations in university environments is generally still carried out conventionally, requiring significant time and effort and potentially leading to subjective assessments. This study develops an automatic student dress code compliance detection system using computer vision based on the YOLOv8 model. The dataset consists of 1,800 annotated images divided into eight clothing categories, split into 78% training (1,404 images), 14% validation (254 images), and 8% testing (143 images). All images underwent preprocessing and data augmentation before training the YOLOv8 model with an input size of 640×640 pixels for 50 epochs. During testing, the YOLOv8 model achieved an overall performance of Precision 0.844, Recall 0.773, F1-Score 0.802, and mAP@0.5 0.841, and was able to detect clothing objects with good accuracy and stable performance under various image conditions. The system was integrated with a Flask-based backend and a web-based frontend to enable real time detection and compliance classification, with a response time of less than 2 seconds, supporting automatic and consistent identification of student dress code compliance as “Compliant” or “Violation.” Keywords: compliance detection; computer vision; dress code regulations; real time detection; YOLOv8. Abstrak: Penerapan aturan berpakaian di lingkungan kampus umumnya masih dilakukan secara konvensional sehingga membutuhkan waktu dan tenaga yang relatif besar serta berpotensi menimbulkan subjektivitas penilaian. Penelitian ini bertujuan mengembangkan sistem pendeteksi kepatuhan berpakaian mahasiswa secara otomatis berbasis visi komputer menggunakan model YOLOv8. Dataset yang digunakan terdiri dari 1.800 citra beranotasi yang terbagi ke dalam 8 kategori pakaian, dengan pembagian data sebesar 78% data latih (1.404 citra), 14% data validasi (254 citra) dan 8% data uji (143 citra). Seluruh citra diproses melalui tahapan pre-processing dan data augmentation, kemudian digunakan untuk melatih model YOLOv8 dengan ukuran input 640×640 piksel selama 50 epoch. Pada tahap pengujian, model mencapai performa keseluruhan dengan Precision 0.844, Recall 0.773, F1-Score 0.802, dan mAP@0.5 0.841, serta mampu mendeteksi objek pakaian dengan akurasi baik dan performa stabil pada berbagai kondisi citra. Sistem kemudian diintegrasikan dengan backend berbasis Flask dan frontend web untuk mendukung proses deteksi waktu nyata dan klasifikasi kepatuhan, dengan waktu respons sistem kurang dari 2 detik, sehingga mampu mengidentifikasi status kepatuhan berpakaian mahasiswa ke dalam kategori “Aman” dan “Melanggar Aturan” secara otomatis dan konsisten. Kata kunci: aturan berpakaian; deteksi waktu nyata; pendeteksi kepatuhan; visi komputer; YOLOv8.
Perancangan Sistem Informasi Kependudukan Pada Desa Kaliori Kecamatan Kalibagor Sugeng Priyatno; Muhammad Akbar Maulana; Lutvi Riyandari
Perwira Journal of Science & Engineering Vol 6 No 1 (2026)
Publisher : Universitas Perwira Purbalingga

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54199/gy1sey44

Abstract

Sistem informasi kependudukan merupakan komponen penting dalam mendukung tata kelola pemerintahan desa, terutama terkait pengolahan dan pelaporan data penduduk. Di Desa Kaliori Kecamatan Kalibagor, proses administrasi masih dilakukan secara manual melalui pencatatan berbasis buku, sehingga menimbulkan berbagai kendala seperti keterlambatan pelaporan, tingginya risiko kesalahan, serta sulitnya pencarian dan pembaruan data. Penelitian ini bertujuan merancang sistem informasi kependudukan berbasis komputer menggunakan metode prototype, yang memungkinkan pengguna terlibat langsung dalam tahap identifikasi kebutuhan, evaluasi, dan penyempurnaan sistem. Melalui tahapan identifikasi kebutuhan, pembuatan prototype awal, evaluasi, dan revisi berulang, dihasilkan rancangan sistem yang mampu mengelola data kependudukan secara lebih cepat, akurat, dan terstruktur. Sistem yang dirancang mencakup fitur input data penduduk, pencarian informasi, pemutakhiran data, dan pembuatan laporan bulanan. Hasil penelitian menunjukkan bahwa pendekatan prototype efektif dalam menghasilkan rancangan sistem yang sesuai kebutuhan pengguna dan berpotensi meningkatkan efisiensi administrasi kependudukan desa.