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Peningkatan Kompetensi Akademik Guru TK dan PAUD Melalui Pelatihan Google Classroom Sarbaini Sarbaini; Eka Pandu Cynthia; Fitriani Muttakin; M. Imam Arifandy
MENARA RIAU Vol 17, No 1 (2023): April 2023
Publisher : Lembaga penelitian dan pengabdian kepada masyrakat

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.24014/menara.v17i1.21679

Abstract

The condition of a pandemic spreading the Covid-19 virus that occurred in Indonesia in early 2019 inevitably caused the dynamics of a shift in the learning model from outdoor/face-to-face to online/virtual, as well as various monthly activities in the form of workshops and other activities. to improve the competence of all teacher educators in the Sakura Cluster environment. The purpose of this activity is that Kindergarten/PAUD teachers in Cluster VI Sakura can get to know google classroom and implement google classroom and assist in teaching and learning activities that are carried out online. The method of implementing the activities carried out in this activity with reference to the problem solving framework previously described, namely varied lectures. The results of this community service activity include increasing the skills of kindergarten/PAUD teachers who are gathered in Cluster VI Sakura, Tenayan Raya District, Pekanbaru City in using and utilizing technology and GAFE (especially google classroom) for the learning and teaching process, especially now that is done online.
Estimasi Hasil Panen Ayam Pedaging Menggunakan Algoritma Regresi Linear Berganda Ahyani Junia Karlina; Muhammad Irsyad; Fitri Insani; Jasril; Eka Pandu Cynthia
KLIK: Kajian Ilmiah Informatika dan Komputer Vol. 3 No. 6 (2023): Juni 2023
Publisher : STMIK Budi Darma

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.30865/klik.v3i6.920

Abstract

Data mining is the process of collecting and managing information that aims to extract important data from data. Currently data mining is used by companies to manage data but there are still many companies engaged in the livestock sector that have not used data mining to manage data. One of these companies is PT.PX which is a broiler company located in Riau, precisely in Sungai Pagar. The ever-increasing need for broiler chickens makes it difficult for chicken breeders to produce chicken according to market demand in each period. Unpredictable demand for broiler chickens makes breeders confused to determine how many chicks to produce. PT.PX still manages data using Microsoft Excel so the process is still very long and it is not certain to get accurate results. PT.PX also does not have a system for predicting broiler yields to find out how many chicken populations there will be in the next period. The existence of this data mining can help breeders to find out the number of populations to be produced for the next period. In predicting broiler yields, estimation methods can be used using multiple linear regression algorithms. Multiple linear regression was used to determine the relationship between feed, weight and age of chickens and chicken population. The information used in this research is information on harvested chickens obtained from 2019 to 2022. The results of multiple linear regression calculations at PT.PX obtained broiler yields of 12,217 populations
Penerapan Metode Simple Multi Attribute Rating Technique (SMART) Untuk Seleksi Penerimaan Bantuan Usaha Produktif Raihan Mahdy; Fitra Kurnia; Iwan Iskandar; Eka Pandu Cynthia
Jurnal Sistem Komputer dan Informatika (JSON) Vol 4, No 4 (2023): Juni 2023
Publisher : STMIK Budi Darma

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.30865/json.v4i4.6370

Abstract

Productive business assistance is assistance provided to improve business capabilities, depending on the type of business being running. The goal is to develop work productivity and also increase income. As for the distribution of productive business assistance at BAZNAS Pekanbaru City, it still uses an old system and is not yet effective, so the process takes quite a long process. In order for the selection process to be effective, a decision system was created for the alternative of recipients of productive business assistance. The method in this research using the simple multi attribute rating technique (SMART) method. This research uses 6 criteria and 22 sub-criteria. The application is build with using PHP and MySQL programming languages. The results of the application of the SMART method which has been tested on 10 sample recipients obtained the order of the highest value to the smallest. With the highest value is 0.75. This system has been tested using the Blackbox testing method and the user acceptance test (UAT) with an assessment final value is 94.4%.
Pemanfaatan Digital Marketing untuk Memperluas Strategi Pemasaran Produk Furniture dari Bahan Kayu Rubber Ismanto, Edi; Januar Al Amien; Hammam Zaki; Eka Pandu Cynthia
Jurnal Pengabdian UntukMu NegeRI Vol. 8 No. 1 (2024): Pengabdian Untuk Mu negeRI
Publisher : LPPM UMRI

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.37859/jpumri.v8i1.5720

Abstract

The COVID-19 pandemic, which has affected Indonesia for the past three years, has had a significant negative impact on a number of industries, including the Micro, Medium, and Small Enterprises (MSME) sector, which has been particularly hard hit. Pekanbaru City has 105,445 MSMEs, with data indicating that there are as many as 1,034 MSMEs, which produce a range of goods used by the community, including furniture products and various wood-based office and home furnishings. Of course, if development is carried out for MSME wood craftsmen, this is a potential aspect for the City of Pekanbaru. UMKM Furniqa Woodcraft as a raw material to create furniture items like chairs, tables, cabinets, and various other handicraft products uses rubber wood. However, there has been a significant drop in sales since the Covid-19 pandemic, so a solution must be found. In an effort to increase product marketing, service activities performed include training and assisting with managing Digital Marketing. This activity is implemented using a variety of approaches, including the Interview and Discussion Method, the Training Method, and the Evaluation Method. The evaluation of the implementation of digital marketing training and mentoring showed that employees at Furniqa Woodcraft had increased knowledge competence by 75.875%.
Komparasi Metode SAW Dan ANP Dalam Merekomendasikan Penerima Bantuan Covid-19 Muhammad Khairy Dzaky; Eka Pandu Cynthia; Siska Kurnia Gusti
Jurnal Nasional Komputasi dan Teknologi Informasi (JNKTI) Vol 5, No 3 (2022): Juni 2022
Publisher : Program Studi Teknik Komputer, Fakultas Teknik. Universitas Serambi Mekkah

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.32672/jnkti.v5i3.4415

Abstract

Abstrak - Pada masa sekarang ini, dunia dihebohkan dengan munculnya serangan virus yang disebut dengan Covid-19. Penyebaran virus ini sangatlah cepat sehingga membuat masyarakat menjadi khawatir dan gelisah. Untuk mengurangi penyebaran virus ini, pemerintah pusat menghimbau seluruh masyarakat untuk melaksanakan Pembatasan Sosial Berskala Besar (PSBB), karantina wilayah dan lockdown. Dengan diterapkannya himbauan ini mengakibatkan perekonomian masyarakat menjadi tidak stabil bahkan mengalami penurunan. Hal ini berdampak ke seluruh daerah di Indonesia termasuk salah satunya di Desa Pesisir. Untuk mengurangi dampak sosial ekonomi pandemi Covid-19 di desa Pesisir, pemerintah memberikan bantuan kepada masyarakat berupa bantuan langsung tunai desa dan bahan sembako. Meskipun begitu, bantuan yang diberikan masih belum disalurkan secara optimal, karena masih menggunakan distribusi berdasarkan subjektifitas pegawai kelurahan. Sehingga, konflik antar warga tidak dapat dihindari. Penelitian ini dilakukan untuk mengetahui siapa saja yang berhak untuk menerima bantuan Covid-19 di desa Pesisir yang ditentukan berdasarkan kategori dan kriteria yang telah ditetapkan. Penelitian ini menerapkan metode Simple Additive Weighting (SAW) dan metode Analytical Network Process (ANP) untuk menghasilkan rekomendasi mengenai siapa saja yang berhak menerima bantuan Covid-19 di desa Pesisir.Kata Kunci: Analytical Network Process (ANP), Covid-19, Desa Pesisir, Simple Additive Weighting (SAW),  Abstract - At this time, the world was shocked by the emergence of a virus attack called Covid-19. The spread of this virus is so fast that it makes people become worried and anxious. To reduce the spread of this virus, the central government urges the entire community to implement Large-Scale Social Restrictions (PSBB), regional quarantine and lockdown. With the implementation of this appeal, the community's economy became unstable and even experienced a decline. This has an impact on all regions in Indonesia, including one in the Coastal Village. To reduce the socio-economic impact of the Covid- 19 pandemic in Pesisir villages, the government provided assistance to the community in the form of direct village cash assistance in the form of basic necessities. Even so, the assistance provided is still not optimally distributed, because it is still using a distribution based on the subjectivity of kelurahan employees. Thus, conflicts between citizens cannot be avoided. This research was conducted to find out who is entitled to receive Covid-19 assistance in the Pesisir village which is determined based on the categories and criteria that have been set. This study applies the Simple Additive Weighting (SAW) method and the Analytical Network Process (ANP) method to produce recommendations regarding who is entitled to receive Covid-19 assistance in the Pesisir village.Keywords: Analytical Network Process (ANP), Covid-19, Pesisir village, Simple Additive Weighting (SAW),
Perbandingan Pembobotan Kata Menggunakan Naïve Bayes Classifier Terhadap Analisa Sentimen Permendikbud No 30 Tahun 2021 Jeki Dwi Arisandi; Elvia Budianita; Eka Pandu Cynthia; Febi Yanto; Yusra Yusra
Jurnal Nasional Komputasi dan Teknologi Informasi (JNKTI) Vol 5, No 4 (2022): Agustus 2022
Publisher : Program Studi Teknik Komputer, Fakultas Teknik. Universitas Serambi Mekkah

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.32672/jnkti.v5i4.4420

Abstract

Abstrak - Kekerasan seksual di lingkungan Pendidikan mengalami peningkatan kasus dari tahun ke tahun. Menurut data dari Komnas Perempuan periode 2015-2020 kasus kekerasan seksual di lingkungan Pendidikan menunjukkan bahwa lingkungan Pendidikan sudah tidak menjadi tempat yang aman bagi peserta didik. Berdasarkan data kasus yang diadukan kepada komnas perempuan pada tahun 2015-2020 kasus kekerasan seksual tertinggi terjadi di lingkungan Universitas sebanyak 27%, lalu diikuti oleh Pesantren atau Pendidikan berbasis agama sebanyak 19% dan sisanya terjadi di tingkat SMU/SMK sebanyak 15%, SMP 7%, di tingkat TK,SD,SLB dan Pendidikan berbasis Kristen masing-masing sebanyak 3%. Bentuk kekerasan seksual yang terjadi di lingkungan Pendidikan tersebut berupa pemerkosaan, pencabulan, dan pelecehan seksual serta kekerasan psikis dan diskriminasi dengan mengeluarkan siswa dari sekolah. Berbagai kasus tersebut mendorong pihak Kementrian Pendidikan, Kebudayaan, Riset, dan Teknologi Republik Indonesia membuat Peraturan Menteri No 30 Tahun 2021 dengan tujuan untuk menangani berbagai kekerasan seksual yang selama ini masih terjadi di lingkungan Pendidikan. Namun setelah diterbitkannya Peraturan Menteri nomor 30 Tahun 2021 tersebut memunculkan beragam sentimen positif dan negatif dari masyarakat baik itu dari organisasi HAM dan organisasi keagamaan. Opini dari masyarakat tersebut dapat dijadikan bahan evaluasi bagi pemerintah untuk menilai kebijakan yang telah dibuat. Dalam penelitian ini membahas mengenai analisa sentimen Permendikbud no 30 tahun 2021 dengan melakukan perbandingan pembobotan kata menggunakan metode Naïve Bayes Classifier. Langkah awal yang penulis lakukan yaitu pengumpulan data dari media sosial Twitter sebanyak 468 data, kemudian memberikan pelabelan kelas data yang terdiri dari positif, negatif, dan netral lalu melakukan proses pembobotan menggunakan TF-IDF dan TF-RF yang bertujuan untuk melihat perbandingan proses pembobotan kedua metode tersebut. Berdasarkan dari proses dan hasil pengujian Confusion Matrix didapatkan akurasi terbaik dengan rasio 70:30 sebesar 73,94% dengan pembobotan TF-IDF.Kata Kunci: PERMENDIKBUD No 30 Tahun 2021, Kekerasan Seksual, Analisa Sentimen, Twitter, Naïve Bayes Classifier.Abstract - Sexual violence in the educational environment has increased in cases from year to year. According to data from Komnas Perempuan for the 2015-2020 period, cases of sexual violence in the educational environment show that the educational environment is no longer a safe place for students. Based on case data that was reported to Komnas Perempuan in 2015-2020 the highest cases of sexual violence occurred in universities as much as 27%, then followed by Islamic boarding schools or religion-based education as much as 19% and the rest occurred at the high school/vocational level as much as 15%, SMP 7 %, at the level of TK, SD, SLB and Christian-based education each as much as 3%. The forms of sexual violence that occur in the educational environment are in the form of rape, sexual abuse, and sexual harassment as well as psychological violence and discrimination by expelling students from school. These various cases prompted the Ministry of Education, culture, research, and Technology of the Republic of Indonesia to make Ministerial Regulation No. 30 of 2021 with the aim of dealing with various sexual violence that is still happening in the education environment. However, after the issuance of Ministerial regulation number 30 of 2021, it gave rise to various positive and negative sentiments from the community, both from human rights organizations and religious organizations. Public opinion can be used as evaluation material for the government to assess the policies that have been made. This study discusses the sentiment analysis of Minister of Education and Culture No. 30 of 2021 by comparing word weights using the Naïve Bayes Classifier method. The first step that the author took was collecting data from Twitter social media as much as 468 data, then labeling the data classes consisting of positive, negative, and neutral then carrying out a weighting process using TF-IDF and TF-RF which aims to compare the two weighting processes the method. Based on the process and results of the Confusion Matrix test, the best accuracy was obtained with a 70:30 ratio of 73.94% with TF-IDF weighting.Keywords: PERMENDIKBUD No 30 of 2021, Sexual Violence, Sentiment Analysis, Twitter, Naïve Bayes Classifier.
Implementasi Treemap untuk Visualisasi Data Angka Kesakitan (Morbiditas) (Studi Kasus: Dinas Kesehatan Indragiri Hilir) Muhammad Ridha; Muhammad Affandes; Eka Pandu Cynthia; Pizaini Pizaini
Jurnal Nasional Komputasi dan Teknologi Informasi (JNKTI) Vol 5, No 2 (2022): April 2022
Publisher : Program Studi Teknik Komputer, Fakultas Teknik. Universitas Serambi Mekkah

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.32672/jnkti.v5i2.4147

Abstract

Dinas Kesehatan Indragiri Hilir merupakan instansi pemerintah yang memegang peranan penting dalam pengawasan dan pemantauan perkembangan kesehatan di Kabupaten Indragiri Hilir. Sebagai pihak yang bertanggung jawab dibidang kesehatan, Dinas Kesehatan memerlukan pendataan mengenai angka kesakitan (morbiditas) masyarakat Indragiri Hilir yang dikelompok berdasarkan penyakit, umur, jenis kelamin, kasus baru-lama yang ada disetiap UPT Puskesmas di Kabupaten Indragiri Hilir. Setiap bulannya, UPT Puskesmas di kecamatan melaporkan angka kesakitan (morbiditas) ke Dinas Kesehatan Indragiri Hilir untuk direkapitulasi. Namun laporan masih dalam bentuk format file excel dan tabel, sehingga data harus dilihat satu persatu dan memahami data membutuhkan waktu yang lama. Maka dibutuhkanlah sistem yang dapat memvisualisasikan data untuk memudahkan melihat data dan mengambil keputusan. Sistem ini dibangun menggunakan metode Treemap. Metode ini dapat memvisualisasikan data secara menyeluruh dan detail berdasarkan kategori data dengan jumlah data ratusan hingga ribuan yang ditampilkan dalam satu waktu. Berdasarkan hasil pengujian yang dilakukan menggunakan metode Black Box dan User Acceptance Test, sistem visualisasi menggunakan Treemap berhasil dibangun dan berjalan dengan baik dalam memvisualisasikan data angka kesakitan (morbiditas) di Indragiri Hilir dengan memperoleh hasil pengujian 95.10% untuk kategori sangat bagus menggunakan perhitungan skala Likert.
Klasifikasi Sentimen Masyarakat di Twitter terhadap Ganjar Pranowo dengan Metode Naïve Bayes Classifier Ritonga, Sinta Wahyuni; ., Yusra; Fikry, Muhammad; Cynthia, Eka Pandu
Building of Informatics, Technology and Science (BITS) Vol 5 No 1 (2023): June 2023
Publisher : Forum Kerjasama Pendidikan Tinggi

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47065/bits.v5i1.3535

Abstract

Indonesia is a country with a Democratic political system. The public is given freedom of speech, collaboration and public criticism. In the modern era, the use of social media is growing rapidly at the community level. One of the social media trends in Indonesia is Twitter which is used to convey aspirations to the government and as a means to convey daily activities, opinions, culture and get the latest information or news from Indonesia and abroad. Public opinion taken from Twitter can be positive, negative and neutral. The number of tweets on Twitter one of the trend topics in Indonesia is Ganjar Pranowo, can be used as a source of data in the assessment of sentiment classification which is processed to produce accuracy values. This study aims to classify public opinion on social media Twitter about Ganjar Pranowo using Naïve Bayes Classifier method. In the classification processing using a dataset of 4000 tweet data with two labeling classes, positive and negative to determine the efficiency of NBC performance combined with TF-IDF weighting, feature selection using supervised learning approach techniques. The results of the test on the classification of public sentiment research on Twitter about Ganjar Pranowo using NBC method using 10% of the test data from the dataset used to produce an accuracy value of 83.0%.
Pengaruh Contrast Limited Adaptive Histogram Equlization dalam Klasifikasi CT-Scan Tumor Ginjal menggunakan Deep Learning Yanto, Febi; Jannata, Nanda; Handayani, Lestari; Cynthia, Eka Pandu
Jurnal Inovtek Polbeng Seri Informatika Vol 9, No 1 (2024)
Publisher : P3M Politeknik Negeri Bengkalis

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35314/isi.v9i1.4235

Abstract

The human excretory system, comprising the kidneys, ureters, and bladder, plays a crucial role in maintaining overall body health by filtering blood and eliminating waste products, including water and toxins. However, kidneys are susceptible to various diseases, such as kidney tumors, which present a significant global health challenge, with over 430,000 new cases reported in 2020. This research focuses on using CT-scan imaging techniques to analyze and assess kidney tumors. The study employs the Image Enhancement Contrast Limited Adaptive Histogram Equalization (CLAHE) method to enhance the quality of Kidney Tumor CT-Scan images for deep learning classification using the MobileNetV2 Architecture. The dataset, consisting of 4,560 images, is divided into training, validation, and testing sets in an 80:20 ratio. Applying CLAHE with a clip limit of 20 and an 8x8 tile grid significantly improves evaluation metrics compared to non-CLAHE datasets, achieving an impressive f1-score of 99.56% and accuracy of 99.56%. This improvement is achieved using the Adam optimizer with a learning rate of 0.01. These findings underscore the efficacy of CLAHE in enhancing the model's performance in kidney tumor classification. They are particularly valuable for radiologists as they enhance diagnostic accuracy and efficiency, potentially reducing diagnostic errors and improving patient outcomes.
RANCANG BANGUN APLIKASI SIMULASI MINING PADA JARINGAN BLOCKCHAIN BITCOIN Sugandi, Hatami Karsa; Harahap, Nazruddin Safaat; Cynthia, Eka Pandu; Yanto, Febi; Sanjaya, Suwanto
Sebatik Vol. 26 No. 1 (2022): Juni 2022
Publisher : STMIK Widya Cipta Dharma

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.46984/sebatik.v26i1.1875

Abstract

Bitcoin merupakan salah satu dari mata uang digital yang dalam regulasinya tidak diatur oleh siapa pun seperti lembaga, organisasi maupun pemerintahan. Bitcoin menggunakan teknologi kriptografi atau yang biasa dikenal dengan teknologi Blockchain. Teknologi ini merupakan teknologi penyimpanan data atau transaksi kedalam sebuah block, dimana setiap proses penambahan block baru harus melalui proses validasi oleh sistem sesuai dengan konsensus yang berlaku. Untuk mengamankan jaringan Blockchain miliknya, bitcoin menggunakan algoritma konsensus Proof of Work (PoW). Proses validasi block inilah yang dinamakan dengan proses mining. Mining dilakukan untuk menambahkan transaksi kedalam Block dengan cara memecahkan teka-teki matematika dari algoritma PoW dengan cara memberikan komputasi power dari GPU oleh miner. Dikarenakan membutuhkan power yang besar, para miner diberi imbalan berupa bitcoin. Besaran bitcoin yang diterima tergantung dari hash power miner. Fenomena mining bitcoin menjadi trend bisnis pada masa kini karena menjanjikan keuntungan. Fenomena ini membuat banyak orang awam untuk ikut melakukan mining, tanpa mengetahui apa yang sebenarnya akan dilakukan. Maka dari itu simulasi ini dibuat dengan tujuan untuk mengedukasi bagaimana proses yang terjadi pada mining Bitcoin dengan cara visualisasi melalui Aplikasi web yang nantinya akan dibangun menggunakan bahasa pemrograman javascript dan diharapkan dapat menggambarkan proses mining pada blockchain dengan menerapkan algoritma konsensus Proof of Work di dalamnya.
Co-Authors Adi Mustofa Afriyanti, Liza Ahyani Junia Karlina Alwis Nazir Anggi Pranata Anwar Alfaruqi Sipayung Aprijon Ardiansyah Saputra Arifandy, M. Imam Baehaqi Batubara, Supina Budianita , Elvia Chinthia, Maulidania Mediawati Dicky Abimanyu Dina Septiawati Edi Ismanto Effendi, Noverta Eka, Muhammad Elin Haerani Elvia Budianita Fadhilah Syafria Febi Yanto Fikri, Mhd Ikhsanul Fitra Kurnia Fitri Insani Fitri Wulandari Fitriani Muttakin Fitriani Muttakin Gultom, Imeldawaty Gusti, Siska Kurnia Hammam Zaki Hanafiah, Anggi Harahap, Ramadhan Hasdi Radiles Iis Afrianty Inggih Permana Intan Eria Elfi Iwan Iskandar Iwan Iskandar Jannata, Nanda Januar Al Amien Jasril Jasril Jeki Dwi Arisandi Khairuniza, Nabila Lestari Handayani M Imam Arifandy M. Afdal M. Afdal M. Afif Rizky A. M. Imam Arifandy Mardiah Maripati, Maripati mohamad samuri, suzani Muhammad Affandes Muhammad Amin Muhammad Fikry Muhammad Hasanuddin, Muhammad Muhammad Irsyad Muhammad Khairy Dzaky Muhammad Ridha MUHAMMAD YUSUF Muhammad Zen, Muhammad Mulyati, Sabar Mushlihul Afif Nazaruddin Nazaruddin Nazir, Alwis Nazruddin Safaat Nazruddin Safaat H Novi Yanti Novi Yanti nursalisah, febi Octadino Hariyadi Okfalisa Okfalisa Oktaria, Wina Pizaini Pizaini Putra, Randi Rian Rahmad Al Rian Rahmat Al Hafiz Rahmawati Raihan Mahdy Reski Mai Candra Ritonga, Sinta Wahyuni Rizki, Cindy Atika Roni Setyawan Rusmin Saragih, Rusmin Sarbaini Sarbaini Sinaga, Ayu Puspita Sari Siti Ramadhani Sugandi, Hatami Karsa Sulistia Ningsih, Sulistia Surya Agustian Suwanto Sanjaya Syafitri, Nesi Syaifullah Syaifullah Yelfi Yelfi Yelvi Fitriani Yelvi Fitriani Yelvi Vitriani Yenggi Putra Dinata Yudhi Arta, Yudhi Yusra Yusra . Yusra Yusra Yusra Yusra Yusra, Yusra Zulham Zulham