TY - JOUR VL - 6 A1 - 1, 1 IS - 4 EP - 1885 Y1 - 2025/07/12/ SN - 2686-228X AV - public TI - Implementasi Metode Teachable Machine Untuk Pengidentifikasian Ekspresi Wajah Secara Real-Time ID - repository48551 UR - http://repository.uhamka.ac.id/id/eprint/48551/ SP - 1879 JF - Journal of Information System Research (JOSH) N2 - This study implements a direct facial expression detection system via the web using teachable machine and tensorflow.js. This system utilizes machine learning technology that operates directly in the browser without the need for a special server. With the transfer learning method, the model is trained to recognize various facial expressions such as happy, sad, angry, and neutral. This implementation uses a convolutional neural network (cnn) architecture that has been optimized for web activities. The results of the test show a detection accuracy level of 85-90% with a response time of under 200ms. This solution provides a lightweight option for emotion recognition applications that can be easily accessed via a web browser. The main advantages of this system are ease of implementation, cross-platform support, and maintaining data privacy because the process is carried out locally. ER -