A unified, efficient, and extensible PyTorch-based recommendation library
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Updated
Dec 1, 2025 - Python
A unified, efficient, and extensible PyTorch-based recommendation library
Image recommendation service with image on the input that outputs most similar images from database.
Sistem Rekomendasi Pendukung Keputusan Pemilihan Buku Terbaik Metode SAW - Expert System Final Project
DS307.N11 - Hệ Khuyến Nghị
Similar Song Recommendation with Python
DS307.N11 - Phân Tích Dữ Liệu Truyền Thông Xã Hội
A recommendation system for korean drama (Kdramas).
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