Short-video recommendation presents unique challenges, such as modeling rapid user interest shifts from implicit feedback, but progress is constrained by a lack of large-scale open datasets that reflect real-world platform dynamics. To bridge this gap, we introduce the VK Large Short-Video Dataset (VK-LSVD), the largest publicly available industrial dataset of its kind. VK-LSVD offers an unprecedented scale of over 40 billion interactions from 10 million users and almost 20 million videos over six months, alongside rich features including content embeddings, diverse feedback signals, and contextual metadata. Our analysis supports the dataset’s quality and diversity. The dataset’s immediate impact is confirmed by its central role in the live VK RecSys Challenge 2025. VK-LSVD provides a vital, open dataset to use in building realistic benchmarks to accelerate research in sequential recommendation, cold-start scenarios, and next-generation recommender systems.
Paper Proceedings of the ACM Web Conference 2026 Autobidding, ranking and recommended systems
VK-LSVD: A Large-Scale Industrial Dataset for Short-Video Recommendation
arXiv:2602.04567 ACMPDFHF Dataset
Cite this paper
VK-LSVD: A Large-Scale Industrial Dataset for Short-Video Recommendation
@inproceedings{poplavsky2026vk,
title = {VK-LSVD: A Large-Scale Industrial Dataset for Short-Video Recommendation},
author = {Alexander Poplavsky and Alexander D'yakonov and Yuriy Dorn and Andrey Zimovnov},
booktitle = {Proceedings of the ACM Web Conference 2026},
year = {2026},
url = {https://arxiv.org/abs/2602.04567}
}