English

LightLDA: Big Topic Models on Modest Compute Clusters

Machine Learning 2014-12-05 v1 Distributed, Parallel, and Cluster Computing Information Retrieval Machine Learning

Abstract

When building large-scale machine learning (ML) programs, such as big topic models or deep neural nets, one usually assumes such tasks can only be attempted with industrial-sized clusters with thousands of nodes, which are out of reach for most practitioners or academic researchers. We consider this challenge in the context of topic modeling on web-scale corpora, and show that with a modest cluster of as few as 8 machines, we can train a topic model with 1 million topics and a 1-million-word vocabulary (for a total of 1 trillion parameters), on a document collection with 200 billion tokens -- a scale not yet reported even with thousands of machines. Our major contributions include: 1) a new, highly efficient O(1) Metropolis-Hastings sampling algorithm, whose running cost is (surprisingly) agnostic of model size, and empirically converges nearly an order of magnitude faster than current state-of-the-art Gibbs samplers; 2) a structure-aware model-parallel scheme, which leverages dependencies within the topic model, yielding a sampling strategy that is frugal on machine memory and network communication; 3) a differential data-structure for model storage, which uses separate data structures for high- and low-frequency words to allow extremely large models to fit in memory, while maintaining high inference speed; and 4) a bounded asynchronous data-parallel scheme, which allows efficient distributed processing of massive data via a parameter server. Our distribution strategy is an instance of the model-and-data-parallel programming model underlying the Petuum framework for general distributed ML, and was implemented on top of the Petuum open-source system. We provide experimental evidence showing how this development puts massive models within reach on a small cluster while still enjoying proportional time cost reductions with increasing cluster size, in comparison with alternative options.

Keywords

Cite

@article{arxiv.1412.1576,
  title  = {LightLDA: Big Topic Models on Modest Compute Clusters},
  author = {Jinhui Yuan and Fei Gao and Qirong Ho and Wei Dai and Jinliang Wei and Xun Zheng and Eric P. Xing and Tie-Yan Liu and Wei-Ying Ma},
  journal= {arXiv preprint arXiv:1412.1576},
  year   = {2014}
}
R2 v1 2026-06-22T07:20:03.279Z