LOD-a-lot democratizes access to the Linked Open Data (LOD) Cloud by serving more than 28 billion unique triples from 650K datasets from a single self-indexed file. This corpus can be queried online with a sustainable Linked Data Fragments interface, or it can be downloaded and consumed locally: LOD-a-lot is easy to deploy and only requires limited resources (524 GB of disk space and 15.7 GB of RAM), enabling web-scale repeatable experimentation and research from a high-end laptop.
L. Becchetti, C. Castillo, D. Donato, S. Leonardi, and R. Baeza-Yates. The European Integrated Project Dynamically Evolving, Large Scale Information Systems (DELIS): proceedings of the final workshop, 222, page 99--113. Heinz-Nixdorf-Institut, Universität Paderborn, (February 2008)
P. Nakov, and M. Hearst. Proceedings of the Ninth Conference on Computational Natural Language Learning, page 17--24. Stroudsburg, PA, USA, Association for Computational Linguistics, (2005)
J. Abernethy, O. Chapelle, and C. Castillo. Proceedings of the 4th International Workshop on Adversarial Information Retrieval on the Web, page 41--44. New York, NY, USA, ACM, (2008)