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In this first of five articles, learn what it means for software to be highly available and how to install and set up heartbeat software from the High-Availability Linux project on a two-node system. You'll also learn how to configure the Apache Web serve
Basic principle: each time you visit a new site, you are gaining one point of expertise. With every 10 points, you move to the next level. Your search engine is mutating, new buttons appear giving you access to advanced features (search video, images, news, encylopedia, advanced filters, animated skins, web archive, traffic details...)
This library provides Python functions for agglomerative clustering. Its features include * generating hierarchical clusters from distance matrices * computing distance matrices from observation vectors * computing statistics on clusters *
L. Bawankule, N. Narole, and R. Pethe. International Journal on Recent and Innovation Trends in Computing and Communication, 3 (3):
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J. Turian, L. Ratinov, and Y. Bengio. Proceedings of the 48th Annual Meeting of the Association for Computational Linguistics, page 384--394. Stroudsburg, PA, USA, Association for Computational Linguistics, (2010)