23 Apr Machine Learning and Deep Link Graph Analytics: A Powerful Combination
Machine learning has always been computationally demanding, and graph-based machine learning is no exception. With every hop, or level of connected data, the size of data in the search expands exponentially, requiring massively parallel computation to traverse the data. This is computationally too expensive for key-value databases which require too many separate lookups or RDBMS that struggle with too many slow joins. Even a standard graph database may not be able to handle deep link analytics on large graphs. A native graph database featuring massively parallel and distributed processing is needed.
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