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Gregory Piatetsky-Shapiro founded KDnuggets 30 years ago, after organizing early workshops on knowledgediscovery. In this retrospective interview, he reflects on KDnuggets' growth, key innovations like deeplearning, and concerns about AI's societal impact.
This weeks guest post comes from KDD (KnowledgeDiscovery and Data Mining). KDD 2020 welcomes submissions on all aspects of knowledgediscovery and data mining, from theoretical research on emerging topics to papers describing the design and implementation of systems for practical tasks. 1989 to be exact.
Data analysis is a type of knowledgediscovery that gains insights from data and drives business decisions. Professional data analysts must have a wealth of business knowledge in order to know from the data what has happened and what is about to happen. For super rookies, the first task is to understand what data analysis is.
The interest in interpretation of machine learning has been rapidly accelerating in the last decade. This can be attributed to the popularity that machine learning algorithms, and more specifically deeplearning, has been gaining in various domains. Methods for explaining DeepLearning. Ribeiro, M.
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