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Simple Intelligent Learning Kit (SILK) for Machine learning

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silk-ml

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Simple Intelligent Learning Kit (SILK) for Machine learning

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In the area of ​​machine learning and data science, the most relevant is data management and knowledge. However, there are tasks such as the selection and aggregation of variables that best describe the event to be predicted. These tasks can be repetitive and manual. It has been observed that this part of the creation of a model takes up to 60% of the time of a data scientist.

One of the greatest qualities of a programmer is being lazy, since he thinks about doing a task so that he doesn't have to do it again, so we focus our time on less repetitive or experimental tasks, if not on the tasks of business knowledge and we started a task automation project for Machine learning.

In the automation process, a series of aids for the exploration and sanitation of data were created since it is what we see least developed in the published libraries. Among the tasks we perform, we include descriptive statistics, inferential statistics for binary classification and remediation of variables by type of data and their content.

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