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Added ludwig to Deep Learning

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Closed Administrator requested to merge github/fork/Naveen-Zerocool/master into master Feb 25, 2019
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Created by: Naveen-Zerocool

Ludwig

Ludwig is a TensorFlow-based toolbox that allows to train and test deep learning models without the need to write code.

Why :

No coding required: no coding skills are required to train a model and use it for obtaining predictions. Generality: a new data type-based approach to deep learning model design that makes the tool usable across many different use cases. Flexibility: experienced users have extensive control over model building and training, while newcomers will find it easy to use. Extensibility: easy to add new model architecture and new feature data types. Understandability: deep learning model internals are often considered black boxes, but we provide standard visualizations to understand their performance and compare their predictions. Open Source: Apache License 2.0

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Anyone who agrees with this pull request could vote for it by adding a 👍 to it, and usually, the maintainer will merge it when votes reach 20.

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Source branch: github/fork/Naveen-Zerocool/master