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Computing / Artificial intelligence / Machine learning / Graphical models / Structured prediction / Computational statistics / Statistical classification / Conditional random field / Probabilistic programming language / Inference / Artificial neural network / Support vector machine
Date: 2015-04-14 05:42:43
Computing
Artificial intelligence
Machine learning
Graphical models
Structured prediction
Computational statistics
Statistical classification
Conditional random field
Probabilistic programming language
Inference
Artificial neural network
Support vector machine

Programming with “Big Code”: Lessons, Techniques and Applications Pavol Bielik1 , Veselin Raychev1 , and Martin Vechev1 1 Department of Computer Science, ETH Zurich, Switzerland

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Source URL: www.srl.inf.ethz.ch

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