Jensen: An Easily-Extensible C++ Toolkit for Production-Level Machine Learning and Convex Optimization
Iyer, Rishabh, Halloran, John T., Wei, Kai
This paper introduces Jensen, an easily extensible and scalable toolkit for production-level machine learning and convex optimization. Jensen implements a framework of convex (or loss) functions, convex optimization algorithms (including Gradient Descent, L-BFGS, Stochastic Gradient Descent, Conjugate Gradient, etc.), and a family of machine learning classifiers and regressors (Logistic Regression, SVMs, Least Square Regression, etc.). This framework makes it possible to deploy and train models with a few lines of code, and also extend and build upon this by integrating new loss functions and optimization algorithms.
Jul-17-2018
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- California > Yolo County
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- Washington > King County
- North America > United States
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- Research Report (0.96)
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