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Mathematical Tools for Neural and Cognitive Science, New York University. Vitaly Feldman, IBM Almaden Computational Challenges in Machine Learning ... Many methods are available to approximately solve all sorts of equations: ODEs, PDEs, polynomial systems, algebraic equations.

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  • Vitaly Feldman, IBM Almaden Computational Challenges in Machine Learning ...
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