
SHARK
SHARK is an advanced open-source C++ machine learning library that excels in both real-world applications and research. It features a modular design, offering a rich array of algorithms for linear and nonlinear optimization, kernel-based learning, and neural networks. Compatible with major operating systems, it ensures flexibility, ease of use, and high computational efficiency.
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