arasgungore/Stanford-Machine-Learning

My solutions to the assignments in the Machine Learning Specialization offered by Stanford University on Coursera.

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This resource provides practical examples and code solutions for the assignments in the Stanford Machine Learning Specialization. It helps aspiring machine learning practitioners understand how to implement various algorithms, taking them from conceptual knowledge to working code. Those learning machine learning and AI, particularly students and self-learners, would find this useful for hands-on practice.

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Use this if you are taking the Stanford Machine Learning Specialization and want to review or compare your assignment solutions.

Not ideal if you are looking for a standalone machine learning library or a pre-built application to solve a specific business problem.

machine-learning-education ai-skill-building data-science-training supervised-learning-practice unsupervised-learning-practice
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MIT

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Jan 15, 2024

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