mrnust / Maths_for_ML
Math is like the secret sauce behind Machine Learning and AI. It helps us make sense of data, find patterns, and make predictions. So, if you're curious about diving into AI and Machine Learning, don't forget to bring your math skills along for the ride!
☆14Updated last year
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