Experiment with neural networks in your browser and see how machine learning works through interactive tools and real-time visualizations.
This website lets you tinker with neural networks directly in your browser, making it easy to see how these computer programs learn from data. You can adjust settings, add or remove layers, and watch in real time as the network tries to solve problems, all without needing to install anything or write code.
It's designed for anyone curious about machine learning, from beginners to those with some technical background. The interactive playground helps you grasp how neural networks work by letting you experiment and see immediate results. Whether you're a student, educator, or just exploring, you’ll find it a hands-on way to learn about artificial intelligence concepts without any risk of breaking things.
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