Code Story: Building a Recommendation Engine with TensorFlow 2.17 and Keras 2.17
In 2024, recommendation engines drove 35% of all e-commerce revenue, yet 68% of engineering teams struggle to deploy models that balance accuracy and latency. TensorFlow 2.17 and Keras 2.17 change that calculus with native embedding optimizations and reduced graph compilation overhead. Ghostty is
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