If you are deploying to CPUs (and let's be honest, 90% of inference still happens on CPUs), you are leaving performance on the table by not using DLDT.
The toolkit solves one simple problem:
Stop wrestling with framework dependencies. Start deploying optimized models at the edge. If you have ever trained a beautiful model in PyTorch or TensorFlow only to watch it crawl across the finish line on a production CPU, you know the pain. We’ve all been there: high latency, bloated memory usage, and the sinking feeling that you need to buy expensive GPUs just to serve inference. intel deep learning deployment toolkit
Let’s break down what this toolkit is, why it matters for your DevOps pipeline, and how to turn your CPU into an inference beast. First, a quick clarification for search purposes: You will often hear this referred to as OpenVINO (Open Visual Inference & Neural Network Optimization). Intel DLDT is essentially the core optimization engine inside OpenVINO. If you are deploying to CPUs (and let's
mo --input_model my_model.onnx --output_dir ./optimized_model Here is a Python snippet to run your newly minted IR model: If you have ever trained a beautiful model