Optimize machine learning models

import tensorflow as tf import tensorflow_model_optimization as tfmot import tf_keras as keras  model = keras.Sequential([...])  pruning_schedule = tfmot.sparsity.keras.PolynomialDecay(                       initial_sparsity=0.0, final_sparsity=0.5,                       begin_step=2000, end_step=4000)  model_for_pruning = tfmot.sparsity.keras.prune_low_magnitude(     model, pruning_schedule=pruning_schedule) ...  model_for_pruning.fit(...)
The TensorFlow Model Optimization Toolkit is a suite of tools for optimizing ML models for deployment and execution. Among many uses, the toolkit supports techniques used to:
  • Reduce latency and inference cost for cloud and edge devices (e.g. mobile, IoT).
  • Deploy models to edge devices with restrictions on processing, memory, power-consumption, network usage, and model storage space.
  • Enable execution on and optimize for existing hardware or new special purpose accelerators.

Choose the model and optimization tool depending on your task: