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Better performance with tf.function

#artificialintelligence

If you would like to execute Python code during each invocation of a Function, tf.py_function is an exit hatch. The drawback of tf.py_function is that it's not portable or particularly performant, cannot be saved with SavedModel, and does not work well in distributed (multi-GPU, TPU) setups. Also, since tf.py_function has to be wired into the graph, it casts all inputs/outputs to tensors. Changing Python global and free variables counts as a Python side effect, so it only happens during tracing. Sometimes unexpected behaviors are very hard to notice.


Training Keras Models using the Rust TensorFlow Bindings

#artificialintelligence

Rust has become increasingly popular. Its safe execution and super fast runtime, combined with a strong community support, have made it an attractive alternative to languages like C. With little overhead it is possible to run Rust in production on micro-devices and, in the context of Edge Computing, might be a good choice when deploying Neural Networks at Edge. While there are many examples available to use pre-trained TensorFlow models with the Rust bindings or the TensorFlow-C API, there is little or none available on how to actually train models directly in Rust. Therefore in this brief tutorial I will outline a way to do so. For this demonstration we will create a very simple model, that merely receives a tensor with two elements and a single value as a target.