Exception Handling in MXNet

This tutorial explains the exception handling support in MXNet, and provides examples on how to throw and handle exceptions when in a multithreaded context. Although, the examples are in Python, they can be easily extended to MXNet language bindings.

MXNet exceptions can be thrown from two areas: - MXNet main thread. For eg. Infershape and InferType. - Spawned threads: * By dependency engine for operator execution in parallel * By the iterators, during the data loading, text parsing phase etc.

In the first case, the exception is thrown and can be handled in the main thread. In the second case, the exception is thrown in a spawned thread, caught and transported to the main thread, where it is rethrown. This tutorial will give more explanation and examples on how to handle exceptions for the second case.

Prerequisites

To complete this tutorial, we need: - MXNet 7b24137. See Instructions in Setup and Installation.

Exception Handling for Iterators

The below example shows how to handle exceptions for iterators. In this example, we populate files for data and labels with fewer number of labels compared to the number of samples. This should throw an exception.

CSVIter uses PrefetcherIter for loading and parsing data. The PrefetcherIter spawns a producer thread in the background which prefetches the data while the main thread consumes the data. The exception is thrown in the spawned producer thread during the prefetching, when the label is not found corresponding to a specific sample.

The exception is transported to the main thread, where it is rethrown when Next is called as part of the following line: for batch in iter(data_train).

In general, Exception may be rethrown as part of Next and BeforeFirst calls which correspond to reset() and next() methods in MXDataIter for Python language bindings.

import os
import mxnet as mx

cwd = os.getcwd()
data_path = os.path.join(cwd, "data.csv")
label_path = os.path.join(cwd, "label.csv")

with open(data_path, "w") as fout:
    for i in range(8):
        fout.write("1,2,3,4,5,6,7,8,9,10\n")

with open(label_path, "w") as fout:
    for i in range(7):
        fout.write("label"+str(i))

try:
    data_train = mx.io.CSVIter(data_csv=data_path, label_csv=label_path, data_shape=(1, 10),
                               batch_size=4)

    for batch in iter(data_train):
        print(data_train.getdata().asnumpy())
except mx.base.MXNetError as ex:
    print("Exception handled")
    print(ex)

Limitation

There is a race condition when your last next() call doesnt reach the batch in your dataset where exception occurs. Exception may or may not be thrown in this case depending on which thread wins the race. To avoid this situation, you should try and iterate through your full dataset if you think it can throw exceptions which need to be handled.

Exception Handling for Operators

The below example shows how to handle exceptions for operators in the imperative mode.

For the operator case, the dependency engine spawns a number of threads if it is running in the ThreadedEnginePool or ThreadedEnginePerDevice mode. The final operator is executed in one of the spawned threads.

If an operator throws an exception during execution, this exception is propagated down the dependency chain. Once there is a synchronizing call i.e. WaitToRead for a variable in the dependency chain, the propagated exception is rethrown.

In the below example, I illustrate how an exception that occured in the first line is propagated down the dependency chain, and finally is rethrown when we make a synchronizing call to WaitToRead.

import mxnet as mx
a = mx.nd.random.normal(0, 1, (2, 2))
b = mx.nd.random.normal(0, 2, (2, 2))
c = mx.nd.dot(a, b)
d = mx.nd.random.normal(0, -1, (2, 2))
e = mx.nd.dot(c, d)
e.wait_to_read()

Although the above exception occurs when executing the operation which writes to the variable d in one of the child threads, it is thrown only when the synchronization happens as part of the line: e.wait_to_read().

Let us take another example. In the following case, we write to two variables and then wait_to_read for both. This example shows that any particular exception will not be thrown more than once.

import mxnet as mx
a = mx.nd.random.normal(0, 1, (2, 2))
b = mx.nd.random.normal(0, -1, (2, 2))
c, d  = mx.nd.dot(a, b)
try:
    c.asnumpy()
except mx.base.MXNetError as ex:
    print("Exception handled")
d.asnumpy()