I'm using TensorFlow and the tf.data.Dataset API to perform some text preprocessing. Without using num_parallel_calls in my dataset.map call, it takes 0.03s to preprocess 10K records.

When I use num_parallel_trials=8 (the number of cores on my machine), it also takes 0.03s to preprocess 10K records.

I googled around and came across this: Parallelism isn't reducing the time in dataset map

where they indicate that you need to use TensorFlow operations to see a speedup. Here's the thing: I am using only TensorFlow operations. Specifically, I'm mapping this function:

def preprocess(self, x, data_table):
    x['reviews'] = tf.string_split(x['reviews'], delimiter=' ')
    x['reviews'] = tf.sparse_tensor_to_dense(x['reviews'], default_value=' ')
    x['reviews'] = tf.cast(data_table.lookup(x['reviews']), tf.int32)
    nbatch = tf.cast(tf.shape(x['reviews'])[0], tf.int32)
    nseq = tf.cast(tf.shape(x['reviews'])[1], tf.int32)
    padding = tf.cond(tf.less(nseq, 100),
                      lambda: 0 * tf.ones([nbatch, 100 - nseq], tf.int32),
                      lambda: 0 * tf.ones([nbatch, 0], tf.int32))
    x['reviews'] = tf.concat((x['reviews'], padding), axis=1)[:, :100]
    x['reviews'].set_shape([None, 100])
    return x

Any idea why I don't see any speedup?

Thanks!

  • 1
    There can be many reasons but I see is that the two operations sparse_tensor_to_dense and lambda functions as the bottleneck here. But to investigate further, you should provide more details what you want to achieve and how exactly your dataset and pipeline looks – mlRocks Dec 4 at 8:56
  • Is preprocess() the function that you pass to Dataset.map()? (Asking because I wouldn't expect data_table to be an argument in a map function.) As mlRocks suggests, it would be helpful to see the larger context of the input pipeline. For example, if your input data are on a slow storage system, you might have an I/O bottleneck that no amount of parallelism in the map() will recover. – mrry Dec 4 at 16:26

My first assumption would be the calls to lambda are crushing your speed as lazy initialization for each iteration and core. According to this url he has a similar problem to speed and core use . Is there a way to use tensorflow map_fn on GPU? I am pretty much a beginner with tensor and piping but I’ll look into later when I have access to computer, I would like to know what executables are being run where though.

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