MXNet Perl Symbolic API¶
Topics:
- How to Compose Symbols introduces operator overloading of symbols.
- Symbol Attributes describes how to attach attributes to symbols.
- Serialization explains how to save and load symbols.
- Executing Symbols explains how to evaluate the symbols with data.
- Multiple Outputs explains how to configure multiple outputs.
How to Compose Symbols¶
The symbolic API provides a way to configure computation graphs. You can configure the graphs either at the level of neural network layer operations or as fine-grained operations.
The following example configures a two-layer neural network.
pdl> use AI::MXNet qw(mx)
pdl> $data = mx->symbold->Variable("data")
pdl> $fc1 = mx->symbol->FullyConnected(data => $data, name => "fc1", num_hidden" -> 128)
pdl> $act1 = mx->symbol->Activation(data => $fc1, name => "relu1", act_type => "relu")
pdl> $fc2 = mx->symbol->FullyConnected(data => $act1, name => "fc2", num_hidden => 64)
pdl> $net = mx->symbol->SoftmaxOutput(data => $fc2, name => "out")
The basic arithmetic operators (plus, minus, div, multiplication) are overloaded for element-wise operations of symbols.
The following example creates a computation graph that adds two inputs together.
pdl> use AI::MXNet qw(mx)
pdl> $a = mx->symbol->Variable("a")
pdl> $b = mx->symbol->Variable("b")
pdl> $c = $a + $b
Symbol Attributes¶
You can add an attribute to a symbol by providing an attribute hash when you create a symbol.
$data = mx->symbol->Variable("data", attr => { mood => "angry" })
$op = mx->symbol->Convolution(data => $data, kernel => [1, 1], num_filter => 1, attr => { mood => "so so" })
For proper communication with the C++ backend, both the key and values of the attribute dictionary should be strings. To retrieve the attributes, use ->attr($key)
:
$data->attr("mood")
To attach attributes, you can use AI::MXNet::AttrScope
. AI::MXNet::AttrScopeAttrScope
automatically adds
the specified attributes to all of the symbols created within that scope.
The user can also inherit this object to change naming behavior. For example:
use AI::MXNet qw(mx);
use Test::More tests => 3;
my ($data, $gdata);
{
local($mx::AttrScope) = mx->AttrScope(group=>4, data=>'great');
$data = mx->sym->Variable("data", attr => { dtype => "data", group => "1" });
$gdata = mx->sym->Variable("data2");
}
ok($gdata->attr("group") == 4);
ok($data->attr("group") == 1);
my $exceedScopeData = mx->sym->Variable("data3");
ok((not defined $exceedScopeData->attr("group")), "No group attr in global attr scope");
Serialization¶
There are two ways to save and load the symbols. You can use the mx->symbol->save
and mxnet->symbol->load
functions to serialize the AI::MXNet::Symbol
objects.
The advantage of using save
and load
functions is that it is language agnostic and cloud friendly.
The symbol is saved in JSON format. You can also get a JSON string directly using $symbol->tojson
.
The following example shows how to save a symbol to an S3 bucket, load it back, and compare two symbols using a JSON string.
pdl> use AI::MXNet qw(mx)
pdl> $a = mx->sym->Variable("a")
pdl> $b = mx->sym->Variable("b")
pdl> $c = $a + $b
pdl> $c->save("s3://my-bucket/symbol-c.json")
pdl> $c2 = $c->load("s3://my-bucket/symbol-c.json")
pdl> ok($c->tojson eq $c2->tojson)
ok 1
Executing Symbols¶
After you have assembled a set of symbols into a computation graph, the MXNet engine can evaluate them.
If you are training a neural network, this is typically
handled by the high-level AI::MXNet::Module package and the [fit()
] function.
For neural networks used in “feed-forward”, “prediction”, or “inference” mode (all terms for the same thing: running a trained network), the input arguments are the input data, and the weights of the neural network that were learned during training.
To manually execute a set of symbols, you need to create an [AI::MXNet::Executor
] object,
which is typically constructed by calling the [simple_bind(
] method on a AI::MXNet::Symbol.
Multiple Outputs¶
To group the symbols together, use the AI::MXNet::Symbol->Group function.
pdl> use AI::MXNet qw(mx)
pdl> use Data::Dumper
pdl> $data = mx->sym->Variable("data")
pdl> $fc1 = mx->sym->FullyConnected($data, name => "fc1", num_hidden => 128)
pdl> $act1 = mx->sym->Activation($fc1, name => "relu1", act_type => "relu")
pdl> $fc2 = mx->sym->FullyConnected($act1, name => "fc2", num_hidden => 64)
pdl> $net = mx->sym->SoftmaxOutput($fc2, name => "softmax")
pdl> $group = mx->sym->Group([$fc1, $net])
pdl> print Dumper($group->list_outputs())
$VAR1 = [
'fc1_output',
'softmax_output'
];
After you get the Group
, you can bind on group
instead.
The resulting executor will have two outputs, one for fc1_output and one for softmax_output.