torch.package¶
torch.package
adds support for creating packages containing both artifacts and arbitrary
PyTorch code. These packages can be saved, shared, used to load and execute models
at a later date or on a different machine, and can even be deployed to production using
torch::deploy
.
This document contains tutorials, how-to guides, explanations, and an API reference that
will help you learn more about torch.package
and how to use it.
Warning
This module depends on the pickle
module which is not secure. Only unpackage data you trust.
It is possible to construct malicious pickle data which will execute arbitrary code during unpickling. Never unpackage data that could have come from an untrusted source, or that could have been tampered with.
For more information, review the documentation for the pickle
module.
Tutorials¶
Packaging your first model¶
A tutorial that guides you through packaging and unpackaging a simple model is available on Colab. After completing this exercise, you will be familiar with the basic API for creating and using Torch packages.
How do I…¶
See what is inside a package?¶
Treat the package like a ZIP archive¶
The container format for a torch.package
is ZIP, so any tools that work with standard ZIP files should
work for exploring the contents. Some common ways to interact with ZIP files:
unzip my_package.pt
will unzip thetorch.package
archive to disk, where you can freely inspect its contents.
$ unzip my_package.pt && tree my_package
my_package
├── .data
│ ├── 94304870911616.storage
│ ├── 94304900784016.storage
│ ├── extern_modules
│ └── version
├── models
│ └── model_1.pkl
└── torchvision
└── models
├── resnet.py
└── utils.py
~ cd my_package && cat torchvision/models/resnet.py
...
The Python
zipfile
module provides a standard way to read and write ZIP archive contents.
from zipfile import ZipFile
with ZipFile("my_package.pt") as myzip:
file_bytes = myzip.read("torchvision/models/resnet.py")
# edit file_bytes in some way
myzip.writestr("torchvision/models/resnet.py", new_file_bytes)
vim has the ability to natively read ZIP archives. You can even edit files and :
write
them back into the archive!
# add this to your .vimrc to treat `*.pt` files as zip files
au BufReadCmd *.pt call zip#Browse(expand("<amatch>"))
~ vi my_package.pt
Use the file_structure()
API¶
PackageImporter
provides a file_structure()
method, which will return a printable
and queryable Directory
object. The Directory
object is a simple directory structure that you can use to explore the
current contents of a torch.package
.
The Directory
object itself is directly printable and will print out a file tree representation. To filter what is returned,
use the glob-style include
and exclude
filtering arguments.
with PackageExporter('my_package.pt') as pe:
pe.save_pickle('models', 'model_1.pkl', mod)
importer = PackageImporter('my_package.pt')
# can limit printed items with include/exclude args
print(importer.file_structure(include=["**/utils.py", "**/*.pkl"], exclude="**/*.storage"))
print(importer.file_structure()) # will print out all files
Output:
# filtered with glob pattern:
# include=["**/utils.py", "**/*.pkl"], exclude="**/*.storage"
─── my_package.pt
├── models
│ └── model_1.pkl
└── torchvision
└── models
└── utils.py
# all files
─── my_package.pt
├── .data
│ ├── 94304870911616.storage
│ ├── 94304900784016.storage
│ ├── extern_modules
│ └── version
├── models
│ └── model_1.pkl
└── torchvision
└── models
├── resnet.py
└── utils.py
You can also query Directory
objects with the has_file()
method.
importer_file_structure = importer.file_structure()
found: bool = importer_file_structure.has_file("package_a/subpackage.py")
See why a given module was included as a dependency?¶
Say there is a given module foo
, and you want to know why your PackageExporter
is pulling in foo
as a dependency.
PackageExporter.get_rdeps()
will return all modules that directly depend on foo
.
If you would like to see how a given module src
depends on foo
, the PackageExporter.all_paths()
method will
return a DOT-formatted graph showing all the dependency paths between src
and foo
.
If you would just like to see the whole dependency graph of your PackageExporter
, you can use PackageExporter.dependency_graph_string()
.
Include arbitrary resources with my package and access them later?¶
PackageExporter
exposes three methods, save_pickle
, save_text
and save_binary
that allow you to save
Python objects, text, and binary data to a package.
with torch.PackageExporter("package.pt") as exporter:
# Pickles the object and saves to `my_resources/tensor.pkl` in the archive.
exporter.save_pickle("my_resources", "tensor.pkl", torch.randn(4))
exporter.save_text("config_stuff", "words.txt", "a sample string")
exporter.save_binary("raw_data", "binary", my_bytes)
PackageImporter
exposes complementary methods named load_pickle
, load_text
and load_binary
that allow you to load
Python objects, text and binary data from a package.
importer = torch.PackageImporter("package.pt")
my_tensor = importer.load_pickle("my_resources", "tensor.pkl")
text = importer.load_text("config_stuff", "words.txt")
binary = importer.load_binary("raw_data", "binary")
Customize how a class is packaged?¶
torch.package
allows for the customization of how classes are packaged. This behavior is accessed through defining the method
__reduce_package__
on a class and by defining a corresponding de-packaging function. This is similar to defining __reduce__
for
Python’s normal pickling process.
Steps:
Define the method
__reduce_package__(self, exporter: PackageExporter)
on the target class. This method should do the work to save the class instance inside of the package, and should return a tuple of the corresponding de-packaging function with the arguments needed to invoke the de-packaging function. This method is called by thePackageExporter
when it encounters an instance of the target class.Define a de-packaging function for the class. This de-packaging function should do the work to reconstruct and return an instance of the class. The function signature’s first parameter should be a
PackageImporter
instance, and the rest of the parameters are user defined.
# foo.py [Example of customizing how class Foo is packaged]
from torch.package import PackageExporter, PackageImporter
import time
class Foo:
def __init__(self, my_string: str):
super().__init__()
self.my_string = my_string
self.time_imported = 0
self.time_exported = 0
def __reduce_package__(self, exporter: PackageExporter):
"""
Called by ``torch.package.PackageExporter``'s Pickler's ``persistent_id`` when
saving an instance of this object. This method should do the work to save this
object inside of the ``torch.package`` archive.
Returns function w/ arguments to load the object from a
``torch.package.PackageImporter``'s Pickler's ``persistent_load`` function.
"""
# use this pattern to ensure no naming conflicts with normal dependencies,
# anything saved under this module name shouldn't conflict with other
# items in the package
generated_module_name = f"foo-generated._{exporter.get_unique_id()}"
exporter.save_text(
generated_module_name,
"foo.txt",
self.my_string + ", with exporter modification!",
)
time_exported = time.clock_gettime(1)
# returns de-packaging function w/ arguments to invoke with
return (unpackage_foo, (generated_module_name, time_exported,))
def unpackage_foo(
importer: PackageImporter, generated_module_name: str, time_exported: float
) -> Foo:
"""
Called by ``torch.package.PackageImporter``'s Pickler's ``persistent_load`` function
when depickling a Foo object.
Performs work of loading and returning a Foo instance from a ``torch.package`` archive.
"""
time_imported = time.clock_gettime(1)
foo = Foo(importer.load_text(generated_module_name, "foo.txt"))
foo.time_imported = time_imported
foo.time_exported = time_exported
return foo
# example of saving instances of class Foo
import torch
from torch.package import PackageImporter, PackageExporter
import foo
foo_1 = foo.Foo("foo_1 initial string")
foo_2 = foo.Foo("foo_2 initial string")
with PackageExporter('foo_package.pt') as pe:
# save as normal, no extra work necessary
pe.save_pickle('foo_collection', 'foo1.pkl', foo_1)
pe.save_pickle('foo_collection', 'foo2.pkl', foo_2)
pi = PackageImporter('foo_package.pt')
print(pi.file_structure())
imported_foo = pi.load_pickle('foo_collection', 'foo1.pkl')
print(f"foo_1 string: '{imported_foo.my_string}'")
print(f"foo_1 export time: {imported_foo.time_exported}")
print(f"foo_1 import time: {imported_foo.time_imported}")
# output of running above script
─── foo_package
├── foo-generated
│ ├── _0
│ │ └── foo.txt
│ └── _1
│ └── foo.txt
├── foo_collection
│ ├── foo1.pkl
│ └── foo2.pkl
└── foo.py
foo_1 string: 'foo_1 initial string, with reduction modification!'
foo_1 export time: 9857706.650140837
foo_1 import time: 9857706.652698385
Test in my source code whether or not it is executing inside a package?¶
A PackageImporter
will add the attribute __torch_package__
to every module that it initializes. Your code can check for the
presence of this attribute to determine whether it is executing in a packaged context or not.
# In foo/bar.py:
if "__torch_package__" in dir(): # true if the code is being loaded from a package
def is_in_package():
return True
UserException = Exception
else:
def is_in_package():
return False
UserException = UnpackageableException
Now, the code will behave differently depending on whether it’s imported normally through your Python environment or imported from a
torch.package
.
from foo.bar import is_in_package
print(is_in_package()) # False
loaded_module = PackageImporter(my_package).import_module("foo.bar")
loaded_module.is_in_package() # True
Warning: in general, it’s bad practice to have code that behaves differently depending on whether it’s packaged or not. This can lead to hard-to-debug issues that are sensitive to how you imported your code. If your package is intended to be heavily used, consider restructuring your code so that it behaves the same way no matter how it was loaded.
Patch code into a package?¶
PackageExporter
offers a save_source_string()
method that allows one to save arbitrary Python source code to a module of your choosing.
with PackageExporter(f) as exporter:
# Save the my_module.foo available in your current Python environment.
exporter.save_module("my_module.foo")
# This saves the provided string to my_module/foo.py in the package archive.
# It will override the my_module.foo that was previously saved.
exporter.save_source_string("my_module.foo", textwrap.dedent(
"""\
def my_function():
print('hello world')
"""
))
# If you want to treat my_module.bar as a package
# (e.g. save to `my_module/bar/__init__.py` instead of `my_module/bar.py)
# pass is_package=True,
exporter.save_source_string("my_module.bar",
"def foo(): print('hello')\n",
is_package=True)
importer = PackageImporter(f)
importer.import_module("my_module.foo").my_function() # prints 'hello world'
Access package contents from packaged code?¶
PackageImporter
implements the
importlib.resources
API for accessing resources from inside a package.
with PackageExporter(f) as exporter:
# saves text to my_resource/a.txt in the archive
exporter.save_text("my_resource", "a.txt", "hello world!")
# saves the tensor to my_pickle/obj.pkl
exporter.save_pickle("my_pickle", "obj.pkl", torch.ones(2, 2))
# see below for module contents
exporter.save_module("foo")
exporter.save_module("bar")
The importlib.resources
API allows access to resources from within packaged code.
# foo.py:
import importlib.resources
import my_resource
# returns "hello world!"
def get_my_resource():
return importlib.resources.read_text(my_resource, "a.txt")
Using importlib.resources
is the recommended way to access package contents from within packaged code, since it complies
with the Python standard. However, it is also possible to access the parent PackageImporter
instance itself from within
packaged code.
# bar.py:
import torch_package_importer # this is the PackageImporter that imported this module.
# Prints "hello world!", equivalent to importlib.resources.read_text
def get_my_resource():
return torch_package_importer.load_text("my_resource", "a.txt")
# You also do things that the importlib.resources API does not support, like loading
# a pickled object from the package.
def get_my_pickle():
return torch_package_importer.load_pickle("my_pickle", "obj.pkl")
Distinguish between packaged code and non-packaged code?¶
To tell if an object’s code is from a torch.package
, use the torch.package.is_from_package()
function.
Note: if an object is from a package but its definition is from a module marked extern
or from stdlib
,
this check will return False
.
importer = PackageImporter(f)
mod = importer.import_module('foo')
obj = importer.load_pickle('model', 'model.pkl')
txt = importer.load_text('text', 'my_test.txt')
assert is_from_package(mod)
assert is_from_package(obj)
assert not is_from_package(txt) # str is from stdlib, so this will return False
Re-export an imported object?¶
To re-export an object that was previously imported by a PackageImporter
, you must make the new PackageExporter
aware of the original PackageImporter
so that it can find source code for your object’s dependencies.
importer = PackageImporter(f)
obj = importer.load_pickle("model", "model.pkl")
# re-export obj in a new package
with PackageExporter(f2, importer=(importer, sys_importer)) as exporter:
exporter.save_pickle("model", "model.pkl", obj)
Package a TorchScript module?¶
To package a TorchScript model, use the same save_pickle
and load_pickle
APIs as you would with any other object.
Saving TorchScript objects that are attributes or submodules is supported as well with no extra work.
# save TorchScript just like any other object
with PackageExporter(file_name) as e:
e.save_pickle("res", "script_model.pkl", scripted_model)
e.save_pickle("res", "mixed_model.pkl", python_model_with_scripted_submodule)
# load as normal
importer = PackageImporter(file_name)
loaded_script = importer.load_pickle("res", "script_model.pkl")
loaded_mixed = importer.load_pickle("res", "mixed_model.pkl"
Explanation¶
torch.package
Format Overview¶
A torch.package
file is a ZIP archive which conventionally uses the .pt
extension. Inside the ZIP archive, there are two kinds of files:
Framework files, which are placed in the
.data/
.User files, which is everything else.
As an example, this is what a fully packaged ResNet model from torchvision
looks like:
resnet
├── .data # All framework-specific data is stored here.
│ │ # It's named to avoid conflicts with user-serialized code.
│ ├── 94286146172688.storage # tensor data
│ ├── 94286146172784.storage
│ ├── extern_modules # text file with names of extern modules (e.g. 'torch')
│ ├── version # version metadata
│ ├── ...
├── model # the pickled model
│ └── model.pkl
└── torchvision # all code dependencies are captured as source files
└── models
├── resnet.py
└── utils.py
Framework files¶
The .data/
directory is owned by torch.package, and its contents are considered to be a private implementation detail.
The torch.package
format makes no guarantees about the contents of .data/
, but any changes made will be backward compatible
(that is, newer version of PyTorch will always be able to load older torch.packages
).
Currently, the .data/
directory contains the following items:
version
: a version number for the serialized format, so that thetorch.package
import infrastructures knows how to load this package.extern_modules
: a list of modules that are consideredextern:class:`PackageImporter`. ``extern
modules will be imported using the loading environment’s system importer.*.storage
: serialized tensor data.
.data
├── 94286146172688.storage
├── 94286146172784.storage
├── extern_modules
├── version
├── ...
User files¶
All other files in the archive were put there by a user. The layout is identical to a Python regular package. For a deeper dive in how Python packaging works, please consult this essay (it’s slightly out of date, so double-check implementation details with the Python reference documentation).
<package root>
├── model # the pickled model
│ └── model.pkl
├── another_package
│ ├── __init__.py
│ ├── foo.txt # a resource file , see importlib.resources
│ └── ...
└── torchvision
└── models
├── resnet.py # torchvision.models.resnet
└── utils.py # torchvision.models.utils
How torch.package
finds your code’s dependencies¶
Analyzing an object’s dependencies¶
When you issue a save_pickle(obj, ...)
call, PackageExporter
will pickle the object normally. Then, it uses the
pickletools
standard library module to parse the pickle bytecode.
In a pickle, an object is saved along with a GLOBAL
opcode that describes where to find the implementation of the object’s type, like:
GLOBAL 'torchvision.models.resnet Resnet`
The dependency resolver will gather up all GLOBAL
ops and mark them as dependencies of your pickled object.
For more information about pickling and the pickle format, please consult the Python docs.
Analyzing a module’s dependencies¶
When a Python module is identified as a dependency, torch.package
walks the module’s python AST representation and looks for import statements with
full support for the standard forms: from x import y
, import z
, from w import v as u
, etc. When one of these import statements are
encountered, torch.package
registers the imported modules as dependencies that are then themselves parsed in the same AST walking way.
Note: AST parsing has limited support for the __import__(...)
syntax and does not support importlib.import_module
calls. In general, you should
not expect dynamic imports to be detected by torch.package
.
Dependency Management¶
torch.package
automatically finds the Python modules that your code and objects depend on. This process is called dependency resolution.
For each module that the dependency resolver finds, you must specify an action to take.
The allowed actions are:
intern
: put this module into the package.extern
: declare this module as an external dependency of the package.mock
: stub out this module.deny
: depending on this module will raise an error during package export.
Finally, there is one more important action that is not technically part of torch.package
:
Refactoring: remove or change the dependencies in your code.
Note that actions are only defined on entire Python modules. There is no way to package “just” a function or class from a module and leave the rest out.
This is by design. Python does not offer clean boundaries between objects defined in a module. The only defined unit of dependency organization is a
module, so that’s what torch.package
uses.
Actions are applied to modules using patterns. Patterns can either be module names ("foo.bar"
) or globs (like "foo.**"
). You associate a pattern
with an action using methods on PackageExporter
, e.g.
my_exporter.intern("torchvision.**")
my_exporter.extern("numpy")
If a module matches a pattern, the corresponding action is applied to it. For a given module, patterns will be checked in the order that they were defined, and the first action will be taken.
intern
¶
If a module is intern
-ed, it will be placed into the package.
This action is your model code, or any related code you want to package. For example, if you are trying to package a ResNet from torchvision
,
you will need to intern
the module torchvision.models.resnet.
On package import, when your packaged code tries to import an intern
-ed module, PackageImporter will look inside your package for that module.
If it can’t find that module, an error will be raised. This ensures that each PackageImporter
is isolated from the loading environment—even
if you have my_interned_module
available in both your package and the loading environment, PackageImporter
will only use the version in your
package.
Note: Only Python source modules can be intern
-ed. Other kinds of modules, like C extension modules and bytecode modules, will raise an error if
you attempt to intern
them. These kinds of modules need to be mock
-ed or extern
-ed.
extern
¶
If a module is extern
-ed, it will not be packaged. Instead, it will be added to a list of external dependencies for this package. You can find this
list on package_exporter.extern_modules
.
On package import, when the packaged code tries to import an extern
-ed module, PackageImporter
will use the default Python importer to find
that module, as if you did importlib.import_module("my_externed_module")
. If it can’t find that module, an error will be raised.
In this way, you can depend on third-party libraries like numpy
and scipy
from within your package without having to package them too.
Warning: If any external library changes in a backwards-incompatible way, your package may fail to load. If you need long-term reproducibility
for your package, try to limit your use of extern
.
mock
¶
If a module is mock
-ed, it will not be packaged. Instead a stub module will be packaged in its place. The stub module will allow you to retrieve
objects from it (so that from my_mocked_module import foo
will not error), but any use of that object will raise a NotImplementedError
.
mock
should be used for code that you “know” will not be needed in the loaded package, but you still want available for use in non-packaged contents.
For example, initialization/configuration code, or code only used for debugging/training.
Warning: In general, mock
should be used as a last resort. It introduces behavioral differences between packaged code and non-packaged code,
which may lead to later confusion. Prefer instead to refactor your code to remove unwanted dependencies.
Refactoring¶
The best way to manage dependencies is to not have dependencies at all! Often, code can be refactored to remove unnecessary dependencies. Here are some guidelines for writing code with clean dependencies (which are also generally good practices!):
Include only what you use. Do not leave unused imports in your code. The dependency resolver is not smart enough to tell that they are indeed unused, and will try to process them.
Qualify your imports. For example, instead of writing import foo and later using foo.bar.baz
, prefer to write from foo.bar import baz
. This more
precisely specifies your real dependency (foo.bar
) and lets the dependency resolver know you don’t need all of foo
.
Split up large files with unrelated functionality into smaller ones. If your utils
module contains a hodge-podge of unrelated functionality, any module
that depends on utils
will need to pull in lots of unrelated dependencies, even if you only needed a small part of it. Prefer instead to define
single-purpose modules that can be packaged independently of one another.
Patterns¶
Patterns allow you to specify groups of modules with a convenient syntax. The syntax and behavior of patterns follows the Bazel/Buck glob().
A module that we are trying to match against a pattern is called a candidate. A candidate is composed of a list of segments separated by a
separator string, e.g. foo.bar.baz
.
A pattern contains one or more segments. Segments can be:
A literal string (e.g.
foo
), which matches exactly.A string containing a wildcard (e.g.
torch
, orfoo*baz*
). The wildcard matches any string, including the empty string.A double wildcard (
**
). This matches against zero or more complete segments.
Examples:
torch.**
: matchestorch
and all its submodules, e.g.torch.nn
andtorch.nn.functional
.torch.*
: matchestorch.nn
ortorch.functional
, but nottorch.nn.functional
ortorch
torch*.**
: matchestorch
,torchvision
, and all of their submodules
When specifying actions, you can pass multiple patterns, e.g.
exporter.intern(["torchvision.models.**", "torchvision.utils.**"])
A module will match against this action if it matches any of the patterns.
You can also specify patterns to exclude, e.g.
exporter.mock("**", exclude=["torchvision.**"])
A module will not match against this action if it matches any of the exclude patterns. In this example, we are mocking all modules except
torchvision
and its submodules.
When a module could potentially match against multiple actions, the first action defined will be taken.
torch.package
sharp edges¶
Avoid global state in your modules¶
Python makes it really easy to bind objects and run code at module-level scope. This is generally fine—after all, functions and classes are bound to names this way. However, things become more complicated when you define an object at module scope with the intention of mutating it, introducing mutable global state.
Mutable global state is quite useful—it can reduce boilerplate, allow for open registration into tables, etc. But unless employed very carefully, it can
cause complications when used with torch.package
.
Every PackageImporter
creates an independent environment for its contents. This is nice because it means we load multiple packages and ensure
they are isolated from each other, but when modules are written in a way that assumes shared mutable global state, this behavior can create hard-to-debug
errors.
How torch.package
keeps packages isolated from each other¶
Each PackageImporter
instance creates an independent, isolated environment for its modules and objects. Modules in a package can only import
other packaged modules, or modules marked extern
. If you use multiple PackageImporter
instances to load a single package, you will get
multiple independent environments that do not interact.
This is achieved by extending Python’s import infrastructure with a custom importer. PackageImporter
provides the same core API as the
importlib
importer; namely, it implements the import_module
and __import__
methods.
When you invoke PackageImporter.import_module()
, PackageImporter
will construct and return a new module, much as the system importer does.
However, PackageImporter
patches the returned module to use self
(i.e. that PackageImporter
instance) to fulfill future import
requests by looking in the package rather than searching the user’s Python environment.
Mangling¶
To avoid confusion (“is this foo.bar
object the one from my package, or the one from my Python environment?”), PackageImporter
mangles the
__name__
and __file__
of all imported modules, by adding a mangle prefix to them.
For __name__
, a name like torchvision.models.resnet18
becomes <torch_package_0>.torchvision.models.resnet18
.
For __file__
, a name like torchvision/models/resnet18.py
becomes <torch_package_0>.torchvision/modules/resnet18.py
.
Name mangling helps avoid inadvertent punning of module names between different packages, and helps you debug by making stack traces and print
statements more clearly show whether they are referring to packaged code or not. For developer-facing details about mangling, consult
mangling.md
in torch/package/
.
API Reference¶
- class torch.package.PackagingError(dependency_graph, debug=False)[source]¶
This exception is raised when there is an issue with exporting a package.
PackageExporter
will attempt to gather up all the errors and present them to you at once.
- class torch.package.EmptyMatchError[source]¶
This is an exception that is thrown when a mock or extern is marked as
allow_empty=False
, and is not matched with any module during packaging.
- class torch.package.PackageExporter(f, importer=<torch.package.importer._SysImporter object>, debug=False)[source]¶
Exporters allow you to write packages of code, pickled Python data, and arbitrary binary and text resources into a self-contained package.
Imports can load this code in a hermetic way, such that code is loaded from the package rather than the normal Python import system. This allows for the packaging of PyTorch model code and data so that it can be run on a server or used in the future for transfer learning.
The code contained in packages is copied file-by-file from the original source when it is created, and the file format is a specially organized zip file. Future users of the package can unzip the package, and edit the code in order to perform custom modifications to it.
The importer for packages ensures that code in the module can only be loaded from within the package, except for modules explicitly listed as external using
extern()
. The fileextern_modules
in the zip archive lists all the modules that a package externally depends on. This prevents “implicit” dependencies where the package runs locally because it is importing a locally-installed package, but then fails when the package is copied to another machine.When source code is added to the package, the exporter can optionally scan it for further code dependencies (
dependencies=True
). It looks for import statements, resolves relative references to qualified module names, and performs an action specified by the user (See:extern()
,mock()
, andintern()
).- __init__(f, importer=<torch.package.importer._SysImporter object>, debug=False)[source]¶
Create an exporter.
- Parameters:
f (Union[str, Path, BinaryIO]) – The location to export to. Can be a
string
/Path
object containing a filename or a binary I/O object.importer (Union[Importer, Sequence[Importer]]) – If a single Importer is passed, use that to search for modules. If a sequence of importers are passed, an
OrderedImporter
will be constructed out of them.debug (bool) – If set to True, add path of broken modules to PackagingErrors.
- add_dependency(module_name, dependencies=True)[source]¶
Given a module, add it to the dependency graph according to patterns specified by the user.
- all_paths(src, dst)[source]¶
- Return a dot representation of the subgraph
that has all paths from src to dst.
- Returns:
A dot representation containing all paths from src to dst. (https://graphviz.org/doc/info/lang.html)
- Return type:
- close()[source]¶
Write the package to the filesystem. Any calls after
close()
are now invalid. It is preferable to use resource guard syntax instead:with PackageExporter("file.zip") as e: ...
- deny(include, *, exclude=())[source]¶
Blocklist modules who names match the given glob patterns from the list of modules the package can import. If a dependency on any matching packages is found, a
PackagingError
is raised.- Parameters:
include (Union[List[str], str]) – A string e.g.
"my_package.my_subpackage"
, or list of strings for the names of the modules to be externed. This can also be a glob-style pattern, as described inmock()
.exclude (Union[List[str], str]) – An optional pattern that excludes some patterns that match the include string.
- dependency_graph_string()[source]¶
Returns digraph string representation of dependencies in package.
- Returns:
A string representation of dependencies in package.
- Return type:
- extern(include, *, exclude=(), allow_empty=True)[source]¶
Include
module
in the list of external modules the package can import. This will prevent dependency discovery from saving it in the package. The importer will load an external module directly from the standard import system. Code for extern modules must also exist in the process loading the package.- Parameters:
include (Union[List[str], str]) – A string e.g.
"my_package.my_subpackage"
, or list of strings for the names of the modules to be externed. This can also be a glob-style pattern, as described inmock()
.exclude (Union[List[str], str]) – An optional pattern that excludes some patterns that match the include string.
allow_empty (bool) – An optional flag that specifies whether the extern modules specified by this call to the
extern
method must be matched to some module during packaging. If an extern module glob pattern is added withallow_empty=False
, andclose()
is called (either explicitly or via__exit__
) before any modules match that pattern, an exception is thrown. Ifallow_empty=True
, no such exception is thrown.
- get_rdeps(module_name)[source]¶
Return a list of all modules which depend on the module
module_name
.
- get_unique_id()[source]¶
Get an id. This id is guaranteed to only be handed out once for this package.
- Return type:
- intern(include, *, exclude=(), allow_empty=True)[source]¶
Specify modules that should be packaged. A module must match some
intern
pattern in order to be included in the package and have its dependencies processed recursively.- Parameters:
include (Union[List[str], str]) – A string e.g. “my_package.my_subpackage”, or list of strings for the names of the modules to be externed. This can also be a glob-style pattern, as described in
mock()
.exclude (Union[List[str], str]) – An optional pattern that excludes some patterns that match the include string.
allow_empty (bool) – An optional flag that specifies whether the intern modules specified by this call to the
intern
method must be matched to some module during packaging. If anintern
module glob pattern is added withallow_empty=False
, andclose()
is called (either explicitly or via__exit__
) before any modules match that pattern, an exception is thrown. Ifallow_empty=True
, no such exception is thrown.
- mock(include, *, exclude=(), allow_empty=True)[source]¶
Replace some required modules with a mock implementation. Mocked modules will return a fake object for any attribute accessed from it. Because we copy file-by-file, the dependency resolution will sometimes find files that are imported by model files but whose functionality is never used (e.g. custom serialization code or training helpers). Use this function to mock this functionality out without having to modify the original code.
- Parameters:
include (Union[List[str], str]) –
A string e.g.
"my_package.my_subpackage"
, or list of strings for the names of the modules to be mocked out. Strings can also be a glob-style pattern string that may match multiple modules. Any required dependencies that match this pattern string will be mocked out automatically.- Examples :
'torch.**'
– matchestorch
and all submodules of torch, e.g.'torch.nn'
and'torch.nn.functional'
'torch.*'
– matches'torch.nn'
or'torch.functional'
, but not'torch.nn.functional'
exclude (Union[List[str], str]) – An optional pattern that excludes some patterns that match the include string. e.g.
include='torch.**', exclude='torch.foo'
will mock all torch packages except'torch.foo'
, Default: is[]
.allow_empty (bool) – An optional flag that specifies whether the mock implementation(s) specified by this call to the
mock()
method must be matched to some module during packaging. If a mock is added withallow_empty=False
, andclose()
is called (either explicitly or via__exit__
) and the mock has not been matched to a module used by the package being exported, an exception is thrown. Ifallow_empty=True
, no such exception is thrown.
- register_extern_hook(hook)[source]¶
Registers an extern hook on the exporter.
The hook will be called each time a module matches against an
extern()
pattern. It should have the following signature:hook(exporter: PackageExporter, module_name: str) -> None
Hooks will be called in order of registration.
- Returns:
A handle that can be used to remove the added hook by calling
handle.remove()
.- Return type:
torch.utils.hooks.RemovableHandle
- register_intern_hook(hook)[source]¶
Registers an intern hook on the exporter.
The hook will be called each time a module matches against an
intern()
pattern. It should have the following signature:hook(exporter: PackageExporter, module_name: str) -> None
Hooks will be called in order of registration.
- Returns:
A handle that can be used to remove the added hook by calling
handle.remove()
.- Return type:
torch.utils.hooks.RemovableHandle
- register_mock_hook(hook)[source]¶
Registers a mock hook on the exporter.
The hook will be called each time a module matches against a
mock()
pattern. It should have the following signature:hook(exporter: PackageExporter, module_name: str) -> None
Hooks will be called in order of registration.
- Returns:
A handle that can be used to remove the added hook by calling
handle.remove()
.- Return type:
torch.utils.hooks.RemovableHandle
- save_module(module_name, dependencies=True)[source]¶
Save the code for
module
into the package. Code for the module is resolved using theimporters
path to find the module object, and then using its__file__
attribute to find the source code.
- save_pickle(package, resource, obj, dependencies=True, pickle_protocol=3)[source]¶
Save a python object to the archive using pickle. Equivalent to
torch.save()
but saving into the archive rather than a stand-alone file. Standard pickle does not save the code, only the objects. Ifdependencies
is true, this method will also scan the pickled objects for which modules are required to reconstruct them and save the relevant code.To be able to save an object where
type(obj).__name__
ismy_module.MyObject
,my_module.MyObject
must resolve to the class of the object according to theimporter
order. When saving objects that have previously been packaged, the importer’simport_module
method will need to be present in theimporter
list for this to work.- Parameters:
package (str) – The name of module package this resource should go in (e.g.
"my_package.my_subpackage"
).resource (str) – A unique name for the resource, used to identify it to load.
obj (Any) – The object to save, must be picklable.
dependencies (bool, optional) – If
True
, we scan the source for dependencies.
- save_source_file(module_name, file_or_directory, dependencies=True)[source]¶
Adds the local file system
file_or_directory
to the source package to provide the code formodule_name
.- Parameters:
module_name (str) – e.g.
"my_package.my_subpackage"
, code will be saved to provide code for this package.file_or_directory (str) – the path to a file or directory of code. When a directory, all python files in the directory are recursively copied using
save_source_file()
. If a file is named"/__init__.py"
the code is treated as a package.dependencies (bool, optional) – If
True
, we scan the source for dependencies.
- save_source_string(module_name, src, is_package=False, dependencies=True)[source]¶
Adds
src
as the source code formodule_name
in the exported package.- Parameters:
module_name (str) – e.g.
my_package.my_subpackage
, code will be saved to provide code for this package.src (str) – The Python source code to save for this package.
is_package (bool, optional) – If
True
, this module is treated as a package. Packages are allowed to have submodules (e.g.my_package.my_subpackage.my_subsubpackage
), and resources can be saved inside them. Defaults toFalse
.dependencies (bool, optional) – If
True
, we scan the source for dependencies.
- class torch.package.PackageImporter(file_or_buffer, module_allowed=<function PackageImporter.<lambda>>)[source]¶
Importers allow you to load code written to packages by
PackageExporter
. Code is loaded in a hermetic way, using files from the package rather than the normal python import system. This allows for the packaging of PyTorch model code and data so that it can be run on a server or used in the future for transfer learning.The importer for packages ensures that code in the module can only be loaded from within the package, except for modules explicitly listed as external during export. The file
extern_modules
in the zip archive lists all the modules that a package externally depends on. This prevents “implicit” dependencies where the package runs locally because it is importing a locally-installed package, but then fails when the package is copied to another machine.- __init__(file_or_buffer, module_allowed=<function PackageImporter.<lambda>>)[source]¶
Open
file_or_buffer
for importing. This checks that the imported package only requires modules allowed bymodule_allowed
- Parameters:
file_or_buffer (Union[str, PyTorchFileReader, Path, BinaryIO]) – a file-like object (has to implement
read()
,readline()
,tell()
, andseek()
), a string, or anos.PathLike
object containing a filename.module_allowed (Callable[[str], bool], optional) – A method to determine if a externally provided module should be allowed. Can be used to ensure packages loaded do not depend on modules that the server does not support. Defaults to allowing anything.
- Raises:
ImportError – If the package will use a disallowed module.
- file_structure(*, include='**', exclude=())[source]¶
Returns a file structure representation of package’s zipfile.
- Parameters:
include (Union[List[str], str]) – An optional string e.g.
"my_package.my_subpackage"
, or optional list of strings for the names of the files to be included in the zipfile representation. This can also be a glob-style pattern, as described inPackageExporter.mock()
exclude (Union[List[str], str]) – An optional pattern that excludes files whose name match the pattern.
- Returns:
- Return type:
- id()[source]¶
Returns internal identifier that torch.package uses to distinguish
PackageImporter
instances. Looks like:<torch_package_0>
- import_module(name, package=None)[source]¶
Load a module from the package if it hasn’t already been loaded, and then return the module. Modules are loaded locally to the importer and will appear in
self.modules
rather thansys.modules
.- Parameters:
- Returns:
The (possibly already) loaded module.
- Return type:
- load_pickle(package, resource, map_location=None)[source]¶
Unpickles the resource from the package, loading any modules that are needed to construct the objects using
import_module()
.
- load_text(package, resource, encoding='utf-8', errors='strict')[source]¶
Load a string.
- Parameters:
- Returns:
The loaded text.
- Return type:
- python_version()[source]¶
Returns the version of python that was used to create this package.
Note: this function is experimental and not Forward Compatible. The plan is to move this into a lock file later on.
- Returns:
Optional[str]
a python version e.g. 3.8.9 or None if no version was stored with this package
- class torch.package.Directory(name, is_dir)[source]¶
A file structure representation. Organized as Directory nodes that have lists of their Directory children. Directories for a package are created by calling
PackageImporter.file_structure()
.