Skip to main content

No project description provided

Project description

Docs - GitHub.io Discord Shield Benchmarks Python version GitHub license pypi version pypi nightly version Downloads Downloads codecov circleci Conda - Platform Conda (channel only)

TensorDict

Installation | General features | Tensor-like features | Distributed capabilities | TensorDict for functional programming | **TensorDict for parameter serialization | Lazy preallocation | Nesting TensorDicts | TensorClass

TensorDict is a dictionary-like class that inherits properties from tensors, such as indexing, shape operations, casting to device or point-to-point communication in distributed settings. Whenever you need to execute an operation over a batch of tensors, TensorDict is there to help you.

The primary goal of TensorDict is to make your code-bases more readable, compact, and modular. It abstracts away tailored operations, making your code less error-prone as it takes care of dispatching the operation on the leaves for you.

Using tensordict primitives, most supervised training loops can be rewritten in a generic way:

for i, data in enumerate(dataset):
    # the model reads and writes tensordicts
    data = model(data)
    loss = loss_module(data)
    loss.backward()
    optimizer.step()
    optimizer.zero_grad()

With this level of abstraction, one can recycle a training loop for highly heterogeneous task. Each individual step of the training loop (data collection and transform, model prediction, loss computation etc.) can be tailored to the use case at hand without impacting the others. For instance, the above example can be easily used across classification and segmentation tasks, among many others.

Features

General principles

Unlike other pytrees, TensorDict carries metadata that make it easy to query the state of the container. The main metadata are the batch_size (also referred as shape), the device, the shared status (is_memmap or is_shared), the dimension names and the lock status.

A tensordict is primarily defined by its batch_size (or shape) and its key-value pairs:

>>> from tensordict import TensorDict
>>> import torch
>>> data = TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": torch.zeros(3, 4, 5, dtype=torch.bool),
... }, batch_size=[3, 4])

The batch_size and the first dimensions of each of the tensors must be compliant. The tensors can be of any dtype and device.

Optionally, one can restrict a tensordict to live on a dedicated device, which will send each tensor that is written there:

>>> data = TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": torch.zeros(3, 4, 5, dtype=torch.bool),
... }, batch_size=[3, 4], device="cuda:0")

When a tensordict has a device, all write operations will cast the tensor to the TensorDict device:

>>> data["key 3"] = torch.randn(3, 4, device="cpu")
>>> assert data["key 3"].device is torch.device("cuda:0")

Once the device is set, it can be cleared with the clear_device_ method.

TensorDict as a specialized dictionary

TensorDict possesses all the basic features of a dictionary such as clear, copy, fromkeys, get, items, keys, pop, popitem, setdefault, update and values.

But that is not all, you can also store nested values in a tensordict:

>>> data["nested", "key"] = torch.zeros(3, 4) # the batch-size must match

and any nested tuple structure will be unravelled to make it easy to read code and write ops programmatically:

>>> data["nested", ("supernested", ("key",))] = torch.zeros(3, 4) # the batch-size must match
>>> assert (data["nested", "supernested", "key"] == 0).all()
>>> assert (("nested",), "supernested", (("key",),)) in data.keys(include_nested=True)  # this works too!

You can also store non-tensor data in tensordicts:

>>> data = TensorDict({"a-tensor": torch.randn(1, 2)}, batch_size=[1, 2])
>>> data["non-tensor"] = "a string!"
>>> assert data["non-tensor"] == "a string!"

Tensor-like features

[Nightly feature] TensorDict supports many common point-wise arithmetic operations such as == or +, += and similar (provided that the underlying tensors support the said operation):

>>> td = TensorDict.fromkeys(["a", "b", "c"], 0)
>>> td += 1
>>> assert (td==1).all()

TensorDict objects can be indexed exactly like tensors. The resulting of indexing a TensorDict is another TensorDict containing tensors indexed along the required dimension:

>>> data = TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": torch.zeros(3, 4, 5, dtype=torch.bool),
... }, batch_size=[3, 4])
>>> sub_tensordict = data[..., :2]
>>> assert sub_tensordict.shape == torch.Size([3, 2])
>>> assert sub_tensordict["key 1"].shape == torch.Size([3, 2, 5])

Similarly, one can build tensordicts by stacking or concatenating single tensordicts:

>>> tensordicts = [TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": torch.zeros(3, 4, 5, dtype=torch.bool),
... }, batch_size=[3, 4]) for _ in range(2)]
>>> stack_tensordict = torch.stack(tensordicts, 1)
>>> assert stack_tensordict.shape == torch.Size([3, 2, 4])
>>> assert stack_tensordict["key 1"].shape == torch.Size([3, 2, 4, 5])
>>> cat_tensordict = torch.cat(tensordicts, 0)
>>> assert cat_tensordict.shape == torch.Size([6, 4])
>>> assert cat_tensordict["key 1"].shape == torch.Size([6, 4, 5])

TensorDict instances can also be reshaped, viewed, squeezed and unsqueezed:

>>> data = TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": torch.zeros(3, 4, 5, dtype=torch.bool),
... }, batch_size=[3, 4])
>>> print(data.view(-1))
torch.Size([12])
>>> print(data.reshape(-1))
torch.Size([12])
>>> print(data.unsqueeze(-1))
torch.Size([3, 4, 1])

One can also send tensordict from device to device, place them in shared memory, clone them, update them in-place or not, split them, unbind them, expand them etc.

If a functionality is missing, it is easy to call it using apply() or apply_():

tensordict_uniform = data.apply(lambda tensor: tensor.uniform_())

apply() can also be great to filter a tensordict, for instance:

data = TensorDict({"a": torch.tensor(1.0, dtype=torch.float), "b": torch.tensor(1, dtype=torch.int64)}, [])
data_float = data.apply(lambda x: x if x.dtype == torch.float else None) # contains only the "a" key
assert "b" not in data_float

Distributed capabilities

Complex data structures can be cumbersome to synchronize in distributed settings. tensordict solves that problem with synchronous and asynchronous helper methods such as recv, irecv, send and isend that behave like their torch.distributed counterparts:

>>> # on all workers
>>> data = TensorDict({"a": torch.zeros(()), ("b", "c"): torch.ones(())}, [])
>>> # on worker 1
>>> data.isend(dst=0)
>>> # on worker 0
>>> data.irecv(src=1)

When nodes share a common scratch space, the MemmapTensor backend can be used to seamlessly send, receive and read a huge amount of data.

TensorDict for functional programming

We also provide an API to use TensorDict in conjunction with FuncTorch. For instance, TensorDict makes it easy to concatenate model weights to do model ensembling:

>>> from torch import nn
>>> from tensordict import TensorDict
>>> import torch
>>> from torch import vmap
>>> layer1 = nn.Linear(3, 4)
>>> layer2 = nn.Linear(4, 4)
>>> model = nn.Sequential(layer1, layer2)
>>> params = TensorDict.from_module(model)
>>> # we represent the weights hierarchically
>>> weights1 = TensorDict(layer1.state_dict(), []).unflatten_keys(".")
>>> weights2 = TensorDict(layer2.state_dict(), []).unflatten_keys(".")
>>> assert (params == TensorDict({"0": weights1, "1": weights2}, [])).all()
>>> # Let's use our functional module
>>> x = torch.randn(10, 3)
>>> with params.to_module(model):
...     out = model(x)
>>> # an ensemble of models: we stack params along the first dimension...
>>> params_stack = torch.stack([params, params], 0)
>>> # ... and use it as an input we'd like to pass through the model
>>> def func(x, params):
...     with params.to_module(model):
...         return model(x)
>>> y = vmap(func, (None, 0))(x, params_stack)
>>> print(y.shape)
torch.Size([2, 10, 4])

Moreover, tensordict modules are compatible with torch.fx and (soon) torch.compile, which means that you can get the best of both worlds: a codebase that is both readable and future-proof as well as efficient and portable!

TensorDict for parameter serialization and building datasets

TensorDict offers an API for parameter serialization that can be >3x faster than regular calls to torch.save(state_dict). Moreover, because tensors will be saved independently on disk, you can deserialize your checkpoint on an arbitrary slice of the model.

>>> model = nn.Sequential(nn.Linear(3, 4), nn.Linear(4, 3))
>>> params = TensorDict.from_module(model)
>>> params.memmap("/path/to/saved/folder/", num_threads=16)  # adjust num_threads for speed
>>> # load params
>>> params = TensorDict.load_memmap("/path/to/saved/folder/", num_threads=16)
>>> params.to_module(model)  # load onto model
>>> params["0"].to_module(model[0])  # load on a slice of the model
>>> # in the latter case we could also have loaded only the slice we needed
>>> params0 = TensorDict.load_memmap("/path/to/saved/folder/0", num_threads=16)
>>> params0.to_module(model[0])  # load on a slice of the model

The same functionality can be used to access data in a dataset stored on disk. Soring a single contiguous tensor on disk accessed through the tensordict.MemoryMappedTensor primitive and reading slices of it is not only much faster than loading single files one at a time but it's also easier and safer (because there is no pickling or third-party library involved):

# allocate memory of the dataset on disk
data = TensorDict({
    "images": torch.zeros((128, 128, 3), dtype=torch.uint8),
    "labels": torch.zeros((), dtype=torch.int)}, batch_size=[])
data = data.expand(1000000)
data = data.memmap_like("/path/to/dataset")
# ==> Fill your dataset here
# Let's get 3 items of our dataset:
data[torch.tensor([1, 10000, 500000])]  # This is much faster than loading the 3 images independently

Preprocessing with TensorDict.map

Preprocessing huge contiguous (or not!) datasets can be done via TensorDict.map which will dispatch a task to various workers:

import torch
from tensordict import TensorDict, MemoryMappedTensor
import tempfile

def process_data(data):
    images = data.get("images").flip(-2).clone()
    labels = data.get("labels") // 10
    # we update the td inplace
    data.set_("images", images)  # flip image
    data.set_("labels", labels)  # cluster labels

if __name__ == "__main__":
    # create data_preproc here
    data_preproc = data.map(process_data, num_workers=4, chunksize=0, pbar=True)  # process 1 images at a time

Lazy preallocation

Pre-allocating tensors can be cumbersome and hard to scale if the list of preallocated items varies according to the script configuration. TensorDict solves this in an elegant way. Assume you are working with a function foo() -> TensorDict, e.g.

def foo():
    data = TensorDict({}, batch_size=[])
    data["a"] = torch.randn(3)
    data["b"] = TensorDict({"c": torch.zeros(2)}, batch_size=[])
    return data

and you would like to call this function repeatedly. You could do this in two ways. The first would simply be to stack the calls to the function:

data = torch.stack([foo() for _ in range(N)])

However, you could also choose to preallocate the tensordict:

data = TensorDict({}, batch_size=[N])
for i in range(N):
    data[i] = foo()

which also results in a tensordict (when N = 10)

TensorDict(
    fields={
        a: Tensor(torch.Size([10, 3]), dtype=torch.float32),
        b: TensorDict(
            fields={
                c: Tensor(torch.Size([10, 2]), dtype=torch.float32)},
            batch_size=torch.Size([10]),
            device=None,
            is_shared=False)},
    batch_size=torch.Size([10]),
    device=None,
    is_shared=False)

When i==0, your empty tensordict will automatically be populated with empty tensors of batch-size N. After that, updates will be written in-place. Note that this would also work with a shuffled series of indices (pre-allocation does not require you to go through the tensordict in an ordered fashion).

Nesting TensorDicts

It is possible to nest tensordict. The only requirement is that the sub-tensordict should be indexable under the parent tensordict, i.e. its batch size should match (but could be longer than) the parent batch size.

We can switch easily between hierarchical and flat representations. For instance, the following code will result in a single-level tensordict with keys "key 1" and "key 2.sub-key":

>>> data = TensorDict({
...     "key 1": torch.ones(3, 4, 5),
...     "key 2": TensorDict({"sub-key": torch.randn(3, 4, 5, 6)}, batch_size=[3, 4, 5])
... }, batch_size=[3, 4])
>>> tensordict_flatten = data.flatten_keys(separator=".")

Accessing nested tensordicts can be achieved with a single index:

>>> sub_value = data["key 2", "sub-key"]

TensorClass

Content flexibility comes at the cost of predictability. In some cases, developers may be looking for data structure with a more explicit behavior. tensordict provides a dataclass-like decorator that allows for the creation of custom dataclasses that support the tensordict operations:

>>> from tensordict.prototype import tensorclass
>>> import torch
>>>
>>> @tensorclass
... class MyData:
...    image: torch.Tensor
...    mask: torch.Tensor
...    label: torch.Tensor
...
...    def mask_image(self):
...        return self.image[self.mask.expand_as(self.image)].view(*self.batch_size, -1)
...
...    def select_label(self, label):
...        return self[self.label == label]
...
>>> images = torch.randn(100, 3, 64, 64)
>>> label = torch.randint(10, (100,))
>>> mask = torch.zeros(1, 64, 64, dtype=torch.bool).bernoulli_().expand(100, 1, 64, 64)
>>>
>>> data = MyData(images, mask, label=label, batch_size=[100])
>>>
>>> print(data.select_label(1))
MyData(
    image=Tensor(torch.Size([11, 3, 64, 64]), dtype=torch.float32),
    label=Tensor(torch.Size([11]), dtype=torch.int64),
    mask=Tensor(torch.Size([11, 1, 64, 64]), dtype=torch.bool),
    batch_size=torch.Size([11]),
    device=None,
    is_shared=False)
>>> print(data.mask_image().shape)
torch.Size([100, 6117])
>>> print(data.reshape(10, 10))
MyData(
    image=Tensor(torch.Size([10, 10, 3, 64, 64]), dtype=torch.float32),
    label=Tensor(torch.Size([10, 10]), dtype=torch.int64),
    mask=Tensor(torch.Size([10, 10, 1, 64, 64]), dtype=torch.bool),
    batch_size=torch.Size([10, 10]),
    device=None,
    is_shared=False)

As this example shows, one can write a specific data structures with dedicated methods while still enjoying the TensorDict artifacts such as shape operations (e.g. reshape or permutations), data manipulation (indexing, cat and stack) or calling arbitrary functions through the apply method (and many more).

Tensorclasses support nesting and, in fact, all the TensorDict features.

Installation

With Pip:

To install the latest stable version of tensordict, simply run

pip install tensordict

This will work with Python 3.7 and upward as well as PyTorch 1.12 and upward.

To enjoy the latest features, one can use

pip install tensordict-nightly

With Conda:

Install tensordict from conda-forge channel.

conda install -c conda-forge tensordict

Citation

If you're using TensorDict, please refer to this BibTeX entry to cite this work:

@misc{bou2023torchrl,
      title={TorchRL: A data-driven decision-making library for PyTorch},
      author={Albert Bou and Matteo Bettini and Sebastian Dittert and Vikash Kumar and Shagun Sodhani and Xiaomeng Yang and Gianni De Fabritiis and Vincent Moens},
      year={2023},
      eprint={2306.00577},
      archivePrefix={arXiv},
      primaryClass={cs.LG}
}

Disclaimer

TensorDict is at the beta-stage, meaning that there may be bc-breaking changes introduced, but they should come with a warranty. Hopefully these should not happen too often, as the current roadmap mostly involves adding new features and building compatibility with the broader PyTorch ecosystem.

License

TensorDict is licensed under the MIT License. See LICENSE for details.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

tensordict_nightly-2024.8.2-cp312-cp312-win_amd64.whl (332.1 kB view details)

Uploaded CPython 3.12 Windows x86-64

tensordict_nightly-2024.8.2-cp311-cp311-win_amd64.whl (331.9 kB view details)

Uploaded CPython 3.11 Windows x86-64

tensordict_nightly-2024.8.2-cp310-cp310-win_amd64.whl (331.2 kB view details)

Uploaded CPython 3.10 Windows x86-64

tensordict_nightly-2024.8.2-cp39-cp39-win_amd64.whl (331.0 kB view details)

Uploaded CPython 3.9 Windows x86-64

tensordict_nightly-2024.8.2-cp38-cp38-win_amd64.whl (331.3 kB view details)

Uploaded CPython 3.8 Windows x86-64

File details

Details for the file tensordict_nightly-2024.8.2-cp312-cp312-win_amd64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp312-cp312-win_amd64.whl
Algorithm Hash digest
SHA256 520415ba2c9bf37244f3bdbeaac97f6e5c32cad97ae15013fa69821e0081231b
MD5 dae7125c7bcb435f39c87b3ce010612e
BLAKE2b-256 93145f93ee8cf36dafbe2467bc7ad4afd63fb81b0b514e900dd0c562df283c9d

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp312-cp312-manylinux1_x86_64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp312-cp312-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 d2bf677267904b56c0e46821696771eceb31ad81f4a6227fbe4a6bfb6e0cfc9e
MD5 8cae146836956ff2815d7c32d8310c2e
BLAKE2b-256 ab6b0c3612923714eb93a2dd4b91fc03bb0ba8927de3a0a45baea47353e23646

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp311-cp311-win_amd64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp311-cp311-win_amd64.whl
Algorithm Hash digest
SHA256 1cd9b722f4a099f8ff3a14b97fd49f220726ff9b280f6b3ad5ca0fa4f3d4a028
MD5 57356ae96d4bca590fc2000acb5a9ecf
BLAKE2b-256 de2c35e1c68dac8f062d9c5dd6ce10432439bed40b7b55b90b61e234322b2352

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp311-cp311-manylinux1_x86_64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp311-cp311-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 793bceeb71cd0f42cfdd928e6e7e5b2900a9bf2650e868173c73b50aee4b4e3a
MD5 6be1f192f23c301a965251ada87081eb
BLAKE2b-256 e8476278948dd3e1a446d9fbff93d963a0166374b704d3e71e3348c10842e29b

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp310-cp310-win_amd64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp310-cp310-win_amd64.whl
Algorithm Hash digest
SHA256 74b092f592c3f1f417d4efba54754b26b209592261262ee6c2353c47e4a97982
MD5 b089290768d2cc21b4504306439a9cea
BLAKE2b-256 e1cf7a110f76c78f5ffeccfc082a60e77c561ff08d7b184327a2e69e4f1bc43f

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp310-cp310-manylinux1_x86_64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp310-cp310-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 8dbfa6eed9e1d414a4578188a081136d3a22b4109248c598ccfbd17b6ab67bbf
MD5 42df42d70d3f462a83c968ef5f90febe
BLAKE2b-256 7ed101dd924551b8561facdae84fa8eee65a0ef818bccf3f5012506c39071bdd

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp39-cp39-win_amd64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp39-cp39-win_amd64.whl
Algorithm Hash digest
SHA256 fd2aebf769477e028f1bf3a4d828668c2d3523d7da6124c18bd428a39362d075
MD5 f6debbf1f33a67af7eaaebc196eede76
BLAKE2b-256 0c871e02039c670d1929c8aaed5388a926eaa72bcbd06ad24710dd5eed41a7ca

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp39-cp39-manylinux1_x86_64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp39-cp39-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 ee4f1a1019fd8e822b4116e9c9e383b3784f5339c8ae4890df0ed3a62dd360b8
MD5 f86a07bbf6206f39e78a6a776f01ac44
BLAKE2b-256 bd7a8a4bdf31659d7a03c7d97fe3061f0538027769a285a0c2b5a622c172e5bd

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp38-cp38-win_amd64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp38-cp38-win_amd64.whl
Algorithm Hash digest
SHA256 c658227c14edeae596ee4d8d6a92ba4bd0510c943ec5afc14ed4b86910c8cf59
MD5 a95ace1fd9f00d7c8b09166f3896d2e3
BLAKE2b-256 7971858ddbe530016a6a1c1a62fbdaa06ee737339fe8269e1f723fd0f9916632

See more details on using hashes here.

File details

Details for the file tensordict_nightly-2024.8.2-cp38-cp38-manylinux1_x86_64.whl.

File metadata

File hashes

Hashes for tensordict_nightly-2024.8.2-cp38-cp38-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 ba6f0c6776c4d219791630095e44f2fa5d26be708a9a8cf7df2d659aaa3e102a
MD5 cc1ac2742b9705b748e4b86d4f7b8f21
BLAKE2b-256 c80577d2149b6e55ba4e64fb850c784ed3f1f66e894049cdba265fa789bbb02a

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page