Skip to main content

A flexible, generalized tree-based tensor structure.

Project description


PyPI PyPI - Python Version Loc Comments

Docs Deploy Code Test Badge Creation Package Release codecov

GitHub stars GitHub forks GitHub commit activity GitHub issues GitHub pulls Contributors GitHub license

treetensor is a generalized tree-based tensor structure mainly developed by OpenDILab Contributors.

Almost all the operation can be supported in form of trees in a convenient way to simplify the structure processing when the calculation is tree-based.

Installation

You can simply install it with pip command line from the official PyPI site.

pip install di-treetensor

For more information about installation, you can refer to Installation.

Documentation

The detailed documentation are hosted on https://opendilab.github.io/DI-treetensor.

Only english version is provided now, the chinese documentation is still under development.

Quick Start

You can easily create a tree value object based on FastTreeValue.

import builtins
import os
from functools import partial

import treetensor.torch as torch

print = partial(builtins.print, sep=os.linesep)

if __name__ == '__main__':
    # create a tree tensor
    t = torch.randn({'a': (2, 3), 'b': {'x': (3, 4)}})
    print(t)
    print(torch.randn(4, 5))  # create a normal tensor
    print()

    # structure of tree
    print('Structure of tree')
    print('t.a:', t.a)  # t.a is a native tensor
    print('t.b:', t.b)  # t.b is a tree tensor
    print('t.b.x', t.b.x)  # t.b.x is a native tensor
    print()

    # math calculations
    print('Math calculation')
    print('t ** 2:', t ** 2)
    print('torch.sin(t).cos()', torch.sin(t).cos())
    print()

    # backward calculation
    print('Backward calculation')
    t.requires_grad_(True)
    t.std().arctan().backward()
    print('grad of t:', t.grad)
    print()

    # native operation
    # all the ops can be used as the original usage of `torch`
    print('Native operation')
    print('torch.sin(t.a)', torch.sin(t.a))  # sin of native tensor

The result should be

<Tensor 0x7f0dae602760>
├── a --> tensor([[-1.2672, -1.5817, -0.3141],
│                 [ 1.8107, -0.1023,  0.0940]])
└── b --> <Tensor 0x7f0dae602820>
    └── x --> tensor([[ 1.2224, -0.3445, -0.9980, -0.4085],
                      [ 1.5956,  0.8825, -0.5702, -0.2247],
                      [ 0.9235,  0.4538,  0.8775, -0.2642]])

tensor([[-0.9559,  0.7684,  0.2682, -0.6419,  0.8637],
        [ 0.9526,  0.2927, -0.0591,  1.2804, -0.2455],
        [ 0.4699, -0.9998,  0.6324, -0.6885,  1.1488],
        [ 0.8920,  0.4401, -0.7785,  0.5931,  0.0435]])

Structure of tree
t.a:
tensor([[-1.2672, -1.5817, -0.3141],
        [ 1.8107, -0.1023,  0.0940]])
t.b:
<Tensor 0x7f0dae602820>
└── x --> tensor([[ 1.2224, -0.3445, -0.9980, -0.4085],
                  [ 1.5956,  0.8825, -0.5702, -0.2247],
                  [ 0.9235,  0.4538,  0.8775, -0.2642]])

t.b.x
tensor([[ 1.2224, -0.3445, -0.9980, -0.4085],
        [ 1.5956,  0.8825, -0.5702, -0.2247],
        [ 0.9235,  0.4538,  0.8775, -0.2642]])

Math calculation
t ** 2:
<Tensor 0x7f0dae602eb0>
├── a --> tensor([[1.6057, 2.5018, 0.0986],
│                 [3.2786, 0.0105, 0.0088]])
└── b --> <Tensor 0x7f0dae60c040>
    └── x --> tensor([[1.4943, 0.1187, 0.9960, 0.1669],
                      [2.5458, 0.7789, 0.3252, 0.0505],
                      [0.8528, 0.2059, 0.7699, 0.0698]])

torch.sin(t).cos()
<Tensor 0x7f0dae621910>
├── a --> tensor([[0.5782, 0.5404, 0.9527],
│                 [0.5642, 0.9948, 0.9956]])
└── b --> <Tensor 0x7f0dae6216a0>
    └── x --> tensor([[0.5898, 0.9435, 0.6672, 0.9221],
                      [0.5406, 0.7163, 0.8578, 0.9753],
                      [0.6983, 0.9054, 0.7185, 0.9661]])


Backward calculation
grad of t:
<Tensor 0x7f0dae60c400>
├── a --> tensor([[-0.0435, -0.0535, -0.0131],
│                 [ 0.0545, -0.0064, -0.0002]])
└── b --> <Tensor 0x7f0dae60cbe0>
    └── x --> tensor([[ 0.0357, -0.0141, -0.0349, -0.0162],
                      [ 0.0476,  0.0249, -0.0213, -0.0103],
                      [ 0.0262,  0.0113,  0.0248, -0.0116]])


Native operation
torch.sin(t.a)
tensor([[-0.9543, -0.9999, -0.3089],
        [ 0.9714, -0.1021,  0.0939]], grad_fn=<SinBackward>)

For more quick start explanation and further usage, take a look at:

Extension

If you need to translate treevalue object to runnable source code, you may use the potc-treevalue plugin with the installation command below

pip install DI-treetensor[potc]

In potc, you can translate the objects to runnable python source code, which can be loaded to objects afterwards by the python interpreter, like the following graph

potc_system

For more information, you can refer to

Contribution

We appreciate all contributions to improve DI-treetensor, both logic and system designs. Please refer to CONTRIBUTING.md for more guides.

And users can join our slack communication channel, or contact the core developer HansBug for more detailed discussion.

License

DI-treetensor released under the Apache 2.0 license.

Project details


Download files

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

Source Distribution

di_treetensor-0.5.0.tar.gz (39.4 kB view details)

Uploaded Source

Built Distribution

DI_treetensor-0.5.0-py3-none-any.whl (46.8 kB view details)

Uploaded Python 3

File details

Details for the file di_treetensor-0.5.0.tar.gz.

File metadata

  • Download URL: di_treetensor-0.5.0.tar.gz
  • Upload date:
  • Size: 39.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.9.20

File hashes

Hashes for di_treetensor-0.5.0.tar.gz
Algorithm Hash digest
SHA256 831be3a52c80823dfc6d853a96ef7a89719e07c6655eaa50fa754a41d5f75393
MD5 0f70cfc74232ef516a9720e856c29c39
BLAKE2b-256 1eae08a0f4d8413a582a36de3fd8b7f6b4b228415a86b78956ccae74363327d1

See more details on using hashes here.

File details

Details for the file DI_treetensor-0.5.0-py3-none-any.whl.

File metadata

File hashes

Hashes for DI_treetensor-0.5.0-py3-none-any.whl
Algorithm Hash digest
SHA256 74f00f52facf77059fd8dee28dad896c12b06585b9a0e52e7aaf22942a5c16d3
MD5 cde4138b40bf1402e8b5fb7d18d694aa
BLAKE2b-256 94e14be84a374536c6f361d8701346a43cb9da3f8bfc2be4e138e0c91e6b2a29

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