Skip to main content

Practical Machine Learning for NLP

Project description

Thinc: Practical Machine Learning for NLP in Python

Thinc is the machine learning library powering spaCy. It features a battle-tested linear model designed for large sparse learning problems, and a flexible neural network model under development for spaCy v2.0.

Thinc is a practical toolkit for implementing models that follow the "Embed, encode, attend, predict" architecture. It's designed to be easy to install, efficient for CPU usage and optimised for NLP and deep learning with text – in particular, hierarchically structured input and variable-length sequences.

🔮 Read the release notes here.

Azure Pipelines Current Release Version PyPi Version conda Version Python wheels Follow us on Twitter

What's where (as of v7.0.0)

Module Description
thinc.v2v.Model Base class.
thinc.v2v Layers transforming vectors to vectors.
thinc.i2v Layers embedding IDs to vectors.
thinc.t2v Layers pooling tensors to vectors.
thinc.t2t Layers transforming tensors to tensors (e.g. CNN, LSTM).
thinc.api Higher-order functions, for building networks. Will be renamed.
thinc.extra Datasets and utilities.
thinc.neural.ops Container classes for mathematical operations. Will be reorganized.
thinc.linear.avgtron Legacy efficient Averaged Perceptron implementation.

Development status

Thinc's deep learning functionality is still under active development: APIs are unstable, and we're not yet ready to provide usage support. However, if you're already quite familiar with neural networks, there's a lot here you might find interesting. Thinc's conceptual model is quite different from TensorFlow's. Thinc also implements some novel features, such as a small DSL for concisely wiring up models, embedding tables that support pre-computation and the hashing trick, dynamic batch sizes, a concatenation-based approach to variable-length sequences, and support for model averaging for the Adam solver (which performs very well).

No computational graph – just higher order functions

The central problem for a neural network implementation is this: during the forward pass, you compute results that will later be useful during the backward pass. How do you keep track of this arbitrary state, while making sure that layers can be cleanly composed?

Most libraries solve this problem by having you declare the forward computations, which are then compiled into a graph somewhere behind the scenes. Thinc doesn't have a "computational graph". Instead, we just use the stack, because we put the state from the forward pass into callbacks.

All nodes in the network have a simple signature:

f(inputs) -> {outputs, f(d_outputs)->d_inputs}

To make this less abstract, here's a ReLu activation, following this signature:

def relu(inputs):
    mask = inputs > 0
    def backprop_relu(d_outputs, optimizer):
        return d_outputs * mask
    return inputs * mask, backprop_relu

When you call the relu function, you get back an output variable, and a callback. This lets you calculate a gradient using the output, and then pass it into the callback to perform the backward pass.

This signature makes it easy to build a complex network out of smaller pieces, using arbitrary higher-order functions you can write yourself. To make this clearer, we need a function for a weights layer. Usually this will be implemented as a class — but let's continue using closures, to keep things concise, and to keep the simplicity of the interface explicit.

The main complication for the weights layer is that we now have a side-effect to manage: we would like to update the weights. There are a few ways to handle this. In Thinc we currently pass a callable into the backward pass. (I'm not convinced this is best.)

import numpy

def create_linear_layer(n_out, n_in):
    W = numpy.zeros((n_out, n_in))
    b = numpy.zeros((n_out, 1))

    def forward(X):
        Y = W @ X + b
        def backward(dY, optimizer):
            dX = W.T @ dY
            dW = numpy.einsum('ik,jk->ij', dY, X)
            db = dY.sum(axis=0)

            optimizer(W, dW)
            optimizer(b, db)

            return dX
        return Y, backward
    return forward

If we call Wb = create_linear_layer(5, 4), the variable Wb will be the forward() function, implemented inside the body of create_linear_layer(). The Wb instance will have access to the W and b variable defined in its outer scope. If we invoke create_linear_layer() again, we get a new instance, with its own internal state.

The Wb instance and the relu function have exactly the same signature. This makes it easy to write higher order functions to compose them. The most obvious thing to do is chain them together:

def chain(*layers):
    def forward(X):
        backprops = []
        Y = X
        for layer in layers:
            Y, backprop = layer(Y)
            backprops.append(backprop)
        def backward(dY, optimizer):
            for backprop in reversed(backprops):
                dY = backprop(dY, optimizer)
            return dY
        return Y, backward
    return forward

We could now chain our linear layer together with the relu activation, to create a simple feed-forward network:

Wb1 = create_linear_layer(10, 5)
Wb2 = create_linear_layer(3, 10)

model = chain(Wb1, relu, Wb2)

X = numpy.random.uniform(size=(5, 4))

y, bp_y = model(X)

dY = y - truth
dX = bp_y(dY, optimizer)

This conceptual model makes Thinc very flexible. The trade-off is that Thinc is less convenient and efficient at workloads that fit exactly into what TensorFlow etc. are designed for. If your graph really is static, and your inputs are homogenous in size and shape, Keras will likely be faster and simpler. But if you want to pass normal Python objects through your network, or handle sequences and recursions of arbitrary length or complexity, you might find Thinc's design a better fit for your problem.

Quickstart

Thinc should install cleanly with both pip and conda, for Pythons 2.7+ and 3.5+, on Linux, macOS / OSX and Windows. Its only system dependency is a compiler tool-chain (e.g. build-essential) and the Python development headers (e.g. python-dev).

pip install thinc

For GPU support, we're grateful to use the work of Chainer's cupy module, which provides a numpy-compatible interface for GPU arrays. However, installing Chainer when no GPU is available currently causes an error. We therefore do not list Chainer as an explicit dependency — so building Thinc for GPU requires some extra steps:

export CUDA_HOME=/usr/local/cuda-8.0 # Or wherever your CUDA is
export PATH=$PATH:$CUDA_HOME/bin
pip install chainer
python -c "import cupy; assert cupy" # Check it installed
pip install thinc_gpu_ops thinc # Or `thinc[cuda]`
python -c "import thinc_gpu_ops" # Check the GPU ops were built

The rest of this section describes how to build Thinc from source. If you have Fabric installed, you can use the shortcut:

git clone https://github.com/explosion/thinc
cd thinc
fab clean env make test

You can then run the examples as follows:

fab eg.mnist
fab eg.basic_tagger
fab eg.cnn_tagger

Otherwise, you can build and test explicitly with:

git clone https://github.com/explosion/thinc
cd thinc

virtualenv .env
source .env/bin/activate

pip install -r requirements.txt
python setup.py build_ext --inplace
py.test thinc/

And then run the examples as follows:

python examples/mnist.py
python examples/basic_tagger.py
python examples/cnn_tagger.py

Usage

The Neural Network API is still subject to change, even within minor versions. You can get a feel for the current API by checking out the examples. Here are a few quick highlights.

1. Shape inference

Models can be created with some dimensions unspecified. Missing dimensions are inferred when pre-trained weights are loaded or when training begins. This eliminates a common source of programmer error:

# Invalid network — shape mismatch
model = chain(ReLu(512, 748), ReLu(512, 784), Softmax(10))

# Leave the dimensions unspecified, and you can't be wrong.
model = chain(ReLu(512), ReLu(512), Softmax())

2. Operator overloading

The Model.define_operators() classmethod allows you to bind arbitrary binary functions to Python operators, for use in any Model instance. The method can (and should) be used as a context-manager, so that the overloading is limited to the immediate block. This allows concise and expressive model definition:

with Model.define_operators({'>>': chain}):
    model = ReLu(512) >> ReLu(512) >> Softmax()

The overloading is cleaned up at the end of the block. A fairly arbitrary zoo of functions are currently implemented. Some of the most useful:

  • chain(model1, model2): Compose two models f(x) and g(x) into a single model computing g(f(x)).
  • clone(model1, int): Create n copies of a model, each with distinct weights, and chain them together.
  • concatenate(model1, model2): Given two models with output dimensions (n,) and (m,), construct a model with output dimensions (m+n,).
  • add(model1, model2): add(f(x), g(x)) = f(x)+g(x)
  • make_tuple(model1, model2): Construct tuples of the outputs of two models, at the batch level. The backward pass expects to receive a tuple of gradients, which are routed through the appropriate model, and summed.

Putting these things together, here's the sort of tagging model that Thinc is designed to make easy.

with Model.define_operators({'>>': chain, '**': clone, '|': concatenate}):
    model = (
        add_eol_markers('EOL')
        >> flatten
        >> memoize(
            CharLSTM(char_width)
            | (normalize >> str2int >> Embed(word_width)))
        >> ExtractWindow(nW=2)
        >> BatchNorm(ReLu(hidden_width)) ** 3
        >> Softmax()
    )

Not all of these pieces are implemented yet, but hopefully this shows where we're going. The memoize function will be particularly important: in any batch of text, the common words will be very common. It's therefore important to evaluate models such as the CharLSTM once per word type per minibatch, rather than once per token.

3. Callback-based backpropagation

Most neural network libraries use a computational graph abstraction. This takes the execution away from you, so that gradients can be computed automatically. Thinc follows a style more like the autograd library, but with larger operations. Usage is as follows:

def explicit_sgd_update(X, y):
    sgd = lambda weights, gradient: weights - gradient * 0.001
    yh, finish_update = model.begin_update(X, drop=0.2)
    finish_update(y-yh, sgd)

Separating the backpropagation into three parts like this has many advantages. The interface to all models is completely uniform — there is no distinction between the top-level model you use as a predictor and the internal models for the layers. We also make concurrency simple, by making the begin_update() step a pure function, and separating the accumulation of the gradient from the action of the optimizer.

4. Class annotations

To keep the class hierarchy shallow, Thinc uses class decorators to reuse code for layer definitions. Specifically, the following decorators are available:

  • describe.attributes(): Allows attributes to be specified by keyword argument. Used especially for dimensions and parameters.
  • describe.on_init(): Allows callbacks to be specified, which will be called at the end of the __init__.py.
  • describe.on_data(): Allows callbacks to be specified, which will be called on Model.begin_training().

🛠 Changelog

Version Date Description
v7.1.1 2019-09-10 Support preshed v3.0.0
v7.1.0 2019-08-23 Support other CPUs, read-only arrays
v7.0.8 2019-07-11 Fix version for PyPi
v7.0.7 2019-07-11 Avoid allocating a negative shape for ngrams
v7.0.6 2019-07-11 Fix LinearModel regression
v7.0.5 2019-07-10 Bug fixes for pickle, threading, unflatten and consistency
v7.0.4 2019-03-19 Don't require thinc_gpu_ops
v7.0.3 2019-03-15 Fix pruning in beam search
v7.0.2 2019-02-23 Fix regression in linear model class
v7.0.1 2019-02-16 Fix import errors
v7.0.0 2019-02-15 Overhaul package dependencies
v6.12.1 2018-11-30 Fix msgpack pin
v6.12.0 2018-10-15 Wheels and separate GPU ops
v6.10.3 2018-07-21 Python 3.7 support and dependency updates
v6.11.2 2018-05-21 Improve GPU installation
v6.11.1 2018-05-20 Support direct linkage to BLAS libraries
v6.11.0 2018-03-16 n/a
v6.10.2 2017-12-06 Efficiency improvements and bug fixes
v6.10.1 2017-11-15 Fix GPU install and minor memory leak
v6.10.0 2017-10-28 CPU efficiency improvements, refactoring
v6.9.0 2017-10-03 Reorganize layers, bug fix to Layer Normalization
v6.8.2 2017-09-26 Fix packaging of gpu_ops
v6.8.1 2017-08-23 Fix Windows support
v6.8.0 2017-07-25 SELU layer, attention, improved GPU/CPU compatibility
v6.7.3 2017-06-05 Fix convolution on GPU
v6.7.2 2017-06-02 Bug fixes to serialization
v6.7.1 2017-06-02 Improve serialization
v6.7.0 2017-06-01 Fixes to serialization, hash embeddings and flatten ops
v6.6.0 2017-05-14 Improved GPU usage and examples
v6.5.2 2017-03-20 n/a
v6.5.1 2017-03-20 Improved linear class and Windows fix
v6.5.0 2017-03-11 Supervised similarity, fancier embedding and improvements to linear model
v6.4.0 2017-02-15 n/a
v6.3.0 2017-01-25 Efficiency improvements, argument checking and error messaging
v6.2.0 2017-01-15 Improve API and introduce overloaded operators
v6.1.3 2017-01-10 More neural network functions and training continuation
v6.1.2 2017-01-09 n/a
v6.1.1 2017-01-09 n/a
v6.1.0 2017-01-09 n/a
v6.0.0 2016-12-31 Add thinc.neural for NLP-oriented deep learning

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 Distribution

thinc-7.2.0.dev3.tar.gz (1.9 MB view details)

Uploaded Source

Built Distributions

thinc-7.2.0.dev3-cp37-cp37m-win_amd64.whl (2.0 MB view details)

Uploaded CPython 3.7m Windows x86-64

thinc-7.2.0.dev3-cp37-cp37m-manylinux1_x86_64.whl (2.1 MB view details)

Uploaded CPython 3.7m

thinc-7.2.0.dev3-cp36-cp36m-win_amd64.whl (2.0 MB view details)

Uploaded CPython 3.6m Windows x86-64

thinc-7.2.0.dev3-cp36-cp36m-manylinux1_x86_64.whl (2.1 MB view details)

Uploaded CPython 3.6m

thinc-7.2.0.dev3-cp36-cp36m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl (2.9 MB view details)

Uploaded CPython 3.6m macOS 10.10+ intel macOS 10.10+ x86-64 macOS 10.6+ intel macOS 10.9+ intel macOS 10.9+ x86-64

thinc-7.2.0.dev3-cp35-cp35m-win_amd64.whl (1.9 MB view details)

Uploaded CPython 3.5m Windows x86-64

thinc-7.2.0.dev3-cp35-cp35m-manylinux1_x86_64.whl (2.1 MB view details)

Uploaded CPython 3.5m

thinc-7.2.0.dev3-cp27-cp27mu-manylinux1_x86_64.whl (2.1 MB view details)

Uploaded CPython 2.7mu

thinc-7.2.0.dev3-cp27-cp27m-manylinux1_x86_64.whl (2.1 MB view details)

Uploaded CPython 2.7m

thinc-7.2.0.dev3-cp27-cp27m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl (2.9 MB view details)

Uploaded CPython 2.7m macOS 10.10+ intel macOS 10.10+ x86-64 macOS 10.6+ intel macOS 10.9+ intel macOS 10.9+ x86-64

File details

Details for the file thinc-7.2.0.dev3.tar.gz.

File metadata

  • Download URL: thinc-7.2.0.dev3.tar.gz
  • Upload date:
  • Size: 1.9 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3.tar.gz
Algorithm Hash digest
SHA256 5fe1590b8477e7f9ada139d3ce28742f8bf550d7498632b803cf146cf0068e07
MD5 5c09a20177d3653c095bf5f8bf7fb470
BLAKE2b-256 a495052fb3b2334ebab218cb5fabc6017b597b9d3adb11e5774d9c7a12edc9d9

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp37-cp37m-win_amd64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp37-cp37m-win_amd64.whl
  • Upload date:
  • Size: 2.0 MB
  • Tags: CPython 3.7m, Windows x86-64
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp37-cp37m-win_amd64.whl
Algorithm Hash digest
SHA256 9490d9925b747531268a4c0f87b717fea1740d6d317124f7e80c855c3c92c36e
MD5 d96584a1630f78b2ea6940b4f0afb941
BLAKE2b-256 b23d2980a82912f88b1ebe08499d127c892cb55dfb3ac0bea4f7b18819c2e175

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp37-cp37m-manylinux1_x86_64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp37-cp37m-manylinux1_x86_64.whl
  • Upload date:
  • Size: 2.1 MB
  • Tags: CPython 3.7m
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp37-cp37m-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 ad5623b9b738557b638f35c584accb7f42d3d947e678b2b70723e3ba443bf704
MD5 9dd403aa62e4b070e9af24cc1eadda05
BLAKE2b-256 3f19dc2e39e77a82fd644f871f7e3fa976223ca727e09a7e869757d329ec2aa2

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp36-cp36m-win_amd64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp36-cp36m-win_amd64.whl
  • Upload date:
  • Size: 2.0 MB
  • Tags: CPython 3.6m, Windows x86-64
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp36-cp36m-win_amd64.whl
Algorithm Hash digest
SHA256 2bc8366f6c3ea16d55a69478cbf79e58c82ece4b3ac87caff81c2b4e76b2250e
MD5 e7ff72049a6a55f9469755c5514ec066
BLAKE2b-256 083e7f045af29e2e2993d00d8657f3304df6126714f176d3ffef3ca12dd1a7df

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp36-cp36m-manylinux1_x86_64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp36-cp36m-manylinux1_x86_64.whl
  • Upload date:
  • Size: 2.1 MB
  • Tags: CPython 3.6m
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp36-cp36m-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 308af1092fdd3e43160007c51b8daf622082df51a71b97b92ee5044d86167720
MD5 3eb83577cdf7cb2ec5cdda51dd572e5a
BLAKE2b-256 793f937122920af1e4759fac6b8c1dfbbeaab1e0c617d37eb588b739c1b30eb7

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp36-cp36m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl.

File metadata

File hashes

Hashes for thinc-7.2.0.dev3-cp36-cp36m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl
Algorithm Hash digest
SHA256 9e54c35b108c72e4080f197b6c740141d40cb232c12e3aacfd0e99ab1820a4c5
MD5 6a4669e02f12e680ea238650ab756e01
BLAKE2b-256 0b4b54b080cd79664f36e704d11c3c23459dcf3841329431c9e69acb27084ba2

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp35-cp35m-win_amd64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp35-cp35m-win_amd64.whl
  • Upload date:
  • Size: 1.9 MB
  • Tags: CPython 3.5m, Windows x86-64
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp35-cp35m-win_amd64.whl
Algorithm Hash digest
SHA256 66cc9212319ee4dcb29a9c252b071f2e151b63f477b6121b22e922dade81b7f9
MD5 53f3a99f317f4ac8c762a2b482353f18
BLAKE2b-256 8720b663f514abb1c5003aa6c646c8c2c571af9e3d34eb8fdcd50de6a4d3fac5

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp35-cp35m-manylinux1_x86_64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp35-cp35m-manylinux1_x86_64.whl
  • Upload date:
  • Size: 2.1 MB
  • Tags: CPython 3.5m
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp35-cp35m-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 da741252a331911acf3e8fd4af449ec4978e74b234dcadbe44080d4407941d29
MD5 4ad49bfe87560c8d43996868c3da4a86
BLAKE2b-256 e8ba9711001455c18f0d5b73fc67dddfc9a961f33bf9bd63cbe0c841d6f22b1c

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp27-cp27mu-manylinux1_x86_64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp27-cp27mu-manylinux1_x86_64.whl
  • Upload date:
  • Size: 2.1 MB
  • Tags: CPython 2.7mu
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp27-cp27mu-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 2094284259e622a8de1651d31bb5f8c172f7373677dcc9a7bea52e6a0e0b0cc8
MD5 f6c3bb14a0078231c294550a41cc7f58
BLAKE2b-256 d48583d44db9d1ab32ddcf33d2c546fc5d884136ff93ab8428b3af8b63e4e4ce

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp27-cp27m-manylinux1_x86_64.whl.

File metadata

  • Download URL: thinc-7.2.0.dev3-cp27-cp27m-manylinux1_x86_64.whl
  • Upload date:
  • Size: 2.1 MB
  • Tags: CPython 2.7m
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/39.0.1 requests-toolbelt/0.8.0 tqdm/4.28.1 CPython/3.6.6

File hashes

Hashes for thinc-7.2.0.dev3-cp27-cp27m-manylinux1_x86_64.whl
Algorithm Hash digest
SHA256 2f96a460f15fbc2ed6981dba660d0f481f6912add560e040ef8af9f471117e50
MD5 1af3a01ad1990a164121c0f753342e05
BLAKE2b-256 74209f2a31bc1575345250261b53584a17cac72c02c13593ebbbc31f5ce9514a

See more details on using hashes here.

File details

Details for the file thinc-7.2.0.dev3-cp27-cp27m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl.

File metadata

File hashes

Hashes for thinc-7.2.0.dev3-cp27-cp27m-macosx_10_6_intel.macosx_10_9_intel.macosx_10_9_x86_64.macosx_10_10_intel.macosx_10_10_x86_64.whl
Algorithm Hash digest
SHA256 603cef5720000cc755b09c47c559132b662207756121c60e3813adcbdb8ea5bb
MD5 adc9820addef33878a16a9dac8a0159e
BLAKE2b-256 076764dc84da9f996145b138f708a09a711be7d569ddebe2c32ebc2d07bcde33

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