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Thinc

🔮 A refreshing functional take on deep learning, compatible with your favorite libraries

Install / Use

/learn @explosion/Thinc

README

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Thinc: A refreshing functional take on deep learning, compatible with your favorite libraries

From the makers of spaCy and Prodigy

Thinc is a lightweight deep learning library that offers an elegant, type-checked, functional-programming API for composing models, with support for layers defined in other frameworks such as PyTorch, TensorFlow and MXNet. You can use Thinc as an interface layer, a standalone toolkit or a flexible way to develop new models. Previous versions of Thinc have been running quietly in production in thousands of companies, via both spaCy and Prodigy. We wrote the new version to let users compose, configure and deploy custom models built with their favorite framework.

tests Current Release Version PyPi Version conda Version Python wheels Code style: black Open demo in Colab

🔥 Features

  • Type-check your model definitions with custom types and mypy plugin.
  • Wrap PyTorch, TensorFlow and MXNet models for use in your network.
  • Concise functional-programming approach to model definition, using composition rather than inheritance.
  • Optional custom infix notation via operator overloading.
  • Integrated config system to describe trees of objects and hyperparameters.
  • Choice of extensible backends.
  • Read more →

🚀 Quickstart

Thinc runs on Linux, macOS and Windows. The latest releases with binary wheels are available from pip. Before you install Thinc and its dependencies, make sure that your pip, setuptools and wheel are up to date. For the most recent releases, pip 19.3 or newer is recommended.

pip install -U pip setuptools wheel
pip install thinc

See the extended installation docs for details on optional dependencies for different backends and GPU. You might also want to set up static type checking to take advantage of Thinc's type system.

⚠️ If you have installed PyTorch and you are using Python 3.7+, uninstall the package dataclasses with pip uninstall dataclasses, since it may have been installed by PyTorch and is incompatible with Python 3.7+.

📓 Selected examples and notebooks

Also see the /examples directory and usage documentation for more examples. Most examples are Jupyter notebooks – to launch them on Google Colab (with GPU support!) click on the button next to the notebook name.

| Notebook | Description | | --------------------------------------------------------------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | | intro_to_thinc<br />Open in Colab | Everything you need to know to get started. Composing and training a model on the MNIST data, using config files, registering custom functions and wrapping PyTorch, TensorFlow and MXNet models. | | transformers_tagger_bert<br />Open in Colab | How to use Thinc, transformers and PyTorch to train a part-of-speech tagger. From model definition and config to the training loop. | | pos_tagger_basic_cnn<br />Open in Colab | Implementing and training a basic CNN for part-of-speech tagging model without external dependencies and using different levels of Thinc's config system. | | parallel_training_ray<br />Open in Colab | How to set up synchronous and asynchronous parameter server training with Thinc and Ray. |

View more →

📖 Documentation & usage guides

| Documentation | Description | | --------------------------------------------------------------------------------- | ----------------------------------------------------- | | Introduction | Everything you need to know. | | Concept & Design | Thinc's conceptual model and how it works. | | Defining and using models | How to compose models and update state. | | Configuration system | Thinc's config system and function registry. | | Integrating PyTorch, TensorFlow & MXNet | Interoperability with machine learning frameworks | | Layers API | Weights layers, transforms, combinators and wrappers. | | Type Checking | Type-check your model definitions and more. |

🗺 What's where

| Module | Description | | ----------------------------------------- | --------------------------------------------------------------------------------- | | thinc.api | User-facing API. All classes and functions should be imported from here. | | thinc.types | Custom types and dataclasses. | | thinc.model | The Model class. All Thinc models are an instance (not a subclass) of Model. | | thinc.layers | The layers. Each layer is implemented in its own module. | | thinc.shims | Interface for external models implemented in PyTorch, TensorFlow etc. | | thinc.loss | Functions to calculate losses. | | thinc.optimizers | Functions to create optimizers. Currently supports "vanilla" SGD, Adam and RAdam. | | thinc.schedules | Generators for different rates, schedules, decays or series. | | thinc.backends | Backends for numpy and cupy. | | thinc.config | Config parsing and validation and function registry system. | | thinc.util | Utilities and helper functions. |

🐍 Development notes

Thinc uses black for auto-formatting, flake8 for linting and mypy for type checking. All code includes type hints wh

Related Skills

View on GitHub
GitHub Stars2.9k
CategoryEducation
Updated3d ago
Forks294

Languages

Python

Security Score

100/100

Audited on Mar 23, 2026

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