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Markdown
665 lines
28 KiB
Markdown
---
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title: Projects
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new: 3
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menu:
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- ['Intro & Workflow', 'intro']
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- ['Directory & Assets', 'directory']
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- ['Custom Projects', 'custom']
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- ['Integrations', 'integrations']
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---
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> #### 🪐 Project templates
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>
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> Our [`projects`](https://github.com/explosion/projects) repo includes various
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> project templates for different NLP tasks, models, workflows and integrations
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> that you can clone and run. The easiest way to get started is to pick a
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> template, clone it and start modifying it!
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spaCy projects let you manage and share **end-to-end spaCy workflows** for
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different **use cases and domains**, and orchestrate training, packaging and
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serving your custom models. You can start off by cloning a pre-defined project
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template, adjust it to fit your needs, load in your data, train a model, export
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it as a Python package and share the project templates with your team. spaCy
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projects can be used via the new [`spacy project`](/api/cli#project) command.
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For an overview of the available project templates, check out the
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[`projects`](https://github.com/explosion/projects) repo. spaCy projects also
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[integrate](#integrations) with many other cool machine learning and data
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science tools to track and manage your data and experiments, iterate on demos
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and prototypes and ship your models into production.
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<!-- TODO: mention integrations -->
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## Introduction and workflow {#intro}
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<!-- TODO: decide how to introduce concept -->
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<Project id="some_example_project">
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Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
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sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
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mattis pretium.
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</Project>
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spaCy projects make it easy to integrate with many other **awesome tools** in
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the data science and machine learning ecosystem to track and manage your data
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and experiments, iterate on demos and prototypes and ship your models into
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production.
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<Grid narrow cols={3}>
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<Integration title="DVC" logo="dvc" url="#dvc">Manage and version your data</Integration>
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<Integration title="Prodigy" logo="prodigy" url="#prodigy">Create labelled training data</Integration>
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<Integration title="Streamlit" logo="streamlit" url="#streamlit">Visualize and demo your models</Integration>
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<Integration title="FastAPI" logo="fastapi" url="#fastapi">Serve your models and host APIs</Integration>
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<Integration title="Ray" logo="ray" url="#ray">Distributed and parallel training</Integration>
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<Integration title="Weights & Biases" logo="wandb" url="#wandb">Track your experiments and results</Integration>
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</Grid>
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### 1. Clone a project template {#clone}
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> #### Cloning under the hood
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>
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> To clone a project, spaCy calls into `git` and uses the "sparse checkout"
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> feature to only clone the relevant directory or directories.
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The [`spacy project clone`](/api/cli#project-clone) command clones an existing
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project template and copies the files to a local directory. You can then run the
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project, e.g. to train a model and edit the commands and scripts to build fully
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custom workflows.
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```bash
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$ python -m spacy clone some_example_project
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```
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By default, the project will be cloned into the current working directory. You
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can specify an optional second argument to define the output directory. The
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`--repo` option lets you define a custom repo to clone from, if you don't want
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to use the spaCy [`projects`](https://github.com/explosion/projects) repo. You
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can also use any private repo you have access to with Git.
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### 2. Fetch the project assets {#assets}
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> #### project.yml
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>
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> ```yaml
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> assets:
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> - dest: 'assets/training.spacy'
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> url: 'https://example.com/data.spacy'
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> checksum: '63373dd656daa1fd3043ce166a59474c'
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> ```
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Assets are data files your project needs – for example, the training and
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evaluation data or pretrained vectors and embeddings to initialize your model
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with. Each project template comes with a `project.yml` that defines the assets
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to download and where to put them. The
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[`spacy project assets`](/api/cli#project-assets) will fetch the project assets
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for you:
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```bash
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cd some_example_project
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python -m spacy project assets
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```
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### 3. Run a command {#run}
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> #### project.yml
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>
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> ```yaml
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> commands:
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> - name: preprocess
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> help: "Convert the input data to spaCy's format"
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> script:
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> - 'python -m spacy convert assets/train.conllu corpus/'
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> - 'python -m spacy convert assets/eval.conllu corpus/'
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> deps:
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> - 'assets/train.conllu'
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> - 'assets/eval.conllu'
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> outputs:
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> - 'corpus/train.spacy'
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> - 'corpus/eval.spacy'
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> ```
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Commands consist of one or more steps and can be run with
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[`spacy project run`](/api/cli#project-run). The following will run the command
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`preprocess` defined in the `project.yml`:
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```bash
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$ python -m spacy project run preprocess
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```
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Commands can define their expected [dependencies and outputs](#deps-outputs)
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using the `deps` (files the commands require) and `outputs` (files the commands
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create) keys. This allows your project to track changes and determine whether a
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command needs to be re-run. For instance, if your input data changes, you want
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to re-run the `preprocess` command. But if nothing changed, this step can be
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skipped. You can also set `--force` to force re-running a command, or `--dry` to
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perform a "dry run" and see what would happen (without actually running the
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script).
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### 4. Run a workflow {#run-workfow}
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> #### project.yml
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>
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> ```yaml
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> workflows:
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> all:
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> - preprocess
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> - train
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> - package
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> ```
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Workflows are series of commands that are run in order and often depend on each
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other. For instance, to generate a packaged model, you might start by converting
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your data, then run [`spacy train`](/api/cli#train) to train your model on the
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converted data and if that's successful, run [`spacy package`](/api/cli#package)
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to turn the best model artifact into an installable Python package. The
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following command run the workflow named `all` defined in the `project.yml`, and
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execute the commands it specifies, in order:
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```bash
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$ python -m spacy project run all
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```
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Using the expected [dependencies and outputs](#deps-outputs) defined in the
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commands, spaCy can determine whether to re-run a command (if its inputs or
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outputs have changed) or whether to skip it. If you're looking to implement more
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advanced data pipelines and track your changes in Git, check out the
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[Data Version Control (DVC) integration](#dvc). The
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[`spacy project dvc`](/api/cli#project-dvc) command generates a DVC config file
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from a workflow defined in your `project.yml` so you can manage your spaCy
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project as a DVC repo.
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## Project directory and assets {#directory}
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### project.yml {#project-yml}
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The `project.yml` defines the assets a project depends on, like datasets and
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pretrained weights, as well as a series of commands that can be run separately
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or as a workflow – for instance, to preprocess the data, convert it to spaCy's
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format, train a model, evaluate it and export metrics, package it and spin up a
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quick web demo. It looks pretty similar to a config file used to define CI
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pipelines.
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<!-- TODO: update with better (final) example -->
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```yaml
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https://github.com/explosion/spacy-boilerplates/blob/master/ner_fashion/project.yml
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```
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| Section | Description |
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| ------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
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| `variables` | A dictionary of variables that can be referenced in paths, URLs and scripts. For example, `{NAME}` will use the value of the variable `NAME`. |
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| `directories` | An optional list of [directories](#project-files) that should be created in the project for assets, training outputs, metrics etc. spaCy will make sure that these directories always exist. |
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| `assets` | A list of assets that can be fetched with the [`project assets`](/api/cli#project-assets) command. `url` defines a URL or local path, `dest` is the destination file relative to the project directory, and an optional `checksum` ensures that an error is raised if the file's checksum doesn't match. |
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| `workflows` | A dictionary of workflow names, mapped to a list of command names, to execute in order. Workflows can be run with the [`project run`](/api/cli#project-run) command. |
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| `commands` | A list of named commands. A command can define an optional help message (shown in the CLI when the user adds `--help`) and the `script`, a list of commands to run. The `deps` and `outputs` let you define the created file the command depends on and produces, respectively. This lets spaCy determine whether a command needs to be re-run because its dependencies or outputs changed. Commands can be run as part of a workflow, or separately with the [`project run`](/api/cli#project-run) command. |
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### Dependencies and outputs {#deps-outputs}
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Each command defined in the `project.yml` can optionally define a list of
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dependencies and outputs. These are the files the commands requires and creates.
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For example, a command for training a model may depend on a
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[`config.cfg`](/usage/training#config) and the training and evaluation data, and
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it will export a directory `model-best`, containing the best model, which you
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can then re-use in other commands.
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<!-- prettier-ignore -->
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```yaml
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### project.yml
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commands:
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- name: train
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help: 'Train a spaCy model using the specified corpus and config'
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script:
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- 'python -m spacy train ./corpus/training.spacy ./corpus/evaluation.spacy ./configs/config.cfg -o training/'
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deps:
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- 'configs/config.cfg'
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- 'corpus/training.spacy'
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- 'corpus/evaluation.spacy'
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outputs:
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- 'training/model-best'
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```
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> #### Re-running vs. skipping
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>
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> Under the hood, spaCy uses a `project.lock` lockfile that stores the details
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> for each command, as well as its dependencies and outputs and their checksums.
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> It's updated on each run. If any of this information changes, the command will
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> be re-run. Otherwise, it will be skipped.
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If you're running a command and it depends on files that are missing, spaCy will
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show you an error. If a command defines dependencies and outputs that haven't
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changed since the last run, the command will be skipped. This means that you're
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only re-running commands if they need to be re-run. Commands can also set
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`no_skip: true` if they should never be skipped – for example commands that run
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tests. Commands without outputs are also never skipped. To force re-running a
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command or workflow, even if nothing changed, you can set the `--force` flag.
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Note that [`spacy project`](/api/cli#project) doesn't compile any dependency
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graphs based on the dependencies and outputs, and won't re-run previous steps
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automatically. For instance, if you only run the command `train` that depends on
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data created by `preprocess` and those files are missing, spaCy will show an
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error – it won't just re-run `preprocess`. If you're looking for more advanced
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data management, check out the [Data Version Control (DVC) integration](#dvc)
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integration. If you're planning on integrating your spaCy project with DVC, you
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can also use `outputs_no_cache` instead of `outputs` to define outputs that
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won't be cached or tracked.
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### Files and directory structure {#project-files}
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The `project.yml` can define a list of `directories` that should be created
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within a project – for instance, `assets`, `training`, `corpus` and so on. spaCy
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will make sure that these directories are always available, so your commands can
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write to and read from them. Project directories will also include all files and
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directories copied from the project template with
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[`spacy project clone`](/api/cli#project-clone). Here's an example of a project
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directory:
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> #### project.yml
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>
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> <!-- prettier-ignore -->
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> ```yaml
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> directories: ['assets', 'configs', 'corpus', 'metas', 'metrics', 'notebooks', 'packages', 'scripts', 'training']
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> ```
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```yaml
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### Example project directory
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├── project.yml # the project settings
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├── project.lock # lockfile that tracks inputs/outputs
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├── assets/ # downloaded data assets
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├── configs/ # model config.cfg files used for training
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├── corpus/ # output directory for training corpus
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├── metas/ # model meta.json templates used for packaging
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├── metrics/ # output directory for evaluation metrics
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├── notebooks/ # directory for Jupyter notebooks
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├── packages/ # output directory for model Python packages
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├── scripts/ # directory for scripts, e.g. referenced in commands
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├── training/ # output directory for trained models
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└── ... # any other files, like a requirements.txt etc.
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```
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If you don't want a project to create a directory, you can delete it and remove
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its entry from the `project.yml` – just make sure it's not required by any of
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the commands. [Custom templates](#custom) can use any directories they need –
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the only file that's required for a project is the `project.yml`.
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---
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## Custom scripts and projects {#custom}
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The `project.yml` lets you define any custom commands and run them as part of
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your training, evaluation or deployment workflows. The `script` section defines
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a list of commands that are called in a subprocess, in order. This lets you
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execute other Python scripts or command-line tools. Let's say you've written a
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few integration tests that load the best model produced by the training command
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and check that it works correctly. You can now define a `test` command that
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calls into [`pytest`](https://docs.pytest.org/en/latest/), runs your tests and
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uses [`pytest-html`](https://github.com/pytest-dev/pytest-html) to export a test
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report:
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```yaml
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### project.yml
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commands:
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- name: test
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help: 'Test the trained model'
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script:
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- 'pip install pytest pytest-html'
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- 'python -m pytest ./scripts/tests --html=metrics/test-report.html'
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deps:
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- 'training/model-best'
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outputs:
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- 'metrics/test-report.html'
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no_skip: true
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```
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Adding `training/model-best` to the command's `deps` lets you ensure that the
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file is available. If not, spaCy will show an error and the command won't run.
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Setting `no_skip: true` means that the command will always run, even if the
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dependencies (the trained model) hasn't changed. This makes sense here, because
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you typically don't want to skip your tests.
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### Writing custom scripts {#custom-scripts}
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Your project commands can include any custom scripts – essentially, anything you
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can run from the command line. Here's an example of a custom script that uses
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[`typer`](https://typer.tiangolo.com/) for quick and easy command-line arguments
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that you can define via your `project.yml`:
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> #### About Typer
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>
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> [`typer`](https://typer.tiangolo.com/) is a modern library for building Python
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> CLIs using type hints. It's a dependency of spaCy, so it will already be
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> pre-installed in your environment. Function arguments automatically become
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> positional CLI arguments and using Python type hints, you can define the value
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> types. For instance, `batch_size: int` means that the value provided via the
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> command line is converted to an integer.
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```python
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### scripts/custom_evaluation.py
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import typer
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def custom_evaluation(batch_size: int = 128, model_path: str, data_path: str):
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# The arguments are now available as positional CLI arguments
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print(batch_size, model_path, data_path)
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if __name__ == "__main__":
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typer.run(custom_evaluation)
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```
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In your `project.yml`, you can then run the script by calling
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`python scripts/custom_evaluation.py` with the function arguments. You can also
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use the `variables` section to define reusable variables that will be
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substituted in commands, paths and URLs. In this example, the `BATCH_SIZE` is
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defined as a variable will be added in place of `{BATCH_SIZE}` in the script.
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> #### Calling into Python
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>
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> If any of your command scripts call into `python`, spaCy will take care of
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> replacing that with your `sys.executable`, to make sure you're executing
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> everything with the same Python (not some other Python installed on your
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> system). It also normalizes references to `python3`, `pip3` and `pip`.
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<!-- prettier-ignore -->
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```yaml
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### project.yml
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variables:
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BATCH_SIZE: 128
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commands:
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- name: evaluate
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script:
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- 'python scripts/custom_evaluation.py {BATCH_SIZE} ./training/model-best ./corpus/eval.json'
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deps:
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- 'training/model-best'
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- 'corpus/eval.json'
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```
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### Cloning from your own repo {#custom-repo}
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The [`spacy project clone`](/api/cli#project-clone) command lets you customize
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the repo to clone from using the `--repo` option. It calls into `git`, so you'll
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be able to clone from any repo that you have access to, including private repos.
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```bash
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$ python -m spacy project your_project --repo https://github.com/you/repo
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```
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At a minimum, a valid project template needs to contain a
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[`project.yml`](#project-yml). It can also include
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[other files](/usage/projects#project-files), like custom scripts, a
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`requirements.txt` listing additional dependencies,
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[training configs](/usage/training#config) and model meta templates, or Jupyter
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notebooks with usage examples.
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<Infobox title="Important note about assets" variant="warning">
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It's typically not a good idea to check large data assets, trained models or
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other artifacts into a Git repo and you should exclude them from your project
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template by adding a `.gitignore`. If you want to version your data and models,
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check out [Data Version Control](#dvc) (DVC), which integrates with spaCy
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projects.
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</Infobox>
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### Working with private assets {#private-assets}
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For many projects, the datasets and weights you're working with might be
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company-internal and not available via a public URL. In that case, you can
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specify the destination paths and a checksum, and leave out the URL. When your
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teammates clone and run your project, they can place the files in the respective
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directory themselves. The [`spacy project assets`](/api/cli#project-assets)
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command will alert about missing files and mismatched checksums, so you can
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ensure that others are running your project with the same data.
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```yaml
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### project.yml
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assets:
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- dest: 'assets/private_training_data.json'
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checksum: '63373dd656daa1fd3043ce166a59474c'
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- dest: 'assets/private_vectors.bin'
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checksum: '5113dc04e03f079525edd8df3f4f39e3'
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```
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## Integrations {#integrations}
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### Data Version Control (DVC) {#dvc} <IntegrationLogo name="dvc" title="DVC" width={70} height="auto" align="right" />
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Data assets like training corpora or pretrained weights are at the core of any
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NLP project, but they're often difficult to manage: you can't just check them
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into your Git repo to version and keep track of them. And if you have multiple
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steps that depend on each other, like a preprocessing step that generates your
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training data, you need to make sure the data is always up-to-date, and re-run
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all steps of your process every time, just to be safe.
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[Data Version Control](https://dvc.org) (DVC) is a standalone open-source tool
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that integrates into your workflow like Git, builds a dependency graph for your
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data pipelines and tracks and caches your data files. If you're downloading data
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from an external source, like a storage bucket, DVC can tell whether the
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resource has changed. It can also determine whether to re-run a step, depending
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on whether its input have changed or not. All metadata can be checked into a Git
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repo, so you'll always be able to reproduce your experiments.
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To set up DVC, install the package and initialize your spaCy project as a Git
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||
and DVC repo. You can also
|
||
[customize your DVC installation](https://dvc.org/doc/install/macos#install-with-pip)
|
||
to include support for remote storage like Google Cloud Storage, S3, Azure, SSH
|
||
and more.
|
||
|
||
```bash
|
||
pip install dvc # Install DVC
|
||
git init # Initialize a Git repo
|
||
dvc init # Initialize a DVC project
|
||
```
|
||
|
||
The [`spacy project dvc`](/api/cli#project-dvc) command creates a `dvc.yaml`
|
||
config file based on a workflow defined in your `project.yml`. Whenever you
|
||
update your project, you can re-run the command to update your DVC config. You
|
||
can then manage your spaCy project like any other DVC project, run
|
||
[`dvc add`](https://dvc.org/doc/command-reference/add) to add and track assets
|
||
and [`dvc repro`](https://dvc.org/doc/command-reference/repro) to reproduce the
|
||
workflow or individual commands.
|
||
|
||
```bash
|
||
$ python -m spacy project dvc [workflow name]
|
||
```
|
||
|
||
<Infobox title="Important note for multiple workflows" variant="warning">
|
||
|
||
DVC currently expects a single workflow per project, so when creating the config
|
||
with [`spacy project dvc`](/api/cli#project-dvc), you need to specify the name
|
||
of a workflow defined in your `project.yml`. You can still use multiple
|
||
workflows, but only one can be tracked by DVC.
|
||
|
||
</Infobox>
|
||
|
||
<Project id="integrations/dvc">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
---
|
||
|
||
### Prodigy {#prodigy} <IntegrationLogo name="prodigy" width={100} height="auto" align="right" />
|
||
|
||
[Prodigy](https://prodi.gy) is a modern annotation tool for creating training
|
||
data for machine learning models, developed by us. It integrates with spaCy
|
||
out-of-the-box and provides many different
|
||
[annotation recipes](https://prodi.gy/docs/recipes) for a variety of NLP tasks,
|
||
with and without a model in the loop. If Prodigy is installed in your project,
|
||
you can start the annotation server from your `project.yml` for a tight feedback
|
||
loop between data development and training.
|
||
|
||
The following example command starts the Prodigy app using the
|
||
[`ner.correct`](https://prodi.gy/docs/recipes#ner-correct) recipe and streams in
|
||
suggestions for the given entity labels produced by a pretrained model. You can
|
||
then correct the suggestions manually in the UI. After you save and exit the
|
||
server, the full dataset is exported in spaCy's format and split into a training
|
||
and evaluation set.
|
||
|
||
> #### Example usage
|
||
>
|
||
> ```bash
|
||
> $ python -m spacy project run annotate
|
||
> ```
|
||
|
||
<!-- prettier-ignore -->
|
||
```yaml
|
||
### project.yml
|
||
variables:
|
||
PRODIGY_DATASET: 'ner_articles'
|
||
PRODIGY_LABELS: 'PERSON,ORG,PRODUCT'
|
||
PRODIGY_MODEL: 'en_core_web_md'
|
||
|
||
commands:
|
||
- name: annotate
|
||
- script:
|
||
- 'python -m prodigy ner.correct {PRODIGY_DATASET} ./assets/raw_data.jsonl {PRODIGY_MODEL} --labels {PRODIGY_LABELS}'
|
||
- 'python -m prodigy data-to-spacy ./corpus/train.json ./corpus/eval.json --ner {PRODIGY_DATASET}'
|
||
- 'python -m spacy convert ./corpus/train.json ./corpus/train.spacy'
|
||
- 'python -m spacy convert ./corpus/eval.json ./corpus/eval.spacy'
|
||
- deps:
|
||
- 'assets/raw_data.jsonl'
|
||
- outputs:
|
||
- 'corpus/train.spacy'
|
||
- 'corpus/eval.spacy'
|
||
```
|
||
|
||
You can use the same approach for other types of projects and annotation
|
||
workflows, including
|
||
[text classification](https://prodi.gy/docs/recipes#textcat),
|
||
[dependency parsing](https://prodi.gy/docs/recipes#dep),
|
||
[part-of-speech tagging](https://prodi.gy/docs/recipes#pos) or fully
|
||
[custom recipes](https://prodi.gy/docs/custom-recipes) – for instance, an A/B
|
||
evaluation workflow that lets you compare two different models and their
|
||
results.
|
||
|
||
<Project id="integrations/prodigy">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
---
|
||
|
||
### Streamlit {#streamlit} <IntegrationLogo name="streamlit" width={150} height="auto" align="right" />
|
||
|
||
<Grid cols={2} gutterBottom={false}>
|
||
|
||
<div>
|
||
|
||
[Streamlit](https://streamlit.io) is a Python framework for building interactive
|
||
data apps. The [`spacy-streamlit`](https://github.com/explosion/spacy-streamlit)
|
||
package helps you integrate spaCy visualizations into your Streamlit apps and
|
||
quickly spin up demos to explore your models interactively. It includes a full
|
||
embedded visualizer, as well as individual components.
|
||
|
||
```bash
|
||
$ pip install spacy_streamlit
|
||
```
|
||
|
||
</div>
|
||
|
||
![](../images/spacy-streamlit.png)
|
||
|
||
</Grid>
|
||
|
||
Using [`spacy-streamlit`](https://github.com/explosion/spacy-streamlit), your
|
||
projects can easily define their own scripts that spin up an interactive
|
||
visualizer, using the latest model you trained, or a selection of models so you
|
||
can compare their results. The following script starts an
|
||
[NER visualizer](/usage/visualizers#ent) and takes two positional command-line
|
||
argument you can pass in from your `config.yml`: a comma-separated list of model
|
||
paths and an example text to use as the default text.
|
||
|
||
```python
|
||
### scripts/visualize.py
|
||
import spacy_streamlit
|
||
import sys
|
||
|
||
DEFAULT_TEXT = sys.argv[2] if len(sys.argv) >= 3 else ""
|
||
MODELS = [name.strip() for name in sys.argv[1].split(",")]
|
||
spacy_streamlit.visualize(MODELS, DEFAULT_TEXT, visualizers=["ner"])
|
||
```
|
||
|
||
> #### Example usage
|
||
>
|
||
> ```bash
|
||
> $ python -m spacy project run visualize
|
||
> ```
|
||
|
||
<!-- prettier-ignore -->
|
||
```yaml
|
||
### project.yml
|
||
commands:
|
||
- name: visualize
|
||
help: "Visualize the model's output interactively using Streamlit"
|
||
script:
|
||
- 'streamlit run ./scripts/visualize.py ./training/model-best "I like Adidas shoes."'
|
||
deps:
|
||
- 'training/model-best'
|
||
```
|
||
|
||
<Project id="integrations/streamlit">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
---
|
||
|
||
### FastAPI {#fastapi} <IntegrationLogo name="fastapi" width={100} height="auto" align="right" />
|
||
|
||
[FastAPI](https://fastapi.tiangolo.com/) is a modern high-performance framework
|
||
for building REST APIs with Python, based on Python
|
||
[type hints](https://fastapi.tiangolo.com/python-types/). It's become a popular
|
||
library for serving machine learning models and
|
||
|
||
```python
|
||
# TODO: show an example that addresses some of the main concerns for serving ML (workers etc.)
|
||
```
|
||
|
||
> #### Example usage
|
||
>
|
||
> ```bash
|
||
> $ python -m spacy project run visualize
|
||
> ```
|
||
|
||
<!-- prettier-ignore -->
|
||
```yaml
|
||
### project.yml
|
||
commands:
|
||
- name: serve
|
||
help: "Serve the trained model with FastAPI"
|
||
script:
|
||
- 'python ./scripts/serve.py ./training/model-best'
|
||
deps:
|
||
- 'training/model-best'
|
||
no_skip: true
|
||
```
|
||
|
||
<Project id="integrations/fastapi">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
---
|
||
|
||
### Ray {#ray} <IntegrationLogo name="ray" width={100} height="auto" align="right" />
|
||
|
||
<!-- TODO: document -->
|
||
|
||
---
|
||
|
||
### Weights & Biases {#wandb} <IntegrationLogo name="wandb" width={175} height="auto" align="right" />
|
||
|
||
<!-- TODO: decide how we want this to work? Just send results plus config from spacy evaluate in a separate command/script? -->
|