mirror of
https://github.com/invoke-ai/InvokeAI
synced 2024-08-30 20:32:17 +00:00
287 lines
8.9 KiB
Markdown
287 lines
8.9 KiB
Markdown
# Local Development
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If you are looking to contribute you will need to have a local development
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environment. See the
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[Developer Install](../installation/020_INSTALL_MANUAL.md#developer-install) for
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full details.
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Broadly this involves cloning the repository, installing the pre-reqs, and
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InvokeAI (in editable form). Assuming this is working, choose your area of
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focus.
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## Documentation
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We use [mkdocs](https://www.mkdocs.org) for our documentation with the
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[material theme](https://squidfunk.github.io/mkdocs-material/). Documentation is
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written in markdown files under the `./docs` folder and then built into a static
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website for hosting with GitHub Pages at
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[invoke-ai.github.io/InvokeAI](https://invoke-ai.github.io/InvokeAI).
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To contribute to the documentation you'll need to install the dependencies. Note
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the use of `"`.
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```zsh
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pip install ".[docs]"
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```
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Now, to run the documentation locally with hot-reloading for changes made.
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```zsh
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mkdocs serve
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```
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You'll then be prompted to connect to `http://127.0.0.1:8080` in order to
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access.
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## Backend
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The backend is contained within the `./invokeai/backend` and `./invokeai/app` directories.
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To get started please install the development dependencies.
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From the root of the repository run the following command. Note the use of `"`.
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```zsh
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pip install ".[dev,test]"
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```
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These are optional groups of packages which are defined within the `pyproject.toml`
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and will be required for testing the changes you make to the code.
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### Running Tests
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We use [pytest](https://docs.pytest.org/en/7.2.x/) for our test suite. Tests can
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be found under the `./tests` folder and can be run with a single `pytest`
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command. Optionally, to review test coverage you can append `--cov`.
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```zsh
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pytest --cov
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```
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Test outcomes and coverage will be reported in the terminal. In addition a more
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detailed report is created in both XML and HTML format in the `./coverage`
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folder. The HTML one in particular can help identify missing statements
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requiring tests to ensure coverage. This can be run by opening
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`./coverage/html/index.html`.
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For example.
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```zsh
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pytest --cov; open ./coverage/html/index.html
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```
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??? info "HTML coverage report output"
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![html-overview](../assets/contributing/html-overview.png)
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![html-detail](../assets/contributing/html-detail.png)
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### Reloading Changes
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Experimenting with changes to the Python source code is a drag if you have to re-start the server —
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and re-load those multi-gigabyte models —
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after every change.
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For a faster development workflow, add the `--dev_reload` flag when starting the server.
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The server will watch for changes to all the Python files in the `invokeai` directory and apply those changes to the
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running server on the fly.
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This will allow you to avoid restarting the server (and reloading models) in most cases, but there are some caveats; see
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the [jurigged documentation](https://github.com/breuleux/jurigged#caveats) for details.
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## Front End
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<!--#TODO: get input from blessedcoolant here, for the moment inserted the frontend README via snippets extension.-->
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--8<-- "invokeai/frontend/web/README.md"
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## Developing InvokeAI in VSCode
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VSCode offers some nice tools:
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- python debugger
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- automatic `venv` activation
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- remote dev (e.g. run InvokeAI on a beefy linux desktop while you type in
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comfort on your macbook)
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### Setup
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You'll need the
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[Python](https://marketplace.visualstudio.com/items?itemName=ms-python.python)
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and
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[Pylance](https://marketplace.visualstudio.com/items?itemName=ms-python.vscode-pylance)
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extensions installed first.
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It's also really handy to install the `Jupyter` extensions:
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- [Jupyter](https://marketplace.visualstudio.com/items?itemName=ms-toolsai.jupyter)
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- [Jupyter Cell Tags](https://marketplace.visualstudio.com/items?itemName=ms-toolsai.vscode-jupyter-cell-tags)
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- [Jupyter Notebook Renderers](https://marketplace.visualstudio.com/items?itemName=ms-toolsai.jupyter-renderers)
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- [Jupyter Slide Show](https://marketplace.visualstudio.com/items?itemName=ms-toolsai.vscode-jupyter-slideshow)
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#### InvokeAI workspace
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Creating a VSCode workspace for working on InvokeAI is highly recommended. It
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can hold InvokeAI-specific settings and configs.
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To make a workspace:
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- Open the InvokeAI repo dir in VSCode
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- `File` > `Save Workspace As` > save it _outside_ the repo
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#### Default python interpreter (i.e. automatic virtual environment activation)
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- Use command palette to run command
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`Preferences: Open Workspace Settings (JSON)`
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- Add `python.defaultInterpreterPath` to `settings`, pointing to your `venv`'s
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python
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Should look something like this:
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```jsonc
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{
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// I like to have all InvokeAI-related folders in my workspace
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"folders": [
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{
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// repo root
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"path": "InvokeAI"
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},
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{
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// InvokeAI root dir, where `invokeai.yaml` lives
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"path": "/path/to/invokeai_root"
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}
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],
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"settings": {
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// Where your InvokeAI `venv`'s python executable lives
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"python.defaultInterpreterPath": "/path/to/invokeai_root/.venv/bin/python"
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}
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}
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```
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Now when you open the VSCode integrated terminal, or do anything that needs to
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run python, it will automatically be in your InvokeAI virtual environment.
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Bonus: When you create a Jupyter notebook, when you run it, you'll be prompted
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for the python interpreter to run in. This will default to your `venv` python,
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and so you'll have access to the same python environment as the InvokeAI app.
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This is _super_ handy.
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#### Debugging configs with `launch.json`
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Debugging configs are managed in a `launch.json` file. Like most VSCode configs,
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these can be scoped to a workspace or folder.
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Follow the [official guide](https://code.visualstudio.com/docs/python/debugging)
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to set up your `launch.json` and try it out.
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Now we can create the InvokeAI debugging configs:
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```jsonc
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{
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// Use IntelliSense to learn about possible attributes.
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// Hover to view descriptions of existing attributes.
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// For more information, visit: https://go.microsoft.com/fwlink/?linkid=830387
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"version": "0.2.0",
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"configurations": [
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{
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// Run the InvokeAI backend & serve the pre-built UI
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"name": "InvokeAI Web",
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"type": "python",
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"request": "launch",
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"program": "scripts/invokeai-web.py",
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"args": [
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// Your InvokeAI root dir (where `invokeai.yaml` lives)
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"--root",
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"/path/to/invokeai_root",
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// Access the app from anywhere on your local network
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"--host",
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"0.0.0.0"
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],
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"justMyCode": true
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},
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{
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// Run the nodes-based CLI
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"name": "InvokeAI CLI",
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"type": "python",
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"request": "launch",
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"program": "scripts/invokeai-cli.py",
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"justMyCode": true
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},
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{
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// Run tests
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"name": "InvokeAI Test",
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"type": "python",
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"request": "launch",
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"module": "pytest",
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"args": ["--capture=no"],
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"justMyCode": true
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},
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{
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// Run a single test
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"name": "InvokeAI Single Test",
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"type": "python",
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"request": "launch",
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"module": "pytest",
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"args": [
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// Change this to point to the specific test you are working on
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"tests/nodes/test_invoker.py"
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],
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"justMyCode": true
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},
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{
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// This is the default, useful to just run a single file
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"name": "Python: File",
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"type": "python",
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"request": "launch",
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"program": "${file}",
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"justMyCode": true
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}
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]
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}
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```
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You'll see these configs in the debugging configs drop down. Running them will
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start InvokeAI with attached debugger, in the correct environment, and work just
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like the normal app.
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Enjoy debugging InvokeAI with ease (not that we have any bugs of course).
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#### Remote dev
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This is very easy to set up and provides the same very smooth experience as
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local development. Environments and debugging, as set up above, just work,
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though you'd need to recreate the workspace and debugging configs on the remote.
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Consult the
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[official guide](https://code.visualstudio.com/docs/remote/remote-overview) to
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get it set up.
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Suggest using VSCode's included settings sync so that your remote dev host has
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all the same app settings and extensions automagically.
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##### One remote dev gotcha
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I've found the automatic port forwarding to be very flakey. You can disable it
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in `Preferences: Open Remote Settings (ssh: hostname)`. Search for
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`remote.autoForwardPorts` and untick the box.
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To forward ports very reliably, use SSH on the remote dev client (e.g. your
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macbook). Here's how to forward both backend API port (`9090`) and the frontend
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live dev server port (`5173`):
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```bash
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ssh \
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-L 9090:localhost:9090 \
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-L 5173:localhost:5173 \
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user@remote-dev-host
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```
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The forwarding stops when you close the terminal window, so suggest to do this
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_outside_ the VSCode integrated terminal in case you need to restart VSCode for
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an extension update or something
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Now, on your remote dev client, you can open `localhost:9090` and access the UI,
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now served from the remote dev host, just the same as if it was running on the
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client.
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