- !import_model <path/to/model/weights> will import a new model, prompt the user for its name and description, write it to the models.yaml file, and load it. - !edit_model <model_name> will bring up a previously-defined model and prompt the user to edit its descriptive fields. Example of !import_model <pre> invoke> <b>!import_model models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt</b> >> Model import in process. Please enter the values needed to configure this model: Name for this model: <b>waifu-diffusion</b> Description of this model: <b>Waifu Diffusion v1.3</b> Configuration file for this model: <b>configs/stable-diffusion/v1-inference.yaml</b> Default image width: <b>512</b> Default image height: <b>512</b> >> New configuration: waifu-diffusion: config: configs/stable-diffusion/v1-inference.yaml description: Waifu Diffusion v1.3 height: 512 weights: models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt width: 512 OK to import [n]? <b>y</b> >> Caching model stable-diffusion-1.4 in system RAM >> Loading waifu-diffusion from models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt | LatentDiffusion: Running in eps-prediction mode | DiffusionWrapper has 859.52 M params. | Making attention of type 'vanilla' with 512 in_channels | Working with z of shape (1, 4, 32, 32) = 4096 dimensions. | Making attention of type 'vanilla' with 512 in_channels | Using faster float16 precision </pre> Example of !edit_model <pre> invoke> <b>!edit_model waifu-diffusion</b> >> Editing model waifu-diffusion from configuration file ./configs/models.yaml description: <b>Waifu diffusion v1.4beta</b> weights: models/ldm/stable-diffusion-v1/<b>model-epoch10-float16.ckpt</b> config: configs/stable-diffusion/v1-inference.yaml width: 512 height: 512 >> New configuration: waifu-diffusion: config: configs/stable-diffusion/v1-inference.yaml description: Waifu diffusion v1.4beta weights: models/ldm/stable-diffusion-v1/model-epoch10-float16.ckpt height: 512 width: 512 OK to import [n]? y >> Caching model stable-diffusion-1.4 in system RAM >> Loading waifu-diffusion from models/ldm/stable-diffusion-v1/model-epoch10-float16.ckpt ... </pre>
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CLI |
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:material-bash: CLI
Interactive Command Line Interface
The invoke.py
script, located in scripts/dream.py
, provides an interactive
interface to image generation similar to the "invoke mothership" bot that Stable
AI provided on its Discord server.
Unlike the txt2img.py
and img2img.py
scripts provided in the original
CompVis/stable-diffusion source
code repository, the time-consuming initialization of the AI model
initialization only happens once. After that image generation from the
command-line interface is very fast.
The script uses the readline library to allow for in-line editing, command history (++up++ and ++down++), autocompletion, and more. To help keep track of which prompts generated which images, the script writes a log file of image names and prompts to the selected output directory.
In addition, as of version 1.02, it also writes the prompt into the PNG file's
metadata where it can be retrieved using scripts/images2prompt.py
The script is confirmed to work on Linux, Windows and Mac systems.
!!! note
This script runs from the command-line or can be used as a Web application. The Web GUI is
currently rudimentary, but a much better replacement is on its way.
(ldm) ~/stable-diffusion$ python3 ./scripts/invoke.py
* Initializing, be patient...
Loading model from models/ldm/text2img-large/model.ckpt
(...more initialization messages...)
* Initialization done! Awaiting your command...
invoke> ashley judd riding a camel -n2 -s150
Outputs:
outputs/img-samples/00009.png: "ashley judd riding a camel" -n2 -s150 -S 416354203
outputs/img-samples/00010.png: "ashley judd riding a camel" -n2 -s150 -S 1362479620
invoke> "there's a fly in my soup" -n6 -g
outputs/img-samples/00011.png: "there's a fly in my soup" -n6 -g -S 2685670268
seeds for individual rows: [2685670268, 1216708065, 2335773498, 822223658, 714542046, 3395302430]
invoke> q
# this shows how to retrieve the prompt stored in the saved image's metadata
(ldm) ~/stable-diffusion$ python ./scripts/images2prompt.py outputs/img_samples/*.png
00009.png: "ashley judd riding a camel" -s150 -S 416354203
00010.png: "ashley judd riding a camel" -s150 -S 1362479620
00011.png: "there's a fly in my soup" -n6 -g -S 2685670268
The invoke>
prompt's arguments are pretty much identical to those used in the
Discord bot, except you don't need to type "!invoke" (it doesn't hurt if you do).
A significant change is that creation of individual images is now the default
unless --grid
(-g
) is given. A full list is given in
List of prompt arguments.
Arguments
The script itself also recognizes a series of command-line switches that will change important global defaults, such as the directory for image outputs and the location of the model weight files.
List of arguments recognized at the command line
These command-line arguments can be passed to invoke.py
when you first run it
from the Windows, Mac or Linux command line. Some set defaults that can be
overridden on a per-prompt basis (see [List of prompt arguments]
(#list-of-prompt-arguments). Others
Argument | Shortcut | Default | Description |
---|---|---|---|
--help |
-h |
Print a concise help message. | |
--outdir <path> |
-o<path> |
outputs/img_samples |
Location for generated images. |
--prompt_as_dir |
-p |
False |
Name output directories using the prompt text. |
--from_file <path> |
None |
Read list of prompts from a file. Use - to read from standard input |
|
--model <modelname> |
stable-diffusion-1.4 |
Loads model specified in configs/models.yaml. Currently one of "stable-diffusion-1.4" or "laion400m" | |
--full_precision |
-F |
False |
Run in slower full-precision mode. Needed for Macintosh M1/M2 hardware and some older video cards. |
--web |
False |
Start in web server mode | |
--host <ip addr> |
localhost |
Which network interface web server should listen on. Set to 0.0.0.0 to listen on any. | |
--port <port> |
9090 |
Which port web server should listen for requests on. | |
--config <path> |
configs/models.yaml |
Configuration file for models and their weights. | |
--iterations <int> |
-n<int> |
1 |
How many images to generate per prompt. |
--grid |
-g |
False |
Save all image series as a grid rather than individually. |
--sampler <sampler> |
-A<sampler> |
k_lms |
Sampler to use. Use -h to get list of available samplers. |
--seamless |
False |
Create interesting effects by tiling elements of the image. | |
--embedding_path <path> |
None |
Path to pre-trained embedding manager checkpoints, for custom models | |
--gfpgan_dir |
src/gfpgan |
Path to where GFPGAN is installed. | |
--gfpgan_model_path |
experiments/pretrained_models/GFPGANv1.4.pth |
Path to GFPGAN model file, relative to --gfpgan_dir . |
|
--device <device> |
-d<device> |
torch.cuda.current_device() |
Device to run SD on, e.g. "cuda:0" |
--free_gpu_mem |
False |
Free GPU memory after sampling, to allow image decoding and saving in low VRAM conditions | |
--precision |
auto |
Set model precision, default is selected by device. Options: auto, float32, float16, autocast |
deprecated
These arguments are deprecated but still work:
Argument | Shortcut | Default | Description |
---|---|---|---|
--weights | None | Pth to weights file; use --model stable-diffusion-1.4 instead |
|
--laion400m | -l | False | Use older LAION400m weights; use --model=laion400m instead |
A note on path names: On Windows systems, you may run into problems when passing the invoke script standard backslashed path names because the Python interpreter treats "" as an escape. You can either double your slashes (ick): C:\\path\\to\\my\\file, or use Linux/Mac style forward slashes (better): C:/path/to/my/file.
List of prompt arguments
After the invoke.py script initializes, it will present you with a invoke> prompt. Here you can enter information to generate images from text (txt2img), to embellish an existing image or sketch (img2img), or to selectively alter chosen regions of the image (inpainting).
This is an example of txt2img:
invoke> waterfall and rainbow -W640 -H480
This will create the requested image with the dimensions 640 (width) and 480 (height).
Here are the invoke> command that apply to txt2img:
Argument | Shortcut | Default | Description |
---|---|---|---|
"my prompt" | Text prompt to use. The quotation marks are optional. | ||
--width | -W | 512 | Width of generated image |
--height | -H | 512 | Height of generated image |
--iterations | -n | 1 | How many images to generate from this prompt |
--steps | -s | 50 | How many steps of refinement to apply |
--cfg_scale | -C | 7.5 | How hard to try to match the prompt to the generated image; any number greater than 1.0 works, but the useful range is roughly 5.0 to 20.0 |
--seed | -S | None | Set the random seed for the next series of images. This can be used to recreate an image generated previously. |
--sampler | -A | k_lms | Sampler to use. Use -h to get list of available samplers. |
--hires_fix | Larger images often have duplication artefacts. This option suppresses duplicates by generating the image at low res, and then using img2img to increase the resolution | ||
--grid | -g | False | Turn on grid mode to return a single image combining all the images generated by this prompt |
--individual | -i | True | Turn off grid mode (deprecated; leave off --grid instead) |
--outdir | -o | outputs/img_samples | Temporarily change the location of these images |
--seamless | False | Activate seamless tiling for interesting effects | |
--log_tokenization | -t | False | Display a color-coded list of the parsed tokens derived from the prompt |
--skip_normalization | -x | False | Weighted subprompts will not be normalized. See Weighted Prompts |
--upscale | -U | -U 1 0.75 | Upscale image by magnification factor (2, 4), and set strength of upscaling (0.0-1.0). If strength not set, will default to 0.75. |
--gfpgan_strength | -G | -G0 | Fix faces using the GFPGAN algorithm; argument indicates how hard the algorithm should try (0.0-1.0) |
--save_original | -save_orig | False | When upscaling or fixing faces, this will cause the original image to be saved rather than replaced. |
--variation | -v | 0.0 | Add a bit of noise (0.0=none, 1.0=high) to the image in order to generate a series of variations. Usually used in combination with -S and -n to generate a series a riffs on a starting image. See Variations. |
--with_variations | None | Combine two or more variations. See Variations for now to use this. | |
--save_intermediates | None | Save the image from every nth step into an "intermediates" folder inside the output directory |
Note that the width and height of the image must be multiples of 64. You can provide different values, but they will be rounded down to the nearest multiple of 64.
This is an example of img2img:
invoke> waterfall and rainbow -I./vacation-photo.png -W640 -H480 --fit
This will modify the indicated vacation photograph by making it more like the prompt. Results will vary greatly depending on what is in the image. We also ask to --fit the image into a box no bigger than 640x480. Otherwise the image size will be identical to the provided photo and you may run out of memory if it is large.
In addition to the command-line options recognized by txt2img, img2img accepts additional options:
Argument | Shortcut | Default | Description |
---|---|---|---|
--init_img | -I | None | Path to the initialization image |
--fit | -F | False | Scale the image to fit into the specified -H and -W dimensions |
--strength | -s | 0.75 | How hard to try to match the prompt to the initial image. Ranges from 0.0-0.99, with higher values replacing the initial image completely. |
This is an example of inpainting:
invoke> waterfall and rainbow -I./vacation-photo.png -M./vacation-mask.png -W640 -H480 --fit
This will do the same thing as img2img, but image alterations will only occur within transparent areas defined by the mask file specified by -M. You may also supply just a single initial image with the areas to overpaint made transparent, but you must be careful not to destroy the pixels underneath when you create the transparent areas. See Inpainting for details.
inpainting accepts all the arguments used for txt2img and img2img, as well as the --mask (-M) argument:
Argument | Shortcut | Default | Description |
---|---|---|---|
--init_mask | -M | None | Path to an image the same size as the initial_image, with areas for inpainting made transparent. |
Postprocessing
To postprocess a file using face restoration or upscaling, use the
!fix
command.
!fix
This command runs a post-processor on a previously-generated image. It takes a PNG filename or path and applies your choice of the -U, -G, or --embiggen switches in order to fix faces or upscale. If you provide a filename, the script will look for it in the current output directory. Otherwise you can provide a full or partial path to the desired file.
Some examples:
Upscale to 4X its original size and fix faces using codeformer:
invoke> !fix 0000045.4829112.png -G1 -U4 -ft codeformer
Use the GFPGAN algorithm to fix faces, then upscale to 3X using --embiggen:
invoke> !fix 0000045.4829112.png -G0.8 -ft gfpgan
>> fixing outputs/img-samples/0000045.4829112.png
>> retrieved seed 4829112 and prompt "boy enjoying a banana split"
>> GFPGAN - Restoring Faces for image seed:4829112
Outputs:
[1] outputs/img-samples/000017.4829112.gfpgan-00.png: !fix "outputs/img-samples/0000045.4829112.png" -s 50 -S -W 512 -H 512 -C 7.5 -A k_lms -G 0.8
invoke> !fix 000017.4829112.gfpgan-00.png --embiggen 3
...lots of text...
Outputs:
[2] outputs/img-samples/000018.2273800735.embiggen-00.png: !fix "outputs/img-samples/000017.243781548.gfpgan-00.png" -s 50 -S 2273800735 -W 512 -H 512 -C 7.5 -A k_lms --embiggen 3.0 0.75 0.25
Model selection and importation
The CLI allows you to add new models on the fly, as well as to switch among them rapidly without leaving the script.
!models
This prints out a list of the models defined in `config/models.yaml'. The active model is bold-faced
Example:
laion400m not loaded stable-diffusion-1.4 active Stable Diffusion v1.4 waifu-diffusion not loaded Waifu Diffusion v1.3
!switch
This quickly switches from one model to another without leaving the
CLI script. invoke.py
uses a memory caching system; once a model
has been loaded, switching back and forth is quick. The following
example shows this in action. Note how the second column of the
!models
table changes to cached
after a model is first loaded,
and that the long initialization step is not needed when loading
a cached model.
invoke> !models laion400m not loaded stable-diffusion-1.4 cached Stable Diffusion v1.4 waifu-diffusion active Waifu Diffusion v1.3 invoke> !switch waifu-diffusion >> Caching model stable-diffusion-1.4 in system RAM >> Loading waifu-diffusion from models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt | LatentDiffusion: Running in eps-prediction mode | DiffusionWrapper has 859.52 M params. | Making attention of type 'vanilla' with 512 in_channels | Working with z of shape (1, 4, 32, 32) = 4096 dimensions. | Making attention of type 'vanilla' with 512 in_channels | Using faster float16 precision >> Model loaded in 18.24s >> Max VRAM used to load the model: 2.17G >> Current VRAM usage:2.17G >> Setting Sampler to k_lms invoke> !models laion400m not loaded stable-diffusion-1.4 cached Stable Diffusion v1.4 waifu-diffusion active Waifu Diffusion v1.3 invoke> !switch stable-diffusion-1.4 >> Caching model waifu-diffusion in system RAM >> Retrieving model stable-diffusion-1.4 from system RAM cache >> Setting Sampler to k_lms invoke> !models laion400m not loaded stable-diffusion-1.4 active Stable Diffusion v1.4 waifu-diffusion cached Waifu Diffusion v1.3
!import_model <path/to/model/weights>
This command imports a new model weights file into InvokeAI, makes it
available for image generation within the script, and writes out the
configuration for the model into config/models.yaml
for use in
subsequent sessions.
Provide !import_model
with the path to a weights file ending in
.ckpt
. If you type a partial path and press tab, the CLI will
autocomplete. Although it will also autocomplete to .vae
files,
these are not currenty supported (but will be soon).
When you hit return, the CLI will prompt you to fill in additional
information about the model, including the short name you wish to use
for it with the !switch
command, a brief description of the model,
the default image width and height to use with this model, and the
model's configuration file. The latter three fields are automatically
filled with reasonable defaults. In the example below, the bold-faced
text shows what the user typed in with the exception of the width,
height and configuration file paths, which were filled in
automatically.
Example:
invoke> !import_model models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt >> Model import in process. Please enter the values needed to configure this model: Name for this model: waifu-diffusion Description of this model: Waifu Diffusion v1.3 Configuration file for this model: configs/stable-diffusion/v1-inference.yaml Default image width: 512 Default image height: 512 >> New configuration: waifu-diffusion: config: configs/stable-diffusion/v1-inference.yaml description: Really horrible Hentai pictures height: 512 weights: models/ldm/stable-diffusion-v1/RD1412.ckpt width: 512 OK to import [n]? y >> Caching model stable-diffusion-1.4 in system RAM >> Loading waifu-diffusion from models/ldm/stable-diffusion-v1/model-epoch08-float16.ckpt | LatentDiffusion: Running in eps-prediction mode | DiffusionWrapper has 859.52 M params. | Making attention of type 'vanilla' with 512 in_channels | Working with z of shape (1, 4, 32, 32) = 4096 dimensions. | Making attention of type 'vanilla' with 512 in_channels | Using faster float16 precision invoke>
##!edit_model <name_of_model>
The !edit_model
command can be used to modify a model that is
already defined in config/models.yaml
. Call it with the short
name of the model you wish to modify, and it will allow you to
modify the model's description
, weights
and other fields.
Example:
invoke> !edit_model waifu-diffusion >> Editing model waifu-diffusion from configuration file ./configs/models.yaml description: Waifu diffusion v1.4beta weights: models/ldm/stable-diffusion-v1/model-epoch10-float16.ckpt config: configs/stable-diffusion/v1-inference.yaml width: 512 height: 512 >> New configuration: waifu-diffusion: config: configs/stable-diffusion/v1-inference.yaml description: Waifu diffusion v1.4beta weights: models/ldm/stable-diffusion-v1/model-epoch10-float16.ckpt height: 512 width: 512 OK to import [n]? y >> Caching model stable-diffusion-1.4 in system RAM >> Loading waifu-diffusion from models/ldm/stable-diffusion-v1/model-epoch10-float16.ckpt ...
History processing
The CLI provides a series of convenient commands for reviewing previous actions, retrieving them, modifying them, and re-running them.
!history
The invoke script keeps track of all the commands you issue during a session, allowing you to re-run them. On Mac and Linux systems, it also writes the command-line history out to disk, giving you access to the most recent 1000 commands issued.
The !history
command will return a numbered list of all the commands
issued during the session (Windows), or the most recent 1000 commands
(Mac|Linux). You can then repeat a command by using the command !NNN,
where "NNN" is the history line number. For example:
invoke> !history
...
[14] happy woman sitting under tree wearing broad hat and flowing garment
[15] beautiful woman sitting under tree wearing broad hat and flowing garment
[18] beautiful woman sitting under tree wearing broad hat and flowing garment -v0.2 -n6
[20] watercolor of beautiful woman sitting under tree wearing broad hat and flowing garment -v0.2 -n6 -S2878767194
[21] surrealist painting of beautiful woman sitting under tree wearing broad hat and flowing garment -v0.2 -n6 -S2878767194
...
invoke> !20
invoke> watercolor of beautiful woman sitting under tree wearing broad hat and flowing garment -v0.2 -n6 -S2878767194
!fetch
This command retrieves the generation parameters from a previously generated image and either loads them into the command line. You may provide either the name of a file in the current output directory, or a full file path.
invoke> !fetch 0000015.8929913.png
# the script returns the next line, ready for editing and running:
invoke> a fantastic alien landscape -W 576 -H 512 -s 60 -A plms -C 7.5
Note that this command may behave unexpectedly if given a PNG file that was not generated by InvokeAI.
!search
This is similar to !history but it only returns lines that contain
search string
. For example:
invoke> !search surreal
[21] surrealist painting of beautiful woman sitting under tree wearing broad hat and flowing garment -v0.2 -n6 -S2878767194
!clear
This clears the search history from memory and disk. Be advised that this operation is irreversible and does not issue any warnings!
Command-line editing and completion
The command-line offers convenient history tracking, editing, and command completion.
- To scroll through previous commands and potentially edit/reuse them, use the up and down cursor keys.
- To edit the current command, use the left and right cursor keys to position the cursor, and then backspace, delete or insert characters.
- To move to the very beginning of the command, type CTRL-A (or command-A on the Mac)
- To move to the end of the command, type CTRL-E.
- To cut a section of the command, position the cursor where you want to start cutting and type CTRL-K.
- To paste a cut section back in, position the cursor where you want to paste, and type CTRL-Y
Windows users can get similar, but more limited, functionality if they
launch invoke.py with the "winpty" program and have the pyreadline3
library installed:
> winpty python scripts\invoke.py
On the Mac and Linux platforms, when you exit invoke.py, the last 1000 lines of your command-line history will be saved. When you restart invoke.py, you can access the saved history using the up-arrow key.
In addition, limited command-line completion is installed. In various contexts, you can start typing your command and press tab. A list of potential completions will be presented to you. You can then type a little more, hit tab again, and eventually autocomplete what you want.
When specifying file paths using the one-letter shortcuts, the CLI will attempt to complete pathnames for you. This is most handy for the -I (init image) and -M (init mask) paths. To initiate completion, start the path with a slash ("/") or "./". For example:
invoke> zebra with a mustache -I./test-pictures<TAB>
-I./test-pictures/Lincoln-and-Parrot.png -I./test-pictures/zebra.jpg -I./test-pictures/madonna.png
-I./test-pictures/bad-sketch.png -I./test-pictures/man_with_eagle/
```
You can then type ++z++, hit ++tab++ again, and it will autofill to `zebra.jpg`.
More text completion features (such as autocompleting seeds) are on their way.