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Dynamic prompts is a Python library that provides developers with a flexible and intuitive templating language and tools for generating prompts for text-to-image generators like Stable Diffusion, MidJourney or Dall-e 2. It lets you create and manage sophisticated prompt generation workflows that seamlessly integrate with your existing text-to-image generation pipelines.
It includes:
The dynamic prompts library powers the Dynamic Prompts extension for Automatic1111.
{summer|autumn|winter|spring} is coming
Randomly generate one of:
summer is coming
autumn is coming
winter is coming
spring is coming
This syntax {2$$ and $$A|B|C}
will choose two values from the list:
A and B
A and C
B and A
B and C
C and A
C and B
__season__ is coming
Randomly selects a value from season.txt in your wildcard directory.
One prompt template can generate a family of prompts:
Funko pop {yoda|darth vader|jabba the hutt|princess leia|chewbacca|luke skywalker} figurine, made of {wood|plastic|metal|stone}, product studio shot, on a white background, diffused lighting, centered
Now, how about two characters at the same time:
Funko pop {2$$ and $$yoda|darth vader|jabba the hutt|princess leia|chewbacca|luke skywalker} figurine, made of {wood|plastic|metal|stone}, product studio shot, on a white background, diffused lighting, centered
# Add comments like this
Funko pop
{2$$ and $$
yoda
|darth vader
|jabba the hutt
|princess leia
|chewbacca
|luke skywalker
}
figurine, made of
{
wood
|plastic
|metal
|stone
}, product studio shot, on a white background, diffused lighting, centered
Use wildcards for re-usable lists:
# starwars.txt
yoda
darth vader
jabba the hutt
princess leia
chewbacca
luke skywalker
# material.txt
wood
plastic
metal
stone
# studio-shot.txt
product studio shot, on a white background, diffused lighting, centered
Now compose your prompt like this:
Funko pop __starwars__ figurine, made of __material__, __studio-shot__
and easily change it to:
Funko pop __celebrities__ figurine, made of __material__, __studio-shot__
Hat tip to publicprompts for the funko pop prompt.
The complete syntax can be found here.
pip install dynamicprompts
Additional functionality (see below) can be installed with this command:
pip install "dynamicprompts[magicprompt, attentiongrabber]"
Use the RandomPromptGenerator to create 5 random prompts using a given template:
from dynamicprompts.generators import RandomPromptGenerator
generator = RandomPromptGenerator()
generator.generate("I love {red|green|blue} roses", num_images=5)
>> ['I love blue roses', 'I love red roses', 'I love green roses', 'I love red roses', 'I love red roses']
If you want to use wildcards, instantiate a WildcardManager:
from pathlib import Path
from dynamicprompts.generators import RandomPromptGenerator
from dynamicprompts.wildcards.wildcard_manager import WildcardManager
wm = WildcardManager(Path("/path/to/wildcard/directory"))
generator = RandomPromptGenerator(wildcard_manager=wm)
Assuming you have a file called colours.txt in /path/to/wildcards/directory with one colour per line, e.g.
red
green
blue
purple
yellow
then
generator.generate("I love __colours__ roses", num_prompts)
>> ['I love pink roses', 'I love violet roses', 'I love white roses', 'I love violet roses', 'I love blue roses']
You can pass a random seed in the constructor for predictable outputs
generator = RandomPromptGenerator(wildcard_manager=wm, seed=999)
A list of seeds can also be provided in the generate
method.
generator.generate("I love __colours__ roses", num_prompts, seeds=[1,2,3])
In this example, a seed is provided for each prompt generated. The number of seeds must equal the number of prompts, i.e. len(seeds) == num_prompts
. If len(seeds) == 1
then the same seed is used for every image.
As a convenience, seeds
may also be an int value.
generator.generate("I love __colours__ roses", num_prompts=3, seeds=5)
is equivalent to:
generator.generate("I love __colours__ roses", num_prompts=3, seeds=[5, 5, 5])
Instead of generating random prompts from a template, combinatorial generation produces every possible prompt from the given string. For example:
I {love|hate} {New York|Chicago} in {June|July|August}
will produce:
I love New York in June
I love New York in July
I love New York in August
I love Chicago in June
I love Chicago in July
I love Chicago in August
I hate New York in June
I hate New York in July
I hate New York in August
I hate Chicago in June
I hate Chicago in July
I hate Chicago in August
If a __wildcard__
is provided, then a new prompt will be produced for every value in the wildcard file. For example:
My favourite season is __seasons__
will produce:
My favourite season is Summer
My favourite season is August
My favourite season is Winter
My favourite season is Sprint
from dynamicprompts.generators import CombinatorialPromptGenerator
generator = CombinatorialPromptGenerator()
generator.generate("I love {red|green|blue} roses", max_prompts=5)
>> ['I love red roses', 'I love green roses', 'I love blue roses']
Notice that only 3 prompts were generated, even though we requested 5. Since there are only three options, i.e. red, green, and blue, only 3 unique prompts can be created. num_prompts
in this case acts as an upper bound. Combinatorial generation can very quickly produce many more prompts than you intended. num_prompts
is a safeguard to ensure that you don't accidentally produced thousands or tens of thousands of prompts.
Consider this template:
My favourite colours are __colours__, __colours__, and __colours__
If colours.txt contains 10 different colours, a combinatorial enumeration of that template will create 10 * 10 * 10 = 1000
different prompts. e.g.
My favourite colours are red, green, and blue
My favourite colours are red, green, and yellow
My favourite colours are red, green, and purple
My favourite colours are red, blue, and yellow
My favourite colours are red, blue, and purple
...
Using Gustavosta's MagicPrompt model, automatically generate new prompts from the input. Trained on 80,000 prompts from Lexica.art, it can help give you interesting new prompts on a given subject. Here are some automatically generated variations for "dogs playing football":
dogs playing football, in the streets of a japanese town at night, with people watching in wonder, in the style of studio ghibli and makoto shinkai, highly detailed digital art, trending on artstation
dogs playing football, in the background is a nuclear explosion. photorealism. hq. hyper. realistic. 4 k. award winning.
dogs playing football, in the background is a nuclear explosion. photorealistic. realism. 4 k wideshot. cinematic. unreal engine. artgerm. marc simonetti. jc leyendecker
This is compatible with the wildcard syntax described above.
from dynamicprompts.generators import RandomPromptGenerator
from dynamicprompts.generators.magicprompt import MagicPromptGenerator
generator = RandomPromptGenerator()
magic_generator = MagicPromptGenerator(
generator,
device=..., # Torch device specifier (int, string, torch.device)
)
num_prompts = 5
generator.generate("I love {red|green|blue} roses", num_prompts)
>> ['I love red roses trending on artstation #vividart #pixiv', 'I love red roses trending on artstation artwork', 'I love blue roses breakfast club, cute, intricate, highly detailed, digital painting, artstation, concept art, smooth, sharp focus, illustration, unreal engine 5, 8 k, art by artgerm and greg rutkowski and alphonse mucha', 'I love green roses I love green flowers, smile, Tristan Eaton, victo ngai, artgerm, RHADS, ross draws', 'I love red roses smile, Tristan Eaton, victo ngai, artgerm, RHADS, ross draws']
The first time you use it, the model is downloaded. It is approximately 500mb and so will take some time depending on how fast your connection is. It will also take a few seconds on first activation as the model is loaded into memory. Note, if you're low in VRAM, you might get a Cuda error. My GPU uses less than 8GB by YMMV.
Magic Prompt is not available by default, you need to install it as follows:
pip install "dynamicprompts[magicprompt]"
There a few alternatives to Gustavosta's model available. You can try:
magic_generator = MagicPromptGenerator(generator, "AUTOMATIC/promptgen-lexart")
magic_generator = MagicPromptGenerator(generator, "AUTOMATIC/promptgen-majinai-safe")
magic_generator = MagicPromptGenerator(generator, "AUTOMATIC/promptgen-majinai-unsafe")
You can find a longer list here Note that each model requires a download of large model files.
Use the lexica.art API to create random prompts. Useful if you're looking for inspiration, or are simply too lazy to think of your own prompts. When this option is selected, the template is used as a search string. For example, prompt "Mech warrior" might return:
A large robot stone statue in the middle of a forest by Greg Rutkowski, Sung Choi, Mitchell Mohrhauser, Maciej Kuciara, Johnson Ting, Maxim Verehin, Peter Konig, final fantasy , 8k photorealistic, cinematic lighting, HD, high details, atmospheric,
a beautiful portrait painting of a ( ( ( cyberpunk ) ) ) armor by simon stalenhag and pascal blanche and alphonse mucha and nekro. in style of digital art. colorful comic, film noirs, symmetry, brush stroke, vibrating colors, hyper detailed. octane render. trending on artstation
symmetry!! portrait of a robot astronaut, floral! horizon zero dawn machine, intricate, elegant, highly detailed, digital painting, artstation, concept art, smooth, sharp focus, illustration, art by artgerm and greg rutkowski and alphonse mucha, 8 k
from dynamicprompts.generators import RandomPromptGenerator
from dynamicprompts.generators.feelinglucky import FeelingLuckyGenerator
generator = RandomPromptGenerator()
lucky_generator = FeelingLuckyGenerator(generator)
num_prompts = 5
lucky_generator.generate("I love {red|green|blue} roses", num_prompts)
>> ['“ guns and roses ” ', '🌹🥀🏜. 🌌🌠⭐. 💯. ', 'tattoo design, stencil, beautiful japanese girls face, roses and ivy surrounding by artgerm, artgerm, cat girl, anime ', 'rose made of glass dramatic lighting', 'a wireframe render of a red rose']
If you are using Automatic1111 or a similar frontend to Stable Diffusion that uses attention syntax, e.g. (some text:1.4)
, AttentionGenerator will randomly add attention to various phrases in your prompt. This injects a small amount of randomness into your prompt.
from dynamicprompts.generators import RandomPromptGenerator
from dynamicprompts.generators.attentiongenerator import AttentionGenerator
generator = RandomPromptGenerator()
attention_generator = AttentionGenerator(generator)
prompt = "a portrait an anthropomorphic panda mage casting a spell, wearing mage robes, landscape in background, cute, dnd character art portrait, by jason felix and peter mohrbacher, cinematic lighting"
attention_generator.generate(prompt, num_prompts=1)
>> ['a portrait an anthropomorphic panda mage casting a spell, wearing (mage robes:0.77), landscape in background, cute, dnd character art portrait, by jason felix and peter mohrbacher, cinematic lighting']
You may get better results with AttentionGenerator by installing the spacy
NLP library. Use this command to install it:
pip install spacy
When Spacy is available, an NLP model will automatically be downloaded on first use.
If the standard template language is not sufficient for your needs, you can try the Jinja2 generator. Jinja2 templates have familiar programming constructs such as looping, conditionals, variables, etc. Youcan find a guide on using Jinja2 templates with Dynamic Prompts, here. Here is the minimal code you need to instantiate Jinja2 generator.
from dynamicprompts.generators import JinjaGenerator
generator = JinjaGenerator()
generator.generate("I love {red|green|blue} roses", num_images=5)
template = """
{% for colour in ['red', 'blue', 'green'] %}
{% prompt %}I love {{ colour }} roses{% endprompt %}
{% endfor %}
"""
generator.generate(template)
>> ['I love red roses', 'I love blue roses', 'I love green roses']
You can find the complete syntax guide here
To address potential syntax clashes with other tools it is possible to change various tokens. Instead of {red|green|blue}
you can configure the library to use the <
>
pair instead, e.g. <red|green|blue>
. You can also change the __
used in wildcards. So instead of __colours__
, you can configure wildcards to use **
, e.g. **colours**
from dynamicprompts.generators import RandomPromptGenerator
from dynamicprompts.parser.config import ParserConfig
parser_config = ParserConfig(variant_start="<", variant_end=">", wildcard_wrap="**")
generator = RandomPromptGenerator(parser_config=parser_config)
You can bootstrap your wildcard library by using our pre-existing collections. You'll find just under 80,000 wildcards divided into 1900 files. Feel free to pick and choose or take them in their entirety.
Dynamic Prompts has been used in:
FAQs
Dynamic prompts templating library for Stable Diffusion
We found that dynamicprompts demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 2 open source maintainers collaborating on the project.
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