Flux Pseudo Negative Prompt. ComfyUI Custom Node with workflow. No hit to gen times!
Details
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Model description
FluxPseudoNegative: A ComfyUI Node for Converting Negative Prompts to Positive Attributes
FluxPseudoNegative is an advanced custom node for ComfyUI that converts negative prompts into positive ones. It's designed to enhance prompt engineering for image generation models that don't natively support negative prompts or where using negative prompts significantly increases generation time. So instead of hacking CFG we simply invert your negative words and find their antonyms!
There are some promising techniques to get negative prompts working in Flux that will probably render this idea completely useless... But since I had already done the work I decided to complete at least a minimally viable node and ship it.
Features
Multiple antonym-finding strategies:
Custom phrase handling
WordNet
NLTK
Hugging Face Transformers
Comprehensive phrase handling for multi-word concepts
Sentiment analysis for strength adjustment
Concept expansion using word embeddings
Optional ConceptNet integration for expanded antonyms
Multiple processing complexity levels: basic, advanced, expert
Optional LLM integration for unresolved terms or full prompt conversion
User-customizable antonyms and system prompts
Caveats
Its not meant to be perfect! Its an imperfect solution to the issues of using CFG making the generation time double more or less.
For now I would NOT use conceptnet expansion. Its not working as intended.
A word like Gross has multiple meanings and the correct one cannot be inferred. ('disgusting' is one meaning, and can also mean the 'total' in reference to taxes for instance). This can result in unexpected return words
If there is a concept like "Brown Horse" in the negative it may not work well on that. Again, this doesn't work for everything.
Installation
- Install via Git option using ComfyUI Manager. Or Clone this repository into your ComfyUI
custom_nodesdirectory:
git clone https://github.com/yourusername/ComfyUI-FluxPseudoNegativePrompt.git
- Install the required dependencies:
pip install nltk textblob requests
- Download the required NLTK data: (it is also done automatically when used)
import nltk
nltk.download('averaged_perceptron_tagger')
nltk.download('punkt')
nltk.download('wordnet')
Usage
In the ComfyUI interface, look for the "Flux Pseudo Negative" node under the "prompt_processing" category.
Connect the node to your workflow:
Input your negative prompt
Input a positive prompt to augment
Adjust the strength parameter (0.0 to 1.0)
Select the processing complexity
(Optional) Provide custom antonyms in the format "word:antonym" (one per line)
(Optional) Enable ConceptNet integration
(Optional) Enable LLM integration (full or fallback)
(Optional) Provide a custom system prompt for LLM integration
The node will output:
A modified positive prompt incorporating the converted negative concepts
(If LLM integration is enabled) An LLM input string for further processing
Parameters
negative_prompt: The negative prompt to convertpositive_prompt: An optional positive prompt to augmentstrength: The strength of the antonym influence (0.0 to 1.0)complexity: The processing complexity level (basic, advanced, expert)custom_antonyms: Optional custom antonym mappingsuse_conceptnet: Enable ConceptNet integration for concept expansionuse_llm_full: Enable full LLM-based prompt conversionuse_llm_fallback: Enable LLM-based fallback for unresolved termscustom_system_prompt: Custom system prompt for LLM integration
File Structure
__init__.py: Initializes the node for ComfyUIFluxPseudoNegative.py: Contains the mainFluxPseudoNegativeNodeclassflux_utils.py: Contains thePhraseHandlerclass andstrength_map.
Customization
You can customize the phrase mappings and strength map by modifying the flux_utils.py file. You can also load custom antonym dictionaries, in the text box or from a text file one per line. You can also specify a custom LLM system prompt to integrate your negative prompt into for conversion in a 3rd party LLM node (the node comes packaged with 3 already tested/validated).
Note
This node requires significant computational resources, especially when using advanced NLP features and models. Performance may vary based on your system capabilities and the complexity of the input prompts.










