12 KiB
OpenWebUI Filters and Tools
Mirrored at Github: https://github.com/ProjectMoon/open-webui-filters
Documentation (HTML): https://agnos.is/projects/open-webui-filters/
Documentation (Gemini): gemini://agnos.is/projects/open-webui-filters/
My collection of OpenWebUI Filters and Tools.
So far:
- Checkpoint Summarization Filter: A work-in-progress replacement for the narrative memory filter for more generalized use cases.
- Memory Filter: A basic narrative memory filter intended for long-form storytelling/roleplaying scenarios. Intended as a proof of concept/springboard for more advanced narrative memory.
- GPU Scaling Filter: Reduce number of GPU layers in use if Ollama crashes due to running out of VRAM.
- Output Sanitization Filter: Remove words, phrases, or characters from the start of model replies.
- OpenStreetMap Tool: Tool for querying OpenStreetMap to look up address details and nearby points of interest.
Checkpoint Sumarization Filter
A new filter for managing context use by summarizing previous parts of the chat as the conversation continues. Designed for both general chats and narrative/roleplay use. Work in progress.
Configuration
There are currently 4 settings:
- Summarizer Model: The model used to summarize the conversation as the chat continues. This must be a base model.
- Large Context Summarizer Model: If large context summarization is turned on, use this model for summarizing huge contexts.
- Summarize Large Contexts: If enabled, the filter will attempt to load the entire context into the large summarizer model for creating an initial checkpoint of an existing conversation.
- Wiggle Room: This is the amount of 'wiggle room' for estimating
a context shift. This number is subtracted from
num_ctx
for the purposes of determining whether or not a context shift has occurred.
Usage
In general, you should only need to specify the summarizer model and enable the filter on the OpenWebUI models that you want it to work on. Or even enable it globally. The filter works best when used from a new conversation, but it does have the (currently limited) ability to deal with existing conversations.
- When the filter detects a context shift in the conversation, it will summarize the pre-existing context. After that, the summary is appended to the system prompt, and old messages before summarization are dropped.
- When the filter detects the next context shift, this process is repeated, and a new summarization checkpoint is created. And so on.
If the filter is used in an existing conversation, it will summarize on the first time that it detects a context shift in the conversation:
- If there are enough messages that the conversation is considered "big," and large context summarization is disabled, all but the last 4 messages will be dropped to form the summary.
- If the conversation is considered "big," and large context summarization is enabled, then the large context model will be loaded to do the summarization, and the entire conversation will be given to it.
User Commands
There are some basic commands the user can use to interact with the filter in a conversation:
!nuke
: Deletes all summary checkpoints in the chat, and the filter will attempt to summarize from scratch the next time it detects a context shift.
Limitations
There are some limitations to be aware of:
- If you enable large context summarization, you need to make sure your system is capable of loading and summarizing an entire conversation.
- Handling of branching conversations and regenerated responses is currently rather messy. It will kind of work. There are some plans to improve this.
- If large context summarization is disabled, pre-existing large conversations will only summarize the previous 4 messages when the first summarization is detected.
- The filter only loads the most recent summary, and thus the AI might "forget" much older information.
Memory Filter
Superseded By: Checkpoint Summarization Filter
Super hacky, very basic automatic narrative memory filter for OpenWebUI, that may or may not actually enhance narrative generation!
This is intended to be a springboard for a better, more comprehensive filter that can coherently keep track(ish?) of plot and character developments in long form story writing/roleplaying scenarios, where context window length is limited (or ollama crashes on long context length models despite having 40 GB of unused memory!).
Configuration
The filter exposes two settings:
- Summarization model: This is the model used for extracting and
creating all of the narrative memory, and searching info. It must
be good at following instructions. I use Gemma 2.
- It must be a base model. If it's not, things will not work.
- If you don't set this, the filter will attempt to use the model in the conversation. It must still be a base model.
- Number of messages to retain: Number of messages to retain for the context. All messages before that are dropped in order to manage context length.
Ideally, the summarization model is the same model you are using for the storytelling. Otherwise you may have lots of model swap-outs.
The filter hooks in to OpenWebUI's RAG settings to generate embeddings and query the vector database. The filter will use the same embedding model and ChromaDB instance that's configured in the admin settings.
Usage
Enable the filter on a model that you want to use to generate stories. It is recommended, although not required, that this be the same model as the summarizer model (above). If you have lots of VRAM or are very patient, you can use different models.
User input is pre-processed to 'enrich' the narrative. Replies from the language model are analyzed post-delivery to update the story's knowlege repository.
You will see status indicators on LLM messages indicating what the filter is doing.
Do not reply while the model is updating its knowledge base or funny things might happen.
Function
What does it do?
- When receiving user input, generate search queries for vector DB based on user input + last model response.
- Search vector DB for theoretically relevant character and plot information.
- Ask model to summarize results into coherent and more relevant stuff.
- Inject results as contextual info for the model.
- After receiving model narrative reply, generate character and plot info and stick them into the vector DB.
Limitations and Known Issues
What does it not do?
- Handle conversational branching/regeneration. In fact, this will
pollute the knowledgebase with extra information!
- Bouncing around some ideas to fix this. Basically requires building a "canonical" branching story path in the database?
- Proper context "chapter" summarization (planned to change).
Work properly when switching conversations due to OpenWebUI limitations. The chat ID is not available on incoming requests for some reason, so a janky workaround is used when processing LLM responses.Fixed! (but still in a very hacky way)- Clear out information of old conversations or expire irrelevant data.
Other things to do or improve:
- Set a minimum search score, to prevent useless stuff from coming up.
- Figure out how to expire or update information about characters and events, instead of dumping it all into the vector DB.
- Improve multi-user handling. Should technically sort of work due to messages having UUIDs, but is a bit messy. Only one collection is used, so multiple users = concurrency issues?
- Block user input while updating the knowledgebase.
GPU Scaling Filter
This is a simple filter that reduces the number of GPU layers in use by Ollama when it detects that Ollama has crashed (via empty response coming in to OpenWebUI). Right now, the logic is very basic, just using static numbers to reduce GPU layer counts. It doesn't take into account the number of layers in models or dynamically monitor VRAM use.
There are three settings:
- Initial Reduction: Number of layers to immediately set when an Ollama crash is detected. Defaults to 20.
- Scaling Step: Number of layers to reduce by on subsequent crashes (down to a minimum of 0, i.e. 100% CPU inference). Defaults to 5.
- Show Status: Whether or not to inform the user that the conversation is running slower due to GPU layer downscaling.
Output Sanitization Filter
This filter is intended for models that often output unwanted
characters or terms at the beginning of replies. I have noticed this
especially with Beyonder V3 and related models. They sometimes output
a ":"
or "Name:"
in front of replies. For example, if system prompt is
"You are Quinn, a helpful assistant."
the model will often reply with
"Quinn:"
as its first word.
There is one setting:
- Terms: List of terms or characters to remove. This is a list, and in the UI, each item should be separated by a comma.
For the above example, the setting textbox should have :,Quinn:
in
it, to remove a single colon from the start of replies, and Quinn:
from the start of replies.
Other Notes
Terms are removed in the order defined by the setting. The filter loops through each term and attempts to remove it from the start of the LLM's reply.
OpenStreetMap Tool
Recommended models: Llama 3.1, Mistral Nemo Instruct.
A tool that can find certain points of interest (POIs) nearby a requested address or place.
There are currently five settings:
- User Agent: The custom user agent to set for OSM and Overpass Turbo API requests.
- From Header: The email address for the From header for OSM and Overpass API requests.
- Nominatim API URL: URL of the API endpoint for Nominatim, the reverse geocoding (address lookup) service. Defaults to the public instance.
- Overpass Turbo API URL: URL of the API endpoint for Overpass Turbo, for searching OpenStreetMap. Defaults to the public endpoint.
- Instruction Oriented Interpretation: Controls the level of detail in the instructions for interpreting results given to the LLM. By default, it gives detailed instructions. Turn this setting off if results are inconsistent, wrong, or missing.
The tool will not run without the User Agent and From headers set. This is because the public instance of the Nominatim API will block you if you do not set these. Use of the public Nominatim instance is governed by their terms of use.
The default API services are suitable for applications with a low volume of traffic (absolute max 1 API call per second). If you are running a production service, you should set up your own Nominatim and Overpass services with caching.
License
All filters are licensed under AGPL v3.0+. The code is free software, that you can run, redistribute, modify, study, and learn from as you see fit, as long as you extend that same freedom to others, in accordance with the terms of the AGPL. Make sure you are aware how this might affect your OpenWebUI deployment, if you are deploying OpenWebUI in a public environment!