WizardLM-Uncensored-SuperCOT-StoryTelling-30B-SuperHOT-8K-GPTQ

Maintainer: TheBloke

Total Score

47

Last updated 9/6/2024

👁️

PropertyValue
Run this modelRun on HuggingFace
API specView on HuggingFace
Github linkNo Github link provided
Paper linkNo paper link provided

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Model overview

The WizardLM-Uncensored-SuperCOT-StoryTelling-30B-GPTQ is an AI model created by TheBloke that combines the capabilities of several large language models. It is a 30 billion parameter model that has been trained on a diverse dataset to excel at language understanding, reasoning, and creative writing.

Similar models include the WizardLM Uncensored SuperCOT Storytelling 30B - GPTQ and the WizardLM-33B-V1-0-Uncensored-SuperHOT-8K-GPTQ, which also leverage the SuperHOT technique to expand the context size.

Model inputs and outputs

The WizardLM-Uncensored-SuperCOT-StoryTelling-30B-GPTQ is a text-to-text model, meaning it takes in text prompts and generates coherent, contextual responses.

Inputs

  • Text prompts of varying lengths, from a few words to several paragraphs

Outputs

  • Fluent, human-like text responses that demonstrate strong language understanding, reasoning, and creative writing capabilities

Capabilities

The WizardLM-Uncensored-SuperCOT-StoryTelling-30B-GPTQ is a highly capable model that can engage in open-ended dialogue, answer questions, and generate creative content like stories and worldbuilding. It has been trained to have in-depth knowledge on a wide range of topics and to provide thoughtful, nuanced responses.

What can I use it for?

The model's versatility makes it useful for a variety of applications, such as:

  • Chatbots and virtual assistants that can engage in natural conversations
  • Creative writing assistants to help generate stories, dialogue, and worldbuilding
  • Question-answering systems that can provide detailed and informative responses
  • Research and analysis tools that can draw insights from large amounts of text data

Things to try

An interesting aspect of the WizardLM-Uncensored-SuperCOT-StoryTelling-30B-GPTQ is its ability to generate highly detailed and imaginative responses when prompted with open-ended creative writing tasks. For example, you could try giving it a simple prompt like "Describe a fantasy world" and see the rich, evocative description it produces.



This summary was produced with help from an AI and may contain inaccuracies - check out the links to read the original source documents!

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