Text Generation
Transformers
Safetensors
mistral
Not-For-All-Audiences
nsfw
Inference Endpoints
text-generation-inference
Edit model card

exl2 version of Norquinal/PetrolLM-CollectiveCognition
used dataset : wikitext
quantized by IHaBiS

command : python convert.py -i models/Norquinal_PetrolLM-CollectiveCognition -o Norquinal_PetrolLM-CollectiveCognition-temp -cf Norquinal_PetrolLM-CollectiveCognition-6bpw-h8-exl2 -c 0000.parquet -l 4096 -b 6 -hb 8 -ss 4096 -m Norquinal_PetrolLM-CollectiveCognition_measurement.json

Below this sentence is original model card

What is PetrolLM-Claude-Chat?

PetrolLM-Claude-Chat is the CollectiveCognition-v1.1-Mistral-7B model with the PetrolLoRA applied.

The dataset (for the LoRA) consists of 2800 samples, with the composition as follows:

  • AICG Logs (~34%)
  • PygmalionAI/PIPPA (~33%)
  • Squish42/bluemoon-fandom-1-1-rp-cleaned (~29%)
  • OpenLeecher/Teatime (~4%)

These samples were then back-filled using gpt-4/gpt-3.5-turbo-16k or otherwise converted to fit the prompt format.

Prompt Format

The model uses the following prompt format: ```

style: roleplay characters: [char]: [description] summary: [scenario]

Format: [char]: [message] Human: [message] ```

Use in Text Generation Web UI

Install the bleeding-edge version of transformers from source:

pip install git+https://github.com/huggingface/transformers

Or, alternatively, change model_type in config.json from mistral to llama.

Use in SillyTavern UI

As an addendum, you can include one of the following as the Last Output Sequence:

Human: In your next reply, write at least two paragraphs. Be descriptive and immersive, providing vivid details about {{char}}'s actions, emotions, and the environment.
{{char}}:
{{char}} (2 paragraphs, engaging, natural, authentic, descriptive, creative):
[System note: Write at least two paragraphs. Be descriptive and immersive, providing vivid details about {{char}}'s actions, emotions, and the environment.]
{{char}}:

The third one seems to work the best. I would recommend experimenting with creating your own to best suit your needs.

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Datasets used to train IHaBiS/PetrolLM-CollectiveCognition-6bpw-h8-exl2