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PROUDLY PRESENTS
Mistral-Small-NovusKyver-iMat-GGUF
Quantization Note: For smaller sizes (i.e. Q3/IQ3 and below) a repetition penalty of 1.05-1.15 is recommended.
Quantized with love from fp32.
Original model author: envoid
- Importance Matrix calculated using groups_merged.txt
- 105 chunks
- n_ctx=512
- Calculation uses fp32 precision model weights
Original model README here and below:
Warning this model can be a bit unpredictable regarding adult content.
Mistral-Small-NovusKyver started out as mistralai/Mistral-Small-Instruct-2409
I ran a fairly strong LoRA on it using a private raw-text dataset. The results were 'overcooked' so I did a 50/50 SLERP merge back onto the original model and this is the result of that merge.
Use Cases:
The output is definitely more interesting. As an assistant with a system message such as "You will provide the user with interesting and thought provoking responses."
It also has interesting output in some RP scenarios with the following caveats:
-Any mention of consent or NSFW in the prompt will cause it to run away with producing adult content.
-It tends to run away with its turn when using a highly structured prompt while giving short, boring responses, with a relatively minimalist prompt.
-Creative writing by instruct.
It utilises the Mistral Instruct prompt format.
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Model tree for Quant-Cartel/Mistral-Small-NovusKyver-iMat-GGUF
Base model
Envoid/Mistral-Small-NovusKyver