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PROUDLY PRESENTS
MN-12B-Tarsus-exl2-longcal
Quantized using 115 rows of 8192 tokens from the default ExLlamav2-calibration dataset.
Branches:
main
--measurement.json
8b8h
-- 8bpw, 8bit lm_head6b6h
-- 6bpw, 6bit lm_head4b6h
-- 4bpw, 6bit lm_head3b6h
-- 3bpw, 6bit lm_head2.25b6h
-- 2.25bpw, 6bit lm_head
Original model link: Envoid/MN-12B-Tarsus
Original model README below.
CAUTION: This model was finetuned on a corpus that includes adult content and may produce mature content without warning.
MN-12B-Tarsus
Is a full-weight finetune of mistralai/Mistral-Nemo-Instruct-2407
Which underwent several intermediate steps.
This finetune was made with chatting/roleplaying via SillyTavern in mind and thus all of the testing was done there, with the goals being to:
-Reduce shiver-slop
-Make the model more conversationally proactive
-Give it a more human-like output (i.e. less gratuitous purple prose)
-Reducing overall positivity bias
It still responds well to Mistral-Instruct formatting.
The results are imperfect and its assistant capabilities suffered somewhat as a result but in quick testing it definitely seems to have achieved all of the goals to varying degrees.
It sometimes fumbles with tokens in odd places so it's certainly not perfect. Possibly best used as merge-fodder.
Trained using qlora-pipe