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PROUDLY PRESENTS
L3.1-8B-Llamoutcast-exl2-longcal
Quantized using 115 rows of 8192 tokens from the default ExLlamav2-calibration dataset.
Branches:
main
--measurement.json
8b8h
-- 8bpw, 8bit lm_head6b8h
-- 6bpw, 8bit lm_head4b6h
-- 4bpw, 6bit lm_head2.25b6h
-- 2.25bpw, 6bit lm_head
Original model link: Envoid/L3.1-8B-Llamoutcast
Quanter's notes
As apparently the default dataset is supposed to be better in nearly all situations, I decided to start quanting using that in addition to my standard rpcal-fare. I'd appreciate real-world tests to confirm the hypothesis, though, so please leave a comment if you find this mode of quanting better than rpcal.
Original model README below.
Warning: this model is utterly cursed.
Llamoutcast
This model was originally intended to be a DADA finetune of Llama-3.1-8B-Instruct but the results were unsatisfactory. So it received some additional finetuning on a rawtext dataset and now it is utterly cursed.
It responds to Llama-3 Instruct formatting.
Trained using qlora-pipe.