--- license: cc-by-nc-4.0 base_model: - Netrve/Miqu-PlayMaid-70B-v0.1 - ShinojiResearch/Senku-70B library_name: transformers tags: - not-for-all-audiences - nsfw - mergekit - merge --- # aranea-tenebris-120b-v1.0 **aka Netrve/Miqu-PlayMaid-70B-v0.1 + ShinojiResearch/Senku-70B** Model merge for uncensored creative writing and rp ![image/png](https://huggingface.co/divinetaco/aranea-tenebris-120b-v1.0/resolve/main/aranea-tenebris.png) A [mergekit](https://github.com/arcee-ai/mergekit) frankenmerge based on [Netrve/Miqu-PlayMaid-70B-v0.1](https://huggingface.co/Netrve/Miqu-PlayMaid-70B-v0.1) with interleaved layers of [ShinojiResearch/Senku-70B](https://huggingface.co/ShinojiResearch/Senku-70B). This was the top performing model from a second series of merge experiments to create a highly coherant creative writing and rp model. Tests consisted of a series of private DnD scenario benchmarks, with manual comparison of the most promising merges. A number of different base models, interleave models and layer offsets were compared. This model outperformed a number of other popular 70B+ models and merges in both creativity and coherancy tests. It was (briefly) compared to Mixtral 8x22B running 2/3/4 experts. - Usable context: ~32768 - Recommended prompt format: Alpaca - Layers: 137 ### Quantization llama.cpp [imatrix.dat](./imatrix.dat) exllamav2 [measurement.json](./measurement.json) Will upload a few quants when bandwidth permits. ### Testing Two different writing styles were considered for each testing scenario: - Completions for 3rd person narration. No character role was assumed. - Completions for 1st and 2nd person turn based (out-of-order) rp. A character role was assumed by the model, but narration of minor characters and events was encouraged. Tests assumed a mature audience, but a range of scenarios were constructed. Thematic inconsistancy or bias in character behaviour was penalized heavily. Models showing the following were penalized during manual comparison: - Consistently short responses. - Laziness or readily gave up on solving a character problem. - Overly malleable, where characters could not hold opinions or beliefs. - Passiveness or an inability to drive the narrative. - Persistent repeats. Bad merges tend to latch onto and reuse specific keywords. - Ignoring or missing obvious scenario solutions. - Impersonating other major characters out of turn during rp tests. - Faliure to follow a character's description. This criteria is pretty broad, and could include things like character skills, refusals etc. - Major inconsistencies in scenes or recall. Note - invention of thematically consistant detail was encouraged. ### Interesting observations from benchmarking - 10 layer interleave stride with a 20 layer interleave width consistently outperformed alternative combinations for coherancy. - 8 layer interleave stride with a 16 layer interleave width consistantly outperformed alternative combinations for creativity whilst remaining reasonably coherant. - Regular stride intervals are not optimal. In particular offsetting the first or last set of base models offets often improved metrics. - Goliath-120B is still a good standard for coherancy below 4096 context. A few miqu-1 merges are comparable, but testing found a small amount coherancy could be sacrificed for notable creativity improvements.