### This the config.yml for ABC_Books/test001 ### models: ### Models that contribute a large 128K context window ### - model: CallComply/zephyr-7b-beta-128k parameters: weight: 0.1154 density: 0.9 - model: Nitral-Archive/HerculeanSea-7b-128k parameters: weight: 0.1154 density: 0.9 - model: NousResearch/Yarn-Mistral-7b-128k parameters: weight: 0.1154 density: 0.9 ### Models with finetune training on occult knownledge ### - model: teknium/llama-deus-7b-v3-lora-merged parameters: weight: 0.0769 density: 0.9 - model: teknium/Hermes-Trismegistus-Mistral-7B parameters: weight: 0.0769 density: 0.9 - model: alexandrabenamar/Mistral-7B-Instruct-v0.2-Magic parameters: weight: 0.0769 density: 0.9 - model: tarotscientist/llama-2-7b-tarotreader parameters: weight: 0.0769 density: 0.9 - model: teknium/Mistral-Trismegistus-7B parameters: weight: 0.0769 density: 0.9 ### Talkative model with a large context window ### - model: Norquinal/Mistral-7B-storywriter parameters: weight: 0.0769 density: 0.9 ### Models with finetune training to be uncensored use some crass diction ### - model: Undi95/BigL-7B parameters: weight: 0.0384 density: 0.9 - model: Undi95/LewdMistral-7B-0.2 parameters: weight: 0.0385 density: 0.9 - model: Undi95/MistRP-Dolphin-7B parameters: weight: 0.0385 density: 0.9 - model: Undi95/Mistral-ClaudeLimaRP-v3-7B parameters: weight: 0.0385 density: 0.9 - model: Undi95/Toppy-M-7B parameters: weight: 0.0385 density: 0.9 ### The use of DARES has been shown to “Densify” standard model lending to a more robust model when paired with a high “density:” numbers ### merge_method: dare_linear ### This model best exemplifies the closest match to all of the features needed in the final model ### base_model: MrRobotoAI/Hathor-v4.1 parameters: ### When “densifing” models the model size tends to grow without normalize normalize: true dtype: float16