--- language: - en license: apache-2.0 library_name: transformers tags: - moe - moah - mod datasets: - Locutusque/UltraTextbooks --- # Model Card for Model ID ## Model Details ### Model Description MoM: Mixture of Mixture This Model is a first test to combine [Jamba](https://huggingface.co/ai21labs/Jamba-v0.1) architecture with bf16 bits linear layers, mixture of attention head and mixture of depth. The goal is to developpe and test if this kind of architectures have not too much quality loss for a fast inference. - **Model type:** Mixture of attention head mixture of depth and mixture of expert bf16 linear layers - **License:** Apache licence 2.0 ### Model Sources [optional] - **Repository:** https://github.com/ostix360/optimized-LLM ## How to Get Started with the Model This model has a generation problem because of a softmax application in the mod process If you want to test this model please look at this repo at this [commit](https://github.com/ostix360/optimized-LLM/tree/796cfe43cf16461b92102cf0f41e8960cd91340b) ## Training Details - **wandb**: [training detail](https://wandb.ai/ostix360/Mixture%20of%20mixture%20(mod,%20moah%20moe)/runs/6mpcy0ck) ### Training Data We use the first ~0.5B tokens of Locutusque/UltraTextbooks to train this model ### Training Procedure We use adam-8 bits with default betas and epsilon values #### Preprocessing [optional] The data fit the model max length i.e. 512 tokens #### Training Hyperparameters Please look at the wandb metadata to see the hyperparameters or the train.py file in the repo ## Technical Specifications ### Compute Infrastructure #### Hardware - one 4070 ti GPU #### Software - pytorch, transformers etc