# Pico-OpenLAiNN-500M-GGUF 🤗 Hey there fellow researchers, developers, and AI enthusiasts! Today I'm releasing a new, biggest Pico-OpenLAiNN Model. This LLM was trained on the full 32B tokens that the entire Open-PicoLAiNN family is trained on. These are the GGUF quants of the models. For the original models, you can find them [here](https://huggingface.co./UUFO-Aigis/Pico-OpenLAiNN-500M) ## Models Overview - **Pico-OpenLAiNN-100**: The smallest of the bunch, this 100M parameter model is perfect for quick experiments and applications where computational resources are *extremely* limited. - **Pico-OpenLAiNN-250**: This is the middle child of the PicoLAiNN family, it's still tiny at 250M parameters but is more capable than the 100M parameter model. - **Pico-OpenLAiNN-500**: My current "Heavyweight" Model, this model has 500M parameters and is the most capable of the Pico-OpenLAiNN models. ## Pretraining Details This specific version of Pico LAiNN was trained on just 32B tokens of the fineweb dataset. ## Other information: - **Compatibility**: Built to be compatible with existing projects that use LLAMA 2's tokenizer and architecture. - **Ease of Use**: No need to reinvent the wheel. These models are ready to be plugged into your applications. - **Open Source**: Fully open source, so you can tweak, tune, and twist them to your heart's content. # Benchy :3 | Tasks | Value | |Stderr| |--------------|------:|---|-----:| |arc_challenge | 0.1903|± | 0.115| |arc_easy | 0.4617|± |0.0102| |boolq | 0.6034|± |0.0086| |hellaswag | 0.3400|± |0.0047| |lambada_openai| 0.3670|± |0.0067| |piqa | 0.6795|± |0.0109| |winogrande | 0.4925|± |0.0141| ## Future Plans - **More Models**: I'm currenetly training the bigger siblings of this models, including a 1B parameter version and beyond. 2-4 Billion parameter versions are planned. These will be Released as OpenLAiNN. - **New architecture**: This is still up in the air and I'm still developing it, and will release if I deem it to be actually useful, so stay tuned, this will likely be named FLaRE-LAiNN. - **Paper**: A detailed paper will be made available for those interested in the details. ## Credit Where Credit's Due If you find these models useful and decide to use these models, a link to this repository would be highly appreciated. I am a one man show running this. Thanks 🤗 ## Contact If you have questions, Please reach out to me at urlsys32dll@gmail.com

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