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datasets: |
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- gozfarb/ShareGPT_Vicuna_unfiltered |
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# Convert tools |
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https://github.com/practicaldreamer/vicuna_to_alpaca |
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# Training tool |
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https://github.com/oobabooga/text-generation-webui |
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ATM I'm using 2023.05.04v0 of the dataset and training full context. |
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# Notes: |
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So I will only be training 1 epoch, as full context 30b takes so long to train. |
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This 1 epoch will take me 8 days lol but luckily these LoRA feels fully functinal at epoch 1 as shown on my 13b one. |
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Also I will be uploading checkpoints almost everyday. I could train another epoch if there's enough want for it. |
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# How to test? |
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1. Download LLaMA-30B-HF: https://huggingface.co/Neko-Institute-of-Science/LLaMA-30B-HF |
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2. Replace special_tokens_map.json and tokenizer_config.json using the ones on this repo. |
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3. Rename LLaMA-30B-HF to vicuna-30b |
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4. Download the checkpoint-xxxx you want and put it in the loras folder. |
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5. Load ooba: ```python server.py --listen --model vicuna-30b --load-in-8bit --chat --lora checkpoint-xxxx``` |
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6. Instruct mode: Vicuna-v1, ooba will load Vicuna-v0 by defualt |
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# Want to see it Training? |
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https://wandb.ai/neko-science/VicUnLocked/runs/vx8yzwi7 |