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WizardVicunaLM

Wizard's dataset + ChatGPT's conversation extension + Vicuna's tuning method

I am a big fan of the ideas behind WizardLM and VicunaLM. I particularly like the idea of WizardLM handling the dataset itself more deeply and broadly, as well as VicunaLM overcoming the limitations of single-turn conversations by introducing multi-round conversations. As a result, I combined these two ideas to create WizardVicunaLM. This project is highly experimental and designed for proof of concept, not for actual usage.

Benchmark

Approximately 7% performance improvement over VicunaLM

Detail

gptordie

The questions presented here are not from rigorous tests, but rather, I asked a few questions and requested GPT-4 to score them. The models compared were ChatGPT 3.5, WizardVicunaLM, VicunaLM, and WizardLM, in that order.

gpt3.5 wizard-vicuna-13b vicuna-13b wizard-7b link
Q1 95 90 85 88 link
Q2 95 97 90 89 link
Q3 85 90 80 65 link
Q4 90 85 80 75 link
Q5 90 85 80 75 link
Q6 92 85 87 88 link
Q7 95 90 85 92 link
Q8 90 85 75 70 link
Q9 92 85 70 60 link
Q10 90 80 75 85 link
Q11 90 85 75 65 link
Q12 85 90 80 88 link
Q13 90 95 88 85 link
Q14 94 89 90 91 link
Q15 90 85 88 87 link
91 88 82 80

Principle

We adopted the approach of WizardLM, which is to extend a single problem more in-depth. However, instead of using individual instructions, we expanded it using Vicuna's conversation format and applied Vicuna's fine-tuning techniques.

Turning a single command into a rich conversation is what we've done here.

After creating the training data, I later trained it according to the Vicuna v1.1 training method.

Detailed Method

First, we explore and expand various areas in the same topic using the 7K conversations created by WizardLM. However, we made it in a continuous conversation format instead of the instruction format. That is, it starts with WizardLM's instruction, and then expands into various areas in one conversation using ChatGPT 3.5.

After that, we applied the following model using Vicuna's fine-tuning format.

Training Process

Trained with 8 A100 GPUs for 35 hours.

Weights

You can see the dataset we used for training and the 13b model in the Hugging Face.

Conclusion

If we extend the conversation to gpt4 32K, we can expect a dramatic improvement, as we can generate 8x more, more accurate and richer conversations.

prompt

This model was trained with Vicuna 1.1v, so it performs best when used as shown below.

USER: What is 4x8?
ASSISTANT:

Reactions

Reporting that works with AutoGPT

link

Report of improved abilities in not only Korean, but also Chinese and Japanese.

Although it was tuned 100% for English, it's curious how the language abilities for other countries, such as Korean, Chinese, and Japanese, have been enhanced even though their share should have decreased.
link1
link2

Report of enhanced coding skills.

link

Report of strengthened consistency during conversations.

link

Thanks to Prompt Engineering for the great video 🙏

Alt text

License

The model is licensed under the LLaMA model, and the dataset is licensed under the terms of OpenAI because it uses ChatGPT. Everything else is free.

Author

JUNE LEE - He is active in Songdo Artificial Intelligence Study and GDG Songdo.