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OPT_350_open_data_understanding

Description

This model has been trained to understand and respond to any content inserted after the [PAPER] tag. It uses advanced language modeling techniques to understand the context, structure, and underlying goals of the input text.

How to use

To interact with this template, place your text after the [PAPER] tag. The model will process the text and respond accordingly. For example:

[PAPER] Your text here...

Example

[PAPER] We present a scalable method to build a high-quality instruction-following language model...

The model will understand and respond to your text according to its context and content.

Comprehension Sections

[UNDERSTANDING]

This section provides a detailed analysis and decomposition of the inserted text, facilitating the understanding of the content.

[QUESTIONS AND ANSWERS]

This section addresses questions and answers that could arise based on the text provided.

[OBJECTION AND REPLY]

This section addresses any objections and responses that could arise from analysis of the text.

Common questions

  • What can this model do?

    • This model can understand and respond to any text placed after the [PAPER] tag.
  • Is a specific format necessary?

    • No, the model is quite flexible regarding the text format.
  • How does this model perform?

    • The model outperforms other LLaMa-based models on the Alpaca leaderboard, demonstrating a highly effective alignment.

Warnings

  • This model was trained on a diverse corpus, but may still have bias or limitations.
  • Continuous validation of the model and its output is essential.

Contact and Support

For more information, visit Hugging Face.

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Inference API
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Finetuned from

Dataset used to train ccore/opt-350m-open-data-understanding