Edit model card

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.

Downloads last month
18
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Model tree for ccore/opt-350m-open-data-understanding

Base model

facebook/opt-350m
Finetuned
(106)
this model

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