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Add base_model metadata (#1)
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metadata
language:
  - en
pipeline_tag: text-generation
library_name: transformers
tags:
  - LLM
  - Universal-NER
  - NER
  - 4bit
inference: false
base_model: Universal-NER/UniNER-7B-all

image

Quantized version of Universal-NER/UniNER-7B-all

Universal-NER/UniNER-7B-all quantized to 4bit with GPTQ and stored with 1GB shard size.

Model Description

The model Universal-NER/UniNER-7B-all was quantized to 4bit, group_size 128, and act-order=True with auto-gptq integration in transformers (https://huggingface.co/blog/gptq-integration).

Evaluation

TODO

Prompt template

Prompt template is the same as for the full precision model:

prompt_template = """A virtual assistant answers questions from a user based on the provided text.
USER: Text: {input_text}
ASSISTANT: I’ve read this text.
USER: What describes {entity_name} in the text?
ASSISTANT:
"""

Usage

It is recommended to format input according to the prompt template mentioned above during inference for best results.

prompt = prompt_template.format_map({"input_text": "Cologne is a great city in Germany - maybe even the greatest ;)", "entity_name": "city"})

The model is small enough to be loaded in free-tier Colab with a T4 GPU: https://gist.github.com/sebastianschramm/9903b2714e30d870d7e1e097c6b5c9e3

License

The original full precision model and its associated data are released under the CC BY-NC 4.0 license. Hence, the same license applies for the 4bit version.