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---
license: openrail
pipeline_tag: text-generation
library_name: transformers
language:
- zh
- en
---
## Original model card
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#### Description
GGUF Format model files for [This project](https://huggingface.co/argilla/CapybaraHermes-2.5-Mistral-7B).
### GGUF Specs
GGUF is a format based on the existing GGJT, but makes a few changes to the format to make it more extensible and easier to use. The following features are desired:
Single-file deployment: they can be easily distributed and loaded, and do not require any external files for additional information.
Extensible: new features can be added to GGML-based executors/new information can be added to GGUF models without breaking compatibility with existing models.
mmap compatibility: models can be loaded using mmap for fast loading and saving.
Easy to use: models can be easily loaded and saved using a small amount of code, with no need for external libraries, regardless of the language used.
Full information: all information needed to load a model is contained in the model file, and no additional information needs to be provided by the user.
The key difference between GGJT and GGUF is the use of a key-value structure for the hyperparameters (now referred to as metadata), rather than a list of untyped values.
This allows for new metadata to be added without breaking compatibility with existing models, and to annotate the model with additional information that may be useful for
inference or for identifying the model.
### inference
User: Tell me story about what is an quantization and what do we need to build.
Me: Quantization, in the context of machine learning, refers to the process of mapping a continuous input signal or data into discrete values. In other words, it's like rounding up or down the values of your data so they fit neatly within a certain range or scale. This is useful because many algorithms and systems can operate more efficiently with discrete inputs rather than continuous ones.
For example, let's say we have a signal that measures temperature over time. The temperature data is continuous and can have any value between the lowest and highest temperatures. But for our machine learning model, it would be easier to
# Original model card
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