license: mit
datasets:
- Thermostatic/ShareGPT_NeuralTranslate_v0.1
language:
- en
- es
tags:
- Translation
- Mistral
- English
- Spanish
Model Card for NeuralTranslate
THIS MODEL USES CHATML TEMPLATE!! BE CAREFUL OR YOU MIGHT FIND UNEXPECTED BEHAVIOURS.
This is the second alpha version of NeuralTranslate. This alpha version doesn't contain overfitting (or at least that's what I think), so no unexpected behaviour should happen and Mistral's native reasoning capabilities aren't lost.
NeuralTranslate is an open-source family of models for bidirectional translation between English & Spanish, achieving high accuracy at fast speed.
You can donate towards this project at my ko-fi! https://ko-fi.com/irvingernesto
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