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---
language:
- en
- cs
tags:
- translation
license: cc-by-4.0
datasets:
- quickmt/quickmt-train.cs-en
model-index:
- name: quickmt-cs-en
results:
- task:
name: Translation ces-eng
type: translation
args: ces-eng
dataset:
name: flores101-devtest
type: flores_101
args: ces_Latn eng_Latn devtest
metrics:
- name: BLEU
type: bleu
value: 39.63
- name: CHRF
type: chrf
value: 65.65
- name: COMET
type: comet
value: 88.23
---
# `quickmt-cs-en` Neural Machine Translation Model
`quickmt-cs-en` is a reasonably fast and reasonably accurate neural machine translation model for translation from `cs` into `en`.
## Try it on our Huggingface Space
Give it a try before downloading here: https://huggingface.co/spaces/quickmt/QuickMT-Demo
## Model Information
* Trained using [`eole`](https://github.com/eole-nlp/eole)
* 200M parameter transformer 'big' with 8 encoder layers and 2 decoder layers
* 32k separate Sentencepiece vocabs
* Expested for fast inference to [CTranslate2](https://github.com/OpenNMT/CTranslate2) format
* Training data: https://huggingface.co/datasets/quickmt/quickmt-train.lv-en/tree/main
See the `eole` model configuration in this repository for further details and the `eole-model` for the raw `eole` (pytorch) model.
## Usage with `quickmt`
You must install the Nvidia cuda toolkit first, if you want to do GPU inference.
Next, install the `quickmt` python library and download the model:
```bash
git clone https://github.com/quickmt/quickmt.git
pip install ./quickmt/
quickmt-model-download quickmt/quickmt-cs-en ./quickmt-cs-en
```
Finally use the model in python:
```python
from quickmt import Translator
# Auto-detects GPU, set to "cpu" to force CPU inference
t = Translator("./quickmt-cs-en/", device="auto")
# Translate - set beam size to 1 for faster speed (but lower quality)
sample_text = 'Dr. Ehud Ur, profesor medicíny na Dalhousieově univerzitě v Halifaxu v Novém Skotsku a zároveň předseda klinické a vědecké divize Kanadské diabetické asociace upozornil, že výzkum je teprve ve svých počátcích.'
t(sample_text, beam_size=5)
```
> 'Dr. Ehud Ur, professor of medicine at Dalhousie University in Halifax, Nova Scotia, and chairman of the clinical and scientific division of the Canadian Diabetic Association, pointed out that the research is still in its early stages.'
```python
# Get alternative translations by sampling
# You can pass any cTranslate2 `translate_batch` arguments
t([sample_text], sampling_temperature=1.2, beam_size=1, sampling_topk=50, sampling_topp=0.9)
```
> 'Dr. Ehud Ur, a professor of medicine at Dalhousie University in Halifax, Nova Scotia, who is also chairman of the clinical and scientific division of the Canadian Diabetes Association, noted that the research is still at its inception.'
The model is in `ctranslate2` format, and the tokenizers are `sentencepiece`, so you can use `ctranslate2` directly instead of through `quickmt`. It is also possible to get this model to work with e.g. [LibreTranslate](https://libretranslate.com/) which also uses `ctranslate2` and `sentencepiece`. A model in safetensors format to be used with `eole` is also provided.
## Metrics
`bleu` and `chrf2` are calculated with [sacrebleu](https://github.com/mjpost/sacrebleu) on the [Flores200 `devtest` test set](https://huggingface.co/datasets/facebook/flores) ("ces_Latn"->"eng_Latn"). `comet22` with the [`comet`](https://github.com/Unbabel/COMET) library and the [default model](https://huggingface.co/Unbabel/wmt22-comet-da). "Time (s)" is the time in seconds to translate the flores-devtest dataset (1012 sentences) on an RTX 4070s GPU with batch size 32 (faster speed is possible using a larger batch size).
| | bleu | chrf2 | comet22 | Time (s) |
|:---------------------------------|-------:|--------:|----------:|-----------:|
| quickmt/quickmt-cs-en | 39.63 | 65.65 | 88.23 | 1.39 |
| Helsinki-NLP/opus-mt-cs-en | 35.01 | 62.72 | 86.54 | 3.58 |
| facebook/nllb-200-distilled-600M | 38.35 | 64.25 | 87.48 | 21.62 |
| facebook/nllb-200-distilled-1.3B | 40.12 | 65.79 | 88.33 | 37.57 |
| facebook/m2m100_418M | 31.59 | 60.1 | 84.53 | 18.31 |
| facebook/m2m100_1.2B | 36.83 | 63.56 | 87.1 | 34.18 |
|