Spaces:
Sleeping
Sleeping
# API Documentation for `Lenylvt/Translator-API` | |
This documentation explains how to interact with the Translator API using both Python and JavaScript. | |
## API Endpoint | |
To interact with this API, you have the option to use the `gradio_client` Python library or the `@gradio/client` JavaScript package. | |
## Python Usage | |
### Step 1: Installation | |
First, install the `gradio_client` library if it's not already installed. | |
```python | |
pip install gradio_client | |
``` | |
### Step 2: Making a Request | |
Locate the API endpoint for the function you intend to use. Replace the placeholder values in the snippet below with your actual input data. If accessing a private Space, you may need to include your Hugging Face token. | |
**API Name**: `/predict` | |
```python | |
from gradio_client import Client | |
client = Client("Lenylvt/Translator-API") | |
result = client.predict( | |
"Hello!!", # str in 'text' Textbox component | |
"en", # Source Language (ISO 639-1 code, e.g., 'en' for English) in 'Source Language' Dropdown component | |
"es", # Target Language (ISO 639-1 code, e.g., 'es' for Spanish) in 'Target Language' Dropdown component | |
api_name="/predict" | |
) | |
print(result) | |
``` | |
**Return Type(s):** | |
- A `str` representing the translated text output in the 'output' Textbox component. | |
π΄ **If you have this error** : 'Failed to load model for aa to ab: Helsinki-NLP/opus-mt-aa-ab is not a local folder and is not a valid model identifier listed on 'https://huggingface.co/models' If this is a private repository, make sure to pass a token having permission to this repo either by logging in with `huggingface-cli login` or by passing `token=<your_token>`', **its because the language is not available.** | |
## JavaScript Usage | |
### Step 1: Installation | |
Install the `@gradio/client` package if it's not already in your project. | |
```bash | |
npm i -D @gradio/client | |
``` | |
### Step 2: Making a Request | |
As with Python, identify the API endpoint that matches your requirement. Replace the placeholders with your data. If this is a private Space, don't forget to include your Hugging Face token. | |
**API Name**: `/predict` | |
```javascript | |
import { client } from "@gradio/client"; | |
const app = await client("Lenylvt/Translator-API"); | |
const result = await app.predict("/predict", [ | |
"Hello!!", // string in 'text' Textbox component | |
"en", // string representing ISO 639-1 code for Source Language in 'Source Language' Dropdown component | |
"es", // string representing ISO 639-1 code for Target Language in 'Target Language' Dropdown component | |
]); | |
console.log(result.data); | |
``` | |
**Return Type(s):** | |
- A `string` representing the translated text output in the 'output' Textbox component. | |
π΄ **If you have this error** : 'Failed to load model for aa to ab: Helsinki-NLP/opus-mt-aa-ab is not a local folder and is not a valid model identifier listed on 'https://huggingface.co/models' If this is a private repository, make sure to pass a token having permission to this repo either by logging in with `huggingface-cli login` or by passing `token=<your_token>`', **its because the language is not available.** |