# Deepfake
*author: Zhuoran Yu*
## Description
Deepfake techniques, which present realistic AI-generated videos of people doing and saying fictional things, have the potential to have a significant impact on how people determine the legitimacy of information presented online.
This operator predicts the probability of a fake video for a given video.This is an adaptation from [DeepfakeDetection](https://github.com/smu-ivpl/DeepfakeDetection).
## Code Example
Load videos from path '/home/test_video'
and use deepfake operator to predict the probabilities of fake videos.
```python
import towhee
(
towhee.glob['path']('/home/test_video')
.deepfake['path', 'scores']()
.select['path', 'scores']()
.show()
)
```
```shell
[0.9893, 0.9097]
```
## Interface
A deepfake operator takes videos' paths as input.
It predicts the probabilities of fake videos.The higher the score, the higher the probability of it being a fake video.(It can be considered to be a fake video with score higher than 0.5)
**Parameters:**
***filepath:*** *str*
Absolute address of the test videos.
**Returns:** *list*
The probabilities of videos being fake ones.