Skip to content

Latest commit

 

History

History
31 lines (21 loc) · 1.6 KB

README.md

File metadata and controls

31 lines (21 loc) · 1.6 KB

Transformer-Text-Classification

Mainly, this project shows how to build a text classification using pretrained model, which is DistilBERT, and finetuning it using desirable data to output desirable output as well.

Dataset:

Pretrained Model:

  • DistilBERT

Finetuned Model:

But, as a product of this project, I have built a chrome extension. Below are steps how to run the program (product):

  • go to 'chrome-extension'
  • you will find main.py, which is the server (using flask), and run it (but don't forget to activate the conda environment which all necessary packages can be found inside a yml file)
  • to make the chrome-extension to appear, you need to go to 'extension' menu in chrome setting, and activate the developer mode
  • once activated, you will notice on top left, there will be a menu asking you to upload unpacked chrome-extension
  • upload the 'chrome-extension', and turn it on
  • once the extension is on, try to select any text on any website (don't forget to refresh the page if it's already opened before the extension)
  • then, once the mouseup, there will be a popup appears right under your cursor that tells the emotion of the selected text

Sample