--- language: en tags: - distilbert - seq2seq - text-classification license: apache-2.0 datasets: - Custom metrics: - Accuracy - Precision - Recall widget: - text: |- Let's start the project as soon as possible as we are running out of deadline. model-index: - name: Action_Items results: - task: name: Action Item Classification type: text-classification dataset: name: Custom type: custom metrics: - name: Validation Accuracy type: accuracy value: - name: Validation Precision type: precision value: - name: Validation Recall type: recall value: - name: Test Accuracy type: accuracy value: - name: Test Precision type: precision value: - name: Test Recall type: recall value: --- Model obtained by Fine Tuning 'distilbert' using Custom Dataset! LABEL_0 - Not an Action Item LABEL_1 - Action Item ## Usage # Example 1 ```python from transformers import pipeline summarizer = pipeline("text-classification", model="knkarthick/Action_Items") text = ''' Customer portion will have the dependency of , you know , fifty five probably has to be on XGEVA before we can start that track , but we can at least start the enablement track for sales and CSM who are as important as customers because they're the top of our funnel , especially sales. ''' summarizer(text) ``` # Example 2 ```python from transformers import pipeline summarizer = pipeline("text-classification", model="knkarthick/Action_Items") text = ''' India, officially the Republic of India, is a country in South Asia. ''' summarizer(text) ``` # Example 3 ```python from transformers import pipeline summarizer = pipeline("text-classification", model="knkarthick/Action_Items") text = ''' We have been running the business successfully for over a decade now. ''' summarizer(text) ```