--- datasets: - squad tags: - question-generation widget: - text: "generate question: 42 is the answer to life, the universe and everything. " - text: "question: What is 42 context: 42 is the answer to life, the universe and everything. " license: mit --- ## T5 for multi-task QA and QG This is multi-task [t5-base](https://arxiv.org/abs/1910.10683) model trained for question answering and answer aware question generation tasks. For question generation the answer spans are highlighted within the text with special highlight tokens (``) and prefixed with 'generate question: '. For QA the input is processed like this `question: question_text context: context_text ` You can play with the model using the inference API. Here's how you can use it For QG `generate question: 42 is the answer to life, the universe and everything. ` For QA `question: What is 42 context: 42 is the answer to life, the universe and everything. ` For more deatils see [this](https://github.com/patil-suraj/question_generation) repo. ### Model in action 🚀 You'll need to clone the [repo](https://github.com/patil-suraj/question_generation). [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/patil-suraj/question_generation/blob/master/question_generation.ipynb) ```python3 from pipelines import pipeline nlp = pipeline("multitask-qa-qg", model="valhalla/t5-base-qa-qg-hl") # to generate questions simply pass the text nlp("42 is the answer to life, the universe and everything.") => [{'answer': '42', 'question': 'What is the answer to life, the universe and everything?'}] # for qa pass a dict with "question" and "context" nlp({ "question": "What is 42 ?", "context": "42 is the answer to life, the universe and everything." }) => 'the answer to life, the universe and everything' ```