AMontgomerie / question_generator
An NLP system for generating reading comprehension questions
☆281Updated 9 months ago
Related projects ⓘ
Alternatives and complementary repositories for question_generator
- Paraphrase any question with T5 (Text-To-Text Transfer Transformer) - Pretrained model and training script provided☆189Updated last year
- Neural question generation using transformers☆1,105Updated 7 months ago
- Neural Question Generation using the SQuAD and NewsQA datasets☆109Updated last year
- Fine-tuning GPT-2 Small for Question Answering☆130Updated last year
- Easy to use and understand multiple-choice question generation algorithm using T5 Transformers.☆132Updated 2 years ago
- Generating multiple choice questions from text using Machine Learning.☆486Updated 9 months ago
- A summary of must-read papers for Neural Question Generation (NQG)☆584Updated 3 years ago
- Text2Text Language Modeling Toolkit☆291Updated 3 weeks ago
- Question Generation using Google T5 and Text2Text☆153Updated 3 years ago
- Tutorial for first time BERT users,☆102Updated last year
- Models to perform neural summarization (extractive and abstractive) using machine learning transformers and a tool to convert abstractive…☆428Updated last year
- Question-answer generation from text☆69Updated last year
- A repo to explore different NLP tasks which can be solved using T5☆169Updated 3 years ago
- Abstractive and Extractive Text summarization using Transformers.☆83Updated last year
- Question generation using state-of-the-art Natural Language Processing algorithms☆912Updated 11 months ago
- Summarization Task using Bart and T5 models.☆171Updated 4 years ago
- Python-based implementation of the Translate-Align-Retrieve method to automatically translate the SQuAD Dataset to Spanish.☆59Updated last year
- Resources for the NAACL 2018 paper "A Discourse-Aware Attention Model for Abstractive Summarization of Long Documents"☆357Updated last year
- A simple approach to use GPT2-medium (345M) for generating high quality text summaries with minimal training.☆157Updated last year
- Automatic Question Generator from TEXT☆109Updated last year
- Generating boolean (yes/no) questions from any content using T5 text-to-text transformer model and BoolQ dataset☆35Updated last year
- Some notebooks for NLP☆188Updated last year
- ☆75Updated last year
- a gaggle of deep neural architectures for text ranking and question answering, designed for Pyserini☆340Updated 11 months ago
- BERT Question and Answer system meant and works well for only limited number of words summary like 1 to 2 paragraphs only. It can’t be ab…☆112Updated 3 years ago
- Language model fine-tuning on NER with an easy interface and cross-domain evaluation. "T-NER: An All-Round Python Library for Transformer…☆377Updated last year
- Given a sentence automatically generate reading comprehension style factual questions from that sentence, such that the sentence contains…☆114Updated 3 years ago
- This dataset contains synthetic training data for grammatical error correction. The corpus is generated by corrupting clean sentences fro…☆157Updated last month
- Applying BERT to named entity recognition in English and Russian.☆160Updated last year