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Medi-CoQAConversational Question Answering on Clinical Text
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squad-v1.1-ptPortuguese translation of the SQuAD dataset
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Bert SquadSQuAD Question Answering Using BERT, PyTorch
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StargraphStarGraph (aka *graph) is a graph database to query large Knowledge Graphs. Playing with Knowledge Graphs can be useful if you are developing AI applications or doing data analysis over complex domains.
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mrqaCode for EMNLP-IJCNLP 2019 MRQA Workshop Paper: "Domain-agnostic Question-Answering with Adversarial Training"
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mcQA🔮 Answering multiple choice questions with Language Models.
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DVQA datasetDVQA Dataset: A Bar chart question answering dataset presented at CVPR 2018
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GARCode and resources for papers "Generation-Augmented Retrieval for Open-Domain Question Answering" and "Reader-Guided Passage Reranking for Open-Domain Question Answering", ACL 2021
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AnspressAnsPress is the most complete question and answer system for WordPress. AnsPress is made with developers in mind, highly customizable. AnsPress provide an easy to use override system for theme
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query-focused-sumOfficial code repository for "Exploring Neural Models for Query-Focused Summarization".
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CogqaSource code and dataset for ACL 2019 paper "Cognitive Graph for Multi-Hop Reading Comprehension at Scale"
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MSMARCOMachine Comprehension Train on MSMARCO with S-NET Extraction Modification
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AskNowNQSA question answering system for RDF knowledge graphs.
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squadgymEnvironment that can be used to evaluate reasoning capabilities of artificial agents
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Cdqa⛔ [NOT MAINTAINED] An End-To-End Closed Domain Question Answering System.
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unanswerable qaThe official implementation for ACL 2021 "Challenges in Information Seeking QA: Unanswerable Questions and Paragraph Retrieval".
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MICCAI21 MMQMultiple Meta-model Quantifying for Medical Visual Question Answering
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PororoQAPororoQA, https://arxiv.org/abs/1707.00836
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Spm toolkitNeural network toolkit for sentence pair modeling.
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denspiReal-Time Open-Domain Question Answering with Dense-Sparse Phrase Index (DenSPI)
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co-attentionPytorch implementation of "Dynamic Coattention Networks For Question Answering"
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qaTensorFlow Models for the Stanford Question Answering Dataset
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iPerceiveApplying Common-Sense Reasoning to Multi-Modal Dense Video Captioning and Video Question Answering | Python3 | PyTorch | CNNs | Causality | Reasoning | LSTMs | Transformers | Multi-Head Self Attention | Published in IEEE Winter Conference on Applications of Computer Vision (WACV) 2021
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Nlu simall kinds of baseline models for sentence similarity 句子对语义相似度模型
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WikiQAVery Simple Question Answer System using Chinese Wikipedia Data
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Gnn4nlp PapersA list of recent papers about Graph Neural Network methods applied in NLP areas.
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XORQAThis is the official repository for NAACL 2021, "XOR QA: Cross-lingual Open-Retrieval Question Answering".
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GanswerA KBQA system based on DBpedia.
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Giveme5WExtraction of the five journalistic W-questions (5W) from news articles
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Qa Survey北航大数据高精尖中心研究张日崇团队对问答系统的调研。包括知识图谱问答系统(KBQA)和文本问答系统(TextQA),每类系统分别对学术界和工业界进行调研。
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DocQNAuthor implementation of "Learning to Search in Long Documents Using Document Structure" (Mor Geva and Jonathan Berant, 2018)
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gapbugQA site with Python/Django
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cherche📑 Neural Search
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Adam qasADAM - A Question Answering System. Inspired from IBM Watson
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iamQA中文wiki百科QA阅读理解问答系统,使用了CCKS2016数据的NER模型和CMRC2018的阅读理解模型,还有W2V词向量搜索,使用torchserve部署
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WikiTableQuestionsA dataset of complex questions on semi-structured Wikipedia tables
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Rust BertRust native ready-to-use NLP pipelines and transformer-based models (BERT, DistilBERT, GPT2,...)
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head-qaHEAD-QA: A Healthcare Dataset for Complex Reasoning
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icebreakerWeb app that allows students to ask real-time, anonymous questions during class
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KrantikariQAAn InformationGain based Question Answering over knowledge Graph system.
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InformersState-of-the-art natural language processing for Ruby
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productqaProduct-Aware Answer Generation in E-Commerce Question-Answering
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deformer[ACL 2020] DeFormer: Decomposing Pre-trained Transformers for Faster Question Answering
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Mac NetworkImplementation for the paper "Compositional Attention Networks for Machine Reasoning" (Hudson and Manning, ICLR 2018)
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PersianQAPersian (Farsi) Question Answering Dataset (+ Models)
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cdQA-ui⛔ [NOT MAINTAINED] A web interface for cdQA and other question answering systems.
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QA4IEOriginal implementation of QA4IE
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Chat基于自然语言理解与机器学习的聊天机器人,支持多用户并发及自定义多轮对话
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Paper ReadingPaper reading list in natural language processing, including dialogue systems and text generation related topics.
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Deep qaA deep NLP library, based on Keras / tf, focused on question answering (but useful for other NLP too)
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Covid QaAPI & Webapp to answer questions about COVID-19. Using NLP (Question Answering) and trusted data sources.
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tg2021taskParticipant Kit for the TextGraphs-15 Shared Task on Explanation Regeneration
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