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Awesome Qa😎 A curated list of the Question Answering (QA)
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Deep GenerationI used in this project a reccurent neural network to generate c code based on a dataset of c files from the linux repository.
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Paper ReadingPaper reading list in natural language processing, including dialogue systems and text generation related topics.
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Cdqa⛔ [NOT MAINTAINED] An End-To-End Closed Domain Question Answering System.
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Mac NetworkImplementation for the paper "Compositional Attention Networks for Machine Reasoning" (Hudson and Manning, ICLR 2018)
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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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Haystack🔍 Haystack is an open source NLP framework that leverages Transformer models. It enables developers to implement production-ready neural search, question answering, semantic document search and summarization for a wide range of applications.
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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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Bert SquadSQuAD Question Answering Using BERT, PyTorch
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Cdqa Annotator⛔ [NOT MAINTAINED] A web-based annotator for closed-domain question answering datasets with SQuAD format.
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gapbugQA site with Python/Django
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Bi Att FlowBi-directional Attention Flow (BiDAF) network is a multi-stage hierarchical process that represents context at different levels of granularity and uses a bi-directional attention flow mechanism to achieve a query-aware context representation without early summarization.
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SkaterPython Library for Model Interpretation/Explanations
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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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