ScienceQA

Science QA platform

Develops a framework for multimodal reasoning and question answering in science and other domains using natural language processing and machine learning techniques.

Data and code for NeurIPS 2022 Paper "Learn to Explain: Multimodal Reasoning via Thought Chains for Science Question Answering".

GitHub

606 stars
9 watching
63 forks
Language: Python
last commit: 2 months ago

Related projects:

Repository Description Stars
makarandtapaswi/movieqa_cvpr2016 This project explores question-answering in movies using various machine learning approaches. 80
maluuba/newsqa Compiles and provides structured access to Maluuba's NewsQA dataset for natural language question answering research. 253
liberai/nspm A system for using deep learning to answer questions based on knowledge graphs 223
jaredkirby/smartpilot An AI-powered question answering program that uses language models to generate and select the best response. 43
microsoft/pica An empirical study on using GPT-3 for multimodal question answering tasks with few-shot learning. 84
allenai/document-qa Tools and codebase for training neural question answering models on multiple paragraphs of text data 434
lxtgh/omg-seg Develops an end-to-end model for multiple visual perception and reasoning tasks using a single encoder, decoder, and large language model. 1,300
findalexli/scigraphqa A dataset and benchmarking framework for evaluating the performance of large language models on multi-turn question answering tasks for scientific graphs. 37
mlpc-ucsd/bliva A multimodal LLM designed to handle text-rich visual questions 269
lumapictures/usd-qt A collection of reusable Qt components for building USD tools and accelerating USD queries and operations. 153
simmerchan/kg-demo-for-movie A knowledge graph-based question answering system for movies 1,283
hwchase17/notion-qa A Python-based question answering system built on top of Notion's database and OpenAI's API for natural language processing. 2,139
milvlg/prophet An implementation of a two-stage framework designed to prompt large language models with answer heuristics for knowledge-based visual question answering tasks. 267
adityasomak/pslqa An implementation of a Probabilistic Soft Logic Engine with Python and Gurobi optimization for knowledge representation and reasoning. 56
ibm/max-question-answering An open source question answering system built on top of the BERT model and deployed as a web service in a Docker container. 33