Topic: nips Goto Github
Some thing interesting about nips
Some thing interesting about nips
nips,The code of NeurIPS 2021 paper "Scalable Rule-Based Representation Learning for Interpretable Classification" and TPAMI paper "Learning Interpretable Rules for Scalable Data Representation and Classification"
User: 12wang3
nips,Our NIPS 2017: Learning to Run source code
User: adamstelmaszczyk
nips,The proceedings of top conference in 2018 on the topic of Reinforcement Learning (RL), including: AAAI, IJCAI, NeurIPS, ICML, ICLR, ICRA, AAMAS and more.
User: allenpandas
nips,Single-Column LaTeX Template based on NeurIPS
User: armageddonknight
Home Page: https://nips.cc/
nips,Private messenger app based on Nostr protocol
User: aussedatlo
nips,A PyTorch Implementation of "Watch Your Step: Learning Node Embeddings via Graph Attention" (NeurIPS 2018).
User: benedekrozemberczki
nips,Repository and website for the NIPS 2017 workshop "(Almost) 50 shades of Bayesian Learning: PAC-Bayesian trends and insights"
User: bguedj
Home Page: https://bguedj.github.io/nips2017/
nips,Library for validate polish numbers: PESEL, NIP, REGON, IBAN (PL)
User: dbackowski
nips,Rails validators for polish numbers: PESEL, NIP, REGON, IBAN (PL)
User: dbackowski
nips,NIPS data analysis [2016]
User: dineshdaultani
nips, NIPS 2018 "Invertibility of Convolutional Generative Networks from Partial Measurements"
User: fangchangma
nips,Suricata config to apply IDPS mode on Ubuntu 18.04 LTS
User: fredriclesomar
nips,Get Deep Learning Related Statistics(CNN,RNN,RL) from Publications. Including NIPS, ICML, ICLR, CVPR, MICCAI.
User: giranntu
nips,Applied Machine Learning
User: hkiang01
nips,Qimera: Data-free Quantization with Synthetic Boundary Supporting Samples [NeurIPS 2021]
User: iamkanghyunchoi
nips,A LaTex template for reports, based on the elegant NIPS 2018 style.
User: jiahuei
nips,Community Detection - Bilaketa Heuristikoak
User: juletx
nips,Crawler used to crawl papers
User: justjokerx
nips,Text mining on NIPS papers (1987 to 2003) and topic discovery/evolution
User: kcelia
nips,videos, slides, and others from NIPS 2017
User: kihosuh
nips,A Latex style and template for paper preprints (based on NIPS style)
User: kourgeorge
nips,All NeRF-related papers at CVPR/ICCV/ECCV/NIPS/ICML/ICLR
User: lif314
nips,Submissions for NIPS competitions (non-targeted attack, targeted attack, defence)
User: mahnerak
nips,A template for pre-prints based on the arXiv submission guide
Organization: myst-templates
nips,This is the PyTorch implementation of Double Attention Network, NIPS 2018
User: nguyenvo09
nips,A curated list of awesome sentiment analysis studies, in which attitude corresponds to the text position conveyed by Subject towards other Object mentioned in text such as: entities, events, etc.
User: nicolay-r
Home Page: http://nlpprogress.com/russian/sentiment-analysis.html
nips,This is the code of NeurIPS'21 paper "Towards Enabling Meta-Learning from Target Models".
User: njulus
nips,NIP stands for NULS Improvement Proposal
Organization: nuls-io
Home Page: https://forum.nuls.io/c/governance/nuls-nips/25
nips,Maintain resources for NIPS 2018 Competition ConvAi2, including dataset url, papers, etc
User: olenet
nips,📖 A curated list of awesome resources dedicated to Relation Extraction, one of the most important tasks in Natural Language Processing (NLP).
User: roomylee
nips,Harvard Fall 2019 Applied Math 207 A Primer and Critique of Prior Networks
User: rylanschaeffer
nips,The Project concept is to analyze a large collection of Neural Information Processing System research papers from the past decades to discover the latest trends.
User: sairaj17
nips,Use Natural Language Processing on NIPS papers to uncover the trendiest topics in machine learning research.
User: satyam9090
Home Page: https://satyam9090.github.io/The-Hottest-Topics-in-Machine-Learning/
nips,Reason8.ai PyTorch solution for NIPS RL 2017 challenge
User: scitator
nips,Download papers and supplemental materials from open-access paper website, such as AAAI, AISTATS, COLT, CORL, CVPR, ECCV, ICCV, ICLR, ICML, IJCAI, JMLR, NIPS, RSS, WACV.
User: silenceeagle
nips,A U-Net combined with a variational auto-encoder that is able to learn conditional distributions over semantic segmentations.
User: simonkohl
nips,A collection of some nice papers/research articles.
User: sk-g
nips,Reimplementing cool papers in PyTorch...
User: vievie31
nips,Books, courses, videos and blogs, mostly about Deep Learning.
User: woctezuma
nips,PyTorch implementation of Hash Embeddings (NIPS 2017). Submission to the NIPS Implementation Challenge.
User: yanndubs
nips,This repository contains all the papers accepted in top conference of computer vision, with convenience to search related papers.
User: yarkable
nips, This is a collection of papers and other resources related to fairness.
User: yongkaiwu
Home Page: https://yongkaiwu.github.io/FairAI/
nips,Deep Learning for LiDAR Point Clouds in Autonomous Driving: A Review
User: yvanali
nips,2016-至今nlp/ir/recsys/ai相关顶会的论文清单paperlist列表含目录,方便直接搜索关键字。包括AAAI/ACL/EMNLP/IJCAI/SIGIR/CIKM/WSDM/WWW/NIPS/COLING
User: zhengyima
nips,Implementation of the paper Homeostatic plasticity in Bayesian spiking networks as Expectation Maximization with posterior constraints by Habenschuss et al.
User: zimmerrol
nips,Official implementation of our NeurIPS2021 paper: Relative Uncertainty Learning for Facial Expression Recognition
User: zyh-uaiaaaa
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