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Diagnosing scientific replicability through probabilistic distinguishability.

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scientificnet/nodejs-16-aws

Docker light image based on nodejs 16 alphine with custom tools installed: aws cli.
hub.docker.com

cuahsi/singleuser-scientific-py3

A general purpose scientific computing environment for hydrologic applications.
hub.docker.com

harinee96/click-through_rate

Demo service for predicting real-time Click Through Rate prediction using XgBoost.
hub.docker.com

DPGN 阅读笔记+代码分析( DPGN : Distribution Propagation Graph Network for Few-shot Learning)_nwpufreshman的博客-CSDN博客

论文:https://arxiv.org/pdf/2003.14247.pdf 源代码:https://github.com/megvii-research/DPGN 目录 核心内容 分布级关系 DPGN网络结构及实现算法 DPGN网络结构分析 Instance Similarities(实例相似度
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bigdata - What is the status on Neo4j's horizontal scalability project Rassilon? - Stack Overflow

14 Just wondering if anyone has any information on the status of project Rassilon, Neo4j's side project which focuses on improving horizontal scalabi
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【论文泛读】2018-B-Discriminative Probabilistic Framework for Generalized Multi-Instance Learning_Windingd的博客-CSDN博客

题目广义多实例学习的判别概率框架(DiscriminativeProbabilisticFrameworkforGeneralizedMulti-InstanceLearning)Bib@inproceedings{Anh:2018:22812285,author={AnhTPhamandRaviv
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EFFICIENT PROBABILISTIC LOGIC REASONING WITH GRAPH NEURAL NETWORKS_kormoie的博客-CSDN博客

EFFICIENT PROBABILISTIC LOGIC REASONING WITH GRAPH NEURAL NETWORKS(使用神经网络进行有效的概率逻辑推理) 原文连接 介绍: 由于知识图谱存在不正确、不完整或者重复的数据,因此对知识图谱进行补全推理非常重要。文章使用了马尔科夫逻辑网络
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