Emnlp 2019 PapersStatistics and Accepted paper list with arXiv link of EMNLP-IJCNLP 2019
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Vae ClusteringUnsupervised clustering with (Gaussian mixture) VAEs
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Courseworksummer school coursework
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Stock PredictionStock price prediction with recurrent neural network. The data is from the Chinese stock.
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BookDeep Learning 101 with PaddlePaddle (『飞桨』深度学习框架入门教程)
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MirrorVisualisation tool for CNNs in pytorch
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Zhihu知乎看山杯 第二名 解决方案
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Edavizedaviz - Python library for Exploratory Data Analysis and Visualization in Jupyter Notebook or Jupyter Lab
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Writing📚📝 Notes on the journey
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WeightwatcherThe WeightWatcher tool for predicting the accuracy of Deep Neural Networks
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Gwu data miningMaterials for GWU DNSC 6279 and DNSC 6290.
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Yolo SeriesA series of notebooks describing how to use YOLO (darkflow) in python
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CardioCardIO is a library for data science research of heart signals
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Smallrye MutinyAn Intuitive Event-Driven Reactive Programming Library for Java
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50 Days Of MlA day to day plan for this challenge (50 Days of Machine Learning) . Covers both theoretical and practical aspects
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LasioPython library for reading and writing well data using Log ASCII Standard (LAS) files
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RecmetricsA library of metrics for evaluating recommender systems
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Pyschedulepyschedule - resource scheduling in python
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PaddlehelixBio-Computing Platform featuring Large-Scale Representation Learning and Multi-Task Deep Learning “螺旋桨”生物计算工具集
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Learning PysparkCode repository for Learning PySpark by Packt
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Malware DetectionMalware Detection and Classification Using Machine Learning
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Stock market predictionThis is the code for "Stock Market Prediction" by Siraj Raval on Youtube
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Pydqcpython automatic data quality check toolkit
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Ml finance codesMachine Learning in Finance: From Theory to Practice Book
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Malaya Natural Language Toolkit for bahasa Malaysia, https://malaya.readthedocs.io/
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PermissionsswiftuiA SwiftUI package to beautifully display and handle permissions.
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Rl Adventure 2PyTorch0.4 implementation of: actor critic / proximal policy optimization / acer / ddpg / twin dueling ddpg / soft actor critic / generative adversarial imitation learning / hindsight experience replay
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2016 01 Tennis Betting AnalysisMethodology and code supporting the BuzzFeed News/BBC article, "The Tennis Racket," published Jan. 17, 2016.
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TensorfaceThis repo is deprecated, please use Deep Video Analytics which implements face recognition using TensorFlow and Facenet.
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SocceractionConvert existing soccer event stream data to SPADL and value player actions
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Python lectures파이썬Python 강의에 사용되는 소스코드Source Code와 강의 자료들을 모은 repository 입니다.
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My tech resourcesList of tech resources future me and other Javascript/Ruby/Python/Elixir/Elm developers might find useful
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Stereo TransformerOfficial Repo for Stereo Transformer: Revisiting Stereo Depth Estimation From a Sequence-to-Sequence Perspective with Transformers.
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Pandas HighchartsBeautiful charting of pandas.DataFrame with Highcharts
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Naucse.python.czWebsite with learning materials / Stránka s učebními materiály
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Theano TutorialA collection of tutorials on neural networks, using Theano
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DeepreplayDeep Replay - Generate visualizations as in my "Hyper-parameters in Action!" series!
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18s09618.S096 three-week course at MIT
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Datasetssource{d} datasets ("big code") for source code analysis and machine learning on source code
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ContextilyContext geo-tiles in Python
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