ExamplesHome for Elasticsearch examples available to everyone. It's a great way to get started.
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ConcretedropoutCode for Concrete Dropout as presented in https://arxiv.org/abs/1705.07832
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TutorialTutorial covering Open Source tools for Source Separation.
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MinervaMeandering In Networks of Entities to Reach Verisimilar Answers
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PaddlenlpNLP Core Library and Model Zoo based on PaddlePaddle 2.0
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Yolo Digit DetectorImplemented digit detector in natural scene using resnet50 and Yolo-v2. I used SVHN as the training set, and implemented it using tensorflow and keras.
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Spacy RuRussian language models for spaCy
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MachinelearningwithpythonStarter files for Pluralsight course: Understanding Machine Learning with Python
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Pytorch Vq VaePyTorch implementation of VQ-VAE by Aäron van den Oord et al.
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MultihopkgMulti-hop knowledge graph reasoning learned via policy gradient with reward shaping and action dropout
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Bert ChainerChainer implementation of "BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding"
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Character Based CnnImplementation of character based convolutional neural network
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Linear Attention TransformerTransformer based on a variant of attention that is linear complexity in respect to sequence length
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Python For Data ScienceA collection of Jupyter Notebooks for learning Python for Data Science.
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Mxnet The Straight DopeAn interactive book on deep learning. Much easy, so MXNet. Wow. [Straight Dope is growing up] ---> Much of this content has been incorporated into the new Dive into Deep Learning Book available at https://d2l.ai/.
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Sohu competitionSohu's 2018 content recognition competition 1st solution(搜狐内容识别大赛第一名解决方案)
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StringiTHE String Processing Package for R (with ICU)
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DragonnA toolkit to learn how to model and interpret regulatory sequence data using deep learning.
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Emoji2vecemoji2vec: Learning Emoji Representations from their Description
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Spacy Api DockerspaCy REST API, wrapped in a Docker container.
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MosquitoTrading Bot with focus on Evolutionary Algorithms and Machine Learning
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SkyliftWi-Fi Geolocation Spoofing with the ESP8266
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MegnetGraph Networks as a Universal Machine Learning Framework for Molecules and Crystals
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Mona lisa eyesA machine learning project. Turn on your webcam. Mona Lisa's eyes will follow you around.
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Tacotron pytorchPyTorch implementation of Tacotron speech synthesis model.
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Numerical Linear Algebra V2Jupyter Notebooks for Computational Linear Algebra course, taught summer 2018 in USF MSDS program
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Awesome PandasA collection of resources for pandas (Python) and related subjects.
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X2facePytorch code for ECCV 2018 paper
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Ten Rules JupyterTen Simple Rules for Writing and Sharing Computational Analyses in Jupyter Notebooks
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ResideEMNLP 2018: RESIDE: Improving Distantly-Supervised Neural Relation Extraction using Side Information
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MattnetMAttNet: Modular Attention Network for Referring Expression Comprehension
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Video to bvhConvert human motion from video to .bvh
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Attention MechanismsImplementations for a family of attention mechanisms, suitable for all kinds of natural language processing tasks and compatible with TensorFlow 2.0 and Keras.
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DdadDense Depth for Autonomous Driving (DDAD) dataset.
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LfortranOfficial mirror of https://gitlab.com/lfortran/lfortran. Please submit pull requests (PR) there. Any PR sent here will be closed automatically.
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ClandmarkOpen Source Landmarking Library
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CourseraThese are my learning exercices from Coursera
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LearndatascienceOpen Content for self-directed learning in data science
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