PresentationsPresentations for the DesertPy Group
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Codeclimate FixmeA codeclimate engine for finding things you should fix.
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AlgorithmsHere is the my solutions for problems in {leetcode, hackerrank, geeksforgeeks}
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Nb MermaidDEPRECATED Mermaid diagrams in the Jupyter Notebook
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Computer VisionComputer vision sabbatical study materials
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Pydata 2016Materials for talk at PyData London 2016
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GeopyterGeoPyTeR: Geographical Python Teaching Resource
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Fsdl Text Recognizer ProjectThe source repository is at https://github.com/full-stack-deep-learning/fsdl-text-recognizer
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Plate scatac SeqA rapid and robust plate-based single cell ATAC-seq (scATAC-seq) method
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Machine Learning NotebooksAssorted exercises and proof-of-concepts to understand and study machine learning and statistical learning theory
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Hello nnSome of my simple neural networks
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Pythonscience由机械工业出版社出版的python金融大数据分析,python学习手册三本经典书籍以及利用python进行数据分析机器代码。
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Bus numberUp Your Bus Number: A Primer for Reproducible Data Science
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Numpy Rnnnumpy implementation of Recurrent Neural Network
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Deep DreamPyTorch implement of Google Deep Dream
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UnswCourse materials
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JavaImplementation of All ▲lgorithms in Java Programming Language
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Torch DdcnnFrom Pixels to Torques: Policy Learning using Deep Dynamical Convolutional Neural Networks (DDCNN)
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Promcord📊 Analyze your entire discord guild in grafana using prometheus. Message, User, Game and Voice statistics...
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VbridgeX11 Cloud desktop software
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Cwl DataCall of Duty World League Player Data
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BlogAbout math, programming and procedural generation
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GdynetUnsupervised learning of atomic scale dynamics from molecular dynamics.
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RetainvisAn implementation of RetainVis: Visual Analytics with Interpretable and Interactive Recurrent Neural Networks on Electronic Medical Records
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Hse Nlp CourseraSolution for https://www.coursera.org/learn/language-processing
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Cbj smart HomeIf you are searching for an easy way to deploy a smart home 🏡 by yourself CyBear Jinni 🦾🐻🧞♂️ is here for you. Join the community and make your home smarter than yesterday.
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Cgm MlChild Growth Monitor Machine Learning
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Oreilly Pytorch🔥 Introductory PyTorch tutorials with OReilly Media.
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Ealstm regional modelingAccompanying code for our HESS paper "Towards learning universal, regional, and local hydrological behaviors via machine learning applied to large-sample datasets"
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Sudoku GeneratorA Sudoku puzzle generator written in C++ using modified and efficient backtracking algorithm.
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Quant Finance ResourcesCourses, Articles and many more which can help beginners or professionals.
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Vizwiz Vqa PytorchPyTorch VQA implementation that achieved top performances in the (ECCV18) VizWiz Grand Challenge: Answering Visual Questions from Blind People
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Urban Sound ClassificationUrban sound source tagging from an aggregation of four second noisy audio clips via 1D and 2D CNN (Xception)
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Ijcai2019 NamlThe codes of Neural News Recommendation with Attentive Multi-view Learning
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Foltr EsThe source code to reproduce the results reported in the 'Federated Online Learning to Rank with Evolution Strategies' paper, published at WSDM 2019.
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Sanet KerasImplement SANet for crowd counting in Keras.
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6.s083 fall 2019Materials for MIT class 6.S083 / 18.S190, fall 2019
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Multitask LearningMSc group project: Reproduction of 'Multi-Task Learning using Uncertainty to Weigh Losses for Scene Geometry and Semantics'; A. Kendall, Y. Gal, R. Cipolla
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