Style SemanticsCode for the paper "Controlling Style and Semantics in Weakly-Supervised Image Generation", ECCV 2020
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Nasnet KerasKeras implementation of NASNet-A
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D3 Js Step By Stephttp://zeroviscosity.com/category/d3-js-step-by-step
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Jupyter to mediumPython package for publishing Jupyter Notebooks as Medium blogposts
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ImageclassificationDeep Learning: Image classification, feature visualization and transfer learning with Keras
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Attention TransferImproving Convolutional Networks via Attention Transfer (ICLR 2017)
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Openml RR package to interface with OpenML
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Machine LearningCode & Data for Introduction to Machine Learning with Scikit-Learn
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Nbconfluxnbconflux converts Jupyter Notebooks to Atlassian Confluence pages
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MapidocPublic repo for Materials API documentation
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AliceNIPS 2017: ALICE: Towards Understanding Adversarial Learning for Joint Distribution Matching
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Yolo resnetImplementing YOLO using ResNet as the feature extraction network
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Continuous analysisComputational reproducibility using Continuous Integration to produce verifiable end-to-end runs of scientific analysis.
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Tensorflow DemoLocal AI demo and distributed AI demo using TensorFlow
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How to generate videoThis is the code for "How to Generate Video - Intro to Deep Learning #15' by Siraj Raval on YouTube
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ExportifyExport Spotify playlists using the Web API. Analyze them in the Jupyter notebook.
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Amazon Sagemaker Script ModeAmazon SageMaker examples for prebuilt framework mode containers, a.k.a. Script Mode, and more (BYO containers and models etc.)
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IntrostatlearnExercises from 'Introduction to Statistical Learning with Applications in R' written in Python.
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Keras Movielens CfA set of Jupyter notebooks demonstrating collaborative filtering using matrix factorization with Keras.
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Computational Neuroscience UwPython scripts that supplement the Coursera Computational Neuroscience course by the University of Washington
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Pragmaticai[Book-2019] Pragmatic AI: An Introduction to Cloud-based Machine Learning
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Textrank Keyword ExtractionKeyword extraction using TextRank algorithm after pre-processing the text with lemmatization, filtering unwanted parts-of-speech and other techniques.
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Credit card fraudThis repository includes the code used in my corresponding Medium post.
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Soccernet CodeSoccerNet: A Scalable Dataset for Action Spotting in Soccer Videos
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Chi course 2019ACM SIGCHI 2019 Course on Bayesian Methods for Interaction
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Sequence JacobianInteractive guide to Auclert, Bardóczy, Rognlie, and Straub (2019): "Using the Sequence-Space Jacobian to Solve and Estimate Heterogeneous-Agent Models".
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Unsupervised anomaly detectionA Notebook where I implement differents anomaly detection algorithms on a simple exemple. The goal was just to understand how the different algorithms works and their differents caracteristics.
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RsnLearning to Exploit Long-term Relational Dependencies in Knowledge Graphs, ICML 2019
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PyeprPowerful, automated analysis and design of quantum microwave chips & devices [Energy-Participation Ratio and more]
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