Lsstc Dsfp SessionsLecture slides, Jupyter notebooks, and other material from the LSSTC Data Science Fellowship Program
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DeepaugmentDiscover augmentation strategies tailored for your dataset
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Skiftscikit-learn wrappers for Python fastText.
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Trump LiesTutorial: Web scraping in Python with Beautiful Soup
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DexplotSimple plotting library that wraps Matplotlib and integrated with DataFrames
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Monodepth2[ICCV 2019] Monocular depth estimation from a single image
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Umich Eecs545 LecturesThis repository contains the lecture materials for EECS 545, a graduate course in Machine Learning, at the University of Michigan, Ann Arbor.
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RosettaTools, wrappers, etc... for data science with a concentration on text processing
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ChoochooTraining Diary
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Spark PracticeApache Spark (PySpark) Practice on Real Data
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Graph attention poolAttention over nodes in Graph Neural Networks using PyTorch (NeurIPS 2019)
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SquadBuilding QA system for Stanford Question Answering Dataset
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PyesnEcho State Networks in Python
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RopstenRopsten public testnet PoW chain
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FlamlA fast and lightweight AutoML library.
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W Netw-net: a convolutional neural network architecture for the self-supervised learning of depthmap from pairs of stereo images.
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Python lectures파이썬Python 강의에 사용되는 소스코드Source Code와 강의 자료들을 모은 repository 입니다.
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TutorialsTutorials for creating and using ONNX models
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Traffic Sign DetectionTraffic Sign Detection. Code for the paper entitled "Evaluation of deep neural networks for traffic sign detection systems".
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VwnlpSolving NLP problems with Vowpal Wabbit: Tutorial and more
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Gluon ApiA clear, concise, simple yet powerful and efficient API for deep learning.
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Fairness IndicatorsTensorflow's Fairness Evaluation and Visualization Toolkit
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Pointrendan numpy-based implement of PointRend
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Gpt 2 Colabretrain gpt-2 in colab
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QhueA very lightweight Python wrapper to the Philips Hue API
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Lstm stock predictionThis is an LSTM stock prediction using Tensorflow with Keras on top.
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BassetConvolutional neural network analysis for predicting DNA sequence activity.
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Autochecker4chinese中文文本错别字检测以及自动纠错 / Autochecker & autocorrecter for chinese
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Stock market predictionThis is the code for "Stock Market Prediction" by Siraj Raval on Youtube
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Deep TtfSurvival analsyis and time-to-failure predictive modeling using Weibull distributions and Recurrent Neural Networks in Keras
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Janggu Deep learning infrastructure for bioinformatics
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OsumapperAn automatic beatmap generator using Tensorflow / Deep Learning.
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PysonarDecentralized Machine Learning Client
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Object Oriented Programming Using PythonPython is a multi-paradigm programming language. Meaning, it supports different programming approach. One of the popular approach to solve a programming problem is by creating objects. This is known as Object-Oriented Programming (OOP).
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MgcnnMulti-Graph Convolutional Neural Networks
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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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Text ClassificationText Classification through CNN, RNN & HAN using Keras
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PythonnumericaldemosWell-documented Python demonstrations for spatial data analytics, geostatistical and machine learning to support my courses.
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CourseraThese are my learning exercices from Coursera
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Research2vecRepresenting research papers as vectors / latent representations.
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