Play With Machine Learning AlgorithmsCode of my MOOC Course <Play with Machine Learning Algorithms>. Updated contents and practices are also included. 我在慕课网上的课程《Python3 入门机器学习》示例代码。课程的更多更新内容及辅助练习也将逐步添加进这个代码仓。
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AmldataprepdocsDocumentation for Microsoft Azure Machine Learning Data Preparation
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Price ForecasterForecasting the future prices of BTC and More using Machine and Deep Learning Models
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Word2vec訓練中文詞向量 Word2vec, Word2vec was created by a team of researchers led by Tomas Mikolov at Google.
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Spark TutorialsCode and Notebooks for Spark Tutorials for Learning Journal @ Youtube
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Sub GcCode repository for our paper "Comprehensive Image Captioning via Scene Graph Decomposition" in ECCV 2020.
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Machine learning from scratchA place to hold various "from scratch" machine learning algorithms developed in Python as pedagogical tools.
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Tensorflow IpyVM with the TensorFlow library from Google
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FlashlightFlashlight is a lightweight Python library for analyzing and solving quadrotor control problems.
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EegclassificationmcnnSolution for EEG Classification via Multiscale Convolutional Net coded for NeuroHack at Yandex.
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Randomized Svddemos for PyBay talk: Using Randomness to make code faster
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Sdc System IntegrationSelf Driving Car Engineer Nanodegree System Integration Capstone Project
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Reaction DiffusionSome Python examples to obtain reaction-diffusion results and animations.
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Ce9010 2018Python notebooks and slides for CE9010: Introduction to Data Science, Semester 2 2017/18
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Machine learning bookshelf机器学习深度学习相关书籍、课件、代码的仓库。 Machine learning is the warehouse of books, courseware and codes.
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Rnn NotebooksRNN(SimpleRNN, LSTM, GRU) Tensorflow2.0 & Keras Notebooks (Workshop materials)
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Vbyo2018Veri Bilimi Yaz Okulu
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OpenaigymCode from "Intro to OpenAI Gym" tutorial video: https://youtu.be/8MC3y7ASoPs
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Wavelet networksCode repository of the paper "Wavelet Networks: Scale Equivariant Learning From Raw Waveforms" https://arxiv.org/abs/2006.05259
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DeeplearnerAI精研社 超级原创 Learn Python and Deep Learning from scratch. 会用搜狗输入法 + chrome浏览器,就能学的会的 Python + 人工智能·机器学习·深度学习算法 的完整学习解决方案。
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SalmonteSalmonTE is an ultra-Fast and Scalable Quantification Pipeline of Transpose Element (TE) Abundances
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Geo PifuThis repository is the official implementation of Geo-PIFu: Geometry and Pixel Aligned Implicit Functions for Single-view Human Reconstruction.
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Motion planningRobot path planning, mapping and exploration algorithms
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Melodyextraction jdc"Joint Detection and Classification of Singing Voice Melody Using Convolutional Recurrent Neural Networks"
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HandrecognitionMachine Learning example project using images of hand gestures.
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E Bliss Rapgene-bliss projesi rap sarki sozleri ureteci kaynak kodu
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Nlp notes自然语言处理学习笔记:机器学习及深度学习原理和示例,基于 Tensorflow 和 PyTorch 框架,Transformer、BERT、ALBERT等最新预训练模型及源代码详解,及基于预训练模型进行各种自然语言处理任务。模型部署
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Effective PandasSource code for my collection of articles on using pandas.
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Regression Lineaire NumpyCodes provenant de mes vidéos YouTube : https://www.youtube.com/channel/UCmpptkXu8iIFe6kfDK5o7VQ
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Stock DataAnalyze stock data by python science tools and machine learning.
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Myst NbParse and execute ipynb files in Sphinx
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ExamplesStand-alone pywren examples
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TutorialsA collection of tutorials for the MOSEK package
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Otx mispImports Alienvault OTX pulses to a MISP instance
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Sdc Vehicle Lane DetectionI am using an ensemble of classic computer vision and modern deep learning techniques, to detect the lane lines and the vehicles on a highway. This project was part of the Udacity SDC Nanodegree.
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