Amazon Forest Computer VisionAmazon Forest Computer Vision: Satellite Image tagging code using PyTorch / Keras with lots of PyTorch tricks
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Machine Learning Workflow With PythonThis is a comprehensive ML techniques with python: Define the Problem- Specify Inputs & Outputs- Data Collection- Exploratory data analysis -Data Preprocessing- Model Design- Training- Evaluation
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Kaggle CompetitionsThere are plenty of courses and tutorials that can help you learn machine learning from scratch but here in GitHub, I want to solve some Kaggle competitions as a comprehensive workflow with python packages. After reading, you can use this workflow to solve other real problems and use it as a template.
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Data Analysis主要是爬虫与数据分析项目总结,外加建模与机器学习,模型的评估。
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Deeptoxictop 1% solution to toxic comment classification challenge on Kaggle.
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Kaggle TitanicA tutorial for Kaggle's Titanic: Machine Learning from Disaster competition. Demonstrates basic data munging, analysis, and visualization techniques. Shows examples of supervised machine learning techniques.
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Dog Breeds ClassificationSet of scripts and data for reproducing dog breed classification model training, analysis, and inference.
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Kaggle HousepricesKaggle Kernel for House Prices competition https://www.kaggle.com/massquantity/all-you-need-is-pca-lb-0-11421-top-4
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Ml Fraud DetectionCredit card fraud detection through logistic regression, k-means, and deep learning.
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Kaggle Homedepot3rd Place Solution for HomeDepot Product Search Results Relevance Competition on Kaggle.
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MachinelearningcourseA collection of notebooks of my Machine Learning class written in python 3
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Girls In Ai免费学代码系列:小白python入门、数据分析data analyst、机器学习machine learning、深度学习deep learning、kaggle实战
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Data Science Bowl 2018DATA-SCIENCE-BOWL-2018 Find the nuclei in divergent images to advance medical discovery
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Machine Learning And Data ScienceThis is a repository which contains all my work related Machine Learning, AI and Data Science. This includes my graduate projects, machine learning competition codes, algorithm implementations and reading material.
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digit recognizerCNN digit recognizer implemented in Keras Notebook, Kaggle/MNIST (0.995).
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Allstate capstoneAllstate Kaggle Competition ML Capstone Project
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Ds bowl 2018Kaggle Data Science Bowl 2018
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Fraud DetectionCredit Card Fraud Detection using ML: IEEE style paper + Jupyter Notebook
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Ml Dl ScriptsThe repository provides usefull python scripts for ML and data analysis
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Cikm 2019 Analyticup1st Solution for 2019-CIKM-Analyticup, Efficient and Novel Item Retrieval for Large-scale Online Shopping Recommendation
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argus-tgs-saltKaggle | 14th place solution for TGS Salt Identification Challenge
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Data Science CompetitionsGoal of this repo is to provide the solutions of all Data Science Competitions(Kaggle, Data Hack, Machine Hack, Driven Data etc...).
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KaggleMy kaggle competition solution and notebook
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kaggleKaggle solutions
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SegmentationTensorflow implementation : U-net and FCN with global convolution
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StoreItemDemand(117th place - Top 26%) Deep learning using Keras and Spark for the "Store Item Demand Forecasting" Kaggle competition.
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kaggler🏁 API client for Kaggle
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Apartment-Interest-PredictionPredict people interest in renting specific NYC apartments. The challenge combines structured data, geolocalization, time data, free text and images.
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InterviewInterview = 简历指南 + LeetCode + Kaggle
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HealthcheckHealth Check ✔ is a Machine Learning Web Application made using Flask that can predict mainly three diseases i.e. Diabetes, Heart Disease, and Cancer.
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Unet TgsApplying UNET Model on TGS Salt Identification Challenge hosted on Kaggle
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HumanOrRobota solution for competition of kaggle `Human or Robot`
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