JMistral's repositories

Yelp_Challenge

Yelp dataset challenge: NLP & sentiment analysis

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McKinsey-Analytics-Online-Hackathon

Source Code for McKinsey Analytics Online Hackathon

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Iceberg

Kaggle challenge, image classification for SAR data (classification for ships and icebergs)

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FreeML

Data Science Resources (Mostly Free)

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LendingClub

Lending Club project in R with Bittiger

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DataAnalyst_Udacity

Homework and Project for Data Analyst Nanodegree with Udacity

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ImageProcessingEE542

homework and project for EE 542

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INF503_S2017_Project3

Project 3 repository for spring 2017 semester

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Large_Scale_Data_Structure

Genomic Data Mining

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NAU_thesis_master_complete

Master Thesis: ECG predictive modeling

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OpenFood

The challenge project for The Data Incubator

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Python-for-Genomic-Data-Science-2015-Coursera

Python for Genomic Data Science 2015 Coursera from Johns Hopkins University

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scikit-learn

scikit-learn: machine learning in Python

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simple_site

Minimal tutorial on making a simple website with GitHub Pages

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tensorflow

Computation using data flow graphs for scalable machine learning

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tensorflow_hmm

A tensorflow implementation of an HMM layer

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Titanic_Challenge_Machine_Learning

The codes for the challenge in Kaggle, named Titanic: Machine Learning from Disaster

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Using-deep-neural-network-for-sentiment-analysis

NLP techniques combined with autoencoder, sequence to sequence model, image to sequence model

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