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ipython-notebooks

This repo contains various IPython notebooks I've created to experiment with libraries and work through exercises, and explore subjects that I find interesting. I've included notebook viewer links below. Click the link to see a live rendering of the notebook.

Language

These notebooks contain introductory content such as an overview of the language and a review of IPython's functionality.

Introduction To Python
IPython Magic Commands

Libraries

Examples using a variety of popular "data science" Python libraries.

NumPy
SciPy
Matplotlib
Pandas
Statsmodels
Scikit-learn
Seaborn
NetworkX
PyMC
NLTK
DEAP
Gensim

Machine Learning Exercises

Implementations of the exercises presented in Andrew Ng's "Machine Learning" class on Coursera.

Exercise 1 - Linear Regression
Exercise 2 - Logistic Regression
Exercise 3 - Multi-Class Classification
Exercise 4 - Neural Networks
Exercise 6 - Support Vector Machines
Exercise 7 - K-Means Clustering & PCA
Exercise 8 - Anomaly Detection & Recommendation Systems

Tensorflow Deep Learning Exercises

Implementations of the assignments from Google's Udacity course on deep learning.

Assignment 1 - Intro & Data Prep
Assignment 2 - Regression & Neural Nets
Assignment 3 - Regularization
Assignment 4 - Convolutions
Assignment 5 - Word Embeddings
Assignment 6 - Recurrent Nets

Spark Big Data Labs

Lab exercises for the original Spark classes on edX.

Lab 0 - Learning Apache Spark
Lab 1 - Building A Word Count Application
Lab 2 - Web Server Log Analysis
Lab 3 - Text Analysis & Entity Resolution
Lab 4 - Introduction To Machine Learning
ML Lab 3 - Linear Regression
ML Lab 4 - Click-Through Rate Prediction
ML Lab 5 - Principal Component Analysis

Misc

Notebooks covering various interesting topics!

Comparison Of Various Code Optimization Methods
A Simple Time Series Analysis of the S&P 500 Index
An Intro To Probablistic Programming
Language Exploration Using Vector Space Models
Solving Problems With Dynamic Programming