A collection of IPython notebooks covering various topics.

Overview

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

Fast.ai Lessons

Notebooks from Jeremy Howard's fast.ai class.

Lesson 1 - Image Classification
Lesson 2 - Multi-label Classification
Lesson 3 - Structured And Time Series Data
Lesson 4 - Sentiment Classification
Lesson 5 - Recommendation Using Deep Learning
Lesson 6 - Language Modeling With RNNs
Lesson 7 - Convolutional Networks In Detail

Deep Learning With Keras

Notebooks using Keras to implement deep learning models.

Part 1 - Structured And Time Series Data
Part 2 - Convolutional Networks
Part 3 - Recommender Systems
Part 4 - Recurrent Networks
Part 5 - Anomaly Detection
Part 6 - Generative Adversarial Networks

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
Time Series Forecasting With Prophet
Markov Chains From Scratch
A Sampling Of Monte Carlo Methods

Owner
John Wittenauer
Data scientist, engineer, author, investor, entrepreneur
John Wittenauer
Implementation of Learning Gradient Fields for Molecular Conformation Generation (ICML 2021).

[PDF] | [Slides] The official implementation of Learning Gradient Fields for Molecular Conformation Generation (ICML 2021 Long talk) Installation Inst

MilaGraph 117 Dec 09, 2022
Object-Centric Learning with Slot Attention

Slot Attention This is a re-implementation of "Object-Centric Learning with Slot Attention" in PyTorch (https://arxiv.org/abs/2006.15055). Requirement

Untitled AI 72 Jan 02, 2023
LV-BERT: Exploiting Layer Variety for BERT (Findings of ACL 2021)

LV-BERT Introduction In this repo, we introduce LV-BERT by exploiting layer variety for BERT. For detailed description and experimental results, pleas

Weihao Yu 14 Aug 24, 2022
Radar-to-Lidar: Heterogeneous Place Recognition via Joint Learning

radar-to-lidar-place-recognition This page is the coder of a pre-print, implemented by PyTorch. If you have some questions on this project, please fee

Huan Yin 37 Oct 09, 2022
Cross-Modal Contrastive Learning for Text-to-Image Generation

Cross-Modal Contrastive Learning for Text-to-Image Generation This repository hosts the open source JAX implementation of XMC-GAN. Setup instructions

Google Research 94 Nov 12, 2022
[CIKM 2021] Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning

Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning. This repo contains the PyTorch code and implementation for the paper E

Akuchi 18 Dec 22, 2022
Multi-layer convolutional LSTM with Pytorch

Convolution_LSTM_pytorch Thanks for your attention. I haven't got time to maintain this repo for a long time. I recommend this repo which provides an

Zijie Zhuang 734 Jan 03, 2023
Raindrop strategy for Irregular time series

Graph-Guided Network For Irregularly Sampled Multivariate Time Series Overview This repository contains processed datasets and implementation code for

Zitnik Lab @ Harvard 74 Jan 03, 2023
gACSON software for visualization, processing and analysis of three-dimensional electron microscopy images

gACSON gACSON software is to visualize, segment, and analyze the morphology of neurons in three-dimensional electron microscopy images. If you use any

Andrea Behanova 2 May 31, 2022
Optimus: the first large-scale pre-trained VAE language model

Optimus: the first pre-trained Big VAE language model This repository contains source code necessary to reproduce the results presented in the EMNLP 2

314 Dec 19, 2022
Cross-platform CLI tool to generate your Github profile's stats and summary.

ghs Cross-platform CLI tool to generate your Github profile's stats and summary. Preview Hop on to examples for other usecases. Jump to: Installation

HackerRank 134 Dec 20, 2022
An index of algorithms for learning causality with data

awesome-causality-algorithms An index of algorithms for learning causality with data. Please cite our survey paper if this index is helpful. @article{

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Code to accompany our paper "Continual Learning Through Synaptic Intelligence" ICML 2017

Continual Learning Through Synaptic Intelligence This repository contains code to reproduce the key findings of our path integral approach to prevent

Ganguli Lab 82 Nov 03, 2022
SEC'21: Sparse Bitmap Compression for Memory-Efficient Training onthe Edge

Training Deep Learning Models on The Edge Training on the Edge enables continuous learning from new data for deployed neural networks on memory-constr

Brown University Scale Lab 4 Nov 18, 2022
Implementation of our recent paper, WOOD: Wasserstein-based Out-of-Distribution Detection.

WOOD Implementation of our recent paper, WOOD: Wasserstein-based Out-of-Distribution Detection. Abstract The training and test data for deep-neural-ne

8 Dec 24, 2022
constructing maps of intellectual influence from publication data

Influencemap Project @ ANU Influence in the academic communities has been an area of interest for researchers. This can be seen in the popularity of a

CS Metrics 13 Jun 18, 2022
A simple PyTorch Implementation of Generative Adversarial Networks, focusing on anime face drawing.

AnimeGAN A simple PyTorch Implementation of Generative Adversarial Networks, focusing on anime face drawing. Randomly Generated Images The images are

Jie Lei 雷杰 1.2k Jan 03, 2023
PerfFuzz: Automatically Generate Pathological Inputs for C/C++ programs

PerfFuzz Performance problems in software can arise unexpectedly when programs are provided with inputs that exhibit pathological behavior. But how ca

Caroline Lemieux 125 Nov 18, 2022
Tutorials and implementations for "Self-normalizing networks"

Self-Normalizing Networks Tutorials and implementations for "Self-normalizing networks"(SNNs) as suggested by Klambauer et al. (arXiv pre-print). Vers

Institute of Bioinformatics, Johannes Kepler University Linz 1.6k Jan 07, 2023
AttGAN: Facial Attribute Editing by Only Changing What You Want (IEEE TIP 2019)

News 11 Jan 2020: We clean up the code to make it more readable! The old version is here: v1. AttGAN TIP Nov. 2019, arXiv Nov. 2017 TensorFlow impleme

Zhenliang He 568 Dec 14, 2022