There are no reviews yet. Be the first to send feedback to the community and the maintainers!
benchm-ml
A minimal benchmark for scalability, speed and accuracy of commonly used open source implementations (R packages, Python scikit-learn, H2O, xgboost, Spark MLlib etc.) of the top machine learning algorithms for binary classification (random forests, gradient boosted trees, deep neural networks etc.).GBM-perf
Performance of various open source GBM implementationsteach-data-science-UCLA-master-appl-stats
Materials for STATS 418 - Tools in Data Science course taught in the Master of Applied Statistics at UCLAbenchm-databases
A minimal benchmark of various tools (statistical software, databases etc.) for working with tabular data of moderately large sizes (interactive data analysis).ml-prod
Some thoughts on how to use machine learning in productionbenchm-dl
Playing with various deep learning tools and network architecturessurvey-ml-tools
Quick informal survey at the Los Angeles Machine learning meetup about tools used for machine learning.teach-data-science-msc-analytics-ceu
Materials for a short introductory/intermediate Data Science course taught in the MSc in Business Analytics program at the Central European Universityxgboost-adv-workshop-LA
Advanced workshop on XGBoost with Tianqi Chen in Santa Monica, June 2, 2016ML-scoring
Compare the scoring speed of several open source machine learning libraries.teach-ML-CEU-master-bizanalytics
Machine Learning #1 and #2 courses at CEU Master of Science in Business AnalyticsGBM-tune
Tuning GBMs (hyperparameter tuning) and impact on out-of-sample predictionsGBM-multicore
GBM multicore scaling: h2o, xgboost and lightgbm on multicore and multi-socket systemsdatascience-latency
Latency numbers every data scientist should know (aka the pyramid of analytical tasks) - the order of magnitude of computational time for the most common analytical tasks (SQL-like data munging, linear and non-linear supervised learning etc.) with the typically available tools on commodity hardware.GBM-intro
GBM intro talk (with R and Python code)dataset-sizes-kdnuggets
Size of datasets used for analytics based on 10 years of surveys by KDnuggets.talks-main
Most recent/important talks given at conferences/meetupskaggle-scripts-R-pydata
Kaggle scripts: R vs pydata + most popular R and Python packages for Machine Learningawesome-GBMs
A curated list of gradient boosting machines (GBM) resourcesbenchm-dplyr-dt
datascience-course-historical
Inspired by David Donoho's "50 Years of Data Science" (2015) paper, I'm releasing here a course proposal draft I wrote in 2009 for a possible course of "data science".dscomp-winstab
Winner stability in data science competitionsml-algos-perf
Performance of Machine Learning Algorithms - playground for experimentation in order to understand their performance characteristics as a function of the attributes of the datasets used for trainingGBM-workshop
Code (and other materials) for an introductory talk/workshop on GBMs (developed originally for an R-Ladies Meetup)DS_meetups
Contents from the Real Data Science USA (formerly LA Data Science) Meetuph2o-scoring--OLD
Various options for deploying h2o.ai models to production (scoring new data)datascience-1slide
Data Science in 1 Slideml-x1
Machine learning tools on monster EC2 X1 instance (128 cores, 2 TB RAM)aboutme
GBM-meltdown
The Effect of the Linux Kernel Page-Table Isolation (KPTI) Patch (Meltdown Vulnerability) on GBMsbenchm-ml-talks
bio
Szilard Pafka's short bio (to go with conference talk abstracts)benchm-R-mysql
shinyvalidinp
MLprod-1slide
Machine Learning in Production in 1 SlideLA-data-meetups
BigDataDayLA2015-DataScience
List of talks from the Data Science Track of Big Data Day LA 2015 (annual free conference)Love Open Source and this site? Check out how you can help us