• Stars
    star
    69
  • Rank 452,630 (Top 9 %)
  • Language
    Python
  • Created about 8 years ago
  • Updated about 7 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Playing with various deep learning tools and network architectures

More Repositories

1

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.).
R
1,871
star
2

GBM-perf

Performance of various open source GBM implementations
HTML
215
star
3

teach-data-science-UCLA-master-appl-stats

Materials for STATS 418 - Tools in Data Science course taught in the Master of Applied Statistics at UCLA
HTML
135
star
4

benchm-databases

A minimal benchmark of various tools (statistical software, databases etc.) for working with tabular data of moderately large sizes (interactive data analysis).
R
90
star
5

ml-prod

Some thoughts on how to use machine learning in production
72
star
6

survey-ml-tools

Quick informal survey at the Los Angeles Machine learning meetup about tools used for machine learning.
51
star
7

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 University
HTML
33
star
8

xgboost-adv-workshop-LA

Advanced workshop on XGBoost with Tianqi Chen in Santa Monica, June 2, 2016
R
26
star
9

ML-scoring

Compare the scoring speed of several open source machine learning libraries.
R
21
star
10

teach-ML-CEU-master-bizanalytics

Machine Learning #1 and #2 courses at CEU Master of Science in Business Analytics
HTML
21
star
11

GBM-tune

Tuning GBMs (hyperparameter tuning) and impact on out-of-sample predictions
HTML
21
star
12

GBM-multicore

GBM multicore scaling: h2o, xgboost and lightgbm on multicore and multi-socket systems
HTML
20
star
13

datascience-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.
20
star
14

GBM-intro

GBM intro talk (with R and Python code)
HTML
17
star
15

dataset-sizes-kdnuggets

Size of datasets used for analytics based on 10 years of surveys by KDnuggets.
HTML
16
star
16

talks-main

Most recent/important talks given at conferences/meetups
15
star
17

GBM-adv-workshop-Bp19

Advanced GBM Workshop - Budapest, Nov 2019
HTML
12
star
18

kaggle-scripts-R-pydata

Kaggle scripts: R vs pydata + most popular R and Python packages for Machine Learning
R
11
star
19

awesome-GBMs

A curated list of gradient boosting machines (GBM) resources
10
star
20

benchm-dplyr-dt

10
star
21

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".
9
star
22

dscomp-winstab

Winner stability in data science competitions
R
8
star
23

ml-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 training
Python
7
star
24

GBM-workshop

Code (and other materials) for an introductory talk/workshop on GBMs (developed originally for an R-Ladies Meetup)
HTML
6
star
25

DS_meetups

Contents from the Real Data Science USA (formerly LA Data Science) Meetup
5
star
26

h2o-scoring--OLD

Various options for deploying h2o.ai models to production (scoring new data)
Java
5
star
27

datascience-1slide

Data Science in 1 Slide
4
star
28

ml-x1

Machine learning tools on monster EC2 X1 instance (128 cores, 2 TB RAM)
HTML
4
star
29

aboutme

HTML
4
star
30

GBM-meltdown

The Effect of the Linux Kernel Page-Table Isolation (KPTI) Patch (Meltdown Vulnerability) on GBMs
R
3
star
31

benchm-ml-talks

3
star
32

bio

Szilard Pafka's short bio (to go with conference talk abstracts)
2
star
33

benchm-R-mysql

R
2
star
34

shinyvalidinp

R
2
star
35

MLprod-1slide

Machine Learning in Production in 1 Slide
1
star
36

LA-data-meetups

1
star
37

BigDataDayLA2015-DataScience

List of talks from the Data Science Track of Big Data Day LA 2015 (annual free conference)
1
star