Royce  Reinger

Royce Reinger

1672107960

H2O: An Open Source, Distributed, Fast & Scalable Machine Learning

H2O

H2O is an in-memory platform for distributed, scalable machine learning. H2O uses familiar interfaces like R, Python, Scala, Java, JSON and the Flow notebook/web interface, and works seamlessly with big data technologies like Hadoop and Spark. H2O provides implementations of many popular algorithms such as Generalized Linear Models (GLM), Gradient Boosting Machines (including XGBoost), Random Forests, Deep Neural Networks, Stacked Ensembles, Naive Bayes, Generalized Additive Models (GAM), Cox Proportional Hazards, K-Means, PCA, Word2Vec, as well as a fully automatic machine learning algorithm (H2O AutoML).

H2O is extensible so that developers can add data transformations and custom algorithms of their choice and access them through all of those clients. H2O models can be downloaded and loaded into H2O memory for scoring, or exported into POJO or MOJO format for extemely fast scoring in production. More information can be found in the H2O User Guide.

H2O-3 (this repository) is the third incarnation of H2O, and the successor to H2O-2.

Table of Contents

  • Downloading H2O-3
  • Open Source Resources
    • Issue Tracking and Feature Requests
    • List of H2O Resources
  • Using H2O-3 Code Artifacts (libraries)
  • Building H2O-3
  • Launching H2O after Building
  • Building H2O on Hadoop
  • Sparkling Water
  • Documentation
  • Citing H2O
  • Community / Advisors / Investors

1. Downloading H2O-3

While most of this README is written for developers who do their own builds, most H2O users just download and use a pre-built version. If you are a Python or R user, the easiest way to install H2O is via PyPI or Anaconda (for Python) or CRAN (for R):

Python

pip install h2o

R

install.packages("h2o")

For the latest stable, nightly, Hadoop (or Spark / Sparkling Water) releases, or the stand-alone H2O jar, please visit: https://h2o.ai/download

More info on downloading & installing H2O is available in the H2O User Guide.

2. Open Source Resources

Most people interact with three or four primary open source resources: GitHub (which you've already found), JIRA (for bug reports and issue tracking), Stack Overflow for H2O code/software-specific questions, and h2ostream (a Google Group / email discussion forum) for questions not suitable for Stack Overflow. There is also a Gitter H2O developer chat group, however for archival purposes & to maximize accessibility, we'd prefer that standard H2O Q&A be conducted on Stack Overflow.

2.1 Issue Tracking and Feature Requests

(Note: There is only one issue tracking system for the project. GitHub issues are not enabled; you must use JIRA.)

You can browse and create new issues in our open source JIRA: http://jira.h2o.ai

  • You can browse and search for issues without logging in to JIRA:
    1. Click the Issues menu
    2. Click Search for issues
  • To create an issue (either a bug or a feature request), please create yourself an account first:
    1. Click the Log In button on the top right of the screen
    2. Click Create an acccount near the bottom of the login box
    3. Once you have created an account and logged in, use the Create button on the menu to create an issue
    4. Create H2O-3 issues in the PUBDEV project. (Note: Sparkling Water questions should be filed under the SW project.)
  • You can also vote for feature requests and/or other issues. Voting can help H2O prioritize the features that are included in each release. 1. Go to the H2O JIRA page. 2. Click Log In to either log in or create an account if you do not already have one. 3. Search for the feature that you want to prioritize, or create a new feature. 4. Click on the Vote for this issue link. This is located on the right side of the issue under the People section.

2.2 List of H2O Resources

GitHub

JIRA -- file bug reports / track issues here

  • The PUBDEV project contains issues for the current H2O-3 project)

Stack Overflow -- ask all code/software questions here

Cross Validated (Stack Exchange) -- ask algorithm/theory questions here

h2ostream Google Group -- ask non-code related questions here

Gitter H2O Developer Chat

Documentation

Download (pre-built packages)

Jenkins (H2O build and test system)

Website

Twitter -- follow us for updates and H2O news!

Awesome H2O -- share your H2O-powered creations with us

3. Using H2O-3 Artifacts

Every nightly build publishes R, Python, Java, and Scala artifacts to a build-specific repository. In particular, you can find Java artifacts in the maven/repo directory.

Here is an example snippet of a gradle build file using h2o-3 as a dependency. Replace x, y, z, and nnnn with valid numbers.

// h2o-3 dependency information
def h2oBranch = 'master'
def h2oBuildNumber = 'nnnn'
def h2oProjectVersion = "x.y.z.${h2oBuildNumber}"

repositories {
  // h2o-3 dependencies
  maven {
    url "https://s3.amazonaws.com/h2o-release/h2o-3/${h2oBranch}/${h2oBuildNumber}/maven/repo/"
  }
}

dependencies {
  compile "ai.h2o:h2o-core:${h2oProjectVersion}"
  compile "ai.h2o:h2o-algos:${h2oProjectVersion}"
  compile "ai.h2o:h2o-web:${h2oProjectVersion}"
  compile "ai.h2o:h2o-app:${h2oProjectVersion}"
}

Refer to the latest H2O-3 bleeding edge nightly build page for information about installing nightly build artifacts.

Refer to the h2o-droplets GitHub repository for a working example of how to use Java artifacts with gradle.

Note: Stable H2O-3 artifacts are periodically published to Maven Central (click here to search) but may substantially lag behind H2O-3 Bleeding Edge nightly builds.

4. Building H2O-3

Getting started with H2O development requires JDK 1.8+, Node.js, Gradle, Python and R. We use the Gradle wrapper (called gradlew) to ensure up-to-date local versions of Gradle and other dependencies are installed in your development directory.

4.1. Before building

Building h2o requires a properly set up R environment with required packages and Python environment with the following packages:

grip
future
tabulate
requests
wheel

To install these packages you can use pip or conda. If you have troubles installing these packages on Windows, please follow section Setup on Windows of this guide.

(Note: It is recommended to use some virtual environment such as VirtualEnv, to install all packages. )

4.2. Building from the command line (Quick Start)

To build H2O from the repository, perform the following steps.

Recipe 1: Clone fresh, build, skip tests, and run H2O

# Build H2O
git clone https://github.com/h2oai/h2o-3.git
cd h2o-3
./gradlew build -x test

You may encounter problems: e.g. npm missing. Install it:
brew install npm

# Start H2O
java -jar build/h2o.jar

# Point browser to http://localhost:54321

Recipe 2: Clone fresh, build, and run tests (requires a working install of R)

git clone https://github.com/h2oai/h2o-3.git
cd h2o-3
./gradlew syncSmalldata
./gradlew syncRPackages
./gradlew build

Notes:

  • Running tests starts five test JVMs that form an H2O cluster and requires at least 8GB of RAM (preferably 16GB of RAM).
  • Running ./gradlew syncRPackages is supported on Windows, OS X, and Linux, and is strongly recommended but not required. ./gradlew syncRPackages ensures a complete and consistent environment with pre-approved versions of the packages required for tests and builds. The packages can be installed manually, but we recommend setting an ENV variable and using ./gradlew syncRPackages. To set the ENV variable, use the following format (where `${WORKSPACE} can be any path):
mkdir -p ${WORKSPACE}/Rlibrary
export R_LIBS_USER=${WORKSPACE}/Rlibrary

Recipe 3: Pull, clean, build, and run tests

git pull
./gradlew syncSmalldata
./gradlew syncRPackages
./gradlew clean
./gradlew build

Notes

We recommend using ./gradlew clean after each git pull.

Skip tests by adding -x test at the end the gradle build command line. Tests typically run for 7-10 minutes on a Macbook Pro laptop with 4 CPUs (8 hyperthreads) and 16 GB of RAM.

Syncing smalldata is not required after each pull, but if tests fail due to missing data files, then try ./gradlew syncSmalldata as the first troubleshooting step. Syncing smalldata downloads data files from AWS S3 to the smalldata directory in your workspace. The sync is incremental. Do not check in these files. The smalldata directory is in .gitignore. If you do not run any tests, you do not need the smalldata directory.

Running ./gradlew syncRPackages is supported on Windows, OS X, and Linux, and is strongly recommended but not required. ./gradlew syncRPackages ensures a complete and consistent environment with pre-approved versions of the packages required for tests and builds. The packages can be installed manually, but we recommend setting an ENV variable and using ./gradlew syncRPackages. To set the ENV variable, use the following format (where ${WORKSPACE} can be any path):

mkdir -p ${WORKSPACE}/Rlibrary
export R_LIBS_USER=${WORKSPACE}/Rlibrary

Recipe 4: Just building the docs

./gradlew clean && ./gradlew build -x test && (export DO_FAST=1; ./gradlew dist)
open target/docs-website/h2o-docs/index.html

Recipe 5: Building using a Makefile

Root of the git repository contains a Makefile with convenient shortcuts for frequent build targets used in development. To build h2o.jar while skipping tests and also the building of alternative assemblies, execute

make

To build h2o.jar using the minimal assembly, run

make minimal

The minimal assembly is well suited for developement of H2O machine learning algorithms. It doesn't bundle some heavyweight dependencies (like Hadoop) and using it saves build time as well as need to download large libraries from Maven repositories.

4.3. Setup on Windows

Step 1: Download and install WinPython.

From the command line, validate python is using the newly installed package by using which python (or sudo which python). Update the Environment variable with the WinPython path.

Step 2: Install required Python packages:

pip install grip future tabulate wheel

Step 3: Install JDK

Install Java 1.8+ and add the appropriate directory C:\Program Files\Java\jdk1.7.0_65\bin with java.exe to PATH in Environment Variables. To make sure the command prompt is detecting the correct Java version, run:

javac -version

The CLASSPATH variable also needs to be set to the lib subfolder of the JDK:

CLASSPATH=/<path>/<to>/<jdk>/lib

Step 4. Install Node.js

Install Node.js and add the installed directory C:\Program Files\nodejs, which must include node.exe and npm.cmd to PATH if not already prepended.

Step 5. Install R, the required packages, and Rtools:

Install R and add the bin directory to your PATH if not already included.

Install the following R packages:

To install these packages from within an R session:

pkgs <- c("RCurl", "jsonlite", "statmod", "devtools", "roxygen2", "testthat")
for (pkg in pkgs) {
  if (! (pkg %in% rownames(installed.packages()))) install.packages(pkg)
}

Note that libcurl is required for installation of the RCurl R package.

Note that this packages don't cover running tests, they for building H2O only.

Finally, install Rtools, which is a collection of command line tools to facilitate R development on Windows.

NOTE: During Rtools installation, do not install Cygwin.dll.

Step 6. Install Cygwin

NOTE: During installation of Cygwin, deselect the Python packages to avoid a conflict with the Python.org package.

Step 6b. Validate Cygwin

If Cygwin is already installed, remove the Python packages or ensure that Native Python is before Cygwin in the PATH variable.

Step 7. Update or validate the Windows PATH variable to include R, Java JDK, Cygwin.

Step 8. Git Clone h2o-3

If you don't already have a Git client, please install one. The default one can be found here http://git-scm.com/downloads. Make sure that command prompt support is enabled before the installation.

Download and update h2o-3 source codes:

git clone https://github.com/h2oai/h2o-3

Step 9. Run the top-level gradle build:

cd h2o-3
./gradlew.bat build

If you encounter errors run again with --stacktrace for more instructions on missing dependencies.

4.4. Setup on OS X

If you don't have Homebrew, we recommend installing it. It makes package management for OS X easy.

Step 1. Install JDK

Install Java 1.8+. To make sure the command prompt is detecting the correct Java version, run:

javac -version

Step 2. Install Node.js:

Using Homebrew:

brew install node

Otherwise, install from the NodeJS website.

Step 3. Install R and the required packages:

Install R and add the bin directory to your PATH if not already included.

Install the following R packages:

To install these packages from within an R session:

pkgs <- c("RCurl", "jsonlite", "statmod", "devtools", "roxygen2", "testthat")
for (pkg in pkgs) {
  if (! (pkg %in% rownames(installed.packages()))) install.packages(pkg)
}

Note that libcurl is required for installation of the RCurl R package.

Note that this packages don't cover running tests, they for building H2O only.

Step 4. Install python and the required packages:

Install python:

brew install python

Install pip package manager:

sudo easy_install pip

Next install required packages:

sudo pip install wheel requests future tabulate  

Step 5. Git Clone h2o-3

OS X should already have Git installed. To download and update h2o-3 source codes:

git clone https://github.com/h2oai/h2o-3

Step 6. Run the top-level gradle build:

cd h2o-3
./gradlew build

Note: on a regular machine it may take very long time (about an hour) to run all the tests.

If you encounter errors run again with --stacktrace for more instructions on missing dependencies.

4.5. Setup on Ubuntu 14.04

Step 1. Install Node.js

curl -sL https://deb.nodesource.com/setup_0.12 | sudo bash -
sudo apt-get install -y nodejs

Step 2. Install JDK:

Install Java 8. Installation instructions can be found here JDK installation. To make sure the command prompt is detecting the correct Java version, run:

javac -version

Step 3. Install R and the required packages:

Installation instructions can be found here R installation. Click “Download R for Linux”. Click “ubuntu”. Follow the given instructions.

To install the required packages, follow the same instructions as for OS X above.

Note: If the process fails to install RStudio Server on Linux, run one of the following:

sudo apt-get install libcurl4-openssl-dev

or

sudo apt-get install libcurl4-gnutls-dev

Step 4. Git Clone h2o-3

If you don't already have a Git client:

sudo apt-get install git

Download and update h2o-3 source codes:

git clone https://github.com/h2oai/h2o-3

Step 5. Run the top-level gradle build:

cd h2o-3
./gradlew build

If you encounter errors, run again using --stacktrace for more instructions on missing dependencies.

Make sure that you are not running as root, since bower will reject such a run.

4.6. Setup on Ubuntu 13.10

Step 1. Install Node.js

curl -sL https://deb.nodesource.com/setup_16.x | sudo bash -
sudo apt-get install -y nodejs

Steps 2-4. Follow steps 2-4 for Ubuntu 14.04 (above)

4.7. Setup on CentOS 7

cd /opt
sudo wget --no-cookies --no-check-certificate --header "Cookie: gpw_e24=http%3A%2F%2Fwww.oracle.com%2F; oraclelicense=accept-securebackup-cookie" "http://download.oracle.com/otn-pub/java/jdk/7u79-b15/jdk-7u79-linux-x64.tar.gz"

sudo tar xzf jdk-7u79-linux-x64.tar.gz
cd jdk1.7.0_79

sudo alternatives --install /usr/bin/java java /opt/jdk1.7.0_79/bin/java 2

sudo alternatives --install /usr/bin/jar jar /opt/jdk1.7.0_79/bin/jar 2
sudo alternatives --install /usr/bin/javac javac /opt/jdk1.7.0_79/bin/javac 2
sudo alternatives --set jar /opt/jdk1.7.0_79/bin/jar
sudo alternatives --set javac /opt/jdk1.7.0_79/bin/javac

cd /opt

sudo wget http://dl.fedoraproject.org/pub/epel/7/x86_64/e/epel-release-7-5.noarch.rpm
sudo rpm -ivh epel-release-7-5.noarch.rpm

sudo echo "multilib_policy=best" >> /etc/yum.conf
sudo yum -y update

sudo yum -y install R R-devel git python-pip openssl-devel libxml2-devel libcurl-devel gcc gcc-c++ make openssl-devel kernel-devel texlive texinfo texlive-latex-fonts libX11-devel mesa-libGL-devel mesa-libGL nodejs npm python-devel numpy scipy python-pandas

sudo pip install scikit-learn grip tabulate statsmodels wheel

mkdir ~/Rlibrary
export JAVA_HOME=/opt/jdk1.7.0_79
export JRE_HOME=/opt/jdk1.7.0_79/jre
export PATH=$PATH:/opt/jdk1.7.0_79/bin:/opt/jdk1.7.0_79/jre/bin
export R_LIBS_USER=~/Rlibrary

# install local R packages
R -e 'install.packages(c("RCurl","jsonlite","statmod","devtools","roxygen2","testthat"), dependencies=TRUE, repos="http://cran.rstudio.com/")'

cd
git clone https://github.com/h2oai/h2o-3.git
cd h2o-3

# Build H2O
./gradlew syncSmalldata
./gradlew syncRPackages
./gradlew build -x test

5. Launching H2O after Building

To start the H2O cluster locally, execute the following on the command line:

java -jar build/h2o.jar

A list of available start-up JVM and H2O options (e.g. -Xmx, -nthreads, -ip), is available in the H2O User Guide.

6. Building H2O on Hadoop

Pre-built H2O-on-Hadoop zip files are available on the download page. Each Hadoop distribution version has a separate zip file in h2o-3.

To build H2O with Hadoop support yourself, first install sphinx for python: pip install sphinx Then start the build by entering the following from the top-level h2o-3 directory:

export BUILD_HADOOP=1;
./gradlew build -x test;
./gradlew dist;

This will create a directory called 'target' and generate zip files there. Note that BUILD_HADOOP is the default behavior when the username is jenkins (refer to settings.gradle); otherwise you have to request it, as shown above.

To build the zip files only for selected distributions use the H2O_TARGET env variable together with BUILD_HADOOP, for example:

export BUILD_HADOOP=1;
export H2O_TARGET=hdp2.5,hdp2.6
./gradlew build -x test;
./gradlew dist;

Adding support for a new version of Hadoop

In the h2o-hadoop directory, each Hadoop version has a build directory for the driver and an assembly directory for the fatjar.

You need to:

  1. Add a new driver directory and assembly directory (each with a build.gradle file) in h2o-hadoop
  2. Add these new projects to h2o-3/settings.gradle
  3. Add the new Hadoop version to HADOOP_VERSIONS in make-dist.sh
  4. Add the new Hadoop version to the list in h2o-dist/buildinfo.json

Secure user impersonation

Hadoop supports secure user impersonation through its Java API. A kerberos-authenticated user can be allowed to proxy any username that meets specified criteria entered in the NameNode's core-site.xml file. This impersonation only applies to interactions with the Hadoop API or the APIs of Hadoop-related services that support it (this is not the same as switching to that user on the machine of origin).

Setting up secure user impersonation (for h2o):

Create or find an id to use as proxy which has limited-to-no access to HDFS or related services; the proxy user need only be used to impersonate a user

(Required if not using h2odriver) If you are not using the driver (e.g. you wrote your own code against h2o's API using Hadoop), make the necessary code changes to impersonate users (see org.apache.hadoop.security.UserGroupInformation)

In either of Ambari/Cloudera Manager or directly on the NameNode's core-site.xml file, add 2/3 properties for the user we wish to use as a proxy (replace with the simple user name - not the fully-qualified principal name).

  • hadoop.proxyuser.<proxyusername>.hosts: the hosts the proxy user is allowed to perform impersonated actions on behalf of a valid user from
  • hadoop.proxyuser.<proxyusername>.groups: the groups an impersonated user must belong to for impersonation to work with that proxy user
  • hadoop.proxyuser.<proxyusername>.users: the users a proxy user is allowed to impersonate
  • Example: <property> <name>hadoop.proxyuser.myproxyuser.hosts</name> <value>host1,host2</value> </property> <property> <name>hadoop.proxyuser.myproxyuser.groups</name> <value>group1,group2</value> </property> <property> <name>hadoop.proxyuser.myproxyuser.users</name> <value>user1,user2</value> </property>

Restart core services such as HDFS & YARN for the changes to take effect

Impersonated HDFS actions can be viewed in the hdfs audit log ('auth:PROXY' should appear in the ugi= field in entries where this is applicable). YARN similarly should show 'auth:PROXY' somewhere in the Resource Manager UI.

To use secure impersonation with h2o's Hadoop driver:

Before this is attempted, see Risks with impersonation, below

When using the h2odriver (e.g. when running with hadoop jar ...), specify -principal <proxy user kerberos principal>, -keytab <proxy user keytab path>, and -run_as_user <hadoop username to impersonate>, in addition to any other arguments needed. If the configuration was successful, the proxy user will log in and impersonate the -run_as_user as long as that user is allowed by either the users or groups configuration property (configured above); this is enforced by HDFS & YARN, not h2o's code. The driver effectively sets its security context as the impersonated user so all supported Hadoop actions will be performed as that user (e.g. YARN, HDFS APIs support securely impersonated users, but others may not).

Precautions to take when leveraging secure impersonation

  • The target use case for secure impersonation is applications or services that pre-authenticate a user and then use (in this case) the h2odriver on behalf of that user. H2O's Steam is a perfect example: auth user in web app over SSL, impersonate that user when creating the h2o YARN container.
  • The proxy user should have limited permissions in the Hadoop cluster; this means no permissions to access data or make API calls. In this way, if it's compromised it would only have the power to impersonate a specific subset of the users in the cluster and only from specific machines.
  • Use the hadoop.proxyuser.<proxyusername>.hosts property whenever possible or practical.
  • Don't give the proxyusername's password or keytab to any user you don't want to impersonate another user (this is generally any user). The point of impersonation is not to allow users to impersonate each other. See the first bullet for the typical use case.
  • Limit user logon to the machine the proxying is occurring from whenever practical.
  • Make sure the keytab used to login the proxy user is properly secured and that users can't login as that id (via su, for instance)
  • Never set hadoop.proxyuser..{users,groups} to '*' or 'hdfs', 'yarn', etc. Allowing any user to impersonate hdfs, yarn, or any other important user/group should be done with extreme caution and strongly analyzed before it's allowed.

Risks with secure impersonation

  • The id performing the impersonation can be compromised like any other user id.
  • Setting any hadoop.proxyuser.<proxyusername>.{hosts,groups,users} property to '*' can greatly increase exposure to security risk.
  • When users aren't authenticated before being used with the driver (e.g. like Steam does via a secure web app/API), auditability of the process/system is difficult.
$ git diff
diff --git a/h2o-app/build.gradle b/h2o-app/build.gradle
index af3b929..097af85 100644
--- a/h2o-app/build.gradle
+++ b/h2o-app/build.gradle
@@ -8,5 +8,6 @@ dependencies {
   compile project(":h2o-algos")
   compile project(":h2o-core")
   compile project(":h2o-genmodel")
+  compile project(":h2o-persist-hdfs")
 }

diff --git a/h2o-persist-hdfs/build.gradle b/h2o-persist-hdfs/build.gradle
index 41b96b2..6368ea9 100644
--- a/h2o-persist-hdfs/build.gradle
+++ b/h2o-persist-hdfs/build.gradle
@@ -2,5 +2,6 @@ description = "H2O Persist HDFS"

 dependencies {
   compile project(":h2o-core")
-  compile("org.apache.hadoop:hadoop-client:2.0.0-cdh4.3.0")
+  compile("org.apache.hadoop:hadoop-client:2.4.1-mapr-1408")
+  compile("org.json:org.json:chargebee-1.0")
 }

7. Sparkling Water

Sparkling Water combines two open-source technologies: Apache Spark and the H2O Machine Learning platform. It makes H2O’s library of advanced algorithms, including Deep Learning, GLM, GBM, K-Means, and Distributed Random Forest, accessible from Spark workflows. Spark users can select the best features from either platform to meet their Machine Learning needs. Users can combine Spark's RDD API and Spark MLLib with H2O’s machine learning algorithms, or use H2O independently of Spark for the model building process and post-process the results in Spark.

Sparkling Water Resources:

8. Documentation

Documenation Homepage

The main H2O documentation is the H2O User Guide. Visit http://docs.h2o.ai for the top-level introduction to documentation on H2O projects.

Generate REST API documentation

To generate the REST API documentation, use the following commands:

cd ~/h2o-3
cd py
python ./generate_rest_api_docs.py  # to generate Markdown only
python ./generate_rest_api_docs.py --generate_html  --github_user GITHUB_USER --github_password GITHUB_PASSWORD # to generate Markdown and HTML

The default location for the generated documentation is build/docs/REST.

If the build fails, try gradlew clean, then git clean -f.

Bleeding edge build documentation

Documentation for each bleeding edge nightly build is available on the nightly build page.

9. Citing H2O

If you use H2O as part of your workflow in a publication, please cite your H2O resource(s) using the following BibTex entry:

H2O Software

@Manual{h2o_package_or_module,
    title = {package_or_module_title},
    author = {H2O.ai},
    year = {year},
    month = {month},
    note = {version_information},
    url = {resource_url},
}

Formatted H2O Software citation examples:

H2O Booklets

H2O algorithm booklets are available at the Documentation Homepage.

@Manual{h2o_booklet_name,
    title = {booklet_title},
    author = {list_of_authors},
    year = {year},
    month = {month},
    url = {link_url},
}

Formatted booklet citation examples:

Arora, A., Candel, A., Lanford, J., LeDell, E., and Parmar, V. (Oct. 2016). Deep Learning with H2O. http://docs.h2o.ai/h2o/latest-stable/h2o-docs/booklets/DeepLearningBooklet.pdf.

Click, C., Lanford, J., Malohlava, M., Parmar, V., and Roark, H. (Oct. 2016). Gradient Boosted Models with H2O. http://docs.h2o.ai/h2o/latest-stable/h2o-docs/booklets/GBMBooklet.pdf.

10. Community

H2O has been built by a great many number of contributors over the years both within H2O.ai (the company) and the greater open source community. You can begin to contribute to H2O by answering Stack Overflow questions or filing bug reports. Please join us!

Team & Committers

SriSatish Ambati
Cliff Click
Tom Kraljevic
Tomas Nykodym
Michal Malohlava
Kevin Normoyle
Spencer Aiello
Anqi Fu
Nidhi Mehta
Arno Candel
Josephine Wang
Amy Wang
Max Schloemer
Ray Peck
Prithvi Prabhu
Brandon Hill
Jeff Gambera
Ariel Rao
Viraj Parmar
Kendall Harris
Anand Avati
Jessica Lanford
Alex Tellez
Allison Washburn
Amy Wang
Erik Eckstrand
Neeraja Madabhushi
Sebastian Vidrio
Ben Sabrin
Matt Dowle
Mark Landry
Erin LeDell
Andrey Spiridonov
Oleg Rogynskyy
Nick Martin
Nancy Jordan
Nishant Kalonia
Nadine Hussami
Jeff Cramer
Stacie Spreitzer
Vinod Iyengar
Charlene Windom
Parag Sanghavi
Navdeep Gill
Lauren DiPerna
Anmol Bal
Mark Chan
Nick Karpov
Avni Wadhwa
Ashrith Barthur
Karen Hayrapetyan
Jo-fai Chow
Dmitry Larko
Branden Murray
Jakub Hava
Wen Phan
Magnus Stensmo
Pasha Stetsenko
Angela Bartz
Mateusz Dymczyk
Micah Stubbs
Ivy Wang
Terone Ward
Leland Wilkinson
Wendy Wong
Nikhil Shekhar
Pavel Pscheidl
Michal Kurka
Veronika Maurerova
Jan Sterba
Jan Jendrusak
Sebastien Poirier
Tomáš Frýda
Ard Kelmendi

Advisors

Scientific Advisory Council

Stephen Boyd
Rob Tibshirani
Trevor Hastie

Systems, Data, FileSystems and Hadoop

Doug Lea
Chris Pouliot
Dhruba Borthakur

Investors

Jishnu Bhattacharjee, Nexus Venture Partners
Anand Babu Periasamy
Anand Rajaraman
Ash Bhardwaj
Rakesh Mathur
Michael Marks
Egbert Bierman
Rajesh Ambati

Download Details:

Author: h2oai
Source Code: https://github.com/h2oai/h2o-3 
License: Apache-2.0 license

#machinelearning #python #datascience #java 

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Buddha Community

H2O: An Open Source, Distributed, Fast & Scalable Machine Learning
sophia tondon

sophia tondon

1620898103

5 Latest Technology Trends of Machine Learning for 2021

Check out the 5 latest technologies of machine learning trends to boost business growth in 2021 by considering the best version of digital development tools. It is the right time to accelerate user experience by bringing advancement in their lifestyle.

#machinelearningapps #machinelearningdevelopers #machinelearningexpert #machinelearningexperts #expertmachinelearningservices #topmachinelearningcompanies #machinelearningdevelopmentcompany

Visit Blog- https://www.xplace.com/article/8743

#machine learning companies #top machine learning companies #machine learning development company #expert machine learning services #machine learning experts #machine learning expert

Nora Joy

1604154094

Hire Machine Learning Developers in India

Hire machine learning developers in India ,DxMinds Technologies is the best product engineering company in India making innovative solutions using Machine learning and deep learning. We are among the best to hire machine learning experts in India work in different industry domains like Healthcare retail, banking and finance ,oil and gas, ecommerce, telecommunication ,FMCG, fashion etc.
**
Services**
Product Engineering & Development
Re-engineering
Maintenance / Support / Sustenance
Integration / Data Management
QA & Automation
Reach us 917483546629

Hire machine learning developers in India ,DxMinds Technologies is the best product engineering company in India making innovative solutions using Machine learning and deep learning. We are among the best to hire machine learning experts in India work in different industry domains like Healthcare retail, banking and finance ,oil and gas, ecommerce, telecommunication ,FMCG, fashion etc.

Services

Product Engineering & Development

Re-engineering

Maintenance / Support / Sustenance

Integration / Data Management

QA & Automation

Reach us 917483546629

#hire machine learning developers in india #hire dedicated machine learning developers in india #hire machine learning programmers in india #hire machine learning programmers #hire dedicated machine learning developers #hire machine learning developers

Nora Joy

1607006620

Applications of machine learning in different industry domains

Machine learning applications are a staple of modern business in this digital age as they allow them to perform tasks on a scale and scope previously impossible to accomplish.Businesses from different domains realize the importance of incorporating machine learning in business processes.Today this trending technology transforming almost every single industry ,business from different industry domains hire dedicated machine learning developers for skyrocket the business growth.Following are the applications of machine learning in different industry domains.

Transportation industry

Machine learning is one of the technologies that have already begun their promising marks in the transportation industry.Autonomous Vehicles,Smartphone Apps,Traffic Management Solutions,Law Enforcement,Passenger Transportation etc are the applications of AI and ML in the transportation industry.Following challenges in the transportation industry can be solved by machine learning and Artificial Intelligence.

  • ML and AI can offer high security in the transportation industry.
  • It offers high reliability of their services or vehicles.
  • The adoption of this technology in the transportation industry can increase the efficiency of the service.
  • In the transportation industry ML helps scientists and engineers come up with far more environmentally sustainable methods for powering and operating vehicles and machinery for travel and transport.

Healthcare industry

Technology-enabled smart healthcare is the latest trend in the healthcare industry. Different areas of healthcare, such as patient care, medical records, billing, alternative models of staffing, IP capitalization, smart healthcare, and administrative and supply cost reduction. Hire dedicated machine learning developers for any of the following applications.

  • Identifying Diseases and Diagnosis
  • Drug Discovery and Manufacturing
  • Medical Imaging Diagnosis
  • Personalized Medicine
  • Machine Learning-based Behavioral Modification
  • Smart Health Records
  • Clinical Trial and Research
  • Better Radiotherapy
  • Crowdsourced Data Collection
  • Outbreak Prediction

**
Finance industry**

In financial industries organizations like banks, fintech, regulators and insurance are Adopting machine learning to improve their facilities.Following are the use cases of machine learning in finance.

  • Fraud prevention
  • Risk management
  • Investment predictions
  • Customer service
  • Digital assistants
  • Marketing
  • Network security
  • Loan underwriting
  • Algorithmic trading
  • Process automation
  • Document interpretation
  • Content creation
  • Trade settlements
  • Money-laundering prevention
  • Custom machine learning solutions

Education industry

Education industry is one of the industries which is investing in machine learning as it offers more efficient and easierlearning.AdaptiveLearning,IncreasingEfficiency,Learning Analytics,Predictive Analytics,Personalized Learning,Evaluating Assessments etc are the applications of machine learning in the education industry.

Outsource your machine learning solution to India,India is the best outsourcing destination offering best in class high performing tasks at an affordable price.Business** hire dedicated machine learning developers in India for making your machine learning app idea into reality.
**
Future of machine learning

Continuous technological advances are bound to hit the field of machine learning, which will shape the future of machine learning as an intensively evolving language.

  • Improved Unsupervised Algorithms
  • Increased Adoption of Quantum Computing
  • Enhanced Personalization
  • Improved Cognitive Services
  • Rise of Robots

**Conclusion
**
Today most of the business from different industries are hire machine learning developers in India and achieve their business goals. This technology may have multiple applications, and, interestingly, it hasn’t even started yet but having taken such a massive leap, it also opens up so many possibilities in the existing business models in such a short period of time. There is no question that the increase of machine learning also brings the demand for mobile apps, so most companies and agencies employ Android developers and hire iOS developers to incorporate machine learning features into them.

#hire machine learning developers in india #hire dedicated machine learning developers in india #hire machine learning programmers in india #hire machine learning programmers #hire dedicated machine learning developers #hire machine learning developers

Nora Joy

1607006620

Hire Machine Learning Developer | Hire ML Experts in India

Machine learning applications are a staple of modern business in this digital age as they allow them to perform tasks on a scale and scope previously impossible to accomplish.Businesses from different domains realize the importance of incorporating machine learning in business processes.Today this trending technology transforming almost every single industry ,business from different industry domains hire dedicated machine learning developers for skyrocket the business growth.Following are the applications of machine learning in different industry domains.

Transportation industry

Machine learning is one of the technologies that have already begun their promising marks in the transportation industry.Autonomous Vehicles,Smartphone Apps,Traffic Management Solutions,Law Enforcement,Passenger Transportation etc are the applications of AI and ML in the transportation industry.Following challenges in the transportation industry can be solved by machine learning and Artificial Intelligence.

  • ML and AI can offer high security in the transportation industry.
  • It offers high reliability of their services or vehicles.
  • The adoption of this technology in the transportation industry can increase the efficiency of the service.
  • In the transportation industry ML helps scientists and engineers come up with far more environmentally sustainable methods for powering and operating vehicles and machinery for travel and transport.

Healthcare industry

Technology-enabled smart healthcare is the latest trend in the healthcare industry. Different areas of healthcare, such as patient care, medical records, billing, alternative models of staffing, IP capitalization, smart healthcare, and administrative and supply cost reduction. Hire dedicated machine learning developers for any of the following applications.

  • Identifying Diseases and Diagnosis
  • Drug Discovery and Manufacturing
  • Medical Imaging Diagnosis
  • Personalized Medicine
  • Machine Learning-based Behavioral Modification
  • Smart Health Records
  • Clinical Trial and Research
  • Better Radiotherapy
  • Crowdsourced Data Collection
  • Outbreak Prediction

**
Finance industry**

In financial industries organizations like banks, fintech, regulators and insurance are Adopting machine learning to improve their facilities.Following are the use cases of machine learning in finance.

  • Fraud prevention
  • Risk management
  • Investment predictions
  • Customer service
  • Digital assistants
  • Marketing
  • Network security
  • Loan underwriting
  • Algorithmic trading
  • Process automation
  • Document interpretation
  • Content creation
  • Trade settlements
  • Money-laundering prevention
  • Custom machine learning solutions

Education industry

Education industry is one of the industries which is investing in machine learning as it offers more efficient and easierlearning.AdaptiveLearning,IncreasingEfficiency,Learning Analytics,Predictive Analytics,Personalized Learning,Evaluating Assessments etc are the applications of machine learning in the education industry.

Outsource your machine learning solution to India,India is the best outsourcing destination offering best in class high performing tasks at an affordable price.Business** hire dedicated machine learning developers in India for making your machine learning app idea into reality.
**
Future of machine learning

Continuous technological advances are bound to hit the field of machine learning, which will shape the future of machine learning as an intensively evolving language.

  • Improved Unsupervised Algorithms
  • Increased Adoption of Quantum Computing
  • Enhanced Personalization
  • Improved Cognitive Services
  • Rise of Robots

**Conclusion
**
Today most of the business from different industries are hire machine learning developers in India and achieve their business goals. This technology may have multiple applications, and, interestingly, it hasn’t even started yet but having taken such a massive leap, it also opens up so many possibilities in the existing business models in such a short period of time. There is no question that the increase of machine learning also brings the demand for mobile apps, so most companies and agencies employ Android developers and hire iOS developers to incorporate machine learning features into them.

#hire machine learning developers in india #hire dedicated machine learning developers in india #hire machine learning programmers in india #hire machine learning programmers #hire dedicated machine learning developers #hire machine learning developers

Ananya Gupta

Ananya Gupta

1595485129

Pros and Cons of Machine Learning Language

Amid all the promotion around Big Data, we continue hearing the expression “AI”. In addition to the fact that it offers a profitable vocation, it vows to tackle issues and advantage organizations by making expectations and helping them settle on better choices. In this blog, we will gain proficiency with the Advantages and Disadvantages of Machine Learning. As we will attempt to comprehend where to utilize it and where not to utilize Machine learning.

In this article, we discuss the Pros and Cons of Machine Learning.
Each coin has two faces, each face has its property and highlights. It’s an ideal opportunity to reveal the essence of ML. An extremely integral asset that holds the possibility to reform how things work.

Pros of Machine learning

  1. **Effectively recognizes patterns and examples **

AI can survey enormous volumes of information and find explicit patterns and examples that would not be evident to people. For example, for an online business site like Amazon, it serves to comprehend the perusing practices and buy chronicles of its clients to help oblige the correct items, arrangements, and updates pertinent to them. It utilizes the outcomes to uncover important promotions to them.

**Do you know the Applications of Machine Learning? **

  1. No human mediation required (mechanization)

With ML, you don’t have to keep an eye on the venture at all times. Since it implies enabling machines to learn, it lets them make forecasts and improve the calculations all alone. A typical case of this is hostile to infection programming projects; they figure out how to channel new dangers as they are perceived. ML is additionally acceptable at perceiving spam.

  1. **Constant Improvement **

As ML calculations gain understanding, they continue improving in precision and productivity. This lets them settle on better choices. Let’s assume you have to make a climate figure model. As the measure of information you have continues developing, your calculations figure out how to make increasingly exact expectations quicker.

  1. **Taking care of multi-dimensional and multi-assortment information **

AI calculations are acceptable at taking care of information that is multi-dimensional and multi-assortment, and they can do this in unique or unsure conditions. Key Difference Between Machine Learning and Artificial Intelligence

  1. **Wide Applications **

You could be an e-posterior or a social insurance supplier and make ML work for you. Where it applies, it holds the ability to help convey a considerably more close to home understanding to clients while additionally focusing on the correct clients.

**Cons of Machine Learning **

With every one of those points of interest to its effectiveness and ubiquity, Machine Learning isn’t great. The accompanying components serve to confine it:

1.** Information Acquisition**

AI requires monstrous informational indexes to prepare on, and these ought to be comprehensive/fair-minded, and of good quality. There can likewise be times where they should trust that new information will be created.

  1. **Time and Resources **

ML needs sufficient opportunity to allow the calculations to learn and grow enough to satisfy their motivation with a lot of precision and pertinence. It additionally needs monstrous assets to work. This can mean extra necessities of PC power for you.
**
Likewise, see the eventual fate of Machine Learning **

  1. **Understanding of Results **

Another significant test is the capacity to precisely decipher results produced by the calculations. You should likewise cautiously pick the calculations for your motivation.

  1. High mistake weakness

AI is self-governing yet exceptionally powerless to mistakes. Assume you train a calculation with informational indexes sufficiently little to not be comprehensive. You end up with one-sided expectations originating from a one-sided preparing set. This prompts unessential promotions being shown to clients. On account of ML, such botches can set off a chain of mistakes that can go undetected for extensive periods. What’s more, when they do get saw, it takes very some effort to perceive the wellspring of the issue, and significantly longer to address it.

**Conclusion: **

Subsequently, we have considered the Pros and Cons of Machine Learning. Likewise, this blog causes a person to comprehend why one needs to pick AI. While Machine Learning can be unimaginably ground-breaking when utilized in the correct manners and in the correct spots (where gigantic preparing informational indexes are accessible), it unquestionably isn’t for everybody. You may likewise prefer to peruse Deep Learning Vs Machine Learning.

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