Caution: H2O-3 is now the current H2O!
Please visit https://github.com/h2oai/h2o-3
H2O
H2O makes Hadoop do math! H2O scales statistics, machine learning and math over BigData. H2O is extensible and users can build blocks using simple math legos in the core. H2O keeps familiar interfaces like R, Excel & JSON so that BigData enthusiasts & experts can explore, munge, model and score datasets using a range of simple to advanced algorithms. Data collection is easy. Decision making is hard. H2O makes it fast and easy to derive insights from your data through faster and better predictive modeling. H2O has a vision of online scoring and modeling in a single platform.
Product Vision for first cut
H2O product, the Analytics Engine will scale Classification and Regression.
- RandomForest, Generalized Linear Modeling (GLM), logistic regression, k-Means, available over R / REST / JSON-API
- Basic Linear Algebra as building blocks for custom algorithms
- High predictive power of the models
- High speed and scale for modeling and scoring over BigData
Data Sources
- We read and write from/to HDFS, S3, NoSQL, SQL
- We ingest data in CSV format from local and distributed filesystems (nfs)
- A JDBC driver for SQL and DataAdapters for NoSQL datasources is in the roadmap. (v2)
Console provides Adhoc Data Analytics at scale via R-like Parser on BigData
- Able to pass and evaluate R-like expressions, slicing and filters make this the most powerful web calculator on BigData
Users
Primary users are Data Analysts looking to wield a powerful tool for Data Modeling in the Real-Time. Microsoft Excel, R, SAS wielding Data Analysts and Statisticians. Hadoop users with data in HDFS will have a first class citizen for doing Math in Hadoop ecosystem. Java and Math engineers can extend core functionality by using and extending legos in a simple java that reads like math. See package hex. Extensibility can also come from writing R expressions that capture your domain.
Design
We use the best execution framework for the algorithm at hand. For first cut parallel algorithms: Map Reduce over distributed fork/join framework brings fine grain parallelism to distributed algorithms. Our algorithms are cache oblivious and fit into the heterogeneous datacenter and laptops to bring best performance. Distributed Arraylets & Data Partitioning to preserve locality. Move code, not data, not people.
Extensions
One of our first powerful extension will be a small tool belt of stats and math legos for Fraud Detection. Dealing with Unbalanced Datasets is a key focus for this. Users will use JSON/REST-api via H2O.R through connects the Analytics Engine into R-IDE/RStudio.
Community
We will build & sustain a vibrant community with the focus of taking software engineering approaches to data science and empowering everyone interested in data to be able to hack data using math and algorithms. Join us on google groups h2ostream.
Team
SriSatish Ambati
Cliff Click
Tom Kraljevic
Earl Hathaway
Tomas Nykodym
Michal Malohlava
Kevin Normoyle
Irene Lang
Spencer Aiello
Anqi Fu
Nidhi Mehta
Arno Candel
Nikole Sanchez
Josephine Wang
Amy Wang
Max Schloemer
Ray Peck
Anand Avati
Sebastian Vidrio
Open Source
Jan Vitek
Mr.Jenkins
Petr Maj
Matt Fowles
Advisors
Scientific Advisory Council
Stephen Boyd
Rob Tibshirani
Trevor Hastie
Systems, Data, FileSystems and Hadoop
Doug Lea
Chris Pouliot
Dhruba Borthakur
Charles Zedlewski
Investors
Jishnu Bhattacharjee, Nexus Venture Partners
Anand Babu Periasamy
Anand Rajaraman
Dipchand Nishar