Skip to content

mrk-andreev/ignite

This branch is 768 commits behind apache/ignite:master.

Folders and files

NameName
Last commit message
Last commit date
Dec 8, 2022
Aug 12, 2021
Mar 11, 2022
Dec 2, 2022
Dec 2, 2022
May 6, 2022
Dec 2, 2022
Sep 7, 2022
Dec 27, 2022
Dec 27, 2022
May 19, 2021
Dec 30, 2022
Dec 2, 2022
Jul 21, 2022
Nov 15, 2022
Jun 17, 2022
Nov 28, 2022
Mar 16, 2022
Mar 11, 2022
Jun 17, 2022
Jun 22, 2020
May 23, 2018
Apr 7, 2022
Apr 8, 2022
Mar 15, 2021
Oct 12, 2022
Jan 15, 2021
Mar 11, 2022
Mar 11, 2022
Dec 2, 2022

Repository files navigation

Apache Ignite

Build Status GitHub Maven Central GitHub release GitHub commit activity Twitter Follow

What is Apache Ignite?

Apache Ignite is a distributed database for high-performance computing with in-memory speed.

Multi-Tier Storage

Apache Ignite is designed to work with memory, disk, and Intel Optane as active storage tiers. The memory tier allows using DRAM and Intel® Optane™ operating in the Memory Mode for data storage and processing needs. The disk tier is optional with the support of two options -- you can persist data in an external database or keep it in the Ignite native persistence. SSD, Flash, HDD, or Intel Optane operating in the AppDirect Mode can be used as a storage device.

Read More

Ignite Native Persistence

Even though Apache Ignite is broadly used as a caching layer on top of external databases, it comes with its native persistence - a distributed, ACID, and SQL-compliant disk-based store. The native persistence integrates into the Ignite multi-tier storage as a disk tier that can be turned on to let Ignite store more data on disk than it can cache in memory and to enable fast cluster restarts.

Read More

ACID Compliance

Data stored in Ignite is ACID-compliant both in memory and on disk, making Ignite a strongly consistent system. Ignite transactions work across the network and can span multiple servers.

Read More

ANSI SQL Support

Apache Ignite comes with a ANSI-99 compliant, horizontally scalable, and fault-tolerant SQL engine that allows you to interact with Ignite as with a regular SQL database using JDBC, ODBC drivers, or native SQL APIs available for Java, C#, C++, Python, and other programming languages. Ignite supports all DML commands, including SELECT, UPDATE, INSERT, and DELETE queries as well as a subset of DDL commands relevant for distributed systems.

Read More

Machine Learning and High-Performance Computing

Apache Ignite Machine Learning is a set of simple, scalable, and efficient tools that allow building predictive machine learning models without costly data transfers. The rationale for adding machine and deep learning to Apache Ignite is quite simple. Today's data scientists have to deal with two major factors that keep ML from mainstream adoption.

High-performance computing (HPC) is the ability to process data and perform complex calculations at high speeds. Using Apache Ignite as a high-performance compute cluster, you can turn a group of commodity machines or a cloud environment into a distributed supercomputer of interconnected Ignite nodes. Ignite enables speed and scale by processing records in memory and reducing network utilization with APIs for data and compute-intensive calculations. Those APIs implement the MapReduce paradigm and allow you to run arbitrary tasks across the cluster of nodes.

Packages

No packages published

Languages

  • Java 79.2%
  • C# 12.3%
  • C++ 7.2%
  • Python 0.5%
  • Shell 0.5%
  • CMake 0.1%
  • Other 0.2%