[ASTERIXDB-2715][STO] Dynamic Memory Component Architecture

- user model changes: yes
- storage format changes: no
- interface changes: yes

Details:
- Introduce a dynamic memory component architecture that uses a global
virtual buffer cache to manage the write memory for all LSM-trees.
- When the overall write memory is nearly full, we flush a dataset
partition at a time using a round-robin way. Additionally, we allow
users to configure the maximum size of filtered memory components
to provide better pruning capability.
- Clean up legacy code for statically allocating write memory to each
dataset.
- Remove the following parameters:
  storage.metadata.memorycomponent.numpages
  storage.max.active.writable.datasets
- Add the following parameters:
  storage.memorycomponent.flush.threshold (default: 0.9)
  storage.filtered.memorycomponent.max.size (default 0)

Change-Id: Ia6a0f4de020acd7af89ef630322526c4be5076e0
Reviewed-on: https://asterix-gerrit.ics.uci.edu/c/asterixdb/+/5824
Reviewed-by: Luo Chen <cluo8@uci.edu>
Reviewed-by: Murtadha Hubail <mhubail@apache.org>
Contrib: Jenkins <jenkins@fulliautomatix.ics.uci.edu>
Integration-Tests: Jenkins <jenkins@fulliautomatix.ics.uci.edu>
Tested-by: Jenkins <jenkins@fulliautomatix.ics.uci.edu>
45 files changed
tree: b1bc55ef61975c7d3e1fa434df7135970b9cd006
  1. asterixdb/
  2. hyracks-fullstack/
  3. .gitattributes
  4. .gitignore
  5. build.xml
  6. pom.xml
  7. README.md
README.md

What is AsterixDB?

AsterixDB is a BDMS (Big Data Management System) with a rich feature set that sets it apart from other Big Data platforms. Its feature set makes it well-suited to modern needs such as web data warehousing and social data storage and analysis. AsterixDB has:

  • Data model
    A semistructured NoSQL style data model (ADM) resulting from extending JSON with object database ideas

  • Query languages
    Two expressive and declarative query languages (SQL++ and AQL) that support a broad range of queries and analysis over semistructured data

  • Scalability
    A parallel runtime query execution engine, Apache Hyracks, that has been scale-tested on up to 1000+ cores and 500+ disks

  • Native storage
    Partitioned LSM-based data storage and indexing to support efficient ingestion and management of semistructured data

  • External storage
    Support for query access to externally stored data (e.g., data in HDFS) as well as to data stored natively by AsterixDB

  • Data types
    A rich set of primitive data types, including spatial and temporal data in addition to integer, floating point, and textual data

  • Indexing
    Secondary indexing options that include B+ trees, R trees, and inverted keyword (exact and fuzzy) index types

  • Transactions
    Basic transactional (concurrency and recovery) capabilities akin to those of a NoSQL store

Learn more about AsterixDB at its website.

Build from source

To build AsterixDB from source, you should have a platform with the following:

  • A Unix-ish environment (Linux, OS X, will all do).
  • git
  • Maven 3.3.9 or newer.
  • Oracle JDK 8 or newer.

Instructions for building the master:

  • Checkout AsterixDB master:

      $git clone https://github.com/apache/asterixdb.git
    
  • Build AsterixDB master:

      $cd asterixdb
      $mvn clean package -DskipTests
    

Run the build on your machine

Here are steps to get AsterixDB running on your local machine:

  • Start a single-machine AsterixDB instance:

      $cd asterixdb/asterix-server/target/asterix-server-*-binary-assembly/apache-asterixdb-*-SNAPSHOT
      $./opt/local/bin/start-sample-cluster.sh
    
  • Good to go and run queries in your browser at:

      http://localhost:19001
    
  • Read more documentation to learn the data model, query language, and how to create a cluster instance.

Documentation

Community support