Apache Cassandra
Apache Cassandra is a free and open-source database management system designed to handle large volumes of data across multiple commodity servers. The system prioritizes availability and scalability over consistency, making it particularly suited for systems with high write throughput requirements due to its LSM tree indexing storage layer.[2] As a wide-column database, Cassandra supports flexible schemas and efficiently handles data models with numerous sparse columns. The system is optimized for applications with well-defined data access patterns that can be incorporated into the schema design.[2] Cassandra supports computer clusters which may span multiple data centers,[3] featuring asynchronous and masterless replication. It enables low-latency operations for all clients and incorporates Amazon's Dynamo distributed storage and replication techniques, combined with Google's Bigtable data storage engine model.[4] HistoryAvinash Lakshman, a co-author of Amazon's Dynamo, and Prashant Malik developed Cassandra at Facebook to support the inbox search functionality. Facebook released Cassandra as open-source software on Google Code in July 2008.[5] In March 2009, it became an Apache Incubator project[6] and on February 17, 2010, it graduated to a top-level project.[7] The developers at Facebook named their database after Cassandra, the mythological Trojan prophetess, referencing her curse of making prophecies that were never believed.[8] Features and limitationsCassandra uses a distributed architecture where all nodes perform identical functions, eliminating single points of failure. The system employs configurable replication strategies to distribute data across clusters, providing redundancy and disaster recovery capabilities. The system is capable of linear scaling, which increases read and write throughput with the addition of new nodes, while maintaining continuous service. Cassandra is categorized as an AP (Availability and Partition Tolerance) system, emphasizing availability and partition tolerance over consistency. While it offers tunable consistency levels for both read and write operations, its architecture makes it less suitable for use cases requiring strict consistency guarantees.[2] Additionally, Cassandra's compatibility with Hadoop and related tools allows for integration with existing big data processing workflows. Eventual consistency is maintained using tombstones to manage reads, upserts, and deletes. The system's query capabilities have notable limitations. Cassandra does not support advanced query patterns such as multi-table JOINs, ad hoc aggregations, or complex queries.[2] These limitations stem from its distributed architecture, which optimizes for scalability and availability rather than complex query operations. Data modelAs a wide-column store, Cassandra combines features of both key-value and tabular database systems. It implements a partitioned row store model with adjustable consistency levels.[9] The following table compares Cassandra and relational database management systems (RDBMS).
The data model consists of several hierarchical components: KeyspaceA keyspace in Cassandra is analogous to a database in relational systems. It contains multiple tables and manages configuration information, including replication strategy and user-defined types (UDTs).[2] TablesTables (formerly called column families prior to CQL 3) are containers for rows of data. Each table has a name and configuration information for its stored data. Tables may be created, dropped, or altered at run-time without blocking updates and queries.[10] Rows and columnsEach row is identified by a primary key and contains columns. The first component of a table's primary key is the partition key; within a partition, rows are clustered by the remaining columns of the key.[11] Columns contain data belonging to a row and consist of:
Unlike traditional RDBMS tables, rows within the same table can have varying columns, providing a flexible structure. This flexibility distinguishes Cassandra from relational databases, as not all columns need to be specified for each row.[2] Other columns may be indexed separately from the primary key.[12] Storage modelCassandra uses a Log Structured Merge Tree (LSM tree) index to optimize write throughput, in contrast to the B-tree indexes used by most databases.[2]
The storage architecture consists of three main components:[2] Core components
Write and read processesWrite operations follow a two-stage process:
Read operations:
Data managementTombstonesEvery operation (create/update/delete) generates a new entry, with deletes handled via "tombstones". While common in many databases, tombstones can cause performance degradation in delete-heavy workloads.[13] CompactionCompaction consolidates multiple SSTables to:
Cassandra Query LanguageCassandra Query Language (CQL) is the interface for accessing Cassandra, as an alternative to the traditional Structured Query Language (SQL). CQL adds an abstraction layer that hides implementation details of this structure and provides native syntaxes for collections and other common encodings. Language drivers are available for Java (JDBC), Python (DBAPI2), Node.JS (DataStax), Go (gocql), and C++.[14] The key space in Cassandra is a namespace that defines data replication across nodes. Therefore, replication is defined at the key space level. Below is an example of key space creation, including a column family in CQL 3.0:[15] CREATE KEYSPACE MyKeySpace
WITH REPLICATION = { 'class' : 'SimpleStrategy', 'replication_factor' : 3 };
USE MyKeySpace;
CREATE COLUMNFAMILY MyColumns (id text, lastName text, firstName text, PRIMARY KEY(id));
INSERT INTO MyColumns (id, lastName, firstName) VALUES ('1', 'Doe', 'John');
SELECT * FROM MyColumns;
Which gives: id | lastName | firstName
----+----------+----------
1 | Doe | John
(1 rows)
Distributed architectureGossip protocolCassandra uses a peer-to-peer gossip protocol for cluster communication. Nodes routinely exchange information about cluster state, including:
The system uses vector clocks to track information currency and ignore outdated state data.[2] Seed nodesThe architecture designates certain nodes as "seed" nodes that:
This design eliminates single points of failure while maintaining cluster-wide consistency of operational knowledge.[2] Fault toleranceCassandra employs the Phi Accrual Failure Detector to manage node failures during cluster operation.[16] Through this system, each node independently assesses the availability of other nodes during gossip communication. When a node fails to respond, it is "convicted" and removed from write operations, though it can rejoin the cluster upon resuming heartbeat signals.[2] To maintain data integrity during node outages, Cassandra uses a "hinted handoff" mechanism. When writing to an offline node, the coordinator node temporarily stores the write data as a "hint." Once the offline node returns to service, these hints are forwarded to restore data consistency. Notably, Cassandra only permanently removes nodes through explicit administrative decommissioning or rebuilding, preventing temporary communication failures or restarts from triggering unnecessary data rebalancing.[2] Management and monitoringCassandra is a Java-based system that can be managed and monitored via Java Management Extensions (JMX). The JMX-compliant Nodetool utility, for instance, can be used to manage a Cassandra cluster.[17] Nodetool also offers a number of commands to return Cassandra metrics pertaining to disk usage, latency, compaction, garbage collection, and more.[18] Since the release of Cassandra 2.0.2 in 2013, measures of several metrics are produced via the Dropwizard metrics framework,[19] and may be queried via JMX using tools such as JConsole or passed to external monitoring systems via Dropwizard-compatible reporter plugins.[20] ReleasesReleases after graduation include:
See also
References
Bibliography
External linksWikimedia Commons has media related to Apache Cassandra. Wikiversity has learning resources about Big Data/Cassandra
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