Content deleted Content added
No edit summary |
Adding local short description: "Application programming interface", overriding Wikidata description "software architecture layer" |
||
(22 intermediate revisions by 19 users not shown) | |||
Line 1:
{{Short description|Application programming interface}}
is an [[application programming interface]] which unifies the communication between a computer application and [[database]]s such as [[MSSQL|SQL Server]], [[IBM DB2|DB2]], [[MySQL]], [[PostgreSQL]], [[Oracle database|Oracle]] or [[SQLite]]. Traditionally, all database vendors provide their own interface tailored to their products, which leaves it to the application programmer to implement code for all database interfaces he or she would like to support. Database abstraction layers reduce the amount of work by providing a consistent API to the developer and hide the database specifics behind this interface as much as possible. There exist many abstraction layers with different interfaces in numerous programming languages. If an application has such a layer built in, it is called '''database-agnostic'''.<ref>http://searchdatamanagement.techtarget.com/definition/database-agnostic</ref>▼
{{More citations needed|date=September 2014}}
▲A '''database abstraction layer''' ('''DBAL'''<ref>{{cite book|first1=Tim|last1=Ambler|first2=Nicholas|last2=Cloud|title=JavaScript Frameworks for Modern Web Dev|url=https://books.google.com/books?id=2IfDCgAAQBAJ&pg=PA346|year=2015|publisher=Apress|isbn=978-1-4842-0662-1|page=346}}</ref> or '''DAL''') is an [[application programming interface]] which unifies the communication between a computer application and [[database]]s such as [[MSSQL|SQL Server]], [[IBM
== Database levels of abstraction == ▼
=== Physical level (lowest level) ===
The lowest level connects to the database and performs the actual operations required by the users.
Implementation of the physical layer may use database
▲Implementation of data types and operations are the most database specific at this level.
=== Conceptual or logical level (middle or next highest level) ===
The conceptual level consolidates external concepts and instructions into an intermediate data structure that can be devolved into physical instructions.
This level is aware of the differences between the databases and able to construct an execution path of operations in all cases. However the conceptual layer defers to the physical layer for the actual implementation of each individual operation.
=== External or view level ===
The external level is exposed to users and developers and supplies a consistent pattern for performing database operations.
<ref>{{Cite web|url=http://www.dmst.aueb.gr/dds/etech/db/abstr.htm|title = Levels of Abstraction}}</ref> Database operations are represented only loosely as SQL or even database access at this level.
Every database should be treated equally at this level with no apparent difference despite varying physical data types and operations.
== Database abstraction in the API ==
Libraries unify access to databases by providing a single low-level programming interface to the application developer. Their advantages are most often speed and flexibility because they are not tied to a specific [[query language]] (subset) and only have to implement a thin layer to reach their goal. As all [[SQL]] dialects are similar to one another, application developers can use all the language features, possibly providing configurable elements for
Popular use for database abstraction layers are among [[object-oriented programming]] languages, which are similar to API-level abstraction layers. In an object-oriented language like C++ or Java, a database can be represented through an [[Object (computer science)|object]], whose methods and members (or the equivalent thereof in other programming languages) represent various functionalities of the database. They also share advantages and disadvantages with API-level interfaces.
== Language-level abstraction ==
An example of a database abstraction layer on the language level would be [[ODBC]]
Software developers only have to know the database abstraction layer's API instead of all APIs of the databases his application should support. The more databases should be supported the bigger is the time saving.▼
Using a database abstraction layer means that there is no requirement for new installations to utilise a specific database, i.e. new users who are unwilling or unable to switch databases can deploy on their existing infrastructure.▼
As new database technologies emerge, software developers won't have to adapt to new interfaces.▼
A production database may be replaced with a desktop-level implementation of the data for developer-level unit tests.▼
Depending on the database and the DAL, it may be possible for the DAL to add features to the database. A DAL may use database programming facilities or other methods to create standard but unsupported functionality, or completely new functionality. For instance the DBvolution DAL implements the standard deviation function for several databases that do not support it. ▼
Alternatively, there are thin wrappers, often described as ''lightweight'' abstraction layers, such as OpenDBX<ref>{{cite web |url=https://www.linuxnetworks.de/doc/index.php?title=OpenDBX |title=OpenDBX |date=24 June 2012 |website=linuxnetworks.de |access-date=26 July 2018}}</ref> and libzdb.<ref>{{cite web |url=http://www.tildeslash.com/libzdb/ |title=Libzdb |access-date=26 July 2018 |year=2018 |website=tildeslash.com}}</ref> Finally, large projects may develop their own libraries, such as, for example, libgda<ref>{{cite web |url=http://www.gnome-db.org/ |title=GNOME-DB |access-date=26 July 2018 |date=12 June 2015 |quote=Libgda library [...] is mainly a database and data abstraction layer, and includes a GTK+ based UI extension, and some graphical tools.}}</ref> for [[GNOME]].
=== In favor ===
Any abstraction layer will reduce the overall speed more or less depending on the amount of additional code that has to be executed. The more a database layer abstracts from the native database interface and tries to emulate features not present on all database backends, the slower the overall performance. This is especially true for database abstraction layers that try to unify the query language as well like ODBC.▼
▲
▲
▲
▲
▲
===
▲
* [[Object–relational mapping]]
▲Database abstraction layers may limit the number of available database operations to a subset of those supported by the supported database backends. In particular, database abstraction layers may not fully support database backend-specific optimizations or debugging features. These problems magnify significantly with database size, scale, and complexity.
== References ==
{{reflist}}
{{Database}}
|