Dataflow
Dataflow is a term used in computing, and may have various shades of meaning.
Software architecture
Dataflow is a software paradigm based on the idea of disconnecting computational actors into stages (pipelines) that can execute concurrently. Dataflow can also be called stream processing or reactive programming.[1]
There have been multiple data-flow/stream processing languages of various forms (see Stream processing). Data-flow hardware (see Dataflow architecture) is an alternative to the classic Von Neumann architecture. The most obvious example of data-flow programming is the subset known as reactive programming with spreadsheets. As a user enters new values, they are instantly transmitted to the next logical "actor" or formula for calculation.
Distributed data flows have also been proposed as a programming abstraction that captures the dynamics of distributed multi-protocols. The data-centric perspective characteristic of data flow programming promotes high-level functional style of specifications, and simplifies formal reasoning about system components.
Hardware architecture
Hardware architectures for dataflow was a major topic in Computer architecture research in the 1970s and early 1980s. Jack Dennis of MIT pioneered the field of static dataflow architectures. Designs that use conventional memory addresses as data dependency tags are called static dataflow machines. These machines did not allow multiple instances of the same routines to be executed simultaneously because the simple tags could not differentiate between them. Designs that use Content-addressable memory are called dynamic dataflow machines by Arvind. They use tags in memory to facilitate parallelism. Data flows around the computer through the components of the computer. It gets entered from the input devices and can leave through output devices (printer etc.).
Concurrency
A dataflow network is a network of concurrently executing processes or automata that can communicate by sending data over channels (see message passing.)
In Kahn process networks, named after Gilles Kahn, the processes are determinate. This implies that each determinate process computes a continuous function from input streams to output streams, and that a network of determinate processes is itself determinate, thus computing a continuous function. This implies that the behavior of such networks can be described by a set of recursive equations, which can be solved using fixed point theory. The movement and transformation of the data is represented by a series of shapes and lines.
See also
- Complex event processing
- Data flow diagram
- Data-flow analysis, a type of program analysis
- Data stream
- Datastream
- Dataflow architecture (a computer hardware architecture)
- Dataflow programming (a programming language paradigm)
- Flow-based programming (FBP)
- Functional reactive programming
- Lazy evaluation
- Lucid programming language
- Oz programming language
- Packet flow
- Pipeline (computing)
- Pure Data
- Stream processing
- vvvv
External links
Look up dataflow in Wiktionary, the free dictionary. |
- DataFlow Analytics: Composable Analytics - Flexible Business Intelligence.
- BMDFM: Binary Modular Dataflow Machine, BMDFM.
- Cantata: Dataflow Visual Language for image processing.
- Cells: Dataflow extension to Common Lisp Object System, CLOS.
- DC: Library that allows the embedding of one-way dataflow constraints in a C/C++ program.
- Stella: Dataflow Visual Language for dynamic dataflow modeling and simulation.
- KPASSA : a tool for static-scheduling, performance analysis and optimizations for DataFlow models.
- Liquid Rebol
- SDF3 : Performance analysis tool for DataFlow Model
- Ruby Dataflow : Ruby gem adding Dataflow variable support
- Acar et al., Adaptive Functional Programming, POPL 2002
- Scala Dataflow : The Akka toolkit provides (among other things) dataflow concurrency in Scala
- TensorFlow : Google's open source (Apache 2.0) second-generation Python and C++ machine learning library using dataflow graphs
- Apache Flink : An open-source stream processing framework based on the dataflow programming model[2]
References
- ↑ A Short Intro to Stream Processing
- ↑ Carbone, P., Katsifodimos, A., Ewen, S., Markl, V., Haridi, S. et al. (2015) Apache flink: Stream and batch processing in a single engine. Bulletin of the IEEE Computer Society Technical Committee on Data Engineering, 36(4)