transient-universe: Remote execution and map-reduce: distributed computing for Transient

[ control, distributed-computing, library, mit, program ] [ Propose Tags ] [ Report a vulnerability ]
Versions [RSS] 0.2, 0.3, 0.3.1.2, 0.3.2, 0.3.2.1, 0.3.2.2, 0.3.2.3, 0.3.4, 0.3.5, 0.3.5.1, 0.4.0, 0.4.1, 0.4.4, 0.4.4.1, 0.4.5, 0.4.6, 0.4.6.1, 0.5.0.0, 0.6.0.0, 0.6.0.1
Change log ChangeLog.md
Dependencies base (>4 && <5), bytestring, case-insensitive, containers, directory, filepath, ghcjs-base, ghcjs-prim, hashable, HTTP, iproute, mtl, network, network-info, network-uri, process, random, stm, TCache (>=0.12), text, time, transformers, transient (>=0.5.1), transient-universe, vector, websockets [details]
License MIT
Author Alberto G. Corona
Maintainer agocorona@gmail.com
Category Control
Home page http://www.fpcomplete.com/user/agocorona
Bug tracker https://github.com/agocorona/transient-universe/issues
Source repo head: git clone https://github.com/agocorona/transient-universe
Uploaded by AlbertoCorona at 2017-03-04T14:35:15Z
Distributions
Reverse Dependencies 3 direct, 1 indirect [details]
Executables monitorService
Downloads 11632 total (61 in the last 30 days)
Rating (no votes yet) [estimated by Bayesian average]
Your Rating
  • λ
  • λ
  • λ
Status Docs available [build log]
Last success reported on 2017-03-04 [all 1 reports]

Readme for transient-universe-0.4.1

[back to package description]

Transient logo

Hackage Stackage LTS Stackage Nightly Build Status Gitter

See the Wiki

transient-universe is the distributed computing extension of transient and uses transient primitives heavily for parsing, threading, event handling, exception handling, messaging etc. It support moving computations between Haskell closures in different computers in the network. Even among different architectures: Linux nodes can work with windows and browser nodes running haskell compiled with ghcjs.

The primitives that perform the moving of computations are called wormhole and teleport, the names express the semantics. Hence the name of the package.

All the nodes run the same program compiled for different architectures. It defines a Cloud computation (monad). It is a thin layer on top of transient with additional primitives and services that run a single program in one or many nodes.

Browser integration

Browser nodes, running transient programs compiled with ghcjs are integrated with server nodes, using websockets for communication. Just compile the program with ghcjs and point the browser to http://server:port. The server nodes have a HTTP server that will send the compiled program to the browser.

Distributed Browser/server Widgets

Browser nodes can integrate Hplayground for ghcjs, a reactive client side library based in trasient (package ghcjs-hplay) they can create widgets with HTML form elements and control the server nodes. A computation can move from browser to server and back at runtime despite the different architecture.

Widgets with code running in browser and servers can compose with other widgets. A Browser node can gain access to many server nodes trough the server that delivered the web application.

These features can make transient ideal for client as well as server side-driven applications, whenever distribution and push-driven reactivity is necessary either in the servers or in the browser clients.

New

The last release add

  • Hooks for secure communications: with transient-universe-tls package, a node can use TLS to connect with other nodes, including web nodes. If the connection of a web node is initiated with "https" the websocket connection uses secure communications (wss). The only primitive added is initTLS.
  • Client websocket connections to connect with nodes within firewalled servers: a server node can connect with another situated after a HTTP server. All the process is transparent and add no new primitive; First connect tries a TCP socket connection if it receives other message than "OK", it tries a connection as a websocket client. This is important for P2P connections where a central server acts as coordinator. websocket connections can use TLS communications too.
  • No network traffic when a node invokes itself

Map-reduce

transient-universe implements map-reduce in the style of spark as a particular case. It is at the same time a hard test of the distributed primitives since it involves a complex choreography of movement of computations. It supports in memory operations and caching. Resilience (restart from the last checkpoint in case of failure) is not implemented but it is foreseen.

Look at this article

There is a runnable example: DistrbDataSets.hs that you can executed with:

runghc ./examples/DistrbDataSets.hs

It uses a number of simulated nodes to calculate the frequency of words in a long text.

Services

Services communicate two different transient applications. This allows to divide the running application in different independent tiers. No documentation is available yet. Sorry.

General distributed primitives

teleport is a primitive that translates computations back and forth reusing an already opened connection.

The connection is initiated by wormhole with another node. This can be done anywhere in a computation without breaking composability. As always, Everything is composable.

Both primitives support also streaming among nodes in an efficient way. It means that a remote call can return not just a single response, but many of them.

All the other distributed primitives: runAt, streamFrom clustered etc are rewritten in terms of these two.

How to run the ghcjs example:

See the distributed examples in the transient-examples repository

See this video to see this example running:

The test program run among other things, two copies of a widget that start, stop and display a counter that run in the server.

Documentation

The Wiki is more user oriented

My video sessions in livecoding.tv not intended as tutorials or presentations, but show some of the latest features running.

The articles are more technical:

These articles contain executable examples (not now, since the site no longer support the execution of Haskell snippets).

Future plans

The only way to improve it is using it. Please send me bugs and additional functionalities!

-I plan to improve map-reduce to create a viable platform for serious data analysis and machine learning using haskell. It will have a web notebook running in the browser.

-Create services and examples for general Web applications with distributed servers and create services for them