Architecture: Difference between revisions

From Pangeanic
Jump to navigation Jump to search
No edit summary
No edit summary
Line 4: Line 4:


[[File:Arquitectura_wiki.png]]
[[File:Arquitectura_wiki.png]]
The solution is implemented on a fully distributed architecture with different
modules:
* Users access the functionalities with a variety of client interfaces (described
later) such as the PGB, Web applications, CAT tools or programmatically with a RESTFul API for integrations.
* The Production Access Server manages user requests and orchestrates the
rest of modules. It requires a standard SQL database to store the required
data to fulfil the requests.
* The engines, either local (managed by the organization on their own
premises or on their own cloud) or operated by Pangeanic with a SaaS
model will perform the actual language processing.
* A file processor is in charge of dealing with converting files and documents
when this feature is installed.
* An on-line trainer module is in charge of evolving the models according to
the user preferences. This is integrated in the engine package when the
on-line learning option is installed.

Revision as of 08:12, 7 February 2022

Architecture

The diagram shows the different logical blocks.

The solution is implemented on a fully distributed architecture with different modules:

  • Users access the functionalities with a variety of client interfaces (described

later) such as the PGB, Web applications, CAT tools or programmatically with a RESTFul API for integrations.

  • The Production Access Server manages user requests and orchestrates the

rest of modules. It requires a standard SQL database to store the required data to fulfil the requests.

  • The engines, either local (managed by the organization on their own

premises or on their own cloud) or operated by Pangeanic with a SaaS model will perform the actual language processing.

  • A file processor is in charge of dealing with converting files and documents

when this feature is installed.

  • An on-line trainer module is in charge of evolving the models according to

the user preferences. This is integrated in the engine package when the on-line learning option is installed.