Engines are trained from corpora and are used to translate files. They are unidirectional, i.e. have one source language and one target language. |
Types of engines
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All engines trained in Globalese are custom engines. There is, however, a degree to their customisation, depending on what combination of resources are used to create them.
Domain-adapted engines are engines containing both master and auxiliary/stock corpora, and trained using Globalese’s proprietary automated domain adaptation technology. By selecting your important in-domain TM(s) as “Master” training data, the engine will be focusing on the style and the terminology of those TM(s). You can choose to add generic stock data to extend the engine in case the volume of the in-domain data is not enough. You have also the option to add your own auxiliary data.
The typical use case for domain-adapted engines is where adhering to a particular terminology and style is important. Some examples: product documentation, end-user manuals or software documentation, where it is essential to use the right terminology and style consistently.
The following table shows the minimum and recommended number of segments.
Includes stock corpora? | Minimum volume (segments) | Recommended volume (segments) |
---|---|---|
Yes | 15,000 master | 100,000+ master |
No | 15,000 master | 100,000+ master |
The typical training time for domain-adapted engines is between 10 and 24 hours.
Stock+ engines are customised stock engines, i.e. engines trained by extending a pre-trained stock engine with you own master data. The selected master data will be part of the engine. If there is new content in the master corpora, the engine will learn it. However, you should not expect changes in terminology and style preferences in the engine based on the master data added.
The typical use case for stock+ engines is where it is important to use a generic engine trained on a large data set, which is however incorporating your own training data too. You can also use this option if you the size of your own training data is not enough to train a domain-adapted engine. Some examples: annual reports, user generated content, web pages.
A minimum of 1,000 segments, and a maximum of 1,000,000.
The typical training time for stock+ engines is between 10 minutes to 4 hours.
You can also use pre-trained stock engines for certain language combinations.