Riva ASR en-GB LM estimates the likelihood of English (en-GB) word sequence. When deployed, the ASR engine can optionally condition the transcript output on n-gram language models.
This model is ready for commercial use.
NVIDIA AI Foundation Models Community License Agreement
Architecture Type: n-gram
Network Architecture: 3-gram trained with Kneser-Ney smoothing
Input Type(s): Text in Language
Input Format(s): String
Input Parameters: 1-Dimension
Other Properties Related to Input: Sentences of any length, lower-cased and unpunctuated text can be provided.
Output Type(s): Likelihood of word sequence
Output Format: Float
Output Parameters: 1-Dimension
Other Properties Related to Output: The output represents the log-probability of any given sentence under the loaded language model.
The Riva Quick Start Guide is recommended as the starting point for trying out Riva models. For more information on using this model with Riva Speech Services, see the Riva User Guide.
There are a variety of formats contained within this model archive:
ARPA-formatted Language Models:
en-GB_default_3.0.arpa
KenLM-formatted Binary Language Models
en-GB_default_3.0.bin
Flashlight Decoder Vocabulary Files
en-GB_default_3.0_dict_vocab.txt
ARPA and KenLM binary formatted files can be used directly by the CTC CPU Decoder.
Runtime Engine(s):
Supported Hardware Microarchitecture Compatibility:
[Preferred/Supported] Operating System(s):
en-GB_default_3.0
** Data Collection Method by dataset
** Labeling Method by dataset
Properties:
A dynamic blend of public and internal proprietary and customer datasets normalized to have lower-cased, unpunctuated, and spoken forms in text.
** Data Collection Method by dataset
** Labeling Method by dataset
Properties:
A dynamic blend of public and internal proprietary and customer datasets normalized to have lower-cased, unpunctuated, and spoken forms in text.
Engine: Triton
Test Hardware:
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