Base EMEA n-gram LM
Speech Recognition: EMEA N-Gram Language Models
Description
Riva ASR EMEA LM estimates the likelihood of word sequence in six languages including Arabic (ar-AR), German (de-DE), British English (en-GB), European Spanish (es-ES), French (fr-FR), Italian (it-IT). The model is trained on normalized text, where numbers are converted to their spoken forms, and punctuation and capitalization are included. When deployed, the ASR engine can optionally condition the transcript output on n-gram language models.
This model is ready for commercial use.
License/Terms of Use
NVIDIA AI Foundation Models Community License Agreement
References
Model Architecture
Architecture Type: n-gram
Network Architecture: 4-gram trained with Kneser-Ney smoothing
Input
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
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.
How to Use this 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:
ml_cs_em-ea_default_pnc_1.0.arpa
KenLM-formatted Binary Language Models
ml_cs_em-ea_default_pnc_1.0.bin
Vocabulary Files
ml_cs_em-ea_default_pnc_1.0_dict_vocab.txt
ARPA and KenLM binary formatted files can be used directly by the CTC CPU Decoder.
Software Integration
Runtime Engine(s):
- Riva 2.18.0 or higher
Supported Hardware Microarchitecture Compatibility:
- NVIDIA Ampere
- NVIDIA Hopper
- NVIDIA Jetson
- NVIDIA Turing
- NVIDIA Volta
[Preferred/Supported] Operating System(s):
- Linux
- Linux 4 Tegra
Model Version(s)
ml_cs_em-ea_default_pnc_1.0
Training & Evaluation
Training Dataset
** Data Collection Method by dataset
- Human
** Labeling Method by dataset
- Human
Properties:
A dynamic blend of public and internal proprietary and customer datasets normalized to have punctuated, capitalized and spoken forms in the text.
Evaluation Dataset
** Data Collection Method by dataset
- Human
** Labeling Method by dataset
- Human
Properties:
A dynamic blend of public and internal proprietary and customer datasets normalized to have punctuated, capitalized and spoken forms in the text.
Inference
Engine: Triton
Test Hardware:
- NVIDIA A10
- NVIDIA A100
- NVIDIA A30
- NVIDIA H100
- NVIDIA Jetson Orin
- NVIDIA L4
- NVIDIA L40
- NVIDIA Turing T4
- NVIDIA Volta V100
Ethical Considerations
NVIDIA believes Trustworthy AI is a shared responsibility and we have established policies and practices to enable development for a wide array of AI applications. When downloaded or used in accordance with our terms of service, developers should work with their supporting model team to ensure this model meets requirements for the relevant industry and use case and addresses unforeseen product misuse.
For more detailed information on ethical considerations for this model, please see the Model Card++ Explainability, Bias, Safety & Security, and Privacy Subcards here.
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