Model
Conformer-CTC-Large model for English Automatic Speech Recognition, Trained on NeMo ASRSET
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4 Versions
06/23/2022 7:55 PM UTC464.15 MB Copied!
06/23/2022 7:55 PM UTC464.15 MB
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Accuracy
| Key | Value |
|---|---|
| LibriSpeech Dev-clean | 1.9 |
| LibriSpeech Test-other | 4.5 |
| LibriSpeech Dev-other | 4.4 |
| LibriSpeech Test-clean | 2.1 |
Model
| Key | Value |
|---|---|
| Encoder Dimension | 512 |
| Number of Layers | 18 |
| Architecture | Conformer-CTC-Large |
| Dataset | NeMo ASRSET 3.0 |
| Outputs | Text in English |
| Inputs | Speech in English |
| Number of Weights | 121M |
02/15/2022 10:43 PM UTC430.57 MB Copied!
02/15/2022 10:43 PM UTC430.57 MB
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Accuracy
| Key | Value |
|---|---|
| LibriSpeech Dev-clean | 2.0 |
| LibriSpeech Test-other | 4.3 |
| LibriSpeech Dev-other | 4.4 |
| LibriSpeech Test-clean | 2.1 |
Model
| Key | Value |
|---|---|
| Encoder Dimension | 512 |
| Number of Layers | 18 |
| Architecture | Conformer-CTC-Large |
| Dataset | NeMo ASRSET 2.0 |
| Outputs | Text in English |
| Inputs | Speech in English |
| Number of Weights | 121M |
11/09/2021 10:33 PM UTC430.71 MB Copied!
11/09/2021 10:33 PM UTC430.71 MB
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Accuracy
| Key | Value |
|---|---|
| LibriSpeech Dev-clean | 2.3 |
| LibriSpeech Dev-other | 5.3 |
| LibriSpeech Test-clean | 2.5 |
| LibriSpeech Test-other | 5.4 |
Model
| Key | Value |
|---|---|
| Architecture | Conformer-CTC-Large |
| Dataset | NeMo ASRSET 1.4.1 |
| Encoder Dimension | 512 |
| Inputs | Speech in English |
| Number of Layers | 18 |
| Number of Weights | 121M |
| Outputs | Text in English |
1.0.0rc1Selected11/09/2021 10:26 PM UTC430.66 MB Copied!
1.0.0rc1Selected
11/09/2021 10:26 PM UTC430.66 MB
Copied!
Accuracy
| Key | Value |
|---|---|
| LibriSpeech Dev-clean | 2.5 |
| LibriSpeech Dev-other | 6.2 |
| LibriSpeech Test-clean | 2.7 |
| LibriSpeech Test-other | 6.3 |
Model
| Key | Value |
|---|---|
| Architecture | Conformer-CTC-Large |
| Dataset | LibriSpeech |
| Encoder Dimension | 512 |
| Inputs | Speech in English |
| Number of Layers | 18 |
| Number of Weights | 121M |
| Outputs | Text in English |