| Checkpoints |
| =========== |
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| There are two main ways to load pretrained checkpoints in NeMo as introduced in the :doc:`ASR checkpoints <../results>` section. |
| In speaker diarization, the diarizer loads checkpoints that are passed through the config file. |
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| End-to-end Speaker Diarization Models |
| ===================================== |
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| Sortformer Diarizer Training |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| Use the following command to train a Sortformer diarizer model. |
| |
| .. code-block:: bash |
| |
| # Feed the config for Sortformer diarizer model training |
| python ${NEMO_ROOT}/examples/speaker_tasks/diarization/neural_diarizer/sortformer_diar_train.py --config-path='../conf/neural_diarizer' \ |
| --config-name='sortformer_diarizer_hybrid_loss_4spk-v1.yaml' \ |
| trainer.devices=1 \ |
| model.train_ds.manifest_filepath="<train_manifest_path>" \ |
| model.validation_ds.manifest_filepath="<dev_manifest_path>" \ |
| exp_manager.name='sample_train' \ |
| exp_manager.exp_dir=./sortformer_diar_train |
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| Sortformer Diarizer Inference with Post-processing |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| Use the following command to run inference on a Sortformer diarizer model. |
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| .. code-block:: bash |
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| # Config for post-processing |
| PP_YAML1=${NEMO_ROOT}/examples/speaker_tasks/diarization/conf/post_processing/sortformer_diar_4spk-v1_dihard3-dev.yaml |
| PP_YAML2=${NEMO_ROOT}/examples/speaker_tasks/diarization/conf/post_processing/sortformer_diar_4spk-v1_callhome-part1.yaml |
| python ${NEMO_ROOT}/examples/speaker_tasks/diarization/neural_diarizer/e2e_diarize_speech.py \ |
| batch_size=1 \ |
| model_path=/path/to/diar_sortformer_4spk-v1.nemo \ |
| postprocessing_yaml=${PP_YAML2} \ |
| dataset_manifest=/path/to/diarization_manifest.json |
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| Streaming Sortformer Diarizer Training |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| Use the following command to train a Streaming Sortformer diarizer model. |
| |
| .. code-block:: bash |
| |
| # Feed the config for Sortformer diarizer model training |
| python ${NEMO_ROOT}/examples/speaker_tasks/diarization/neural_diarizer/sortformer_diar_train.py --config-path='../conf/neural_diarizer' \ |
| --config-name='streaming_sortformer_diarizer_4spk-v2.yaml' \ |
| trainer.devices=1 \ |
| model.streaming_mode=True \ |
| model.train_ds.manifest_filepath="<train_manifest_path>" \ |
| model.validation_ds.manifest_filepath="<dev_manifest_path>" \ |
| exp_manager.name='sample_train' \ |
| exp_manager.exp_dir=./sortformer_diar_train |
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| Streaming Sortformer Diarizer Inference with Post-processing |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| Use the following command to run inference on a Streaming Sortformer diarizer model. |
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| .. code-block:: bash |
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| # Config for post-processing |
| STREAM_PP_YAML1=${NEMO_ROOT}/examples/speaker_tasks/diarization/conf/post_processing/diar_streaming_sortformer_4spk-v2_dihard3-dev.yaml |
| STREAM_PP_YAML2=${NEMO_ROOT}/examples/speaker_tasks/diarization/conf/post_processing/diar_streaming_sortformer_4spk-v2_callhome-part1.yaml |
| python ${NEMO_ROOT}/examples/speaker_tasks/diarization/neural_diarizer/e2e_diarize_speech.py \ |
| batch_size=1 \ |
| model_path=/path/to/diar_streaming_sortformer_4spk-v2.nemo \ |
| postprocessing_yaml=${STREAM_PP_YAML2} \ |
| dataset_manifest=/path/to/diarization_manifest.json |
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| HuggingFace Pretrained Checkpoints |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| The ASR collection has checkpoints of several models trained on various datasets for a variety of tasks. |
| These checkpoints are obtainable via NGC `NeMo Automatic Speech Recognition collection <https://ngc.nvidia.com/catalog/models/nvidia:nemospeechmodels>`__. |
| The model cards on NGC contain more information about each of the checkpoints available. |
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| In general, you can load models with model name in the following format, |
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| .. code-block:: bash |
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| pip install -U "huggingface_hub[cli]" |
| huggingface-cli login |
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| Load Offline Sortformer Diarizer from HuggingFace |
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| .. code-block:: python |
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| from nemo.collections.asr.models import SortformerEncLabelModel |
| diar_model = SortformerEncLabelModel.from_pretrained("nvidia/diar_sortformer_4spk-v1") |
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| Load Streaming Sortformer Diarizer from HuggingFace |
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| .. code-block:: python |
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| from nemo.collections.asr.models import SortformerEncLabelModel |
| diar_model = SortformerEncLabelModel.from_pretrained("nvidia/diar_streaming_sortformer_4spk-v2") |
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| where the model name is the value under "Model Name" entry in the tables below. |
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| End-to-end Speaker Diarization Models |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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|
| .. csv-table:: |
| :file: /asr/speaker_diarization/data/e2e_diar_models.csv |
| :align: left |
| :widths: 30, 30, 40 |
| :header-rows: 1 |
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| Models for Cascaded Speaker Diarization Pipeline |
| ================================================ |
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| Loading Local Checkpoints |
| ^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| Load VAD models |
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| .. code-block:: bash |
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| pretrained_vad_model='/path/to/vad_multilingual_marblenet.nemo' # local .nemo or pretrained vad model name |
| ... |
| # pass with hydra config |
| config.diarizer.vad.model_path=pretrained_vad_model |
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| Load speaker embedding models |
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| .. code-block:: bash |
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| pretrained_speaker_model='/path/to/titanet-l.nemo' # local .nemo or pretrained speaker embedding model name |
| ... |
| # pass with hydra config |
| config.diarizer.speaker_embeddings.model_path=pretrained_speaker_model |
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| NeMo will automatically save checkpoints of a model you are training in a `.nemo` format. |
| You can also manually save your models at any point using :code:`model.save_to(<checkpoint_path>.nemo)`. |
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| Inference |
| ^^^^^^^^^ |
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| .. note:: |
| For details and deep understanding, please refer to ``<NeMo_root>/tutorials/speaker_tasks/Speaker_Diarization_Inference.ipynb``. |
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| Check out :doc:`Datasets <./datasets>` for preparing audio files and optional label files. |
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| Run and evaluate speaker diarizer with below command: |
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| .. code-block:: bash |
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| # Have a look at the instruction inside the script and pass the arguments you might need. |
| python <NeMo_root>/examples/speaker_tasks/diarization/offline_diarization.py |
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| NGC Pretrained Checkpoints |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^ |
|
|
| The ASR collection has checkpoints of several models trained on various datasets for a variety of tasks. |
| These checkpoints are obtainable via NGC `NeMo Automatic Speech Recognition collection <https://ngc.nvidia.com/catalog/models/nvidia:nemospeechmodels>`__. |
| The model cards on NGC contain more information about each of the checkpoints available. |
|
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| In general, you can load models with model name in the following format, |
|
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| .. code-block:: python |
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| pretrained_vad_model='vad_multilingual_marblenet' |
| pretrained_speaker_model='titanet_large' |
| ... |
| config.diarizer.vad.model_path=pretrained_vad_model \ |
| config.diarizer.speaker_embeddings.model_path=pretrained_speaker_model |
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| where the model name is the value under "Model Name" entry in the tables below. |
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| Models for Speaker Diarization Pipeline |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
|
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| .. csv-table:: |
| :file: /asr/speaker_diarization/data/diarization_results.csv |
| :align: left |
| :widths: 30, 30, 40 |
| :header-rows: 1 |
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