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Update Readme

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  1. README.md +1 -10
README.md CHANGED
@@ -7,11 +7,6 @@ tags:
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  - convnext-audio
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  - audioset
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  inference: false
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- extra_gated_prompt: "The collected information will help acquire a better knowledge of who is using our audio event tools. If relevant, please cite our Interspeech 2023 paper (Bibtex below)."
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- extra_gated_fields:
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- Company/university: text
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- Website: text
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- I plan to use this model for (task, type of audio data, etc): text
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  ---
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  **ConvNeXt-Tiny-AT** is an audio tagging CNN model, trained on **AudioSet** (balanced+unbalanced subsets). It reached 0.471 mAP on the test set [(Paper)](https://www.isca-speech.org/archive/interspeech_2023/pellegrini23_interspeech.html).
@@ -36,10 +31,6 @@ pip install git+https://github.com/topel/audioset-convnext-inf@pip-install
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  Below is an example of how to instantiate our model convnext_tiny_471mAP.pth
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  ```python
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- # 1. visit hf.co/topel/ConvNeXt-Tiny-AT and accept user conditions
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- # 2. visit hf.co/settings/tokens to create an access token
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- # 3. instantiate pretrained model
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-
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  import os
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  import numpy as np
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  import torch
@@ -48,7 +39,7 @@ import torchaudio
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  from audioset_convnext_inf.pytorch.convnext import ConvNeXt
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  from audioset_convnext_inf.utils.utilities import read_audioset_label_tags
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- model = ConvNeXt.from_pretrained("topel/ConvNeXt-Tiny-AT", use_auth_token="ACCESS_TOKEN_GOES_HERE", map_location='cpu')
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  print(
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  "# params:",
 
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  - convnext-audio
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  - audioset
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  inference: false
 
 
 
 
 
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  ---
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  **ConvNeXt-Tiny-AT** is an audio tagging CNN model, trained on **AudioSet** (balanced+unbalanced subsets). It reached 0.471 mAP on the test set [(Paper)](https://www.isca-speech.org/archive/interspeech_2023/pellegrini23_interspeech.html).
 
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  Below is an example of how to instantiate our model convnext_tiny_471mAP.pth
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  ```python
 
 
 
 
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  import os
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  import numpy as np
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  import torch
 
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  from audioset_convnext_inf.pytorch.convnext import ConvNeXt
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  from audioset_convnext_inf.utils.utilities import read_audioset_label_tags
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+ model = ConvNeXt.from_pretrained("topel/ConvNeXt-Tiny-AT", map_location='cpu')
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  print(
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  "# params:",