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# Standard Options |
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To transcribe or translate an audio file, you can either copy an URL from a website (all [websites](https://github.com/yt-dlp/yt-dlp/blob/master/supportedsites.md) |
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supported by YT-DLP will work, including YouTube). Otherwise, upload an audio file (choose "All Files (*.*)" |
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in the file selector to select any file type, including video files) or use the microphone. |
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For longer audio files (>10 minutes), it is recommended that you select Silero VAD (Voice Activity Detector) in the VAD option, especially if you are using the `large-v1` model. Note that `large-v2` is a lot more forgiving, but you may still want to use a VAD with a slightly higher "VAD - Max Merge Size (s)" (60 seconds or more). |
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## Model |
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Select the model that Whisper will use to transcribe the audio: |
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| Size | Parameters | English-only model | Multilingual model | Required VRAM | Relative speed | |
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|-----------|------------|--------------------|--------------------|---------------|----------------| |
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| tiny | 39 M | tiny.en | tiny | ~1 GB | ~32x | |
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| base | 74 M | base.en | base | ~1 GB | ~16x | |
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| small | 244 M | small.en | small | ~2 GB | ~6x | |
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| medium | 769 M | medium.en | medium | ~5 GB | ~2x | |
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| large | 1550 M | N/A | large | ~10 GB | 1x | |
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| large-v2 | 1550 M | N/A | large | ~10 GB | 1x | |
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## Language |
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Select the language, or leave it empty for Whisper to automatically detect it. |
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Note that if the selected language and the language in the audio differs, Whisper may start to translate the audio to the selected |
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language. For instance, if the audio is in English but you select Japaneese, the model may translate the audio to Japanese. |
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## Inputs |
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The options "URL (YouTube, etc.)", "Upload Files" or "Micriphone Input" allows you to send an audio input to the model. |
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### Multiple Files |
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Note that the UI will only process either the given URL or the upload files (including microphone) - not both. |
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But you can upload multiple files either through the "Upload files" option, or as a playlist on YouTube. Each audio file will then be processed in turn, and the resulting SRT/VTT/Transcript will be made available in the "Download" section. When more than one file is processed, the UI will also generate a "All_Output" zip file containing all the text output files. |
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## Task |
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Select the task - either "transcribe" to transcribe the audio to text, or "translate" to translate it to English. |
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## Vad |
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Using a VAD will improve the timing accuracy of each transcribed line, as well as prevent Whisper getting into an infinite |
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loop detecting the same sentence over and over again. The downside is that this may be at a cost to text accuracy, especially |
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with regards to unique words or names that appear in the audio. You can compensate for this by increasing the prompt window. |
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Note that English is very well handled by Whisper, and it's less susceptible to issues surrounding bad timings and infinite loops. |
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So you may only need to use a VAD for other languages, such as Japanese, or when the audio is very long. |
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* none |
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* Run whisper on the entire audio input |
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* silero-vad |
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* Use Silero VAD to detect sections that contain speech, and run Whisper on independently on each section. Whisper is also run |
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on the gaps between each speech section, by either expanding the section up to the max merge size, or running Whisper independently |
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on the non-speech section. |
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* silero-vad-expand-into-gaps |
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* Use Silero VAD to detect sections that contain speech, and run Whisper on independently on each section. Each spech section will be expanded |
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such that they cover any adjacent non-speech sections. For instance, if an audio file of one minute contains the speech sections |
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00:00 - 00:10 (A) and 00:30 - 00:40 (B), the first section (A) will be expanded to 00:00 - 00:30, and (B) will be expanded to 00:30 - 00:60. |
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* silero-vad-skip-gaps |
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* As above, but sections that doesn't contain speech according to Silero will be skipped. This will be slightly faster, but |
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may cause dialogue to be skipped. |
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* periodic-vad |
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* Create sections of speech every 'VAD - Max Merge Size' seconds. This is very fast and simple, but will potentially break |
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a sentence or word in two. |
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## VAD - Merge Window |
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If set, any adjacent speech sections that are at most this number of seconds apart will be automatically merged. |
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## VAD - Max Merge Size (s) |
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Disables merging of adjacent speech sections if they are this number of seconds long. |
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## VAD - Padding (s) |
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The number of seconds (floating point) to add to the beginning and end of each speech section. Setting this to a number |
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larger than zero ensures that Whisper is more likely to correctly transcribe a sentence in the beginning of |
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a speech section. However, this also increases the probability of Whisper assigning the wrong timestamp |
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to each transcribed line. The default value is 1 second. |
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## VAD - Prompt Window (s) |
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The text of a detected line will be included as a prompt to the next speech section, if the speech section starts at most this |
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number of seconds after the line has finished. For instance, if a line ends at 10:00, and the next speech section starts at |
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10:04, the line's text will be included if the prompt window is 4 seconds or more (10:04 - 10:00 = 4 seconds). |
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Note that detected lines in gaps between speech sections will not be included in the prompt |
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(if silero-vad or silero-vad-expand-into-gaps) is used. |
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## Diarization |
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If checked, Pyannote will be used to detect speakers in the audio, and label them as (SPEAKER 00), (SPEAKER 01), etc. |
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This requires a HuggingFace API key to function, which can be supplied with the `--auth_token` command line option for the CLI, |
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set in the `config.json5` file for the GUI, or provided via the `HK_AUTH_TOKEN` environment variable. |
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## Diarization - Speakers |
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The number of speakers to detect. If set to 0, Pyannote will attempt to detect the number of speakers automatically. |
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# Command Line Options |
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Both `app.py` and `cli.py` also accept command line options, such as the ability to enable parallel execution on multiple |
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CPU/GPU cores, the default model name/VAD and so on. Consult the README in the root folder for more information. |
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# Additional Options |
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In addition to the above, there's also a "Full" options interface that allows you to set all the options available in the Whisper |
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model. The options are as follows: |
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## Initial Prompt |
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Optional text to provide as a prompt for the first 30 seconds window. Whisper will attempt to use this as a starting point for the transcription, but you can |
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also get creative and specify a style or format for the output of the transcription. |
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For instance, if you use the prompt "hello how is it going always use lowercase no punctuation goodbye one two three start stop i you me they", Whisper will |
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be biased to output lower capital letters and no punctuation, and may also be biased to output the words in the prompt more often. |
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## Temperature |
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The temperature to use when sampling. Default is 0 (zero). A higher temperature will result in more random output, while a lower temperature will be more deterministic. |
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## Best Of - Non-zero temperature |
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The number of candidates to sample from when sampling with non-zero temperature. Default is 5. |
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## Beam Size - Zero temperature |
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The number of beams to use in beam search when sampling with zero temperature. Default is 5. |
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## Patience - Zero temperature |
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The patience value to use in beam search when sampling with zero temperature. As in https://arxiv.org/abs/2204.05424, the default (1.0) is equivalent to conventional beam search. |
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## Length Penalty - Any temperature |
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The token length penalty coefficient (alpha) to use when sampling with any temperature. As in https://arxiv.org/abs/1609.08144, uses simple length normalization by default. |
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## Suppress Tokens - Comma-separated list of token IDs |
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A comma-separated list of token IDs to suppress during sampling. The default value of "-1" will suppress most special characters except common punctuations. |
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## Condition on previous text |
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If True, provide the previous output of the model as a prompt for the next window. Disabling this may make the text inconsistent across windows, but the model becomes less prone to getting stuck in a failure loop. |
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## FP16 |
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Whether to perform inference in fp16. True by default. |
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## Temperature increment on fallback |
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The temperature to increase when falling back when the decoding fails to meet either of the thresholds below. Default is 0.2. |
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## Compression ratio threshold |
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If the gzip compression ratio is higher than this value, treat the decoding as failed. Default is 2.4. |
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## Logprob threshold |
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If the average log probability is lower than this value, treat the decoding as failed. Default is -1.0. |
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## No speech threshold |
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If the probability of the <|nospeech|> token is higher than this value AND the decoding has failed due to `logprob_threshold`, consider the segment as silence. Default is 0.6. |
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## Diarization - Min Speakers |
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The minimum number of speakers for Pyannote to detect. |
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## Diarization - Max Speakers |
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The maximum number of speakers for Pyannote to detect. |