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metadata
dataset_info:
  features:
    - name: sequence
      dtype: string
    - name: transcription_full
      dtype: string
    - name: transcription_original
      dtype: string
    - name: removed_words
      dtype: string
    - name: phonemes_annotated
      dtype: string
    - name: to_convert
      dtype: string
    - name: edit_type
      dtype: string
    - name: phoneme_probability
      dtype: float64
    - name: xcodec2_tokens
      dtype: string
  splits:
    - name: train
      num_bytes: unknown
      num_examples: 604173
  download_size: unknown
  dataset_size: unknown

Multilingual Audio Alignments - Processed (Mixed Text/Phonemes)

This dataset contains processed audio alignments from AAdonis/multilingual_audio_alignments (english).

Curriculum Learning

This dataset uses mixed text/phoneme conditioning with a curriculum learning schedule:

  • p_start: 0.0 (starting probability of using phonemes)
  • p_end: 0.0 (ending probability of using phonemes)
  • curriculum_rows: 400000 (rows over which probability increases)

Early in the dataset, more words are kept as text. Later, almost all words are converted to phonemes.

Deletion Training

Deletion ratio: 20.0% of samples are deletion samples Deletion margin: 0.1s on each side (=0.2s total transition)

How deletion training works:

  1. Pick a random gap between two adjacent words
  2. Find the midpoint of that gap
  3. Cut 0.1s on each side of the midpoint
  4. The target audio is that 0.2s transition
  5. The phoneme content is <|ph_space|>
  6. The transcript remains unchanged (no words removed)

This teaches the model to generate natural inter-word transitions.

Features:

  • sequence: Full LLASA training sequence with mixed text/phonemes and XCodec2 tokens
  • transcription_full: Transcript matching the actual audio (left + right portions)
  • transcription_original: Original full transcript
  • removed_words: Words that were removed for infilling training (empty for deletion)
  • phonemes_annotated: Mixed text/phoneme tokens with markers
  • to_convert: Type of conditioning: "text", "phonemes", or "text and phonemes"
  • edit_type: Type of edit: "substitution" or "deletion"
  • phoneme_probability: The probability used for this sample (for debugging)
  • xcodec2_tokens: XCodec2 audio token representations

Sequence Format:

{mixed_left}<|start_phon_gen|>{mixed_removed}<|end_phon_gen|>{mixed_right}<|start_audio|>{right_audio}<|start_of_speech|>{left_audio}<|SPEECH_GENERATION_START|>{removed_audio}<|SPEECH_GENERATION_END|>

Note: The training script adds the instruction prefix ("Generate the missing speech from..."), so it's not included in the data. The XCodec2 audio tokens are UNCHANGED - only the text/phoneme conditioning is mixed. ALL segments (left, removed, right) use the same curriculum probability - so with p=0 you get pure text, with p=1 pure phonemes.

Processing:

  • Language: english
  • Index range: 0 to 199999
  • Final row counter: 604173
  • Total samples: 604173