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authorsoryu <soryu@soryu.co>2025-12-21 00:40:04 +0000
committersoryu <soryu@soryu.co>2025-12-23 14:47:18 +0000
commit55cacf6e1a087c0fa6950a1ddeb09060f787e541 (patch)
tree0b8e754eb16c829fc0ee7c8f4ba66fe75b4f3ebf /parakeet-rs/src/model_eou.rs
parent84fee5ce2ae30fb2381c99b9b223b8235b962869 (diff)
downloadsoryu-55cacf6e1a087c0fa6950a1ddeb09060f787e541.tar.gz
soryu-55cacf6e1a087c0fa6950a1ddeb09060f787e541.zip
Add EOU detection and streaming diarization
Diffstat (limited to 'parakeet-rs/src/model_eou.rs')
-rw-r--r--parakeet-rs/src/model_eou.rs183
1 files changed, 183 insertions, 0 deletions
diff --git a/parakeet-rs/src/model_eou.rs b/parakeet-rs/src/model_eou.rs
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+use crate::error::{Error, Result};
+use crate::execution::ModelConfig as ExecutionConfig;
+use ndarray::{Array1, Array2, Array3, Array4};
+use ort::session::Session;
+use std::path::Path;
+
+/// Encoder cache state for streaming inference
+/// The cache maintains temporal context across chunks
+pub struct EncoderCache {
+ /// channel cache: [1, 1, 70, 512] - batch=1, 70 frame lookback
+ pub cache_last_channel: Array4<f32>,
+ /// time cache: [1, 1, 512, 8] - batch=1, fixed 8 time steps
+ pub cache_last_time: Array4<f32>,
+ /// cache length: [1] with value 0 initially
+ pub cache_last_channel_len: Array1<i64>,
+}
+
+impl EncoderCache {
+ /// 17 layers, batch=1, 70 frame lookback, 512 features
+ pub fn new() -> Self {
+ Self {
+ cache_last_channel: Array4::zeros((17, 1, 70, 512)),
+ cache_last_time: Array4::zeros((17, 1, 512, 8)),
+ cache_last_channel_len: Array1::from_vec(vec![0i64]),
+ }
+ }
+}
+
+pub struct ParakeetEOUModel {
+ encoder: Session,
+ decoder_joint: Session,
+}
+
+impl ParakeetEOUModel {
+ pub fn from_pretrained<P: AsRef<Path>>(
+ model_dir: P,
+ exec_config: ExecutionConfig,
+ ) -> Result<Self> {
+ let model_dir = model_dir.as_ref();
+
+ let encoder_path = model_dir.join("encoder.onnx");
+ let decoder_path = model_dir.join("decoder_joint.onnx");
+
+ if !encoder_path.exists() || !decoder_path.exists() {
+ return Err(Error::Config(format!(
+ "Missing ONNX files in {}. Expected encoder.onnx and decoder_joint.onnx",
+ model_dir.display()
+ )));
+ }
+
+ // Load encoder
+ let builder = Session::builder()?;
+ let builder = exec_config.apply_to_session_builder(builder)?;
+ let encoder = builder.commit_from_file(&encoder_path)?;
+
+ // Load decoder
+ let builder = Session::builder()?;
+ let builder = exec_config.apply_to_session_builder(builder)?;
+ let decoder_joint = builder.commit_from_file(&decoder_path)?;
+
+ Ok(Self {
+ encoder,
+ decoder_joint,
+ })
+ }
+
+ /// Run the stateful encoder with cache
+ /// Input: features [1, 128, T], cache state
+ /// Output: (encoded [1, 512, T], new_cache)
+ pub fn run_encoder(
+ &mut self,
+ features: &Array3<f32>,
+ length: i64,
+ cache: &EncoderCache
+ ) -> Result<(Array3<f32>, EncoderCache)> {
+ let length_arr = Array1::from_vec(vec![length]);
+
+ let outputs = self.encoder.run(ort::inputs![
+ "audio_signal" => ort::value::Value::from_array(features.clone())?,
+ "length" => ort::value::Value::from_array(length_arr)?,
+ "cache_last_channel" => ort::value::Value::from_array(cache.cache_last_channel.clone())?,
+ "cache_last_time" => ort::value::Value::from_array(cache.cache_last_time.clone())?,
+ "cache_last_channel_len" => ort::value::Value::from_array(cache.cache_last_channel_len.clone())?
+ ])?;
+
+ // Extract encoder output [1, 512, T]
+ let (shape, data) = outputs["outputs"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract encoder output: {e}")))?;
+
+ let shape_dims = shape.as_ref();
+ let b = shape_dims[0] as usize;
+ let d = shape_dims[1] as usize;
+ let t = shape_dims[2] as usize;
+
+ let encoder_out = Array3::from_shape_vec((b, d, t), data.to_vec())
+ .map_err(|e| Error::Model(format!("Failed to reshape encoder output: {e}")))?;
+
+ // Extract new cache states
+ let (ch_shape, ch_data) = outputs["new_cache_last_channel"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract cache_last_channel: {e}")))?;
+
+ let (tm_shape, tm_data) = outputs["new_cache_last_time"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract cache_last_time: {e}")))?;
+
+ let (len_shape, len_data) = outputs["new_cache_last_channel_len"]
+ .try_extract_tensor::<i64>()
+ .map_err(|e| Error::Model(format!("Failed to extract cache_len: {e}")))?;
+
+ // Build new cache with extracted shapes
+ let new_cache = EncoderCache {
+ cache_last_channel: Array4::from_shape_vec(
+ (ch_shape[0] as usize, ch_shape[1] as usize, ch_shape[2] as usize, ch_shape[3] as usize),
+ ch_data.to_vec()
+ ).map_err(|e| Error::Model(format!("Failed to reshape cache_last_channel: {e}")))?,
+
+ cache_last_time: Array4::from_shape_vec(
+ (tm_shape[0] as usize, tm_shape[1] as usize, tm_shape[2] as usize, tm_shape[3] as usize),
+ tm_data.to_vec()
+ ).map_err(|e| Error::Model(format!("Failed to reshape cache_last_time: {e}")))?,
+
+ cache_last_channel_len: Array1::from_shape_vec(
+ len_shape[0] as usize,
+ len_data.to_vec()
+ ).map_err(|e| Error::Model(format!("Failed to reshape cache_len: {e}")))?,
+ };
+
+ Ok((encoder_out, new_cache))
+ }
+
+ /// Run the stateful decoder
+ /// Returns: (logits [1, 1, 1, vocab], new_state_h, new_state_c)
+ pub fn run_decoder(
+ &mut self,
+ encoder_frame: &Array3<f32>, // [1, 512, 1]
+ last_token: &Array2<i32>, // [1, 1]
+ state_h: &Array3<f32>, // [1, 1, 640]
+ state_c: &Array3<f32>, // [1, 1, 640]
+ ) -> Result<(Array3<f32>, Array3<f32>, Array3<f32>)> {
+
+ // Target length is always 1 for single step
+ let target_len = Array1::from_vec(vec![1i32]);
+
+ let outputs = self.decoder_joint.run(ort::inputs![
+ "encoder_outputs" => ort::value::Value::from_array(encoder_frame.clone())?,
+ "targets" => ort::value::Value::from_array(last_token.clone())?,
+ "target_length" => ort::value::Value::from_array(target_len)?,
+ "input_states_1" => ort::value::Value::from_array(state_h.clone())?,
+ "input_states_2" => ort::value::Value::from_array(state_c.clone())?
+ ])?;
+
+ // 1. Extract Logits
+ let (l_shape, l_data) = outputs["outputs"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract logits: {e}")))?;
+
+ // 2. Extract States (output_states_1, output_states_2)
+ let (_h_shape, h_data) = outputs["output_states_1"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract state h: {e}")))?;
+
+ let (_c_shape, c_data) = outputs["output_states_2"]
+ .try_extract_tensor::<f32>()
+ .map_err(|e| Error::Model(format!("Failed to extract state c: {e}")))?;
+
+ // Reconstruct Arrays
+ // Logits: I simplify to [1, 1, vocab]
+ let vocab_size = l_shape[3] as usize;
+ let logits = Array3::from_shape_vec((1, 1, vocab_size), l_data.to_vec())
+ .map_err(|e| Error::Model(format!("Reshape logits failed: {e}")))?;
+
+ // States: [1, 1, 640]
+ let new_h = Array3::from_shape_vec((1, 1, 640), h_data.to_vec())
+ .map_err(|e| Error::Model(format!("Reshape state h failed: {e}")))?;
+
+ let new_c = Array3::from_shape_vec((1, 1, 640), c_data.to_vec())
+ .map_err(|e| Error::Model(format!("Reshape state c failed: {e}")))?;
+
+ Ok((logits, new_h, new_c))
+ }
+} \ No newline at end of file