1use crate::constants::{
7 EMBEDDING_DIM, EMBEDDING_MAX_TOKENS, FASTEMBED_BATCH_SIZE, PASSAGE_PREFIX, QUERY_PREFIX,
8 REMEMBER_MAX_CONTROLLED_BATCH_CHUNKS, REMEMBER_MAX_CONTROLLED_BATCH_PADDED_TOKENS,
9};
10use crate::errors::AppError;
11use fastembed::{EmbeddingModel, ExecutionProviderDispatch, TextEmbedding, TextInitOptions};
12use ort::ep::CPU;
13use std::path::Path;
14use std::sync::{Mutex, OnceLock};
15
16static EMBEDDER: OnceLock<Mutex<TextEmbedding>> = OnceLock::new();
17
18pub fn get_embedder(models_dir: &Path) -> Result<&'static Mutex<TextEmbedding>, AppError> {
21 if let Some(m) = EMBEDDER.get() {
22 return Ok(m);
23 }
24
25 maybe_init_dynamic_ort(models_dir)?;
26
27 let cpu_ep: ExecutionProviderDispatch = CPU::default().with_arena_allocator(false).build();
43
44 let model = TextEmbedding::try_new(
45 TextInitOptions::new(EmbeddingModel::MultilingualE5Small)
46 .with_execution_providers(vec![cpu_ep])
47 .with_max_length(EMBEDDING_MAX_TOKENS)
48 .with_show_download_progress(true)
49 .with_cache_dir(models_dir.to_path_buf()),
50 )
51 .map_err(|e| AppError::Embedding(e.to_string()))?;
52 let _ = EMBEDDER.set(Mutex::new(model));
54 EMBEDDER.get().ok_or_else(|| {
55 AppError::Embedding(
56 "embedder OnceLock unexpectedly empty after set() (likely a racing initializer aborted before completion)"
57 .into(),
58 )
59 })
60}
61
62#[cfg(all(target_arch = "aarch64", target_os = "linux", target_env = "gnu"))]
63fn maybe_init_dynamic_ort(models_dir: &Path) -> Result<(), AppError> {
64 let mut candidates = Vec::new();
65
66 if let Ok(path) = std::env::var("ORT_DYLIB_PATH") {
67 if !path.is_empty() {
68 candidates.push(std::path::PathBuf::from(path));
69 }
70 }
71
72 if let Ok(exe) = std::env::current_exe() {
73 if let Some(dir) = exe.parent() {
74 candidates.push(dir.join("libonnxruntime.so"));
75 candidates.push(dir.join("lib").join("libonnxruntime.so"));
76 }
77 }
78
79 candidates.push(models_dir.join("libonnxruntime.so"));
80
81 for path in candidates {
82 if !path.exists() {
83 continue;
84 }
85
86 std::env::set_var("ORT_DYLIB_PATH", &path);
87 let _ = ort::init_from(&path)
88 .map_err(|e| AppError::Embedding(e.to_string()))?
89 .commit();
90 return Ok(());
91 }
92
93 Ok(())
94}
95
96#[cfg(not(all(target_arch = "aarch64", target_os = "linux", target_env = "gnu")))]
97fn maybe_init_dynamic_ort(_models_dir: &Path) -> Result<(), AppError> {
98 Ok(())
99}
100
101pub fn embed_passage(embedder: &Mutex<TextEmbedding>, text: &str) -> Result<Vec<f32>, AppError> {
106 let prefixed = format!("{PASSAGE_PREFIX}{text}");
107 let results = embedder
108 .lock()
109 .map_err(|e| AppError::Embedding(format!("embedder mutex poisoned: {e}")))?
110 .embed(vec![prefixed.as_str()], Some(1))
111 .map_err(|e| AppError::Embedding(e.to_string()))?;
112 let emb = results
113 .into_iter()
114 .next()
115 .ok_or_else(|| AppError::Embedding("empty embedding result".into()))?;
116 assert_eq!(emb.len(), EMBEDDING_DIM, "unexpected embedding dimension");
117 Ok(emb)
118}
119
120pub fn embed_query(embedder: &Mutex<TextEmbedding>, text: &str) -> Result<Vec<f32>, AppError> {
125 let prefixed = format!("{QUERY_PREFIX}{text}");
126 let results = embedder
127 .lock()
128 .map_err(|e| AppError::Embedding(format!("embedder mutex poisoned: {e}")))?
129 .embed(vec![prefixed.as_str()], Some(1))
130 .map_err(|e| AppError::Embedding(e.to_string()))?;
131 let emb = results
132 .into_iter()
133 .next()
134 .ok_or_else(|| AppError::Embedding("empty embedding result".into()))?;
135 Ok(emb)
136}
137
138pub fn embed_passages_batch(
145 embedder: &Mutex<TextEmbedding>,
146 texts: &[&str],
147 batch_size: usize,
148) -> Result<Vec<Vec<f32>>, AppError> {
149 let prefixed: Vec<String> = texts
150 .iter()
151 .map(|t| format!("{PASSAGE_PREFIX}{t}"))
152 .collect();
153 let strs: Vec<&str> = prefixed.iter().map(String::as_str).collect();
154 let results = embedder
155 .lock()
156 .map_err(|e| AppError::Embedding(format!("embedder mutex poisoned: {e}")))?
157 .embed(strs, Some(batch_size.min(FASTEMBED_BATCH_SIZE)))
158 .map_err(|e| AppError::Embedding(e.to_string()))?;
159 for emb in &results {
160 assert_eq!(emb.len(), EMBEDDING_DIM, "unexpected embedding dimension");
161 }
162 Ok(results)
163}
164
165pub fn controlled_batch_count(token_counts: &[usize]) -> usize {
168 plan_controlled_batches(token_counts).len()
169}
170
171pub fn embed_passages_controlled(
179 embedder: &Mutex<TextEmbedding>,
180 texts: &[&str],
181 token_counts: &[usize],
182) -> Result<Vec<Vec<f32>>, AppError> {
183 if texts.len() != token_counts.len() {
184 return Err(AppError::Internal(anyhow::anyhow!(
185 "texts/token_counts length mismatch in controlled embedding"
186 )));
187 }
188
189 let mut results = Vec::with_capacity(texts.len());
190 for (start, end) in plan_controlled_batches(token_counts) {
191 if end - start == 1 {
192 results.push(embed_passage(embedder, texts[start])?);
193 continue;
194 }
195
196 results.extend(embed_passages_batch(
197 embedder,
198 &texts[start..end],
199 end - start,
200 )?);
201 }
202
203 Ok(results)
204}
205
206pub fn embed_passages_serial<'a, I>(
214 embedder: &Mutex<TextEmbedding>,
215 texts: I,
216) -> Result<Vec<Vec<f32>>, AppError>
217where
218 I: IntoIterator<Item = &'a str>,
219{
220 let iter = texts.into_iter();
221 let (lower, _) = iter.size_hint();
222 let mut results = Vec::with_capacity(lower);
223 for text in iter {
224 results.push(embed_passage(embedder, text)?);
225 }
226 Ok(results)
227}
228
229fn plan_controlled_batches(token_counts: &[usize]) -> Vec<(usize, usize)> {
230 let mut batches = Vec::new();
231 let mut start = 0usize;
232
233 while start < token_counts.len() {
234 let mut end = start + 1;
235 let mut max_tokens = token_counts[start].max(1);
236
237 while end < token_counts.len() && end - start < REMEMBER_MAX_CONTROLLED_BATCH_CHUNKS {
238 let candidate_max = max_tokens.max(token_counts[end].max(1));
239 let candidate_len = end + 1 - start;
240 if candidate_max * candidate_len > REMEMBER_MAX_CONTROLLED_BATCH_PADDED_TOKENS {
241 break;
242 }
243 max_tokens = candidate_max;
244 end += 1;
245 }
246
247 batches.push((start, end));
248 start = end;
249 }
250
251 batches
252}
253
254pub fn f32_to_bytes(v: &[f32]) -> &[u8] {
266 unsafe { std::slice::from_raw_parts(v.as_ptr() as *const u8, std::mem::size_of_val(v)) }
268}
269
270#[cfg(test)]
271mod tests {
272 use super::*;
273 use crate::constants::{EMBEDDING_DIM, PASSAGE_PREFIX, QUERY_PREFIX};
274
275 #[test]
278 fn f32_to_bytes_empty_slice_returns_empty() {
279 let v: Vec<f32> = vec![];
280 assert_eq!(f32_to_bytes(&v), &[] as &[u8]);
281 }
282
283 #[test]
284 fn f32_to_bytes_one_element_returns_4_bytes() {
285 let v = vec![1.0_f32];
286 let bytes = f32_to_bytes(&v);
287 assert_eq!(bytes.len(), 4);
288 let recovered = f32::from_le_bytes([bytes[0], bytes[1], bytes[2], bytes[3]]);
290 assert_eq!(recovered, 1.0_f32);
291 }
292
293 #[test]
294 fn f32_to_bytes_length_is_4x_elements() {
295 let v = vec![0.0_f32, 1.0, 2.0, 3.0];
296 assert_eq!(f32_to_bytes(&v).len(), v.len() * 4);
297 }
298
299 #[test]
300 fn f32_to_bytes_zero_encoded_as_4_zeros() {
301 let v = vec![0.0_f32];
302 assert_eq!(f32_to_bytes(&v), &[0u8, 0, 0, 0]);
303 }
304
305 #[test]
306 fn f32_to_bytes_roundtrip_vector_embedding_dim() {
307 let v: Vec<f32> = (0..EMBEDDING_DIM).map(|i| i as f32 * 0.001).collect();
308 let bytes = f32_to_bytes(&v);
309 assert_eq!(bytes.len(), EMBEDDING_DIM * 4);
310 let first = f32::from_le_bytes(bytes[0..4].try_into().unwrap());
312 assert!((first - 0.0_f32).abs() < 1e-6);
313 let last_start = (EMBEDDING_DIM - 1) * 4;
314 let last = f32::from_le_bytes(bytes[last_start..last_start + 4].try_into().unwrap());
315 assert!((last - (EMBEDDING_DIM - 1) as f32 * 0.001).abs() < 1e-4);
316 }
317
318 #[test]
321 fn passage_prefix_not_empty() {
322 assert_eq!(PASSAGE_PREFIX, "passage: ");
323 }
324
325 #[test]
326 fn query_prefix_not_empty() {
327 assert_eq!(QUERY_PREFIX, "query: ");
328 }
329
330 #[test]
331 fn embedding_dim_is_384() {
332 assert_eq!(EMBEDDING_DIM, 384);
333 }
334
335 #[test]
338 #[ignore = "requires ~600 MB model on disk; run with --include-ignored"]
339 fn embed_passage_returns_vector_with_correct_dimension() {
340 let dir = tempfile::tempdir().unwrap();
341 let embedder = get_embedder(dir.path()).unwrap();
342 let result = embed_passage(embedder, "test text").unwrap();
343 assert_eq!(result.len(), EMBEDDING_DIM);
344 }
345
346 #[test]
347 #[ignore = "requires ~600 MB model on disk; run with --include-ignored"]
348 fn embed_query_returns_vector_with_correct_dimension() {
349 let dir = tempfile::tempdir().unwrap();
350 let embedder = get_embedder(dir.path()).unwrap();
351 let result = embed_query(embedder, "test query").unwrap();
352 assert_eq!(result.len(), EMBEDDING_DIM);
353 }
354
355 #[test]
356 #[ignore = "requires ~600 MB model on disk; run with --include-ignored"]
357 fn embed_passages_batch_returns_one_vector_per_text() {
358 let dir = tempfile::tempdir().unwrap();
359 let embedder = get_embedder(dir.path()).unwrap();
360 let textos = ["primeiro", "segundo"];
361 let results = embed_passages_batch(embedder, &textos, 2).unwrap();
362 assert_eq!(results.len(), 2);
363 for emb in &results {
364 assert_eq!(emb.len(), EMBEDDING_DIM);
365 }
366 }
367
368 #[test]
369 fn controlled_batch_plan_respects_budget() {
370 assert_eq!(
371 plan_controlled_batches(&[100, 100, 100, 100, 300, 300]),
372 vec![(0, 4), (4, 5), (5, 6)]
373 );
374 }
375
376 #[test]
377 fn controlled_batch_count_returns_one_for_single_chunk() {
378 assert_eq!(controlled_batch_count(&[350]), 1);
379 }
380}