preprocessor.rs 48 KB
Newer Older
1
// SPDX-FileCopyrightText: Copyright (c) 2024-2026 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
Biswa Panda's avatar
Biswa Panda committed
2
3
4
5
6
// SPDX-License-Identifier: Apache-2.0

//! The Preprocessor consists of the following modules
//!
//! - `translation`: This module converts the allowed Ingress message types to the corresponding
7
//!   internal representation.
Biswa Panda's avatar
Biswa Panda committed
8
9
10
11
12
13
//! - `apply`: This module applies ModelConfig defaults to any empty optional fields specified
//! - `prompt`: This module applies any prompt template logic to the internal Request object.
//! - `tokenize`: This module tokenizes the formatted prompt string and returns the token ids.
//!
//! The Preprocessor will accept any IngressRequest and transform it to a BackendRequest.

14
pub mod media;
Biswa Panda's avatar
Biswa Panda committed
15
16
pub mod prompt;
pub mod tools;
17
use anyhow::Context;
18
use anyhow::{Result, bail};
19
20
21
22
use dynamo_async_openai::types::{
    ChatCompletionRequestMessage, ChatCompletionRequestUserMessageContent,
    ChatCompletionRequestUserMessageContentPart, ChatCompletionToolChoiceOption, EncodingFormat,
};
Ryan Olson's avatar
Ryan Olson committed
23
use futures::Stream;
Biswa Panda's avatar
Biswa Panda committed
24
25
use futures::stream::{self, StreamExt};
use prompt::OAIPromptFormatter;
Ryan Olson's avatar
Ryan Olson committed
26
use std::{collections::HashMap, pin::Pin, sync::Arc};
Biswa Panda's avatar
Biswa Panda committed
27
28
use tracing;

29
use crate::model_card::{ModelDeploymentCard, ModelInfo};
30
#[cfg(feature = "media-nixl")]
31
use crate::preprocessor::media::MediaLoader;
Biswa Panda's avatar
Biswa Panda committed
32
use crate::preprocessor::prompt::OAIChatLikeRequest;
33
use crate::protocols::common::preprocessor::{
34
    MultimodalData, MultimodalDataMap, PreprocessedRequestBuilder, RoutingHints,
35
};
36
use crate::tokenizers::Encoding;
Biswa Panda's avatar
Biswa Panda committed
37

38
use dynamo_parsers::{ReasoningParser, ReasoningParserType};
Neelay Shah's avatar
Neelay Shah committed
39
40
use dynamo_runtime::engine::{AsyncEngine, AsyncEngineContextProvider, ResponseStream};
use dynamo_runtime::pipeline::{
41
    AsyncEngineContext, Error, ManyOut, Operator, SingleIn, async_trait,
Biswa Panda's avatar
Biswa Panda committed
42
};
Neelay Shah's avatar
Neelay Shah committed
43
use dynamo_runtime::protocols::annotated::{Annotated, AnnotationsProvider};
Biswa Panda's avatar
Biswa Panda committed
44
45

use crate::protocols::{
Greg Clark's avatar
Greg Clark committed
46
    common::{OutputOptionsProvider, SamplingOptionsProvider, StopConditionsProvider},
Biswa Panda's avatar
Biswa Panda committed
47
    openai::{
48
        DeltaGeneratorExt,
Ryan Olson's avatar
Ryan Olson committed
49
50
51
        chat_completions::{
            NvCreateChatCompletionRequest, NvCreateChatCompletionStreamResponse, jail::JailedStream,
        },
52
        completions::{NvCreateCompletionRequest, NvCreateCompletionResponse},
53
        embeddings::{NvCreateEmbeddingRequest, NvCreateEmbeddingResponse},
Biswa Panda's avatar
Biswa Panda committed
54
55
56
        nvext::NvExtProvider,
    },
};
57
use crate::tokenizers::{HuggingFaceTokenizer, traits::Tokenizer};
Biswa Panda's avatar
Biswa Panda committed
58

59
use crate::preprocessor::prompt::{PromptFormatter, PromptInput, TextInput, TokenInput};
Biswa Panda's avatar
Biswa Panda committed
60

61
pub use crate::protocols::common::llm_backend::{BackendOutput, PreprocessedRequest};
62
63
64
pub use crate::protocols::common::preprocessor::PreprocessedEmbeddingRequest;

use crate::protocols::common::llm_backend::EmbeddingsEngineOutput;
Biswa Panda's avatar
Biswa Panda committed
65
66
67

pub const ANNOTATION_FORMATTED_PROMPT: &str = "formatted_prompt";
pub const ANNOTATION_TOKEN_IDS: &str = "token_ids";
68
69
70
71
72
73
pub const ANNOTATION_LLM_METRICS: &str = "llm_metrics";
#[derive(Debug, Clone, serde::Serialize, serde::Deserialize)]
pub struct LLMMetricAnnotation {
    pub input_tokens: usize,
    pub output_tokens: usize,
    pub chunk_tokens: usize,
74
    pub cached_tokens: Option<usize>,
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
}

impl LLMMetricAnnotation {
    /// Convert this metrics struct to an Annotated event
    pub fn to_annotation<T>(&self) -> Result<Annotated<T>, serde_json::Error> {
        Annotated::from_annotation(ANNOTATION_LLM_METRICS, self)
    }

    /// Extract LLM metrics from an Annotated event, if present
    pub fn from_annotation<T>(
        annotation: &Annotated<T>,
    ) -> Result<Option<LLMMetricAnnotation>, Box<dyn std::error::Error>> {
        if annotation.event.is_none() {
            return Ok(None);
        }
        if annotation.event.as_ref().unwrap() != ANNOTATION_LLM_METRICS {
            return Ok(None);
        }
        let comments = annotation
            .comment
            .as_ref()
            .ok_or("missing comments block")?;
        if comments.len() != 1 {
            return Err("malformed comments block - expected exactly 1 comment".into());
        }
        let metrics: LLMMetricAnnotation = serde_json::from_str(&comments[0])?;
        Ok(Some(metrics))
    }
}
Biswa Panda's avatar
Biswa Panda committed
104

105
106
107
108
109
110
// Reasoning State for reasoning parsing transformation step
struct ReasoningState {
    stream: Pin<Box<dyn Stream<Item = Annotated<NvCreateChatCompletionStreamResponse>> + Send>>,
    reasoning_parser: Option<Box<dyn ReasoningParser>>,
}

Biswa Panda's avatar
Biswa Panda committed
111
112
113
114
115
pub struct OpenAIPreprocessor {
    mdcsum: String,
    formatter: Arc<dyn OAIPromptFormatter>,
    tokenizer: Arc<dyn Tokenizer>,
    model_info: Arc<dyn ModelInfo>,
116
117
    /// Per-model runtime configuration propagated to response generator (e.g., reasoning/tool parser)
    runtime_config: crate::local_model::runtime_config::ModelRuntimeConfig,
118
    tool_call_parser: Option<String>,
119
    #[cfg(feature = "media-nixl")]
120
    media_loader: Option<MediaLoader>,
Biswa Panda's avatar
Biswa Panda committed
121
122
123
}

impl OpenAIPreprocessor {
124
125
126
    pub fn new(mdc: ModelDeploymentCard) -> Result<Arc<Self>> {
        let formatter = PromptFormatter::from_mdc(&mdc)?;
        let tokenizer = mdc.tokenizer_hf()?;
127
        match formatter {
128
            PromptFormatter::OAI(formatter) => Self::new_with_parts(mdc, formatter, tokenizer),
129
130
131
        }
    }

132
    pub fn new_with_parts(
133
134
        mdc: ModelDeploymentCard,
        formatter: Arc<dyn OAIPromptFormatter>,
135
        hf_tokenizer: tokenizers::Tokenizer,
136
    ) -> Result<Arc<Self>> {
137
        let mdcsum = mdc.mdcsum().to_string();
138
        let tokenizer = Arc::new(HuggingFaceTokenizer::from_tokenizer(hf_tokenizer));
139
140
141
142
143
        let Some(model_info) = mdc.model_info else {
            anyhow::bail!(
                "Blank ModelDeploymentCard cannot be used for pre-processing, no model_info"
            );
        };
144
        let model_info = model_info.get_model_info()?;
145
        let tool_call_parser = mdc.runtime_config.tool_call_parser.clone();
Biswa Panda's avatar
Biswa Panda committed
146

147
148
        // // Initialize runtime config from the ModelDeploymentCard
        let runtime_config = mdc.runtime_config.clone();
149
150
151
152
153
154
155

        #[cfg(feature = "media-nixl")]
        let media_loader = match mdc.media_decoder {
            Some(media_decoder) => Some(MediaLoader::new(media_decoder, mdc.media_fetcher)?),
            None => None,
        };

Biswa Panda's avatar
Biswa Panda committed
156
157
158
159
160
        Ok(Arc::new(Self {
            formatter,
            tokenizer,
            model_info,
            mdcsum,
161
            runtime_config,
162
            tool_call_parser,
163
            #[cfg(feature = "media-nixl")]
164
            media_loader,
Biswa Panda's avatar
Biswa Panda committed
165
166
        }))
    }
167
168
169
170
171
    /// Encode a string to it's tokens
    pub fn tokenize(&self, s: &str) -> anyhow::Result<Encoding> {
        self.tokenizer.encode(s)
    }

172
    /// Translate a [`NvCreateChatCompletionRequest`] request to a common completion request.
Biswa Panda's avatar
Biswa Panda committed
173
174
175
176
177
    /// Returns both the common completion request and a hashmap of annotations.
    ///
    /// Annotations evaluated by this method include:
    /// - `formatted_prompt`
    /// - `token_ids`
178
    pub async fn preprocess_request<
Biswa Panda's avatar
Biswa Panda committed
179
180
181
182
        R: OAIChatLikeRequest
            + AnnotationsProvider
            + SamplingOptionsProvider
            + StopConditionsProvider
Greg Clark's avatar
Greg Clark committed
183
            + OutputOptionsProvider
Biswa Panda's avatar
Biswa Panda committed
184
185
186
187
            + NvExtProvider,
    >(
        &self,
        request: &R,
188
    ) -> Result<(PreprocessedRequest, HashMap<String, String>)> {
189
        let mut builder = self.builder(request)?;
190
191
192
193
194
195
196
        let formatted_prompt = self
            .apply_template(request)
            .with_context(|| "Failed to apply prompt template")?;
        let annotations = self
            .gather_tokens(request, &mut builder, formatted_prompt)
            .with_context(|| "Failed to gather tokens")?;
        self.gather_multi_modal_data(request, &mut builder)
197
            .await
198
            .with_context(|| "Failed to gather multimodal data")?;
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213

        Ok((builder.build()?, annotations))
    }

    pub fn builder<
        R: OAIChatLikeRequest
            + AnnotationsProvider
            + SamplingOptionsProvider
            + StopConditionsProvider
            + OutputOptionsProvider
            + NvExtProvider,
    >(
        &self,
        request: &R,
    ) -> Result<PreprocessedRequestBuilder> {
214
        let mut builder = PreprocessedRequest::builder();
215
        builder.model(request.model());
Biswa Panda's avatar
Biswa Panda committed
216

217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
        let mut stop_conditions = request.extract_stop_conditions()?;
        if let Some(stop_tokens) = &mut stop_conditions.stop_token_ids_hidden {
            for eos_token in self.model_info.eos_token_ids() {
                if !stop_tokens.contains(&eos_token) {
                    stop_tokens.push(eos_token);
                }
            }
        } else {
            stop_conditions.stop_token_ids_hidden = Some(self.model_info.eos_token_ids());
        }

        // apply ignore eos if not already set
        stop_conditions.apply_ignore_eos();

        if !stop_conditions.ignore_eos.unwrap_or(false) {
            builder.eos_token_ids(self.model_info.eos_token_ids());
        }

        builder.stop_conditions(stop_conditions);
        builder.sampling_options(request.extract_sampling_options()?);
        builder.output_options(request.extract_output_options()?);
        builder.annotations(request.annotations().unwrap_or_default());
        builder.mdc_sum(Some(self.mdcsum.clone()));
240
        // Extract routing hints from nvext if present
241
        if let Some(nvext) = request.nvext() {
242
243
244
245
246
247
            // Build routing hints from nvext fields
            let routing = RoutingHints {
                backend_instance_id: nvext.backend_instance_id,
                prefill_worker_id: nvext.prefill_worker_id,
                decode_worker_id: nvext.decode_worker_id,
                dp_rank: None, // dp_rank is set later in the pipeline
248
                enable_local_updates: nvext.enable_local_updates,
249
                expected_output_tokens: nvext.expected_output_tokens,
250
251
            };
            builder.routing(Some(routing));
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
        }

        Ok(builder)
    }

    pub fn apply_template<
        R: OAIChatLikeRequest
            + AnnotationsProvider
            + SamplingOptionsProvider
            + StopConditionsProvider
            + OutputOptionsProvider
            + NvExtProvider,
    >(
        &self,
        request: &R,
    ) -> Result<Option<String>> {
        if let PromptInput::Text(_) = request.prompt_input_type()
            && let Some(TextInput::Single(_)) = request.extract_text()
        {
            let use_raw_prompt = request
                .nvext()
                .is_some_and(|ext| ext.use_raw_prompt.unwrap_or(false));

            let formatted_prompt = if use_raw_prompt {
                match request.raw_prompt() {
                    Some(prompt) => prompt,
                    None => {
                        tracing::warn!("Raw prompt requested but not available");
                        self.formatter.render(request)?
                    }
                }
            } else {
                self.formatter.render(request)?
            };
            Ok(Some(formatted_prompt))
        } else {
            Ok(None)
        }
    }

292
    pub async fn gather_multi_modal_data<R: OAIChatLikeRequest>(
293
294
295
296
297
298
299
        &self,
        request: &R,
        builder: &mut PreprocessedRequestBuilder,
    ) -> Result<()> {
        let messages = request.messages();
        let message_count = messages.len().unwrap_or(0);
        let mut media_map: MultimodalDataMap = HashMap::new();
300
301
302
        #[cfg(feature = "media-nixl")]
        let mut fetch_tasks: Vec<(String, ChatCompletionRequestUserMessageContentPart)> =
            Vec::new();
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334

        for idx in 0..message_count {
            let msg = messages
                .get_item_by_index(idx)
                .map_err(|_| anyhow::Error::msg(format!("Cannot get message at index {idx}")))?;

            let msg_json: serde_json::Value = serde_json::to_value(&msg)?;
            let message: ChatCompletionRequestMessage = serde_json::from_value(msg_json)?;

            let content_parts = match &message {
                ChatCompletionRequestMessage::User(u) => match &u.content {
                    ChatCompletionRequestUserMessageContent::Array(parts) => parts,
                    _ => continue,
                },
                _ => continue,
            };

            // Iterate over content parts
            for content_part in content_parts {
                let (type_str, url) = match content_part {
                    ChatCompletionRequestUserMessageContentPart::ImageUrl(image_part) => {
                        ("image_url".to_string(), image_part.image_url.url.clone())
                    }
                    ChatCompletionRequestUserMessageContentPart::VideoUrl(video_part) => {
                        ("video_url".to_string(), video_part.video_url.url.clone())
                    }
                    ChatCompletionRequestUserMessageContentPart::AudioUrl(audio_part) => {
                        ("audio_url".to_string(), audio_part.audio_url.url.clone())
                    }
                    _ => continue,
                };

335
                #[cfg(feature = "media-nixl")]
336
337
                if self.media_loader.is_some() {
                    fetch_tasks.push((type_str, content_part.clone()));
338
                    continue;
339
                }
340
341
342
343
344
345

                //Fallback: ust pass the URL through
                media_map
                    .entry(type_str)
                    .or_default()
                    .push(MultimodalData::Url(url));
346
347
            }
        }
348
349

        // Execute all fetch tasks
350
        #[cfg(feature = "media-nixl")]
351
352
        if !fetch_tasks.is_empty() {
            let loader = self.media_loader.as_ref().unwrap();
353
354
355
356
            let media_io_kwargs = request.media_io_kwargs();
            let results = futures::future::join_all(fetch_tasks.iter().map(|(_, content_part)| {
                loader.fetch_and_decode_media_part(content_part, media_io_kwargs)
            }))
357
358
            .await;

359
360
361
362
363
364
365
366
            for ((type_str, _), result) in fetch_tasks.into_iter().zip(results.into_iter()) {
                // if one item fails, errors the whole request, other items will be cleaned up by Drop
                let rdma_descriptor = result?;
                media_map
                    .entry(type_str)
                    .or_default()
                    .push(MultimodalData::Decoded(rdma_descriptor));
            }
367
368
        }

369
370
        if !media_map.is_empty() {
            builder.multi_modal_data(Some(media_map));
371
372
373
374
375
376
377
378

            // Preserve original messages in extra_args for multimodal workers that need them
            // (e.g., TRT-LLM multimodal processor needs raw messages for proper tokenization)
            let messages_json = serde_json::to_value(&messages)?;
            let extra_args = serde_json::json!({
                "messages": messages_json
            });
            builder.extra_args(Some(extra_args));
379
380
381
382
383
        }

        Ok(())
    }

384
385
386
387
388
389
390
391
392
393
394
395
396
397
    pub fn gather_tokens<
        R: OAIChatLikeRequest
            + AnnotationsProvider
            + SamplingOptionsProvider
            + StopConditionsProvider
            + OutputOptionsProvider
            + NvExtProvider,
    >(
        &self,
        request: &R,
        builder: &mut PreprocessedRequestBuilder,
        formatted_prompt: Option<String>,
    ) -> Result<HashMap<String, String>> {
        let mut annotations = HashMap::new();
398
399
400
401
402
403
404
405
406
407
408
409
        // match request type before any conversion/processing
        match request.prompt_input_type() {
            PromptInput::Tokens(_) => {
                if let Some(token_input) = request.extract_tokens() {
                    match token_input {
                        TokenInput::Single(tokens) => {
                            builder.token_ids(tokens);
                        }
                        TokenInput::Batch(token_batches) => {
                            if token_batches.len() == 1 {
                                builder.token_ids(token_batches[0].clone());
                            } else {
410
411
412
413
                                bail!(
                                    "Batch token input not supported for more than one token in requests (got {})",
                                    token_batches.len()
                                );
414
415
416
                            }
                        }
                    }
Biswa Panda's avatar
Biswa Panda committed
417
418
                }
            }
419
420
421
            PromptInput::Text(_) => {
                if let Some(text_input) = request.extract_text() {
                    match text_input {
422
423
424
425
426
427
428
429
430
431
                        TextInput::Single(raw_prompt) => {
                            if let Some(f) = formatted_prompt.as_ref()
                                && request.has_annotation(ANNOTATION_FORMATTED_PROMPT)
                            {
                                annotations
                                    .insert(ANNOTATION_FORMATTED_PROMPT.to_string(), f.to_string());
                            }

                            // Completions will use raw_prompt, no template
                            let prompt = formatted_prompt.unwrap_or(raw_prompt);
Biswa Panda's avatar
Biswa Panda committed
432

433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
                            // Check if backend_instance_id is present and token_data is provided
                            let has_backend_instance_id = request
                                .nvext()
                                .and_then(|ext| ext.backend_instance_id)
                                .is_some();

                            let token_data =
                                request.nvext().and_then(|ext| ext.token_data.as_ref());

                            let (tokens_vec, skip_token_annotation) = if has_backend_instance_id {
                                if let Some(tokens) = token_data {
                                    tracing::trace!(
                                        "Using provided tokens from EPP: {} ids",
                                        tokens.len()
                                    );
                                    // need ownership for the builder, so clone.
                                    (tokens.clone(), true)
                                } else {
                                    tracing::warn!(
                                        "backend_instance_id provided but no token_data; tokenizing prompt"
                                    );
454
                                    let encoding = self.tokenizer.encode(&prompt)?;
455
456
457
458
                                    (encoding.token_ids().to_vec(), false)
                                }
                            } else {
                                // No backend_instance_id provided, continue the normal flow.
459
                                let encoding = self.tokenizer.encode(&prompt)?;
460
461
                                (encoding.token_ids().to_vec(), false)
                            };
Biswa Panda's avatar
Biswa Panda committed
462

463
464
465
                            if request.has_annotation(ANNOTATION_TOKEN_IDS)
                                && !skip_token_annotation
                            {
466
467
                                annotations.insert(
                                    ANNOTATION_TOKEN_IDS.to_string(),
468
                                    serde_json::to_string(&tokens_vec)?,
469
470
471
                                );
                            }

472
                            builder.token_ids(tokens_vec);
473
474
                        }
                        TextInput::Batch(texts) => {
475
476
477
478
479
480
481
482
483
                            if texts.len() == 1 {
                                let encoding = self.tokenizer.encode(&texts[0])?;
                                builder.token_ids(encoding.token_ids().to_vec());
                            } else {
                                bail!(
                                    "Batch text input not supported for more than one text in requests (got {})",
                                    texts.len()
                                );
                            }
484
485
486
487
                        }
                    }
                }
            }
Biswa Panda's avatar
Biswa Panda committed
488
        }
489
        Ok(annotations)
Biswa Panda's avatar
Biswa Panda committed
490
491
    }

492
493
494
495
496
497
498
499
500
501
502
503
504
505
    /// Preprocess an embedding request, handling both text and token ID inputs.
    ///
    /// For text inputs, tokenizes the text using the configured tokenizer.
    /// For token ID inputs, uses the provided token IDs directly and skips tokenization.
    ///
    /// Returns both the preprocessed request and a hashmap of annotations.
    pub async fn preprocess_embedding_request(
        &self,
        request: &NvCreateEmbeddingRequest,
    ) -> Result<(PreprocessedEmbeddingRequest, HashMap<String, String>)> {
        let mut annotations = HashMap::new();
        let mut builder = PreprocessedEmbeddingRequest::builder();

        let all_token_ids = match &request.inner.input {
506
            dynamo_async_openai::types::EmbeddingInput::String(s) => {
507
508
                let encoding = self.tokenizer.encode(s)?;
                vec![encoding.token_ids().to_vec()]
509
            }
510
            dynamo_async_openai::types::EmbeddingInput::StringArray(arr) => {
511
512
513
514
515
516
517
518
519
520
521
                let input_strs: Vec<String> = arr.to_vec();
                let encodings = tokio::task::spawn_blocking({
                    let tokenizer = self.tokenizer.clone();
                    let strs = input_strs.clone();
                    move || {
                        tokenizer.encode_batch(&strs.iter().map(|s| s.as_str()).collect::<Vec<_>>())
                    }
                })
                .await??;
                let token_arrays: Vec<Vec<u32>> = encodings
                    .into_iter()
522
                    .map(|encoding| encoding.token_ids().to_vec())
523
524
525
                    .collect();
                token_arrays
            }
526
527
528
529
            dynamo_async_openai::types::EmbeddingInput::IntegerArray(token_ids) => {
                vec![token_ids.clone()]
            }
            dynamo_async_openai::types::EmbeddingInput::ArrayOfIntegerArray(token_arrays) => {
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
                token_arrays.clone()
            }
        };

        // Handle annotations
        if request.has_annotation(ANNOTATION_TOKEN_IDS) {
            annotations.insert(
                ANNOTATION_TOKEN_IDS.to_string(),
                serde_json::to_string(&all_token_ids)?,
            );
        }

        builder.token_ids(all_token_ids);
        builder.model(request.inner.model.clone());
        builder.encoding_format(request.inner.encoding_format.as_ref().map(|f| match f {
            EncodingFormat::Float => "float".to_string(),
            EncodingFormat::Base64 => "base64".to_string(),
        }));
        builder.dimensions(request.inner.dimensions);

        builder.annotations(request.annotations().unwrap_or_default());
        builder.mdc_sum(Some(self.mdcsum.clone()));

        Ok((builder.build()?, annotations))
    }

Ryan Olson's avatar
Ryan Olson committed
556
557
    pub fn transform_postprocessor_stream<S, Resp>(
        stream: S,
Biswa Panda's avatar
Biswa Panda committed
558
        generator: Box<dyn DeltaGeneratorExt<Resp>>,
Ryan Olson's avatar
Ryan Olson committed
559
560
561
562
563
564
565
566
567
568
569
        context: Arc<dyn AsyncEngineContext>,
    ) -> impl Stream<Item = Annotated<Resp>> + Send
    where
        S: Stream<Item = Annotated<BackendOutput>> + Send + 'static,
        Resp: Send + Sync + 'static + std::fmt::Debug,
    {
        struct State<Resp>
        where
            Resp: Send + Sync + 'static + std::fmt::Debug,
        {
            response_stream: Pin<Box<dyn Stream<Item = Annotated<BackendOutput>> + Send>>,
Biswa Panda's avatar
Biswa Panda committed
570
571
572
            response_generator: Box<dyn DeltaGeneratorExt<Resp>>,
            context: Arc<dyn AsyncEngineContext>,
            cancelled: bool,
573
            cumulative_output_tokens: usize,
574
575
            finish_reason_sent: bool,
            usage_chunk_sent: bool,
Ryan Olson's avatar
Ryan Olson committed
576
            finished: bool,
Biswa Panda's avatar
Biswa Panda committed
577
578
579
        }

        let state = State {
Ryan Olson's avatar
Ryan Olson committed
580
            response_stream: Box::pin(stream),
Biswa Panda's avatar
Biswa Panda committed
581
582
583
            response_generator: generator,
            context: context.clone(),
            cancelled: false,
584
            cumulative_output_tokens: 0,
585
586
            finish_reason_sent: false,
            usage_chunk_sent: false,
Ryan Olson's avatar
Ryan Olson committed
587
            finished: false,
Biswa Panda's avatar
Biswa Panda committed
588
589
590
        };

        // transform the common response stream into a chat response stream
Ryan Olson's avatar
Ryan Olson committed
591
592

        stream::unfold(state, |mut inner| {
Biswa Panda's avatar
Biswa Panda committed
593
            async move {
594
595
596
597
598
                // If already finished, return None immediately
                if inner.finished {
                    return None;
                }

Biswa Panda's avatar
Biswa Panda committed
599
600
601
602
603
604
                if let Some(response) = inner.response_stream.next().await {
                    if inner.cancelled {
                        tracing::debug!(
                            request_id = inner.context.id(),
                            "Cancellation issued last message; closing stream"
                        );
605
                        inner.finished = true; // Mark as finished
Biswa Panda's avatar
Biswa Panda committed
606
607
608
609
610
611
612
613
614
                        return None;
                    }

                    tracing::trace!(
                        request_id = inner.context.id(),
                        "Processing common response: {:?}",
                        response
                    );

615
616
617
618
619
620
621
                    // Check if this response has a finish_reason
                    let has_finish_reason = response
                        .data
                        .as_ref()
                        .map(|d| d.finish_reason.is_some())
                        .unwrap_or(false);

622
623
624
625
626
627
628
629
630
631
632
633
634
635
                    let (chunk_tokens, isl) = if let Some(ref backend_output) = response.data {
                        let chunk_tokens = backend_output.token_ids.len();
                        inner.cumulative_output_tokens += chunk_tokens;

                        let isl = inner.response_generator.get_isl().unwrap_or(0) as usize;

                        (chunk_tokens, isl)
                    } else {
                        (0, 0)
                    };

                    let current_osl = inner.cumulative_output_tokens;

                    let mut response = response.map_data(|data| {
Biswa Panda's avatar
Biswa Panda committed
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
                        inner
                            .response_generator
                            .choice_from_postprocessor(data)
                            .inspect_err(|e| {
                                tracing::error!(
                                    request_id = inner.context.id(),
                                    "Error processing common response: {:?}",
                                    e
                                );
                                inner.cancelled = true;
                                inner.context.stop_generating();
                            })
                            .map_err(|e| e.to_string())
                    });

651
652
653
654
655
                    // Create LLM metrics annotation
                    let llm_metrics = LLMMetricAnnotation {
                        input_tokens: isl,
                        output_tokens: current_osl,
                        chunk_tokens,
656
                        cached_tokens: None,
657
658
659
660
661
662
                    };

                    if let Ok(metrics_annotated) = llm_metrics.to_annotation::<()>() {
                        // Only set event if not already set to avoid overriding existing events (like errors)
                        if response.event.is_none() {
                            response.event = metrics_annotated.event;
663
                            response.comment = metrics_annotated.comment;
664
665
                        }
                    }
666

667
668
669
670
671
                    // Mark if we've seen a finish_reason
                    if has_finish_reason {
                        inner.finish_reason_sent = true;
                    }

Biswa Panda's avatar
Biswa Panda committed
672
673
                    tracing::trace!(
                        request_id = inner.context.id(),
674
                        "OpenAI NvCreateChatCompletionStreamResponse: {:?}",
Biswa Panda's avatar
Biswa Panda committed
675
676
677
678
679
                        response
                    );

                    Some((response, inner))
                } else {
680
681
682
683
                    // Stream has ended - must set finished to true to prevent unfold from polling
                    // again. The stream is exhausted and will panic if polled after None.
                    inner.finished = true;

684
                    if inner.finish_reason_sent && !inner.usage_chunk_sent {
685
686
687
                        inner.usage_chunk_sent = true;

                        let usage_chunk = inner.response_generator.create_usage_chunk();
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
                        let usage = inner.response_generator.get_usage();
                        let llm_metrics = LLMMetricAnnotation {
                            input_tokens: usage.prompt_tokens as usize,
                            output_tokens: usage.completion_tokens as usize,
                            chunk_tokens: 0,
                            cached_tokens: usage
                                .prompt_tokens_details
                                .as_ref()
                                .and_then(|d| d.cached_tokens.map(|c| c as usize)),
                        };

                        // Create annotation string
                        let annotation = llm_metrics.to_annotation::<()>().unwrap_or_else(|e| {
                            tracing::warn!("Failed to serialize metrics: {}", e);
                            Annotated::<()>::from_data(())
                        });

                        // Send the usage chunk if needed
                        let data = if inner.response_generator.is_usage_enabled() {
                            Some(usage_chunk)
                        } else {
                            None
                        };

712
713
                        let annotated_usage = Annotated::<Resp> {
                            id: None,
714
715
716
                            data,
                            event: Some(ANNOTATION_LLM_METRICS.to_string()),
                            comment: annotation.comment,
717
718
719
720
                        };

                        tracing::trace!(
                            request_id = inner.context.id(),
721
722
                            "Sending final usage chunk for OpenAI compliance, annotated_usage: {:?}",
                            annotated_usage
723
724
725
726
727
728
729
                        );

                        Some((annotated_usage, inner))
                    } else {
                        // stream closed
                        None
                    }
Biswa Panda's avatar
Biswa Panda committed
730
731
                }
            }
Ryan Olson's avatar
Ryan Olson committed
732
        })
Biswa Panda's avatar
Biswa Panda committed
733
    }
734
735

    /// Transform engine embedding output stream to OpenAI embedding response stream
Ryan Olson's avatar
Ryan Olson committed
736
737
    pub fn transform_embedding_postprocessor_stream<S>(
        stream: S,
738
        original_request: NvCreateEmbeddingRequest,
Ryan Olson's avatar
Ryan Olson committed
739
740
741
742
743
    ) -> impl Stream<Item = Annotated<NvCreateEmbeddingResponse>> + Send
    where
        S: Stream<Item = Annotated<EmbeddingsEngineOutput>> + Send + 'static,
    {
        stream.map(move |output| {
744
745
            output.map_data(|engine_output| {
                // Convert engine output to OpenAI response format
746
                let embeddings: Vec<dynamo_async_openai::types::Embedding> = engine_output
747
748
749
                    .embeddings
                    .into_iter()
                    .enumerate()
750
                    .map(|(index, embedding)| dynamo_async_openai::types::Embedding {
751
752
753
754
755
756
757
                        index: index as u32,
                        object: "embedding".to_string(),
                        embedding: embedding.into_iter().map(|f| f as f32).collect(),
                    })
                    .collect();

                let response = NvCreateEmbeddingResponse {
758
                    inner: dynamo_async_openai::types::CreateEmbeddingResponse {
759
760
761
                        object: "list".to_string(),
                        model: original_request.inner.model.clone(),
                        data: embeddings,
762
                        usage: dynamo_async_openai::types::EmbeddingUsage {
763
764
765
766
767
768
769
770
                            prompt_tokens: engine_output.prompt_tokens,
                            total_tokens: engine_output.total_tokens,
                        },
                    },
                };

                Ok(response)
            })
Ryan Olson's avatar
Ryan Olson committed
771
        })
772
773
    }

Ryan Olson's avatar
Ryan Olson committed
774
775
776
777
778
779
780
781
    /// Determine if we should apply the tool calling jail based on configuration
    /// Returns Ok(true) if jail should be applied, Ok(false) if not, or Err if invalid config
    pub fn should_apply_tool_jail(
        tool_call_parser: Option<&String>,
        tool_choice: Option<&ChatCompletionToolChoiceOption>,
        has_tools: bool,
    ) -> std::result::Result<bool, Error> {
        match (tool_call_parser, tool_choice, has_tools) {
782
783
784
785
786
            // tool_choice=required/named work without parser (use Immediate jail mode)
            (None, Some(ChatCompletionToolChoiceOption::Required), true) => Ok(true),
            (None, Some(ChatCompletionToolChoiceOption::Named(_)), true) => Ok(true),

            // tool_choice=auto requires a parser
Ryan Olson's avatar
Ryan Olson committed
787
788
789
790
791
792
            (None, Some(ChatCompletionToolChoiceOption::Auto), true) => {
                tracing::warn!(
                    "Tool choice 'auto' specified but no tool parser configured; proceeding without jailing"
                );
                Ok(false)
            }
793

Ryan Olson's avatar
Ryan Olson committed
794
795
796
            // Parser exists and tools might be called
            (Some(_), Some(ChatCompletionToolChoiceOption::None), _) => {
                Ok(false) // Explicitly disabled
797
            }
Ryan Olson's avatar
Ryan Olson committed
798
799
            (Some(_), Some(_), true) => Ok(true), // Any other tool_choice with tools
            (Some(_), None, true) => Ok(true),    // Default behavior when tools present
800

Ryan Olson's avatar
Ryan Olson committed
801
802
803
804
            // No tools or no parser
            _ => Ok(false),
        }
    }
805

Ryan Olson's avatar
Ryan Olson committed
806
807
    /// Apply tool calling jail to the stream if needed
    pub fn apply_tool_calling_jail<S>(
808
809
        tool_call_parser: Option<String>,
        tool_choice: Option<dynamo_async_openai::types::ChatCompletionToolChoiceOption>,
810
        tool_definitions: Option<Vec<dynamo_parsers::tool_calling::ToolDefinition>>,
Ryan Olson's avatar
Ryan Olson committed
811
812
813
814
815
        stream: S,
    ) -> impl Stream<Item = Annotated<NvCreateChatCompletionStreamResponse>> + Send
    where
        S: Stream<Item = Annotated<NvCreateChatCompletionStreamResponse>> + Send + 'static,
    {
816
817
818
819
        use dynamo_async_openai::types::ChatCompletionToolChoiceOption;

        let mut builder = JailedStream::builder();

820
821
822
823
824
825
826
        // Set tool definitions if provided
        if let Some(tool_definitions) = tool_definitions
            && !tool_definitions.is_empty()
        {
            builder = builder.tool_definitions(tool_definitions);
        }

827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
        // Configure jail based on tool_choice
        match tool_choice {
            Some(ChatCompletionToolChoiceOption::Named(named)) => {
                // Immediate jail mode for named tool choice
                builder = builder.tool_choice_named(named.function.name.clone());
            }
            Some(ChatCompletionToolChoiceOption::Required) => {
                // Immediate jail mode for required tool choice
                builder = builder.tool_choice_required();
            }
            Some(ChatCompletionToolChoiceOption::Auto)
            | Some(ChatCompletionToolChoiceOption::None)
            | None => {
                // Traditional marker-based jail for auto/none/unspecified
                if let Some(parser) = tool_call_parser {
                    builder = builder.tool_call_parser(parser);
                }
            }
        }

        let jail = builder.build();
848
        jail.apply_with_finish_reason(stream)
Ryan Olson's avatar
Ryan Olson committed
849
    }
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899

    // Motivation: Each transformation on the stream should be a separate step to allow for more flexibility
    // Earlier reasoning parser logic was nested under delta generation logic in choice_from_postprocessor
    // Since we have tool calling parsing as separate step, it makes sense to have reasoning parser as separate step as well
    pub fn parse_reasoning_content_from_stream<S>(
        stream: S,
        parser_name: String,
    ) -> impl Stream<Item = Annotated<NvCreateChatCompletionStreamResponse>> + Send
    where
        S: Stream<Item = Annotated<NvCreateChatCompletionStreamResponse>> + Send + 'static,
    {
        // Initialize reasoning parser from parser_name
        let reasoning_parser = Box::new(ReasoningParserType::get_reasoning_parser_from_name(
            parser_name.as_ref(),
        )) as Box<dyn ReasoningParser>;

        let state = ReasoningState {
            stream: Box::pin(stream),
            reasoning_parser: Some(reasoning_parser),
        };

        stream::unfold(state, |mut state| async move {
            if let Some(response) = state.stream.next().await {
                // Process the response through reasoning parser if available
                let processed_response = if let Some(ref mut parser) = state.reasoning_parser {
                    response.map_data(|mut data| {
                        // Process all choices, not just the first one
                        for choice in data.choices.iter_mut() {
                            if let Some(text) = choice.delta.content.as_ref() {
                                let parser_result =
                                    parser.parse_reasoning_streaming_incremental(text, &[]);

                                // Update this specific choice with parsed content
                                choice.delta.content = parser_result.get_some_normal_text();
                                choice.delta.reasoning_content = parser_result.get_some_reasoning();
                            }
                        }
                        Ok(data)
                    })
                } else {
                    // No reasoning parser configured, pass through unchanged
                    response
                };

                Some((processed_response, state))
            } else {
                None
            }
        })
    }
Biswa Panda's avatar
Biswa Panda committed
900
901
902
903
904
905
906
907
908
909
}

// for pals, we do not want to add the generation prompt to the formatted prompt
// we also need to know if the template support this add_generation_prompt bool
// any prompt template that does not support this should return an error
// oob - we should update any prompt template that does not support this to support it

#[async_trait]
impl
    Operator<
910
        SingleIn<NvCreateChatCompletionRequest>,
911
        ManyOut<Annotated<NvCreateChatCompletionStreamResponse>>,
912
        SingleIn<PreprocessedRequest>,
Biswa Panda's avatar
Biswa Panda committed
913
914
915
916
917
        ManyOut<Annotated<BackendOutput>>,
    > for OpenAIPreprocessor
{
    async fn generate(
        &self,
918
        request: SingleIn<NvCreateChatCompletionRequest>,
Biswa Panda's avatar
Biswa Panda committed
919
        next: Arc<
920
            dyn AsyncEngine<SingleIn<PreprocessedRequest>, ManyOut<Annotated<BackendOutput>>, Error>,
Biswa Panda's avatar
Biswa Panda committed
921
        >,
922
    ) -> Result<ManyOut<Annotated<NvCreateChatCompletionStreamResponse>>, Error> {
Biswa Panda's avatar
Biswa Panda committed
923
        // unpack the request
924
925
926
927
        let (mut request, context) = request.into_parts();

        // Preserve original inbound streaming flag before any internal overrides
        let request_id = context.id().to_string();
928
        let original_stream_flag = request.inner.stream.unwrap_or(false);
929

930
        // Build audit handle (None if no DYN_AUDIT_SINKS)
931
932
933
934
935
936
        let mut audit_handle = crate::audit::handle::create_handle(&request, &request_id);

        if let Some(ref mut h) = audit_handle {
            h.set_request(std::sync::Arc::new(request.clone()));
        }

937
938
939
940
941
        // For non-streaming requests (stream=false), enable usage by default
        // This ensures compliance with OpenAI API spec where non-streaming responses
        // always include usage statistics
        request.enable_usage_for_nonstreaming(original_stream_flag);

942
943
        // Set stream=true for internal processing (after audit capture)
        request.inner.stream = Some(true);
Biswa Panda's avatar
Biswa Panda committed
944
945

        // create a response generator
946
        let response_generator = request.response_generator(context.id().to_string());
Ryan Olson's avatar
Ryan Olson committed
947
948

        // convert the chat completion request to a common completion request
949
950
951
952
        let (mut common_request, annotations) = self.preprocess_request(&request).await?;

        // Attach the timing tracker to the request so downstream components can record metrics
        common_request.tracker = response_generator.tracker();
Ryan Olson's avatar
Ryan Olson committed
953

Biswa Panda's avatar
Biswa Panda committed
954
955
956
        let mut response_generator = Box::new(response_generator);

        // update isl
Paul Hendricks's avatar
Paul Hendricks committed
957
        response_generator.update_isl(common_request.token_ids.len() as u32);
Biswa Panda's avatar
Biswa Panda committed
958
959
960
961
962

        // repack the common completion request
        let common_request = context.map(|_| common_request);

        // create a stream of annotations this will be prepend to the response stream
963
        let annotations: Vec<Annotated<NvCreateChatCompletionStreamResponse>> = annotations
Biswa Panda's avatar
Biswa Panda committed
964
965
966
967
968
969
970
            .into_iter()
            .flat_map(|(k, v)| Annotated::from_annotation(k, &v))
            .collect();
        let annotations_stream = stream::iter(annotations);

        // forward the common completion request to the next operator
        let response_stream = next.generate(common_request).await?;
Ryan Olson's avatar
Ryan Olson committed
971
972
973
974
975
976
977
978
979
980
        // Extract context once
        let context = response_stream.context();

        // transform the postprocessor stream (no boxing yet)
        let stream = Self::transform_postprocessor_stream(
            response_stream,
            response_generator,
            context.clone(),
        );

981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
        // Try to parse reasoning content only if parser is configured
        let should_parse_reasoning = self.runtime_config.reasoning_parser.is_some();

        // Reasoning Content Parsing Transformation Step
        // Current Solution:
        // This step operates on Deltas created by the transform_postprocessor_stream function
        // Only access to text and not token_ids - so can not support parsing based on token_ids for now
        // Future Solution:
        // To address the limitation if needed in future: move this step before transform_postprocessor_stream and add new field of reasoning_content to the backend output
        // Use backend_output.reasoning_content field to fill out the deltas.
        let stream: Pin<Box<dyn Stream<Item = _> + Send>> = if should_parse_reasoning {
            Box::pin(Self::parse_reasoning_content_from_stream(
                stream,
                self.runtime_config.reasoning_parser.clone().unwrap(), // Safety: We already checked that parser is some, so gtg
            ))
        } else {
            Box::pin(stream)
        };

Ryan Olson's avatar
Ryan Olson committed
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
        // Check if tools are present and if we should apply jail
        let has_tools =
            request.inner.tools.is_some() && !request.inner.tools.as_ref().unwrap().is_empty();

        // Determine if we should apply jail (do this before moving request)
        let should_jail = Self::should_apply_tool_jail(
            self.tool_call_parser.as_ref(),
            request.inner.tool_choice.as_ref(),
            has_tools,
        )?;

1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
        // Convert OpenAI tools to parser ToolDefinition format before applying jail
        let tool_definitions = request.inner.tools.as_ref().map(|tools| {
            tools
                .iter()
                .map(|tool| dynamo_parsers::tool_calling::ToolDefinition {
                    name: tool.function.name.clone(),
                    parameters: tool.function.parameters.clone(),
                })
                .collect()
        });

Ryan Olson's avatar
Ryan Olson committed
1022
        // Apply jail conditionally
1023
        let transformed_stream: Pin<Box<dyn Stream<Item = _> + Send>> = if should_jail {
1024
1025
1026
            Box::pin(Self::apply_tool_calling_jail(
                self.tool_call_parser.clone(),
                request.inner.tool_choice.clone(),
1027
                tool_definitions,
1028
1029
                stream,
            ))
1030
        } else {
Ryan Olson's avatar
Ryan Olson committed
1031
            Box::pin(stream)
1032
        };
1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055

        // Step 4: Apply audit aggregation strategy
        let final_stream = if let Some(mut audit) = audit_handle {
            let (stream, agg_fut) = if audit.streaming() {
                // Streaming: apply scan (pass-through + parallel aggregation)
                crate::audit::stream::scan_aggregate_with_future(transformed_stream)
            } else {
                // Non-streaming: apply fold (collect all, then emit single chunk)
                crate::audit::stream::fold_aggregate_with_future(transformed_stream)
            };

            // Spawn audit task
            tokio::spawn(async move {
                let final_resp = agg_fut.await;
                audit.set_response(Arc::new(final_resp));
                audit.emit();
            });

            Box::pin(stream)
        } else {
            transformed_stream
        };

Biswa Panda's avatar
Biswa Panda committed
1056
        // prepend the annotations to the response stream
1057
        let stream = annotations_stream.chain(final_stream);
Biswa Panda's avatar
Biswa Panda committed
1058

Ryan Olson's avatar
Ryan Olson committed
1059
        // return the response stream - single boxing at the end
Biswa Panda's avatar
Biswa Panda committed
1060
1061
1062
1063
1064
1065
1066
        Ok(ResponseStream::new(Box::pin(stream), context))
    }
}

#[async_trait]
impl
    Operator<
1067
        SingleIn<NvCreateCompletionRequest>,
1068
        ManyOut<Annotated<NvCreateCompletionResponse>>,
1069
        SingleIn<PreprocessedRequest>,
Biswa Panda's avatar
Biswa Panda committed
1070
1071
1072
1073
1074
        ManyOut<Annotated<BackendOutput>>,
    > for OpenAIPreprocessor
{
    async fn generate(
        &self,
1075
        request: SingleIn<NvCreateCompletionRequest>,
Biswa Panda's avatar
Biswa Panda committed
1076
        next: Arc<
1077
            dyn AsyncEngine<SingleIn<PreprocessedRequest>, ManyOut<Annotated<BackendOutput>>, Error>,
Biswa Panda's avatar
Biswa Panda committed
1078
        >,
1079
    ) -> Result<ManyOut<Annotated<NvCreateCompletionResponse>>, Error> {
Biswa Panda's avatar
Biswa Panda committed
1080
        // unpack the request
1081
1082
        let (mut request, context) = request.into_parts();

1083
1084
1085
1086
1087
1088
1089
1090
        // Preserve original streaming flag
        let original_stream_flag = request.inner.stream.unwrap_or(false);

        // For non-streaming requests (stream=false), enable usage by default
        // This ensures compliance with OpenAI API spec where non-streaming responses
        // always include usage statistics
        request.enable_usage_for_nonstreaming(original_stream_flag);

1091
        request.inner.stream = Some(true);
Biswa Panda's avatar
Biswa Panda committed
1092
1093

        // create a response generator
1094
        let response_generator = request.response_generator(context.id().to_string());
Biswa Panda's avatar
Biswa Panda committed
1095
1096
        let mut response_generator = Box::new(response_generator);
        // convert the chat completion request to a common completion request
1097
1098
        let mut builder = self.builder(&request)?;
        let annotations = self.gather_tokens(&request, &mut builder, None)?;
1099
        self.gather_multi_modal_data(&request, &mut builder).await?;
1100

1101
1102
1103
1104
        let mut common_request = builder.build()?;

        // Attach the timing tracker to the request so downstream components can record metrics
        common_request.tracker = response_generator.tracker();
Biswa Panda's avatar
Biswa Panda committed
1105
1106

        // update isl
1107
        response_generator.update_isl(common_request.token_ids.len() as u32);
Biswa Panda's avatar
Biswa Panda committed
1108
1109
1110
1111
1112

        // repack the common completion request
        let common_request = context.map(|_| common_request);

        // create a stream of annotations this will be prepend to the response stream
1113
        let annotations: Vec<Annotated<NvCreateCompletionResponse>> = annotations
Biswa Panda's avatar
Biswa Panda committed
1114
1115
1116
1117
1118
1119
1120
1121
            .into_iter()
            .flat_map(|(k, v)| Annotated::from_annotation(k, &v))
            .collect();
        let annotations_stream = stream::iter(annotations);

        // forward the common completion request to the next operator
        let response_stream = next.generate(common_request).await?;

Ryan Olson's avatar
Ryan Olson committed
1122
1123
1124
        // Extract context once
        let context = response_stream.context();

Biswa Panda's avatar
Biswa Panda committed
1125
        // transform the postprocessor stream
Ryan Olson's avatar
Ryan Olson committed
1126
1127
1128
1129
1130
        let stream = Self::transform_postprocessor_stream(
            response_stream,
            response_generator,
            context.clone(),
        );
Biswa Panda's avatar
Biswa Panda committed
1131
1132
1133
1134
1135
1136
1137
1138

        // prepend the annotations to the response stream
        let stream = annotations_stream.chain(stream);

        // return the response stream
        Ok(ResponseStream::new(Box::pin(stream), context))
    }
}
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153

#[async_trait]
impl
    Operator<
        SingleIn<NvCreateEmbeddingRequest>,
        ManyOut<Annotated<NvCreateEmbeddingResponse>>,
        SingleIn<PreprocessedEmbeddingRequest>,
        ManyOut<Annotated<EmbeddingsEngineOutput>>,
    > for OpenAIPreprocessor
{
    async fn generate(
        &self,
        request: SingleIn<NvCreateEmbeddingRequest>,
        next: Arc<
            dyn AsyncEngine<
1154
1155
1156
1157
                    SingleIn<PreprocessedEmbeddingRequest>,
                    ManyOut<Annotated<EmbeddingsEngineOutput>>,
                    Error,
                >,
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
        >,
    ) -> Result<ManyOut<Annotated<NvCreateEmbeddingResponse>>, Error> {
        // Unpack request
        let (request, context) = request.into_parts();

        // Preprocess the embedding request
        let (preprocessed_request, annotations) =
            self.preprocess_embedding_request(&request).await?;

        // Forward to next stage
        let preprocessed_request = context.map(|_| preprocessed_request);
        let response_stream = next.generate(preprocessed_request).await?;

Ryan Olson's avatar
Ryan Olson committed
1171
1172
1173
        // Extract context once
        let context = response_stream.context();

1174
1175
1176
1177
1178
1179
1180
1181
1182
1183
1184
1185
1186
1187
1188
        // Transform response stream back to OpenAI format
        let stream = Self::transform_embedding_postprocessor_stream(response_stream, request);

        // Prepend annotations
        let annotations_stream = stream::iter(
            annotations
                .into_iter()
                .flat_map(|(k, v)| Annotated::from_annotation(k, &v))
                .collect::<Vec<_>>(),
        );

        let combined_stream = annotations_stream.chain(stream);
        Ok(ResponseStream::new(Box::pin(combined_stream), context))
    }
}
Ryan Olson's avatar
Ryan Olson committed
1189
1190

// Note: tests for jailing and parser detection live in `lib/llm/tests/test_jail.rs`