common.rs 10.8 KB
Newer Older
1
// SPDX-FileCopyrightText: Copyright (c) 2024-2026 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
2
3
// SPDX-License-Identifier: Apache-2.0

4
5
use std::pin::Pin;

6
use crate::{
7
    backend::{Backend, ExecutionContext},
8
    discovery::{KvWorkerMonitor, ModelManager, ModelWatcher},
9
    engines::StreamingEngineAdapter,
10
    entrypoint::{EngineConfig, RouterConfig},
11
    http::service::metrics::Metrics,
12
    kv_router::{KvPushRouter, KvRouter, PrefillRouter},
13
    migration::Migration,
14
    model_card::ModelDeploymentCard,
15
    preprocessor::{OpenAIPreprocessor, prompt::PromptFormatter},
16
    protocols::common::llm_backend::{BackendOutput, LLMEngineOutput, PreprocessedRequest},
17
    request_template::RequestTemplate,
18
    types::{
19
        Annotated,
20
21
22
23
24
25
        openai::chat_completions::{
            NvCreateChatCompletionRequest, NvCreateChatCompletionStreamResponse,
            OpenAIChatCompletionsStreamingEngine,
        },
    },
};
26

27
use dynamo_runtime::{
28
    DistributedRuntime,
29
    component::Client,
30
    engine::{AsyncEngineStream, Data},
31
32
33
34
    pipeline::{
        Context, ManyOut, Operator, PushRouter, RouterMode, SegmentSource, ServiceBackend,
        ServiceEngine, ServiceFrontend, SingleIn, Source,
    },
35
36
37
};
use std::sync::Arc;

38
39
40
41
pub struct PreparedEngine {
    pub service_name: String,
    pub engine: OpenAIChatCompletionsStreamingEngine,
    pub inspect_template: bool,
42
43
44
45
46
47
48
49
50
51
52
53
    pub card: Option<ModelDeploymentCard>,
    pub request_template: Option<RequestTemplate>,
}

impl PreparedEngine {
    pub fn has_tokenizer(&self) -> bool {
        if let Some(card) = self.card.as_ref() {
            card.has_tokenizer()
        } else {
            false
        }
    }
54
55
}

56
/// Turns an EngineConfig into an OpenAI chat-completions and completions supported StreamingEngine.
57
pub async fn prepare_engine(
58
    distributed_runtime: DistributedRuntime,
59
    engine_config: EngineConfig,
60
) -> anyhow::Result<PreparedEngine> {
61
    match engine_config {
62
63
64
        EngineConfig::Dynamic {
            model: local_model, ..
        } => {
65
            let model_manager = Arc::new(ModelManager::new());
66
67
            // Create metrics for migration tracking (not exposed via /metrics in Dynamic engine mode)
            let metrics = Arc::new(Metrics::new());
68
            let watch_obj = Arc::new(ModelWatcher::new(
69
                distributed_runtime.clone(),
70
                model_manager.clone(),
71
                RouterConfig::default(),
72
                None,
73
                metrics,
74
            ));
75
76
77
78
79
80
81
            let discovery = distributed_runtime.discovery();
            let discovery_stream = discovery
                .list_and_watch(
                    dynamo_runtime::discovery::DiscoveryQuery::AllModels,
                    Some(distributed_runtime.primary_token().clone()),
                )
                .await?;
82
            let inner_watch_obj = watch_obj.clone();
83
            let _watcher_task = tokio::spawn(async move {
84
                inner_watch_obj.watch(discovery_stream, None).await;
85
            });
86
            tracing::info!("Waiting for remote model..");
87

88
89
90
91
92
            // TODO: We use the first model to appear, usually we have only one
            // We should add slash commands to text input `/model <name>` to choose,
            // '/models` to list, and notifications when models are added / removed.

            let model_service_name = watch_obj.wait_for_chat_model().await;
93
            tracing::info!("Connected to {model_service_name}");
94
            let engine = model_manager.get_chat_completions_engine(&model_service_name)?;
95
            Ok(PreparedEngine {
96
                service_name: model_service_name,
97
98
                engine,
                inspect_template: false,
99
100
                card: None,
                request_template: local_model.request_template(),
101
            })
102
        }
103
        EngineConfig::InProcessText { engine, model, .. } => {
104
            let service_name = model.service_name().to_string();
105
            tracing::debug!("Model: {service_name} with engine pre-processing");
106
            let engine = Arc::new(StreamingEngineAdapter::new(engine));
107
108
109
110
            Ok(PreparedEngine {
                service_name,
                engine,
                inspect_template: false,
111
112
                request_template: model.request_template(),
                card: Some(model.into_card()),
113
            })
114
        }
115
        EngineConfig::InProcessTokens {
116
            engine: inner_engine,
117
            model,
118
            ..
119
        } => {
120
121
122
            let pipeline = build_pipeline::<
                NvCreateChatCompletionRequest,
                NvCreateChatCompletionStreamResponse,
123
            >(model.card(), inner_engine, model.card().tokenizer_hf()?)
124
            .await?;
125

126
            let service_name = model.service_name().to_string();
127
128
129
130
131
            tracing::debug!("Model: {service_name} with Dynamo pre-processing");
            Ok(PreparedEngine {
                service_name,
                engine: pipeline,
                inspect_template: true,
132
133
                request_template: model.request_template(),
                card: Some(model.into_card()),
134
            })
135
136
137
        }
    }
}
138
139
140
141

pub async fn build_pipeline<Req, Resp>(
    card: &ModelDeploymentCard,
    engine: ExecutionContext,
142
    hf_tokenizer: tokenizers::Tokenizer,
143
144
145
146
147
) -> anyhow::Result<Arc<ServiceFrontend<SingleIn<Req>, ManyOut<Annotated<Resp>>>>>
where
    Req: Data,
    Resp: Data,
    OpenAIPreprocessor: Operator<
148
149
150
151
152
            Context<Req>,
            Pin<Box<dyn AsyncEngineStream<Annotated<Resp>>>>,
            Context<PreprocessedRequest>,
            Pin<Box<dyn AsyncEngineStream<Annotated<BackendOutput>>>>,
        >,
153
154
{
    let frontend = ServiceFrontend::<SingleIn<Req>, ManyOut<Annotated<Resp>>>::new();
155
156
157
158
159
    let PromptFormatter::OAI(formatter) = PromptFormatter::from_mdc(card)?;
    let preprocessor =
        OpenAIPreprocessor::new_with_parts(card.clone(), formatter, hf_tokenizer.clone())?
            .into_operator();
    let backend = Backend::from_tokenizer(hf_tokenizer).into_operator();
160
161
162
163
164
165
166
167
168
169
170
    let engine = ServiceBackend::from_engine(engine);

    Ok(frontend
        .link(preprocessor.forward_edge())?
        .link(backend.forward_edge())?
        .link(engine)?
        .link(backend.backward_edge())?
        .link(preprocessor.backward_edge())?
        .link(frontend)?)
}

171
#[allow(clippy::too_many_arguments)]
172
173
174
pub async fn build_routed_pipeline<Req, Resp>(
    card: &ModelDeploymentCard,
    client: &Client,
175
    model_manager: Arc<crate::discovery::ModelManager>,
176
    router_mode: RouterMode,
177
    worker_monitor: Option<KvWorkerMonitor>,
178
    chooser: Option<Arc<KvRouter>>,
179
    hf_tokenizer: tokenizers::Tokenizer,
180
    prefill_chooser: Option<Arc<PrefillRouter>>,
181
    enforce_disagg: bool,
182
    metrics: Arc<Metrics>,
183
) -> anyhow::Result<ServiceEngine<SingleIn<Req>, ManyOut<Annotated<Resp>>>>
184
185
186
187
188
189
190
191
192
193
where
    Req: Data,
    Resp: Data,
    OpenAIPreprocessor: Operator<
            Context<Req>,
            Pin<Box<dyn AsyncEngineStream<Annotated<Resp>>>>,
            Context<PreprocessedRequest>,
            Pin<Box<dyn AsyncEngineStream<Annotated<BackendOutput>>>>,
        >,
{
194
195
196
    let PromptFormatter::OAI(formatter) = PromptFormatter::from_mdc(card)?;
    let preprocessor =
        OpenAIPreprocessor::new_with_parts(card.clone(), formatter, hf_tokenizer.clone())?;
197
198
199
    build_routed_pipeline_with_preprocessor(
        card,
        client,
200
        model_manager,
201
        router_mode,
202
        worker_monitor,
203
204
        chooser,
        preprocessor,
205
        hf_tokenizer,
206
        prefill_chooser,
207
        enforce_disagg,
208
        metrics,
209
210
211
212
    )
    .await
}

213
#[allow(clippy::too_many_arguments)]
214
215
216
pub async fn build_routed_pipeline_with_preprocessor<Req, Resp>(
    card: &ModelDeploymentCard,
    client: &Client,
217
    model_manager: Arc<crate::discovery::ModelManager>,
218
    router_mode: RouterMode,
219
    worker_monitor: Option<KvWorkerMonitor>,
220
221
    chooser: Option<Arc<KvRouter>>,
    preprocessor: Arc<OpenAIPreprocessor>,
222
    hf_tokenizer: tokenizers::Tokenizer,
223
    prefill_chooser: Option<Arc<PrefillRouter>>,
224
    enforce_disagg: bool,
225
    metrics: Arc<Metrics>,
226
) -> anyhow::Result<ServiceEngine<SingleIn<Req>, ManyOut<Annotated<Resp>>>>
227
228
229
230
where
    Req: Data,
    Resp: Data,
    OpenAIPreprocessor: Operator<
231
232
233
234
235
            Context<Req>,
            Pin<Box<dyn AsyncEngineStream<Annotated<Resp>>>>,
            Context<PreprocessedRequest>,
            Pin<Box<dyn AsyncEngineStream<Annotated<BackendOutput>>>>,
        >,
236
237
{
    let frontend = SegmentSource::<SingleIn<Req>, ManyOut<Annotated<Resp>>>::new();
238
    let preprocessor_op = preprocessor.into_operator();
239
    let backend = Backend::from_tokenizer(hf_tokenizer).into_operator();
240
    let migration = Migration::from_mdc(card, metrics).into_operator();
241

242
243
244
245
246
247
248
249
250
251
    // For KV routing, use the client from the chooser to ensure shared state
    let router_client = if router_mode == RouterMode::KV {
        let Some(ref chooser) = chooser else {
            anyhow::bail!("RouterMode::KV requires KVRouter to not be null");
        };
        chooser.client().clone()
    } else {
        client.clone()
    };

252
    // Get threshold value and wrap monitor for PushRouter
253
254
255
256
    // Note: PushRouter uses active_decode_blocks_threshold for its internal logic
    let threshold_value = worker_monitor
        .as_ref()
        .map(|m| m.active_decode_blocks_threshold());
257
258
    let monitor_arc =
        worker_monitor.map(|m| Arc::new(m) as Arc<dyn dynamo_runtime::pipeline::WorkerLoadMonitor>);
259

260
261
    let router =
        PushRouter::<PreprocessedRequest, Annotated<LLMEngineOutput>>::from_client_with_threshold(
262
            router_client,
263
            router_mode,
264
265
            threshold_value,
            monitor_arc,
266
267
        )
        .await?;
268

269
270
271
272
273
274
275
276
277
278
279
280
281
    let service_backend = match router_mode {
        RouterMode::Random | RouterMode::RoundRobin | RouterMode::Direct(_) => {
            ServiceBackend::from_engine(Arc::new(router))
        }
        RouterMode::KV => {
            let Some(chooser) = chooser else {
                anyhow::bail!("RouterMode::KV requires KVRouter to not be null");
            };
            let kv_push_router = KvPushRouter::new(router, chooser);
            ServiceBackend::from_engine(Arc::new(kv_push_router))
        }
    };

282
    // Use the provided prefill chooser, or create a disabled one if not provided
283
284
    let prefill_chooser = prefill_chooser
        .unwrap_or_else(|| PrefillRouter::disabled(model_manager, router_mode, enforce_disagg));
285
286
287
    let prefill_op = prefill_chooser.into_operator();

    // Link with prefill chooser including backward edge for response flow
288
    let engine = frontend
289
        .link(preprocessor_op.forward_edge())?
290
        .link(migration.forward_edge())?
291
        .link(backend.forward_edge())?
292
        .link(prefill_op.forward_edge())?
293
        .link(service_backend)?
294
        .link(prefill_op.backward_edge())?
295
        .link(backend.backward_edge())?
296
        .link(migration.backward_edge())?
297
        .link(preprocessor_op.backward_edge())?
298
        .link(frontend)?;
299

300
301
    Ok(engine)
}