test_trtllm.py 12.9 KB
Newer Older
1
2
3
4
5
6
7
8
9
10
11
12
# SPDX-FileCopyrightText: Copyright (c) 2025 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
# SPDX-License-Identifier: Apache-2.0

import logging
import os
import shutil
import time

import pytest

from tests.fault_tolerance.cancellation.utils import (
    DynamoFrontendProcess,
13
14
15
    poll_for_pattern,
    read_streaming_responses,
    send_cancellable_request,
16
17
18
19
20
21
22
23
24
25
26
27
)
from tests.utils.constants import FAULT_TOLERANCE_MODEL_NAME
from tests.utils.engine_process import FRONTEND_PORT
from tests.utils.managed_process import ManagedProcess
from tests.utils.payloads import check_health_generate, check_models_api

logger = logging.getLogger(__name__)


class DynamoWorkerProcess(ManagedProcess):
    """Process manager for Dynamo worker with TensorRT-LLM backend"""

28
    def __init__(self, request, mode: str = "prefill_and_decode"):
29
30
31
32
33
34
35
        """
        Initialize TensorRT-LLM worker process.

        Args:
            request: pytest request object
            mode: One of "prefill_and_decode", "prefill", "decode"
        """
36
37
38
        # Prefill workers require migration_limit=0 (no KV cache migration support)
        migration_limit = "0" if mode == "prefill" else "3"

39
40
41
42
43
44
45
46
47
48
49
50
51
        command = [
            "python3",
            "-m",
            "dynamo.trtllm",
            "--model",
            FAULT_TOLERANCE_MODEL_NAME,
            "--disaggregation-mode",
            mode,
            "--free-gpu-memory-fraction",
            "0.45",
            "--max-seq-len",
            "8192",
            "--migration-limit",
52
            migration_limit,
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
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
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
        ]
        if mode != "prefill_and_decode":
            with open("test_request_cancellation_trtllm_config.yaml", "w") as f:
                f.write("cache_transceiver_config:\n  backend: DEFAULT\n")
                f.write("disable_overlap_scheduler: true\n")
            command += [
                "--extra-engine-args",
                "test_request_cancellation_trtllm_config.yaml",
            ]

        health_check_urls = [
            (f"http://localhost:{FRONTEND_PORT}/v1/models", check_models_api),
            (f"http://localhost:{FRONTEND_PORT}/health", check_health_generate),
        ]

        # Set port based on worker type
        if mode == "prefill":
            port = "8082"
            health_check_urls = [(f"http://localhost:{port}/health", self.is_ready)]
        elif mode == "decode":
            port = "8081"
            health_check_urls = [(f"http://localhost:{port}/health", self.is_ready)]
        else:  # prefill_and_decode
            port = "8081"

        # Set debug logging environment
        env = os.environ.copy()
        env["DYN_LOG"] = "debug"
        env["DYN_SYSTEM_USE_ENDPOINT_HEALTH_STATUS"] = '["generate"]'
        env["DYN_SYSTEM_PORT"] = port

        # Set log directory based on worker type
        log_dir = f"{request.node.name}_{mode}_worker"

        # Clean up any existing log directory from previous runs
        try:
            shutil.rmtree(log_dir)
            logger.info(f"Cleaned up existing log directory: {log_dir}")
        except FileNotFoundError:
            # Directory doesn't exist, which is fine
            pass

        super().__init__(
            command=command,
            env=env,
            health_check_urls=health_check_urls,
            timeout=300,
            display_output=True,
            terminate_existing=False,
            log_dir=log_dir,
        )

        self.mode = mode

    def get_pid(self):
        """Get the PID of the worker process"""
        return self.proc.pid if self.proc else None

    def is_ready(self, response) -> bool:
        """Check the health of the worker process"""
        try:
            data = response.json()
            if data.get("status") == "ready":
                logger.info(f"{self.mode.capitalize()} worker status is ready")
                return True
            logger.warning(
                f"{self.mode.capitalize()} worker status is not ready: {data.get('status')}"
            )
        except ValueError:
            logger.warning(
                f"{self.mode.capitalize()} worker health response is not valid JSON"
            )
        return False


@pytest.mark.trtllm_marker
@pytest.mark.gpu_1
@pytest.mark.e2e
@pytest.mark.model(FAULT_TOLERANCE_MODEL_NAME)
def test_request_cancellation_trtllm_aggregated(
    request, runtime_services, predownload_models
):
    """
    End-to-end test for request cancellation functionality in aggregated mode.

    This test verifies that when a request is cancelled by the client,
    the system properly handles the cancellation and cleans up resources
    on the worker side in aggregated (prefill_and_decode) mode.
    """

    # Step 1: Start the frontend
    with DynamoFrontendProcess(request) as frontend:
        logger.info("Frontend started successfully")

        # Step 2: Start an aggregated worker
148
        with DynamoWorkerProcess(request, mode="prefill_and_decode") as worker:
149
150
151
152
153
            logger.info(f"Aggregated Worker PID: {worker.get_pid()}")

            # TODO: Why wait after worker ready fixes frontend 404 / 500 flakiness?
            time.sleep(2)

154
            # Step 3: Test request cancellation with polling approach
155
156
157
158
159
160
161
162
163
164
165
            frontend_log_offset, worker_log_offset = 0, 0

            test_scenarios = [
                ("completion", "Completion request cancellation"),
                ("chat_completion", "Chat completion request cancellation"),
                (
                    "chat_completion_stream",
                    "Chat completion stream request cancellation",
                ),
            ]

166
            for request_type, description in test_scenarios:
167
168
                logger.info(f"Testing {description.lower()}...")

169
170
171
172
173
174
175
176
177
                # Send the request (non-blocking)
                cancellable_req = send_cancellable_request(request_type)

                # Poll for "New Request ID" pattern
                request_id, worker_log_offset = poll_for_pattern(
                    process=worker,
                    pattern="New Request ID: ",
                    log_offset=worker_log_offset,
                    match_type="contains",
178
                )
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199

                # For streaming, read 5 responses before cancelling
                if request_type == "chat_completion_stream":
                    read_streaming_responses(cancellable_req, expected_count=5)

                # Now cancel the request
                cancellable_req.cancel()
                logger.info(f"Cancelled request ID: {request_id}")

                # Poll for "Aborted Request ID" with matching ID
                _, worker_log_offset = poll_for_pattern(
                    process=worker,
                    pattern=f"Aborted Request ID: {request_id}",
                    log_offset=worker_log_offset,
                )

                # Verify frontend log has kill message
                _, frontend_log_offset = poll_for_pattern(
                    process=frontend,
                    pattern="issued control message Kill to sender",
                    log_offset=frontend_log_offset,
200
201
202
203
204
205
206
207
208
                )

                logger.info(f"{description} detected successfully")


@pytest.mark.trtllm_marker
@pytest.mark.gpu_1
@pytest.mark.e2e
@pytest.mark.model(FAULT_TOLERANCE_MODEL_NAME)
209
def test_request_cancellation_trtllm_disagg_decode_cancel(
210
211
212
    request, runtime_services, predownload_models
):
    """
213
    End-to-end test for request cancellation during decode phase with unified frontend.
214
215
216

    This test verifies that when a request is cancelled by the client during the decode phase,
    the system properly handles the cancellation and cleans up resources
217
    on the decode worker side in a disaggregated setup.
218
219
220
221
222
223
224
    """

    # Step 1: Start the frontend
    with DynamoFrontendProcess(request) as frontend:
        logger.info("Frontend started successfully")

        # Step 2: Start the prefill worker
225
        with DynamoWorkerProcess(request, mode="prefill") as prefill_worker:
226
227
228
            logger.info(f"Prefill Worker PID: {prefill_worker.get_pid()}")

            # Step 3: Start the decode worker
229
            with DynamoWorkerProcess(request, mode="decode") as decode_worker:
230
231
232
233
234
                logger.info(f"Decode Worker PID: {decode_worker.get_pid()}")

                # TODO: Why wait after worker ready fixes frontend 404 / 500 flakiness?
                time.sleep(2)

235
                # Step 4: Test request cancellation for streaming scenario
236
                logger.info(
237
                    "Testing chat completion stream request cancellation in decode worker (decode phase)..."
238
239
                )

240
241
242
                # Send streaming request (non-blocking)
                cancellable_req = send_cancellable_request("chat_completion_stream")

243
244
245
246
                # Poll for "Prefill Request ID" pattern in prefill worker (frontend routes here first)
                request_id, prefill_log_offset = poll_for_pattern(
                    process=prefill_worker,
                    pattern="Prefill Request ID: ",
247
248
249
                    match_type="contains",
                )

250
251
252
253
                # Verify same request ID reached decode worker (after prefill completes)
                _, decode_log_offset = poll_for_pattern(
                    process=decode_worker,
                    pattern=f"Decode Request ID: {request_id}",
254
                )
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277

                # Read 5 streaming responses (decode phase)
                read_streaming_responses(cancellable_req, expected_count=5)

                # Now cancel the request
                cancellable_req.cancel()
                logger.info(f"Cancelled request ID: {request_id}")

                # Poll for "Aborted Request ID" in decode worker
                _, decode_log_offset = poll_for_pattern(
                    process=decode_worker,
                    pattern=f"Aborted Request ID: {request_id}",
                    log_offset=decode_log_offset,
                )

                # Verify frontend log has kill message
                _, frontend_log_offset = poll_for_pattern(
                    process=frontend,
                    pattern="issued control message Kill to sender",
                )

                logger.info(
                    "Chat completion stream cancellation in decode phase detected successfully"
278
279
280
281
282
283
284
                )


@pytest.mark.trtllm_marker
@pytest.mark.gpu_1
@pytest.mark.e2e
@pytest.mark.model(FAULT_TOLERANCE_MODEL_NAME)
285
def test_request_cancellation_trtllm_disagg_prefill_cancel(
286
287
288
    request, runtime_services, predownload_models
):
    """
289
    End-to-end test for request cancellation during prefill phase with unified frontend.
290

291
292
293
    This test verifies that when a request is cancelled by the client during the prefill phase,
    the system properly handles the cancellation and cleans up resources on the prefill worker.
    Since the request is cancelled before prefill completes, the decode worker never receives it.
294
295
296
297
298
299
300
    """

    # Step 1: Start the frontend
    with DynamoFrontendProcess(request) as frontend:
        logger.info("Frontend started successfully")

        # Step 2: Start the prefill worker
301
        with DynamoWorkerProcess(request, mode="prefill") as prefill_worker:
302
303
304
            logger.info(f"Prefill Worker PID: {prefill_worker.get_pid()}")

            # Step 3: Start the decode worker
305
            with DynamoWorkerProcess(request, mode="decode") as decode_worker:
306
307
308
309
310
311
312
313
314
315
                logger.info(f"Decode Worker PID: {decode_worker.get_pid()}")

                # TODO: Why wait after worker ready fixes frontend 404 / 500 flakiness?
                time.sleep(2)

                # Step 4: Test request cancellation during prefill phase
                logger.info(
                    "Testing completion request cancellation during prefill phase..."
                )

316
317
318
319
320
                # Send request with long prompt (non-blocking)
                cancellable_req = send_cancellable_request(
                    "completion", use_long_prompt=True
                )

321
                # Poll for "Prefill Request ID" pattern in prefill worker (frontend routes here first)
322
323
                request_id, prefill_log_offset = poll_for_pattern(
                    process=prefill_worker,
324
                    pattern="Prefill Request ID: ",
325
326
327
                    match_type="contains",
                )

328
                # Cancel during prefill phase
329
                cancellable_req.cancel()
330
                logger.info(f"Cancelled request ID: {request_id} during prefill")
331

332
                # Poll for "Aborted Request ID" in prefill worker (where cancellation happens)
333
334
335
336
337
338
339
340
341
342
                _, prefill_log_offset = poll_for_pattern(
                    process=prefill_worker,
                    pattern=f"Aborted Request ID: {request_id}",
                    log_offset=prefill_log_offset,
                )

                # Verify frontend log has kill message
                _, frontend_log_offset = poll_for_pattern(
                    process=frontend,
                    pattern="issued control message Kill to sender",
343
                )
344
345
346

                logger.info(
                    "Completion request cancellation during prefill phase detected successfully"
347
                )