Files
sglang/test/registered/embedding/test_input_embeds_chunked.py
2026-03-23 00:18:45 -07:00

189 lines
6.7 KiB
Python

"""Regression tests for input_embeds shape-mismatch bugs.
Covers two bugs with the same crash signature
(RuntimeError: shape mismatch in set_kv_buffer) but opposite polarity:
- Chunked prefill truncation (#20376): PrefillAdder truncates fill_ids and
extend_input_len on chunk overflow but not input_embeds, so the full array
flows through while out_cache_loc is sized for the truncated length.
Polarity: cache_k > loc.
- Retraction with output_ids (#14110): after retraction, fill_ids includes
accumulated output_ids but input_embeds only covers origin_input_ids.
Polarity: cache_k < loc.
"""
import unittest
import requests
import torch
from transformers import AutoModelForCausalLM, AutoTokenizer
from sglang.srt.environ import envs
from sglang.srt.utils import kill_process_tree
from sglang.test.ci.ci_register import register_cuda_ci
from sglang.test.test_utils import (
DEFAULT_SMALL_MODEL_NAME_FOR_TEST,
DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH,
DEFAULT_URL_FOR_TEST,
CustomTestCase,
popen_launch_server,
)
register_cuda_ci(est_time=45, suite="stage-b-test-1-gpu-small")
CHUNKED_PREFILL_SIZE = 256
# Shared reference model — loaded once per process, not per test class.
_MODEL = DEFAULT_SMALL_MODEL_NAME_FOR_TEST
_tokenizer = None
_ref_model = None
def _load_ref():
global _tokenizer, _ref_model
if _tokenizer is None:
_tokenizer = AutoTokenizer.from_pretrained(_MODEL)
_ref_model = AutoModelForCausalLM.from_pretrained(_MODEL)
def _embeds_for(text: str) -> list[list[float]]:
_load_ref()
ids = _tokenizer(text, return_tensors="pt")["input_ids"]
embeds = _ref_model.get_input_embeddings()(ids)
return embeds.squeeze(0).to(torch.float32).tolist()
def _generate(base_url, input_embeds, max_new_tokens, ignore_eos=False, timeout=120):
resp = requests.post(
f"{base_url}/generate",
json={
"input_embeds": input_embeds,
"sampling_params": {
"temperature": 0,
"max_new_tokens": max_new_tokens,
"ignore_eos": ignore_eos,
},
},
timeout=timeout,
)
return resp
class TestInputEmbedsChunkedAndRetract(CustomTestCase):
"""Single server launch covering both bugs.
Both tests require --disable-radix-cache (for input_embeds). The chunked
prefill test needs a small --chunked-prefill-size. The retraction test
uses SGLANG_TEST_RETRACT to deterministically force retraction every few
scheduler iterations regardless of KV pressure.
"""
@classmethod
def setUpClass(cls):
cls.base_url = DEFAULT_URL_FOR_TEST
# SGLANG_TEST_RETRACT forces retraction periodically; this is
# deterministic and doesn't require guessing KV budgets.
with envs.SGLANG_TEST_RETRACT.override(True):
cls.process = popen_launch_server(
_MODEL,
cls.base_url,
timeout=DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH,
other_args=[
"--disable-radix-cache",
"--chunked-prefill-size",
str(CHUNKED_PREFILL_SIZE),
"--cuda-graph-max-bs",
"4",
],
)
@classmethod
def tearDownClass(cls):
kill_process_tree(cls.process.pid)
def _assert_server_alive(self):
self.assertIsNone(self.process.poll(), "server process crashed")
def test_chunked_prefill_truncation_and_continuation(self):
"""Regression test for #20376.
A single request longer than chunked_prefill_size deterministically
exercises both (a) first-chunk truncation and (b) chunk continuation,
without any concurrent-timing dependency. Pre-fix this crashes in
set_kv_buffer on both chunks.
"""
# ~80 tokens each repetition; 6 repetitions exceeds CHUNKED_PREFILL_SIZE
# comfortably. Token count is model-dependent so assert it.
text = "The quick brown fox jumps over the lazy dog. " * 40
embeds = _embeds_for(text)
self.assertGreater(
len(embeds),
CHUNKED_PREFILL_SIZE,
f"prompt must exceed chunked_prefill_size={CHUNKED_PREFILL_SIZE} "
f"to trigger chunking; got {len(embeds)} tokens",
)
resp = _generate(self.base_url, embeds, max_new_tokens=8)
self.assertEqual(resp.status_code, 200, resp.text[:300])
body = resp.json()
self.assertIn("text", body)
self.assertIsInstance(body["text"], str)
self._assert_server_alive()
def test_chunked_prefill_batch_truncation(self):
"""Regression test for #20376 — multi-request batch case.
A batch POST with total tokens > chunked_prefill_size goes through a
single ZMQ send, so all requests land in the same scheduler iteration
and the PrefillAdder is forced to truncate at least one. This matches
the original thundering-herd trigger without HTTP timing races.
"""
text = "The quick brown fox jumps over the lazy dog. " * 8
embeds = _embeds_for(text)
seq_len = len(embeds)
# Enough batched requests to overflow the chunk budget.
n = max(4, CHUNKED_PREFILL_SIZE // seq_len + 2)
self.assertGreater(n * seq_len, CHUNKED_PREFILL_SIZE)
resp = _generate(self.base_url, [embeds] * n, max_new_tokens=8)
self.assertEqual(resp.status_code, 200, resp.text[:300])
results = resp.json()
self.assertEqual(len(results), n)
for r in results:
self.assertIn("text", r)
self._assert_server_alive()
def test_retraction_with_output_ids(self):
"""Regression test for #14110.
SGLANG_TEST_RETRACT forces retraction every few scheduler iterations.
Combined with ignore_eos and a reasonable max_new_tokens, at least one
request is retracted mid-decode with non-empty output_ids, then
re-prefilled. Pre-#14110 this crashes (cache_k < loc) because fill_ids
includes output_ids but input_embeds does not.
"""
text = "The quick brown fox jumps over the lazy dog. " * 4
embeds = _embeds_for(text)
# Batch of requests with enough decode steps that SGLANG_TEST_RETRACT
# (interval=3 by default) fires mid-decode.
n = 4
resp = _generate(
self.base_url,
[embeds] * n,
max_new_tokens=32,
ignore_eos=True,
)
self.assertEqual(resp.status_code, 200, resp.text[:300])
results = resp.json()
self.assertEqual(len(results), n)
for r in results:
self.assertIn("text", r)
self._assert_server_alive()
if __name__ == "__main__":
unittest.main()