Files
sglang/test
leavelet 864b1c808e L3 3.2: async disk->L2 reload + request hold (Model B), zero new collectives, EAGLE-correct
On a radix miss, reload the evicted-but-L3-durable suffix from disk into L2 + insert a fresh
radix node, holding the triggering request until then (mirrors the storage-prefetch hold, which
is disabled under CP). The reloaded prefix re-enters the radix as a normal L2 node, so the
existing load_back serves L2->L1 -- no new device path.

Design (docs_internal/cp_hicache_l3_phase3_impl_design.md §9, refined for minimal sync):
- ENTRY (scheduler _prefetch_kvcache, enable_cp_l3 branch): mark a miss-with-suffix as a reload
  candidate (rank-uniform: requests are broadcast). cp_l3_reload_lookup computes the suffix's
  full-page content hashes -- the SAME SHA chain spill wrote (compute_node_hash_values).
- RESERVE + ADMIT fold into the existing per-tick _drain_l3_control_queues MINs -- ZERO new
  collectives: the candidates' per-rank exists_prefix counts ride the qsize MIN vector -> a
  rank-uniform agreed count C (this reconciles the async-LMDB read-skew); reload-ack oks ride the
  durable ok-AND. Reserve is then collective-free (deterministic evict-to-fit mirroring
  _reserve_write_cp_shared_l2_evict_to_fit); the request waits non-blocking in waiting_queue
  (check_cp_l3_reload_progress skip) and is admitted + re-matched the SAME tick the reload lands
  (check_hicache_events runs before batch formation). CP-aware insert only on a still-clean attach
  (else abort+recompute). Capped (cp_l3_reload_max_inflight) + content-key deduped (piggyback).

EAGLE/bigram (opus-studied, PROVABLY correct -- not deferred): the radix key is bigram-converted
over the whole request, and convert_to_bigram_key(fill_ids[M:]) == bigrams(fill_ids)[M:] exactly
(the boundary bigram belongs to the matched prefix), so the bigram-converted suffix hashes
reproduce node.hash_value. Verified vs source + a new slice-identity regression test.

Opus review (FIX-THEN-SHIP, no CRITICAL; the 4 crash surfaces -- MIN-vector shape, read-skew,
attach-anchor, placement-digest -- traced clean) + independently re-verified; fixes folded:
- M1: cp_l3_release_request clears reload state on request abort/timeout/preempt (no leak).
- H1: rank-uniform per-op TTL bound releases a held request if its reload op never acks (the
  default SGLANG_REQ_WAITING_TIMEOUT is off); the reservation frees safely at the (late) ack.
- L1: fail-soft anchor guard at insert (re-derive the first suffix hash from lhn's live hash).
- empty-waiters reload aborts (frees L2) instead of inserting an unrequested node.

Imports hoisted to top-level (get_hash_str -- hicache_storage is a leaf module, no cycle;
convert_to_bigram_key already top-level), no inline imports. py_compile clean; 54 L3 unit tests
green. Reload triggering (submit_reload/exists_prefix/free_object) now wired (was write-only).

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-23 00:09:38 +00:00
..

Run Unit Tests

SGLang uses the built-in library unittest as the testing framework.

Test Backend Runtime

cd sglang/test/srt

# Run a single file
python3 test_srt_endpoint.py

# Run a single test
python3 test_srt_endpoint.py TestSRTEndpoint.test_simple_decode

# Run a suite with multiple files
python3 run_suite.py --suite per-commit

Test Frontend Language

cd sglang/test/lang

# Run a single file
python3 test_choices.py

Adding or Updating Tests in CI

  • Create new test files under test/srt or test/lang depending on the type of test.
  • For nightly tests, place them in test/srt/nightly/. Use the NightlyBenchmarkRunner helper class in nightly_utils.py for performance benchmarking tests.
  • Ensure they are referenced in the respective run_suite.py (e.g., test/srt/run_suite.py) so they are picked up in CI. For most small test cases, they can be added to the per-commit-1-gpu suite. Sort the test cases alphabetically by name.
  • Ensure you added unittest.main() for unittest and sys.exit(pytest.main([__file__])) for pytest in the scripts. The CI run them via python3 test_file.py.
  • The CI will run some suites such as per-commit-1-gpu, per-commit-2-gpu, and nightly-1-gpu automatically. If you need special setup or custom test groups, you may modify the workflows in .github/workflows/.

CI Registry System

Tests in test/registered/ use a registry-based CI system for flexible backend/schedule configuration.

Registration Functions

from sglang.test.ci.ci_register import (
    register_cuda_ci,
    register_amd_ci,
    register_cpu_ci,
    register_npu_ci,
)

# Per-commit test (small 1-gpu, runs on 5090)
register_cuda_ci(est_time=80, suite="stage-b-test-1-gpu-small")

# Per-commit test (large 1-gpu, runs on H100)
register_cuda_ci(est_time=120, suite="stage-b-test-1-gpu-large")

# Per-commit test (2-gpu)
register_cuda_ci(est_time=200, suite="stage-b-test-2-gpu-large")

# Nightly-only test
register_cuda_ci(est_time=200, suite="nightly-1-gpu", nightly=True)

# Multi-backend test
register_cuda_ci(est_time=80, suite="stage-b-test-1-gpu-small")
register_amd_ci(est_time=120, suite="stage-a-test-1-gpu-small-amd")

# Temporarily disabled test
register_cuda_ci(est_time=80, suite="stage-b-test-1-gpu-small", disabled="flaky - see #12345")

Choosing Between 1-GPU Suites (5090 vs H100)

When adding 1-GPU tests, choose the appropriate suite based on hardware compatibility:

Suite Runner GPU When to Use
stage-a-test-1-gpu-small 1-gpu-5090 RTX 5090 (32GB, SM120) Stage A per-commit smoke on 5090 (CUDA)
stage-a-test-1-gpu-small-amd AMD CI runners ROCm Stage A per-commit smoke (AMD)
stage-b-test-1-gpu-small 1-gpu-5090 RTX 5090 (32GB, SM120) 5090-compatible tests (preferred)
stage-b-test-1-gpu-large 1-gpu-h100 H100 (80GB, SM90) Large models or 5090-incompatible tests

Use stage-b-test-1-gpu-small (5090) whenever possible - this is the preferred suite for most 1-GPU tests.

Use stage-b-test-1-gpu-large (H100) if ANY of these apply:

  1. Architecture incompatibility (SM120/Blackwell):

    • FA3 attention backend (requires SM≤90)
    • MLA with FA3 backend
    • FP8/MXFP4 quantization (not supported on SM120)
    • Certain Triton kernels (shared memory limits)
  2. Memory requirements:

    • Models >30B params or large MoE
    • Tests requiring >32GB VRAM
  3. Known 5090 failures:

    • Weight update/sync tests
    • Certain spec decoding tests

If a test cannot run on 5090 due to any of the above, use stage-b-test-1-gpu-large which runs on H100.

Available Suites

Per-Commit (CUDA):

  • Stage A: stage-a-test-1-gpu-small (5090), stage-a-test-2, stage-a-test-cpu
  • Stage B: stage-b-test-1-gpu-small (5090), stage-b-test-1-gpu-large (H100), stage-b-test-2-gpu-large
  • Stage C (4-GPU): stage-c-test-4-gpu-h100, stage-c-test-4-gpu-b200, stage-c-test-4-gpu-gb200, stage-c-test-deepep-4-gpu-h100
  • Stage C (8-GPU): stage-c-test-8-gpu-h20, stage-c-test-8-gpu-h200, stage-c-test-8-gpu-b200, stage-c-test-deepep-8-gpu-h200

Per-Commit (AMD):

  • stage-a-test-1-gpu-small-amd, stage-b-test-1-gpu-small-amd, stage-b-test-2-gpu-large-amd

Nightly:

  • nightly-1-gpu, nightly-2-gpu, nightly-4-gpu, nightly-8-gpu, etc.

Running Tests with run_suite.py

# Run per-commit tests
python test/run_suite.py --hw cuda --suite stage-b-test-1-gpu-small

# Run nightly tests
python test/run_suite.py --hw cuda --suite nightly-1-gpu --nightly

# With auto-partitioning (for parallel CI jobs)
python test/run_suite.py --hw cuda --suite stage-b-test-1-gpu-small \
    --auto-partition-id 0 --auto-partition-size 4

Writing Elegant Test Cases

  • Learn from existing examples in sglang/test/srt.
  • Reduce the test time by using smaller models and reusing the server for multiple test cases. Launching a server takes a lot of time.
  • Use as few GPUs as possible. Do not run long tests with 8-gpu runners.
  • If the test cases take too long, considering adding them to nightly tests instead of per-commit tests.
  • Keep each test function focused on a single scenario or piece of functionality.
  • Give tests descriptive names reflecting their purpose.
  • Use robust assertions (e.g., assert, unittest methods) to validate outcomes.
  • Clean up resources to avoid side effects and preserve test independence.
  • Reduce the test time by using smaller models and reusing the server for multiple test cases.

Adding New Models to Nightly CI

  • For text models: extend global model lists variables in test_utils.py, or add more model lists
  • For vlms: extend the MODEL_THRESHOLDS global dictionary in test/srt/nightly/test_vlms_mmmu_eval.py