chore: vendor sglang v0.5.10 snapshot
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third_party/sglang/.claude/skills/sglang-bisect-ci-regression/SKILL.md
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third_party/sglang/.claude/skills/sglang-bisect-ci-regression/SKILL.md
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# SGLang Bisect CI Regression
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Investigate a consistently failing CI test to find the root cause - whether it's a code regression from a specific PR, a hardware/runner-specific issue, or an environment change. Optionally reproduce the failure on a remote GPU server.
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## Slash Command
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`/sglang-bisect-ci-regression <test_name_or_ci_url> [ssh_target] [docker_container]`
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## When to Use This Skill
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- A CI test is failing consistently on main (scheduled runs)
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- You need to find which PR introduced a regression
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- You suspect a runner-specific or GPU-specific issue
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- You want to reproduce a CI failure on a remote server
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## Arguments
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- **First argument (required)**: Test file name (e.g. `test_lora_tp.py`) or a GitHub Actions job URL
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- **Second argument (optional)**: SSH target for remote reproduction (e.g. `user@host`)
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- **Third argument (optional)**: Docker container name on the SSH target (e.g. `sglang_dev`)
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If SSH target and docker container are not provided, the skill will only perform the CI log analysis and bisection, without remote reproduction. **Ask the user** for these if reproduction is needed and they weren't provided.
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## Background: Scheduled CI Runs
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SGLang uses the `pr-test.yml` workflow with **scheduled runs** (cron-triggered) to periodically test the `main` branch. These runs are the primary data source for detecting regressions:
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- **Workflow**: `pr-test.yml` with `event: schedule`
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- **Branch**: `main`
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- **Dashboard**: https://github.com/sgl-project/sglang/actions/workflows/pr-test.yml?query=event%3Aschedule
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- **Frequency**: Runs multiple times daily, each pinned to the HEAD of `main` at trigger time
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- **Purpose**: Catches regressions that slip through PR-level CI (e.g., interaction bugs between merged PRs, hardware-specific issues)
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Always use these scheduled runs (not PR-triggered runs) when bisecting regressions on `main`. The `--event schedule` filter in `gh run list` ensures you only see these periodic main-branch runs.
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## Workflow
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### Phase 1: Extract the Failure Signature
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1. **Get the failing test details from CI logs.** If given a URL, fetch logs directly. If given a test name, find recent scheduled runs of `pr-test.yml` on `main` that failed:
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```bash
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# List recent scheduled runs targeting main (the primary source of truth for regressions)
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# These are cron-triggered runs visible at:
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# https://github.com/sgl-project/sglang/actions/workflows/pr-test.yml?query=event%3Aschedule
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gh run list --repo sgl-project/sglang --workflow="pr-test.yml" --event schedule --branch main --limit 20 --json databaseId,conclusion,createdAt,headSha
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# Find the job containing the test
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gh run view {RUN_ID} --repo sgl-project/sglang --json jobs --jq '.jobs[] | select(.conclusion == "failure") | {name, conclusion, databaseId}'
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# Get the failure details
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gh run view {RUN_ID} --repo sgl-project/sglang --job {JOB_ID} --log 2>&1 | grep -E -B 5 -A 30 "AssertionError|FAIL|Error|{TEST_NAME}"
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```
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2. **Record the failure signature:**
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- Exact error message and assertion
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- Affected test method name
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- Model/config involved
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- Numeric values (e.g., tolerance diffs, scores)
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- Whether the failure is deterministic (same values across runs)
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### Phase 2: Temporal Bisection
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3. **Find the boundary between passing and failing runs.** Walk through the scheduled run history (from the `pr-test.yml` schedule runs on `main`) to identify:
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- Last known PASSING run (sha + date)
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- First known FAILING run (sha + date)
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```bash
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# For each scheduled run, check the specific partition/job status
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gh run view {RUN_ID} --repo sgl-project/sglang --json jobs --jq '.jobs[] | select(.name == "{JOB_NAME}") | {conclusion, databaseId}'
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# Verify a specific test passed or failed in a run
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gh run view {RUN_ID} --repo sgl-project/sglang --job {JOB_ID} --log 2>&1 | grep -E "{TEST_NAME}|PASSED|FAILED|logprobs mismatch" | head -10
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```
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4. **List commits between the boundary:**
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```bash
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git log --oneline {LAST_PASS_SHA}..{FIRST_FAIL_SHA}
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```
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5. **Filter for relevant commits** that touch files related to the failing test (model layers, kernels, test utilities, etc.):
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```bash
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git log --oneline {LAST_PASS_SHA}..{FIRST_FAIL_SHA} -- {relevant_paths}
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```
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### Phase 3: Runner/Hardware Analysis
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6. **Check if the failure is runner-specific.** Extract the runner identity from each failing and passing run:
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```bash
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# Get runner name and machine
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gh run view {RUN_ID} --repo sgl-project/sglang --job {JOB_ID} --log 2>&1 | grep -E "Runner name|Machine name" | head -5
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# Get GPU/driver info
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gh run view {RUN_ID} --repo sgl-project/sglang --job {JOB_ID} --log 2>&1 | grep -i -E "NVIDIA-SMI|Driver Version|CUDA Version" | head -5
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# Get package versions
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gh run view {RUN_ID} --repo sgl-project/sglang --job {JOB_ID} --log 2>&1 | grep -E "sgl.kernel.*==|flashinfer.*==" | head -5
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```
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7. **Correlate runners with pass/fail outcomes.** Build a table:
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| Run ID | Date | Runner | GPU Type | Driver | Result |
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|--------|------|--------|----------|--------|--------|
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If all failures map to a specific runner type/GPU and all passes map to another, the issue is **hardware-specific**, not a code regression.
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### Phase 4: Code Analysis
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8. **If a code regression is suspected** (failures not runner-specific), examine the candidate commits:
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- Read the changed files
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- Understand how the changes could affect the failing test
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- Look for prefill-vs-decode differences, TP-specific paths, kernel changes
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9. **If a hardware issue is suspected**, analyze:
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- Kernel compatibility (CUDA compute capability)
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- Driver version differences
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- All-reduce / NCCL behavior differences
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- CUDA graph capture differences across GPU architectures
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### Phase 5: Remote Reproduction (Optional)
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Only if SSH target and docker container were provided.
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10. **Verify the remote environment:**
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```bash
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ssh {SSH_TARGET} "docker exec {CONTAINER} nvidia-smi --query-gpu=name,driver_version --format=csv"
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ssh {SSH_TARGET} "docker exec {CONTAINER} pip show sgl-kernel sglang flashinfer-python 2>&1 | grep -E 'Name:|Version:'"
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```
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11. **Ensure latest code is installed.** If the container is stale, update:
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```bash
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# Try fetching latest main
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ssh {SSH_TARGET} "docker exec {CONTAINER} bash -c 'cd /path/to/sglang && git fetch origin main && git checkout origin/main'"
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# Or download and install from tarball if git auth fails
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ssh {SSH_TARGET} "docker exec {CONTAINER} bash -c 'cd /tmp && curl -L https://github.com/sgl-project/sglang/archive/refs/heads/main.tar.gz | tar xz && cd sglang-main && pip install -e \"python[all]\"'"
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# Reinstall (after git fetch)
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ssh {SSH_TARGET} "docker exec {CONTAINER} bash -c 'cd /path/to/sglang && pip install -e \"python[all]\"'"
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# Install test dependencies if needed
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ssh {SSH_TARGET} "docker exec {CONTAINER} pip install peft rouge-score"
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```
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12. **Create a minimal reproduction script** that:
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- Uses `if __name__ == '__main__'` with `mp.set_start_method("spawn")`
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- Runs the specific failing test configuration
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- Prints key metrics (diffs, scores, outputs)
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- Exits with code 1 on failure
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13. **Copy and run the reproduction script:**
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```bash
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scp /tmp/repro_script.py {SSH_TARGET}:/tmp/
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ssh {SSH_TARGET} "docker cp /tmp/repro_script.py {CONTAINER}:/tmp/"
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ssh {SSH_TARGET} "docker exec -e CUDA_VISIBLE_DEVICES=0,1 {CONTAINER} python3 /tmp/repro_script.py"
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```
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14. **Run control experiments** to isolate the variable:
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- If suspecting TP issue: run with TP=1 as control
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- If suspecting GPU issue: compare same code on different GPU
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- If suspecting a specific commit: test before/after that commit
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### Phase 6: Report
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15. **Produce a structured report:**
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```markdown
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## CI Regression Bisection Report
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### Failure Signature
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- **Test**: {test_file}::{test_method}
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- **Error**: {exact error message}
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- **Key metrics**: {numeric values}
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- **Deterministic**: Yes/No
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### Root Cause Classification
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One of:
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- **Code Regression**: PR #{number} introduced the bug
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- **Hardware-Specific**: Fails on {GPU_TYPE}, passes on others
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- **Environment Change**: New runner/driver/package version
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- **Pre-existing Flakiness**: Intermittent, not a new regression
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### Evidence
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| Condition | Result |
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|-----------|--------|
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| {condition1} | PASS/FAIL |
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| {condition2} | PASS/FAIL |
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### Timeline
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- {date}: Last known pass ({sha}, {runner})
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- {date}: First known fail ({sha}, {runner})
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- {date}: Confirmed reproduction on {server}
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### Recommended Fix
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- **Short-term**: {workaround}
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- **Long-term**: {proper fix}
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```
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## Key Patterns to Recognize
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| Pattern | Diagnosis |
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|---------|-----------|
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| Same SHA passes on runner A, fails on runner B | Hardware/runner-specific |
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| All runners fail after commit X | Code regression from commit X |
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| Intermittent - same runner sometimes passes/fails | Flaky test or race condition |
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| Prefill OK but decode fails | TP/all-reduce issue in decode path |
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| Works with TP=1, fails with TP>1 | Tensor parallelism bug |
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| Exact same numeric diff every time | Deterministic bug, not flakiness |
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## Important Notes
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- **Always check runner identity** before concluding it's a code regression. Many "consistent" failures are actually runner-specific.
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- **Test partition assignments change over time** as tests are added/removed. A test may move between partitions, landing on different runner types.
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- **H200 runners** use `/root/actions-runner/` path and machine names like `gpu-h200-worker-*`. Non-H200 runners use `/public_sglang_ci/runner-*` paths.
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- When running remote reproduction, use `run_in_background` for long-running tests and check output with `TaskOutput`.
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- Container environments may be stale - always verify package versions match CI before drawing conclusions.
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