CP shared KV and HiCache now use owner-lane metadata as the authoritative capacity view for host write admission and GPU load-back planning. This removes the debug scalar capacity env and keeps CP load-back from relying on a rank-wide scalar collective when per-owner availability is already known. The load-back planner also accounts for evicting child leaves that unlock ancestor device residency, which fixes small lane deficits despite large aggregate evictable capacity. The commit also adds gated CPU timing logs for CP shared-KV MLA/index prefetch and a CUDA microbenchmark for comparing dense all-reduce with owner-packed all-gather layouts. The timing logs are intentionally behind the existing MLA prefetch log env and should not be enabled for throughput measurements. Constraint: CP shared KV owner lanes require target/draft capacity decisions to preserve page_owners rather than total-token scalars Constraint: CUDA collective benchmarks must run on target GPU hosts, not locally Rejected: Keep SGLANG_CP_HICACHE_CAPACITY_DEBUG observer env | owner-lane admission now replaces that scalar debug path Rejected: Add a silent scalar-allreduce fallback | unexpected owner-lane mismatch should fail fast or log loudly Confidence: medium Scope-risk: moderate Directive: Do not reintroduce CP capacity collectives on the scheduler hot path without proving the owner-lane metadata is insufficient Directive: Disable SGLANG_CP_SHARED_KV_LOG_MLA_PREFETCH for end-to-end performance runs; it is diagnostic and high-volume Tested: git diff --check Tested: python -m py_compile on changed runtime/test/benchmark Python files Tested: remote pytest -q test/registered/unit/mem_cache/test_cp_hicache_load_back_owner_lanes.py test/registered/unit/mem_cache/test_cp_hicache_metadata.py (81 passed, 5 warnings) Not-tested: CUDA benchmark benchmark/hicache/bench_cp_shared_kv_prefetch_collective.py Not-tested: full GLM5 E2E throughput after this commit
SGLang Documentation
This is the documentation website for the SGLang project (https://github.com/sgl-project/sglang).
We recommend new contributors start from writing documentation, which helps you quickly understand SGLang codebase.
Most documentation files are located under the docs/ folder.
Docs Workflow
Install Dependency
Linux:
apt-get update && apt-get install -y pandoc parallel retry
pip install -r requirements.txt
macOS:
brew install pandoc parallel retry
pip install -r requirements.txt
Update Documentation
Update your Jupyter notebooks in the appropriate subdirectories under docs/. If you add new files, remember to update index.rst (or relevant .rst files) accordingly.
pre-commit run --all-filesmanually runs all configured checks, applying fixes if possible. If it fails the first time, re-run it to ensure lint errors are fully resolved. Make sure your code passes all checks before creating a Pull Request.
# 1) Compile all Jupyter notebooks
make compile # This step can take a long time (10+ mins). You can consider skipping this step if you can make sure your added files are correct.
make html
# 2) Compile and Preview documentation locally with auto-build
# This will automatically rebuild docs when files change
# Open your browser at the displayed port to view the docs
bash serve.sh
# 2a) Alternative ways to serve documentation
# Directly use make serve
make serve
# With custom port
PORT=8080 make serve
# 3) Clean notebook outputs
# nbstripout removes notebook outputs so your PR stays clean
pip install nbstripout
find . -name '*.ipynb' -exec nbstripout {} \;
# 4) Pre-commit checks and create a PR
# After these checks pass, push your changes and open a PR on your branch
pre-commit run --all-files
Documentation Style Guidelines
- For common functionalities, we prefer Jupyter Notebooks over Markdown so that all examples can be executed and validated by our docs CI pipeline. For complex features (e.g., distributed serving), Markdown is preferred.
- Keep in mind the documentation execution time when writing interactive Jupyter notebooks. Each interactive notebook will be run and compiled against every commit to ensure they are runnable, so it is important to apply some tips to reduce the documentation compilation time:
- Use small models (e.g.,
qwen/qwen2.5-0.5b-instruct) for most cases to reduce server launch time. - Reuse the launched server as much as possible to reduce server launch time.
- Use small models (e.g.,
- Do not use absolute links (e.g.,
https://docs.sglang.io/get_started/install.html). Always prefer relative links (e.g.,../get_started/install.md). - Follow the existing examples to learn how to launch a server, send a query and other common styles.
Documentation Build, Deployment, and CI
The SGLang documentation pipeline is based on Sphinx and supports rendering Jupyter notebooks (.ipynb) into HTML/Markdown for web display. Detailed logits can be found in the Makefile.
Notebook Execution (make compile)
The make compile target is responsible for executing notebooks before rendering:
- Finds all
.ipynbfiles underdocs/(excluding_build/) - Executes notebooks in parallel using GNU Parallel, with a relatively small
--mem-fraction-static - Wraps execution with
retryto reduce flaky failures - Executes notebooks via
jupyter nbconvert --execute --inplace - Records execution timing in
logs/timing.log
This step ensures notebooks contain up-to-date outputs with each commit in the main branch before rendering.
Web Rendering (make html)
After compilation, Sphinx builds the website:
- Reads Markdown, reStructuredText, and Jupyter notebooks
- Renders them into HTML pages
- Outputs the website into:
docs/_build/html/
This directory is the source for online documentation hosting.
Markdown Export (make markdown)
To support downstream consumers, we add a new Makefile target:
make markdown
This target:
- Does not modify
make compile - Scans all
.ipynbfiles (excluding_build/) - Converts notebooks directly to Markdown using
jupyter nbconvert --to markdown - Writes Markdown artifacts into the existing build directory:
docs/_build/html/markdown/<relative-path>.md
Example:
docs/advanced_features/lora.ipynb
→ docs/_build/html/markdown/advanced_features/lora.md
CI Execution
In our CI, the documentation pipeline first gets all the executed results and renders HTML and Markdown by:
make compile # execute notebooks (ensure outputs are up to date)
make html # build website as usual
make markdown # export markdown artifacts into _build/html/markdown
Then, the compiled results are forced pushed to sgl-project.io for rendering. In other words, sgl-project.io is push-only. All the changes of SGLang docs should be made directly in SGLang main repo, then push to the sgl-project.io.