pytorch-mcp
A full-featured MCP server for PyTorch documentation workflows, providing tools for search, symbol lookup, code examples, troubleshooting, and question-answering using local docs.
README
pytorch-mcp
pytorch-mcp is a full-featured MCP server for PyTorch documentation workflows. It indexes the repository's local docs/ tree and exposes search, page retrieval, symbol lookup, code-example extraction, troubleshooting, and question-answering tools that an LLM can use to help developers work with PyTorch.
Features
- Uses
docs/as the source of truth for documentation-aware tools. - Indexes local Markdown and reStructuredText PyTorch docs.
- Searches by workflow, concept, topic, or exact symbol such as
torch.compile. - Returns grounded snippets, headings, and page metadata for follow-up exploration.
- Extracts code examples from relevant docs pages.
- Understands declared Torch ecosystem libraries from
pyproject.tomland inspects runtime availability. - Recommends reading paths for tasks like training, compilation, data loading, profiling, and troubleshooting.
- Exposes MCP tools, resources, prompts, plus HTTP health/readiness routes.
Server Instructions
The MCP server is intended to behave like a PyTorch development copilot:
- Use local
docs/content as the authoritative source for documentation-aware answers. - Inspect declared and installed Torch libraries before making environment-specific recommendations.
- Use planning, template-generation, code-inspection, and runtime-validation tools to help developers build models faster.
- Keep debugging and optimization advice grounded in retrieved docs, parsed traces, profiler data, and runtime checks when available.
Tools
list_doc_topicssearch_docsget_doc_pageget_symbol_referenceextract_code_examplesanswer_pytorch_questionrecommend_docstroubleshoot_pytorchplan_model_buildassemble_training_stackgenerate_training_loop_templategenerate_task_specific_templategenerate_training_project_templatereview_training_codesuggest_model_architecturechoose_loss_and_optimizeroptimize_data_pipelinediagnose_training_issueinspect_pytorch_codeinspect_runtime_environmentexecute_pytorch_snippetrun_forward_pass_checkbenchmark_compile_candidatevalidate_training_setuplist_torch_librariesinspect_torch_libraryrecommend_torch_librariesaudit_torch_stackparse_stack_traceanalyze_stack_traceanalyze_shape_mismatchparse_profiler_exportanalyze_profiler_summary
Resources
pytorch://server/capabilitiespytorch://project/settingspytorch://docs/indexpytorch://docs/categoriespytorch://docs/page/{doc_path}pytorch://docs/category/{category}pytorch://docs/search/{query}?limit=5pytorch://reference/overview
Prompts
explain pytorch topicplan pytorch implementationdebug pytorch issuecompare pytorch approachesbuild pytorch modelreview pytorch training codechoose pytorch training objectivediagnose pytorch training issueinspect pytorch codeanalyze pytorch stack tracerecommend torch libraries
Run
Install dependencies:
uv sync
Run over stdio:
uv run python mcp_server.py --transport stdio
Run over HTTP:
uv run python mcp_server.py --transport http --host 127.0.0.1 --port 8000
Health endpoints:
GET /healthzGET /readyz
Configuration
Important environment variables:
PYTORCH_MCP_DOCS_ROOTPYTORCH_MCP_MAX_SEARCH_RESULTSPYTORCH_MCP_MAX_PAGE_CHARACTERSPYTORCH_MCP_MAX_CODE_EXAMPLESPYTORCH_MCP_TRANSPORTPYTORCH_MCP_HOSTPYTORCH_MCP_PORT
Example:
PYTORCH_MCP_DOCS_ROOT=/path/to/pytorch/docs \
uv run python mcp_server.py --transport stdio
By default the server reads from this repository's docs/ directory. If you package or deploy the server elsewhere, point PYTORCH_MCP_DOCS_ROOT at a local PyTorch documentation checkout.
Testing
just test
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