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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.toml and 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.

Related MCP server: Documentation Retrieval MCP Server (DOCRET)

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_topics

  • search_docs

  • get_doc_page

  • get_symbol_reference

  • extract_code_examples

  • answer_pytorch_question

  • recommend_docs

  • troubleshoot_pytorch

  • plan_model_build

  • assemble_training_stack

  • generate_training_loop_template

  • generate_task_specific_template

  • generate_training_project_template

  • review_training_code

  • suggest_model_architecture

  • choose_loss_and_optimizer

  • optimize_data_pipeline

  • diagnose_training_issue

  • inspect_pytorch_code

  • inspect_runtime_environment

  • execute_pytorch_snippet

  • run_forward_pass_check

  • benchmark_compile_candidate

  • validate_training_setup

  • list_torch_libraries

  • inspect_torch_library

  • recommend_torch_libraries

  • audit_torch_stack

  • parse_stack_trace

  • analyze_stack_trace

  • analyze_shape_mismatch

  • parse_profiler_export

  • analyze_profiler_summary

Resources

  • pytorch://server/capabilities

  • pytorch://project/settings

  • pytorch://docs/index

  • pytorch://docs/categories

  • pytorch://docs/page/{doc_path}

  • pytorch://docs/category/{category}

  • pytorch://docs/search/{query}?limit=5

  • pytorch://reference/overview

Prompts

  • explain pytorch topic

  • plan pytorch implementation

  • debug pytorch issue

  • compare pytorch approaches

  • build pytorch model

  • review pytorch training code

  • choose pytorch training objective

  • diagnose pytorch training issue

  • inspect pytorch code

  • analyze pytorch stack trace

  • recommend 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 /healthz

  • GET /readyz

Configuration

Important environment variables:

  • PYTORCH_MCP_DOCS_ROOT

  • PYTORCH_MCP_MAX_SEARCH_RESULTS

  • PYTORCH_MCP_MAX_PAGE_CHARACTERS

  • PYTORCH_MCP_MAX_CODE_EXAMPLES

  • PYTORCH_MCP_TRANSPORT

  • PYTORCH_MCP_HOST

  • PYTORCH_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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license - not found
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quality - not tested
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maintenance

Maintenance

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Response time
Release cycle
Releases (12mo)
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