Context Bridge
Enables repository context packing, file/symbol ranking, task-relevant selection, and applying structured patches via MCP.
README
Context Bridge
Context Bridge is a local-first pipeline between a repository and external LLMs or MCP clients. It is intentionally narrow: it packs bounded repository context, ranks files and symbols with a tree-sitter/PageRank graph, applies structured SemPatch YAML through AST matching, and writes changes through a transaction layer with verification hooks.
It is not a full coding agent. It does not plan large refactors end to end. It focuses on the I/O boundary: what leaves the repo, and what comes back in.
What It Does
- pack repository context with manifests, byte limits, secret scanning, and optional visual snapshots,
- build repository maps from tree-sitter tags and reference scores,
- select task-relevant files within a token budget,
- apply SemPatch YAML with transactional prepare/commit semantics,
- expose the same primitives through CLI, MCP, and an agent skill,
- pair with a browser companion so web LLMs can operate on local code without copy/paste loops.
Install
python -m pip install -e .
python -m pip install -e ".[mcp,visual]"
Quick Start
Generate a repository map:
context-bridge map . --query "fix login token refresh" -o repo-map.md
Select a bounded bundle:
context-bridge select . --task "fix login token refresh" -o selected-context.md
Create a staged plan:
context-bridge playbook . --task "fix login token refresh" -o playbook.md
Apply a SemPatch response:
context-bridge apply answer.md --root .
context-bridge apply answer.md --root . --write
Migrate a legacy patch file once:
context-bridge migrate-old-patches legacy-answer.md -o answer.sempatch.md
SemPatch
SemPatch is the required patch format. Each block is explicit YAML:
--- sempatch ---
file: src/example.py
language: python
op: replace
selector:
rule:
pattern: |
def hello():
$$$BODY
replacement: |
def hello():
return "updated"
--- end sempatch ---
Use op: create_file with content: for new files. The tool validates the structure, matches
exactly one AST node, and runs inside a transaction when writing.
MCP
context-bridge mcp
The MCP server exposes pack_context, repo_map, context_playbook, select_context_for_task,
scan_text_for_secrets, inspect_sempatches, apply_patches, and sempatch_schema.
Browser Companion
The browser companion follows the same shape as existing Chrome/MCP bridge projects: prefer Chrome Native Messaging for the local host boundary, then fall back to the loopback HTTP bridge when native host registration is not available.
context-bridge ext native-manifest --extension-id <installed-extension-id> --output native-host.json
context-bridge ext serve
The extension/ directory is a Chrome MV3 companion. It calls the native host
com.context_bridge.native_host first and uses context-bridge ext serve only as a fallback.
Verification
Configure verify hooks in .context-bridge.toml:
[verify]
typescript = ["pnpm", "exec", "tsc", "--noEmit"]
python = ["python", "-m", "ruff", "check", "--quiet"]
rust = ["cargo", "check", "--quiet"]
apply --write runs verification by default. Use --no-verify only when you knowingly want
to skip the hooks.
Visual Snapshots
bundle --visual does not ship a custom component renderer. It reuses an existing
Storybook, Ladle, or Histoire setup in the target project and captures it with Playwright:
[visual]
explorer = "storybook"
command = ["npm", "run", "storybook", "--", "--ci", "--port", "6006"]
url = "http://127.0.0.1:6006"
timeout_seconds = 45
If no story exists for a component, Context Bridge reports that clearly instead of emitting a fake snapshot.
Development
python -m unittest discover -s tests -v
python -m compileall -q src tests
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