Gives Claude access to your repository's git history and test suite to prevent "fix one thing, break another" scenarios. Exposes three core tools: get_impact_analysis surfaces files that frequently changed together with your target file and extracts test intent strings from specs across Jest, Pytest, JUnit, and others; save_project_note and read_project_notes create a persistent knowledge base for architectural constraints that aren't in the code. The Rust core indexes commit history and builds a SQLite database of temporal coupling, so when you're about to modify a file, Claude can see the hidden dependencies and behavioral requirements before writing code. Designed for local execution with zero telemetry.
The "Missing Context" Engine for AI Agents.
Engram gives your AI agent the context it can’t see in the code alone.
While LLMs are excellent at analyzing the specific files you give them, they lack the broader context of your repository's history and guardrails. Engram bridges this gap by surfacing hidden dependencies (via git history) and required behaviours (via test intents) that the AI would otherwise not have access to, miss or ignore.
A TypeScript service (TransactionExportService) writes pipe-delimited lines like TXN-001|2024-11-15|250.00|COMPLETED.
A legacy JavaScript cron job (legacy-mainframe-sync.js) parses them using hardcoded array indices - parts[2] for amount, parts[3] for status.
There are zero imports between them. No shared types. Nothing in the code connects them.
The task: "Add a currency field next to the amount."
The AI agent updates the TypeScript service and tests. The export format becomes ID|DATE|AMOUNT|CURRENCY|STATUS. All tests pass. The PR ships.
The problem: The legacy script still reads parts[3] expecting a status like COMPLETED - but now gets USD. parseFloat("USD") returns NaN. The mainframe receives corrupted data. Nothing failed. Nothing warned. Silent breakage in production.
Before writing any code, the agent calls get_impact_analysis. Engram checks git history and returns:
Critical Risk (0.99):
bin/legacy-mainframe-sync.js— Changed together in 21 of 21 commits (100%)
The agent reads the flagged file, finds the positional parser, and updates both files together. Same feature, zero breakage.
After the fix, the agent calls save_project_note:
"The export line format is consumed by bin/legacy-mainframe-sync.js using hardcoded positional indices. Any change to field order MUST be mirrored there. Current format: ID|DATE|AMOUNT|CURRENCY|STATUS (indices 0-4)."
Now every future agent gets this warning automatically - before it writes a single line of code.
1. Temporal Graph
A.ts and B.ts changed together 40 times in the last year, your AI needs to know about B.ts before editing A.ts.2. Validation Graph
it("should validate JWT expiration")).it, test, describe)#[test]def test_...)func Test...3. Knowledge Graph
get_impact_analysis - Blast radius calculation for a target fileFor a given file, return the impacted files, their test intents and any stored notes.
Example:
{
"file_path": "src/Auth.ts",
"repo_root": "/path/to/repo"
}
Returns:
{
"summary": "Changing src/Auth.ts may affect 2 files. 1 critical risk, 1 medium risk.\n\n⚠️ Critical Risk (0.89): src/Session.ts\n Changed together in 48 of 50 commits (96%)\n Notes: Session requires Redis connection\n\n⚠ High Risk (0.72): src/Auth.test.ts\n Changed together in 31 of 50 commits (62%)\n Current test behaviour (may need updating):\n - should login with valid credentials\n - should reject invalid password\n - should handle OAuth callback",
"formatted_files": [
{
"path": "src/Session.ts",
"risk_level": "Critical",
"risk_score": 0.89,
"description": "Changed together in 48 of 50 commits (96%)",
"memories": ["Session requires Redis connection"]
},
{
"path": "src/Auth.test.ts",
"risk_level": "High",
"risk_score": 0.72,
"description": "Changed together in 31 of 50 commits (62%)",
"test_intents": [
"should login with valid credentials",
"should reject invalid password",
"should handle OAuth callback"
]
}
],
"coupled_files": [...],
"commit_count": 50
}
save_project_note - Remember context about filesStore persistent notes that automatically appear in future impact analyses.
Example:
{
"file_path": "src/Auth.ts",
"note": "Uses JWT tokens, must validate expiry timestamp",
"repo_root": "/path/to/repo"
}
read_project_notes - Retrieve saved contextSearch notes by content or file path, or list all project knowledge.
Example:
{
"query": "Redis",
"repo_root": "/path/to/repo"
}
Engram is built to be invisible until you need it. It uses an Adaptive Indexing Strategy that respects your CPU and scales from side-projects to massive monorepos.
We take performance seriously. Engram is benchmarked against the Linux Kernel repository (1.2 million+ commits).
Standard Repos (Most Projects)
Massive Repos (e.g., Linux Kernel)
┌─────────────┐
│ AI Agent │ ← MCP protocol over stdio
└──────┬──────┘
│
┌──────▼──────────────┐
│ Node.js Adapter │ ← TypeScript MCP server
│ (adapter/) │
└──────┬──────────────┘
│ spawns & communicates via JSON
┌──────▼──────────────┐
│ Rust Core Binary │ ← Fast git indexing + SQLite
│ (core/) │
└──────┬──────────────┘
│ reads
┌──────▼──────────────┐
│ .engram/engram.db │ ← Persistent SQLite database
└─────────────────────┘
rusqlite and WAL mode for high-throughput concurrency.Engram is an MCP server and works with any MCP-compatible client.
claude mcp add --scope user --transport stdio engram -- npx -y @spectra-g/engram-adapter
Settings > General > MCP Servers > Add New MCP Server:
engramcommandnpx -y @spectra-g/engram-adapterTo ensure your AI uses Engram effectively, add this to your project rules (.cursorrules or CLAUDE.md).
## Engram Workflow Policy
You have access to a tool called `engram` (specifically `get_impact_analysis` and `save_project_note`).
You MUST follow this strictly sequential workflow for EVERY code modification request:
### Phase 1: Analysis (MANDATORY START)
1. **Blast Radius Check**: Before reading code or proposing changes, you MUST call `get_impact_analysis` on the target file(s).
2. **Context Loading**:
* **Coupling**: If "High" or "Critical" risk files are returned, evaluate if they are *functionally related*.
* *Action:* Read the file (`read_file`) if it poses a logical regression risk.
* *Ignore:* Skip files that appear coincidental (e.g., lockfiles, gitignore, bulk formatting updates).
* **Memories**: Pay close attention to any "Memories" returned in the analysis summary.
* **Tests**: If `test_intents` are present, treat them as strict behavioural constraints. If absent, proceed with standard code analysis.
### Phase 2: Execution
3. **Fix/Refactor**: Proceed with the code changes. Update tests if the behaviour is intentionally changing.
### Phase 3: Knowledge Capture (MANDATORY END)
4. **Save Learnings**: Before finishing, ask: *"Would a future developer be **surprised** by something I discovered?"*
* **IF YES** (Hidden dependencies, non-obvious bugs, env quirks): You MUST use `save_project_note`.
* **IF NO** (Typos, standard refactors, documented behaviour): Do NOT save a note.
Requires Rust (1.70+) and Node.js (18+).
npm run build:all # Build Rust core + TypeScript adapter
npm run test:all # Run standard test suite
To verify performance against the Linux kernel (requires a local clone of linux as a sibling directory):
# 1. Clone linux kernel to ../linux
# 2. Run the ignored performance tests
npm run test:all-local
We welcome bug reports and community fixes. Please note that by contributing to this repository, you grant spectra-g a perpetual, irrevocable license to include your changes in both the public source and the commercially licensed versions of the software.
This project is licensed under the PolyForm Noncommercial License 1.0.0.
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