Repo memory for AI agents — every memory has a source, every source gets verified.
Project description
agentic-memory (memcite)
Open-source repo memory for AI agents — every memory has a source, every source gets verified.
Package name on PyPI:
memcite
Designed for coding agents, code review agents, and CLI tools that work on a single repository at a time.
Why
AI agents forget everything between sessions. Existing memory layers (mem0, Zep, LangMem) store text in vector DBs but can't tell you where that knowledge came from or whether it's still true.
agentic-memory enforces a simple rule: No evidence, no memory.
Every memory must cite its source (file path + line number, git commit, URL). Before an agent uses a memory, the citation is automatically re-validated. Stale memories get flagged, not silently served.
How it works
from agentic_memory import Memory, FileRef
mem = Memory("./my-project")
# Store a memory — citation is required
mem.add(
"This project uses ruff for linting with line-length=120",
evidence=FileRef("pyproject.toml", lines=(15, 20)),
)
# Query — returns answer + citation status
result = mem.query("What linter does this project use?")
print(result.answer) # "ruff with line-length=120"
print(result.citations) # [FileRef("pyproject.toml", L15-20, status=VALID)]
# Validate all memories — find what's gone stale
stale = mem.validate()
# [StaleMemory("ruff config", reason="file content changed at L15")]
Design Principles
- No Evidence, No Memory —
add()without a citation raises an error - Validate Before Use —
query()re-checks citations by default - Decay What's Stale — confidence drops when evidence changes; invalid memories are deprioritized
Evidence Types
| Type | What it tracks | Validation method |
|---|---|---|
FileRef |
File path + line range | Check file exists, content matches |
GitCommitRef |
Commit SHA + file | Verify commit exists in history |
URLRef |
Web URL | HTTP HEAD check + content hash |
ManualRef |
Human-provided note | No auto-validation (always trusted) |
Features
- Repo-scoped — each repository gets its own memory namespace
- Local-first — SQLite storage, no external services required
- Citation-backed — every memory traces back to a verifiable source
- Auto-validation — stale evidence is detected before it misleads your agent
- Confidence scoring — memories with invalid citations get deprioritized
- Copilot-inspired design — repository-scoped memories with evidence and decay, inspired by GitHub's agentic memory architecture
- CLI included —
am add,am query,am validate,am status
Installation
Status: Alpha but usable — core features are stable, API may evolve.
pip install memcite
With extras:
pip install memcite[mcp] # MCP server for Claude Code
pip install memcite[api] # REST API server (FastAPI)
CLI Usage
# Add a memory with file evidence
am add "Uses pytest for testing" --file tests/conftest.py --lines 1-10
# Query memories
am query "What test framework?"
# Validate all memories
am validate
# Show memory status
am status
MCP Server
Add to your .mcp.json to use with Claude Code:
{
"mcpServers": {
"agentic-memory": {
"command": "am-mcp",
"args": ["--repo", "/path/to/your/project"]
}
}
}
Tools: memory_add, memory_query, memory_validate, memory_status, memory_list, memory_delete
REST API
am-server --repo /path/to/repo --port 8080
OpenAPI docs at http://localhost:8080/docs. Endpoints:
| Method | Path | Description |
|---|---|---|
| POST | /memories |
Add a memory with evidence |
| POST | /memories/query |
Hybrid search + citation validation |
| GET | /memories |
List all memories |
| GET | /memories/{id} |
Get a specific memory |
| DELETE | /memories/{id} |
Delete a memory |
| POST | /memories/validate |
Validate all citations |
| GET | /status |
Memory status summary |
Hybrid Search
When initialized with an embedding provider, queries combine FTS5 full-text search with vector similarity:
from agentic_memory import Memory, TFIDFEmbedding, FileRef
mem = Memory("./my-project", embedding=TFIDFEmbedding())
mem.add("Uses ruff for code formatting", evidence=FileRef("pyproject.toml", lines=(1, 5)))
# Finds the memory even though "linting" != "formatting"
result = mem.query("What linter does this project use?")
Default weights: FTS5 (0.65) + Vector (0.35). Customize per query:
result = mem.query("linting", fts_weight=0.5, vector_weight=0.5)
Admission Control
Filter out low-value memories before they're stored:
from agentic_memory import Memory, HeuristicAdmissionController
mem = Memory("./my-project", admission=HeuristicAdmissionController())
mem.add("ok", evidence=ManualRef("chat")) # raises ValueError — too vague
Or use LLM-based scoring with any OpenAI-compatible API:
from agentic_memory import LLMAdmissionController
def my_llm(system: str, user: str) -> str:
# Call your LLM here, return JSON: {"score": 0.0-1.0, "reason": "..."}
...
mem = Memory("./my-project", admission=LLMAdmissionController(llm_callable=my_llm))
Real-world Workflows
PR reviewer agent — remember repo conventions and enforce them automatically:
mem.add(
"Logging must use structlog, not stdlib logging",
evidence=FileRef("docs/conventions.md", lines=(10, 15)),
)
# In your review pipeline
result = mem.query("What logging library should this project use?")
# → "structlog" with citation pointing to docs/conventions.md
Coding agent — look up project config with verifiable sources:
result = mem.query("What env vars does this service need?")
# → Returns memories citing .env.example with current validation status
# If .env.example was deleted or changed, the memory is flagged as STALE
CI pipeline — catch drifted knowledge before it causes damage:
# Add to your CI workflow
am validate --exit-code # exits non-zero if any memory is INVALID
Roadmap
- Core SDK — add / query / validate with citation enforcement
- CLI tool
- MCP Server — use with Claude Code and other MCP clients
- Admission control — LLM-based scoring to filter low-value memories
- Hybrid search — FTS5 + TF-IDF vector fusion, pluggable embedding providers
- REST API server — FastAPI with OpenAPI docs
- GitHub App / GitLab integration (webhook + comment bot)
- LangChain / LlamaIndex integration
- Web dashboard
Compared to
| mem0 | Zep | LangMem | agentic-memory | |
|---|---|---|---|---|
| Vector search | Yes | Yes | Yes | Yes |
| Forced citations | No | No | No | Yes |
| Source validation | No | No | No | Yes |
| Staleness detection | No | No | No | Yes |
| Repo-scoped | No | No | No | Yes |
| Self-hosted | Yes | Yes | Yes | Yes |
License
MIT
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