Zaxy

Event-sourced temporal knowledge graph fabric for AI agent memory.

Zaxy replaces markdown files + vector DBs with a structured, replayable, bi-temporal memory system built on Eventloom and Neo4j, with optional Pathlight tracing.

Quick Start

Five-minute local smoke test

# Install the Zaxy CLI before generating MCP config. The distribution is
# zaxy-memory; the import package and console command remain zaxy.
pipx install zaxy-memory
# or: pip install zaxy-memory

# Initialize local memory, MCP config guidance, profile, genesis, and heartbeat.
# This checks graph infrastructure posture without starting containers.
zaxy init . --domain my-project --preset local-codex --capture start --infra check

# Prove the local Eventloom log and model bootstrap are readable.
zaxy memory log --eventloom-path .eventloom --session-id my-project-default --limit 5
zaxy memory bootstrap --eventloom-path .eventloom --session-id my-project-default
zaxy doctor --eventloom-path .eventloom

Your local data lives under .eventloom/ as one append-only JSONL file per session. zaxy init prints the MCP config or install command for your selected client, shows the selected graph backend posture, and ends with copyable local verification commands.

For Claude Code instead of Codex:

zaxy init . --domain my-project --preset local-claude --infra check

For Hermes Agent:

zaxy ide-config hermes --install

For repository development, use pip install -e ".[dev]", ./scripts/setup.sh, and docker compose up -d. Production setup writes Docker secret files under ./secrets/; see docs/deployment.md.

Architecture

Agent (LangGraph / Any MCP Client)
    |
    v
MCP Server — memory_append / memory_query / memory_feedback / memory_replay / memory_invalidate
    |
    v
Eventloom (immutable JSONL log)  →  Hybrid Extraction  →  Neo4j (temporal KG)
    |                                                               |
    +—————— Optional Pathlight traces ———————————————→  Query Router
                                                              |
                                                    Hybrid Retrieval
                                                    (exact + BM25 + vector + traversal)

Zaxy also includes an observe-only OpenAI-compatible packet analyzer for model call provenance. It forwards packets to one configured upstream endpoint and records llm.packet.completed events to Eventloom without acting as a router. See LLM Packet Analyzer.

Public Site and Documentation

Key Features

Project Structure

File Purpose
src/zaxy/event.py Eventloom JSONL I/O + hash chain integrity
src/zaxy/extract.py Hybrid extraction engine + rule registry
src/zaxy/graph.py Neo4j bi-temporal wrapper
src/zaxy/query.py Hybrid retrieval router
src/zaxy/mcp_server.py MCP stdio/SSE server
src/zaxy/trace.py Pathlight observability hooks
src/zaxy/core.py MemoryFabric orchestrator
src/zaxy/session.py Per-session Eventloom log manager
src/zaxy/security.py Shared validation and input bounds
src/zaxy/__main__.py CLI (zaxy serve, zaxy replay, etc.)

Production Secrets

Zaxy supports Docker/Kubernetes-style secret files for sensitive settings:

Variable Secret-file variant
NEO4J_PASSWORD NEO4J_PASSWORD_FILE
MCP_ADMIN_TOKEN MCP_ADMIN_TOKEN_FILE
PATHLIGHT_ACCESS_TOKEN PATHLIGHT_ACCESS_TOKEN_FILE

Direct environment variables take precedence over their *_FILE variants. Use docker-compose.prod.yml as the production compose baseline.

Development

# Run full suite with coverage gate
pytest

# Run integration tests (requires Docker)
docker compose up -d neo4j-test
./scripts/generate-certs.sh .certs
docker compose up -d neo4j-tls
pytest -m integration --no-cov

# Lint and type-check
ruff check src tests
mypy src

# Competitive retrieval benchmark harness
pytest tests/test_competitive_benchmarks.py --benchmark-only --no-cov

# Frozen live benchmark: markdown vs BM25 vs vector vs markdown+vector vs Zaxy
scripts/live-benchmark.sh --embedding-provider openai --workload frozen --runs 1 --reset-graph

# Representative benchmark suite: temporal memory + docs + transcripts + mixed context
scripts/live-benchmark.sh --embedding-provider openai --workload suite --subjects 100 --documents 250 --sessions 50 --runs 1 --reset-graph

# LongMemEval-compatible memory benchmark and BM25 comparison
zaxy benchmark --embedding-provider hash --workload longmemeval \
  --dataset .cache/zaxy/benchmarks/longmemeval_oracle.json \
  --questions 100 --runs 1 --limit 10 --zaxy-backend checkout \
  --baseline-backends bm25 --embedding-cache .cache/zaxy/longmemeval-embeddings.json
zaxy benchmark --output-dir reports/benchmarks/longmemeval-100-comparison \
  --embedding-provider hash --workload longmemeval \
  --dataset .cache/zaxy/benchmarks/longmemeval_oracle.json \
  --questions 100 --runs 1 --limit 5 --baseline-backends bm25 \
  --zaxy-backend checkout --reuse-projection \
  --embedding-cache .cache/zaxy/longmemeval-embeddings.json

# Production deployment preflight
scripts/validate-deployment.sh --root .

# Build and validate Python release artifacts
scripts/build-dist.sh --root .

# Verify local release metadata and PyPI Trusted Publishing configuration
zaxy doctor --release-smoke

# Validate public site and documentation links
scripts/validate-docs.sh --root .

# Clean-repo beta UAT: install into a throwaway workspace and verify init,
# bootstrap, deterministic capture, doctor, and memory checkout.
scripts/beta-uat.sh

# Summarize beta readiness gates without external services.
zaxy doctor --beta-readiness

# Go-live release gate
scripts/release-check.sh --root .

The full suite must stay at or above 90% coverage before a sprint is complete.

Release Publishing

The PyPI distribution name is zaxy-memory because zaxy is already occupied on PyPI. Published releases build from GitHub Actions and upload to <https://pypi.org/project/zaxy-memory/> using PyPI Trusted Publishing with GitHub OIDC. The import package and console command remain zaxy.

Before publishing, run zaxy doctor --release-smoke to verify the package version, changelog entry, release workflow, and tokenless publishing posture.

License

MIT