Zaxy
Enables CrewAI agents to use the same memory interface for capturing tool observations, citations, and approved merges into a durable, queryable history.
Integrates with LangGraph agents to provide an immutable event log and graph-based memory for session isolation, conflict review, and hybrid retrieval.
Offers an observe-only packet analyzer that forwards OpenAI-compatible model calls to a configured endpoint and records provenance events in Eventloom.
Zaxy
Production memory for agent teams that need receipts.
Zaxy turns agent context into an auditable project memory fabric. It captures parent missions, worker sessions, tool observations, cited findings, conflict review, approval packets, and accepted merge-back into one durable history that can be queried, replayed, and inspected.
Under the hood, Zaxy uses Eventloom append-only JSONL as the source of truth and an embedded LadybugDB graph projection for local reasoning. It is built for agents that need to remember what happened, cite where it came from, and avoid turning project state into a pile of markdown files and vector chunks.
The embedded LadybugDB graph projection is the default local runtime.
The plain install uses embedded LadybugDB. Install zaxy-memory[neo4j] only for the
optional Neo4j sidecar, and zaxy-memory[pathlight] only for Pathlight tracing.
Why It Matters
Auditable memory: every accepted fact can point back to Eventloom history.
Agent-team coordination: parent and worker sessions stay isolated until findings are reviewed and merged.
Local-first runtime: the default path uses embedded LadybugDB, no Neo4j sidecar.
MCP-native integration: Codex, Claude Code, Cursor, VS Code, Hermes Agent, LangGraph, CrewAI, and AutoGen can use the same memory interface.
External benchmark evidence: on the full Harvey LAB legal-agent memory benchmark, Zaxy scored
0.788mean criterion pass rate across10/10tasks,+0.184vs regular/no-memory,+0.081vs the article-best task rows, and won9/10task comparisons. See Benchmarks; the published stats artifact isreports/benchmarks/harvey-lab-memory-ablation/publishable-statistics.md.Headline 500 evidence: the current LongMemEval-compatible checkout diagnostic is a full 500-question run with mean
0.956, Answer@50.910, Recall@51.000, and citation coverage1.000. See Benchmarks.
Related MCP server: attestor
Quick Start
Install, init, verify
pipx install zaxy-memory
zaxy init
zaxy memory log --eventloom-path .eventloom --limit 5
zaxy memory bootstrap --eventloom-path .eventloom
zaxy doctor --eventloom-path .eventloomThe PyPI distribution is zaxy-memory; the import package and console command
are still zaxy. Bare zaxy init sets up the local embedded graph posture,
repo-local profile, deterministic capture config, genesis event, heartbeat, and
MCP guidance. For Codex, the printed activation launcher starts the managed
capture watcher when the local capture config is present; pass --capture start
only when you want init itself to start the watcher before opening Codex. The
default human output is compact and action-first; add --verbose when you need
the full setup diagnostics, optional checks, fallback commands, resume guidance,
and notes.
For automation, zaxy init --json keeps the raw onboarding fields and adds
setup.status, setup.issues, setup.pending, readiness.status,
readiness.reasons, readiness.actions, and structured
readiness.action_items for both commands and non-command review tasks. Each
structured action carries label, command, original source, and hints
for compact-output tips such as activation <task> replacement and path-stable
command guidance. Installers can render those tips without parsing prose. It also
includes setup.summary, readiness.summary,
readiness.required_action_count, and readiness.reason_count, so client UIs
can render compact status without parsing human output. It also
separates readiness.blocking_diagnostics from
readiness.non_blocking_diagnostics so scripts can distinguish setup
completion, required actions, and advisory doctor warnings before relying on
live memory.
For Codex, zaxy init --codex-mcp-install auto is the default. It writes or
reuses the user-level Codex MCP config when that can be done without replacing
an existing zaxy server entry. If no safe config target exists, it prints the
copyable codex mcp add command. If an existing zaxy entry differs, it asks
you to review that config before replacing it because Codex can silently replace
servers with the same name. Use an explicit mode when you need to force one side
of that decision after review:
zaxy init --codex-mcp-install user
# or: zaxy init --codex-mcp-install commandBoth Codex paths keep the server workspace-neutral. After init, start or
restart Codex through the printed zaxy activate codex ... --launch command so
the MCP server list and Zaxy activation packet are loaded together. The printed
command includes explicit --eventloom-path and --workspace-root values, so
it still targets the initialized repo when copied from another shell.
Run the single-agent memory example:
python examples/single_agent_memory.pyYour local data lives under .eventloom/ as one append-only JSONL file per
session.
For Claude Code instead of Codex:
zaxy init . --domain my-project --preset local-claude --infra checkFor Hermes Agent:
zaxy ide-config hermes --installFor repository development, use pip install -e ".[dev]", ./scripts/setup.sh,
and zaxy status. Start Docker sidecars only for integration tests or explicit
backend comparisons. 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 → Embedded LadybugDB graph
| |
+—————— 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
Public static site:
site/index.htmlWhy Zaxy:
docs/why-zaxy.mdGetting started:
docs/getting-started.mdMCP quickstart:
docs/mcp-quickstart.mdArchitecture:
docs/architecture.mdConfiguration:
docs/configuration.mdMCP interface:
docs/mcp.mdEventloom contract:
docs/eventloom.mdGraph schema:
docs/graph-schema.mdRetrieval:
docs/retrieval.mdBenchmarks:
docs/benchmarks.mdLLM packet analyzer:
docs/packet-analyzer.mdEmbeddings:
docs/embeddings.mdSecurity:
docs/security.mdOperations and deployment:
docs/operations.md,docs/deployment.md,docs/runbook.mdPython API:
docs/api.mdStability commitment:
docs/stability-commitment.mdMigration guide:
docs/migration.mdArchived benchmark iteration notes, release drafts, and research notes live under
docs/archive/,docs/announcements/, anddocs/research/.Contributing:
CONTRIBUTING.md
Key Features
Immutable audit trail: Eventloom append-only JSONL with SHA-256 hash chains.
Bi-temporal graph: Facts have validity windows (
valid_from,valid_to).Hybrid extraction: Rule-based for typed events (60–80% cost reduction), LLM fallback.
Hybrid retrieval: Exact + keyword + vector + graph traversal with configurable fusion weights.
Session sharding: One Eventloom log per agent/session, with a shared graph.
MCP-native: Drop-in memory for any MCP-compatible agent framework over stdio or SSE.
Observable: Optional Pathlight traces, breakpoints, and diff support via
zaxy-memory[pathlight].Hardened local defaults: bounded MCP inputs, safe session IDs, no-sidecar embedded graph projection, and optional admin token support for replay/invalidation.
Project Structure
File | Purpose |
| Eventloom JSONL I/O + hash chain integrity |
| Hybrid extraction engine + rule registry |
| Embedded LadybugDB projection store |
| Optional Neo4j bi-temporal wrapper via |
| Hybrid retrieval router |
| MCP stdio/SSE server |
| Optional Pathlight observability hooks |
| MemoryFabric orchestrator |
| Per-session Eventloom log manager |
| Shared validation and input bounds |
| CLI ( |
Production Secrets
Zaxy supports Docker/Kubernetes-style secret files for sensitive settings:
Variable | Secret-file variant |
|
|
|
|
|
|
Direct environment variables take precedence over their *_FILE variants.
Use docker-compose.prod.yml as the production compose baseline.
Development
Tests first (Karpathy rule). Every public function has a test.
Unit tests mock external services. Integration tests use Docker for optional sidecar backends.
Coverage gate: ≥92% enforced by CI.
Lint/format:
ruff. Types:mypy.
# Run full suite with coverage gate
pytest
# Run integration tests (requires Docker)
./scripts/generate-certs.sh .certs
docker compose --profile integration up -d neo4j-test neo4j-tls
pytest -m integration --no-cov
# Lint and type-check
ruff check src tests
mypy src
# Current full-set LongMemEval-compatible checkout evidence:
# reports/benchmarks/longmemeval-500-publish-20260607/
# Mean 0.956, Answer@5 0.910, citation coverage 1.000, R@1/R@5/R@10 0.960/1.000/1.000.
# Stage the next full 500 only after docs/report cleanup is complete.
zaxy benchmark --output-dir reports/benchmarks/longmemeval-500-next \
--embedding-provider hash --workload longmemeval \
--dataset .cache/zaxy/benchmarks/longmemeval_oracle.json \
--runs 1 --limit 5 --baseline-backends bm25 \
--projection-backend embedded --zaxy-backend checkout
# Harvey LAB external memory-ablation comparison
# Consumes externally generated Harvey normalized-result artifacts for Zaxy;
# does not reuse LongMemEval statistics as legal-agent benchmark evidence.
# Current full external Harvey LAB evidence:
# reports/benchmarks/harvey-lab-memory-ablation/publishable-statistics.md
# reports/benchmarks/harvey-lab-memory-ablation/harvey-lab-benchmark.json
# 10/10 tasks, mean criterion pass rate 0.788, +0.184 vs regular/no-memory,
# +0.081 vs article-best task rows, 9/10 wins vs article-best rows.
# Production deployment preflight
scripts/validate-deployment.sh --root .
# Build and validate Python release artifacts
scripts/build-dist.sh --root .
# Verify local release metadata, PyPI Trusted Publishing, and LangGraph smoke
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 92% 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, tokenless publishing posture, and
dependency-light LangGraph example.
License
MIT
Maintenance
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