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Event-sourced agent engine — CLI and Python bindings for auditable AI workflows

Project description

zymi-core

Event-sourced agent engine for auditable AI workflows in Rust, YAML, and Python.

zymi-core helps you build agent workflows you can inspect after the fact. Every run is recorded as an immutable event stream in SQLite, agent side effects are mediated through intentions and boundary contracts, and pipelines execute as DAGs with parallel steps when possible.

Highlights

  • Auditable by default: every state change is persisted as an event with hash-chain verification.
  • Safer side effects: agents emit intentions first; contracts and approvals decide what is allowed to execute.
  • Practical workflows: define agents and DAG pipelines in YAML, then run them from a small CLI.
  • Declarative custom tools: add HTTP and shell tools in tools/*.yml — no Rust code required. zymi init includes a working example.
  • Flexible integration points: use the Rust crate, Python bindings, or both — Python can drive pipelines directly via Runtime.for_project(...).run_pipeline(...), no subprocess.
  • LLM-provider ready: OpenAI-compatible providers, Anthropic support, Python tools, and LangFuse event services.
  • Automatic context management: observation masking compresses older tool results in-place (~2x cost reduction, no extra LLM calls), with LLM summarization as a graduated fallback when the context grows further.
  • JSON Schemas for configs: zymi schema project|agent|pipeline|tool outputs draft-07 JSON Schema for IDE autocomplete and LLM-assisted config generation.

Installation

If you want to... Install with...
CLI + Python bindings pip install zymi-core
Rust crate only zymi-core = "0.1"

pip install zymi-core gives you both the zymi CLI command and the zymi_core Python module.

Quick Start

# Install
pip install zymi-core

# Create a demo project
mkdir zymi-demo
cd zymi-demo
zymi init --example research

# Add your LLM provider config to project.yml, then run the pipeline
zymi run research -i topic="event sourcing"

# Inspect what happened
zymi events --limit 20
zymi verify

For example, this is enough to get started with OpenAI:

llm:
  provider: openai
  model: gpt-4o
  api_key: ${env.OPENAI_API_KEY}

What this gives you:

  • project.yml for provider config, policies, contracts, and defaults
  • agents/ for agent definitions
  • pipelines/ for DAG workflows
  • tools/web_search.yml — a declarative tool example, ready to wire up to a search provider
  • .zymi/events.db for the append-only event log
  • output/ and memory/ directories in the research example

Common CLI commands

zymi init --name my-project
zymi init --example research

zymi run main -i task="Summarize the architecture"
zymi run research -i topic="Rust event sourcing"

# Long-running mode: react to PipelineRequested events from any process
zymi serve research

zymi events
zymi events --stream conversation-1
zymi events --stream conversation-1 --verbose
zymi events --kind tool_call_completed --raw

zymi verify
zymi verify --stream conversation-1

# Discover what's in the project / what has run
zymi pipelines
zymi runs                          # all runs, newest first
zymi runs --pipeline research --limit 20

# Interactive 3-panel TUI: runs ▸ pipeline graph ▸ events
# Inside: Tab cycles panels, Enter expands, f follows tail,
#         Shift+R on a graph node forks-resumes from that step.
zymi observe
zymi observe --run pipeline-research-abc123

# Fork-resume an earlier run from a chosen step (ADR-0018).
# Steps upstream of the fork are frozen — their events are copied verbatim;
# the fork step + DAG-descendants re-run against the current configs on disk.
zymi resume pipeline-research-abc123 --from-step writer
zymi resume pipeline-research-abc123 --from-step writer --dry-run   # preview only

# JSON Schema for configs (useful for IDE autocomplete / LLM generation)
zymi schema project
zymi schema --all

Project Layout

A zymi project is just a directory with YAML files:

my-project/
  project.yml
  agents/
    default.yml
  pipelines/
    main.yml
  tools/          # declarative custom tools
    web_search.yml
  .zymi/
    events.db

The default scaffold created by zymi init is intentionally small:

# project.yml
name: my-project
version: "0.1"

defaults:
  timeout_secs: 30
  max_iterations: 10

policy:
  enabled: true
  allow: ["ls *", "cat *", "echo *"]
  deny: ["rm -rf *"]

# optional — tune context window budget
runtime:
  context:
    observation_window: 10
    soft_cap_chars: 400000
    hard_cap_chars: 600000
    min_tail_turns: 4
# agents/default.yml
name: default
description: "Default agent"
tools:
  - web_search
  - read_file
  - write_memory
max_iterations: 10
# pipelines/main.yml
name: main

steps:
  - id: process
    agent: default
    task: "${inputs.task}"

input:
  type: text

output:
  step: process

The default scaffold also creates tools/web_search.yml — a declarative tool with a shell placeholder and commented-out configs for Brave Search, SerpAPI, and Google Custom Search. Uncomment one, set the API key, and the agent's web_search tool starts returning real results.

Declarative Custom Tools

Drop a YAML file into tools/ to give your agents new capabilities without writing code:

# tools/slack_post.yml
name: slack_post
description: "Post a message to a Slack channel"
parameters:
  type: object
  properties:
    channel:
      type: string
    text:
      type: string
  required: [channel, text]
implementation:
  kind: http
  method: POST
  url: "https://slack.com/api/chat.postMessage"
  headers:
    Authorization: "Bearer ${env.SLACK_TOKEN}"
    Content-Type: "application/json"
  body_template: '{"channel": "${args.channel}", "text": "${args.text}"}'

Then reference it in an agent:

# agents/notifier.yml
name: notifier
tools:
  - web_search
  - slack_post   # ← the custom tool

${env.*} variables are resolved at parse time; ${args.*} are resolved at call time from the LLM's arguments. Name collisions with built-in tools are a hard error.

Python Bindings

The same pip install zymi-core that gives you the CLI also exposes a Runtime for running pipelines directly, plus the lower-level Event, EventBus, EventStore, Subscription, and ToolRegistry primitives for custom integrations.

Run a pipeline from Python

from zymi_core import Runtime

# Loads project.yml + agents/ + pipelines/ from the given directory and
# builds the same Runtime `zymi run` and `zymi serve` use. `approval` is
# either "terminal" (fail-closed prompt on stdin, matches `zymi run`) or
# "none" (intentions tagged RequiresHumanApproval resolve to a deny).
rt = Runtime.for_project(".", approval="terminal")

result = rt.run_pipeline("research", {"topic": "rust event sourcing"})
print(result.success, result.final_output)
for step in result.step_results:
    print(step.step_id, step.iterations, step.success)

rt.bus() and rt.store() hand out Python wrappers over the runtime's own Arcs, so any subscriber you attach there sees exactly the events the handler publishes — there is no second bus over the same SQLite file.

Tool registry and event primitives

from zymi_core import ToolRegistry

registry = ToolRegistry()

@registry.tool
def search(query: str) -> str:
    return f"Results for: {query}"

result = registry.call("search", '{"query":"rust async"}')
intention_json = registry.to_intention("search", '{"query":"rust async"}')
definitions = registry.definitions()

For lower-level event primitives the same package gives you the event store and bus directly:

from zymi_core import Event, EventBus, EventStore

store = EventStore("./events.db")
bus = EventBus(store)
subscription = bus.subscribe()

event = Event(
    stream_id="conversation-1",
    kind={"type": "UserMessageReceived", "data": {
        "content": {"User": "Hello"},
        "connector": "python",
    }},
    source="python",
)

bus.publish(event)
received = subscription.try_recv()

Multi-Process Integration (Django, Celery, scripts)

The Python wrapper for EventStore opens the same SQLite file the Rust side uses. There is no second IPC channel — events written from one process are visible to every other process that opens the same store, and a long-running zymi serve picks them up via a polling tail watcher (see ADR-0012).

The canonical pattern: a web app publishes a PipelineRequested event, zymi serve runs the pipeline, and the result comes back as a PipelineCompleted event with the same correlation_id.

Terminal A — long-running Rust service:

cd my-zymi-project
zymi serve research

Terminal B — any Python process (e.g. a Django view):

import uuid
from zymi_core import Event, EventBus, EventStore

store = EventStore(".zymi/events.db")
bus = EventBus(store)

correlation_id = str(uuid.uuid4())
sub = bus.subscribe_correlation(correlation_id)

event = Event(
    stream_id=f"web-req-{correlation_id}",
    kind={"type": "PipelineRequested", "data": {
        "pipeline": "research",
        "inputs": {"topic": "rust event sourcing"},
    }},
    source="django",
)
event.with_correlation(correlation_id)
bus.publish(event)

# Block until the serve process publishes PipelineCompleted with the
# same correlation_id (timeout in seconds).
result = sub.recv(timeout_secs=300)
print(result.kind)  # {"type": "PipelineCompleted", "data": {...}}

Because the SQLite store is the single source of truth, you also get free auditing: zymi events --stream web-req-... shows everything that happened during the run, and zymi verify checks the hash chain.

Inside zymi serve the PipelineRequested → RunPipeline translation is done by EventCommandRouter (see ADR-0013). It is re-exported from zymi_core::runtime, so if you are building your own scheduler or bot adapter you can wire the same router against your own Runtime without copy-pasting cli/serve.rs.

Rust Crate

Add the crate to your Cargo.toml:

[dependencies]
zymi-core = "0.1"

Example:

use std::sync::Arc;
use zymi_core::{open_store, Event, EventBus, EventKind, Message, StoreBackend};

let store = open_store(StoreBackend::Sqlite { path: "events.db".into() })?;
let bus = EventBus::new(store.clone());

let mut rx = bus.subscribe().await;

let event = Event::new(
    "conversation-1".into(),
    EventKind::UserMessageReceived {
        content: Message::User("Hello".into()),
        connector: "cli".into(),
    },
    "cli".into(),
);

bus.publish(event).await?;
let received = rx.recv().await.unwrap();
assert_eq!(received.kind_tag(), "user_message_received");

let verified_count = store.verify_chain("conversation-1").await?;

For cross-process delivery in your own binary, spawn a StoreTailWatcher on the same store/bus — it polls for events written by other processes and fans them out into local subscribers without re-persisting them:

use std::time::Duration;
use zymi_core::StoreTailWatcher;

let watcher = StoreTailWatcher::new(store.clone(), bus.clone())
    .with_interval(Duration::from_millis(100))
    .spawn();

// ... later, on shutdown:
watcher.stop().await;

How It Works

zymi-core is built around a small set of ideas:

  1. Every meaningful state change becomes an event. The SQLite event store is the source of truth.
  2. Agents express intentions, not side effects. Intentions are evaluated against boundary contracts before execution.
  3. Pipelines are DAGs. Independent steps can run in parallel, while dependencies remain explicit.
  4. Context is event-sourced too. The agent's working context is reassembled from the event log each iteration — older observations are masked automatically, and hybrid compaction kicks in when the budget is exceeded.
  5. Runs stay replayable. You can inspect events with zymi events --stream <id> and verify hash-chain integrity with zymi verify.
  6. Custom tools are declarative. HTTP tools live in tools/*.yml and are dispatched at runtime — no Rust code, no rebuild.

Core intention types include ExecuteShellCommand, WriteFile, ReadFile, WebSearch, WebScrape, WriteMemory, SpawnSubAgent, and CallCustomTool.

Feature Flags (Rust crate)

The pip wheel ships with python and cli enabled. These flags are relevant when depending on the Rust crate directly.

Feature Description
python PyO3 bindings for the _zymi_core Python extension module
cli The zymi CLI binary
runtime Async runtime and HTTP dependencies used by runtime integrations
webhook HTTP approval handler built on Axum
services Event-bus services such as LangFuse

Development

cargo test
cargo test --features services,webhook

cargo clippy -- -D warnings
cargo clippy --features services -- -D warnings

maturin develop --features python,cli

License

MIT

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