Sienna Meridian Satterwhite 2f861a9192 feat(wfe-buildkit-protos): generate full BuildKit gRPC API (tonic 0.14)
New crate generating Rust gRPC stubs from the official BuildKit
proto files (git submodule from moby/buildkit). Control service,
LLB definitions, session protocols, and source policy.
tonic 0.14 / prost 0.14.
2026-03-26 12:29:00 +00:00

WFE

A persistent, embeddable workflow engine for Rust. Trait-based, pluggable, built for real infrastructure.

Rust port of workflow-core, rebuilt from scratch with async/await, pluggable persistence, and a YAML frontend with shell and Deno executors.


What is WFE?

WFE is a workflow engine you embed directly into your Rust application. Define workflows as code using a fluent builder API, or as YAML files with shell and JavaScript steps. Workflows persist across restarts, support event-driven pausing, parallel execution, saga compensation, and distributed locking.

Built for:

  • Persistent workflows — steps survive process restarts. Pick up where you left off.
  • Embeddable CLIs — drop it into a binary, no external orchestrator required.
  • Portable CI pipelines — YAML workflows with shell and Deno steps, variable interpolation, structured outputs.

Architecture

wfe/
├── wfe-core          Traits, models, builder, executor, primitives
├── wfe               Umbrella crate — WorkflowHost, WorkflowHostBuilder
├── wfe-yaml          YAML workflow loader, shell executor, Deno executor
├── wfe-sqlite        SQLite persistence + queue + lock provider
├── wfe-postgres      PostgreSQL persistence + queue + lock provider
├── wfe-valkey        Valkey (Redis) distributed lock + queue provider
└── wfe-opensearch    OpenSearch search index provider

wfe-core defines the traits. Provider crates implement them. wfe wires everything together through WorkflowHost. wfe-yaml adds a YAML frontend with built-in executors.


Quick start — Rust builder API

Define steps by implementing StepBody, then chain them with the builder:

use async_trait::async_trait;
use serde::{Deserialize, Serialize};
use wfe::builder::WorkflowBuilder;
use wfe::models::*;
use wfe::traits::step::{StepBody, StepExecutionContext};

#[derive(Debug, Clone, Default, Serialize, Deserialize)]
struct MyData {
    message: String,
}

#[derive(Default)]
struct FetchData;

#[async_trait]
impl StepBody for FetchData {
    async fn run(&mut self, _ctx: &StepExecutionContext<'_>) -> wfe::Result<ExecutionResult> {
        println!("Fetching data...");
        Ok(ExecutionResult::next())
    }
}

#[derive(Default)]
struct Transform;

#[async_trait]
impl StepBody for Transform {
    async fn run(&mut self, _ctx: &StepExecutionContext<'_>) -> wfe::Result<ExecutionResult> {
        println!("Transforming...");
        Ok(ExecutionResult::next())
    }
}

#[derive(Default)]
struct Publish;

#[async_trait]
impl StepBody for Publish {
    async fn run(&mut self, _ctx: &StepExecutionContext<'_>) -> wfe::Result<ExecutionResult> {
        println!("Publishing.");
        Ok(ExecutionResult::next())
    }
}

let definition = WorkflowBuilder::<MyData>::new()
    .start_with::<FetchData>()
        .name("Fetch")
    .then::<Transform>()
        .name("Transform")
        .on_error(ErrorBehavior::Retry {
            interval: std::time::Duration::from_secs(5),
            max_retries: 3,
        })
    .then::<Publish>()
        .name("Publish")
    .end_workflow()
    .build("etl-pipeline", 1);

The builder supports .then(), .parallel(), .if_do(), .while_do(), .for_each(), .saga(), .compensate_with(), .wait_for(), .delay(), and .then_fn() for inline closures.

See wfe/examples/pizza.rs for a full example using every feature.


Quick start — YAML

workflow:
  id: deploy-pipeline
  version: 1
  steps:
    - name: Lint
      config:
        run: cargo clippy --all-targets -- -D warnings
        timeout: "120s"

    - name: Test
      config:
        run: cargo test --workspace
        timeout: "300s"

    - name: Build
      config:
        run: cargo build --release
        timeout: "600s"

    - name: Notify
      type: deno
      config:
        script: |
          const result = await fetch("https://hooks.slack.com/...", {
            method: "POST",
            body: JSON.stringify({ text: "Deploy complete" }),
          });
          Wfe.setOutput("status", result.status.toString());
        permissions:
          net: ["hooks.slack.com"]
        timeout: "10s"

Load and run:

use std::collections::HashMap;
use std::path::Path;

let config = HashMap::new();
let compiled = wfe_yaml::load_workflow(Path::new("deploy.yaml"), &config)?;

Variables use ${{ var.name }} interpolation syntax. Outputs from earlier steps are available as workflow data in later steps.


Providers

Concern Provider Crate Connection
Persistence SQLite wfe-sqlite File path or :memory:
Persistence PostgreSQL wfe-postgres postgres://user:pass@host/db
Distributed lock Valkey / Redis wfe-valkey redis://host:6379
Queue Valkey / Redis wfe-valkey Same connection
Search index OpenSearch wfe-opensearch http://host:9200

All providers implement traits from wfe-core. SQLite and PostgreSQL crates include their own lock and queue implementations for single-node deployments. Use Valkey when you need distributed coordination across multiple hosts.

In-memory implementations of every trait ship with wfe-core (behind the test-support feature) for testing and prototyping.


The Deno executor

The deno step type embeds a V8 runtime for running JavaScript or TypeScript inside your workflow. Scripts run in a sandboxed environment with fine-grained permissions.

- name: Process webhook
  type: deno
  config:
    script: |
      const data = Wfe.getData();
      const response = await fetch(`https://api.example.com/v1/${data.id}`);
      const result = await response.json();
      Wfe.setOutput("processed", JSON.stringify(result));
    permissions:
      net: ["api.example.com"]
      read: []
      write: []
      env: []
      run: false
    timeout: "30s"
Permission Type Default What it controls
net string[] [] Allowed network hosts
read string[] [] Allowed filesystem read paths
write string[] [] Allowed filesystem write paths
env string[] [] Allowed environment variable names
run bool false Whether subprocess spawning is allowed
dynamic_import bool false Whether dynamic import() is allowed

Everything is denied by default. You allowlist what each step needs. The V8 isolate is terminated hard on timeout — no infinite loops surviving on your watch.

Enable with the deno feature flag on wfe-yaml.


Feature flags

Crate Flag What it enables
wfe otel OpenTelemetry tracing (spans for every step execution)
wfe-core otel OTel span attributes on the executor
wfe-core test-support In-memory persistence, lock, and queue providers
wfe-yaml deno Deno JavaScript/TypeScript executor

Testing

Unit tests run without any external dependencies:

cargo test --workspace

Integration tests for PostgreSQL, Valkey, and OpenSearch need their backing services. A Docker Compose file is included:

docker compose up -d
cargo test --workspace
docker compose down

The compose file starts:

  • PostgreSQL 17 on port 5433
  • Valkey 8 on port 6379
  • OpenSearch 2 on port 9200

SQLite tests use temporary files and run everywhere.


License

MIT

Built by Sunbeam Studios. We run this in production. It works.

Description
Take back your CI.
Readme 426 KiB
v1.4.0 Latest
2026-03-26 23:54:02 +00:00
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